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%%% -*-BibTeX-*-
%%% ====================================================================
%%%  BibTeX-file{
%%%     author          = "Nelson H. F. Beebe",
%%%     version         = "1.48",
%%%     date            = "20 December 2024",
%%%     time            = "17:03:46 MST",
%%%     filename        = "tist.bib",
%%%     address         = "University of Utah
%%%                        Department of Mathematics, 110 LCB
%%%                        155 S 1400 E RM 233
%%%                        Salt Lake City, UT 84112-0090
%%%                        USA",
%%%     telephone       = "+1 801 581 5254",
%%%     URL             = "https://www.math.utah.edu/~beebe",
%%%     checksum        = "01842 46401 243037 2302047",
%%%     email           = "beebe at math.utah.edu, beebe at acm.org,
%%%                        beebe at computer.org (Internet)",
%%%     codetable       = "ISO/ASCII",
%%%     keywords        = "bibliography; BibTeX; ACM Transactions on
%%%                        Intelligent Systems and Technology (TIST)",
%%%     license         = "public domain",
%%%     supported       = "yes",
%%%     docstring       = "This is a COMPLETE BibTeX bibliography for
%%%                        the journal ACM Transactions on Intelligent
%%%                        Systems and Technology (TIST) (CODEN ????,
%%%                        ISSN 2157-6904 (print), 2157-6912
%%%                        (electronic)),  covering all journal issues from
%%%                        2010 -- date.
%%%
%%%                        At version 1.48, the COMPLETE journal
%%%                        coverage looked like this:
%%%
%%%                             2010 (  15)    2015 (  86)    2020 (  73)
%%%                             2011 (  60)    2016 (  68)    2021 (  82)
%%%                             2012 (  59)    2017 (  82)    2022 ( 105)
%%%                             2013 (  95)    2018 (  59)    2023 ( 114)
%%%                             2014 (  30)    2019 (  65)    2024 ( 135)
%%%
%%%                             Article:       1128
%%%
%%%                             Total entries: 1128
%%%
%%%                        The journal Web page can be found at:
%%%
%%%                            http://www.acm.org/pubs/tist
%%%                            http://portal.acm.org/citation.cfm?id=J1318
%%%
%%%                        The journal table of contents page is at:
%%%
%%%                            http://www.acm.org/pubs/contents/journals/tist/
%%%
%%%                        The initial draft was extracted from the
%%%                        journal Web site.
%%%
%%%                        ACM copyrights explicitly permit abstracting
%%%                        with credit, so article abstracts, keywords,
%%%                        and subject classifications have been
%%%                        included in this bibliography wherever
%%%                        available.  Article reviews have been
%%%                        omitted, until their copyright status has
%%%                        been clarified.
%%%
%%%                        URL keys in the bibliography point to
%%%                        World Wide Web locations of additional
%%%                        information about the entry.
%%%
%%%                        Numerous errors in the sources noted above
%%%                        have been corrected.   Spelling has been
%%%                        verified with the UNIX spell and GNU ispell
%%%                        programs using the exception dictionary
%%%                        stored in the companion file with extension
%%%                        .sok.
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%%%                        BibTeX citation tags are uniformly chosen
%%%                        as name:year:abbrev, where name is the
%%%                        family name of the first author or editor,
%%%                        year is a 4-digit number, and abbrev is a
%%%                        3-letter condensation of important title
%%%                        words. Citation tags were automatically
%%%                        generated by software developed for the
%%%                        BibNet Project.
%%%
%%%                        In this bibliography, entries are sorted in
%%%                        publication order, using ``bibsort -byvolume.''
%%%
%%%                        The checksum field above contains a CRC-16
%%%                        checksum as the first value, followed by the
%%%                        equivalent of the standard UNIX wc (word
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%%%                        characters.  This is produced by Robert
%%%                        Solovay's checksum utility.",
%%%  }
%%% ====================================================================
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%%% ====================================================================
%%% Acknowledgement abbreviations:
@String{ack-nhfb = "Nelson H. F. Beebe,
                    University of Utah,
                    Department of Mathematics, 110 LCB,
                    155 S 1400 E RM 233,
                    Salt Lake City, UT 84112-0090, USA,
                    Tel: +1 801 581 5254,
                    e-mail: \path|beebe@math.utah.edu|,
                            \path|beebe@acm.org|,
                            \path|beebe@computer.org| (Internet),
                    URL: \path|https://www.math.utah.edu/~beebe/|"}

%%% ====================================================================
%%% Journal abbreviations:
@String{j-TIST                 = "ACM Transactions on Intelligent Systems and
                                  Technology (TIST)"}

%%% ====================================================================
%%% Bibliography entries:
@Article{Yang:2010:IAT,
  author =       "Qiang Yang",
  title =        "Introduction to {ACM TIST}",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "1:1--1:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858949",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2010:IAT,
  author =       "Huan Liu and Dana Nau",
  title =        "Introduction to the {ACM TIST} special issue {AI} in
                 social computing and cultural modeling",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "2:1--2:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858950",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bainbridge:2010:VWC,
  author =       "William Sims Bainbridge",
  title =        "Virtual worlds as cultural models",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "3:1--3:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858951",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Feldman:2010:SCR,
  author =       "Michal Feldman and Moshe Tennenholtz",
  title =        "Structured coalitions in resource selection games",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "4:1--4:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858952",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2010:OFU,
  author =       "Fang Wu and Bernardo A. Huberman",
  title =        "Opinion formation under costly expression",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "5:1--5:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858953",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Roos:2010:ESD,
  author =       "Patrick Roos and J. Ryan Carr and Dana S. Nau",
  title =        "Evolution of state-dependent risk preferences",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "6:1--6:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858954",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Goolsby:2010:SMC,
  author =       "Rebecca Goolsby",
  title =        "Social media as crisis platform: The future of
                 community maps\slash crisis maps",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "7:1--7:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858955",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2010:AIS,
  author =       "Meng Wang and Bo Liu and Xian-Sheng Hua",
  title =        "Accessible image search for colorblindness",
  journal =      j-TIST,
  volume =       "1",
  number =       "1",
  pages =        "8:1--8:??",
  month =        oct,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1858948.1858956",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Tue Nov 23 12:18:28 MST 2010",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2010:PSI,
  author =       "Yixin Chen",
  title =        "Preface to special issue on applications of automated
                 planning",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "9:1--9:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869398",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Porteous:2010:API,
  author =       "Julie Porteous and Marc Cavazza and Fred Charles",
  title =        "Applying planning to interactive storytelling:
                 Narrative control using state constraints",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "10:1--10:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869399",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bryce:2010:PIB,
  author =       "Daniel Bryce and Michael Verdicchio and Seungchan
                 Kim",
  title =        "Planning interventions in biological networks",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "11:1--11:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869400",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Refanidis:2010:CBA,
  author =       "Ioannis Refanidis and Neil Yorke-Smith",
  title =        "A constraint-based approach to scheduling an
                 individual's activities",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "12:1--12:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869401",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Benaskeur:2010:CRT,
  author =       "Abder Rezak Benaskeur and Froduald Kabanza and Eric
                 Beaudry",
  title =        "{CORALS}: a real-time planner for anti-air defense
                 operations",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "13:1--13:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869402",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Talamadupula:2010:PHR,
  author =       "Kartik Talamadupula and J. Benton and Subbarao
                 Kambhampati and Paul Schermerhorn and Matthias
                 Scheutz",
  title =        "Planning for human-robot teaming in open worlds",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "14:1--14:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869403",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cirillo:2010:HAT,
  author =       "Marcello Cirillo and Lars Karlsson and Alessandro
                 Saffiotti",
  title =        "Human-aware task planning: An application to mobile
                 robots",
  journal =      j-TIST,
  volume =       "1",
  number =       "2",
  pages =        "15:1--15:??",
  month =        nov,
  year =         "2010",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1869397.1869404",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:50 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2011:ISI,
  author =       "Daqing Zhang and Matthai Philipose and Qiang Yang",
  title =        "Introduction to the special issue on intelligent
                 systems for activity recognition",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "1:1--1:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889682",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zheng:2011:LTR,
  author =       "Yu Zheng and Xing Xie",
  title =        "Learning travel recommendations from user-generated
                 {GPS} traces",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "2:1--2:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889683",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Farrahi:2011:DRL,
  author =       "Katayoun Farrahi and Daniel Gatica-Perez",
  title =        "Discovering routines from large-scale human locations
                 using probabilistic topic models",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "3:1--3:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889684",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hsu:2011:PMC,
  author =       "Jane Yung-Jen Hsu and Chia-Chun Lian and Wan-Rong
                 Jih",
  title =        "Probabilistic models for concurrent chatting activity
                 recognition",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "4:1--4:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889685",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhou:2011:RPA,
  author =       "Yue Zhou and Bingbing Ni and Shuicheng Yan and Thomas
                 S. Huang",
  title =        "Recognizing pair-activities by causality analysis",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "5:1--5:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889686",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ward:2011:PMA,
  author =       "Jamie A. Ward and Paul Lukowicz and Hans W.
                 Gellersen",
  title =        "Performance metrics for activity recognition",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "6:1--6:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889687",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wyatt:2011:ICC,
  author =       "Danny Wyatt and Tanzeem Choudhury and Jeff Bilmes and
                 James A. Kitts",
  title =        "Inferring colocation and conversation networks from
                 privacy-sensitive audio with implications for
                 computational social science",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "7:1--7:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889688",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bao:2011:FRC,
  author =       "Xinlong Bao and Thomas G. Dietterich",
  title =        "{FolderPredictor}: Reducing the cost of reaching the
                 right folder",
  journal =      j-TIST,
  volume =       "2",
  number =       "1",
  pages =        "8:1--8:??",
  month =        jan,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1889681.1889689",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Wed Jan 26 14:40:51 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hua:2011:ISI,
  author =       "Xian-Sheng Hua and Qi Tian and Alberto {Del Bimbo} and
                 Ramesh Jain",
  title =        "Introduction to the special issue on intelligent
                 multimedia systems and technology",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "9:1--9:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899413",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2011:ALM,
  author =       "Meng Wang and Xian-Sheng Hua",
  title =        "Active learning in multimedia annotation and
                 retrieval: a survey",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "10:1--10:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899414",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Active learning is a machine learning technique that
                 selects the most informative samples for labeling and
                 uses them as training data. It has been widely explored
                 in multimedia research community for its capability of
                 reducing human annotation effort. In this article, we
                 provide a survey on the efforts of leveraging active
                 learning in multimedia annotation and retrieval. We
                 mainly focus on two application domains: image/video
                 annotation and content-based image retrieval. We first
                 briefly introduce the principle of active learning and
                 then we analyze the sample selection criteria. We
                 categorize the existing sample selection strategies
                 used in multimedia annotation and retrieval into five
                 criteria: risk reduction, uncertainty, diversity,
                 density and relevance. We then introduce several
                 classification models used in active learning-based
                 multimedia annotation and retrieval, including
                 semi-supervised learning, multilabel learning and
                 multiple instance learning. We also provide a
                 discussion on several future trends in this research
                 direction. In particular, we discuss cost analysis of
                 human annotation and large-scale interactive multimedia
                 annotation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shao:2011:VIG,
  author =       "Yuanlong Shao and Yuan Zhou and Deng Cai",
  title =        "Variational inference with graph regularization for
                 image annotation",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "11:1--11:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899415",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Image annotation is a typical area where there are
                 multiple types of attributes associated with each
                 individual image. In order to achieve better
                 performance, it is important to develop effective
                 modeling by utilizing prior knowledge. In this article,
                 we extend the graph regularization approaches to a more
                 general case where the regularization is imposed on the
                 factorized variational distributions, instead of
                 posterior distributions implicitly involved in EM-like
                 algorithms. In this way, the problem modeling can be
                 more flexible, and we can choose any factor in the
                 problem domain to impose graph regularization wherever
                 there are similarity constraints among the instances.
                 We formulate the problem formally and show its
                 geometrical background in manifold learning. We also
                 design two practically effective algorithms and analyze
                 their properties such as the convergence. Finally, we
                 apply our approach to image annotation and show the
                 performance improvement of our algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yu:2011:CBS,
  author =       "Jie Yu and Xin Jin and Jiawei Han and Jiebo Luo",
  title =        "Collection-based sparse label propagation and its
                 application on social group suggestion from photos",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "12:1--12:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899416",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Online social network services pose great
                 opportunities and challenges for many research areas.
                 In multimedia content analysis, automatic social group
                 recommendation for images holds the promise to expand
                 one's social network through media sharing. However,
                 most existing techniques cannot generate satisfactory
                 social group suggestions when the images are classified
                 independently. In this article, we present novel
                 methods to produce accurate suggestions of suitable
                 social groups from a user's personal photo collection.
                 First, an automatic clustering process is designed to
                 estimate the group similarities, select the optimal
                 number of clusters and categorize the social groups.
                 Both visual content and textual annotations are
                 integrated to generate initial predictions of the group
                 categories for the images. Next, the relationship among
                 images in a user's collection is modeled as a sparse
                 graph. A collection-based sparse label propagation
                 method is proposed to improve the group suggestions.
                 Furthermore, the sparse graph-based collection model
                 can be readily exploited to select the most influential
                 and informative samples for active relevance feedback,
                 which can be integrated with the label propagation
                 process without the need for classifier retraining. The
                 proposed methods have been tested on group suggestion
                 tasks for real user collections and demonstrated
                 superior performance over the state-of-the-art
                 techniques.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2011:DML,
  author =       "Lei Wu and Steven C. H. Hoi and Rong Jin and Jianke
                 Zhu and Nenghai Yu",
  title =        "Distance metric learning from uncertain side
                 information for automated photo tagging",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "13:1--13:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899417",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Automated photo tagging is an important technique for
                 many intelligent multimedia information systems, for
                 example, smart photo management system and intelligent
                 digital media library. To attack the challenge, several
                 machine learning techniques have been developed and
                 applied for automated photo tagging. For example,
                 supervised learning techniques have been applied to
                 automated photo tagging by training statistical
                 classifiers from a collection of manually labeled
                 examples. Although the existing approaches work well
                 for small testbeds with relatively small number of
                 annotation words, due to the long-standing challenge of
                 object recognition, they often perform poorly in
                 large-scale problems. Another limitation of the
                 existing approaches is that they require a set of
                 high-quality labeled data, which is not only expensive
                 to collect but also time consuming. In this article, we
                 investigate a social image based annotation scheme by
                 exploiting implicit side information that is available
                 for a large number of social photos from the social web
                 sites. The key challenge of our intelligent annotation
                 scheme is how to learn an effective distance metric
                 based on implicit side information (visual or textual)
                 of social photos. To this end, we present a novel
                 ``Probabilistic Distance Metric Learning'' (PDML)
                 framework, which can learn optimized metrics by
                 effectively exploiting the implicit side information
                 vastly available on the social web. We apply the
                 proposed technique to photo annotation tasks based on a
                 large social image testbed with over 1 million tagged
                 photos crawled from a social photo sharing portal.
                 Encouraging results show that the proposed technique is
                 effective and promising for social photo based
                 annotation tasks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2011:IAK,
  author =       "Jinhui Tang and Richang Hong and Shuicheng Yan and
                 Tat-Seng Chua and Guo-Jun Qi and Ramesh Jain",
  title =        "Image annotation by {$k$NN}-sparse graph-based label
                 propagation over noisily tagged web images",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "14:1--14:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899418",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we exploit the problem of annotating
                 a large-scale image corpus by label propagation over
                 noisily tagged web images. To annotate the images more
                 accurately, we propose a novel k NN-sparse graph-based
                 semi-supervised learning approach for harnessing the
                 labeled and unlabeled data simultaneously. The sparse
                 graph constructed by datum-wise one-vs- k NN sparse
                 reconstructions of all samples can remove most of the
                 semantically unrelated links among the data, and thus
                 it is more robust and discriminative than the
                 conventional graphs. Meanwhile, we apply the
                 approximate k nearest neighbors to accelerate the
                 sparse graph construction without loosing its
                 effectiveness. More importantly, we propose an
                 effective training label refinement strategy within
                 this graph-based learning framework to handle the noise
                 in the training labels, by bringing in a dual
                 regularization for both the quantity and sparsity of
                 the noise. We conduct extensive experiments on a
                 real-world image database consisting of 55,615 Flickr
                 images and noisily tagged training labels. The results
                 demonstrate both the effectiveness and efficiency of
                 the proposed approach and its capability to deal with
                 the noise in the training labels.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tong:2011:APL,
  author =       "Xiaofeng Tong and Jia Liu and Tao Wang and Yimin
                 Zhang",
  title =        "Automatic player labeling, tracking and field
                 registration and trajectory mapping in broadcast soccer
                 video",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "15:1--15:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899419",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we present a method to perform
                 automatic player trajectories mapping based on player
                 detection, unsupervised labeling, efficient
                 multi-object tracking, and playfield registration in
                 broadcast soccer videos. Player detector determines the
                 players' positions and scales by combining the ability
                 of dominant color based background subtraction and a
                 boosting detector with Haar features. We first learn
                 the dominant color with accumulate color histogram at
                 the beginning of processing, then use the player
                 detector to collect hundreds of player samples, and
                 learn player appearance codebook by unsupervised
                 clustering. In a soccer game, a player can be labeled
                 as one of four categories: two teams, referee or
                 outlier. The learning capability enables the method to
                 be generalized well to different videos without any
                 manual initialization. With the dominant color and
                 player appearance model, we can locate and label each
                 player. After that, we perform multi-object tracking by
                 using Markov Chain Monte Carlo (MCMC) data association
                 to generate player trajectories. Some data driven
                 dynamics are proposed to improve the Markov chain's
                 efficiency, such as label consistency, motion
                 consistency, and track length, etc. Finally, we extract
                 key-points and find the mapping from an image plane to
                 the standard field model, and then map players'
                 position and trajectories to the field. A large
                 quantity of experimental results on FIFA World Cup 2006
                 videos demonstrate that this method can reach high
                 detection and labeling precision, reliably tracking in
                 scenes of player occlusion, moderate camera motion and
                 pose variation, and yield promising field registration
                 results.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2011:NJD,
  author =       "Qingzhong Liu and Andrew H. Sung and Mengyu Qiao",
  title =        "Neighboring joint density-based {JPEG} steganalysis",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "16:1--16:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899420",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/cryptography2010.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib/",
  abstract =     "The threat posed by hackers, spies, terrorists, and
                 criminals, etc. using steganography for stealthy
                 communications and other illegal purposes is a serious
                 concern of cyber security. Several steganographic
                 systems that have been developed and made readily
                 available utilize JPEG images as carriers. Due to the
                 popularity of JPEG images on the Internet, effective
                 steganalysis techniques are called for to counter the
                 threat of JPEG steganography. In this article, we
                 propose a new approach based on feature mining on the
                 discrete cosine transform (DCT) domain and machine
                 learning for steganalysis of JPEG images. First,
                 neighboring joint density features on both intra-block
                 and inter-block are extracted from the DCT coefficient
                 array and the absolute array, respectively; then a
                 support vector machine (SVM) is applied to the features
                 for detection. An evolving neural-fuzzy inference
                 system is employed to predict the hiding amount in JPEG
                 steganograms. We also adopt a feature selection method
                 of support vector machine recursive feature elimination
                 to reduce the number of features. Experimental results
                 show that, in detecting several JPEG-based
                 steganographic systems, our method prominently
                 outperforms the well-known Markov-process based
                 approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bhatt:2011:PTM,
  author =       "Chidansh Bhatt and Mohan Kankanhalli",
  title =        "Probabilistic temporal multimedia data mining",
  journal =      j-TIST,
  volume =       "2",
  number =       "2",
  pages =        "17:1--17:??",
  month =        feb,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1899412.1899421",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Oct 1 16:23:55 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Existing sequence pattern mining techniques assume
                 that the obtained events from event detectors are
                 accurate. However, in reality, event detectors label
                 the events from different modalities with a certain
                 probability over a time-interval. In this article, we
                 consider for the first time Probabilistic Temporal
                 Multimedia (PTM) Event data to discover accurate
                 sequence patterns. PTM event data considers the start
                 time, end time, event label and associated probability
                 for the sequence pattern discovery. As the existing
                 sequence pattern mining techniques cannot work on such
                 realistic data, we have developed a novel framework for
                 performing sequence pattern mining on probabilistic
                 temporal multimedia event data. We perform probability
                 fusion to resolve the redundancy among detected events
                 from different modalities, considering their
                 cross-modal correlation. We propose a novel sequence
                 pattern mining algorithm called Probabilistic Interval
                 based Event Miner (PIE-Miner) for discovering frequent
                 sequence patterns from interval based events. PIE-Miner
                 has a new support counting mechanism developed for PTM
                 data. Existing sequence pattern mining algorithms have
                 event label level support counting mechanism, whereas
                 we have developed event cluster level support counting
                 mechanism. We discover the complete set of all possible
                 temporal relationships based on Allen's interval
                 algebra. The experimental results showed that the
                 discovered sequence patterns are more useful than the
                 patterns discovered with state-of-the-art sequence
                 pattern mining algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ling:2011:ISI,
  author =       "Charles X. Ling",
  title =        "Introduction to special issue on machine learning for
                 business applications",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "18:1--18:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961190",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Dhar:2011:PFM,
  author =       "Vasant Dhar",
  title =        "Prediction in financial markets: The case for small
                 disjuncts",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "19:1--19:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961191",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Huang:2011:LBC,
  author =       "Szu-Hao Huang and Shang-Hong Lai and Shih-Hsien Tai",
  title =        "A learning-based contrarian trading strategy via a
                 dual-classifier model",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "20:1--20:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961192",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2011:CCD,
  author =       "Bin Li and Steven C. H. Hoi and Vivekanand
                 Gopalkrishnan",
  title =        "{CORN}: Correlation-driven nonparametric learning
                 approach for portfolio selection",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "21:1--21:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961193",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bonchi:2011:SNA,
  author =       "Francesco Bonchi and Carlos Castillo and Aristides
                 Gionis and Alejandro Jaimes",
  title =        "Social Network Analysis and Mining for Business
                 Applications",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "22:1--22:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961194",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2011:HMF,
  author =       "Richong Zhang and Thomas Tran",
  title =        "A helpfulness modeling framework for electronic
                 word-of-mouth on consumer opinion platforms",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "23:1--23:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961195",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ge:2011:MLC,
  author =       "Yong Ge and Hui Xiong and Wenjun Zhou and Siming Li
                 and Ramendra Sahoo",
  title =        "Multifocal learning for customer problem analysis",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "24:1--24:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961196",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hsu:2011:ISI,
  author =       "Chun-Nan Hsu",
  title =        "Introduction to special issue on large-scale machine
                 learning",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "25:1--25:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961197",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2011:PPL,
  author =       "Zhiyuan Liu and Yuzhou Zhang and Edward Y. Chang and
                 Maosong Sun",
  title =        "{PLDA+}: Parallel latent {Dirichlet} allocation with
                 data placement and pipeline processing",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "26:1--26:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961198",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chang:2011:LLS,
  author =       "Chih-Chung Chang and Chih-Jen Lin",
  title =        "{LIBSVM}: a library for support vector machines",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "27:1--27:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961199",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "LIBSVM is a library for Support Vector Machines
                 (SVMs). We have been actively developing this package
                 since the year 2000. The goal is to help users to
                 easily apply SVM to their applications. LIBSVM has
                 gained wide popularity in machine learning and many
                 other areas. In this article, we present all
                 implementation details of LIBSVM. Issues such as
                 solving SVM optimization problems theoretical
                 convergence multiclass classification probability
                 estimates and parameter selection are discussed in
                 detail.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gasso:2011:BOL,
  author =       "Gilles Gasso and Aristidis Pappaioannou and Marina
                 Spivak and L{\'e}on Bottou",
  title =        "Batch and online learning algorithms for nonconvex
                 {Neyman--Pearson} classification",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "28:1--28:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961200",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ma:2011:LRE,
  author =       "Hao Ma and Irwin King and Michael R. Lyu",
  title =        "Learning to recommend with explicit and implicit
                 social relations",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "29:1--29:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961201",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ma:2011:LDM,
  author =       "Justin Ma and Lawrence K. Saul and Stefan Savage and
                 Geoffrey M. Voelker",
  title =        "Learning to detect malicious {URLs}",
  journal =      j-TIST,
  volume =       "2",
  number =       "3",
  pages =        "30:1--30:??",
  month =        apr,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1961189.1961202",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri May 13 11:20:03 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Malicious Web sites are a cornerstone of Internet
                 criminal activities. The dangers of these sites have
                 created a demand for safeguards that protect end-users
                 from visiting them. This article explores how to detect
                 malicious Web sites from the lexical and host-based
                 features of their URLs. We show that this problem lends
                 itself naturally to modern algorithms for online
                 learning. Online algorithms not only process large
                 numbers of URLs more efficiently than batch algorithms,
                 they also adapt more quickly to new features in the
                 continuously evolving distribution of malicious URLs.
                 We develop a real-time system for gathering URL
                 features and pair it with a real-time feed of labeled
                 URLs from a large Web mail provider. From these
                 features and labels, we are able to train an online
                 classifier that detects malicious Web sites with 99\%
                 accuracy over a balanced dataset.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gomes:2011:ISI,
  author =       "Carla Gomes and Qiang Yang",
  title =        "Introduction to special issue on computational
                 sustainability",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "31:1--31:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989735",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Krause:2011:SAO,
  author =       "Andreas Krause and Carlos Guestrin",
  title =        "Submodularity and its applications in optimized
                 information gathering",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "32:1--32:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989736",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cattafi:2011:SBP,
  author =       "Massimiliano Cattafi and Marco Gavanelli and Michela
                 Milano and Paolo Cagnoli",
  title =        "Sustainable biomass power plant location in the
                 {Italian Emilia-Romagna} region",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "33:1--33:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989737",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Patnaik:2011:TDM,
  author =       "Debprakash Patnaik and Manish Marwah and Ratnesh K.
                 Sharma and Naren Ramakrishnan",
  title =        "Temporal data mining approaches for sustainable
                 chiller management in data centers",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "34:1--34:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989738",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ramchurn:2011:ABH,
  author =       "Sarvapali D. Ramchurn and Perukrishnen Vytelingum and
                 Alex Rogers and Nicholas R. Jennings",
  title =        "Agent-based homeostatic control for green energy in
                 the smart grid",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "35:1--35:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989739",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mithal:2011:MGF,
  author =       "Varun Mithal and Ashish Garg and Shyam Boriah and
                 Michael Steinbach and Vipin Kumar and Christopher
                 Potter and Steven Klooster and Juan Carlos
                 Castilla-Rubio",
  title =        "Monitoring global forest cover using data mining",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "36:1--36:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989740",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2011:MMM,
  author =       "Zhenhui Li and Jiawei Han and Ming Ji and Lu-An Tang
                 and Yintao Yu and Bolin Ding and Jae-Gil Lee and Roland
                 Kays",
  title =        "{MoveMine}: Mining moving object data for discovery of
                 animal movement patterns",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "37:1--37:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989741",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Toole:2011:SCC,
  author =       "Jameson L. Toole and Nathan Eagle and Joshua B.
                 Plotkin",
  title =        "Spatiotemporal correlations in criminal offense
                 records",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "38:1--38:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989742",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ding:2011:SCD,
  author =       "Wei Ding and Tomasz F. Stepinski and Yang Mu and
                 Lourenco Bandeira and Ricardo Ricardo and Youxi Wu and
                 Zhenyu Lu and Tianyu Cao and Xindong Wu",
  title =        "Subkilometer crater discovery with boosting and
                 transfer learning",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "39:1--39:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989743",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Berry:2011:PPA,
  author =       "Pauline M. Berry and Melinda Gervasio and Bart
                 Peintner and Neil Yorke-Smith",
  title =        "{PTIME}: Personalized assistance for calendaring",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "40:1--40:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989744",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Reddy:2011:PSA,
  author =       "Sudhakar Y. Reddy and Jeremy D. Frank and Michael J.
                 Iatauro and Matthew E. Boyce and Elif K{\"u}rkl{\"u}
                 and Mitchell Ai-Chang and Ari K. J{\'o}nsson",
  title =        "Planning solar array operations on the {International
                 Space Station}",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "41:1--41:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989745",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Haigh:2011:RLL,
  author =       "Karen Zita Haigh and Fusun Yaman",
  title =        "{RECYCLE}: Learning looping workflows from annotated
                 traces",
  journal =      j-TIST,
  volume =       "2",
  number =       "4",
  pages =        "42:1--42:??",
  month =        jul,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/1989734.1989746",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  bibdate =      "Fri Jul 22 08:50:59 MDT 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Guy:2011:I,
  author =       "Ido Guy and Li Chen and Michelle X. Zhou",
  title =        "Introduction",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "1:1--1:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036265",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lipczak:2011:ETR,
  author =       "Marek Lipczak and Evangelos Milios",
  title =        "Efficient Tag Recommendation for Real-Life Data",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "2:1--2:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036266",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Vasuki:2011:SAR,
  author =       "Vishvas Vasuki and Nagarajan Natarajan and Zhengdong
                 Lu and Berkant Savas and Inderjit Dhillon",
  title =        "Scalable Affiliation Recommendation using Auxiliary
                 Networks",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "3:1--3:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036267",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{McNally:2011:CSC,
  author =       "Kevin McNally and Michael P. O'Mahony and Maurice
                 Coyle and Peter Briggs and Barry Smyth",
  title =        "A Case Study of Collaboration and Reputation in Social
                 {Web} Search",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "4:1--4:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036268",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhao:2011:WDW,
  author =       "Shiwan Zhao and Michelle X. Zhou and Xiatian Zhang and
                 Quan Yuan and Wentao Zheng and Rongyao Fu",
  title =        "Who is Doing What and When: Social Map-Based
                 Recommendation for Content-Centric Social {Web} Sites",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "5:1--5:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036269",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2011:I,
  author =       "Huan Liu and Dana Nau",
  title =        "Introduction",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "6:1--6:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036270",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shakarian:2011:GGA,
  author =       "Paulo Shakarian and V. S. Subrahmanian and Maria Luisa
                 Sapino",
  title =        "{GAPs}: Geospatial Abduction Problems",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "7:1--7:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036271",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gal:2011:AAN,
  author =       "Ya'akov Gal and Sarit Kraus and Michele Gelfand and
                 Hilal Khashan and Elizabeth Salmon",
  title =        "An Adaptive Agent for Negotiating with People in
                 Different Cultures",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "8:1--8:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036272",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Vu:2011:FSK,
  author =       "Thuc Vu and Yoav Shoham",
  title =        "Fair Seeding in Knockout Tournaments",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "9:1--9:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036273",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cioffi-Revilla:2011:GIS,
  author =       "Claudio Cioffi-Revilla and J. Daniel Rogers and
                 Atesmachew Hailegiorgis",
  title =        "Geographic Information Systems and Spatial Agent-Based
                 Model Simulations for Sustainable Development",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "10:1--10:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036274",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jiang:2011:UMS,
  author =       "Yingying Jiang and Feng Tian and Xiaolong (Luke) Zhang
                 and Guozhong Dai and Hongan Wang",
  title =        "Understanding, Manipulating and Searching Hand-Drawn
                 Concept Maps",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "11:1--11:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036275",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2011:IIS,
  author =       "Jingdong Wang and Xian-Sheng Hua",
  title =        "Interactive Image Search by Color Map",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "12:1--12:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036276",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Prettenhofer:2011:CLA,
  author =       "Peter Prettenhofer and Benno Stein",
  title =        "Cross-Lingual Adaptation Using Structural
                 Correspondence Learning",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "13:1--13:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036277",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Anagnostopoulos:2011:WPS,
  author =       "Aris Anagnostopoulos and Andrei Z. Broder and Evgeniy
                 Gabrilovich and Vanja Josifovski and Lance Riedel",
  title =        "{Web} Page Summarization for Just-in-Time Contextual
                 Advertising",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "14:1--14:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036278",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2011:GPU,
  author =       "Lei Tang and Xufei Wang and Huan Liu",
  title =        "Group Profiling for Understanding Social Structures",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "15:1--15:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036279",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2011:TWC,
  author =       "Zhanyi Liu and Haifeng Wang and Hua Wu and Sheng Li",
  title =        "Two-Word Collocation Extraction Using Monolingual Word
                 Alignment Method",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "16:1--16:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036280",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liao:2011:MCS,
  author =       "Zhen Liao and Daxin Jiang and Enhong Chen and Jian Pei
                 and Huanhuan Cao and Hang Li",
  title =        "Mining Concept Sequences from Large-Scale Search Logs
                 for Context-Aware Query Suggestion",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "17:1--17:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036281",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sukthankar:2011:ARD,
  author =       "Gita Sukthankar and Katia Sycara",
  title =        "Activity Recognition for Dynamic Multi-Agent Teams",
  journal =      j-TIST,
  volume =       "3",
  number =       "1",
  pages =        "18:1--18:??",
  month =        oct,
  year =         "2011",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2036264.2036282",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun Nov 6 07:22:40 MST 2011",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2012:ISS,
  author =       "Shixia Liu and Michelle X. Zhou and Giuseppe Carenini
                 and Huamin Qu",
  title =        "Introduction to the Special Section on Intelligent
                 Visual Interfaces for Text Analysis",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "19:1--19:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089095",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cui:2012:WSU,
  author =       "Weiwei Cui and Huamin Qu and Hong Zhou and Wenbin
                 Zhang and Steve Skiena",
  title =        "Watch the Story Unfold with {TextWheel}: Visualization
                 of Large-Scale News Streams",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "20:1--20:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089096",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Keyword-based searching and clustering of news
                 articles have been widely used for news analysis.
                 However, news articles usually have other attributes
                 such as source, author, date and time, length, and
                 sentiment which should be taken into account. In
                 addition, news articles and keywords have complicated
                 macro/micro relations, which include relations between
                 news articles (i.e., macro relation), relations between
                 keywords (i.e., micro relation), and relations between
                 news articles and keywords (i.e., macro-micro
                 relation). These macro/micro relations are time varying
                 and pose special challenges for news analysis. In this
                 article we present a visual analytics system for news
                 streams which can bring multiple attributes of the news
                 articles and the macro/micro relations between news
                 streams and keywords into one coherent analytical
                 context, all the while conveying the dynamic natures of
                 news streams. We introduce a new visualization
                 primitive called TextWheel which consists of one or
                 multiple keyword wheels, a document transportation
                 belt, and a dynamic system which connects the wheels
                 and belt. By observing the TextWheel and its content
                 changes, some interesting patterns can be detected. We
                 use our system to analyze several news corpora related
                 to some major companies and the results demonstrate the
                 high potential of our method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Thai:2012:VAO,
  author =       "Vinhtuan Thai and Pierre-Yves Rouille and Siegfried
                 Handschuh",
  title =        "Visual Abstraction and Ordering in Faceted Browsing of
                 Text Collections",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "21:1--21:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089097",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Faceted navigation is a technique for the exploration
                 and discovery of a collection of resources, which can
                 be of various types including text documents. While
                 being information-rich resources, documents are usually
                 not treated as content-bearing items in faceted
                 browsing interfaces, and yet the required clean
                 metadata is not always available or matches users'
                 interest. In addition, the existing linear listing
                 paradigm for representing result items from the faceted
                 filtering process makes it difficult for users to
                 traverse or compare across facet values in different
                 orders of importance to them. In this context, we
                 report in this article a visual support toward faceted
                 browsing of a collection of documents based on a set of
                 entities of interest to users. Our proposed approach
                 involves using a multi-dimensional visualization as an
                 alternative to the linear listing of focus items. In
                 this visualization, visual abstraction based on a
                 combination of a conceptual structure and the
                 structural equivalence of documents can be
                 simultaneously used to deal with a large number of
                 items. Furthermore, the approach also enables visual
                 ordering based on the importance of facet values to
                 support prioritized, cross-facet comparisons of focus
                 items. A user study was conducted and the results
                 suggest that interfaces using the proposed approach can
                 support users better in exploratory tasks and were also
                 well-liked by the participants of the study, with the
                 hybrid interface combining the multi-dimensional
                 visualization with the linear listing receiving the
                 most favorable ratings.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Candan:2012:PMV,
  author =       "K. Sel{\c{c}}uk Candan and Luigi {Di Caro} and Maria
                 Luisa Sapino",
  title =        "{PhC}: Multiresolution Visualization and Exploration
                 of Text Corpora with Parallel Hierarchical
                 Coordinates",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "22:1--22:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089098",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The high-dimensional nature of the textual data
                 complicates the design of visualization tools to
                 support exploration of large document corpora. In this
                 article, we first argue that the Parallel Coordinates
                 (PC) technique, which can map multidimensional vectors
                 onto a 2D space in such a way that elements with
                 similar values are represented as similar poly-lines or
                 curves in the visualization space, can be used to help
                 users discern patterns in document collections. The
                 inherent reduction in dimensionality during the mapping
                 from multidimensional points to 2D lines, however, may
                 result in visual complications. For instance, the lines
                 that correspond to clusters of objects that are
                 separate in the multidimensional space may overlap each
                 other in the 2D space; the resulting increase in the
                 number of crossings would make it hard to distinguish
                 the individual document clusters. Such crossings of
                 lines and overly dense regions are significant sources
                 of visual clutter, thus avoiding them may help
                 interpret the visualization. In this article, we note
                 that visual clutter can be significantly reduced by
                 adjusting the resolution of the individual term
                 coordinates by clustering the corresponding values.
                 Such reductions in the resolution of the individual
                 term-coordinates, however, will lead to a certain
                 degree of information loss and thus the appropriate
                 resolution for the term-coordinates has to be selected
                 carefully. Thus, in this article we propose a
                 controlled clutter reduction approach, called Parallel
                 hierarchical Coordinates (or PhC ), for reducing the
                 visual clutter in PC-based visualizations of text
                 corpora. We define visual clutter and information loss
                 measures and provide extensive evaluations that show
                 that the proposed PhC provides significant visual gains
                 (i.e., multiple orders of reductions in visual clutter)
                 with small information loss during visualization and
                 exploration of document collections.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gretarsson:2012:TVA,
  author =       "Brynjar Gretarsson and John O'Donovan and Svetlin
                 Bostandjiev and Tobias H{\"o}llerer and Arthur Asuncion
                 and David Newman and Padhraic Smyth",
  title =        "{TopicNets}: Visual Analysis of Large Text Corpora
                 with Topic Modeling",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "23:1--23:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089099",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We present TopicNets, a Web-based system for visual
                 and interactive analysis of large sets of documents
                 using statistical topic models. A range of
                 visualization types and control mechanisms to support
                 knowledge discovery are presented. These include
                 corpus- and document-specific views, iterative topic
                 modeling, search, and visual filtering. Drill-down
                 functionality is provided to allow analysts to
                 visualize individual document sections and their
                 relations within the global topic space. Analysts can
                 search across a dataset through a set of expansion
                 techniques on selected document and topic nodes.
                 Furthermore, analysts can select relevant subsets of
                 documents and perform real-time topic modeling on these
                 subsets to interactively visualize topics at various
                 levels of granularity, allowing for a better
                 understanding of the documents. A discussion of the
                 design and implementation choices for each visual
                 analysis technique is presented. This is followed by a
                 discussion of three diverse use cases in which
                 TopicNets enables fast discovery of information that is
                 otherwise hard to find. These include a corpus of
                 50,000 successful NSF grant proposals, 10,000
                 publications from a large research center, and single
                 documents including a grant proposal and a PhD
                 thesis.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2012:DFE,
  author =       "Yi Zhang and Tao Li",
  title =        "{DClusterE}: a Framework for Evaluating and
                 Understanding Document Clustering Using Visualization",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "24:1--24:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089100",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Over the last decade, document clustering, as one of
                 the key tasks in information organization and
                 navigation, has been widely studied. Many algorithms
                 have been developed for addressing various challenges
                 in document clustering and for improving clustering
                 performance. However, relatively few research efforts
                 have been reported on evaluating and understanding
                 document clustering results. In this article, we
                 present DClusterE, a comprehensive and effective
                 framework for document clustering evaluation and
                 understanding using information visualization.
                 DClusterE integrates cluster validation with user
                 interactions and offers rich visualization tools for
                 users to examine document clustering results from
                 multiple perspectives. In particular, through
                 informative views including force-directed layout view,
                 matrix view, and cluster view, DClusterE provides not
                 only different aspects of document
                 inter/intra-clustering structures, but also the
                 corresponding relationship between clustering results
                 and the ground truth. Additionally, DClusterE supports
                 general user interactions such as zoom in/out,
                 browsing, and interactive access of the documents at
                 different levels. Two new techniques are proposed to
                 implement DClusterE: (1) A novel multiplicative update
                 algorithm (MUA) for matrix reordering to generate
                 narrow-banded (or clustered) nonzero patterns from
                 documents. Combined with coarse seriation, MUA is able
                 to provide better visualization of the cluster
                 structures. (2) A Mallows-distance-based algorithm for
                 establishing the relationship between the clustering
                 results and the ground truth, which serves as the basis
                 for coloring schemes. Experiments and user studies are
                 conducted to demonstrate the effectiveness and
                 efficiency of DClusterE.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2012:TIT,
  author =       "Shixia Liu and Michelle X. Zhou and Shimei Pan and
                 Yangqiu Song and Weihong Qian and Weijia Cai and
                 Xiaoxiao Lian",
  title =        "{TIARA}: Interactive, Topic-Based Visual Text
                 Summarization and Analysis",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "25:1--25:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089101",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We are building an interactive visual text analysis
                 tool that aids users in analyzing large collections of
                 text. Unlike existing work in visual text analytics,
                 which focuses either on developing sophisticated text
                 analytic techniques or inventing novel text
                 visualization metaphors, ours tightly integrates
                 state-of-the-art text analytics with interactive
                 visualization to maximize the value of both. In this
                 article, we present our work from two aspects. We first
                 introduce an enhanced, LDA-based topic analysis
                 technique that automatically derives a set of topics to
                 summarize a collection of documents and their content
                 evolution over time. To help users understand the
                 complex summarization results produced by our topic
                 analysis technique, we then present the design and
                 development of a time-based visualization of the
                 results. Furthermore, we provide users with a set of
                 rich interaction tools that help them further interpret
                 the visualized results in context and examine the text
                 collection from multiple perspectives. As a result, our
                 work offers three unique contributions. First, we
                 present an enhanced topic modeling technique to provide
                 users with a time-sensitive and more meaningful text
                 summary. Second, we develop an effective visual
                 metaphor to transform abstract and often complex text
                 summarization results into a comprehensible visual
                 representation. Third, we offer users flexible visual
                 interaction tools as alternatives to compensate for the
                 deficiencies of current text summarization techniques.
                 We have applied our work to a number of text corpora
                 and our evaluation shows promise, especially in support
                 of complex text analyses.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rohrdantz:2012:FBV,
  author =       "Christian Rohrdantz and Ming C. Hao and Umeshwar Dayal
                 and Lars-Erik Haug and Daniel A. Keim",
  title =        "Feature-Based Visual Sentiment Analysis of Text
                 Document Streams",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "26:1--26:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089102",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article describes automatic methods and
                 interactive visualizations that are tightly coupled
                 with the goal to enable users to detect interesting
                 portions of text document streams. In this scenario the
                 interestingness is derived from the sentiment, temporal
                 density, and context coherence that comments about
                 features for different targets (e.g., persons,
                 institutions, product attributes, topics, etc.) have.
                 Contributions are made at different stages of the
                 visual analytics pipeline, including novel ways to
                 visualize salient temporal accumulations for further
                 exploration. Moreover, based on the visualization, an
                 automatic algorithm aims to detect and preselect
                 interesting time interval patterns for different
                 features in order to guide analysts. The main target
                 group for the suggested methods are business analysts
                 who want to explore time-stamped customer feedback to
                 detect critical issues. Finally, application case
                 studies on two different datasets and scenarios are
                 conducted and an extensive evaluation is provided for
                 the presented intelligent visual interface for
                 feature-based sentiment exploration over time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sugiyama:2012:ISS,
  author =       "Masashi Sugiyama and Qiang Yang",
  title =        "Introduction to the Special Section on the {2nd Asia
                 Conference on Machine Learning (ACML 2010)}",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "27:1--27:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089103",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hajimirsadeghi:2012:CIL,
  author =       "Hossein Hajimirsadeghi and Majid Nili Ahmadabadi and
                 Babak Nadjar Araabi and Hadi Moradi",
  title =        "Conceptual Imitation Learning in a Human-Robot
                 Interaction Paradigm",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "28:1--28:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089104",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In general, imitation is imprecisely used to address
                 different levels of social learning from high-level
                 knowledge transfer to low-level regeneration of motor
                 commands. However, true imitation is based on
                 abstraction and conceptualization. This article
                 presents a model for conceptual imitation through
                 interaction with the teacher to abstract
                 spatio-temporal demonstrations based on their
                 functional meaning. Abstraction, concept acquisition,
                 and self-organization of proto-symbols are performed
                 through an incremental and gradual learning algorithm.
                 In this algorithm, Hidden Markov Models (HMMs) are used
                 to abstract perceptually similar demonstrations.
                 However, abstract (relational) concepts emerge as a
                 collection of HMMs irregularly scattered in the
                 perceptual space but showing the same functionality.
                 Performance of the proposed algorithm is evaluated in
                 two experimental scenarios. The first one is a
                 human-robot interaction task of imitating signs
                 produced by hand movements. The second one is a
                 simulated interactive task of imitating whole body
                 motion patterns of a humanoid model. Experimental
                 results show efficiency of our model for concept
                 extraction, proto-symbol emergence, motion pattern
                 recognition, prediction, and generation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2012:MRC,
  author =       "Peipei Li and Xindong Wu and Xuegang Hu",
  title =        "Mining Recurring Concept Drifts with Limited Labeled
                 Streaming Data",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "29:1--29:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089105",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Tracking recurring concept drifts is a significant
                 issue for machine learning and data mining that
                 frequently appears in real-world stream classification
                 problems. It is a challenge for many streaming
                 classification algorithms to learn recurring concepts
                 in a data stream environment with unlabeled data, and
                 this challenge has received little attention from the
                 research community. Motivated by this challenge, this
                 article focuses on the problem of recurring contexts in
                 streaming environments with limited labeled data. We
                 propose a semi-supervised classification algorithm for
                 data streams with REcurring concept Drifts and Limited
                 LAbeled data, called REDLLA, in which a decision tree
                 is adopted as the classification model. When growing a
                 tree, a clustering algorithm based on k -means is
                 installed to produce concept clusters and unlabeled
                 data are labeled in the method of majority-class at
                 leaves. In view of deviations between history and new
                 concept clusters, potential concept drifts are
                 distinguished and recurring concepts are maintained.
                 Extensive studies on both synthetic and real-world data
                 confirm the advantages of our REDLLA algorithm over
                 three state-of-the-art online classification algorithms
                 of CVFDT, DWCDS, and CDRDT and several known online
                 semi-supervised algorithms, even in the case with more
                 than 90\% unlabeled data.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bifet:2012:ERH,
  author =       "Albert Bifet and Eibe Frank and Geoff Holmes and
                 Bernhard Pfahringer",
  title =        "Ensembles of Restricted {Hoeffding} Trees",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "30:1--30:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089106",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The success of simple methods for classification shows
                 that it is often not necessary to model complex
                 attribute interactions to obtain good classification
                 accuracy on practical problems. In this article, we
                 propose to exploit this phenomenon in the data stream
                 context by building an ensemble of Hoeffding trees that
                 are each limited to a small subset of attributes. In
                 this way, each tree is restricted to model interactions
                 between attributes in its corresponding subset. Because
                 it is not known a priori which attribute subsets are
                 relevant for prediction, we build exhaustive ensembles
                 that consider all possible attribute subsets of a given
                 size. As the resulting Hoeffding trees are not all
                 equally important, we weigh them in a suitable manner
                 to obtain accurate classifications. This is done by
                 combining the log-odds of their probability estimates
                 using sigmoid perceptrons, with one perceptron per
                 class. We propose a mechanism for setting the
                 perceptrons' learning rate using the change detection
                 method for data streams, and also use to reset ensemble
                 members (i.e., Hoeffding trees) when they no longer
                 perform well. Our experiments show that the resulting
                 ensemble classifier outperforms bagging for data
                 streams in terms of accuracy when both are used in
                 conjunction with adaptive naive Bayes Hoeffding trees,
                 at the expense of runtime and memory consumption. We
                 also show that our stacking method can improve the
                 performance of a bagged ensemble.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ma:2012:RPC,
  author =       "Huadong Ma and Chengbin Zeng and Charles X. Ling",
  title =        "A Reliable People Counting System via Multiple
                 Cameras",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "31:1--31:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089107",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Reliable and real-time people counting is crucial in
                 many applications. Most previous works can only count
                 moving people from a single camera, which cannot count
                 still people or can fail badly when there is a crowd
                 (i.e., heavy occlusion occurs). In this article, we
                 build a system for robust and fast people counting
                 under occlusion through multiple cameras. To improve
                 the reliability of human detection from a single
                 camera, we use a dimensionality reduction method on the
                 multilevel edge and texture features to handle the
                 large variations in human appearance and poses. To
                 accelerate the detection speed, we propose a novel
                 two-stage cascade-of-rejectors method. To handle the
                 heavy occlusion in crowded scenes, we present a fusion
                 method with error tolerance to combine human detection
                 from multiple cameras. To improve the speed and
                 accuracy of moving people counting, we combine our
                 multiview fusion detection method with particle
                 tracking to count the number of people moving in/out
                 the camera view (`border control'). Extensive
                 experiments and analyses show that our method
                 outperforms state-of-the-art techniques in single- and
                 multicamera datasets for both speed and reliability. We
                 also design a deployed system for fast and reliable
                 people (still or moving) counting by using multiple
                 cameras.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kolomvatsos:2012:FLS,
  author =       "Kostas Kolomvatsos and Christos Anagnostopoulos and
                 Stathes Hadjiefthymiades",
  title =        "A Fuzzy Logic System for Bargaining in Information
                 Markets",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "32:1--32:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089108",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Future Web business models involve virtual
                 environments where entities interact in order to sell
                 or buy information goods. Such environments are known
                 as Information Markets (IMs). Intelligent agents are
                 used in IMs for representing buyers or information
                 providers (sellers). We focus on the decisions taken by
                 the buyer in the purchase negotiation process with
                 sellers. We propose a reasoning mechanism on the offers
                 (prices of information goods) issued by sellers based
                 on fuzzy logic. The buyer's knowledge on the
                 negotiation process is modeled through fuzzy sets. We
                 propose a fuzzy inference engine dealing with the
                 decisions that the buyer takes on each stage of the
                 negotiation process. The outcome of the proposed
                 reasoning method indicates whether the buyer should
                 accept or reject the sellers' offers. Our findings are
                 very promising for the efficiency of automated
                 transactions undertaken by intelligent agents.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2012:BMA,
  author =       "Lixin Shi and Yuhang Zhao and Jie Tang",
  title =        "Batch Mode Active Learning for Networked Data",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "33:1--33:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089109",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We study a novel problem of batch mode active learning
                 for networked data. In this problem, data instances are
                 connected with links and their labels are correlated
                 with each other, and the goal of batch mode active
                 learning is to exploit the link-based dependencies and
                 node-specific content information to actively select a
                 batch of instances to query the user for learning an
                 accurate model to label unknown instances in the
                 network. We present three criteria (i.e., minimum
                 redundancy, maximum uncertainty, and maximum impact) to
                 quantify the informativeness of a set of instances, and
                 formalize the batch mode active learning problem as
                 selecting a set of instances by maximizing an objective
                 function which combines both link and content
                 information. As solving the objective function is
                 NP-hard, we present an efficient algorithm to optimize
                 the objective function with a bounded approximation
                 rate. To scale to real large networks, we develop a
                 parallel implementation of the algorithm. Experimental
                 results on both synthetic datasets and real-world
                 datasets demonstrate the effectiveness and efficiency
                 of our approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shakarian:2012:AGA,
  author =       "Paulo Shakarian and John P. Dickerson and V. S.
                 Subrahmanian",
  title =        "Adversarial Geospatial Abduction Problems",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "34:1--34:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089110",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Geospatial Abduction Problems (GAPs) involve the
                 inference of a set of locations that `best explain' a
                 given set of locations of observations. For example,
                 the observations might include locations where a serial
                 killer committed murders or where insurgents carried
                 out Improvised Explosive Device (IED) attacks. In both
                 these cases, we would like to infer a set of locations
                 that explain the observations, for example, the set of
                 locations where the serial killer lives/works, and the
                 set of locations where insurgents locate weapons
                 caches. However, unlike all past work on abduction,
                 there is a strong adversarial component to this; an
                 adversary actively attempts to prevent us from
                 discovering such locations. We formalize such abduction
                 problems as a two-player game where both players (an
                 `agent' and an `adversary') use a probabilistic model
                 of their opponent (i.e., a mixed strategy). There is
                 asymmetry as the adversary can choose both the
                 locations of the observations and the locations of the
                 explanation, while the agent (i.e., us) tries to
                 discover these. In this article, we study the problem
                 from the point of view of both players. We define
                 reward functions axiomatically to capture the
                 similarity between two sets of explanations (one
                 corresponding to the locations chosen by the adversary,
                 one guessed by the agent). Many different reward
                 functions can satisfy our axioms. We then formalize the
                 Optimal Adversary Strategy (OAS) problem and the
                 Maximal Counter-Adversary strategy (MCA) and show that
                 both are NP-hard, that their associated counting
                 complexity problems are \#P-hard, and that MCA has no
                 fully polynomial approximation scheme unless P=NP. We
                 show that approximation guarantees are possible for MCA
                 when the reward function satisfies two simple
                 properties (zero-starting and monotonicity) which many
                 natural reward functions satisfy. We develop a mixed
                 integer linear programming algorithm to solve OAS and
                 two algorithms to (approximately) compute MCA; the
                 algorithms yield different approximation guarantees and
                 one algorithm assumes a monotonic reward function. Our
                 experiments use real data about IED attacks over a
                 21-month period in Baghdad. We are able to show that
                 both the MCA algorithms work well in practice; while
                 MCA-GREEDY-MONO is both highly accurate and slightly
                 faster than MCA-LS, MCA-LS (to our surprise) always
                 completely and correctly maximized the expected benefit
                 to the agent while running in an acceptable time
                 period.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2012:LIS,
  author =       "Xueying Li and Huanhuan Cao and Enhong Chen and Jilei
                 Tian",
  title =        "Learning to Infer the Status of Heavy-Duty Sensors for
                 Energy-Efficient Context-Sensing",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "35:1--35:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089111",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the prevalence of smart mobile devices with
                 multiple sensors, the commercial application of
                 intelligent context-aware services becomes more and
                 more attractive. However, limited by the battery
                 capacity, the energy efficiency of context-sensing is
                 the bottleneck for the success of context-aware
                 applications. Though several previous studies for
                 energy-efficient context-sensing have been reported,
                 none of them can be applied to multiple types of
                 high-energy-consuming sensors. Moreover, applying
                 machine learning technologies to energy-efficient
                 context-sensing is underexplored too. In this article,
                 we propose to leverage machine learning technologies
                 for improving the energy efficiency of multiple
                 high-energy-consuming context sensors by trading off
                 the sensing accuracy. To be specific, we try to infer
                 the status of high-energy-consuming sensors according
                 to the outputs of software-based sensors and the
                 physical sensors that are necessary to work all the
                 time for supporting the basic functions of mobile
                 devices. If the inference indicates the
                 high-energy-consuming sensor is in a stable status, we
                 avoid the unnecessary invocation and instead use the
                 latest invoked value as the estimation. The
                 experimental results on real datasets show that the
                 energy efficiency of GPS sensing and audio-level
                 sensing are significantly improved by the proposed
                 approach while the sensing accuracy is over 90\%.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2012:AKR,
  author =       "Weinan Zhang and Dingquan Wang and Gui-Rong Xue and
                 Hongyuan Zha",
  title =        "Advertising Keywords Recommendation for Short-Text
                 {Web} Pages Using {Wikipedia}",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "36:1--36:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089112",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Advertising keywords recommendation is an
                 indispensable component for online advertising with the
                 keywords selected from the target Web pages used for
                 contextual advertising or sponsored search. Several
                 ranking-based algorithms have been proposed for
                 recommending advertising keywords. However, for most of
                 them performance is still lacking, especially when
                 dealing with short-text target Web pages, that is,
                 those containing insufficient textual information for
                 ranking. In some cases, short-text Web pages may not
                 even contain enough keywords for selection. A natural
                 alternative is then to recommend relevant keywords not
                 present in the target Web pages. In this article, we
                 propose a novel algorithm for advertising keywords
                 recommendation for short-text Web pages by leveraging
                 the contents of Wikipedia, a user-contributed online
                 encyclopedia. Wikipedia contains numerous entities with
                 related entities on a topic linked to each other. Given
                 a target Web page, we propose to use a content-biased
                 PageRank on the Wikipedia graph to rank the related
                 entities. Furthermore, in order to recommend
                 high-quality advertising keywords, we also add an
                 advertisement-biased factor into our model. With these
                 two biases, advertising keywords that are both relevant
                 to a target Web page and valuable for advertising are
                 recommended. In our experiments, several
                 state-of-the-art approaches for keyword recommendation
                 are compared. The experimental results demonstrate that
                 our proposed approach produces substantial improvement
                 in the precision of the top 20 recommended keywords on
                 short-text Web pages over existing approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhou:2012:LAD,
  author =       "Ke Zhou and Jing Bai and Hongyuan Zha and Gui-Rong
                 Xue",
  title =        "Leveraging Auxiliary Data for Learning to Rank",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "37:1--37:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089113",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In learning to rank, both the quality and quantity of
                 the training data have significant impacts on the
                 performance of the learned ranking functions. However,
                 in many applications, there are usually not sufficient
                 labeled training data for the construction of an
                 accurate ranking model. It is therefore desirable to
                 leverage existing training data from other tasks when
                 learning the ranking function for a particular task, an
                 important problem which we tackle in this article
                 utilizing a boosting framework with transfer learning.
                 In particular, we propose to adaptively learn
                 transferable representations called super-features from
                 the training data of both the target task and the
                 auxiliary task. Those super-features and the
                 coefficients for combining them are learned in an
                 iterative stage-wise fashion. Unlike previous transfer
                 learning methods, the super-features can be adaptively
                 learned by weak learners from the data. Therefore, the
                 proposed framework is sufficiently flexible to deal
                 with complicated common structures among different
                 learning tasks. We evaluate the performance of the
                 proposed transfer learning method for two datasets from
                 the Letor collection and one dataset collected from a
                 commercial search engine, and we also compare our
                 methods with several existing transfer learning
                 methods. Our results demonstrate that the proposed
                 method can enhance the ranking functions of the target
                 tasks utilizing the training data from the auxiliary
                 tasks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Peng:2012:MVC,
  author =       "Wei Peng and Tong Sun and Shriram Revankar and Tao
                 Li",
  title =        "Mining the {``Voice} of the Customer'' for Business
                 Prioritization",
  journal =      j-TIST,
  volume =       "3",
  number =       "2",
  pages =        "38:1--38:??",
  month =        feb,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2089094.2089114",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 16 15:10:10 MDT 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "To gain competitiveness and sustained growth in the
                 21st century, most businesses are on a mission to
                 become more customer-centric. In order to succeed in
                 this endeavor, it is crucial not only to synthesize and
                 analyze the VOC (the VOice of the Customer) data (i.e.,
                 the feedbacks or requirements raised by customers), but
                 also to quickly turn these data into actionable
                 knowledge. Although there are many technologies being
                 developed in this complex problem space, most existing
                 approaches in analyzing customer requests are ad hoc,
                 time-consuming, error-prone, people-based processes
                 which hardly scale well as the quantity of customer
                 information explodes. This often results in the slow
                 response to customer requests. In this article, in
                 order to mine VOC to extract useful knowledge for the
                 best product or service quality, we develop a hybrid
                 framework that integrates domain knowledge with
                 data-driven approaches to analyze the semi-structured
                 customer requests. The framework consists of capturing
                 functional features, discovering the overlap or
                 correlation among the features, and identifying the
                 evolving feature trend by using the knowledge
                 transformation model. In addition, since understanding
                 the relative importance of the individual customer
                 request is very critical and has a direct impact on the
                 effective prioritization in the development process, we
                 develop a novel semantic enhanced link-based ranking
                 (SELRank) algorithm for relatively rating/ranking both
                 customer requests and products. The framework has been
                 successfully applied on Xerox Office Group Feature
                 Enhancement Requirements (XOG FER) datasets to analyze
                 customer requests.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hua:2012:ISS,
  author =       "Xian-Sheng Hua and Qi Tian and Alberto {Del Bimbo} and
                 Ramesh Jain",
  title =        "Introduction to the {Special Section on Intelligent
                 Multimedia Systems and Technology Part II}",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "39:1--39:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168753",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2012:MRM,
  author =       "Yi-Hsuan Yang and Homer H. Chen",
  title =        "Machine Recognition of Music Emotion: a Review",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "40:1--40:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168754",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The proliferation of MP3 players and the exploding
                 amount of digital music content call for novel ways of
                 music organization and retrieval to meet the
                 ever-increasing demand for easy and effective
                 information access. As almost every music piece is
                 created to convey emotion, music organization and
                 retrieval by emotion is a reasonable way of accessing
                 music information. A good deal of effort has been made
                 in the music information retrieval community to train a
                 machine to automatically recognize the emotion of a
                 music signal. A central issue of machine recognition of
                 music emotion is the conceptualization of emotion and
                 the associated emotion taxonomy. Different viewpoints
                 on this issue have led to the proposal of different
                 ways of emotion annotation, model training, and result
                 visualization. This article provides a comprehensive
                 review of the methods that have been proposed for music
                 emotion recognition. Moreover, as music emotion
                 recognition is still in its infancy, there are many
                 open issues. We review the solutions that have been
                 proposed to address these issues and conclude with
                 suggestions for further research.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ewerth:2012:RVC,
  author =       "Ralph Ewerth and Markus M{\"u}hling and Bernd
                 Freisleben",
  title =        "Robust Video Content Analysis via Transductive
                 Learning",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "41:1--41:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168755",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Reliable video content analysis is an essential
                 prerequisite for effective video search. An important
                 current research question is how to develop robust
                 video content analysis methods that produce
                 satisfactory results for a large variety of video
                 sources, distribution platforms, genres, and content.
                 The work presented in this article exploits the
                 observation that the appearance of objects and events
                 is often related to a particular video sequence,
                 episode, program, or broadcast. This motivates our idea
                 of considering the content analysis task for a single
                 video or episode as a transductive setting: the final
                 classification model must be optimal for the given
                 video only, and not in general, as expected for
                 inductive learning. For this purpose, the unlabeled
                 video test data have to be used in the learning
                 process. In this article, a transductive learning
                 framework for robust video content analysis based on
                 feature selection and ensemble classification is
                 presented. In contrast to related transductive
                 approaches for video analysis (e.g., for concept
                 detection), the framework is designed in a general
                 manner and not only for a single task. The proposed
                 framework is applied to the following video analysis
                 tasks: shot boundary detection, face recognition,
                 semantic video retrieval, and semantic indexing of
                 computer game sequences. Experimental results for
                 diverse video analysis tasks and large test sets
                 demonstrate that the proposed transductive framework
                 improves the robustness of the underlying
                 state-of-the-art approaches, whereas transductive
                 support vector machines do not solve particular tasks
                 in a satisfactory manner.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Suk:2012:VHM,
  author =       "Myunghoon Suk and Ashok Ramadass and Yohan Jin and B.
                 Prabhakaran",
  title =        "Video Human Motion Recognition Using a Knowledge-Based
                 Hybrid Method Based on a Hidden {Markov} Model",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "42:1--42:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168756",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Human motion recognition in video data has several
                 interesting applications in fields such as gaming,
                 senior/assisted-living environments, and surveillance.
                 In these scenarios, we may have to consider adding new
                 motion classes (i.e., new types of human motions to be
                 recognized), as well as new training data (e.g., for
                 handling different type of subjects). Hence, both the
                 accuracy of classification and training time for the
                 machine learning algorithms become important
                 performance parameters in these cases. In this article,
                 we propose a knowledge-based hybrid (KBH) method that
                 can compute the probabilities for hidden Markov models
                 (HMMs) associated with different human motion classes.
                 This computation is facilitated by appropriately mixing
                 features from two different media types (3D motion
                 capture and 2D video). We conducted a variety of
                 experiments comparing the proposed KBH for HMMs and the
                 traditional Baum-Welch algorithms. With the advantage
                 of computing the HMM parameter in a noniterative
                 manner, the KBH method outperforms the Baum-Welch
                 algorithm both in terms of accuracy as well as in
                 reduced training time. Moreover, we show in additional
                 experiments that the KBH method also outperforms the
                 linear support vector machine (SVM).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2012:RVT,
  author =       "Shengping Zhang and Hongxun Yao and Xin Sun and
                 Shaohui Liu",
  title =        "Robust Visual Tracking Using an Effective Appearance
                 Model Based on Sparse Coding",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "43:1--43:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168757",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Intelligent video surveillance is currently one of the
                 most active research topics in computer vision,
                 especially when facing the explosion of video data
                 captured by a large number of surveillance cameras. As
                 a key step of an intelligent surveillance system,
                 robust visual tracking is very challenging for computer
                 vision. However, it is a basic functionality of the
                 human visual system (HVS). Psychophysical findings have
                 shown that the receptive fields of simple cells in the
                 visual cortex can be characterized as being spatially
                 localized, oriented, and bandpass, and it forms a
                 sparse, distributed representation of natural images.
                 In this article, motivated by these findings, we
                 propose an effective appearance model based on sparse
                 coding and apply it in visual tracking. Specifically,
                 we consider the responses of general basis functions
                 extracted by independent component analysis on a large
                 set of natural image patches as features and model the
                 appearance of the tracked target as the probability
                 distribution of these features. In order to make the
                 tracker more robust to partial occlusion, camouflage
                 environments, pose changes, and illumination changes,
                 we further select features that are related to the
                 target based on an entropy-gain criterion and ignore
                 those that are not. The target is finally represented
                 by the probability distribution of those related
                 features. The target search is performed by minimizing
                 the Matusita distance between the distributions of the
                 target model and a candidate using Newton-style
                 iterations. The experimental results validate that the
                 proposed method is more robust and effective than three
                 state-of-the-art methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ji:2012:CAS,
  author =       "Rongrong Ji and Hongxun Yao and Qi Tian and Pengfei Xu
                 and Xiaoshuai Sun and Xianming Liu",
  title =        "Context-Aware Semi-Local Feature Detector",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "44:1--44:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168758",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "How can interest point detectors benefit from
                 contextual cues? In this articles, we introduce a
                 context-aware semi-local detector (CASL) framework to
                 give a systematic answer with three contributions: (1)
                 We integrate the context of interest points to
                 recurrently refine their detections. (2) This
                 integration boosts interest point detectors from the
                 traditionally local scale to a semi-local scale to
                 discover more discriminative salient regions. (3) Such
                 context-aware structure further enables us to bring
                 forward category learning (usually in the subsequent
                 recognition phase) into interest point detection to
                 locate category-aware, meaningful salient regions. Our
                 CASL detector consists of two phases. The first phase
                 accumulates multiscale spatial correlations of local
                 features into a difference of contextual Gaussians
                 (DoCG) field. DoCG quantizes detector context to
                 highlight contextually salient regions at a semi-local
                 scale, which also reveals visual attentions to a
                 certain extent. The second phase locates contextual
                 peaks by mean shift search over the DoCG field, which
                 subsequently integrates contextual cues into feature
                 description. This phase enables us to integrate
                 category learning into mean shift search kernels. This
                 learning-based CASL mechanism produces more
                 category-aware features, which substantially benefits
                 the subsequent visual categorization process. We
                 conducted experiments in image search, object
                 characterization, and feature detector repeatability
                 evaluations, which reported superior discriminability
                 and comparable repeatability to state-of-the-art
                 works.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Berretti:2012:DFF,
  author =       "Stefano Berretti and Alberto {Del Bimbo} and Pietro
                 Pala",
  title =        "Distinguishing Facial Features for Ethnicity-Based
                 {$3$D} Face Recognition",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "45:1--45:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168759",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Among different approaches for 3D face recognition,
                 solutions based on local facial characteristics are
                 very promising, mainly because they can manage facial
                 expression variations by assigning different weights to
                 different parts of the face. However, so far, a few
                 works have investigated the individual relevance that
                 local features play in 3D face recognition with very
                 simple solutions applied in the practice. In this
                 article, a local approach to 3D face recognition is
                 combined with a feature selection model to study the
                 relative relevance of different regions of the face for
                 the purpose of discriminating between different
                 subjects. The proposed solution is experimented using
                 facial scans of the Face Recognition Grand Challenge
                 dataset. Results of the experimentation are two-fold:
                 they quantitatively demonstrate the assumption that
                 different regions of the face have different relevance
                 for face discrimination and also show that the
                 relevance of facial regions changes for different
                 ethnic groups.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2012:GAS,
  author =       "Ning Zhang and Ling-Yu Duan and Lingfang Li and
                 Qingming Huang and Jun Du and Wen Gao and Ling Guan",
  title =        "A Generic Approach for Systematic Analysis of Sports
                 Videos",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "46:1--46:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168760",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Various innovative and original works have been
                 applied and proposed in the field of sports video
                 analysis. However, individual works have focused on
                 sophisticated methodologies with particular sport types
                 and there has been a lack of scalable and holistic
                 frameworks in this field. This article proposes a
                 solution and presents a systematic and generic approach
                 which is experimented on a relatively large-scale
                 sports consortia. The system aims at the event
                 detection scenario of an input video with an orderly
                 sequential process. Initially, domain
                 knowledge-independent local descriptors are extracted
                 homogeneously from the input video sequence. Then the
                 video representation is created by adopting a
                 bag-of-visual-words (BoW) model. The video's genre is
                 first identified by applying the k-nearest neighbor
                 (k-NN) classifiers on the initially obtained video
                 representation, and various dissimilarity measures are
                 assessed and evaluated analytically. Subsequently, an
                 unsupervised probabilistic latent semantic analysis
                 (PLSA)-based approach is employed at the same
                 histogram-based video representation, characterizing
                 each frame of video sequence into one of four view
                 groups, namely closed-up-view, mid-view, long-view, and
                 outer-field-view. Finally, a hidden conditional random
                 field (HCRF) structured prediction model is utilized
                 for interesting event detection. From experimental
                 results, k-NN classifier using KL-divergence
                 measurement demonstrates the best accuracy at 82.16\%
                 for genre categorization. Supervised SVM and
                 unsupervised PLSA have average classification
                 accuracies at 82.86\% and 68.13\%, respectively. The
                 HCRF model achieves 92.31\% accuracy using the
                 unsupervised PLSA based label input, which is
                 comparable with the supervised SVM based input at an
                 accuracy of 93.08\%. In general, such a systematic
                 approach can be widely applied in processing massive
                 videos generically.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Leung:2012:ISM,
  author =       "Clement H. C. Leung and Alice W. S. Chan and Alfredo
                 Milani and Jiming Liu and Yuanxi Li",
  title =        "Intelligent Social Media Indexing and Sharing Using an
                 Adaptive Indexing Search Engine",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "47:1--47:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168761",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Effective sharing of diverse social media is often
                 inhibited by limitations in their search and discovery
                 mechanisms, which are particularly restrictive for
                 media that do not lend themselves to automatic
                 processing or indexing. Here, we present the structure
                 and mechanism of an adaptive search engine which is
                 designed to overcome such limitations. The basic
                 framework of the adaptive search engine is to capture
                 human judgment in the course of normal usage from user
                 queries in order to develop semantic indexes which link
                 search terms to media objects semantics. This approach
                 is particularly effective for the retrieval of
                 multimedia objects, such as images, sounds, and videos,
                 where a direct analysis of the object features does not
                 allow them to be linked to search terms, for example,
                 nontextual/icon-based search, deep semantic search, or
                 when search terms are unknown at the time the media
                 repository is built. An adaptive search architecture is
                 presented to enable the index to evolve with respect to
                 user feedback, while a randomized query-processing
                 technique guarantees avoiding local minima and allows
                 the meaningful indexing of new media objects and new
                 terms. The present adaptive search engine allows for
                 the efficient community creation and updating of social
                 media indexes, which is able to instill and propagate
                 deep knowledge into social media concerning the
                 advanced search and usage of media resources.
                 Experiments with various relevance distribution
                 settings have shown efficient convergence of such
                 indexes, which enable intelligent search and sharing of
                 social media resources that are otherwise hard to
                 discover.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chien:2012:ISS,
  author =       "Steve Chien and Amedeo Cesta",
  title =        "Introduction to the Special Section on Artificial
                 Intelligence in Space",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "48:1--48:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168762",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wagstaff:2012:DLS,
  author =       "Kiri L. Wagstaff and Julian Panetta and Adnan Ansar
                 and Ronald Greeley and Mary Pendleton Hoffer and
                 Melissa Bunte and Norbert Sch{\"o}rghofer",
  title =        "Dynamic Landmarking for Surface Feature Identification
                 and Change Detection",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "49:1--49:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168763",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Given the large volume of images being sent back from
                 remote spacecraft, there is a need for automated
                 analysis techniques that can quickly identify
                 interesting features in those images. Feature
                 identification in individual images and automated
                 change detection in multiple images of the same target
                 are valuable for scientific studies and can inform
                 subsequent target selection. We introduce a new
                 approach to orbital image analysis called dynamic
                 landmarking. It focuses on the identification and
                 comparison of visually salient features in images. We
                 have evaluated this approach on images collected by
                 five Mars orbiters. These evaluations were motivated by
                 three scientific goals: to study fresh impact craters,
                 dust devil tracks, and dark slope streaks on Mars. In
                 the process we also detected a different kind of
                 surface change that may indicate seasonally exposed
                 bedforms. These experiences also point the way to how
                 this approach could be used in an onboard setting to
                 analyze and prioritize data as it is collected.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Estlin:2012:AAS,
  author =       "Tara A. Estlin and Benjamin J. Bornstein and Daniel M.
                 Gaines and Robert C. Anderson and David R. Thompson and
                 Michael Burl and Rebecca Casta{\~n}o and Michele Judd",
  title =        "{AEGIS} Automated Science Targeting for the {MER
                 Opportunity Rover}",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "50:1--50:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168764",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The Autonomous Exploration for Gathering Increased
                 Science (AEGIS) system enables automated data
                 collection by planetary rovers. AEGIS software was
                 uploaded to the Mars Exploration Rover (MER) mission's
                 Opportunity rover in December 2009 and has successfully
                 demonstrated automated onboard targeting based on
                 scientist-specified objectives. Prior to AEGIS, images
                 were transmitted from the rover to the operations team
                 on Earth; scientists manually analyzed the images,
                 selected geological targets for the rover's
                 remote-sensing instruments, and then generated a
                 command sequence to execute the new measurements. AEGIS
                 represents a significant paradigm shift---by using
                 onboard data analysis techniques, the AEGIS software
                 uses scientist input to select high-quality science
                 targets with no human in the loop. This approach allows
                 the rover to autonomously select and sequence targeted
                 observations in an opportunistic fashion, which is
                 particularly applicable for narrow field-of-view
                 instruments (such as the MER Mini-TES spectrometer, the
                 MER Panoramic camera, and the 2011 Mars Science
                 Laboratory (MSL) ChemCam spectrometer). This article
                 provides an overview of the AEGIS automated targeting
                 capability and describes how it is currently being used
                 onboard the MER mission Opportunity rover.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hayden:2012:UCM,
  author =       "David S. Hayden and Steve Chien and David R. Thompson
                 and Rebecca Casta{\~n}o",
  title =        "Using Clustering and Metric Learning to Improve
                 Science Return of Remote Sensed Imagery",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "51:1--51:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168765",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Current and proposed remote space missions, such as
                 the proposed aerial exploration of Titan by an aerobot,
                 often can collect more data than can be communicated
                 back to Earth. Autonomous selective downlink algorithms
                 can choose informative subsets of data to improve the
                 science value of these bandwidth-limited transmissions.
                 This requires statistical descriptors of the data that
                 reflect very abstract and subtle distinctions in
                 science content. We propose a metric learning strategy
                 that teaches algorithms how best to cluster new data
                 based on training examples supplied by domain
                 scientists. We demonstrate that clustering informed by
                 metric learning produces results that more closely
                 match multiple scientists' labelings of aerial data
                 than do clusterings based on random or periodic
                 sampling. A new metric-learning strategy accommodates
                 training sets produced by multiple scientists with
                 different and potentially inconsistent mission
                 objectives. Our methods are fit for current spacecraft
                 processors (e.g., RAD750) and would further benefit
                 from more advanced spacecraft processor architectures,
                 such as OPERA.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hoi:2012:ISS,
  author =       "Steven C. H. Hoi and Rong Jin and Jinhui Tang and
                 Zhi-Hua Zhou",
  title =        "Introduction to the Special Section on Distance Metric
                 Learning in Intelligent Systems",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "52:1--52:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168766",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhai:2012:MML,
  author =       "Deming Zhai and Hong Chang and Shiguang Shan and Xilin
                 Chen and Wen Gao",
  title =        "Multiview Metric Learning with Global Consistency and
                 Local Smoothness",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "53:1--53:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168767",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In many real-world applications, the same object may
                 have different observations (or descriptions) from
                 multiview observation spaces, which are highly related
                 but sometimes look different from each other.
                 Conventional metric-learning methods achieve
                 satisfactory performance on distance metric computation
                 of data in a single-view observation space, but fail to
                 handle well data sampled from multiview observation
                 spaces, especially those with highly nonlinear
                 structure. To tackle this problem, we propose a new
                 method called Multiview Metric Learning with Global
                 consistency and Local smoothness (MVML-GL) under a
                 semisupervised learning setting, which jointly
                 considers global consistency and local smoothness. The
                 basic idea is to reveal the shared latent feature space
                 of the multiview observations by embodying global
                 consistency constraints and preserving local geometric
                 structures. Specifically, this framework is composed of
                 two main steps. In the first step, we seek a global
                 consistent shared latent feature space, which not only
                 preserves the local geometric structure in each space
                 but also makes those labeled corresponding instances as
                 close as possible. In the second step, the explicit
                 mapping functions between the input spaces and the
                 shared latent space are learned via regularized locally
                 linear regression. Furthermore, these two steps both
                 can be solved by convex optimizations in closed form.
                 Experimental results with application to manifold
                 alignment on real-world datasets of pose and facial
                 expression demonstrate the effectiveness of the
                 proposed method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2012:TML,
  author =       "Yu Zhang and Dit-Yan Yeung",
  title =        "Transfer Metric Learning with Semi-Supervised
                 Extension",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "54:1--54:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168768",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Distance metric learning plays a very crucial role in
                 many data mining algorithms because the performance of
                 an algorithm relies heavily on choosing a good metric.
                 However, the labeled data available in many
                 applications is scarce, and hence the metrics learned
                 are often unsatisfactory. In this article, we consider
                 a transfer-learning setting in which some related
                 source tasks with labeled data are available to help
                 the learning of the target task. We first propose a
                 convex formulation for multitask metric learning by
                 modeling the task relationships in the form of a task
                 covariance matrix. Then we regard transfer learning as
                 a special case of multitask learning and adapt the
                 formulation of multitask metric learning to the
                 transfer-learning setting for our method, called
                 transfer metric learning (TML). In TML, we learn the
                 metric and the task covariances between the source
                 tasks and the target task under a unified convex
                 formulation. To solve the convex optimization problem,
                 we use an alternating method in which each subproblem
                 has an efficient solution. Moreover, in many
                 applications, some unlabeled data is also available in
                 the target task, and so we propose a semi-supervised
                 extension of TML called STML to further improve the
                 generalization performance by exploiting the unlabeled
                 data based on the manifold assumption. Experimental
                 results on some commonly used transfer-learning
                 applications demonstrate the effectiveness of our
                 method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xu:2012:MLE,
  author =       "Jun-Ming Xu and Xiaojin Zhu and Timothy T. Rogers",
  title =        "Metric Learning for Estimating Psychological
                 Similarities",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "55:1--55:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168769",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "An important problem in cognitive psychology is to
                 quantify the perceived similarities between stimuli.
                 Previous work attempted to address this problem with
                 multidimensional scaling (MDS) and its variants.
                 However, there are several shortcomings of the MDS
                 approaches. We propose Yada, a novel general
                 metric-learning procedure based on two-alternative
                 forced-choice behavioral experiments. Our method learns
                 forward and backward nonlinear mappings between an
                 objective space in which the stimuli are defined by the
                 standard feature vector representation and a subjective
                 space in which the distance between a pair of stimuli
                 corresponds to their perceived similarity. We conduct
                 experiments on both synthetic and real human behavioral
                 datasets to assess the effectiveness of Yada. The
                 results show that Yada outperforms several standard
                 embedding and metric-learning algorithms, both in terms
                 of likelihood and recovery error.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zheng:2012:MTP,
  author =       "Yan-Tao Zheng and Zheng-Jun Zha and Tat-Seng Chua",
  title =        "Mining Travel Patterns from Geotagged Photos",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "56:1--56:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168770",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recently, the phenomenal advent of photo-sharing
                 services, such as Flickr and Panoramio, have led to
                 voluminous community-contributed photos with text tags,
                 timestamps, and geographic references on the Internet.
                 The photos, together with their time- and
                 geo-references, become the digital footprints of photo
                 takers and implicitly document their spatiotemporal
                 movements. This study aims to leverage the wealth of
                 these enriched online photos to analyze people's travel
                 patterns at the local level of a tour destination.
                 Specifically, we focus our analysis on two aspects: (1)
                 tourist movement patterns in relation to the regions of
                 attractions (RoA), and (2) topological characteristics
                 of travel routes by different tourists. To do so, we
                 first build a statistically reliable database of travel
                 paths from a noisy pool of community-contributed
                 geotagged photos on the Internet. We then investigate
                 the tourist traffic flow among different RoAs by
                 exploiting the Markov chain model. Finally, the
                 topological characteristics of travel routes are
                 analyzed by performing a sequence clustering on tour
                 routes. Testings on four major cities demonstrate
                 promising results of the proposed system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rendle:2012:FML,
  author =       "Steffen Rendle",
  title =        "Factorization Machines with {libFM}",
  journal =      j-TIST,
  volume =       "3",
  number =       "3",
  pages =        "57:1--57:??",
  month =        may,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2168752.2168771",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:23 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Factorization approaches provide high accuracy in
                 several important prediction problems, for example,
                 recommender systems. However, applying factorization
                 approaches to a new prediction problem is a nontrivial
                 task and requires a lot of expert knowledge. Typically,
                 a new model is developed, a learning algorithm is
                 derived, and the approach has to be implemented.
                 Factorization machines (FM) are a generic approach
                 since they can mimic most factorization models just by
                 feature engineering. This way, factorization machines
                 combine the generality of feature engineering with the
                 superiority of factorization models in estimating
                 interactions between categorical variables of large
                 domain. libFM is a software implementation for
                 factorization machines that features stochastic
                 gradient descent (SGD) and alternating least-squares
                 (ALS) optimization, as well as Bayesian inference using
                 Markov Chain Monto Carlo (MCMC). This article
                 summarizes the recent research on factorization
                 machines both in terms of modeling and learning,
                 provides extensions for the ALS and MCMC algorithms,
                 and describes the software tool libFM.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gabrilovich:2012:ISS,
  author =       "Evgeniy Gabrilovich and Zhong Su and Jie Tang",
  title =        "Introduction to the {Special Section on Computational
                 Models of Collective Intelligence in the Social Web}",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "58:1--58:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337543",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Herdagdelen:2012:BGP,
  author =       "Ama{\c{c}} Herdagdelen and Marco Baroni",
  title =        "Bootstrapping a Game with a Purpose for Commonsense
                 Collection",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "59:1--59:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337544",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Text mining has been very successful in extracting
                 huge amounts of commonsense knowledge from data, but
                 the extracted knowledge tends to be extremely noisy.
                 Manual construction of knowledge repositories, on the
                 other hand, tends to produce high-quality data in very
                 small amounts. We propose an architecture to combine
                 the best of both worlds: A game with a purpose that
                 induces humans to clean up data automatically extracted
                 by text mining. First, a text miner trained on a set of
                 known commonsense facts harvests many more candidate
                 facts from corpora. Then, a simple
                 slot-machine-with-a-purpose game presents these
                 candidate facts to the players for verification by
                 playing. As a result, a new dataset of high precision
                 commonsense knowledge is created. This combined
                 architecture is able to produce significantly better
                 commonsense facts than the state-of-the-art text miner
                 alone. Furthermore, we report that bootstrapping (i.e.,
                 training the text miner on the output of the game)
                 improves the subsequent performance of the text
                 miner.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Carmel:2012:FBT,
  author =       "David Carmel and Erel Uziel and Ido Guy and Yosi Mass
                 and Haggai Roitman",
  title =        "Folksonomy-Based Term Extraction for Word Cloud
                 Generation",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "60:1--60:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337545",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this work we study the task of term extraction for
                 word cloud generation in sparsely tagged domains, in
                 which manual tags are scarce. We present a
                 folksonomy-based term extraction method, called
                 tag-boost, which boosts terms that are frequently used
                 by the public to tag content. Our experiments with
                 tag-boost based term extraction over different domains
                 demonstrate tremendous improvement in word cloud
                 quality, as reflected by the agreement between manual
                 tags of the testing items and the cloud's terms
                 extracted from the items' content. Moreover, our
                 results demonstrate the high robustness of this
                 approach, as compared to alternative cloud generation
                 methods that exhibit a high sensitivity to data
                 sparseness. Additionally, we show that tag-boost can be
                 effectively applied even in nontagged domains, by using
                 an external rich folksonomy borrowed from a well-tagged
                 domain.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2012:IOS,
  author =       "Guan Wang and Sihong Xie and Bing Liu and Philip S.
                 Yu",
  title =        "Identify Online Store Review Spammers via Social
                 Review Graph",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "61:1--61:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337546",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Online shopping reviews provide valuable information
                 for customers to compare the quality of products, store
                 services, and many other aspects of future purchases.
                 However, spammers are joining this community trying to
                 mislead consumers by writing fake or unfair reviews to
                 confuse the consumers. Previous attempts have used
                 reviewers' behaviors such as text similarity and rating
                 patterns, to detect spammers. These studies are able to
                 identify certain types of spammers, for instance, those
                 who post many similar reviews about one target.
                 However, in reality, there are other kinds of spammers
                 who can manipulate their behaviors to act just like
                 normal reviewers, and thus cannot be detected by the
                 available techniques. In this article, we propose a
                 novel concept of review graph to capture the
                 relationships among all reviewers, reviews and stores
                 that the reviewers have reviewed as a heterogeneous
                 graph. We explore how interactions between nodes in
                 this graph could reveal the cause of spam and propose
                 an iterative computation model to identify suspicious
                 reviewers. In the review graph, we have three kinds of
                 nodes, namely, reviewer, review, and store. We capture
                 their relationships by introducing three fundamental
                 concepts, the trustiness of reviewers, the honesty of
                 reviews, and the reliability of stores, and identifying
                 their interrelationships: a reviewer is more
                 trustworthy if the person has written more honesty
                 reviews; a store is more reliable if it has more
                 positive reviews from trustworthy reviewers; and a
                 review is more honest if many other honest reviews
                 support it. This is the first time such intricate
                 relationships have been identified for spam detection
                 and captured in a graph model. We further develop an
                 effective computation method based on the proposed
                 graph model. Different from any existing approaches, we
                 do not use an review text information. Our model is
                 thus complementary to existing approaches and able to
                 find more difficult and subtle spamming activities,
                 which are agreed upon by human judges after they
                 evaluate our results.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lerman:2012:USM,
  author =       "Kristina Lerman and Tad Hogg",
  title =        "Using Stochastic Models to Describe and Predict Social
                 Dynamics of {Web} Users",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "62:1--62:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337547",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The popularity of content in social media is unequally
                 distributed, with some items receiving a
                 disproportionate share of attention from users.
                 Predicting which newly-submitted items will become
                 popular is critically important for both the hosts of
                 social media content and its consumers. Accurate and
                 timely prediction would enable hosts to maximize
                 revenue through differential pricing for access to
                 content or ad placement. Prediction would also give
                 consumers an important tool for filtering the content.
                 Predicting the popularity of content in social media is
                 challenging due to the complex interactions between
                 content quality and how the social media site
                 highlights its content. Moreover, most social media
                 sites selectively present content that has been highly
                 rated by similar users, whose similarity is indicated
                 implicitly by their behavior or explicitly by links in
                 a social network. While these factors make it difficult
                 to predict popularity a priori, stochastic models of
                 user behavior on these sites can allow predicting
                 popularity based on early user reactions to new
                 content. By incorporating the various mechanisms
                 through which web sites display content, such models
                 improve on predictions that are based on simply
                 extrapolating from the early votes. Specifically, for
                 one such site, the news aggregator Digg, we show how a
                 stochastic model distinguishes the effect of the
                 increased visibility due to the network from how
                 interested users are in the content. We find a wide
                 range of interest, distinguishing stories primarily of
                 interest to users in the network (``niche interests'')
                 from those of more general interest to the user
                 community. This distinction is useful for predicting a
                 story's eventual popularity from users' early reactions
                 to the story.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yin:2012:LCT,
  author =       "Zhijun Yin and Liangliang Cao and Quanquan Gu and
                 Jiawei Han",
  title =        "Latent Community Topic Analysis: Integration of
                 Community Discovery with Topic Modeling",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "63:1--63:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337548",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article studies the problem of latent community
                 topic analysis in text-associated graphs. With the
                 development of social media, a lot of user-generated
                 content is available with user networks. Along with
                 rich information in networks, user graphs can be
                 extended with text information associated with nodes.
                 Topic modeling is a classic problem in text mining and
                 it is interesting to discover the latent topics in
                 text-associated graphs. Different from traditional
                 topic modeling methods considering links, we
                 incorporate community discovery into topic analysis in
                 text-associated graphs to guarantee the topical
                 coherence in the communities so that users in the same
                 community are closely linked to each other and share
                 common latent topics. We handle topic modeling and
                 community discovery in the same framework. In our model
                 we separate the concepts of community and topic, so one
                 community can correspond to multiple topics and
                 multiple communities can share the same topic. We
                 compare different methods and perform extensive
                 experiments on two real datasets. The results confirm
                 our hypothesis that topics could help understand
                 community structure, while community structure could
                 help model topics.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sizov:2012:LGS,
  author =       "Sergej Sizov",
  title =        "Latent Geospatial Semantics of Social Media",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "64:1--64:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337549",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Multimodal understanding of shared content is an
                 important success factor for many Web 2.0 applications
                 and platforms. This article addresses the fundamental
                 question of geo-spatial awareness in social media
                 applications. In this context, we introduce an approach
                 for improved characterization of social media by
                 combining text features (e.g., tags as a prominent
                 example of short, unstructured text labels) with
                 spatial knowledge (e.g., geotags, coordinates of
                 images, and videos). Our model-based framework GeoFolk
                 combines these two aspects in order to construct better
                 algorithms for content management, retrieval, and
                 sharing. We demonstrate in systematic studies the
                 benefits of this combination for a broad spectrum of
                 scenarios related to social media: recommender systems,
                 automatic content organization and filtering, and event
                 detection. Furthermore, we establish a simple and
                 technically sound model that can be seen as a reference
                 baseline for future research in the field of geotagged
                 social media.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cortizo:2012:ISS,
  author =       "Jos{\'e} Carlos Cortizo and Francisco Carrero and
                 Iv{\'a}n Cantador and Jos{\'e} Antonio Troyano and
                 Paolo Rosso",
  title =        "Introduction to the Special Section on Search and
                 Mining User-Generated Content",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "65:1--65:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337550",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The primary goal of this special section of ACM
                 Transactions on Intelligent Systems and Technology is
                 to foster research in the interplay between Social
                 Media, Data/Opinion Mining and Search, aiming to
                 reflect the actual developments in technologies that
                 exploit user-generated content.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Paltoglou:2012:TMD,
  author =       "Georgios Paltoglou and Mike Thelwall",
  title =        "{Twitter}, {MySpace}, {Digg}: Unsupervised Sentiment
                 Analysis in Social Media",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "66:1--66:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337551",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Sentiment analysis is a growing area of research with
                 significant applications in both industry and academia.
                 Most of the proposed solutions are centered around
                 supervised, machine learning approaches and
                 review-oriented datasets. In this article, we focus on
                 the more common informal textual communication on the
                 Web, such as online discussions, tweets and social
                 network comments and propose an intuitive, less
                 domain-specific, unsupervised, lexicon-based approach
                 that estimates the level of emotional intensity
                 contained in text in order to make a prediction. Our
                 approach can be applied to, and is tested in, two
                 different but complementary contexts: subjectivity
                 detection and polarity classification. Extensive
                 experiments were carried on three real-world datasets,
                 extracted from online social Web sites and annotated by
                 human evaluators, against state-of-the-art supervised
                 approaches. The results demonstrate that the proposed
                 algorithm, even though unsupervised, outperforms
                 machine learning solutions in the majority of cases,
                 overall presenting a very robust and reliable solution
                 for sentiment analysis of informal communication on the
                 Web.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Trivedi:2012:LSB,
  author =       "Anusua Trivedi and Piyush Rai and Hal {Daum{\'e} III}
                 and Scott L. Duvall",
  title =        "Leveraging Social Bookmarks from Partially Tagged
                 Corpus for Improved {Web} Page Clustering",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "67:1--67:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337552",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Automatic clustering of Web pages helps a number of
                 information retrieval tasks, such as improving user
                 interfaces, collection clustering, introducing
                 diversity in search results, etc. Typically, Web page
                 clustering algorithms use only features extracted from
                 the page-text. However, the advent of
                 social-bookmarking Web sites, such as StumbleUpon.com
                 and Delicious.com, has led to a huge amount of
                 user-generated content such as the social tag
                 information that is associated with the Web pages. In
                 this article, we present a subspace based feature
                 extraction approach that leverages the social tag
                 information to complement the page-contents of a Web
                 page for extracting beter features, with the goal of
                 improved clustering performance. In our approach, we
                 consider page-text and tags as two separate views of
                 the data, and learn a shared subspace that maximizes
                 the correlation between the two views. Any clustering
                 algorithm can then be applied in this subspace. We then
                 present an extension that allows our approach to be
                 applicable even if the Web page corpus is only
                 partially tagged, that is, when the social tags are
                 present for not all, but only for a small number of Web
                 pages. We compare our subspace based approach with a
                 number of baselines that use tag information in various
                 other ways, and show that the subspace based approach
                 leads to improved performance on the Web page
                 clustering task. We also discuss some possible future
                 work including an active learning extension that can
                 help in choosing which Web pages to get tags for, if we
                 only can get the social tags for only a small number of
                 Web pages.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Potthast:2012:IRC,
  author =       "Martin Potthast and Benno Stein and Fabian Loose and
                 Steffen Becker",
  title =        "Information Retrieval in the {Commentsphere}",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "68:1--68:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337553",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article studies information retrieval tasks
                 related to Web comments. Prerequisite of such a study
                 and a main contribution of the article is a unifying
                 survey of the research field. We identify the most
                 important retrieval tasks related to comments, namely
                 filtering, ranking, and summarization. Within these
                 tasks, we distinguish two paradigms according to which
                 comments are utilized and which we designate as
                 comment-targeting and comment-exploiting. Within the
                 first paradigm, the comments themselves form the
                 retrieval targets. Within the second paradigm, the
                 commented items form the retrieval targets (i.e.,
                 comments are used as an additional information source
                 to improve the retrieval performance for the commented
                 items). We report on four case studies to demonstrate
                 the exploration of the commentsphere under information
                 retrieval aspects: comment filtering, comment ranking,
                 comment summarization and cross-media retrieval. The
                 first three studies deal primarily with
                 comment-targeting retrieval, while the last one deals
                 with comment-exploiting retrieval. Throughout the
                 article, connections to information retrieval research
                 are pointed out.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Carmel:2012:RBN,
  author =       "David Carmel and Haggai Roitman and Elad Yom-Tov",
  title =        "On the Relationship between Novelty and Popularity of
                 User-Generated Content",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "69:1--69:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337554",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This work deals with the task of predicting the
                 popularity of user-generated content. We demonstrate
                 how the novelty of newly published content plays an
                 important role in affecting its popularity. More
                 specifically, we study three dimensions of novelty. The
                 first one, termed contemporaneous novelty, models the
                 relative novelty embedded in a new post with respect to
                 contemporary content that was generated by others. The
                 second type of novelty, termed self novelty, models the
                 relative novelty with respect to the user's own
                 contribution history. The third type of novelty, termed
                 discussion novelty, relates to the novelty of the
                 comments associated by readers with respect to the post
                 content. We demonstrate the contribution of the new
                 novelty measures to estimating blog-post popularity by
                 predicting the number of comments expected for a fresh
                 post. We further demonstrate how novelty based measures
                 can be utilized for predicting the citation volume of
                 academic papers.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2012:ERQ,
  author =       "Xiaonan Li and Chengkai Li and Cong Yu",
  title =        "Entity-Relationship Queries over {Wikipedia}",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "70:1--70:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337555",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Wikipedia is the largest user-generated knowledge
                 base. We propose a structured query mechanism,
                 entity-relationship query, for searching entities in
                 the Wikipedia corpus by their properties and
                 interrelationships. An entity-relationship query
                 consists of multiple predicates on desired entities.
                 The semantics of each predicate is specified with
                 keywords. Entity-relationship query searches entities
                 directly over text instead of preextracted structured
                 data stores. This characteristic brings two benefits:
                 (1) Query semantics can be intuitively expressed by
                 keywords; (2) It only requires rudimentary entity
                 annotation, which is simpler than explicitly extracting
                 and reasoning about complex semantic information before
                 query-time. We present a ranking framework for general
                 entity-relationship queries and a position-based
                 Bounded Cumulative Model (BCM) for accurate ranking of
                 query answers. We also explore various weighting
                 schemes for further improving the accuracy of BCM. We
                 test our ideas on a 2008 version of Wikipedia using a
                 collection of 45 queries pooled from INEX entity
                 ranking track and our own crafted queries. Experiments
                 show that the ranking and weighting schemes are both
                 effective, particularly on multipredicate queries.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2012:EFW,
  author =       "Haofen Wang and Linyun Fu and Wei Jin and Yong Yu",
  title =        "{EachWiki}: Facilitating Wiki Authoring by Annotation
                 Suggestion",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "71:1--71:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337556",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Wikipedia, one of the best-known wikis and the world's
                 largest free online encyclopedia, has embraced the
                 power of collaborative editing to harness collective
                 intelligence. However, using such a wiki to create
                 high-quality articles is not as easy as people imagine,
                 given for instance the difficulty of reusing knowledge
                 already available in Wikipedia. As a result, the heavy
                 burden of upbuilding and maintaining the ever-growing
                 online encyclopedia still rests on a small group of
                 people. In this article, we aim at facilitating wiki
                 authoring by providing annotation recommendations, thus
                 lightening the burden of both contributors and
                 administrators. We leverage the collective wisdom of
                 the users by exploiting Semantic Web technologies with
                 Wikipedia data and adopt a unified algorithm to support
                 link, category, and semantic relation recommendation. A
                 prototype system named EachWiki is proposed and
                 evaluated. The experimental results show that it has
                 achieved considerable improvements in terms of
                 effectiveness, efficiency and usability. The proposed
                 approach can also be applied to other wiki-based
                 collaborative editing systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lampos:2012:NES,
  author =       "Vasileios Lampos and Nello Cristianini",
  title =        "Nowcasting Events from the Social {Web} with
                 Statistical Learning",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "72:1--72:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337557",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We present a general methodology for inferring the
                 occurrence and magnitude of an event or phenomenon by
                 exploring the rich amount of unstructured textual
                 information on the social part of the Web. Having
                 geo-tagged user posts on the microblogging service of
                 Twitter as our input data, we investigate two case
                 studies. The first consists of a benchmark problem,
                 where actual levels of rainfall in a given location and
                 time are inferred from the content of tweets. The
                 second one is a real-life task, where we infer regional
                 Influenza-like Illness rates in the effort of detecting
                 timely an emerging epidemic disease. Our analysis
                 builds on a statistical learning framework, which
                 performs sparse learning via the bootstrapped version
                 of LASSO to select a consistent subset of textual
                 features from a large amount of candidates. In both
                 case studies, selected features indicate close semantic
                 correlation with the target topics and inference,
                 conducted by regression, has a significant performance,
                 especially given the short length --approximately one
                 year-- of Twitter's data time series.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2012:RUI,
  author =       "Xuning Tang and Christopher C. Yang",
  title =        "Ranking User Influence in Healthcare Social Media",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "73:1--73:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337558",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Due to the revolutionary development of Web 2.0
                 technology, individual users have become major
                 contributors of Web content in online social media. In
                 light of the growing activities, how to measure a
                 user's influence to other users in online social media
                 becomes increasingly important. This research need is
                 urgent especially in the online healthcare community
                 since positive influence can be beneficial while
                 negative influence may cause-negative impact on other
                 users of the same community. In this article, a
                 research framework was proposed to study user influence
                 within the online healthcare community. We proposed a
                 new approach to incorporate users' reply relationship,
                 conversation content and response immediacy which
                 capture both explicit and implicit interaction between
                 users to identify influential users of online
                 healthcare community. A weighted social network is
                 developed to represent the influence between users. We
                 tested our proposed techniques thoroughly on two
                 medical support forums. Two algorithms UserRank and
                 Weighted in-degree are benchmarked with PageRank and
                 in-degree. Experiment results demonstrated the validity
                 and effectiveness of our proposed approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Strohmaier:2012:EFI,
  author =       "Markus Strohmaier and Denis Helic and Dominik Benz and
                 Christian K{\"o}rner and Roman Kern",
  title =        "Evaluation of Folksonomy Induction Algorithms",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "74:1--74:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337559",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Algorithms for constructing hierarchical structures
                 from user-generated metadata have caught the interest
                 of the academic community in recent years. In social
                 tagging systems, the output of these algorithms is
                 usually referred to as folksonomies (from
                 folk-generated taxonomies). Evaluation of folksonomies
                 and folksonomy induction algorithms is a challenging
                 issue complicated by the lack of golden standards, lack
                 of comprehensive methods and tools as well as a lack of
                 research and empirical/simulation studies applying
                 these methods. In this article, we report results from
                 a broad comparative study of state-of-the-art
                 folksonomy induction algorithms that we have applied
                 and evaluated in the context of five social tagging
                 systems. In addition to adopting semantic evaluation
                 techniques, we present and adopt a new technique that
                 can be used to evaluate the usefulness of folksonomies
                 for navigation. Our work sheds new light on the
                 properties and characteristics of state-of-the-art
                 folksonomy induction algorithms and introduces a new
                 pragmatic approach to folksonomy evaluation, while at
                 the same time identifying some important limitations
                 and challenges of folksonomy evaluation. Our results
                 show that folksonomy induction algorithms specifically
                 developed to capture intuitions of social tagging
                 systems outperform traditional hierarchical clustering
                 techniques. To the best of our knowledge, this work
                 represents the largest and most comprehensive
                 evaluation study of state-of-the-art folksonomy
                 induction algorithms to date.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2012:EAL,
  author =       "Xiaoqin Shelley Zhang and Bhavesh Shrestha and
                 Sungwook Yoon and Subbarao Kambhampati and Phillip
                 DiBona and Jinhong K. Guo and Daniel McFarlane and
                 Martin O. Hofmann and Kenneth Whitebread and Darren
                 Scott Appling and Elizabeth T. Whitaker and Ethan B.
                 Trewhitt and Li Ding and James R. Michaelis and Deborah
                 L. McGuinness and James A. Hendler and Janardhan Rao
                 Doppa and Charles Parker and Thomas G. Dietterich and
                 Prasad Tadepalli and Weng-Keen Wong and Derek Green and
                 Anton Rebguns and Diana Spears and Ugur Kuter and Geoff
                 Levine and Gerald DeJong and Reid L. MacTavish and
                 Santiago Onta{\~n}{\'o}n and Jainarayan Radhakrishnan
                 and Ashwin Ram and Hala Mostafa and Huzaifa Zafar and
                 Chongjie Zhang and Daniel Corkill and Victor Lesser and
                 Zhexuan Song",
  title =        "An Ensemble Architecture for Learning Complex
                 Problem-Solving Techniques from Demonstration",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "75:1--75:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337560",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We present a novel ensemble architecture for learning
                 problem-solving techniques from a very small number of
                 expert solutions and demonstrate its effectiveness in a
                 complex real-world domain. The key feature of our
                 ``Generalized Integrated Learning Architecture'' (GILA)
                 is a set of heterogeneous independent learning and
                 reasoning (ILR) components, coordinated by a central
                 meta-reasoning executive (MRE). The ILRs are weakly
                 coupled in the sense that all coordination during
                 learning and performance happens through the MRE. Each
                 ILR learns independently from a small number of expert
                 demonstrations of a complex task. During performance,
                 each ILR proposes partial solutions to subproblems
                 posed by the MRE, which are then selected from and
                 pieced together by the MRE to produce a complete
                 solution. The heterogeneity of the learner-reasoners
                 allows both learning and problem solving to be more
                 effective because their abilities and biases are
                 complementary and synergistic. We describe the
                 application of this novel learning and problem solving
                 architecture to the domain of airspace management,
                 where multiple requests for the use of airspaces need
                 to be deconflicted, reconciled, and managed
                 automatically. Formal evaluations show that our system
                 performs as well as or better than humans after
                 learning from the same training data. Furthermore, GILA
                 outperforms any individual ILR run in isolation, thus
                 demonstrating the power of the ensemble architecture
                 for learning and problem solving.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "75",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2012:LCR,
  author =       "Zhenxing Wang and Laiwan Chan",
  title =        "Learning Causal Relations in Multivariate Time Series
                 Data",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "76:1--76:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337561",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Many applications naturally involve time series data
                 and the vector autoregression (VAR), and the structural
                 VAR (SVAR) are dominant tools to investigate relations
                 between variables in time series. In the first part of
                 this work, we show that the SVAR method is incapable of
                 identifying contemporaneous causal relations for
                 Gaussian process. In addition, least squares estimators
                 become unreliable when the scales of the problems are
                 large and observations are limited. In the remaining
                 part, we propose an approach to apply Bayesian network
                 learning algorithms to identify SVARs from time series
                 data in order to capture both temporal and
                 contemporaneous causal relations, and avoid high-order
                 statistical tests. The difficulty of applying Bayesian
                 network learning algorithms to time series is that the
                 sizes of the networks corresponding to time series tend
                 to be large, and high-order statistical tests are
                 required by Bayesian network learning algorithms in
                 this case. To overcome the difficulty, we show that the
                 search space of conditioning sets d-separating two
                 vertices should be a subset of the Markov blankets.
                 Based on this fact, we propose an algorithm enabling us
                 to learn Bayesian networks locally, and make the
                 largest order of statistical tests independent of the
                 scales of the problems. Empirical results show that our
                 algorithm outperforms existing methods in terms of both
                 efficiency and accuracy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "76",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mandrake:2012:SSD,
  author =       "Lukas Mandrake and Umaa Rebbapragada and Kiri L.
                 Wagstaff and David Thompson and Steve Chien and Daniel
                 Tran and Robert T. Pappalardo and Damhnait Gleeson and
                 Rebecca Casta{\~n}o",
  title =        "Surface Sulfur Detection via Remote Sensing and
                 Onboard Classification",
  journal =      j-TIST,
  volume =       "3",
  number =       "4",
  pages =        "77:1--77:??",
  month =        sep,
  year =         "2012",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2337542.2337562",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Nov 6 18:47:26 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Orbital remote sensing provides a powerful way to
                 efficiently survey targets such as the Earth and other
                 planets and moons for features of interest. One such
                 feature of astrobiological relevance is the presence of
                 surface sulfur deposits. These deposits have been
                 observed to be associated with microbial activity at
                 the Borup Fiord glacial springs in Canada, a location
                 that may provide an analogue to other icy environments
                 such as Europa. This article evaluates automated
                 classifiers for detecting sulfur in remote sensing
                 observations by the hyperion spectrometer on the EO-1
                 spacecraft. We determined that a data-driven machine
                 learning solution was needed because the sulfur could
                 not be detected by simply matching observations to
                 sulfur lab spectra. We also evaluated several methods
                 (manual and automated) for identifying the most
                 relevant attributes (spectral wavelengths) needed for
                 successful sulfur detection. Our findings include (1)
                 the Borup Fiord sulfur deposits were best modeled as
                 containing two sub-populations: sulfur on ice and
                 sulfur on rock; (2) as expected, classifiers using
                 Gaussian kernels outperformed those based on linear
                 kernels, and should be adopted when onboard
                 computational constraints permit; and (3) Recursive
                 Feature Elimination selected sensible and effective
                 features for use in the computationally constrained
                 environment onboard EO-1. This study helped guide the
                 selection of algorithm parameters and configuration for
                 the classification system currently operational on
                 EO-1. Finally, we discuss implications for a similar
                 onboard classification system for a future Europa
                 orbiter.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "77",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{King:2013:ISS,
  author =       "Irwin King and Wolfgang Nejdl",
  title =        "Introduction to the special section on {Twitter} and
                 microblogging services",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "1:1--1:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414426",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cheng:2013:CDF,
  author =       "Zhiyuan Cheng and James Caverlee and Kyumin Lee",
  title =        "A content-driven framework for geolocating microblog
                 users",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "2:1--2:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414427",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Highly dynamic real-time microblog systems have
                 already published petabytes of real-time human sensor
                 data in the form of status updates. However, the lack
                 of user adoption of geo-based features per user or per
                 post signals that the promise of microblog services as
                 location-based sensing systems may have only limited
                 reach and impact. Thus, in this article, we propose and
                 evaluate a probabilistic framework for estimating a
                 microblog user's location based purely on the content
                 of the user's posts. Our framework can overcome the
                 sparsity of geo-enabled features in these services and
                 bring augmented scope and breadth to emerging
                 location-based personalized information services. Three
                 of the key features of the proposed approach are: (i)
                 its reliance purely on publicly available content; (ii)
                 a classification component for automatically
                 identifying words in posts with a strong local
                 geo-scope; and (iii) a lattice-based neighborhood
                 smoothing model for refining a user's location
                 estimate. On average we find that the location
                 estimates converge quickly, placing 51\% of users
                 within 100 miles of their actual location.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2013:NER,
  author =       "Xiaohua Liu and Furu Wei and Shaodian Zhang and Ming
                 Zhou",
  title =        "Named entity recognition for tweets",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "3:1--3:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414428",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Two main challenges of Named Entity Recognition (NER)
                 for tweets are the insufficient information in a tweet
                 and the lack of training data. We propose a novel
                 method consisting of three core elements: (1)
                 normalization of tweets; (2) combination of a K-Nearest
                 Neighbors (KNN) classifier with a linear Conditional
                 Random Fields (CRF) model; and (3) semisupervised
                 learning framework. The tweet normalization
                 preprocessing corrects common ill-formed words using a
                 global linear model. The KNN-based classifier conducts
                 prelabeling to collect global coarse evidence across
                 tweets while the CRF model conducts sequential labeling
                 to capture fine-grained information encoded in a tweet.
                 The semisupervised learning plus the gazetteers
                 alleviate the lack of training data. Extensive
                 experiments show the advantages of our method over the
                 baselines as well as the effectiveness of
                 normalization, KNN, and semisupervised learning.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chang:2013:IRR,
  author =       "Yi Chang and Anlei Dong and Pranam Kolari and Ruiqiang
                 Zhang and Yoshiyuki Inagaki and Fernanodo Diaz and
                 Hongyuan Zha and Yan Liu",
  title =        "Improving recency ranking using {Twitter} data",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "4:1--4:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414429",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In Web search and vertical search, recency ranking
                 refers to retrieving and ranking documents by both
                 relevance and freshness. As impoverished in-links and
                 click information is the biggest challenge for recency
                 ranking, we advocate the use of Twitter data to address
                 the challenge in this article. We propose a method to
                 utilize Twitter TinyURL to detect fresh and
                 high-quality documents, and leverage Twitter data to
                 generate novel and effective features for ranking. The
                 empirical experiments demonstrate that the proposed
                 approach effectively improves a commercial search
                 engine for both Web search ranking and tweet vertical
                 ranking.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Han:2013:LNS,
  author =       "Bo Han and Paul Cook and Timothy Baldwin",
  title =        "Lexical normalization for social media text",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "5:1--5:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414430",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Twitter provides access to large volumes of data in
                 real time, but is notoriously noisy, hampering its
                 utility for NLP. In this article, we target
                 out-of-vocabulary words in short text messages and
                 propose a method for identifying and normalizing
                 lexical variants. Our method uses a classifier to
                 detect lexical variants, and generates correction
                 candidates based on morphophonemic similarity. Both
                 word similarity and context are then exploited to
                 select the most probable correction candidate for the
                 word. The proposed method doesn't require any
                 annotations, and achieves state-of-the-art performance
                 over an SMS corpus and a novel dataset based on
                 Twitter.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shen:2013:RUT,
  author =       "Keyi Shen and Jianmin Wu and Ya Zhang and Yiping Han
                 and Xiaokang Yang and Li Song and Xiao Gu",
  title =        "Reorder user's tweets",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "6:1--6:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414431",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Twitter displays the tweets a user received in a
                 reversed chronological order, which is not always the
                 best choice. As Twitter is full of messages of very
                 different qualities, many informative or relevant
                 tweets might be flooded or displayed at the bottom
                 while some nonsense buzzes might be ranked higher. In
                 this work, we present a supervised learning method for
                 personalized tweets reordering based on user interests.
                 User activities on Twitter, in terms of tweeting,
                 retweeting, and replying, are leveraged to obtain the
                 training data for reordering models. Through exploring
                 a rich set of social and personalized features, we
                 model the relevance of tweets by minimizing the
                 pairwise loss of relevant and irrelevant tweets. The
                 tweets are then reordered according to the predicted
                 relevance scores. Experimental results with real
                 Twitter user activities demonstrated the effectiveness
                 of our method. The new method achieved above 30\%
                 accuracy gain compared with the default ordering in
                 Twitter based on time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Guy:2013:ISS,
  author =       "Ido Guy and Li Chen and Michelle X. Zhou",
  title =        "Introduction to the special section on social
                 recommender systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "7:1--7:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414432",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Quijano-Sanchez:2013:SFG,
  author =       "Lara Quijano-Sanchez and Juan A. Recio-Garcia and
                 Belen Diaz-Agudo and Guillermo Jimenez-Diaz",
  title =        "Social factors in group recommender systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "8:1--8:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414433",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article we review the existing techniques in
                 group recommender systems and we propose some
                 improvement based on the study of the different
                 individual behaviors when carrying out a
                 decision-making process. Our method includes an
                 analysis of group personality composition and trust
                 between each group member to improve the accuracy of
                 group recommenders. This way we simulate the
                 argumentation process followed by groups of people when
                 agreeing on a common activity in a more realistic way.
                 Moreover, we reflect how they expect the system to
                 behave in a long term recommendation process. This is
                 achieved by including a memory of past recommendations
                 that increases the satisfaction of users whose
                 preferences have not been taken into account in
                 previous recommendations.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2013:GVR,
  author =       "Weishi Zhang and Guiguang Ding and Li Chen and
                 Chunping Li and Chengbo Zhang",
  title =        "Generating virtual ratings from {Chinese} reviews to
                 augment online recommendations",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "9:1--9:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414434",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Collaborative filtering (CF) recommenders based on
                 User-Item rating matrix as explicitly obtained from end
                 users have recently appeared promising in recommender
                 systems. However, User-Item rating matrix is not always
                 available or very sparse in some web applications,
                 which has critical impact to the application of CF
                 recommenders. In this article we aim to enhance the
                 online recommender system by fusing virtual ratings as
                 derived from user reviews. Specifically, taking into
                 account of Chinese reviews' characteristics, we propose
                 to fuse the self-supervised emotion-integrated
                 sentiment classification results into CF recommenders,
                 by which the User-Item Rating Matrix can be inferred by
                 decomposing item reviews that users gave to the items.
                 The main advantage of this approach is that it can
                 extend CF recommenders to some web applications without
                 user rating information. In the experiments, we have
                 first identified the self-supervised sentiment
                 classification's higher precision and recall by
                 comparing it with traditional classification methods.
                 Furthermore, the classification results, as behaving as
                 virtual ratings, were incorporated into both user-based
                 and item-based CF algorithms. We have also conducted an
                 experiment to evaluate the proximity between the
                 virtual and real ratings and clarified the
                 effectiveness of the virtual ratings. The experimental
                 results demonstrated the significant impact of virtual
                 ratings on increasing system's recommendation accuracy
                 in different data conditions (i.e., conditions with
                 real ratings and without).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Biancalana:2013:ASR,
  author =       "Claudio Biancalana and Fabio Gasparetti and Alessandro
                 Micarelli and Giuseppe Sansonetti",
  title =        "An approach to social recommendation for context-aware
                 mobile services",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "10:1--10:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414435",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Nowadays, several location-based services (LBSs) allow
                 their users to take advantage of information from the
                 Web about points of interest (POIs) such as cultural
                 events or restaurants. To the best of our knowledge,
                 however, none of these provides information taking into
                 account user preferences, or other elements, in
                 addition to location, that contribute to define the
                 context of use. The provided suggestions do not
                 consider, for example, time, day of week, weather, user
                 activity or means of transport. This article describes
                 a social recommender system able to identify user
                 preferences and information needs, thus suggesting
                 personalized recommendations related to POIs in the
                 surroundings of the user's current location. The
                 proposed approach achieves the following goals: (i) to
                 supply, unlike the current LBSs, a methodology for
                 identifying user preferences and needs to be used in
                 the information filtering process; (ii) to exploit the
                 ever-growing amount of information from social
                 networking, user reviews, and local search Web sites;
                 (iii) to establish procedures for defining the context
                 of use to be employed in the recommendation of POIs
                 with low effort. The flexibility of the architecture is
                 such that our approach can be easily extended to any
                 category of POI. Experimental tests carried out on real
                 users enabled us to quantify the benefits of the
                 proposed approach in terms of performance
                 improvement.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gedikli:2013:IRA,
  author =       "Fatih Gedikli and Dietmar Jannach",
  title =        "Improving recommendation accuracy based on
                 item-specific tag preferences",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "11:1--11:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414436",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In recent years, different proposals have been made to
                 exploit Social Web tagging information to build more
                 effective recommender systems. The tagging data, for
                 example, were used to identify similar users or were
                 viewed as additional information about the
                 recommendable items. Recent research has indicated that
                 ``attaching feelings to tags'' is experienced by users
                 as a valuable means to express which features of an
                 item they particularly like or dislike. When following
                 such an approach, users would therefore not only add
                 tags to an item as in usual Web 2.0 applications, but
                 also attach a preference ( affect ) to the tag itself,
                 expressing, for example, whether or not they liked a
                 certain actor in a given movie. In this work, we show
                 how this additional preference data can be exploited by
                 a recommender system to make more accurate predictions.
                 In contrast to previous work, which also relied on
                 so-called tag preferences to enhance the predictive
                 accuracy of recommender systems, we argue that tag
                 preferences should be considered in the context of an
                 item. We therefore propose new schemes to infer and
                 exploit context-specific tag preferences in the
                 recommendation process. An evaluation on two different
                 datasets reveals that our approach is capable of
                 providing more accurate recommendations than previous
                 tag-based recommender algorithms and recent
                 tag-agnostic matrix factorization techniques.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2013:MRW,
  author =       "Yu-Chih Chen and Yu-Shi Lin and Yu-Chun Shen and
                 Shou-De Lin",
  title =        "A modified random walk framework for handling negative
                 ratings and generating explanations",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "12:1--12:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414437",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The concept of random walk (RW) has been widely
                 applied in the design of recommendation systems.
                 RW-based approaches are effective in handling locality
                 problem and taking extra information, such as the
                 relationships between items or users, into
                 consideration. However, the traditional RW-based
                 approach has a serious limitation in handling
                 bidirectional opinions. The propagation of positive and
                 negative information simultaneously in a graph is
                 nontrivial using random walk. To address the problem,
                 this article presents a novel and efficient RW-based
                 model that can handle both positive and negative
                 comments with the guarantee of convergence.
                 Furthermore, we argue that a good recommendation system
                 should provide users not only a list of recommended
                 items but also reasonable explanations for the
                 decisions. Therefore, we propose a technique that
                 generates explanations by backtracking the influential
                 paths and subgraphs. The results of experiments on the
                 MovieLens and Netflix datasets show that our model
                 significantly outperforms state-of-the-art RW-based
                 algorithms, and is capable of improving the overall
                 performance in the ensemble with other models.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Said:2013:MRC,
  author =       "Alan Said and Shlomo Berkovsky and Ernesto W. {De
                 Luca}",
  title =        "Movie recommendation in context",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "13:1--13:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414438",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The challenge and workshop on Context-Aware Movie
                 Recommendation (CAMRa2010) were conducted jointly in
                 2010 with the Recommender Systems conference. The
                 challenge focused on three context-aware recommendation
                 scenarios: time-based, mood-based, and social
                 recommendation. The participants were provided with
                 anonymized datasets from two real-world online movie
                 recommendation communities and competed against each
                 other for obtaining the highest accuracy of
                 recommendations. The datasets contained contextual
                 features, such as tags, annotation, social
                 relationsips, and comments, normally not available in
                 public recommendation datasets. More than 40 teams from
                 21 countries participated in the challenge. Their
                 participation was summarized by 10 papers published by
                 the workshop, which have been extended and revised for
                 this special section. In this preface we overview the
                 challenge datasets, tasks, evaluation metrics, and the
                 obtained outcomes.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bellogin:2013:ECS,
  author =       "Alejandro Bellog{\'\i}n and Iv{\'a}n Cantador and
                 Fernando D{\'\i}ez and Pablo Castells and Enrique
                 Chavarriaga",
  title =        "An empirical comparison of social, collaborative
                 filtering, and hybrid recommenders",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "14:1--14:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414439",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In the Social Web, a number of diverse recommendation
                 approaches have been proposed to exploit the user
                 generated contents available in the Web, such as
                 rating, tagging, and social networking information. In
                 general, these approaches naturally require the
                 availability of a wide amount of these user
                 preferences. This may represent an important limitation
                 for real applications, and may be somewhat unnoticed in
                 studies focusing on overall precision, in which a
                 failure to produce recommendations gets blurred when
                 averaging the obtained results or, even worse, is just
                 not accounted for, as users with no recommendations are
                 typically excluded from the performance calculations.
                 In this article, we propose a coverage metric that
                 uncovers and compensates for the incompleteness of
                 performance evaluations based only on precision. We use
                 this metric together with precision metrics in an
                 empirical comparison of several social, collaborative
                 filtering, and hybrid recommenders. The obtained
                 results show that a better balance between precision
                 and coverage can be achieved by combining social-based
                 filtering (high accuracy, low coverage) and
                 collaborative filtering (low accuracy, high coverage)
                 recommendation techniques. We thus explore several
                 hybrid recommendation approaches to balance this
                 trade-off. In particular, we compare, on the one hand,
                 techniques integrating collaborative and social
                 information into a single model, and on the other,
                 linear combinations of recommenders. For the last
                 approach, we also propose a novel strategy to
                 dynamically adjust the weight of each recommender on a
                 user-basis, utilizing graph measures as indicators of
                 the target user's connectedness and relevance in a
                 social network.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2013:STC,
  author =       "Nathan N. Liu and Luheng He and Min Zhao",
  title =        "Social temporal collaborative ranking for context
                 aware movie recommendation",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "15:1--15:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414440",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Most existing collaborative filtering models only
                 consider the use of user feedback (e.g., ratings) and
                 meta data (e.g., content, demographics). However, in
                 most real world recommender systems, context
                 information, such as time and social networks, are also
                 very important factors that could be considered in
                 order to produce more accurate recommendations. In this
                 work, we address several challenges for the context
                 aware movie recommendation tasks in CAMRa 2010: (1) how
                 to combine multiple heterogeneous forms of user
                 feedback? (2) how to cope with dynamic user and item
                 characteristics? (3) how to capture and utilize social
                 connections among users? For the first challenge, we
                 propose a novel ranking based matrix factorization
                 model to aggregate explicit and implicit user feedback.
                 For the second challenge, we extend this model to a
                 sequential matrix factorization model to enable
                 time-aware parametrization. Finally, we introduce a
                 network regularization function to constrain user
                 parameters based on social connections. To the best of
                 our knowledge, this is the first study that
                 investigates the collective modeling of social and
                 temporal dynamics. Experiments on the CAMRa 2010
                 dataset demonstrated clear improvements over many
                 baselines.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2013:MCM,
  author =       "Yue Shi and Martha Larson and Alan Hanjalic",
  title =        "Mining contextual movie similarity with matrix
                 factorization for context-aware recommendation",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "16:1--16:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414441",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Context-aware recommendation seeks to improve
                 recommendation performance by exploiting various
                 information sources in addition to the conventional
                 user-item matrix used by recommender systems. We
                 propose a novel context-aware movie recommendation
                 algorithm based on joint matrix factorization (JMF). We
                 jointly factorize the user-item matrix containing
                 general movie ratings and other contextual movie
                 similarity matrices to integrate contextual information
                 into the recommendation process. The algorithm was
                 developed within the scope of the mood-aware
                 recommendation task that was offered by the Moviepilot
                 mood track of the 2010 context-aware movie
                 recommendation (CAMRa) challenge. Although the
                 algorithm could generalize to other types of contextual
                 information, in this work, we focus on two: movie mood
                 tags and movie plot keywords. Since the objective in
                 this challenge track is to recommend movies for a user
                 given a specified mood, we devise a novel mood-specific
                 movie similarity measure for this purpose. We enhance
                 the recommendation based on this measure by also
                 deploying the second movie similarity measure proposed
                 in this article that takes into account the movie plot
                 keywords. We validate the effectiveness of the proposed
                 JMF algorithm with respect to the recommendation
                 performance by carrying out experiments on the
                 Moviepilot challenge dataset. We demonstrate that
                 exploiting contextual information in JMF leads to
                 significant improvement over several state-of-the-art
                 approaches that generate movie recommendations without
                 using contextual information. We also demonstrate that
                 our proposed mood-specific movie similarity is better
                 suited for the task than the conventional mood-based
                 movie similarity measures. Finally, we show that the
                 enhancement provided by the movie similarity capturing
                 the plot keywords is particularly helpful in improving
                 the recommendation to those users who are significantly
                 more active in rating the movies than other users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Okada:2013:MDA,
  author =       "Isamu Okada and Hitoshi Yamamoto",
  title =        "Mathematical description and analysis of adaptive risk
                 choice behavior",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "17:1--17:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414442",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Which risk should one choose when facing alternatives
                 with different levels of risk? We discuss here adaptive
                 processes in such risk choice behavior by generalizing
                 the study of Roos et al. [2010]. We deal with an n
                 -choice game in which every player sequentially chooses
                 n times of lotteries of which there are two types: a
                 safe lottery and a risky lottery. We analyze this model
                 in more detail by elaborating the game. Based on the
                 results of mathematical analysis, replicator dynamics
                 analysis, and numerical simulations, we derived some
                 salient features of risk choice behavior. We show that
                 all the risk strategies can be divided into two groups:
                 persistence and nonpersistence. We also proved that the
                 dynamics with perturbation in which a mutation is
                 installed is globally asymptotically stable to a unique
                 equilibrium point for any initial population. The
                 numerical simulations clarify that the number of
                 persistent strategies seldom increases regardless of
                 the increase in n, and suggest that a rarity of
                 dominant choice strategies is widely observed in many
                 social contexts. These facts not only go hand-in-hand
                 with some well-known insights from prospect theory, but
                 may also provide some theoretical hypotheses for
                 various fields such as behavioral economics, ecology,
                 sociology, and consumer behavioral theory.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Song:2013:OSM,
  author =       "Xuan Song and Huijing Zhao and Jinshi Cui and Xiaowei
                 Shao and Ryosuke Shibasaki and Hongbin Zha",
  title =        "An online system for multiple interacting targets
                 tracking: Fusion of laser and vision, tracking and
                 learning",
  journal =      j-TIST,
  volume =       "4",
  number =       "1",
  pages =        "18:1--18:??",
  month =        jan,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2414425.2414443",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Multitarget tracking becomes significantly more
                 challenging when the targets are in close proximity or
                 frequently interact with each other. This article
                 presents a promising online system to deal with these
                 problems. The novelty of this system is that laser and
                 vision are integrated with tracking and online learning
                 to complement each other in one framework: when the
                 targets do not interact with each other, the
                 laser-based independent trackers are employed and the
                 visual information is extracted simultaneously to train
                 some classifiers online for ``possible interacting
                 targets''. When the targets are in close proximity, the
                 classifiers learned online are used alongside visual
                 information to assist in tracking. Therefore, this mode
                 of cooperation not only deals with various tough
                 problems encountered in tracking, but also ensures that
                 the entire process can be completely online and
                 automatic. Experimental results demonstrate that laser
                 and vision fully display their respective advantages in
                 our system, and it is easy for us to obtain a good
                 trade-off between tracking accuracy and the time-cost
                 factor.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chopra:2013:ISS,
  author =       "Amit K. Chopra and Alexander Artikis and Jamal
                 Bentahar and Frank Dignum",
  title =        "Introduction to the special section on agent
                 communication",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "19:1--19:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chopra:2013:RDA,
  author =       "Amit K. Chopra and Alexander Artikis and Jamal
                 Bentahar and Marco Colombetti and Frank Dignum and
                 Nicoletta Fornara and Andrew J. I. Jones and Munindar
                 P. Singh and Pinar Yolum",
  title =        "Research directions in agent communication",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "20:1--20:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Increasingly, software engineering involves open
                 systems consisting of autonomous and heterogeneous
                 participants or agents who carry out loosely coupled
                 interactions. Accordingly, understanding and specifying
                 communications among agents is a key concern. A focus
                 on ways to formalize meaning distinguishes agent
                 communication from traditional distributed computing:
                 meaning provides a basis for flexible interactions and
                 compliance checking. Over the years, a number of
                 approaches have emerged with some essential and some
                 irrelevant distinctions drawn among them. As agent
                 abstractions gain increasing traction in the software
                 engineering of open systems, it is important to resolve
                 the irrelevant and highlight the essential
                 distinctions, so that future research can be focused in
                 the most productive directions. This article is an
                 outcome of extensive discussions among agent
                 communication researchers, aimed at taking stock of the
                 field and at developing, criticizing, and refining
                 their positions on specific approaches and future
                 challenges. This article serves some important
                 purposes, including identifying (1) points of broad
                 consensus; (2) points where substantive differences
                 remain; and (3) interesting directions of future
                 work.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gerard:2013:FVP,
  author =       "Scott N. Gerard and Munindar P. Singh",
  title =        "Formalizing and verifying protocol refinements",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "21:1--21:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "A (business) protocol describes, in high-level terms,
                 a pattern of communication between two or more
                 participants, specifically via the creation and
                 manipulation of the commitments between them. In this
                 manner, a protocol offers both flexibility and rigor: a
                 participant may communicate in any way it chooses as
                 long as it discharges all of its activated commitments.
                 Protocols thus promise benefits in engineering
                 cross-organizational business processes. However,
                 software engineering using protocols presupposes a
                 formalization of protocols and a notion of the
                 refinement of one protocol by another. Refinement for
                 protocols is both intuitively obvious (e.g.,
                 PayViaCheck is clearly a kind of Pay ) and technically
                 nontrivial (e.g., compared to Pay, PayViaCheck involves
                 different participants exchanging different messages).
                 This article formalizes protocols and their refinement.
                 It develops Proton, an analysis tool for protocol
                 specifications that overlays a model checker to compute
                 whether one protocol refines another with respect to a
                 stated mapping. Proton and its underlying theory are
                 evaluated by formalizing several protocols from the
                 literature and verifying all and only the expected
                 refinements.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Baldoni:2013:CRS,
  author =       "Matteo Baldoni and Cristina Baroglio and Elisa Marengo
                 and Viviana Patti",
  title =        "Constitutive and regulative specifications of
                 commitment protocols: a decoupled approach",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "22:1--22:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Interaction protocols play a fundamental role in
                 multiagent systems. In this work, after analyzing the
                 trends that are emerging not only from research on
                 multiagent interaction protocols but also from
                 neighboring fields, like research on workflows and
                 business processes, we propose a novel definition of
                 commitment-based interaction protocols, that is
                 characterized by the decoupling of the constitutive and
                 the regulative specifications and that explicitly
                 foresees a representation of the latter based on
                 constraints among commitments. A clear distinction
                 between the two representations has many advantages,
                 mainly residing in a greater openness of multiagent
                 systems, and an easier reuse of protocols and of action
                 definitions. A language, named 2CL, for writing
                 regulative specifications is also given together with a
                 designer-oriented graphical notation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Falcone:2013:ISS,
  author =       "Rino Falcone and Munindar P. Singh",
  title =        "Introduction to special section on trust in multiagent
                 systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "23:1--23:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2013:FTM,
  author =       "Jie Zhang and Robin Cohen",
  title =        "A framework for trust modeling in multiagent
                 electronic marketplaces with buying advisors to
                 consider varying seller behavior and the limiting of
                 seller bids",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "24:1--24:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we present a framework of use in
                 electronic marketplaces that allows buying agents to
                 model the trustworthiness of selling agents in an
                 effective way, making use of seller ratings provided by
                 other buying agents known as advisors. The
                 trustworthiness of the advisors is also modeled, using
                 an approach that combines both personal and public
                 knowledge and allows the relative weighting to be
                 adjusted over time. Through a series of experiments
                 that simulate e-marketplaces, including ones where
                 sellers may vary their behavior over time, we are able
                 to demonstrate that our proposed framework delivers
                 effective seller recommendations to buyers, resulting
                 in important buyer profit. We also propose limiting
                 seller bids as a method for promoting seller honesty,
                 thus facilitating successful selection of sellers by
                 buyers, and demonstrate the value of this approach
                 through experimental results. Overall, this research is
                 focused on the technological aspects of electronic
                 commerce and specifically on technology that would be
                 used to manage trust.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Erriquez:2013:BUS,
  author =       "Elisabetta Erriquez and Wiebe van der Hoek and Michael
                 Wooldridge",
  title =        "Building and using social structures: a case study
                 using the agent {ART} testbed",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "25:1--25:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article investigates the conjecture that agents
                 who make decisions in scenarios where trust is
                 important can benefit from the use of a social
                 structure, representing the social relationships that
                 exist between agents. We propose techniques that can be
                 used by agents to initially build and then
                 progressively update such a structure in the light of
                 experience. We describe an implementation of our
                 techniques in the domain of the Agent ART testbed: we
                 take two existing agents for this domain (``Simplet''
                 and ``Connected'') and compare their performance with
                 versions that use our social structure
                 (``SocialSimplet'' and ``SocialConnected''). We show
                 that SocialSimplet and SocialConnected outperform their
                 counterparts with respect to the quality of the
                 interactions, the number of rounds won in a
                 competition, and the total utility gained.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Burnett:2013:STB,
  author =       "Chris Burnett and Timothy J. Norman and Katia Sycara",
  title =        "Stereotypical trust and bias in dynamic multiagent
                 systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "26:1--26:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Large-scale multiagent systems have the potential to
                 be highly dynamic. Trust and reputation are crucial
                 concepts in these environments, as it may be necessary
                 for agents to rely on their peers to perform as
                 expected, and learn to avoid untrustworthy partners.
                 However, aspects of highly dynamic systems introduce
                 issues which make the formation of trust relationships
                 difficult. For example, they may be short-lived,
                 precluding agents from gaining the necessary
                 experiences to make an accurate trust evaluation. This
                 article describes a new approach, inspired by theories
                 of human organizational behavior, whereby agents
                 generalize their experiences with previously
                 encountered partners as stereotypes, based on the
                 observable features of those partners and their
                 behaviors. Subsequently, these stereotypes are applied
                 when evaluating new and unknown partners. Furthermore,
                 these stereotypical opinions can be communicated within
                 the society, resulting in the notion of stereotypical
                 reputation. We show how this approach can complement
                 existing state-of-the-art trust models, and enhance the
                 confidence in the evaluations that can be made about
                 trustees when direct and reputational information is
                 lacking or limited. Furthermore, we show how a
                 stereotyping approach can help agents detect unwanted
                 biases in the reputational opinions they receive from
                 others in the society.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Falcone:2013:MKR,
  author =       "Rino Falcone and Michele Piunti and Matteo Venanzi and
                 Cristiano Castelfranchi",
  title =        "From manifesta to krypta: The relevance of categories
                 for trusting others",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "27:1--27:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article we consider the special abilities
                 needed by agents for assessing trust based on inference
                 and reasoning. We analyze the case in which it is
                 possible to infer trust towards unknown counterparts by
                 reasoning on abstract classes or categories of agents
                 shaped in a concrete application domain. We present a
                 scenario of interacting agents providing a
                 computational model implementing different strategies
                 to assess trust. Assuming a medical domain, categories,
                 including both competencies and dispositions of
                 possible trustees, are exploited to infer trust towards
                 possibly unknown counterparts. The proposed approach
                 for the cognitive assessment of trust relies on agents'
                 abilities to analyze heterogeneous information sources
                 along different dimensions. Trust is inferred based on
                 specific observable properties (manifesta), namely
                 explicitly readable signals indicating internal
                 features (krypta) regulating agents' behavior and
                 effectiveness on specific tasks. Simulative experiments
                 evaluate the performance of trusting agents adopting
                 different strategies to delegate tasks to possibly
                 unknown trustees, while experimental results show the
                 relevance of this kind of cognitive ability in the case
                 of open multiagent systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2013:ISS,
  author =       "Qing Li and Xiangfeng Luo and Liu Wenyin and Cristina
                 Conati",
  title =        "Introduction to the special section on intelligent
                 tutoring and coaching systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "28:1--28:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Folsom-Kovarik:2013:TPR,
  author =       "Jeremiah T. Folsom-Kovarik and Gita Sukthankar and Sae
                 Schatz",
  title =        "Tractable {POMDP} representations for intelligent
                 tutoring systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "29:1--29:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With Partially Observable Markov Decision Processes
                 (POMDPs), Intelligent Tutoring Systems (ITSs) can model
                 individual learners from limited evidence and plan
                 ahead despite uncertainty. However, POMDPs need
                 appropriate representations to become tractable in ITSs
                 that model many learner features, such as mastery of
                 individual skills or the presence of specific
                 misconceptions. This article describes two POMDP
                 representations- state queues and observation chains
                 -that take advantage of ITS task properties and let
                 POMDPs scale to represent over 100 independent learner
                 features. A real-world military training problem is
                 given as one example. A human study ( n = 14) provides
                 initial validation for the model construction. Finally,
                 evaluating the experimental representations with
                 simulated students helps predict their impact on ITS
                 performance. The compressed representations can model a
                 wide range of simulated problems with instructional
                 efficacy equal to lossless representations. With
                 improved tractability, POMDP ITSs can accommodate more
                 numerous or more detailed learner states and inputs.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yen:2013:LIS,
  author =       "Neil Y. Yen and Timothy K. Shih and Qun Jin",
  title =        "{LONET}: an interactive search network for intelligent
                 lecture path generation",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "30:1--30:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Sharing resources and information on the Internet has
                 become an important activity for education. In distance
                 learning, instructors can benefit from resources, also
                 known as Learning Objects (LOs), to create plenteous
                 materials for specific learning purposes. Our
                 repository (called the MINE Registry) has been
                 developed for storing and sharing learning objects,
                 around 22,000 in total, in the past few years. To
                 enhance reusability, one significant concept named
                 Reusability Tree was implemented to trace the process
                 of changes. Also, weighting and ranking metrics have
                 been proposed to enhance the searchability in the
                 repository. Following the successful implementation,
                 this study goes further to investigate the
                 relationships between LOs from a perspective of social
                 networks. The LONET (Learning Object Network), as an
                 extension of Reusability Tree, is newly proposed and
                 constructed to clarify the vague reuse scenario in the
                 past, and to summarize collaborative intelligence
                 through past interactive usage experiences. We define a
                 social structure in our repository based on past usage
                 experiences from instructors, by proposing a set of
                 metrics to evaluate the interdependency such as
                 prerequisites and references. The structure identifies
                 usage experiences and can be graphed in terms of
                 implicit and explicit relations among learning objects.
                 As a practical contribution, an adaptive algorithm is
                 proposed to mine the social structure in our
                 repository. The algorithm generates adaptive routes,
                 based on past usage experiences, by computing possible
                 interactive input, such as search criteria and feedback
                 from instructors, and assists them in generating
                 specific lectures.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ehara:2013:PRS,
  author =       "Yo Ehara and Nobuyuki Shimizu and Takashi Ninomiya and
                 Hiroshi Nakagawa",
  title =        "Personalized reading support for second-language {Web}
                 documents",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "31:1--31:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "A novel intelligent interface eases the browsing of
                 Web documents written in the second languages of users.
                 It automatically predicts words unfamiliar to the user
                 by a collective intelligence method and glosses them
                 with their meaning in advance. If the prediction
                 succeeds, the user does not need to consult a
                 dictionary; even if it fails, the user can correct the
                 prediction. The correction data are collected and used
                 to improve the accuracy of further predictions. The
                 prediction is personalized in that every user's
                 language ability is estimated by a state-of-the-art
                 language testing model, which is trained in a practical
                 response time with only a small sacrifice of prediction
                 accuracy. The system was evaluated in terms of
                 prediction accuracy and reading simulation. The reading
                 simulation results show that this system can reduce the
                 number of clicks for most readers with insufficient
                 vocabulary to read documents and can significantly
                 reduce the remaining number of unfamiliar words after
                 the prediction and glossing for all users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2013:RCI,
  author =       "Fei-Yue Wang and Pak Kin Wong",
  title =        "Research commentary: Intelligent systems and
                 technology for integrative and predictive medicine: an
                 {ACP} approach",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "32:1--32:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "One of the principal goals in medicine is to determine
                 and implement the best treatment for patients through
                 fastidious estimation of the effects and benefits of
                 therapeutic procedures. The inherent complexities of
                 physiological and pathological networks that span
                 across orders of magnitude in time and length scales,
                 however, represent fundamental hurdles in determining
                 effective treatments for patients. Here we argue for a
                 new approach, called the ACP-based approach, that
                 combines artificial (societies), computational
                 (experiments), and parallel (execution) methods in
                 intelligent systems and technology for integrative and
                 predictive medicine, or more generally, precision
                 medicine and smart health management. The advent of
                 artificial societies that collect the clinically
                 relevant information in prognostics and therapeutics
                 provides a promising platform for organizing and
                 experimenting complex physiological systems toward
                 integrative medicine. The ability of computational
                 experiments to analyze distinct, interactive systems
                 such as the host mechanisms, pathological pathways, and
                 therapeutic strategies, as well as other factors using
                 the artificial systems, will enable control and
                 management through parallel execution of real and
                 artificial systems concurrently within the integrative
                 medicine context. The development of this framework in
                 integrative medicine, fueled by close collaborations
                 between physicians, engineers, and scientists, will
                 result in preventive and predictive practices of a
                 personal, proactive, and precise nature, including
                 rational combinatorial treatments, adaptive
                 therapeutics, and patient-oriented disease
                 management.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tabia:2013:PBA,
  author =       "Hedi Tabia and Mohamed Daoudi and Jean-Philippe
                 Vandeborre and Olivier Colot",
  title =        "A parts-based approach for automatic {$3$D} shape
                 categorization using belief functions",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "33:1--33:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Grouping 3D objects into (semantically) meaningful
                 categories is a challenging and important problem in 3D
                 mining and shape processing. Here, we present a novel
                 approach to categorize 3D objects. The method described
                 in this article, is a belief-function-based approach
                 and consists of two stages: the training stage, where
                 3D objects in the same category are processed and a set
                 of representative parts is constructed, and the
                 labeling stage, where unknown objects are categorized.
                 The experimental results obtained on the Tosca-Sumner
                 and the Shrec07 datasets show that the system
                 efficiently performs in categorizing 3D models.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2013:LIC,
  author =       "Zhengxiang Wang and Yiqun Hu and Liang-Tien Chia",
  title =        "Learning image-to-class distance metric for image
                 classification",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "34:1--34:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Image-To-Class (I2C) distance is a novel distance used
                 for image classification and has successfully handled
                 datasets with large intra-class variances. However, it
                 uses Euclidean distance for measuring the distance
                 between local features in different classes, which may
                 not be the optimal distance metric in real image
                 classification problems. In this article, we propose a
                 distance metric learning method to improve the
                 performance of I2C distance by learning per-class
                 Mahalanobis metrics in a large margin framework. Our
                 I2C distance is adaptive to different classes by
                 combining with the learned metric for each class. These
                 multiple per-class metrics are learned simultaneously
                 by forming a convex optimization problem with the
                 constraints that the I2C distance from each training
                 image to its belonging class should be less than the
                 distances to other classes by a large margin. A
                 subgradient descent method is applied to efficiently
                 solve this optimization problem. For efficiency and
                 scalability to large-scale problems, we also show how
                 to simplify the method to learn a diagonal matrix for
                 each class. We show in experiments that our learned
                 Mahalanobis I2C distance can significantly outperform
                 the original Euclidean I2C distance as well as other
                 distance metric learning methods in several prevalent
                 image datasets, and our simplified diagonal matrices
                 can preserve the performance but significantly speed up
                 the metric learning procedure for large-scale datasets.
                 We also show in experiment that our method is able to
                 correct the class imbalance problem, which usually
                 leads the NN-based methods toward classes containing
                 more training images.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Song:2013:FOU,
  author =       "Xuan Song and Xiaowei Shao and Quanshi Zhang and
                 Ryosuke Shibasaki and Huijing Zhao and Jinshi Cui and
                 Hongbin Zha",
  title =        "A fully online and unsupervised system for large and
                 high-density area surveillance: Tracking, semantic
                 scene learning and abnormality detection",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "35:1--35:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "For reasons of public security, an intelligent
                 surveillance system that can cover a large, crowded
                 public area has become an urgent need. In this article,
                 we propose a novel laser-based system that can
                 simultaneously perform tracking, semantic scene
                 learning, and abnormality detection in a fully online
                 and unsupervised way. Furthermore, these three tasks
                 cooperate with each other in one framework to improve
                 their respective performances. The proposed system has
                 the following key advantages over previous ones: (1) It
                 can cover quite a large area (more than 60$ \times
                 $35m), and simultaneously perform robust tracking,
                 semantic scene learning, and abnormality detection in a
                 high-density situation. (2) The overall system can vary
                 with time, incrementally learn the structure of the
                 scene, and perform fully online abnormal activity
                 detection and tracking. This feature makes our system
                 suitable for real-time applications. (3) The
                 surveillance tasks are carried out in a fully
                 unsupervised manner, so that there is no need for
                 manual labeling and the construction of huge training
                 datasets. We successfully apply the proposed system to
                 the JR subway station in Tokyo, and demonstrate that it
                 can cover an area of 60$ \times $35m, robustly track
                 more than 150 targets at the same time, and
                 simultaneously perform online semantic scene learning
                 and abnormality detection with no human intervention.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tran:2013:CPB,
  author =       "Vien Tran and Khoi Nguyen and Tran Cao Son and Enrico
                 Pontelli",
  title =        "A conformant planner based on approximation:
                 {CpA(H)}",
  journal =      j-TIST,
  volume =       "4",
  number =       "2",
  pages =        "36:1--36:??",
  month =        mar,
  year =         "2013",
  CODEN =        "????",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sun May 5 09:06:55 MDT 2013",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article describes the planner C pA( H ), the
                 recipient of the Best Nonobservable Nondeterministic
                 Planner Award in the ``Uncertainty Track'' of the 6
                 $^{th}$ International Planning Competition (IPC), 2008.
                 The article presents the various techniques that help
                 CpA( H ) to achieve the level of performance and
                 scalability exhibited in the competition. The article
                 also presents experimental results comparing CpA( H )
                 with state-of-the-art conformant planners.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2013:ISS,
  author =       "Haifeng Wang and Bill Dolan and Idan Szpektor and
                 Shiqi Zhao",
  title =        "Introduction to special section on paraphrasing",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "37:1--37:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483670",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Resnik:2013:UTP,
  author =       "Philip Resnik and Olivia Buzek and Yakov Kronrod and
                 Chang Hu and Alexander J. Quinn and Benjamin B.
                 Bederson",
  title =        "Using targeted paraphrasing and monolingual
                 crowdsourcing to improve translation",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "38:1--38:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483671",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Targeted paraphrasing is a new approach to the problem
                 of obtaining cost-effective, reasonable quality
                 translation, which makes use of simple and inexpensive
                 human computations by monolingual speakers in
                 combination with machine translation. The key insight
                 behind the process is that it is possible to spot
                 likely translation errors with only monolingual
                 knowledge of the target language, and it is possible to
                 generate alternative ways to say the same thing (i.e.,
                 paraphrases) with only monolingual knowledge of the
                 source language. Formal evaluation demonstrates that
                 this approach can yield substantial improvements in
                 translation quality, and the idea has been integrated
                 into a broader framework for monolingual collaborative
                 translation that produces fully accurate, fully fluent
                 translations for a majority of sentences in a
                 real-world translation task, with no involvement of
                 human bilingual speakers.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Marton:2013:DPP,
  author =       "Yuval Marton",
  title =        "Distributional phrasal paraphrase generation for
                 statistical machine translation",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "39:1--39:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483672",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Paraphrase generation has been shown useful for
                 various natural language processing tasks, including
                 statistical machine translation. A commonly used method
                 for paraphrase generation is pivoting [Callison-Burch
                 et al. 2006], which benefits from linguistic knowledge
                 implicit in the sentence alignment of parallel texts,
                 but has limited applicability due to its reliance on
                 parallel texts. Distributional paraphrasing [Marton et
                 al. 2009a] has wider applicability, is more
                 language-independent, but doesn't benefit from any
                 linguistic knowledge. Nevertheless, we show that using
                 distributional paraphrasing can yield greater gains in
                 translation tasks. We report method improvements
                 leading to higher gains than previously published, of
                 almost 2 B leu points, and provide implementation
                 details, complexity analysis, and further insight into
                 this method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Madnani:2013:GTP,
  author =       "Nitin Madnani and Bonnie J. Dorr",
  title =        "Generating targeted paraphrases for improved
                 translation",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "40:1--40:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483673",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Today's Statistical Machine Translation (SMT) systems
                 require high-quality human translations for parameter
                 tuning, in addition to large bitexts for learning the
                 translation units. This parameter tuning usually
                 involves generating translations at different points in
                 the parameter space and obtaining feedback against
                 human-authored reference translations as to how good
                 the translations. This feedback then dictates what
                 point in the parameter space should be explored next.
                 To measure this feedback, it is generally considered
                 wise to have multiple (usually 4) reference
                 translations to avoid unfair penalization of
                 translation hypotheses which could easily happen given
                 the large number of ways in which a sentence can be
                 translated from one language to another. However, this
                 reliance on multiple reference translations creates a
                 problem since they are labor intensive and expensive to
                 obtain. Therefore, most current MT datasets only
                 contain a single reference. This leads to the problem
                 of reference sparsity. In our previously published
                 research, we had proposed the first paraphrase-based
                 solution to this problem and evaluated its effect on
                 Chinese--English translation. In this article, we first
                 present extended results for that solution on
                 additional source languages. More importantly, we
                 present a novel way to generate ``targeted''
                 paraphrases that yields substantially larger gains (up
                 to 2.7 BLEU points) in translation quality when
                 compared to our previous solution (up to 1.6 BLEU
                 points). In addition, we further validate these
                 improvements by supplementing with human preference
                 judgments obtained via Amazon Mechanical Turk.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cohn:2013:AAS,
  author =       "Trevor Cohn and Mirella Lapata",
  title =        "An abstractive approach to sentence compression",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "41:1--41:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483674",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article we generalize the sentence compression
                 task. Rather than simply shorten a sentence by deleting
                 words or constituents, as in previous work, we rewrite
                 it using additional operations such as substitution,
                 reordering, and insertion. We present an experimental
                 study showing that humans can naturally create
                 abstractive sentences using a variety of rewrite
                 operations, not just deletion. We next create a new
                 corpus that is suited to the abstractive compression
                 task and formulate a discriminative tree-to-tree
                 transduction model that can account for structural and
                 lexical mismatches. The model incorporates a grammar
                 extraction method, uses a language model for coherent
                 output, and can be easily tuned to a wide range of
                 compression-specific loss functions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Moon:2013:IBM,
  author =       "Taesun Moon and Katrin Erk",
  title =        "An inference-based model of word meaning in context as
                 a paraphrase distribution",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "42:1--42:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483675",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Graded models of word meaning in context characterize
                 the meaning of individual usages (occurrences) without
                 reference to dictionary senses. We introduce a novel
                 approach that frames the task of computing word meaning
                 in context as a probabilistic inference problem. The
                 model represents the meaning of a word as a probability
                 distribution over potential paraphrases, inferred using
                 an undirected graphical model. Evaluated on
                 paraphrasing tasks, the model achieves state-of-the-art
                 performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Burrows:2013:PAC,
  author =       "Steven Burrows and Martin Potthast and Benno Stein",
  title =        "Paraphrase acquisition via crowdsourcing and machine
                 learning",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "43:1--43:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483676",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "To paraphrase means to rewrite content while
                 preserving the original meaning. Paraphrasing is
                 important in fields such as text reuse in journalism,
                 anonymizing work, and improving the quality of
                 customer-written reviews. This article contributes to
                 paraphrase acquisition and focuses on two aspects that
                 are not addressed by current research: (1) acquisition
                 via crowdsourcing, and (2) acquisition of passage-level
                 samples. The challenge of the first aspect is automatic
                 quality assurance; without such a means the
                 crowdsourcing paradigm is not effective, and without
                 crowdsourcing the creation of test corpora is
                 unacceptably expensive for realistic order of
                 magnitudes. The second aspect addresses the deficit
                 that most of the previous work in generating and
                 evaluating paraphrases has been conducted using
                 sentence-level paraphrases or shorter; these
                 short-sample analyses are limited in terms of
                 application to plagiarism detection, for example. We
                 present the Webis Crowd Paraphrase Corpus 2011
                 (Webis-CPC-11), which recently formed part of the PAN
                 2010 international plagiarism detection competition.
                 This corpus comprises passage-level paraphrases with
                 4067 positive samples and 3792 negative samples that
                 failed our criteria, using Amazon's Mechanical Turk for
                 crowdsourcing. In this article, we review the lessons
                 learned at PAN 2010, and explain in detail the method
                 used to construct the corpus. The empirical
                 contributions include machine learning experiments to
                 explore if passage-level paraphrases can be identified
                 in a two-class classification problem using paraphrase
                 similarity features, and we find that a
                 k-nearest-neighbor classifier can correctly distinguish
                 between paraphrased and nonparaphrased samples with
                 0.980 precision at 0.523 recall. This result implies
                 that just under half of our samples must be discarded
                 (remaining 0.477 fraction), but our cost analysis shows
                 that the automation we introduce results in a 18\%
                 financial saving and over 100 hours of time returned to
                 the researchers when repeating a similar corpus design.
                 On the other hand, when building an unrelated corpus
                 requiring, say, 25\% training data for the automated
                 component, we show that the financial outcome is cost
                 neutral, while still returning over 70 hours of time to
                 the researchers. The work presented here is the first
                 to join the paraphrasing and plagiarism communities.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bouamor:2013:MPA,
  author =       "Houda Bouamor and Aur{\'e}elien Max and Anne Vilnat",
  title =        "Multitechnique paraphrase alignment: a contribution to
                 pinpointing sub-sentential paraphrases",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "44:1--44:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483677",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This work uses parallel monolingual corpora for a
                 detailed study of the task of sub-sentential paraphrase
                 acquisition. We argue that the scarcity of this type of
                 resource is compensated by the fact that it is the most
                 suited type for studies on paraphrasing. We propose a
                 large exploration of this task with experiments on two
                 languages with five different acquisition techniques,
                 selected for their complementarity, their combinations,
                 as well as four monolingual corpus types of varying
                 comparability. We report, under all conditions, a
                 significant improvement over all techniques by
                 validating candidate paraphrases using a maximum
                 entropy classifier. An important result of our study is
                 the identification of difficult-to-acquire paraphrase
                 pairs, which are classified and quantified in a
                 bilingual typology.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yu:2013:ISS,
  author =       "Zhiwen Yu and Daqing Zhang and Nathan Eagle and Diane
                 Cook",
  title =        "Introduction to the special section on intelligent
                 systems for socially aware computing",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "45:1--45:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483678",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Schuster:2013:PSC,
  author =       "Daniel Schuster and Alberto Rosi and Marco Mamei and
                 Thomas Springer and Markus Endler and Franco
                 Zambonelli",
  title =        "Pervasive social context: Taxonomy and survey",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "46:1--46:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483679",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "As pervasive computing meets social networks, there is
                 a fast growing research field called pervasive social
                 computing. Applications in this area exploit the
                 richness of information arising out of people using
                 sensor-equipped pervasive devices in their everyday
                 life combined with intense use of different social
                 networking services. We call this set of information
                 pervasive social context. We provide a taxonomy to
                 classify pervasive social context along the dimensions
                 space, time, people, and information source (STiPI) as
                 well as commenting on the type and reason for creating
                 such context. A survey of recent research shows the
                 applicability and usefulness of the taxonomy in
                 classifying and assessing applications and systems in
                 the area of pervasive social computing. Finally, we
                 present some research challenges in this area and
                 illustrate how they affect the systems being
                 surveyed.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2013:NLR,
  author =       "Yue Shi and Pavel Serdyukov and Alan Hanjalic and
                 Martha Larson",
  title =        "Nontrivial landmark recommendation using geotagged
                 photos",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "47:1--47:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483680",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Online photo-sharing sites provide a wealth of
                 information about user behavior and their potential is
                 increasing as it becomes ever-more common for images to
                 be associated with location information in the form of
                 geotags. In this article, we propose a novel approach
                 that exploits geotagged images from an online community
                 for the purpose of personalized landmark
                 recommendation. Under our formulation of the task,
                 recommended landmarks should be relevant to user
                 interests and additionally they should constitute
                 nontrivial recommendations. In other words,
                 recommendations of landmarks that are highly popular
                 and frequently visited and can be easily discovered
                 through other information sources such as travel guides
                 should be avoided in favor of recommendations that
                 relate to users' personal interests. We propose a
                 collaborative filtering approach to the personalized
                 landmark recommendation task within a matrix
                 factorization framework. Our approach, WMF-CR, combines
                 weighted matrix factorization and category-based
                 regularization. The integrated weights emphasize the
                 contribution of nontrivial landmarks in order to focus
                 the recommendation model specifically on the generation
                 of nontrivial recommendations. They support the
                 judicious elimination of trivial landmarks from
                 consideration without also discarding information
                 valuable for recommendation. Category-based
                 regularization addresses the sparse data problem, which
                 is arguably even greater in the case of our landmark
                 recommendation task than in other recommendation
                 scenarios due to the limited amount of travel
                 experience recorded in the online image set of any
                 given user. We use category information extracted from
                 Wikipedia in order to provide the system with a method
                 to generalize the semantics of landmarks and allow the
                 model to relate them not only on the basis of identity,
                 but also on the basis of topical commonality. The
                 proposed approach is computational scalable, that is,
                 its complexity is linear with the number of observed
                 preferences in the user-landmark preference matrix and
                 the number of nonzero similarities in the
                 category-based landmark similarity matrix. We evaluate
                 the approach on a large collection of geotagged photos
                 gathered from Flickr. Our experimental results
                 demonstrate that WMF-CR outperforms several
                 state-of-the-art baseline approaches in recommending
                 nontrivial landmarks. Additionally, they demonstrate
                 that the approach is well suited for addressing data
                 sparseness and provides particular performance
                 improvement in the case of users who have limited
                 travel experience, that is, have visited only few
                 cities or few landmarks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wei:2013:EPA,
  author =       "Ling-Yin Wei and Wen-Chih Peng and Wang-Chien Lee",
  title =        "Exploring pattern-aware travel routes for trajectory
                 search",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "48:1--48:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483681",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the popularity of positioning devices, Web 2.0
                 technology, and trip sharing services, many users are
                 willing to log and share their trips on the Web. Thus,
                 trip planning Web sites are able to provide some new
                 services by inferring Regions-Of-Interest (ROIs) and
                 recommending popular travel routes from trip
                 trajectories. We argue that simply providing some
                 travel routes consisting of popular ROIs to users is
                 not sufficient. To tour around a wide geographical
                 area, for example, a city, some users may prefer a trip
                 to visit as many ROIs as possible, while others may
                 like to stop by only a few ROIs for an in-depth visit.
                 We refer to a trip fitting the former user group as an
                 in-breadth trip and a trip suitable for the latter user
                 group as an in-depth trip. Prior studies on trip
                 planning have focused on mining ROIs and travel routes
                 without considering these different preferences. In
                 this article, given a spatial range and a user
                 preference of depth/breadth specified by a user, we
                 develop a Pattern-Aware Trajectory Search (PATS)
                 framework to retrieve the top K trajectories passing
                 through popular ROIs. PATS is novel because the
                 returned travel trajectories, discovered from travel
                 patterns hidden in trip trajectories, may represent the
                 most valuable travel experiences of other travelers
                 fitting the user's trip preference in terms of depth or
                 breadth. The PATS framework comprises two components:
                 travel behavior exploration and trajectory search. The
                 travel behavior exploration component determines a set
                 of ROIs along with their attractive scores by
                 considering not only the popularity of the ROIs but
                 also the travel sequential relationships among the
                 ROIs. To capture the travel sequential relationships
                 among ROIs and to derive their attractive scores, a
                 user movement graph is constructed. For the trajectory
                 search component of PATS, we formulate two trajectory
                 score functions, the depth-trip score function and the
                 breadth-trip score function, by taking into account the
                 number of ROIs in a trajectory and their attractive
                 scores. Accordingly, we propose an algorithm, namely,
                 Bounded Trajectory Search (BTS), to efficiently
                 retrieve the top K trajectories based on the two
                 trajectory scores. The PATS framework is evaluated by
                 experiments and user studies using a real dataset. The
                 experimental results demonstrate the effectiveness and
                 the efficiency of the proposed PATS framework.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yan:2013:STM,
  author =       "Zhixian Yan and Dipanjan Chakraborty and Christine
                 Parent and Stefano Spaccapietra and Karl Aberer",
  title =        "Semantic trajectories: Mobility data computation and
                 annotation",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "49:1--49:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483682",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the large-scale adoption of GPS equipped mobile
                 sensing devices, positional data generated by moving
                 objects (e.g., vehicles, people, animals) are being
                 easily collected. Such data are typically modeled as
                 streams of spatio-temporal (x,y,t) points, called
                 trajectories. In recent years trajectory management
                 research has progressed significantly towards efficient
                 storage and indexing techniques, as well as suitable
                 knowledge discovery. These works focused on the
                 geometric aspect of the raw mobility data. We are now
                 witnessing a growing demand in several application
                 sectors (e.g., from shipment tracking to geo-social
                 networks) on understanding the semantic behavior of
                 moving objects. Semantic behavior refers to the use of
                 semantic abstractions of the raw mobility data,
                 including not only geometric patterns but also
                 knowledge extracted jointly from the mobility data and
                 the underlying geographic and application domains
                 information. The core contribution of this article lies
                 in a semantic model and a computation and annotation
                 platform for developing a semantic approach that
                 progressively transforms the raw mobility data into
                 semantic trajectories enriched with segmentations and
                 annotations. We also analyze a number of experiments we
                 did with semantic trajectories in different domains.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chin:2013:CPT,
  author =       "Alvin Chin and Bin Xu and Hao Wang and Lele Chang and
                 Hao Wang and Lijun Zhu",
  title =        "Connecting people through physical proximity and
                 physical resources at a conference",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "50:1--50:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483683",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This work investigates how to bridge the gap between
                 offline and online behaviors at a conference and how
                 the physical resources in the conference (the physical
                 objects used in the conference for gathering attendees
                 together in engaging an activity such as rooms,
                 sessions, and papers) can be used to help facilitate
                 social networking. We build Find and Connect, a system
                 that integrates offline activities and interactions
                 captured in real time with online connections in a
                 conference environment, to provide a list of potential
                 people one should connect to for forming an ephemeral
                 social network. We investigate how social connections
                 can be established and integrated with physical
                 resources through positioning technology, and the
                 relationship between physical proximity encounters and
                 online social connections. Results from our two
                 datasets of two trials, one at the UIC/ATC 2010
                 conference and GCJK internal marketing event, show that
                 social connections that are reciprocal in relationship,
                 such as friendship and exchanged contacts, have
                 tighter, denser, and highly clustered networks compared
                 to unidirectional relationships such as follow. We
                 discover that there is a positive relationship between
                 physical proximity encounters and online social
                 connections before the social connection is made for
                 friends, but a negative relationship for after the
                 social connection is made. The first indicates social
                 selection is strong, and the second indicates social
                 influence is weak. Even though our dataset is sparse,
                 nonetheless we believe our work is promising and novel
                 which is worthy of future research.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2013:ISS,
  author =       "Shanchieh Jay Yang and Dana Nau and John Salerno",
  title =        "Introduction to the special section on social
                 computing, behavioral-cultural modeling, and
                 prediction",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "51:1--51:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483684",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hung:2013:OBI,
  author =       "Benjamin W. K. Hung and Stephan E. Kolitz and Asuman
                 Ozdaglar",
  title =        "Optimization-based influencing of village social
                 networks in a counterinsurgency",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "52:1--52:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483685",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article considers the nonlethal targeting
                 assignment problem in the counterinsurgency in
                 Afghanistan, the problem of deciding on the people whom
                 U.S. forces should engage through outreach,
                 negotiations, meetings, and other interactions in order
                 to ultimately win the support of the population in
                 their area of operations. We propose two models: (1)
                 the Afghan counterinsurgency (COIN) social influence
                 model, to represent how attitudes of local leaders are
                 affected by repeated interactions with other local
                 leaders, insurgents, and counterinsurgents, and (2) the
                 nonlethal targeting model, a NonLinear Programming
                 (NLP) optimization formulation that identifies a
                 strategy for assigning k U.S. agents to produce the
                 greatest arithmetic mean of the expected long-term
                 attitude of the population. We demonstrate in an
                 experiment the merits of the optimization model in
                 nonlethal targeting, which performs significantly
                 better than both doctrine-based and random methods of
                 assignment in a large network.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gintis:2013:MMS,
  author =       "Herbert Gintis",
  title =        "{Markov} models of social dynamics: Theory and
                 applications",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "53:1--53:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483686",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article shows how agent-based models of social
                 dynamics can be treated rigorously and analytically as
                 finite Markov processes, and their long-run properties
                 are then given by an expanded version of the ergodic
                 theorem for Markov processes. A Markov process model of
                 a simplified market economy shows the fruitfulness of
                 this approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fridman:2013:UQR,
  author =       "Natalie Fridman and Gal A. Kaminka",
  title =        "Using qualitative reasoning for social simulation of
                 crowds",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "54:1--54:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483687",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The ability to model and reason about the potential
                 violence level of a demonstration is important to the
                 police decision making process. Unfortunately, existing
                 knowledge regarding demonstrations is composed of
                 partial qualitative descriptions without complete and
                 precise numerical information. In this article we
                 describe a first attempt to use qualitative reasoning
                 techniques to model demonstrations. To our knowledge,
                 such techniques have never been applied to modeling and
                 reasoning regarding crowd behaviors, nor in particular
                 demonstrations. We develop qualitative models
                 consistent with the partial, qualitative social science
                 literature, allowing us to model the interactions
                 between different factors that influence violence in
                 demonstrations. We then utilize qualitative simulation
                 to predict the potential eruption of violence, at
                 various levels, based on a description of the
                 demographics, environmental settings, and police
                 responses. We incrementally present and compare three
                 such qualitative models. The results show that while
                 two of these models fail to predict the outcomes of
                 real-world events reported and analyzed in the
                 literature, one model provides good results. We also
                 examine whether a popular machine learning algorithm
                 (decision tree learning) can be used. While the results
                 show that the decision trees provide improved
                 predictions, we show that the QR models can be more
                 sensitive to changes, and can account for what-if
                 scenarios, in contrast to decision trees. Moreover, we
                 introduce a novel analysis algorithm that analyzes the
                 QR simulations, to automatically determine the factors
                 that are most important in influencing the outcome in
                 specific real-world demonstrations. We show that the
                 algorithm identifies factors that correspond to
                 experts' analysis of these events.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Saito:2013:DCI,
  author =       "Kazumi Saito and Masahiro Kimura and Kouzou Ohara and
                 Hiroshi Motoda",
  title =        "Detecting changes in information diffusion patterns
                 over social networks",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "55:1--55:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483688",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We addressed the problem of detecting the change in
                 behavior of information diffusion over a social network
                 which is caused by an unknown external situation change
                 using a small amount of observation data in a
                 retrospective setting. The unknown change is assumed
                 effectively reflected in changes in the parameter
                 values in the probabilistic information diffusion
                 model, and the problem is reduced to detecting where in
                 time and how long this change persisted and how big
                 this change is. We solved this problem by searching the
                 change pattern that maximizes the likelihood of
                 generating the observed information diffusion
                 sequences, and in doing so we devised a very efficient
                 general iterative search algorithm using the derivative
                 of the likelihood which avoids parameter value
                 optimization during each search step. This is in
                 contrast to the naive learning algorithm in that it has
                 to iteratively update the pattern boundaries, each
                 requiring the parameter value optimization and thus is
                 very inefficient. We tested this algorithm for two
                 instances of the probabilistic information diffusion
                 model which has different characteristics. One is of
                 information push style and the other is of information
                 pull style. We chose Asynchronous Independent Cascade
                 (AsIC) model as the former and Value-weighted Voter
                 (VwV) model as the latter. The AsIC is the model for
                 general information diffusion with binary states and
                 the parameter to detect its change is diffusion
                 probability and the VwV is the model for opinion
                 formation with multiple states and the parameter to
                 detect its change is opinion value. The results tested
                 on these two models using four real-world network
                 structures confirm that the algorithm is robust enough
                 and can efficiently identify the correct change pattern
                 of the parameter values. Comparison with the naive
                 method that finds the best combination of change
                 boundaries by an exhaustive search through a set of
                 randomly selected boundary candidates shows that the
                 proposed algorithm far outperforms the native method
                 both in terms of accuracy and computation time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Marathe:2013:AFN,
  author =       "Achla Marathe and Zhengzheng Pan and Andrea Apolloni",
  title =        "Analysis of friendship network and its role in
                 explaining obesity",
  journal =      j-TIST,
  volume =       "4",
  number =       "3",
  pages =        "56:1--56:??",
  month =        jun,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2483669.2483689",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:09 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We employ Add Health data to show that friendship
                 networks, constructed from mutual friendship
                 nominations, are important in building weight
                 perception, setting weight goals, and measuring social
                 marginalization among adolescents and young adults. We
                 study the relationship between individuals' perceived
                 weight status, actual weight status, weight status
                 relative to friends' weight status, and weight goals.
                 This analysis helps us understand how individual weight
                 perceptions might be formed, what these perceptions do
                 to the weight goals, and how friends' relative weight
                 affects weight perception and weight goals. Combining
                 this information with individuals' friendship network
                 helps determine the influence of social relationships
                 on weight-related variables. Multinomial logistic
                 regression results indicate that relative status is
                 indeed a significant predictor of perceived status, and
                 perceived status is a significant predictor of weight
                 goals. We also address the issue of causality between
                 actual weight status and social marginalization (as
                 measured by the number of friends) and show that
                 obesity precedes social marginalization in time rather
                 than the other way around. This lends credence to the
                 hypothesis that obesity leads to social marginalization
                 not vice versa. Attributes of the friendship network
                 can provide new insights into effective interventions
                 for combating obesity since adolescent friendships
                 provide an important social context for weight-related
                 behaviors.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jiang:2013:MSB,
  author =       "Daxin Jiang and Jian Pei and Hang Li",
  title =        "Mining search and browse logs for {Web} search: a
                 survey",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "57:1--57:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508038",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Huge amounts of search log data have been accumulated
                 at Web search engines. Currently, a popular Web search
                 engine may receive billions of queries and collect
                 terabytes of records about user search behavior daily.
                 Beside search log data, huge amounts of browse log data
                 have also been collected through client-side browser
                 plugins. Such massive amounts of search and browse log
                 data provide great opportunities for mining the wisdom
                 of crowds and improving Web search. At the same time,
                 designing effective and efficient methods to clean,
                 process, and model log data also presents great
                 challenges. In this survey, we focus on mining search
                 and browse log data for Web search. We start with an
                 introduction to search and browse log data and an
                 overview of frequently-used data summarizations in log
                 mining. We then elaborate how log mining applications
                 enhance the five major components of a search engine,
                 namely, query understanding, document understanding,
                 document ranking, user understanding, and monitoring
                 and feedback. For each aspect, we survey the major
                 tasks, fundamental principles, and state-of-the-art
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2013:SAM,
  author =       "Xi Li and Weiming Hu and Chunhua Shen and Zhongfei
                 Zhang and Anthony Dick and Anton {Van Den Hengel}",
  title =        "A survey of appearance models in visual object
                 tracking",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "58:1--58:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508039",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Visual object tracking is a significant computer
                 vision task which can be applied to many domains, such
                 as visual surveillance, human computer interaction, and
                 video compression. Despite extensive research on this
                 topic, it still suffers from difficulties in handling
                 complex object appearance changes caused by factors
                 such as illumination variation, partial occlusion,
                 shape deformation, and camera motion. Therefore,
                 effective modeling of the 2D appearance of tracked
                 objects is a key issue for the success of a visual
                 tracker. In the literature, researchers have proposed a
                 variety of 2D appearance models. To help readers
                 swiftly learn the recent advances in 2D appearance
                 models for visual object tracking, we contribute this
                 survey, which provides a detailed review of the
                 existing 2D appearance models. In particular, this
                 survey takes a module-based architecture that enables
                 readers to easily grasp the key points of visual object
                 tracking. In this survey, we first decompose the
                 problem of appearance modeling into two different
                 processing stages: visual representation and
                 statistical modeling. Then, different 2D appearance
                 models are categorized and discussed with respect to
                 their composition modules. Finally, we address several
                 issues of interest as well as the remaining challenges
                 for future research on this topic. The contributions of
                 this survey are fourfold. First, we review the
                 literature of visual representations according to their
                 feature-construction mechanisms (i.e., local and
                 global). Second, the existing statistical modeling
                 schemes for tracking-by-detection are reviewed
                 according to their model-construction mechanisms:
                 generative, discriminative, and hybrid
                 generative-discriminative. Third, each type of visual
                 representations or statistical modeling techniques is
                 analyzed and discussed from a theoretical or practical
                 viewpoint. Fourth, the existing benchmark resources
                 (e.g., source codes and video datasets) are examined in
                 this survey.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cena:2013:PSA,
  author =       "Federica Cena and Antonina Dattolo and Pasquale Lops
                 and Julita Vassileva",
  title =        "Perspectives in {Semantic Adaptive Social Web}",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "59:1--59:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2501603",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The Social Web is now a successful reality with its
                 quickly growing number of users and applications. Also
                 the Semantic Web, which started with the objective of
                 describing Web resources in a machine-processable way,
                 is now outgrowing the research labs and is being
                 massively exploited in many websites, incorporating
                 high-quality user-generated content and semantic
                 annotations. The primary goal of this special section
                 is to showcase some recent research at the intersection
                 of the Social Web and the Semantic Web that explores
                 the benefits that adaptation and personalization have
                 to offer in the Web of the future, the so-called Social
                 Adaptive Semantic Web. We have selected two articles
                 out of fourteen submissions based on the quality of the
                 articles and we present the main lessons learned from
                 the overall analysis of these submissions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Biancalana:2013:SSQ,
  author =       "Claudio Biancalana and Fabio Gasparetti and Alessandro
                 Micarelli and Giuseppe Sansonetti",
  title =        "Social semantic query expansion",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "60:1--60:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508041",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Weak semantic techniques rely on the integration of
                 Semantic Web techniques with social annotations and aim
                 to embrace the strengths of both. In this article, we
                 propose a novel weak semantic technique for query
                 expansion. Traditional query expansion techniques are
                 based on the computation of two-dimensional
                 co-occurrence matrices. Our approach proposes the use
                 of three-dimensional matrices, where the added
                 dimension is represented by semantic classes (i.e.,
                 categories comprising all the terms that share a
                 semantic property) related to the folksonomy extracted
                 from social bookmarking services, such as delicious and
                 StumbleUpon. The results of an indepth experimental
                 evaluation performed on both artificial datasets and
                 real users show that our approach outperforms
                 traditional techniques, such as relevance feedback and
                 personalized PageRank, so confirming the validity and
                 usefulness of the categorization of the user needs and
                 preferences in semantic classes. We also present the
                 results of a questionnaire aimed to know the users
                 opinion regarding the system. As one drawback of
                 several query expansion techniques is their high
                 computational costs, we also provide a complexity
                 analysis of our system, in order to show its capability
                 of operating in real time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2013:WMS,
  author =       "Chao Chen and Qiusha Zhu and Lin Lin and Mei-Ling
                 Shyu",
  title =        "{Web} media semantic concept retrieval via tag removal
                 and model fusion",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "61:1--61:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508042",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Multimedia data on social websites contain rich
                 semantics and are often accompanied with user-defined
                 tags. To enhance Web media semantic concept retrieval,
                 the fusion of tag-based and content-based models can be
                 used, though it is very challenging. In this article, a
                 novel semantic concept retrieval framework that
                 incorporates tag removal and model fusion is proposed
                 to tackle such a challenge. Tags with useful
                 information can facilitate media search, but they are
                 often imprecise, which makes it important to apply
                 noisy tag removal (by deleting uncorrelated tags) to
                 improve the performance of semantic concept retrieval.
                 Therefore, a multiple correspondence analysis
                 (MCA)-based tag removal algorithm is proposed, which
                 utilizes MCA's ability to capture the relationships
                 among nominal features and identify representative and
                 discriminative tags holding strong correlations with
                 the target semantic concepts. To further improve the
                 retrieval performance, a novel model fusion method is
                 also proposed to combine ranking scores from both
                 tag-based and content-based models, where the
                 adjustment of ranking scores, the reliability of
                 models, and the correlations between the intervals
                 divided on the ranking scores and the semantic concepts
                 are all considered. Comparative results with extensive
                 experiments on the NUS-WIDE-LITE as well as the
                 NUS-WIDE-270K benchmark datasets with 81 semantic
                 concepts show that the proposed framework outperforms
                 baseline results and the other comparison methods with
                 each component being evaluated separately.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Reddy:2013:ISS,
  author =       "Chandan K. Reddy and Cristopher C. Yang",
  title =        "Introduction to the special section on intelligent
                 systems for health informatics",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "62:1--62:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508043",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Batal:2013:TPM,
  author =       "Iyad Batal and Hamed Valizadegan and Gregory F. Cooper
                 and Milos Hauskrecht",
  title =        "A temporal pattern mining approach for classifying
                 electronic health record data",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "63:1--63:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508044",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We study the problem of learning classification models
                 from complex multivariate temporal data encountered in
                 electronic health record systems. The challenge is to
                 define a good set of features that are able to
                 represent well the temporal aspect of the data. Our
                 method relies on temporal abstractions and temporal
                 pattern mining to extract the classification features.
                 Temporal pattern mining usually returns a large number
                 of temporal patterns, most of which may be irrelevant
                 to the classification task. To address this problem, we
                 present the Minimal Predictive Temporal Patterns
                 framework to generate a small set of predictive and
                 nonspurious patterns. We apply our approach to the
                 real-world clinical task of predicting patients who are
                 at risk of developing heparin-induced thrombocytopenia.
                 The results demonstrate the benefit of our approach in
                 efficiently learning accurate classifiers, which is a
                 key step for developing intelligent clinical monitoring
                 systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rashidi:2013:CMM,
  author =       "Parisa Rashidi and Diane J. Cook",
  title =        "{COM}: a method for mining and monitoring human
                 activity patterns in home-based health monitoring
                 systems",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "64:1--64:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508045",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The increasing aging population in the coming decades
                 will result in many complications for society and in
                 particular for the healthcare system due to the
                 shortage of healthcare professionals and healthcare
                 facilities. To remedy this problem, researchers have
                 pursued developing remote monitoring systems and
                 assisted living technologies by utilizing recent
                 advances in sensor and networking technology, as well
                 as in the data mining and machine learning fields. In
                 this article, we report on our fully automated approach
                 for discovering and monitoring patterns of daily
                 activities. Discovering and tracking patterns of daily
                 activities can provide unprecedented opportunities for
                 health monitoring and assisted living applications,
                 especially for older adults and individuals with mental
                 disabilities. Previous approaches usually rely on
                 preselected activities or labeled data to track and
                 monitor daily activities. In this article, we present a
                 fully automated approach by discovering natural
                 activity patterns and their variations in real-life
                 data. We will show how our activity discovery component
                 can be integrated with an activity recognition
                 component to track and monitor various daily activity
                 patterns. We also provide an activity visualization
                 component to allow caregivers to visually observe and
                 examine the activity patterns using a user-friendly
                 interface. We validate our algorithms using real-life
                 data obtained from two apartments during a three-month
                 period.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wolf:2013:DUR,
  author =       "Hannes Wolf and Klaus Herrmann and Kurt Rothermel",
  title =        "Dealing with uncertainty: Robust workflow navigation
                 in the healthcare domain",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "65:1--65:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508046",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Processes in the healthcare domain are characterized
                 by coarsely predefined recurring procedures that are
                 flexibly adapted by the personnel to suite-specific
                 situations. In this setting, a workflow management
                 system that gives guidance and documents the
                 personnel's actions can lead to a higher quality of
                 care, fewer mistakes, and higher efficiency. However,
                 most existing workflow management systems enforce rigid
                 inflexible workflows and rely on direct manual input.
                 Both are inadequate for healthcare processes. In
                 particular, direct manual input is not possible in most
                 cases since (1) it would distract the personnel even in
                 critical situations and (2) it would violate
                 fundamental hygiene principles by requiring disinfected
                 doctors and nurses to touch input devices. The solution
                 could be activity recognition systems that use sensor
                 data (e.g., audio and acceleration data) to infer the
                 current activities by the personnel and provide input
                 to a workflow (e.g., informing it that a certain
                 activity is finished now). However, state-of-the-art
                 activity recognition technologies have difficulties in
                 providing reliable information. We describe a
                 comprehensive framework tailored for flexible
                 human-centric healthcare processes that improves the
                 reliability of activity recognition data. We present a
                 set of mechanisms that exploit the application
                 knowledge encoded in workflows in order to reduce the
                 uncertainty of this data, thus enabling unobtrusive
                 robust healthcare workflows. We evaluate our work based
                 on a real-world case study and show that the robustness
                 of unobtrusive healthcare workflows can be increased to
                 an absolute value of up to 91\% (compared to only 12\%
                 with a classical workflow system). This is a major
                 breakthrough that paves the way towards future
                 IT-enabled healthcare systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Park:2013:CPC,
  author =       "Yubin Park and Joydeep Ghosh",
  title =        "{CUDIA}: Probabilistic cross-level imputation using
                 individual auxiliary information",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "66:1--66:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508047",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In healthcare-related studies, individual patient or
                 hospital data are not often publicly available due to
                 privacy restrictions, legal issues, or reporting norms.
                 However, such measures may be provided at a higher or
                 more aggregated level, such as state-level,
                 county-level summaries or averages over health zones,
                 such as hospital referral regions (HRR) or hospital
                 service areas (HSA). Such levels constitute partitions
                 over the underlying individual level data, which may
                 not match the groupings that would have been obtained
                 if one clustered the data based on individual-level
                 attributes. Moreover, treating aggregated values as
                 representatives for the individuals can result in the
                 ecological fallacy. How can one run data mining
                 procedures on such data where different variables are
                 available at different levels of aggregation or
                 granularity? In this article, we seek a better
                 utilization of variably aggregated datasets, which are
                 possibly assembled from different sources. We propose a
                 novel cross-level imputation technique that models the
                 generative process of such datasets using a Bayesian
                 directed graphical model. The imputation is based on
                 the underlying data distribution and is shown to be
                 unbiased. This imputation can be further utilized in a
                 subsequent predictive modeling, yielding improved
                 accuracies. The experimental results using a simulated
                 dataset and the Behavioral Risk Factor Surveillance
                 System (BRFSS) dataset are provided to illustrate the
                 generality and capabilities of the proposed
                 framework.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hoens:2013:RMR,
  author =       "T. Ryan Hoens and Marina Blanton and Aaron Steele and
                 Nitesh V. Chawla",
  title =        "Reliable medical recommendation systems with patient
                 privacy",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "67:1--67:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508048",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "One of the concerns patients have when confronted with
                 a medical condition is which physician to trust. Any
                 recommendation system that seeks to answer this
                 question must ensure that any sensitive medical
                 information collected by the system is properly
                 secured. In this article, we codify these privacy
                 concerns in a privacy-friendly framework and present
                 two architectures that realize it: the Secure
                 Processing Architecture (SPA) and the Anonymous
                 Contributions Architecture (ACA). In SPA, patients
                 submit their ratings in a protected form without
                 revealing any information about their data and the
                 computation of recommendations proceeds over the
                 protected data using secure multiparty computation
                 techniques. In ACA, patients submit their ratings in
                 the clear, but no link between a submission and patient
                 data can be made. We discuss various aspects of both
                 architectures, including techniques for ensuring
                 reliability of computed recommendations and system
                 performance, and provide their comparison.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Khan:2013:VOM,
  author =       "Atif Khan and John A. Doucette and Robin Cohen",
  title =        "Validation of an ontological medical decision support
                 system for patient treatment using a repository of
                 patient data: Insights into the value of machine
                 learning",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "68:1--68:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508049",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we begin by presenting OMeD, a
                 medical decision support system, and argue for its
                 value over purely probabilistic approaches that reason
                 about patients for time-critical decision scenarios. We
                 then progress to present Holmes, a Hybrid Ontological
                 and Learning MEdical System which supports decision
                 making about patient treatment. This system is
                 introduced in order to cope with the case of missing
                 data. We demonstrate its effectiveness by operating on
                 an extensive set of real-world patient health data from
                 the CDC, applied to the decision-making scenario of
                 administering sleeping pills. In particular, we clarify
                 how the combination of semantic, ontological
                 representations, and probabilistic reasoning together
                 enable the proposal of effective patient treatments.
                 Our focus is thus on presenting an approach for
                 interpreting medical data in the context of real-time
                 decision making. This constitutes a comprehensive
                 framework for the design of medical recommendation
                 systems for potential use by medical professionals and
                 patients both, with the end result being personalized
                 patient treatment. We conclude with a discussion of the
                 value of our particular approach for such diverse
                 considerations as coping with misinformation provided
                 by patients, performing effectively in time-critical
                 environments where real-time decisions are necessary,
                 and potential applications facilitating patient
                 information gathering.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lee:2013:CPR,
  author =       "Suk Jin Lee and Yuichi Motai and Elisabeth Weiss and
                 Shumei S. Sun",
  title =        "Customized prediction of respiratory motion with
                 clustering from multiple patient interaction",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "69:1--69:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508050",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Information processing of radiotherapy systems has
                 become an important research area for sophisticated
                 radiation treatment methodology. Geometrically precise
                 delivery of radiotherapy in the thorax and upper
                 abdomen is compromised by respiratory motion during
                 treatment. Accurate prediction of the respiratory
                 motion would be beneficial for improving tumor
                 targeting. However, a wide variety of breathing
                 patterns can make it difficult to predict the breathing
                 motion with explicit models. We proposed a respiratory
                 motion predictor, that is, customized prediction with
                 multiple patient interactions using neural network
                 (CNN). For the preprocedure of prediction for
                 individual patient, we construct the clustering based
                 on breathing patterns of multiple patients using the
                 feature selection metrics that are composed of a
                 variety of breathing features. In the intraprocedure,
                 the proposed CNN used neural networks (NN) for a part
                 of the prediction and the extended Kalman filter (EKF)
                 for a part of the correction. The prediction accuracy
                 of the proposed method was investigated with a variety
                 of prediction time horizons using normalized root mean
                 squared error (NRMSE) values in comparison with the
                 alternate recurrent neural network (RNN). We have also
                 evaluated the prediction accuracy using the marginal
                 value that can be used as the reference value to judge
                 how many signals lie outside the confidence level. The
                 experimental results showed that the proposed CNN can
                 outperform RNN with respect to the prediction accuracy
                 with an improvement of 50\%.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Baralis:2013:EPH,
  author =       "Elena Baralis and Tania Cerquitelli and Silvia
                 Chiusano and Vincenzo D'Elia and Riccardo Molinari and
                 Davide Susta",
  title =        "Early prediction of the highest workload in
                 incremental cardiopulmonary tests",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "70:1--70:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508051",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Incremental tests are widely used in cardiopulmonary
                 exercise testing, both in the clinical domain and in
                 sport sciences. The highest workload (denoted
                 W$_{peak}$ ) reached in the test is key information for
                 assessing the individual body response to the test and
                 for analyzing possible cardiac failures and planning
                 rehabilitation, and training sessions. Being physically
                 very demanding, incremental tests can significantly
                 increase the body stress on monitored individuals and
                 may cause cardiopulmonary overload. This article
                 presents a new approach to cardiopulmonary testing that
                 addresses these drawbacks. During the test, our
                 approach analyzes the individual body response to the
                 exercise and predicts the W$_{peak}$ value that will be
                 reached in the test and an evaluation of its accuracy.
                 When the accuracy of the prediction becomes
                 satisfactory, the test can be prematurely stopped, thus
                 avoiding its entire execution. To predict W$_{peak}$,
                 we introduce a new index, the CardioPulmonary
                 Efficiency Index (CPE), summarizing the cardiopulmonary
                 response of the individual to the test. Our approach
                 analyzes the CPE trend during the test, together with
                 the characteristics of the individual, and predicts
                 W$_{peak}$. A K-nearest-neighbor-based classifier and
                 an ANN-based classier are exploited for the prediction.
                 The experimental evaluation showed that the W$_{peak}$
                 value can be predicted with a limited error from the
                 first steps of the test.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lee:2013:SFI,
  author =       "Yugyung Lee and Saranya Krishnamoorthy and Deendayal
                 Dinakarpandian",
  title =        "A semantic framework for intelligent matchmaking for
                 clinical trial eligibility criteria",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "71:1--71:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508052",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "An integral step in the discovery of new treatments
                 for medical conditions is the matching of potential
                 subjects with appropriate clinical trials. Eligibility
                 criteria for clinical trials are typically specified as
                 inclusion and exclusion criteria for each study in
                 freetext form. While this is sufficient for a human to
                 guide a recruitment interview, it cannot be reliably
                 and computationally construed to identify potential
                 subjects. Standardization of the representation of
                 eligibility criteria can enhance the efficiency and
                 accuracy of this process. This article presents a
                 semantic framework that facilitates intelligent
                 matchmaking by identifying a minimal set of eligibility
                 criteria with maximal coverage of clinical trials. In
                 contrast to existing top-down manual standardization
                 efforts, a bottom-up data driven approach is presented
                 to find a canonical nonredundant representation of an
                 arbitrary collection of clinical trial criteria. The
                 methodology has been validated with a corpus of 709
                 clinical trials related to Generalized Anxiety Disorder
                 containing 2,760 inclusion and 4,871 exclusion
                 eligibility criteria. This corpus is well represented
                 by a relatively small number of 126 inclusion clusters
                 and 175 exclusion clusters, each of which corresponds
                 to a semantically distinct criterion. Internal and
                 external validation measures provide an objective
                 evaluation of the method. An eligibility criteria
                 ontology has been constructed based on the clustering.
                 The resulting model has been incorporated into the
                 development of the MindTrial clinical trial recruiting
                 system. The prototype for clinical trial recruitment
                 illustrates the effectiveness of the methodology in
                 characterizing clinical trials and subjects and
                 accurate matching between them.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bi:2013:MLA,
  author =       "Jinbo Bi and Jiangwen Sun and Yu Wu and Howard Tennen
                 and Stephen Armeli",
  title =        "A machine learning approach to college drinking
                 prediction and risk factor identification",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "72:1--72:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508053",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Alcohol misuse is one of the most serious public
                 health problems facing adolescents and young adults in
                 the United States. National statistics shows that
                 nearly 90\% of alcohol consumed by youth under 21 years
                 of age involves binge drinking and 44\% of college
                 students engage in high-risk drinking activities.
                 Conventional alcohol intervention programs, which aim
                 at installing either an alcohol reduction norm or
                 prohibition against underage drinking, have yielded
                 little progress in controlling college binge drinking
                 over the years. Existing alcohol studies are deductive
                 where data are collected to investigate a
                 psychological/behavioral hypothesis, and statistical
                 analysis is applied to the data to confirm the
                 hypothesis. Due to this confirmatory manner of
                 analysis, the resulting statistical models are
                 cohort-specific and typically fail to replicate on a
                 different sample. This article presents two machine
                 learning approaches for a secondary analysis of
                 longitudinal data collected in college alcohol studies
                 sponsored by the National Institute on Alcohol Abuse
                 and Alcoholism. Our approach aims to discover
                 knowledge, from multiwave cohort-sequential daily data,
                 which may or may not align with the original hypothesis
                 but quantifies predictive models with higher likelihood
                 to generalize to new samples. We first propose a
                 so-called temporally-correlated support vector machine
                 to construct a classifier as a function of daily moods,
                 stress, and drinking expectancies to distinguish days
                 with nighttime binge drinking from days without for
                 individual students. We then propose a combination of
                 cluster analysis and feature selection, where cluster
                 analysis is used to identify drinking patterns based on
                 averaged daily drinking behavior and feature selection
                 is used to identify risk factors associated with each
                 pattern. We evaluate our methods on two cohorts of 530
                 total college students recruited during the Spring and
                 Fall semesters, respectively. Cross validation on these
                 two cohorts and further on 100 random partitions of the
                 total students demonstrate that our methods improve the
                 model generalizability in comparison with traditional
                 multilevel logistic regression. The discovered risk
                 factors and the interaction of these factors delineated
                 in our models can set a potential basis and offer
                 insights to a new design of more effective college
                 alcohol interventions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Subbu:2013:LMF,
  author =       "Kalyan Pathapati Subbu and Brandon Gozick and Ram
                 Dantu",
  title =        "{LocateMe}: Magnetic-fields-based indoor localization
                 using smartphones",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "73:1--73:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508054",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Fine-grained localization is extremely important to
                 accurately locate a user indoors. Although innovative
                 solutions have already been proposed, there is no
                 solution that is universally accepted, easily
                 implemented, user centric, and, most importantly, works
                 in the absence of GSM coverage or WiFi availability.
                 The advent of sensor rich smartphones has paved a way
                 to develop a solution that can cater to these
                 requirements. By employing a smartphone's built-in
                 magnetic field sensor, magnetic signatures were
                 collected inside buildings. These signatures displayed
                 a uniqueness in their patterns due to the presence of
                 different kinds of pillars, doors, elevators, etc.,
                 that consist of ferromagnetic materials like steel or
                 iron. We theoretically analyze the cause of this
                 uniqueness and then present an indoor localization
                 solution by classifying signatures based on their
                 patterns. However, to account for user walking speed
                 variations so as to provide an application usable to a
                 variety of users, we follow a dynamic
                 time-warping-based approach that is known to work on
                 similar signals irrespective of their variations in the
                 time axis. Our approach resulted in localization
                 distances of approximately 2m--6m with accuracies
                 between 80--100\% implying that it is sufficient to
                 walk short distances across hallways to be located by
                 the smartphone. The implementation of the application
                 on different smartphones yielded response times of less
                 than five secs, thereby validating the feasibility of
                 our approach and making it a viable solution.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2013:RWM,
  author =       "Bin Chen and Jian Su and Chew Lim Tan",
  title =        "Random walks down the mention graphs for event
                 coreference resolution",
  journal =      j-TIST,
  volume =       "4",
  number =       "4",
  pages =        "74:1--74:??",
  month =        sep,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2508037.2508055",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Event coreference is an important task in event
                 extraction and other natural language processing tasks.
                 Despite its importance, it was merely discussed in
                 previous studies. In this article, we present a global
                 coreference resolution system dedicated to various
                 sophisticated event coreference phenomena. First, seven
                 resolvers are utilized to resolve different event and
                 object coreference mention pairs with a new instance
                 selection strategy and new linguistic features. Second,
                 a global solution-a modified random walk
                 partitioning-is employed for the chain formation. Being
                 the first attempt to apply the random walk model for
                 coreference resolution, the revised model utilizes a
                 sampling method, termination criterion, and stopping
                 probability to greatly improve the effectiveness of
                 random walk model for event coreference resolution.
                 Last but not least, the new model facilitates a
                 convenient way to incorporate sophisticated linguistic
                 constraints and preferences, the related object mention
                 graph, as well as pronoun coreference information not
                 used in previous studies for effective chain formation.
                 In total, these techniques impose more than 20\%
                 F-score improvement over the baseline system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Editors:2013:ISS,
  author =       "Editors",
  title =        "Introduction to special section on intelligent mobile
                 knowledge discovery and management systems",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "1:1--1:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542183",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ying:2013:MGT,
  author =       "Josh Jia-Ching Ying and Wang-Chien Lee and Vincent S.
                 Tseng",
  title =        "Mining geographic-temporal-semantic patterns in
                 trajectories for location prediction",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "2:1--2:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542184",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In recent years, research on location predictions by
                 mining trajectories of users has attracted a lot of
                 attention. Existing studies on this topic mostly treat
                 such predictions as just a type of location
                 recommendation, that is, they predict the next location
                 of a user using location recommenders. However, an user
                 usually visits somewhere for reasons other than
                 interestingness. In this article, we propose a novel
                 mining-based location prediction approach called
                 Geographic-Temporal-Semantic-based Location Prediction
                 (GTS-LP), which takes into account a user's
                 geographic-triggered intentions, temporal-triggered
                 intentions, and semantic-triggered intentions, to
                 estimate the probability of the user in visiting a
                 location. The core idea underlying our proposal is the
                 discovery of trajectory patterns of users, namely GTS
                 patterns, to capture frequent movements triggered by
                 the three kinds of intentions. To achieve this goal, we
                 define a new trajectory pattern to capture the key
                 properties of the behaviors that are motivated by the
                 three kinds of intentions from trajectories of users.
                 In our GTS-LP approach, we propose a series of novel
                 matching strategies to calculate the similarity between
                 the current movement of a user and discovered GTS
                 patterns based on various moving intentions. On the
                 basis of similitude, we make an online prediction as to
                 the location the user intends to visit. To the best of
                 our knowledge, this is the first work on location
                 prediction based on trajectory pattern mining that
                 explores the geographic, temporal, and semantic
                 properties simultaneously. By means of a comprehensive
                 evaluation using various real trajectory datasets, we
                 show that our proposed GTS-LP approach delivers
                 excellent performance and significantly outperforms
                 existing state-of-the-art location prediction
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2013:FTC,
  author =       "Lu-An Tang and Yu Zheng and Jing Yuan and Jiawei Han
                 and Alice Leung and Wen-Chih Peng and Thomas {La
                 Porta}",
  title =        "A framework of traveling companion discovery on
                 trajectory data streams",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "3:1--3:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542185",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The advance of mobile technologies leads to huge
                 volumes of spatio-temporal data collected in the form
                 of trajectory data streams. In this study, we
                 investigate the problem of discovering object groups
                 that travel together (i.e., traveling companions ) from
                 trajectory data streams. Such technique has broad
                 applications in the areas of scientific study,
                 transportation management, and military surveillance.
                 To discover traveling companions, the monitoring system
                 should cluster the objects of each snapshot and
                 intersect the clustering results to retrieve
                 moving-together objects. Since both clustering and
                 intersection steps involve high computational overhead,
                 the key issue of companion discovery is to improve the
                 efficiency of algorithms. We propose the models of
                 closed companion candidates and smart intersection to
                 accelerate data processing. A data structure termed
                 traveling buddy is designed to facilitate scalable and
                 flexible companion discovery from trajectory streams.
                 The traveling buddies are microgroups of objects that
                 are tightly bound together. By only storing the object
                 relationships rather than their spatial coordinates,
                 the buddies can be dynamically maintained along the
                 trajectory stream with low cost. Based on traveling
                 buddies, the system can discover companions without
                 accessing the object details. In addition, we extend
                 the proposed framework to discover companions on more
                 complicated scenarios with spatial and temporal
                 constraints, such as on the road network and
                 battlefield. The proposed methods are evaluated with
                 extensive experiments on both real and synthetic
                 datasets. Experimental results show that our proposed
                 buddy-based approach is an order of magnitude faster
                 than the baselines and achieves higher accuracy in
                 companion discovery.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Doo:2013:MTF,
  author =       "Myungcheol Doo and Ling Liu",
  title =        "{Mondrian} tree: a fast index for spatial alarm
                 processing",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "4:1--4:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542186",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With ubiquitous wireless connectivity and
                 technological advances in mobile devices, we witness
                 the growing demands and increasing market shares of
                 mobile intelligent systems and technologies for
                 real-time decision making and location-based knowledge
                 discovery. Spatial alarms are considered as one of the
                 fundamental capabilities for intelligent mobile
                 location-based systems. Like time-based alarms that
                 remind us the arrival of a future time point, spatial
                 alarms remind us the arrival of a future spatial point.
                 Existing approaches for scaling spatial alarm
                 processing are focused on computing Alarm-Free Regions
                 (A fr) and Alarm-Free Period (Afp) such that mobile
                 objects traveling within an Afr can safely hibernate
                 the alarm evaluation process for the computed Afp, to
                 save battery power, until approaching the nearest alarm
                 of interest. A key technical challenge in scaling
                 spatial alarm processing is to efficiently compute Afr
                 and Afp such that mobile objects traveling within an
                 Afr can safely hibernate the alarm evaluation process
                 during the computed Afp, while maintaining high
                 accuracy. In this article we argue that on-demand
                 computation of Afr is expensive and may not scale well
                 for dense populations of mobile objects. Instead, we
                 propose to maintain an index for both spatial alarms
                 and empty regions (Afr) such that for a given mobile
                 user's location, we can find relevant spatial alarms
                 and whether it is in an alarm-free region more
                 efficiently. We also show that conventional spatial
                 indexing methods, such as R-tree family, k -d tree,
                 Quadtree, and Grid, are by design not well suited to
                 index empty regions. We present Mondrian Tree --- a
                 region partitioning tree for indexing both spatial
                 alarms and alarm-free regions. We first introduce the
                 Mondrian Tree indexing algorithms, including index
                 construction, search, and maintenance. Then we describe
                 a suite of Mondrian Tree optimizations to further
                 enhance the performance of spatial alarm processing.
                 Our experimental evaluation shows that the Mondrian
                 Tree index, as an intelligent technology for mobile
                 systems, outperforms traditional index methods, such as
                 R-tree, Quadtree, and k -d tree, for spatial alarm
                 processing.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bonchi:2013:ISI,
  author =       "Francesco Bonchi and Wray Buntine and Ricard
                 Gavald{\'a} and Shengbo Guo",
  title =        "Introduction to the special issue on {Social Web}
                 mining",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "5:1--5:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542187",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{He:2013:DJS,
  author =       "Yulan He and Chenghua Lin and Wei Gao and Kam-Fai
                 Wong",
  title =        "Dynamic joint sentiment-topic model",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "6:1--6:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542188",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Social media data are produced continuously by a large
                 and uncontrolled number of users. The dynamic nature of
                 such data requires the sentiment and topic analysis
                 model to be also dynamically updated, capturing the
                 most recent language use of sentiments and topics in
                 text. We propose a dynamic Joint Sentiment-Topic model
                 (dJST) which allows the detection and tracking of views
                 of current and recurrent interests and shifts in topic
                 and sentiment. Both topic and sentiment dynamics are
                 captured by assuming that the current
                 sentiment-topic-specific word distributions are
                 generated according to the word distributions at
                 previous epochs. We study three different ways of
                 accounting for such dependency information: (1) sliding
                 window where the current sentiment-topic word
                 distributions are dependent on the previous
                 sentiment-topic-specific word distributions in the last
                 S epochs; (2) skip model where history sentiment topic
                 word distributions are considered by skipping some
                 epochs in between; and (3) multiscale model where
                 previous long- and short- timescale distributions are
                 taken into consideration. We derive efficient online
                 inference procedures to sequentially update the model
                 with newly arrived data and show the effectiveness of
                 our proposed model on the Mozilla add-on reviews
                 crawled between 2007 and 2011.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cataldi:2013:PET,
  author =       "Mario Cataldi and Luigi {Di Caro} and Claudio
                 Schifanella",
  title =        "Personalized emerging topic detection based on a term
                 aging model",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "7:1--7:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542189",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Twitter is a popular microblogging service that acts
                 as a ground-level information news flashes portal where
                 people with different background, age, and social
                 condition provide information about what is happening
                 in front of their eyes. This characteristic makes
                 Twitter probably the fastest information service in the
                 world. In this article, we recognize this role of
                 Twitter and propose a novel, user-aware topic detection
                 technique that permits to retrieve, in real time, the
                 most emerging topics of discussion expressed by the
                 community within the interests of specific users.
                 First, we analyze the topology of Twitter looking at
                 how the information spreads over the network, taking
                 into account the authority/influence of each active
                 user. Then, we make use of a novel term aging model to
                 compute the burstiness of each term, and provide a
                 graph-based method to retrieve the minimal set of terms
                 that can represent the corresponding topic. Finally,
                 since any user can have topic preferences inferable
                 from the shared content, we leverage such knowledge to
                 highlight the most emerging topics within her foci of
                 interest. As evaluation we then provide several
                 experiments together with a user study proving the
                 validity and reliability of the proposed approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Arias:2013:FTD,
  author =       "Marta Arias and Argimiro Arratia and Ramon Xuriguera",
  title =        "Forecasting with {Twitter} data",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "8:1--8:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542190",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The dramatic rise in the use of social network
                 platforms such as Facebook or Twitter has resulted in
                 the availability of vast and growing user-contributed
                 repositories of data. Exploiting this data by
                 extracting useful information from it has become a
                 great challenge in data mining and knowledge discovery.
                 A recently popular way of extracting useful information
                 from social network platforms is to build indicators,
                 often in the form of a time series, of general public
                 mood by means of sentiment analysis. Such indicators
                 have been shown to correlate with a diverse variety of
                 phenomena. In this article we follow this line of work
                 and set out to assess, in a rigorous manner, whether a
                 public sentiment indicator extracted from daily Twitter
                 messages can indeed improve the forecasting of social,
                 economic, or commercial indicators. To this end we have
                 collected and processed a large amount of Twitter posts
                 from March 2011 to the present date for two very
                 different domains: stock market and movie box office
                 revenue. For each of these domains, we build and
                 evaluate forecasting models for several target time
                 series both using and ignoring the Twitter-related
                 data. If Twitter does help, then this should be
                 reflected in the fact that the predictions of models
                 that use Twitter-related data are better than the
                 models that do not use this data. By systematically
                 varying the models that we use and their parameters,
                 together with other tuning factors such as lag or the
                 way in which we build our Twitter sentiment index, we
                 obtain a large dataset that allows us to test our
                 hypothesis under different experimental conditions.
                 Using a novel decision-tree-based technique that we
                 call summary tree we are able to mine this large
                 dataset and obtain automatically those configurations
                 that lead to an improvement in the prediction power of
                 our forecasting models. As a general result, we have
                 seen that nonlinear models do take advantage of Twitter
                 data when forecasting trends in volatility indices,
                 while linear ones fail systematically when forecasting
                 any kind of financial time series. In the case of
                 predicting box office revenue trend, it is support
                 vector machines that make best use of Twitter data. In
                 addition, we conduct statistical tests to determine the
                 relation between our Twitter time series and the
                 different target time series.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lee:2013:CES,
  author =       "Kyumin Lee and James Caverlee and Zhiyuan Cheng and
                 Daniel Z. Sui",
  title =        "Campaign extraction from social media",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "9:1--9:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542191",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this manuscript, we study the problem of detecting
                 coordinated free text campaigns in large-scale social
                 media. These campaigns-ranging from coordinated spam
                 messages to promotional and advertising campaigns to
                 political astro-turfing-are growing in significance and
                 reach with the commensurate rise in massive-scale
                 social systems. Specifically, we propose and evaluate a
                 content-driven framework for effectively linking free
                 text posts with common ``talking points'' and
                 extracting campaigns from large-scale social media.
                 Three of the salient features of the campaign
                 extraction framework are: (i) first, we investigate
                 graph mining techniques for isolating coherent
                 campaigns from large message-based graphs; (ii) second,
                 we conduct a comprehensive comparative study of
                 text-based message correlation in message and user
                 levels; and (iii) finally, we analyze temporal
                 behaviors of various campaign types. Through an
                 experimental study over millions of Twitter messages we
                 identify five major types of campaigns-namely Spam,
                 Promotion, Template, News, and Celebrity campaigns-and
                 we show how these campaigns may be extracted with high
                 precision and recall.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fire:2013:CEL,
  author =       "Michael Fire and Lena Tenenboim-Chekina and Rami Puzis
                 and Ofrit Lesser and Lior Rokach and Yuval Elovici",
  title =        "Computationally efficient link prediction in a variety
                 of social networks",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "10:1--10:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542192",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Online social networking sites have become
                 increasingly popular over the last few years. As a
                 result, new interdisciplinary research directions have
                 emerged in which social network analysis methods are
                 applied to networks containing hundreds of millions of
                 users. Unfortunately, links between individuals may be
                 missing either due to an imperfect acquirement process
                 or because they are not yet reflected in the online
                 network (i.e., friends in the real world did not form a
                 virtual connection). The primary bottleneck in link
                 prediction techniques is extracting the structural
                 features required for classifying links. In this
                 article, we propose a set of simple, easy-to-compute
                 structural features that can be analyzed to identify
                 missing links. We show that by using simple structural
                 features, a machine learning classifier can
                 successfully identify missing links, even when applied
                 to a predicament of classifying links between
                 individuals with at least one common friend. We also
                 present a method for calculating the amount of data
                 needed in order to build more accurate classifiers. The
                 new Friends measure and Same community features we
                 developed are shown to be good predictors for missing
                 links. An evaluation experiment was performed on ten
                 large social networks datasets: Academia.edu, DBLP,
                 Facebook, Flickr, Flixster, Google+, Gowalla,
                 TheMarker, Twitter, and YouTube. Our methods can
                 provide social network site operators with the
                 capability of helping users to find known, offline
                 contacts and to discover new friends online. They may
                 also be used for exposing hidden links in online social
                 networks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cruz:2013:CDV,
  author =       "Juan David Cruz and C{\'e}cile Bothorel and
                 Fran{\c{c}}ois Poulet",
  title =        "Community detection and visualization in social
                 networks: Integrating structural and semantic
                 information",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "11:1--11:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542193",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Due to the explosion of social networking and the
                 information sharing among their users, the interest in
                 analyzing social networks has increased over the recent
                 years. Two general interests in this kind of studies
                 are community detection and visualization. In the first
                 case, most of the classic algorithms for community
                 detection use only the structural information to
                 identify groups, that is, how clusters are formed
                 according to the topology of the relationships.
                 However, these methods do not take into account any
                 semantic information which could guide the clustering
                 process, and which may add elements to conduct further
                 analyses. In the second case most of the layout
                 algorithms for clustered graphs have been designed to
                 differentiate the groups within the graph, but they are
                 not designed to analyze the interactions between such
                 groups. Identifying these interactions gives an insight
                 into the way different communities exchange messages or
                 information, and allows the social network researcher
                 to identify key actors, roles, and paths from one
                 community to another. This article presents a novel
                 model to use, in a conjoint way, the semantic
                 information from the social network and its structural
                 information to, first, find structurally and
                 semantically related groups of nodes, and second, a
                 layout algorithm for clustered graphs which divides the
                 nodes into two types, one for nodes with edges
                 connecting other communities and another with nodes
                 connecting nodes only within their own community. With
                 this division the visualization tool focuses on the
                 connections between groups facilitating deep studies of
                 augmented social networks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cagliero:2013:PTR,
  author =       "Luca Cagliero and Alessandro Fiori and Luigi
                 Grimaudo",
  title =        "Personalized tag recommendation based on generalized
                 rules",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "12:1--12:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542194",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Tag recommendation is focused on recommending useful
                 tags to a user who is annotating a Web resource. A
                 relevant research issue is the recommendation of
                 additional tags to partially annotated resources, which
                 may be based on either personalized or collective
                 knowledge. However, since the annotation process is
                 usually not driven by any controlled vocabulary, the
                 collections of user-specific and collective annotations
                 are often very sparse. Indeed, the discovery of the
                 most significant associations among tags becomes a
                 challenging task. This article presents a novel
                 personalized tag recommendation system that discovers
                 and exploits generalized association rules, that is,
                 tag correlations holding at different abstraction
                 levels, to identify additional pertinent tags to
                 suggest. The use of generalized rules relevantly
                 improves the effectiveness of traditional rule-based
                 systems in coping with sparse tag collections, because:
                 (i) correlations hidden at the level of individual tags
                 may be anyhow figured out at higher abstraction levels
                 and (ii) low-level tag associations discovered from
                 collective data may be exploited to specialize
                 high-level associations discovered in the user-specific
                 context. The effectiveness of the proposed system has
                 been validated against other personalized approaches on
                 real-life and benchmark collections retrieved from the
                 popular photo-sharing system Flickr.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Elahi:2013:ALS,
  author =       "Mehdi Elahi and Francesco Ricci and Neil Rubens",
  title =        "Active learning strategies for rating elicitation in
                 collaborative filtering: a system-wide perspective",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "13:1--13:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542195",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The accuracy of collaborative-filtering recommender
                 systems largely depends on three factors: the quality
                 of the rating prediction algorithm, and the quantity
                 and quality of available ratings. While research in the
                 field of recommender systems often concentrates on
                 improving prediction algorithms, even the best
                 algorithms will fail if they are fed poor-quality data
                 during training, that is, garbage in, garbage out.
                 Active learning aims to remedy this problem by focusing
                 on obtaining better-quality data that more aptly
                 reflects a user's preferences. However, traditional
                 evaluation of active learning strategies has two major
                 flaws, which have significant negative ramifications on
                 accurately evaluating the system's performance
                 (prediction error, precision, and quantity of elicited
                 ratings). (1) Performance has been evaluated for each
                 user independently (ignoring system-wide improvements).
                 (2) Active learning strategies have been evaluated in
                 isolation from unsolicited user ratings (natural
                 acquisition). In this article we show that an elicited
                 rating has effects across the system, so a typical
                 user-centric evaluation which ignores any changes of
                 rating prediction of other users also ignores these
                 cumulative effects, which may be more influential on
                 the performance of the system as a whole (system
                 centric). We propose a new evaluation methodology and
                 use it to evaluate some novel and state-of-the-art
                 rating elicitation strategies. We found that the
                 system-wide effectiveness of a rating elicitation
                 strategy depends on the stage of the rating elicitation
                 process, and on the evaluation measures (MAE, NDCG, and
                 Precision). In particular, we show that using some
                 common user-centric strategies may actually degrade the
                 overall performance of a system. Finally, we show that
                 the performance of many common active learning
                 strategies changes significantly when evaluated
                 concurrently with the natural acquisition of ratings in
                 recommender systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{deMeo:2013:AUB,
  author =       "Pasquale de Meo and Emilio Ferrara and Fabian Abel and
                 Lora Aroyo and Geert-Jan Houben",
  title =        "Analyzing user behavior across social sharing
                 environments",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "14:1--14:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2535526",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this work we present an in-depth analysis of the
                 user behaviors on different Social Sharing systems. We
                 consider three popular platforms, Flickr, Delicious and
                 StumbleUpon, and, by combining techniques from social
                 network analysis with techniques from semantic
                 analysis, we characterize the tagging behavior as well
                 as the tendency to create friendship relationships of
                 the users of these platforms. The aim of our
                 investigation is to see if (and how) the features and
                 goals of a given Social Sharing system reflect on the
                 behavior of its users and, moreover, if there exists a
                 correlation between the social and tagging behavior of
                 the users. We report our findings in terms of the
                 characteristics of user profiles according to three
                 different dimensions: (i) intensity of user activities,
                 (ii) tag-based characteristics of user profiles, and
                 (iii) semantic characteristics of user profiles.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2013:ACL,
  author =       "Ziqiang Shi and Jiqing Han and Tieran Zheng",
  title =        "Audio classification with low-rank matrix
                 representation features",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "15:1--15:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542197",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, a novel framework based on trace norm
                 minimization for audio classification is proposed. In
                 this framework, both the feature extraction and
                 classification are obtained by solving corresponding
                 convex optimization problem with trace norm
                 regularization. For feature extraction, robust
                 principle component analysis (robust PCA) via
                 minimization a combination of the nuclear norm and the
                 l$_1$ -norm is used to extract low-rank matrix features
                 which are robust to white noise and gross corruption
                 for audio signal. These low-rank matrix features are
                 fed to a linear classifier where the weight and bias
                 are learned by solving similar trace norm constrained
                 problems. For this linear classifier, most methods find
                 the parameters, that is the weight matrix and bias in
                 batch-mode, which makes it inefficient for large scale
                 problems. In this article, we propose a parallel online
                 framework using accelerated proximal gradient method.
                 This framework has advantages in processing speed and
                 memory cost. In addition, as a result of the
                 regularization formulation of matrix classification,
                 the Lipschitz constant was given explicitly, and hence
                 the step size estimation of the general proximal
                 gradient method was omitted, and this part of computing
                 burden is saved in our approach. Extensive experiments
                 on real data sets for laugh/non-laugh and
                 applause/non-applause classification indicate that this
                 novel framework is effective and noise robust.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Osman:2013:TMA,
  author =       "Nardine Osman and Carles Sierra and Fiona Mcneill and
                 Juan Pane and John Debenham",
  title =        "Trust and matching algorithms for selecting suitable
                 agents",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "16:1--16:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542198",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article addresses the problem of finding suitable
                 agents to collaborate with for a given interaction in
                 distributed open systems, such as multiagent and P2P
                 systems. The agent in question is given the chance to
                 describe its confidence in its own capabilities.
                 However, since agents may be malicious, misinformed,
                 suffer from miscommunication, and so on, one also needs
                 to calculate how much trusted is that agent. This
                 article proposes a novel trust model that calculates
                 the expectation about an agent's future performance in
                 a given context by assessing both the agent's
                 willingness and capability through the semantic
                 comparison of the current context in question with the
                 agent's performance in past similar experiences. The
                 proposed mechanism for assessing trust may be applied
                 to any real world application where past commitments
                 are recorded and observations are made that assess
                 these commitments, and the model can then calculate
                 one's trust in another with respect to a future
                 commitment by assessing the other's past performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Montali:2013:MBC,
  author =       "Marco Montali and Fabrizio M. Maggi and Federico
                 Chesani and Paola Mello and Wil M. P. van der Aalst",
  title =        "Monitoring business constraints with the event
                 calculus",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "17:1--17:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542199",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Today, large business processes are composed of
                 smaller, autonomous, interconnected subsystems,
                 achieving modularity and robustness. Quite often, these
                 large processes comprise software components as well as
                 human actors, they face highly dynamic environments and
                 their subsystems are updated and evolve independently
                 of each other. Due to their dynamic nature and
                 complexity, it might be difficult, if not impossible,
                 to ensure at design-time that such systems will always
                 exhibit the desired/expected behaviors. This, in turn,
                 triggers the need for runtime verification and
                 monitoring facilities. These are needed to check
                 whether the actual behavior complies with expected
                 business constraints, internal/external regulations and
                 desired best practices. In this work, we present
                 Mobucon EC, a novel monitoring framework that tracks
                 streams of events and continuously determines the state
                 of business constraints. In Mobucon EC, business
                 constraints are defined using the declarative language
                 Declare. For the purpose of this work, Declare has been
                 suitably extended to support quantitative time
                 constraints and non-atomic, durative activities. The
                 logic-based language Event Calculus (EC) has been
                 adopted to provide a formal specification and semantics
                 to Declare constraints, while a light-weight, logic
                 programming-based EC tool supports dynamically
                 reasoning about partial, evolving execution traces. To
                 demonstrate the applicability of our approach, we
                 describe a case study about maritime safety and
                 security and provide a synthetic benchmark to evaluate
                 its scalability.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lu:2013:SBA,
  author =       "Qiang Lu and Ruoyun Huang and Yixin Chen and You Xu
                 and Weixiong Zhang and Guoliang Chen",
  title =        "A {SAT-based} approach to cost-sensitive temporally
                 expressive planning",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "18:1--18:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542200",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Complex features, such as temporal dependencies and
                 numerical cost constraints, are hallmarks of real-world
                 planning problems. In this article, we consider the
                 challenging problem of cost-sensitive temporally
                 expressive (CSTE) planning, which requires concurrency
                 of durative actions and optimization of action costs.
                 We first propose a scheme to translate a CSTE planning
                 problem to a minimum cost (MinCost) satisfiability
                 (SAT) problem and to integrate with a relaxed parallel
                 planning semantics for handling true temporal
                 expressiveness. Our scheme finds solution plans that
                 optimize temporal makespan, and also minimize total
                 action costs at the optimal makespan. We propose two
                 approaches for solving MinCost SAT. The first is based
                 on a transformation of a MinCost SAT problem to a
                 weighted partial Max-SAT (WPMax-SAT), and the second,
                 called BB-CDCL, is an integration of the
                 branch-and-bound technique and the conflict driven
                 clause learning (CDCL) method. We also develop a CSTE
                 customized variable branching scheme for BB-CDCL which
                 can significantly improve the search efficiency. Our
                 experiments on the existing CSTE benchmark domains show
                 that our planner compares favorably to the
                 state-of-the-art temporally expressive planners in both
                 efficiency and quality.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shieh:2013:RTS,
  author =       "Jyh-Ren Shieh and Ching-Yung Lin and Shun-Xuan Wang
                 and Ja-Ling Wu",
  title =        "Relational term-suggestion graphs incorporating
                 multipartite concept and expertise networks",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "19:1--19:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542201",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Term suggestions recommend query terms to a user based
                 on his initial query. Suggesting adequate terms is a
                 challenging issue. Most existing commercial search
                 engines suggest search terms based on the frequency of
                 prior used terms that match the leading alphabets the
                 user types. In this article, we present a novel
                 mechanism to construct semantic term-relation graphs to
                 suggest relevant search terms in the semantic level. We
                 built term-relation graphs based on multipartite
                 networks of existing social media, especially from
                 Wikipedia. The multipartite linkage networks of
                 contributor-term, term-category, and term-term are
                 extracted from Wikipedia to eventually form term
                 relation graphs. For fusing these multipartite linkage
                 networks, we propose to incorporate the
                 contributor-category networks to model the expertise of
                 the contributors. Based on our experiments, this step
                 has demonstrated clear enhancement on the accuracy of
                 the inferred relatedness of the term-semantic graphs.
                 Experiments on keyword-expanded search based on 200
                 TREC-5 ad-hoc topics showed obvious advantage of our
                 algorithms over existing approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2013:EEM,
  author =       "Tianshi Chen and Yunji Chen and Qi Guo and Zhi-Hua
                 Zhou and Ling Li and Zhiwei Xu",
  title =        "Effective and efficient microprocessor design space
                 exploration using unlabeled design configurations",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "20:1--20:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542202",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Ever-increasing design complexity and advances of
                 technology impose great challenges on the design of
                 modern microprocessors. One such challenge is to
                 determine promising microprocessor configurations to
                 meet specific design constraints, which is called
                 Design Space Exploration (DSE). In the computer
                 architecture community, supervised learning techniques
                 have been applied to DSE to build regression models for
                 predicting the qualities of design configurations. For
                 supervised learning, however, considerable simulation
                 costs are required for attaining the labeled design
                 configurations. Given limited resources, it is
                 difficult to achieve high accuracy. In this article,
                 inspired by recent advances in semisupervised learning
                 and active learning, we propose the COAL approach which
                 can exploit unlabeled design configurations to
                 significantly improve the models. Empirical study
                 demonstrates that COAL significantly outperforms a
                 state-of-the-art DSE technique by reducing mean squared
                 error by 35\% to 95\%, and thus, promising
                 architectures can be attained more efficiently.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Singh:2013:NBG,
  author =       "Munindar P. Singh",
  title =        "Norms as a basis for governing sociotechnical
                 systems",
  journal =      j-TIST,
  volume =       "5",
  number =       "1",
  pages =        "21:1--21:??",
  month =        dec,
  year =         "2013",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542182.2542203",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 13 07:29:16 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We understand a sociotechnical system as a
                 multistakeholder cyber-physical system. We introduce
                 governance as the administration of such a system by
                 the stakeholders themselves. In this regard, governance
                 is a peer-to-peer notion and contrasts with traditional
                 management, which is a top-down hierarchical notion.
                 Traditionally, there is no computational support for
                 governance and it is achieved through out-of-band
                 interactions among system administrators. Not
                 surprisingly, traditional approaches simply do not
                 scale up to large sociotechnical systems. We develop an
                 approach for governance based on a computational
                 representation of norms in organizations. Our approach
                 is motivated by the Ocean Observatory Initiative, a
                 thirty-year \$400 million project, which supports a
                 variety of resources dealing with monitoring and
                 studying the world's oceans. These resources include
                 autonomous underwater vehicles, ocean gliders, buoys,
                 and other instrumentation as well as more traditional
                 computational resources. Our approach has the benefit
                 of directly reflecting stakeholder needs and assuring
                 stakeholders of the correctness of the resulting
                 governance decisions while yielding adaptive resource
                 allocation in the face of changes in both stakeholder
                 needs and physical circumstances.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{He:2014:ISI,
  author =       "Qi He and Juanzi Li and Rong Yan and John Yen and
                 Haizheng Zhang",
  title =        "Introduction to the {Special Issue on Linking Social
                 Granularity and Functions}",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "22:1--22:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2594452",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2014:IUI,
  author =       "Jinpeng Wang and Wayne Xin Zhao and Yulan He and
                 Xiaoming Li",
  title =        "Infer User Interests via Link Structure
                 Regularization",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "23:1--23:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2499380",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Learning user interests from online social networks
                 helps to better understand user behaviors and provides
                 useful guidance to design user-centric applications.
                 Apart from analyzing users' online content, it is also
                 important to consider users' social connections in the
                 social Web. Graph regularization methods have been
                 widely used in various text mining tasks, which can
                 leverage the graph structure information extracted from
                 data. Previously, graph regularization methods operate
                 under the cluster assumption that nearby nodes are more
                 similar and nodes on the same structure (typically
                 referred to as a cluster or a manifold) are likely to
                 be similar. We argue that learning user interests from
                 complex, sparse, and dynamic social networks should be
                 based on the link structure assumption under which node
                 similarities are evaluated based on the local link
                 structures instead of explicit links between two nodes.
                 We propose a regularization framework based on the
                 relation bipartite graph, which can be constructed from
                 any type of relations. Using Twitter as our case study,
                 we evaluate our proposed framework from social networks
                 built from retweet relations. Both quantitative and
                 qualitative experiments show that our proposed method
                 outperforms a few competitive baselines in learning
                 user interests over a set of predefined topics. It also
                 gives superior results compared to the baselines on
                 retweet prediction and topical authority
                 identification.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Javari:2014:CBC,
  author =       "Amin Javari and Mahdi Jalili",
  title =        "Cluster-Based Collaborative Filtering for Sign
                 Prediction in Social Networks with Positive and
                 Negative Links",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "24:1--24:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2501977",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Social network analysis and mining get
                 ever-increasingly important in recent years, which is
                 mainly due to the availability of large datasets and
                 advances in computing systems. A class of social
                 networks is those with positive and negative links. In
                 such networks, a positive link indicates friendship (or
                 trust), whereas links with a negative sign correspond
                 to enmity (or distrust). Predicting the sign of the
                 links in these networks is an important issue and has
                 many applications, such as friendship recommendation
                 and identifying malicious nodes in the network. In this
                 manuscript, we proposed a new method for sign
                 prediction in networks with positive and negative
                 links. Our algorithm is based first on clustering the
                 network into a number of clusters and then applying a
                 collaborative filtering algorithm. The clusters are
                 such that the number of intra-cluster negative links
                 and inter-cluster positive links are minimal, that is,
                 the clusters are socially balanced as much as possible
                 (a signed graph is socially balanced if it can be
                 divided into clusters with all positive links inside
                 the clusters and all negative links between them). We
                 then used similarity between the clusters (based on the
                 links between them) in a collaborative filtering
                 algorithm. Our experiments on a number of real datasets
                 showed that the proposed method outperformed previous
                 methods, including those based on social balance and
                 status theories and one based on a machine learning
                 framework (logistic regression in this work).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2014:CCB,
  author =       "Yi-Cheng Chen and Wen-Yuan Zhu and Wen-Chih Peng and
                 Wang-Chien Lee and Suh-Yin Lee",
  title =        "{CIM}: Community-Based Influence Maximization in
                 Social Networks",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "25:1--25:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2532549",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Given a social graph, the problem of influence
                 maximization is to determine a set of nodes that
                 maximizes the spread of influences. While some recent
                 research has studied the problem of influence
                 maximization, these works are generally too time
                 consuming for practical use in a large-scale social
                 network. In this article, we develop a new framework,
                 community-based influence maximization (CIM), to tackle
                 the influence maximization problem with an emphasis on
                 the time efficiency issue. Our proposed framework, CIM,
                 comprises three phases: (i) community detection, (ii)
                 candidate generation, and (iii) seed selection.
                 Specifically, phase (i) discovers the community
                 structure of the network; phase (ii) uses the
                 information of communities to narrow down the possible
                 seed candidates; and phase (iii) finalizes the seed
                 nodes from the candidate set. By exploiting the
                 properties of the community structures, we are able to
                 avoid overlapped information and thus efficiently
                 select the number of seeds to maximize information
                 spreads. The experimental results on both synthetic and
                 real datasets show that the proposed CIM algorithm
                 significantly outperforms the state-of-the-art
                 algorithms in terms of efficiency and scalability, with
                 almost no compromise of effectiveness.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2014:SOG,
  author =       "Jaewon Yang and Jure Leskovec",
  title =        "Structure and Overlaps of Ground-Truth Communities in
                 Networks",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "26:1--26:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2594454",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "One of the main organizing principles in real-world
                 networks is that of network communities, where sets of
                 nodes organize into densely linked clusters. Even
                 though detection of such communities is of great
                 interest, understanding the structure communities in
                 large networks remains relatively limited. In
                 particular, due to the unavailability of labeled
                 ground-truth data, it was traditionally very hard to
                 develop accurate models of network community structure.
                 Here we use six large social, collaboration, and
                 information networks where nodes explicitly state their
                 ground-truth community memberships. For example, nodes
                 in social networks join into explicitly defined
                 interest based groups, and we use such groups as
                 explicitly labeled ground-truth communities. We use
                 such ground-truth communities to study their structural
                 signatures by analyzing how ground-truth communities
                 emerge in networks and how they overlap. We observe
                 some surprising phenomena. First, ground-truth
                 communities contain high-degree hub nodes that reside
                 in community overlaps and link to most of the members
                 of the community. Second, the overlaps of communities
                 are more densely connected than the non-overlapping
                 parts of communities. We show that this in contrast to
                 the conventional wisdom that community overlaps are
                 more sparsely connected than the non-overlapping parts
                 themselves. We then show that many existing models of
                 network communities do not capture dense community
                 overlaps. This in turn means that most present models
                 and community detection methods confuse overlaps as
                 separate communities. In contrast, we present the
                 community-affiliation graph model (AGM), a conceptual
                 model of network community structure. We demonstrate
                 that AGM reliably captures the overall structure of
                 networks as well as the overlapping and hierarchical
                 nature of network communities.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gong:2014:JLP,
  author =       "Neil Zhenqiang Gong and Ameet Talwalkar and Lester
                 Mackey and Ling Huang and Eui Chul Richard Shin and
                 Emil Stefanov and Elaine (Runting) Shi and Dawn Song",
  title =        "Joint Link Prediction and Attribute Inference Using a
                 Social-Attribute Network",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "27:1--27:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2594455",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The effects of social influence and homophily suggest
                 that both network structure and node-attribute
                 information should inform the tasks of link prediction
                 and node-attribute inference. Recently, Yin et al.
                 [2010a, 2010b] proposed an attribute-augmented social
                 network model, which we call Social-Attribute Network
                 (SAN), to integrate network structure and node
                 attributes to perform both link prediction and
                 attribute inference. They focused on generalizing the
                 random walk with a restart algorithm to the SAN
                 framework and showed improved performance. In this
                 article, we extend the SAN framework with several
                 leading supervised and unsupervised link-prediction
                 algorithms and demonstrate performance improvement for
                 each algorithm on both link prediction and attribute
                 inference. Moreover, we make the novel observation that
                 attribute inference can help inform link prediction,
                 that is, link-prediction accuracy is further improved
                 by first inferring missing attributes. We
                 comprehensively evaluate these algorithms and compare
                 them with other existing algorithms using a novel,
                 large-scale Google+ dataset, which we make publicly
                 available
                 (http://www.cs.berkeley.edu/~stevgong/gplus.html).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Pool:2014:DDC,
  author =       "Simon Pool and Francesco Bonchi and Matthijs van
                 Leeuwen",
  title =        "Description-Driven Community Detection",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "28:1--28:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2517088",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Traditional approaches to community detection, as
                 studied by physicists, sociologists, and more recently
                 computer scientists, aim at simply partitioning the
                 social network graph. However, with the advent of
                 online social networking sites, richer data has become
                 available: beyond the link information, each user in
                 the network is annotated with additional information,
                 for example, demographics, shopping behavior, or
                 interests. In this context, it is therefore important
                 to develop mining methods which can take advantage of
                 all available information. In the case of community
                 detection, this means finding good communities (a set
                 of nodes cohesive in the social graph) which are
                 associated with good descriptions in terms of user
                 information (node attributes). Having good descriptions
                 associated to our models make them understandable by
                 domain experts and thus more useful in real-world
                 applications. Another requirement dictated by
                 real-world applications, is to develop methods that can
                 use, when available, any domain-specific background
                 knowledge. In the case of community detection the
                 background knowledge could be a vague description of
                 the communities sought in a specific application, or
                 some prototypical nodes (e.g., good customers in the
                 past), that represent what the analyst is looking for
                 (a community of similar users). Towards this goal, in
                 this article, we define and study the problem of
                 finding a diverse set of cohesive communities with
                 concise descriptions. We propose an effective algorithm
                 that alternates between two phases: a hill-climbing
                 phase producing (possibly overlapping) communities, and
                 a description induction phase which uses techniques
                 from supervised pattern set mining. Our framework has
                 the nice feature of being able to build well-described
                 cohesive communities starting from any given
                 description or seed set of nodes, which makes it very
                 flexible and easily applicable in real-world
                 applications. Our experimental evaluation confirms that
                 the proposed method discovers cohesive communities with
                 concise descriptions in realistic and large online
                 social networks such as Delicious, Flickr, and
                 LastFM.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2014:LPH,
  author =       "Nan Li and William Cushing and Subbarao Kambhampati
                 and Sungwook Yoon",
  title =        "Learning Probabilistic Hierarchical Task Networks as
                 Probabilistic Context-Free Grammars to Capture User
                 Preferences",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "29:1--29:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2589481",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We introduce an algorithm to automatically learn
                 probabilistic hierarchical task networks (pHTNs) that
                 capture a user's preferences on plans by observing only
                 the user's behavior. HTNs are a common choice of
                 representation for a variety of purposes in planning,
                 including work on learning in planning. Our
                 contributions are twofold. First, in contrast with
                 prior work, which employs HTNs to represent domain
                 physics or search control knowledge, we use HTNs to
                 model user preferences. Second, while most prior work
                 on HTN learning requires additional information (e.g.,
                 annotated traces or tasks) to assist the learning
                 process, our system only takes plan traces as input.
                 Initially, we will assume that users carry out
                 preferred plans more frequently, and thus the observed
                 distribution of plans is an accurate representation of
                 user preference. We then generalize to the situation
                 where feasibility constraints frequently prevent the
                 execution of preferred plans. Taking the prevalent
                 perspective of viewing HTNs as grammars over primitive
                 actions, we adapt an expectation-maximization (EM)
                 technique from the discipline of probabilistic grammar
                 induction to acquire probabilistic context-free
                 grammars (pCFG) that capture the distribution on plans.
                 To account for the difference between the distributions
                 of possible and preferred plans, we subsequently modify
                 this core EM technique by rescaling its input. We
                 empirically demonstrate that the proposed approaches
                 are able to learn HTNs representing user preferences
                 better than the inside-outside algorithm. Furthermore,
                 when feasibility constraints are obfuscated, the
                 algorithm with rescaled input performs better than the
                 algorithm with the original input.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Reches:2014:FEC,
  author =       "Shulamit Reches and Meir Kalech and Philip Hendrix",
  title =        "A Framework for Effectively Choosing between
                 Alternative Candidate Partners",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "30:1--30:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2589482",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Many multi-agent settings require that agents identify
                 appropriate partners or teammates with whom to work on
                 tasks. When selecting potential partners, agents may
                 benefit from obtaining information about the
                 alternatives, for instance, through gossip (i.e., by
                 consulting others) or reputation systems. When
                 information is uncertain and associated with cost,
                 deciding on the amount of information needed is a hard
                 optimization problem. This article defines a
                 statistical model, the Information-Acquisition Source
                 Utility model (IASU), by which agents, operating in an
                 uncertain world, can determine (1) which information
                 sources they should request for information, and (2)
                 the amount of information to collect about potential
                 partners from each source. To maximize the expected
                 gain from the choice, IASU computes the utility of
                 choosing a partner by estimating the benefit of
                 additional information. The article presents empirical
                 studies through a simulation domain as well as a
                 real-world domain of restaurants. We compare the IASU
                 model to other relevant models and show that the use of
                 the IASU model significantly increases agents' overall
                 utility.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Heath:2014:CST,
  author =       "Derrall Heath and David Norton and Dan Ventura",
  title =        "Conveying Semantics through Visual Metaphor",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "31:1--31:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2589483",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In the field of visual art, metaphor is a way to
                 communicate meaning to the viewer. We present a
                 computational system for communicating visual metaphor
                 that can identify adjectives for describing an image
                 based on a low-level visual feature representation of
                 the image. We show that the system can use this
                 visual-linguistic association to render source images
                 that convey the meaning of adjectives in a way
                 consistent with human understanding. Our conclusions
                 are based on a detailed analysis of how the system's
                 artifacts cluster, how these clusters correspond to the
                 semantic relationships of adjectives as documented in
                 WordNet, and how these clusters correspond to human
                 opinion.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lian:2014:MCH,
  author =       "Defu Lian and Xing Xie",
  title =        "Mining Check-In History for Personalized Location
                 Naming",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "32:1--32:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2490890",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Many innovative location-based services have been
                 established to offer users greater convenience in their
                 everyday lives. These services usually cannot map
                 user's physical locations into semantic names
                 automatically. The semantic names of locations provide
                 important context for mobile recommendations and
                 advertisements. In this article, we proposed a novel
                 location naming approach which can automatically
                 provide semantic names for users given their locations
                 and time. In particular, when a user opens a GPS device
                 and submits a query with her physical location and
                 time, she will be returned the most appropriate
                 semantic name. In our approach, we drew an analogy
                 between location naming and local search, and designed
                 a local search framework to propose a spatiotemporal
                 and user preference (STUP) model for location naming.
                 STUP combined three components, user preference (UP),
                 spatial preference (SP), and temporal preference (TP),
                 by leveraging learning-to-rank techniques. We evaluated
                 STUP on 466,190 check-ins of 5,805 users from Shanghai
                 and 135,052 check-ins of 1,361 users from Beijing. The
                 results showed that SP was most effective among three
                 components and that UP can provide personalized
                 semantic names, and thus it was a necessity for
                 location naming. Although TP was not as discriminative
                 as the others, it can still be beneficial when
                 integrated with SP and UP. Finally, according to the
                 experimental results, STUP outperformed the proposed
                 baselines and returned accurate semantic names for
                 23.6\% and 26.6\% of the testing queries from Beijing
                 and Shanghai, respectively.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bian:2014:EUP,
  author =       "Jiang Bian and Bo Long and Lihong Li and Taesup Moon
                 and Anlei Dong and Yi Chang",
  title =        "Exploiting User Preference for Online Learning in
                 {Web} Content Optimization Systems",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "33:1--33:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2493259",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Web portal services have become an important medium to
                 deliver digital content (e.g. news, advertisements,
                 etc.) to Web users in a timely fashion. To attract more
                 users to various content modules on the Web portal, it
                 is necessary to design a recommender system that can
                 effectively achieve Web portal content optimization by
                 automatically estimating content item attractiveness
                 and relevance to user interests. The state-of-the-art
                 online learning methodology adapts dedicated pointwise
                 models to independently estimate the attractiveness
                 score for each candidate content item. Although such
                 pointwise models can be easily adapted for online
                 recommendation, there still remain a few critical
                 problems. First, this pointwise methodology fails to
                 use invaluable user preferences between content items.
                 Moreover, the performance of pointwise models decreases
                 drastically when facing the problem of sparse learning
                 samples. To address these problems, we propose
                 exploring a new dynamic pairwise learning methodology
                 for Web portal content optimization in which we exploit
                 dynamic user preferences extracted based on users'
                 actions on portal services to compute the
                 attractiveness scores of content items. In this
                 article, we introduce two specific pairwise learning
                 algorithms, a straightforward graph-based algorithm and
                 a formalized Bayesian modeling one. Experiments on
                 large-scale data from a commercial Web portal
                 demonstrate the significant improvement of pairwise
                 methodologies over the baseline pointwise models.
                 Further analysis illustrates that our new pairwise
                 learning approaches can benefit personalized
                 recommendation more than pointwise models, since the
                 data sparsity is more critical for personalized content
                 optimization.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hossain:2014:AFS,
  author =       "M. Shahriar Hossain and Manish Marwah and Amip Shah
                 and Layne T. Watson and Naren Ramakrishnan",
  title =        "{AutoLCA}: a Framework for Sustainable Redesign and
                 Assessment of Products",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "34:1--34:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2505270",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With increasing public consciousness regarding
                 sustainability, companies are ever more eager to
                 introduce eco-friendly products and services. Assessing
                 environmental footprints and designing sustainable
                 products are challenging tasks since they require
                 analysis of each component of a product through their
                 life cycle. To achieve sustainable design of products,
                 companies need to evaluate the environmental impact of
                 their system, identify the major contributors to the
                 footprint, and select the design alternative with the
                 lowest environmental footprint. In this article, we
                 formulate sustainable design as a series of clustering
                 and classification problems, and propose a framework
                 called AutoLCA that simplifies the effort of estimating
                 the environmental footprint of a product bill of
                 materials by more than an order of magnitude over
                 current methods, which are mostly labor intensive. We
                 apply AutoLCA to real data from a large computer
                 manufacturer. We conduct a case study on bill of
                 materials of four different products, perform a
                 ``hotspot'' assessment analysis to identify major
                 contributors to carbon footprint, and determine design
                 alternatives that can reduce the carbon footprint from
                 1\% to 36\%.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2014:MLC,
  author =       "Chuan Shi and Xiangnan Kong and Di Fu and Philip S. Yu
                 and Bin Wu",
  title =        "Multi-Label Classification Based on Multi-Objective
                 Optimization",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "35:1--35:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2505272",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Multi-label classification refers to the task of
                 predicting potentially multiple labels for a given
                 instance. Conventional multi-label classification
                 approaches focus on single objective setting, where the
                 learning algorithm optimizes over a single performance
                 criterion (e.g., Ranking Loss ) or a heuristic
                 function. The basic assumption is that the optimization
                 over one single objective can improve the overall
                 performance of multi-label classification and meet the
                 requirements of various applications. However, in many
                 real applications, an optimal multi-label classifier
                 may need to consider the trade-offs among multiple
                 inconsistent objectives, such as minimizing Hamming
                 Loss while maximizing Micro F1. In this article, we
                 study the problem of multi-objective multi-label
                 classification and propose a novel solution (called
                 Moml) to optimize over multiple objectives
                 simultaneously. Note that optimization objectives may
                 be inconsistent, even conflicting, thus one cannot
                 identify a single solution that is optimal on all
                 objectives. Our Moml algorithm finds a set of
                 non-dominated solutions which are optimal according to
                 different trade-offs among multiple objectives. So
                 users can flexibly construct various predictive models
                 from the solution set, which provides more meaningful
                 classification results in different application
                 scenarios. Empirical studies on real-world tasks
                 demonstrate that the Moml can effectively boost the
                 overall performance of multi-label classification by
                 optimizing over multiple objectives simultaneously.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2014:DSM,
  author =       "Xuning Tang and Christopher C. Yang",
  title =        "Detecting Social Media Hidden Communities Using
                 Dynamic Stochastic Blockmodel with Temporal {Dirichlet}
                 Process",
  journal =      j-TIST,
  volume =       "5",
  number =       "2",
  pages =        "36:1--36:??",
  month =        apr,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2517085",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Apr 24 16:09:50 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Detecting evolving hidden communities within dynamic
                 social networks has attracted significant attention
                 recently due to its broad applications in e-commerce,
                 online social media, security intelligence, public
                 health, and other areas. Many community network
                 detection techniques employ a two-stage approach to
                 identify and detect evolutionary relationships between
                 communities of two adjacent time epochs. These
                 techniques often identify communities with high
                 temporal variation, since the two-stage approach
                 detects communities of each epoch independently without
                 considering the continuity of communities across two
                 time epochs. Other techniques require identification of
                 a predefined number of hidden communities which is not
                 realistic in many applications. To overcome these
                 limitations, we propose the Dynamic Stochastic
                 Blockmodel with Temporal Dirichlet Process, which
                 enables the detection of hidden communities and tracks
                 their evolution simultaneously from a network stream.
                 The number of hidden communities is automatically
                 determined by a temporal Dirichlet process without
                 human intervention. We tested our proposed technique on
                 three different testbeds with results identifying a
                 high performance level when compared to the baseline
                 algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zheng:2014:ISS,
  author =       "Yu Zheng and Licia Capra and Ouri Wolfson and Hai
                 Yang",
  title =        "Introduction to the Special Section on Urban
                 Computing",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "37:1--37:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2642650",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zheng:2014:UCC,
  author =       "Yu Zheng and Licia Capra and Ouri Wolfson and Hai
                 Yang",
  title =        "Urban Computing: Concepts, Methodologies, and
                 Applications",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "38:1--38:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629592",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Urbanization's rapid progress has modernized many
                 people's lives but also engendered big issues, such as
                 traffic congestion, energy consumption, and pollution.
                 Urban computing aims to tackle these issues by using
                 the data that has been generated in cities (e.g.,
                 traffic flow, human mobility, and geographical data).
                 Urban computing connects urban sensing, data
                 management, data analytics, and service providing into
                 a recurrent process for an unobtrusive and continuous
                 improvement of people's lives, city operation systems,
                 and the environment. Urban computing is an
                 interdisciplinary field where computer sciences meet
                 conventional city-related fields, like transportation,
                 civil engineering, environment, economy, ecology, and
                 sociology in the context of urban spaces. This article
                 first introduces the concept of urban computing,
                 discussing its general framework and key challenges
                 from the perspective of computer sciences. Second, we
                 classify the applications of urban computing into seven
                 categories, consisting of urban planning,
                 transportation, the environment, energy, social,
                 economy, and public safety and security, presenting
                 representative scenarios in each category. Third, we
                 summarize the typical technologies that are needed in
                 urban computing into four folds, which are about urban
                 sensing, urban data management, knowledge fusion across
                 heterogeneous data, and urban data visualization.
                 Finally, we give an outlook on the future of urban
                 computing, suggesting a few research topics that are
                 somehow missing in the community.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Etienne:2014:MBC,
  author =       "C{\^o}me Etienne and Oukhellou Latifa",
  title =        "Model-Based Count Series Clustering for Bike Sharing
                 System Usage Mining: a Case Study with the {V{\'e}lib'}
                 System of {Paris}",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "39:1--39:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2560188",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Today, more and more bicycle sharing systems (BSSs)
                 are being introduced in big cities. These
                 transportation systems generate sizable transportation
                 data, the mining of which can reveal the underlying
                 urban phenomenon linked to city dynamics. This article
                 presents a statistical model to automatically analyze
                 the trip data of a bike sharing system. The proposed
                 solution partitions (i.e., clusters) the stations
                 according to their usage profiles. To do so, count
                 series describing the stations's usage through
                 departure/arrival counts per hour throughout the day
                 are built and analyzed. The model for processing these
                 count series is based on Poisson mixtures and
                 introduces a station scaling factor that handles the
                 differences between the stations's global usage.
                 Differences between weekday and weekend usage are also
                 taken into account. This model identifies the latent
                 factors that shape the geography of trips, and the
                 results may thus offer insights into the relationships
                 between station neighborhood type (its amenities, its
                 demographics, etc.) and the generated mobility
                 patterns. In other words, the proposed method brings to
                 light the different functions in different areas that
                 induce specific patterns in BSS data. These potentials
                 are demonstrated through an in-depth analysis of the
                 results obtained on the Paris V{\'e}lib' large-scale
                 bike sharing system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ying:2014:MUC,
  author =       "Josh Jia-Ching Ying and Wen-Ning Kuo and Vincent S.
                 Tseng and Eric Hsueh-Chan Lu",
  title =        "Mining User Check-In Behavior with a Random Walk for
                 Urban Point-of-Interest Recommendations",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "40:1--40:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2523068",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In recent years, research into the mining of user
                 check-in behavior for point-of-interest (POI)
                 recommendations has attracted a lot of attention.
                 Existing studies on this topic mainly treat such
                 recommendations in a traditional manner-that is, they
                 treat POIs as items and check-ins as ratings. However,
                 users usually visit a place for reasons other than to
                 simply say that they have visited. In this article, we
                 propose an approach referred to as Urban POI-Walk
                 (UPOI-Walk), which takes into account a user's
                 social-triggered intentions (SI), preference-triggered
                 intentions (PreI), and popularity-triggered intentions
                 (PopI), to estimate the probability of a user
                 checking-in to a POI. The core idea of UPOI-Walk
                 involves building a HITS-based random walk on the
                 normalized check-in network, thus supporting the
                 prediction of POI properties related to each user's
                 preferences. To achieve this goal, we define several
                 user--POI graphs to capture the key properties of the
                 check-in behavior motivated by user intentions. In our
                 UPOI-Walk approach, we propose a new kind of random
                 walk model-Dynamic HITS-based Random Walk-which
                 comprehensively considers the relevance between POIs
                 and users from different aspects. On the basis of
                 similitude, we make an online recommendation as to the
                 POI the user intends to visit. To the best of our
                 knowledge, this is the first work on urban POI
                 recommendations that considers user check-in behavior
                 motivated by SI, PreI, and PopI in location-based
                 social network data. Through comprehensive experimental
                 evaluations on two real datasets, the proposed
                 UPOI-Walk is shown to deliver excellent performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mcardle:2014:UDF,
  author =       "Gavin Mcardle and Eoghan Furey and Aonghus Lawlor and
                 Alexei Pozdnoukhov",
  title =        "Using Digital Footprints for a City-Scale Traffic
                 Simulation",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "41:1--41:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2517028",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article introduces a microsimulation of urban
                 traffic flows within a large-scale scenario implemented
                 for the Greater Dublin region in Ireland.
                 Traditionally, the data available for traffic
                 simulations come from a population census and dedicated
                 road surveys that only partly cover shopping, leisure,
                 or recreational trips. To account for the latter, the
                 presented traffic modeling framework exploits the
                 digital footprints of city inhabitants on services such
                 as Twitter and Foursquare. We enriched the model with
                 findings from our previous studies on geographical
                 layout of communities in a country-wide mobile phone
                 network to account for socially related journeys. These
                 datasets were used to calibrate a variant of a
                 radiation model of spatial choice, which we introduced
                 in order to drive individuals' decisions on trip
                 destinations within an assigned daily activity plan. We
                 observed that given the distribution of population, the
                 workplace locations, a comprehensive set of urban
                 facilities, and a list of typical activity sequences of
                 city dwellers collected within a national travel
                 survey, the developed microsimulation reproduces not
                 only the journey statistics such as peak travel periods
                 but also the traffic volumes at main road segments with
                 surprising accuracy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Momtazpour:2014:CSI,
  author =       "Marjan Momtazpour and Patrick Butler and Naren
                 Ramakrishnan and M. Shahriar Hossain and Mohammad C.
                 Bozchalui and Ratnesh Sharma",
  title =        "Charging and Storage Infrastructure Design for
                 Electric Vehicles",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "42:1--42:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2513567",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Ushered by recent developments in various areas of
                 science and technology, modern energy systems are going
                 to be an inevitable part of our societies. Smart grids
                 are one of these modern systems that have attracted
                 many research activities in recent years. Before
                 utilizing the next generation of smart grids, we should
                 have a comprehensive understanding of the
                 interdependent energy networks and processes.
                 Next-generation energy systems networks cannot be
                 effectively designed, analyzed, and controlled in
                 isolation from the social, economic, sensing, and
                 control contexts in which they operate. In this
                 article, we present a novel framework to support
                 charging and storage infrastructure design for electric
                 vehicles. We develop coordinated clustering techniques
                 to work with network models of urban environments to
                 aid in placement of charging stations for an electrical
                 vehicle deployment scenario. Furthermore, we evaluate
                 the network before and after the deployment of charging
                 stations, to recommend the installation of appropriate
                 storage units to overcome the extra load imposed on the
                 network by the charging stations. We demonstrate the
                 multiple factors that can be simultaneously leveraged
                 in our framework to achieve practical urban deployment.
                 Our ultimate goal is to help realize sustainable energy
                 system management in urban electrical infrastructure by
                 modeling and analyzing networks of interactions between
                 electric systems and urban populations.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tan:2014:OOT,
  author =       "Chang Tan and Qi Liu and Enhong Chen and Hui Xiong and
                 Xiang Wu",
  title =        "Object-Oriented Travel Package Recommendation",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "43:1--43:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542665",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Providing better travel services for tourists is one
                 of the important applications in urban computing.
                 Though many recommender systems have been developed for
                 enhancing the quality of travel service, most of them
                 lack a systematic and open framework to dynamically
                 incorporate multiple types of additional context
                 information existing in the tourism domain, such as the
                 travel area, season, and price of travel packages. To
                 that end, in this article, we propose an open
                 framework, the Objected-Oriented Recommender System
                 (ORS), for the developers performing personalized
                 travel package recommendations to tourists. This
                 framework has the ability to import all the available
                 additional context information to the travel package
                 recommendation process in a cost-effective way.
                 Specifically, the different types of additional
                 information are extracted and uniformly represented as
                 feature--value pairs. Then, we define the Object, which
                 is the collection of the feature--value pairs. We
                 propose two models that can be used in the ORS
                 framework for extracting the implicit relationships
                 among Objects. The Objected-Oriented Topic Model (OTM)
                 can extract the topics conditioned on the intrinsic
                 feature--value pairs of the Objects. The
                 Objected-Oriented Bayesian Network (OBN) can
                 effectively infer the cotravel probability of two
                 tourists by calculating the co-occurrence time of
                 feature--value pairs belonging to different kinds of
                 Objects. Based on the relationships mined by OTM or
                 OBN, the recommendation list is generated by the
                 collaborative filtering method. Finally, we evaluate
                 these two models and the ORS framework on real-world
                 travel package data, and the experimental results show
                 that the ORS framework is more flexible in terms of
                 incorporating additional context information, and thus
                 leads to better performances for travel package
                 recommendations. Meanwhile, for feature selection in
                 ORS, we define the feature information entropy, and the
                 experimental results demonstrate that using features
                 with lower entropies usually leads to better
                 recommendation results.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gurung:2014:TIP,
  author =       "Sashi Gurung and Dan Lin and Wei Jiang and Ali Hurson
                 and Rui Zhang",
  title =        "Traffic Information Publication with Privacy
                 Preservation",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "44:1--44:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542666",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We are experiencing the expanding use of
                 location-based services such as AT\&T's TeleNav GPS
                 Navigator and Intel's Thing Finder. Existing
                 location-based services have collected a large amount
                 of location data, which has great potential for
                 statistical usage in applications like traffic flow
                 analysis, infrastructure planning, and advertisement
                 dissemination. The key challenge is how to wisely use
                 the data without violating each user's location privacy
                 concerns. In this article, we first identify a new
                 privacy problem, namely, the inference-route problem,
                 and then present our anonymization algorithms for
                 privacy-preserving trajectory publishing. The
                 experimental results have demonstrated that our
                 approach outperforms the latest related work in terms
                 of both efficiency and effectiveness.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hsieh:2014:MRT,
  author =       "Hsun-Ping Hsieh and Cheng-Te Li and Shou-De Lin",
  title =        "Measuring and Recommending Time-Sensitive Routes from
                 Location-Based Data",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "45:1--45:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542668",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Location-based services allow users to perform
                 geospatial recording actions, which facilitates the
                 mining of the moving activities of human beings. This
                 article proposes to recommend time-sensitive trip
                 routes consisting of a sequence of locations with
                 associated timestamps based on knowledge extracted from
                 large-scale timestamped location sequence data (e.g.,
                 check-ins and GPS traces). We argue that a good route
                 should consider (a) the popularity of places, (b) the
                 visiting order of places, (c) the proper visiting time
                 of each place, and (d) the proper transit time from one
                 place to another. By devising a statistical model, we
                 integrate these four factors into a route goodness
                 function that aims to measure the quality of a route.
                 Equipped with the route goodness, we recommend
                 time-sensitive routes for two scenarios. The first is
                 about constructing the route based on the
                 user-specified source location with the starting time.
                 The second is about composing the route between the
                 specified source location and the destination location
                 given a starting time. To handle these queries, we
                 propose a search method, Guidance Search, which
                 consists of a novel heuristic satisfaction function
                 that guides the search toward the destination location
                 and a backward checking mechanism to boost the
                 effectiveness of the constructed route. Experiments on
                 the Gowalla check-in datasets demonstrate the
                 effectiveness of our model on detecting real routes and
                 performing cloze test of routes, comparing with other
                 baseline methods. We also develop a system TripRouter
                 as a real-time demo platform.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Joseph:2014:CIB,
  author =       "Kenneth Joseph and Kathleen M. Carley and Jason I.
                 Hong",
  title =        "Check-ins in {``Blau Space''}: Applying {Blau}'s
                 Macrosociological Theory to Foursquare Check-ins from
                 New {York} City",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "46:1--46:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2566617",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Peter Blau was one of the first to define a latent
                 social space and utilize it to provide concrete
                 hypotheses. Blau defines social structure via social
                 ``parameters'' (constraints). Actors that are closer
                 together (more homogeneous) in this social parameter
                 space are more likely to interact. One of Blau's most
                 important hypotheses resulting from this work was that
                 the consolidation of parameters could lead to isolated
                 social groups. For example, the consolidation of race
                 and income might lead to segregation. In the present
                 work, we use Foursquare data from New York City to
                 explore evidence of homogeneity along certain social
                 parameters and consolidation that breeds social
                 isolation in communities of locations checked in to by
                 similar users. More specifically, we first test the
                 extent to which communities detected via Latent
                 Dirichlet Allocation are homogeneous across a set of
                 four social constraints-racial homophily, income
                 homophily, personal interest homophily and physical
                 space. Using a bootstrapping approach, we find that 14
                 (of 20) communities are statistically, and all but one
                 qualitatively, homogeneous along one of these social
                 constraints, showing the relevance of Blau's latent
                 space model in venue communities determined via user
                 check-in behavior. We then consider the extent to which
                 communities with consolidated parameters, those
                 homogeneous on more than one parameter, represent
                 socially isolated populations. We find communities
                 homogeneous on multiple parameters, including a
                 homosexual community and a ``hipster'' community, that
                 show support for Blau's hypothesis that consolidation
                 breeds social isolation. We consider these results in
                 the context of mediated communication, in particular in
                 the context of self-representation on social media.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mahmud:2014:HLI,
  author =       "Jalal Mahmud and Jeffrey Nichols and Clemens Drews",
  title =        "Home Location Identification of {Twitter} Users",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "47:1--47:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2528548",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We present a new algorithm for inferring the home
                 location of Twitter users at different granularities,
                 including city, state, time zone, or geographic region,
                 using the content of users' tweets and their tweeting
                 behavior. Unlike existing approaches, our algorithm
                 uses an ensemble of statistical and heuristic
                 classifiers to predict locations and makes use of a
                 geographic gazetteer dictionary to identify place-name
                 entities. We find that a hierarchical classification
                 approach, where time zone, state, or geographic region
                 is predicted first and city is predicted next, can
                 improve prediction accuracy. We have also analyzed
                 movement variations of Twitter users, built a
                 classifier to predict whether a user was travelling in
                 a certain period of time, and use that to further
                 improve the location detection accuracy. Experimental
                 evidence suggests that our algorithm works well in
                 practice and outperforms the best existing algorithms
                 for predicting the home location of Twitter users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Neviarouskaya:2014:IIT,
  author =       "Alena Neviarouskaya and Masaki Aono and Helmut
                 Prendinger and Mitsuru Ishizuka",
  title =        "Intelligent Interface for Textual Attitude Analysis",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "48:1--48:??",
  month =        sep,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2535912",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:08 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article describes a novel intelligent interface
                 for attitude sensing in text driven by a robust
                 computational tool for the analysis of fine-grained
                 attitudes (emotions, judgments, and appreciations)
                 expressed in text. The module responsible for textual
                 attitude analysis was developed using a compositional
                 linguistic approach based on the attitude-conveying
                 lexicon, the analysis of syntactic and dependency
                 relations between words in a sentence, the
                 compositionality principle applied at various
                 grammatical levels, the rules elaborated for
                 semantically distinct verb classes, and a method
                 considering the hierarchy of concepts. The performance
                 of this module was evaluated on sentences from personal
                 stories about life experiences. The developed web-based
                 interface supports recognition of nine emotions,
                 positive and negative judgments, and positive and
                 negative appreciations conveyed in text. It allows
                 users to adjust parameters, to enable or disable
                 various functionality components of the algorithm, and
                 to select the format of text annotation and attitude
                 statistics visualization.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Song:2014:UGF,
  author =       "Yicheng Song and Yongdong Zhang and Juan Cao and
                 Jinhui Tang and Xingyu Gao and Jintao Li",
  title =        "A Unified Geolocation Framework for {Web} Videos",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "49:1--49:??",
  month =        jul,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2533989",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Jul 18 14:11:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we propose a unified geolocation
                 framework to automatically determine where on the earth
                 a web video was shot. We analyze different social,
                 visual, and textual relationships from a real-world
                 dataset and find four relationships with apparent
                 geography clues that can be used for web video
                 geolocation. Then, the geolocation process is
                 formulated as an optimization problem that
                 simultaneously takes the social, visual, and textual
                 relationships into consideration. The optimization
                 problem is solved by an iterative procedure, which can
                 be interpreted as a propagation of the geography
                 information among the web video social network.
                 Extensive experiments on a real-world dataset clearly
                 demonstrate the effectiveness of our proposed
                 framework, with the geolocation accuracy higher than
                 state-of-the-art approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhao:2014:PRL,
  author =       "Yi-Liang Zhao and Liqiang Nie and Xiangyu Wang and
                 Tat-Seng Chua",
  title =        "Personalized Recommendations of Locally Interesting
                 Venues to Tourists via Cross-Region Community
                 Matching",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "50:1--50:??",
  month =        jul,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2532439",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Jul 18 14:11:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "You are in a new city. You are not familiar with the
                 places and neighborhoods. You want to know all about
                 the exciting sights, food outlets, and cultural venues
                 that the locals frequent, in particular those that suit
                 your personal interests. Even though there exist many
                 mapping, local search, and travel assistance sites,
                 they mostly provide popular and famous listings such as
                 Statue of Liberty and Eiffel Tower, which are
                 well-known places but may not suit your personal needs
                 or interests. Therefore, there is a gap between what
                 tourists want and what dominant tourism resources are
                 providing. In this work, we seek to provide a solution
                 to bridge this gap by exploiting the rich
                 user-generated location contents in location-based
                 social networks in order to offer tourists the most
                 relevant and personalized local venue recommendations.
                 In particular, we first propose a novel Bayesian
                 approach to extract the social dimensions of people at
                 different geographical regions to capture their latent
                 local interests. We next mine the local interest
                 communities in each geographical region. We then
                 represent each local community using aggregated
                 behaviors of community members. Finally, we correlate
                 communities across different regions and generate venue
                 recommendations to tourists via cross-region community
                 matching. We have sampled a representative subset of
                 check-ins from Foursquare and experimentally verified
                 the effectiveness of our proposed approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2014:VNF,
  author =       "Shuaiqiang Wang and Jiankai Sun and Byron J. Gao and
                 Jun Ma",
  title =        "{VSRank}: a Novel Framework for Ranking-Based
                 Collaborative Filtering",
  journal =      j-TIST,
  volume =       "5",
  number =       "3",
  pages =        "51:1--51:??",
  month =        jul,
  year =         "2014",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2542048",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Jul 18 14:11:13 MDT 2014",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Collaborative filtering (CF) is an effective technique
                 addressing the information overload problem. CF
                 approaches generally fall into two categories: rating
                 based and ranking based. The former makes
                 recommendations based on historical rating scores of
                 items and the latter based on their rankings.
                 Ranking-based CF has demonstrated advantages in
                 recommendation accuracy, being able to capture the
                 preference similarity between users even if their
                 rating scores differ significantly. In this study, we
                 propose VSRank, a novel framework that seeks accuracy
                 improvement of ranking-based CF through adaptation of
                 the vector space model. In VSRank, we consider each
                 user as a document and his or her pairwise relative
                 preferences as terms. We then use a novel
                 degree-specialty weighting scheme resembling TF-IDF to
                 weight the terms. Extensive experiments on benchmarks
                 in comparison with the state-of-the-art approaches
                 demonstrate the promise of our approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Castells:2015:ISI,
  author =       "Pablo Castells and Jun Wang and Rub{\'e}n Lara and
                 Dell Zhang",
  title =        "Introduction to the Special Issue on Diversity and
                 Discovery in Recommender Systems",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "52:1--52:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668113",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ribeiro:2015:MPE,
  author =       "Marco Tulio Ribeiro and Nivio Ziviani and Edleno
                 {Silva De Moura} and Itamar Hata and Anisio Lacerda and
                 Adriano Veloso",
  title =        "Multiobjective {Pareto}-Efficient Approaches for
                 Recommender Systems",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "53:1--53:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629350",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recommender systems are quickly becoming ubiquitous in
                 applications such as e-commerce, social media channels,
                 and content providers, among others, acting as an
                 enabling mechanism designed to overcome the information
                 overload problem by improving browsing and consumption
                 experience. A typical task in many recommender systems
                 is to output a ranked list of items, so that items
                 placed higher in the rank are more likely to be
                 interesting to the users. Interestingness measures
                 include how accurate, novel, and diverse are the
                 suggested items, and the objective is usually to
                 produce ranked lists optimizing one of these measures.
                 Suggesting items that are simultaneously accurate,
                 novel, and diverse is much more challenging, since this
                 may lead to a conflicting-objective problem, in which
                 the attempt to improve a measure further may result in
                 worsening other measures. In this article, we propose
                 new approaches for multiobjective recommender systems
                 based on the concept of Pareto efficiency-a state
                 achieved when the system is devised in the most
                 efficient manner in the sense that there is no way to
                 improve one of the objectives without making any other
                 objective worse off. Given that existing multiobjective
                 recommendation algorithms differ in their level of
                 accuracy, diversity, and novelty, we exploit the
                 Pareto-efficiency concept in two distinct manners: (i)
                 the aggregation of ranked lists produced by existing
                 algorithms into a single one, which we call
                 Pareto-efficient ranking, and (ii) the weighted
                 combination of existing algorithms resulting in a
                 hybrid one, which we call Pareto-efficient
                 hybridization. Our evaluation involves two real
                 application scenarios: music recommendation with
                 implicit feedback (i.e., Last.fm) and movie
                 recommendation with explicit feedback (i.e.,
                 MovieLens). We show that the proposed Pareto-efficient
                 approaches are effective in suggesting items that are
                 likely to be simultaneously accurate, diverse, and
                 novel. We discuss scenarios where the system achieves
                 high levels of diversity and novelty without
                 compromising its accuracy. Further, comparison against
                 multiobjective baselines reveals improvements in terms
                 of accuracy (from 10.4\% to 10.9\%), novelty (from
                 5.7\% to 7.5\%), and diversity (from 1.6\% to 4.2\%).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Adamopoulos:2015:URS,
  author =       "Panagiotis Adamopoulos and Alexander Tuzhilin",
  title =        "On Unexpectedness in Recommender Systems: Or How to
                 Better Expect the Unexpected",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "54:1--54:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2559952",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Although the broad social and business success of
                 recommender systems has been achieved across several
                 domains, there is still a long way to go in terms of
                 user satisfaction. One of the key dimensions for
                 significant improvement is the concept of
                 unexpectedness. In this article, we propose a method to
                 improve user satisfaction by generating unexpected
                 recommendations based on the utility theory of
                 economics. In particular, we propose a new concept of
                 unexpectedness as recommending to users those items
                 that depart from what they would expect from the system
                 --- the consideration set of each user. We define and
                 formalize the concept of unexpectedness and discuss how
                 it differs from the related notions of novelty,
                 serendipity, and diversity. In addition, we suggest
                 several mechanisms for specifying the users'
                 expectations and propose specific performance metrics
                 to measure the unexpectedness of recommendation lists.
                 We also take into consideration the quality of
                 recommendations using certain utility functions and
                 present an algorithm for providing users with
                 unexpected recommendations of high quality that are
                 hard to discover but fairly match their interests.
                 Finally, we conduct several experiments on
                 ``real-world'' datasets and compare our recommendation
                 results with other methods. The proposed approach
                 outperforms these baseline methods in terms of
                 unexpectedness and other important metrics, such as
                 coverage, aggregate diversity and dispersion, while
                 avoiding any accuracy loss.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kucuktunc:2015:DCR,
  author =       "Onur K{\"u}{\c{c}}{\"u}ktun{\c{c}} and Erik Saule and
                 Kamer Kaya and {\"U}mit V. {\c{C}}ataly{\"u}rek",
  title =        "Diversifying Citation Recommendations",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "55:1--55:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668106",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Literature search is one of the most important steps
                 of academic research. With more than 100,000 papers
                 published each year just in computer science,
                 performing a complete literature search becomes a
                 Herculean task. Some of the existing approaches and
                 tools for literature search cannot compete with the
                 characteristics of today's literature, and they suffer
                 from ambiguity and homonymy. Techniques based on
                 citation information are more robust to the mentioned
                 issues. Thus, we recently built a Web service called
                 the advisor, which provides personalized
                 recommendations to researchers based on their papers of
                 interest. Since most recommendation methods may return
                 redundant results, diversifying the results of the
                 search process is necessary to increase the amount of
                 information that one can reach via an automated search.
                 This article targets the problem of result
                 diversification in citation-based bibliographic search,
                 assuming that the citation graph itself is the only
                 information available and no categories or intents are
                 known. The contribution of this work is threefold. We
                 survey various random walk--based diversification
                 methods and enhance them with the direction awareness
                 property to allow users to reach either old,
                 foundational (possibly well-cited and well-known)
                 research papers or recent (most likely less-known)
                 ones. Next, we propose a set of novel algorithms based
                 on vertex selection and query refinement. A set of
                 experiments with various evaluation criteria shows that
                 the proposed $ \gamma $-RLM algorithm performs better
                 than the existing approaches and is suitable for
                 real-time bibliographic search in practice.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Javari:2015:ANR,
  author =       "Amin Javari and Mahdi Jalili",
  title =        "Accurate and Novel Recommendations: an Algorithm Based
                 on Popularity Forecasting",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "56:1--56:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668107",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recommender systems are in the center of network
                 science, and they are becoming increasingly important
                 in individual businesses for providing efficient,
                 personalized services and products to users. Previous
                 research in the field of recommendation systems focused
                 on improving the precision of the system through
                 designing more accurate recommendation lists. Recently,
                 the community has been paying attention to diversity
                 and novelty of recommendation lists as key
                 characteristics of modern recommender systems. In many
                 cases, novelty and precision do not go hand in hand,
                 and the accuracy--novelty dilemma is one of the
                 challenging problems in recommender systems, which
                 needs efforts in making a trade-off between them. In
                 this work, we propose an algorithm for providing novel
                 and accurate recommendation to users. We consider the
                 standard definition of accuracy and an effective
                 self-information--based measure to assess novelty of
                 the recommendation list. The proposed algorithm is
                 based on item popularity, which is defined as the
                 number of votes received in a certain time interval.
                 Wavelet transform is used for analyzing popularity time
                 series and forecasting their trend in future timesteps.
                 We introduce two filtering algorithms based on the
                 information extracted from analyzing popularity time
                 series of the items. The popularity-based filtering
                 algorithm gives a higher chance to items that are
                 predicted to be popular in future timesteps. The other
                 algorithm, denoted as a novelty and population-based
                 filtering algorithm, is to move toward items with low
                 popularity in past timesteps that are predicted to
                 become popular in the future. The introduced filters
                 can be applied as adds-on to any recommendation
                 algorithm. In this article, we use the proposed
                 algorithms to improve the performance of classic
                 recommenders, including item-based collaborative
                 filtering and Markov-based recommender systems. The
                 experiments show that the algorithms could
                 significantly improve both the accuracy and effective
                 novelty of the classic recommenders.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shen:2015:ISI,
  author =       "Dou Shen and Deepak Agarwal",
  title =        "Introduction to the Special Issue on Online
                 Advertising",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "57:1--57:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668123",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhu:2015:MMU,
  author =       "Hengshu Zhu and Enhong Chen and Hui Xiong and Kuifei
                 Yu and Huanhuan Cao and Jilei Tian",
  title =        "Mining Mobile User Preferences for Personalized
                 Context-Aware Recommendation",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "58:1--58:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2532515",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recent advances in mobile devices and their sensing
                 capabilities have enabled the collection of rich
                 contextual information and mobile device usage records
                 through the device logs. These context-rich logs open a
                 venue for mining the personal preferences of mobile
                 users under varying contexts and thus enabling the
                 development of personalized context-aware
                 recommendation and other related services, such as
                 mobile online advertising. In this article, we
                 illustrate how to extract personal context-aware
                 preferences from the context-rich device logs, or
                 context logs for short, and exploit these identified
                 preferences for building personalized context-aware
                 recommender systems. A critical challenge along this
                 line is that the context log of each individual user
                 may not contain sufficient data for mining his or her
                 context-aware preferences. Therefore, we propose to
                 first learn common context-aware preferences from the
                 context logs of many users. Then, the preference of
                 each user can be represented as a distribution of these
                 common context-aware preferences. Specifically, we
                 develop two approaches for mining common context-aware
                 preferences based on two different assumptions, namely,
                 context-independent and context-dependent assumptions,
                 which can fit into different application scenarios.
                 Finally, extensive experiments on a real-world dataset
                 show that both approaches are effective and outperform
                 baselines with respect to mining personal context-aware
                 preferences for mobile users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ashkan:2015:LQA,
  author =       "Azin Ashkan and Charles L. A. Clarke",
  title =        "Location- and Query-Aware Modeling of Browsing and
                 Click Behavior in Sponsored Search",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "59:1--59:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2534398",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "An online advertisement's clickthrough rate provides a
                 fundamental measure of its quality, which is widely
                 used in ad selection strategies. Unfortunately, ads
                 placed in contexts where they are rarely viewed-or
                 where users are unlikely to be interested in commercial
                 results-may receive few clicks regardless of their
                 quality. In this article, we model the variability of a
                 user's browsing behavior for the purpose of click
                 analysis and prediction in sponsored search. Our model
                 incorporates several important contextual factors that
                 influence ad clickthrough rates, including the user's
                 query and ad placement on search engine result pages.
                 We formally model these factors with respect to the
                 list of ads displayed on a result page, the probability
                 that the user will initiate browsing of this list, and
                 the persistence of the user in browsing the list. We
                 incorporate these factors into existing click models by
                 augmenting them with appropriate query and location
                 biases. Using expectation maximization, we learn the
                 parameters of these augmented models from click signals
                 recorded in the logs of a commercial search engine. To
                 evaluate the performance of the models and to compare
                 them with state-of-the-art performance, we apply
                 standard evaluation metrics, including log-likelihood
                 and perplexity. Our evaluation results indicate that,
                 through the incorporation of query and location biases,
                 significant improvements can be achieved in predicting
                 browsing and click behavior in sponsored search. In
                 addition, we explore the extent to which these biases
                 actually reflect varying behavioral patterns. Our
                 observations confirm that correlations exist between
                 the biases and user search behavior.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Qin:2015:SSA,
  author =       "Tao Qin and Wei Chen and Tie-Yan Liu",
  title =        "Sponsored Search Auctions: Recent Advances and Future
                 Directions",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "60:1--60:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668108",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Sponsored search has been proven to be a successful
                 business model, and sponsored search auctions have
                 become a hot research direction. There have been many
                 exciting advances in this field, especially in recent
                 years, while at the same time, there are also many open
                 problems waiting for us to resolve. In this article, we
                 provide a comprehensive review of sponsored search
                 auctions in hopes of helping both industry
                 practitioners and academic researchers to become
                 familiar with this field, to know the state of the art,
                 and to identify future research topics. Specifically,
                 we organize the article into two parts. In the first
                 part, we review research works on sponsored search
                 auctions with basic settings, where fully rational
                 advertisers without budget constraints, preknown
                 click-through rates (CTRs) without interdependence, and
                 exact match between queries and keywords are assumed.
                 Under these assumptions, we first introduce the
                 generalized second price (GSP) auction, which is the
                 most popularly used auction mechanism in the industry.
                 Then we give the definitions of several well-studied
                 equilibria and review the latest results on GSP's
                 efficiency and revenue in these equilibria. In the
                 second part, we introduce some advanced topics on
                 sponsored search auctions. In these advanced topics,
                 one or more assumptions made in the basic settings are
                 relaxed. For example, the CTR of an ad could be unknown
                 and dependent on other ads; keywords could be broadly
                 matched to queries before auctions are executed; and
                 advertisers are not necessarily fully rational, could
                 have budget constraints, and may prefer rich bidding
                 languages. Given that the research on these advanced
                 topics is still immature, in each section of the second
                 part, we provide our opinions on how to make further
                 advances, in addition to describing what has been done
                 by researchers in the corresponding direction.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chapelle:2015:SSR,
  author =       "Olivier Chapelle and Eren Manavoglu and Romer
                 Rosales",
  title =        "Simple and Scalable Response Prediction for Display
                 Advertising",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "61:1--61:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2532128",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Clickthrough and conversation rates estimation are two
                 core predictions tasks in display advertising. We
                 present in this article a machine learning framework
                 based on logistic regression that is specifically
                 designed to tackle the specifics of display
                 advertising. The resulting system has the following
                 characteristics: It is easy to implement and deploy, it
                 is highly scalable (we have trained it on terabytes of
                 data), and it provides models with state-of-the-art
                 accuracy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Balakrishnan:2015:RTB,
  author =       "Raju Balakrishnan and Rushi P. Bhatt",
  title =        "Real-Time Bid Optimization for Group-Buying Ads",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "62:1--62:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2532441",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Group-buying ads seeking a minimum number of customers
                 before the deal expiry are increasingly used by
                 daily-deal providers. Unlike traditional web ads, the
                 advertiser's profits for group-buying ads depend on the
                 time to expiry and additional customers needed to
                 satisfy the minimum group size. Since both these
                 quantities are time-dependent, optimal bid amounts to
                 maximize profits change with every impression.
                 Consequently, traditional static bidding strategies are
                 far from optimal. Instead, bid values need to be
                 optimized in real-time to maximize expected bidder
                 profits. This online optimization of deal profits is
                 made possible by the advent of ad exchanges offering
                 real-time (spot) bidding. To this end, we propose a
                 real-time bidding strategy for group-buying deals based
                 on the online optimization of bid values. We derive the
                 expected bidder profit of deals as a function of the
                 bid amounts and dynamically vary the bids to maximize
                 profits. Furthermore, to satisfy time constraints of
                 the online bidding, we present methods of minimizing
                 computation timings. Subsequently, we derive the
                 real-time ad selection, admissibility, and real-time
                 bidding of the traditional ads as the special cases of
                 the proposed method. We evaluate the proposed bidding,
                 selection, and admission strategies on a multimillion
                 click stream of 935 ads. The proposed real-time
                 bidding, selection, and admissibility show significant
                 profit increases over the existing strategies. Further
                 experiments illustrate the robustness of the bidding
                 and acceptable computation timings.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2015:IAC,
  author =       "Qingzhong Liu and Zhongxue Chen",
  title =        "Improved Approaches with Calibrated Neighboring Joint
                 Density to Steganalysis and Seam-Carved Forgery
                 Detection in {JPEG} Images",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "63:1--63:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2560365",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/cryptography2010.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Steganalysis and forgery detection in image forensics
                 are generally investigated separately. We have designed
                 a method targeting the detection of both steganography
                 and seam-carved forgery in JPEG images. We analyze the
                 neighboring joint density of the DCT coefficients and
                 reveal the difference between the untouched image and
                 the modified version. In realistic detection, the
                 untouched image and the modified version may not be
                 obtained at the same time, and different JPEG images
                 may have different neighboring joint density features.
                 By exploring the self-calibration under different shift
                 recompressions, we propose calibrated neighboring joint
                 density-based approaches with a simple feature set to
                 distinguish steganograms and tampered images from
                 untouched ones. Our study shows that this approach has
                 multiple promising applications in image forensics.
                 Compared to the state-of-the-art steganalysis
                 detectors, our approach delivers better or comparable
                 detection performances with a much smaller feature set
                 while detecting several JPEG-based steganographic
                 systems including DCT-embedding-based adaptive
                 steganography and Yet Another Steganographic Scheme
                 (YASS). Our approach is also effective in detecting
                 seam-carved forgery in JPEG images. By integrating
                 calibrated neighboring density with spatial domain rich
                 models that were originally designed for steganalysis,
                 the hybrid approach obtains the best detection accuracy
                 to discriminate seam-carved forgery from an untouched
                 image. Our study also offers a promising manner to
                 explore steganalysis and forgery detection together.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Azaria:2015:SID,
  author =       "Amos Azaria and Zinovi Rabinovich and Claudia V.
                 Goldman and Sarit Kraus",
  title =        "Strategic Information Disclosure to People with
                 Multiple Alternatives",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "64:1--64:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2558397",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we study automated agents that are
                 designed to encourage humans to take some actions over
                 others by strategically disclosing key pieces of
                 information. To this end, we utilize the framework of
                 persuasion games-a branch of game theory that deals
                 with asymmetric interactions where one player (Sender)
                 possesses more information about the world, but it is
                 only the other player (Receiver) who can take an
                 action. In particular, we use an extended persuasion
                 model, where the Sender's information is imperfect and
                 the Receiver has more than two alternative actions
                 available. We design a computational algorithm that,
                 from the Sender's standpoint, calculates the optimal
                 information disclosure rule. The algorithm is
                 parameterized by the Receiver's decision model (i.e.,
                 what choice he will make based on the information
                 disclosed by the Sender) and can be retuned
                 accordingly. We then provide an extensive experimental
                 study of the algorithm's performance in interactions
                 with human Receivers. First, we consider a fully
                 rational (in the Bayesian sense) Receiver decision
                 model and experimentally show the efficacy of the
                 resulting Sender's solution in a routing domain.
                 Despite the discrepancy in the Sender's and the
                 Receiver's utilities from each of the Receiver's
                 choices, our Sender agent successfully persuaded human
                 Receivers to select an option more beneficial for the
                 agent. Dropping the Receiver's rationality assumption,
                 we introduce a machine learning procedure that
                 generates a more realistic human Receiver model. We
                 then show its significant benefit to the Sender
                 solution by repeating our routing experiment. To
                 complete our study, we introduce a second
                 (supply--demand) experimental domain and, by
                 contrasting it with the routing domain, obtain general
                 guidelines for a Sender on how to construct a Receiver
                 model.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2015:SPA,
  author =       "Si Liu and Qiang Chen and Shuicheng Yan and Changsheng
                 Xu and Hanqing Lu",
  title =        "{Snap \& Play}: Auto-Generated Personalized
                 Find-the-Difference Game",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "65:1--65:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668109",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, by taking a popular game, the
                 Find-the-Difference (FiDi) game, as a concrete example,
                 we explore how state-of-the-art image processing
                 techniques can assist in developing a personalized,
                 automatic, and dynamic game. Unlike the traditional
                 FiDi game, where image pairs (source image and target
                 image) with five different patches are manually
                 produced by professional game developers, the proposed
                 Personalized FiDi (P-FiDi) electronic game can be
                 played in a fully automatic Snap \& Play mode. Snap
                 means that players first take photos with their digital
                 cameras. The newly captured photos are used as source
                 images and fed into the P-FiDi system to autogenerate
                 the counterpart target images for users to play. Four
                 steps are adopted to autogenerate target images:
                 enhancing the visual quality of source images,
                 extracting some changeable patches from the source
                 image, selecting the most suitable combination of
                 changeable patches and difference styles for the image,
                 and generating the differences on the target image with
                 state-of-the-art image processing techniques. In
                 addition, the P-FiDi game can be easily redesigned for
                 the im-game advertising. Extensive experiments show
                 that the P-FiDi electronic game is satisfying in terms
                 of player experience, seamless advertisement, and
                 technical feasibility.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Reches:2015:CCU,
  author =       "Shulamit Reches and Meir Kalech",
  title =        "Choosing a Candidate Using Efficient Allocation of
                 Biased Information",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "66:1--66:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2558327",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article deals with a decision-making problem
                 concerning an agent who wants to choose a partner from
                 multiple candidates for long-term collaboration. To
                 choose the best partner, the agent can rely on prior
                 information he knows about the candidates. However, to
                 improve his decision, he can request additional
                 information from information sources. Nonetheless,
                 acquiring information from external information sources
                 about candidates may be biased due to different
                 personalities of the agent searching for a partner and
                 the information source. In addition, information may be
                 costly. Considering the bias and the cost of the
                 information sources, the optimization problem addressed
                 in this article is threefold: (1) determining the
                 necessary amount of additional information, (2)
                 selecting information sources from which to request the
                 information, and (3) choosing the candidates on whom to
                 request the additional information. We propose a
                 heuristic to solve this optimization problem. The
                 results of experiments on simulated and real-world
                 domains demonstrate the efficiency of our algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhuang:2015:CDS,
  author =       "Jinfeng Zhuang and Tao Mei and Steven C. H. Hoi and
                 Xian-Sheng Hua and Yongdong Zhang",
  title =        "Community Discovery from Social Media by Low-Rank
                 Matrix Recovery",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "67:1--67:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668110",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The pervasive usage and reach of social media have
                 attracted a surge of attention in the multimedia
                 research community. Community discovery from social
                 media has therefore become an important yet challenging
                 issue. However, due to the subjective generating
                 process, the explicitly observed communities (e.g.,
                 group-user and user-user relationship) are often noisy
                 and incomplete in nature. This paper presents a novel
                 approach to discovering communities from social media,
                 including the group membership and user friend
                 structure, by exploring a low-rank matrix recovery
                 technique. In particular, we take Flickr as one
                 exemplary social media platform. We first model the
                 observed indicator matrix of the Flickr community as a
                 summation of a low-rank true matrix and a sparse error
                 matrix. We then formulate an optimization problem by
                 regularizing the true matrix to coincide with the
                 available rich context and content (i.e., photos and
                 their associated tags). An iterative algorithm is
                 developed to recover the true community indicator
                 matrix. The proposed approach leads to a variety of
                 social applications, including community visualization,
                 interest group refinement, friend suggestion, and
                 influential user identification. The evaluations on a
                 large-scale testbed, consisting of 4,919 Flickr users,
                 1,467 interest groups, and over five million photos,
                 show that our approach opens a new yet effective
                 perspective to solve social network problems with
                 sparse learning technique. Despite being focused on
                 Flickr, our technique can be applied in any other
                 social media community.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2015:IPI,
  author =       "Yiyang Yang and Zhiguo Gong and Leong Hou U.",
  title =        "Identifying Points of Interest Using Heterogeneous
                 Features",
  journal =      j-TIST,
  volume =       "5",
  number =       "4",
  pages =        "68:1--68:??",
  month =        jan,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668111",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Feb 11 12:29:09 MST 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Deducing trip-related information from web-scale
                 datasets has received large amounts of attention
                 recently. Identifying points of interest (POIs) in
                 geo-tagged photos is one of these problems. The problem
                 can be viewed as a standard clustering problem of
                 partitioning two-dimensional objects. In this work, we
                 study spectral clustering, which is the first attempt
                 for the identification of POIs. However, there is no
                 unified approach to assigning the subjective clustering
                 parameters, and these parameters vary immensely in
                 different metropolitans and locations. To address this
                 issue, we study a self-tuning technique that can
                 properly determine the parameters for the clustering
                 needed. Besides geographical information, web photos
                 inherently store other rich information. Such
                 heterogeneous information can be used to enhance the
                 identification accuracy. Thereby, we study a novel
                 refinement framework that is based on the tightness and
                 cohesion degree of the additional information. We
                 thoroughly demonstrate our findings by web-scale
                 datasets collected from Flickr.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ji:2015:WLM,
  author =       "Rongrong Ji and Yue Gao and Wei Liu and Xing Xie and
                 Qi Tian and Xuelong Li",
  title =        "When Location Meets Social Multimedia: a Survey on
                 Vision-Based Recognition and Mining for Geo-Social
                 Multimedia Analytics",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "1:1--1:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2597181",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Coming with the popularity of multimedia sharing
                 platforms such as Facebook and Flickr, recent years
                 have witnessed an explosive growth of geographical tags
                 on social multimedia content. This trend enables a wide
                 variety of emerging applications, for example, mobile
                 location search, landmark recognition, scene
                 reconstruction, and touristic recommendation, which
                 range from purely research prototype to commercial
                 systems. In this article, we give a comprehensive
                 survey on these applications, covering recent advances
                 in recognition and mining of geographical-aware social
                 multimedia. We review related work in the past decade
                 regarding to location recognition, scene summarization,
                 tourism suggestion, 3D building modeling, mobile visual
                 search and city navigation. At the end, we further
                 discuss potential challenges, future topics, as well as
                 open issues related to geo-social multimedia computing,
                 recognition, mining, and analytics.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chin:2015:FPS,
  author =       "Wei-Sheng Chin and Yong Zhuang and Yu-Chin Juan and
                 Chih-Jen Lin",
  title =        "A Fast Parallel Stochastic Gradient Method for Matrix
                 Factorization in Shared Memory Systems",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "2:1--2:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668133",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Matrix factorization is known to be an effective
                 method for recommender systems that are given only the
                 ratings from users to items. Currently, stochastic
                 gradient (SG) method is one of the most popular
                 algorithms for matrix factorization. However, as a
                 sequential approach, SG is difficult to be parallelized
                 for handling web-scale problems. In this article, we
                 develop a fast parallel SG method, FPSG, for shared
                 memory systems. By dramatically reducing the cache-miss
                 rate and carefully addressing the load balance of
                 threads, FPSG is more efficient than state-of-the-art
                 parallel algorithms for matrix factorization.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Feuz:2015:TLA,
  author =       "Kyle D. Feuz and Diane J. Cook",
  title =        "Transfer Learning across Feature-Rich Heterogeneous
                 Feature Spaces via {Feature-Space Remapping (FSR)}",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "3:1--3:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629528",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Transfer learning aims to improve performance on a
                 target task by utilizing previous knowledge learned
                 from source tasks. In this paper we introduce a novel
                 heterogeneous transfer learning technique,
                 Feature-Space Remapping (FSR), which transfers
                 knowledge between domains with different feature
                 spaces. This is accomplished without requiring typical
                 feature-feature, feature instance, or instance-instance
                 co-occurrence data. Instead we relate features in
                 different feature-spaces through the construction of
                 metafeatures. We show how these techniques can utilize
                 multiple source datasets to construct an ensemble
                 learner which further improves performance. We apply
                 FSR to an activity recognition problem and a document
                 classification problem. The ensemble technique is able
                 to outperform all other baselines and even performs
                 better than a classifier trained using a large amount
                 of labeled data in the target domain. These problems
                 are especially difficult because, in addition to having
                 different feature-spaces, the marginal probability
                 distributions and the class labels are also different.
                 This work extends the state of the art in transfer
                 learning by considering large transfer across
                 dramatically different spaces.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Patel:2015:DSI,
  author =       "Dhaval Patel",
  title =        "On Discovery of Spatiotemporal Influence-Based Moving
                 Clusters",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "4:1--4:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2631926",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "A moving object cluster is a set of objects that move
                 close to each other for a long time interval. Existing
                 works have utilized object trajectories to discover
                 moving object clusters efficiently. In this article, we
                 define a spatiotemporal influence-based moving cluster
                 that captures spatiotemporal influence spread over a
                 set of spatial objects. A spatiotemporal
                 influence-based moving cluster is a sequence of spatial
                 clusters, where each cluster is a set of nearby
                 objects, such that each object in a cluster influences
                 at least one object in the next immediate cluster and
                 is also influenced by an object from the immediate
                 preceding cluster. Real-life examples of spatiotemporal
                 influence-based moving clusters include diffusion of
                 infectious diseases and spread of innovative ideas. We
                 study the discovery of spatiotemporal influence-based
                 moving clusters in a database of spatiotemporal events.
                 While the search space for discovering all
                 spatiotemporal influence-based moving clusters is
                 prohibitively huge, we design a method, STIMer, to
                 efficiently retrieve the maximal answer. The algorithm
                 STIMer adopts a top-down recursive refinement method to
                 generate the maximal spatiotemporal influence-based
                 moving clusters directly. Empirical studies on the real
                 data as well as large synthetic data demonstrate the
                 effectiveness and efficiency of our method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sepehri-Rad:2015:ICW,
  author =       "Hoda Sepehri-Rad and Denilson Barbosa",
  title =        "Identifying Controversial {Wikipedia} Articles Using
                 Editor Collaboration Networks",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "5:1--5:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2630075",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Wikipedia is probably the most commonly used knowledge
                 reference nowadays, and the high quality of its
                 articles is widely acknowledged. Nevertheless,
                 disagreement among editors often causes some articles
                 to become controversial over time. These articles span
                 thousands of popular topics, including religion,
                 history, and politics, to name a few, and are manually
                 tagged as controversial by the editors, which is
                 clearly suboptimal. Moreover, disagreement, bias, and
                 conflict are expressed quite differently in Wikipedia
                 compared to other social media, rendering previous
                 approaches ineffective. On the other hand, the social
                 process of editing Wikipedia is partially captured in
                 the edit history of the articles, opening the door for
                 novel approaches. This article describes a novel
                 controversy model that builds on the interaction
                 history of the editors and not only predicts
                 controversy but also sheds light on the process that
                 leads to controversy. The model considers the
                 collaboration history of pairs of editors to predict
                 their attitude toward one another. This is done in a
                 supervised way, where the votes of Wikipedia
                 administrator elections are used as labels indicating
                 agreement (i.e., support vote) or disagreement (i.e.,
                 oppose vote). From each article, a collaboration
                 network is built, capturing the pairwise attitude among
                 editors, allowing the accurate detection of
                 controversy. Extensive experimental results establish
                 the superiority of this approach compared to previous
                 work and very competitive baselines on a wide range of
                 settings.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Changuel:2015:RSU,
  author =       "Sahar Changuel and Nicolas Labroche and Bernadette
                 Bouchon-Meunier",
  title =        "Resources Sequencing Using Automatic
                 Prerequisite--Outcome Annotation",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "6:1--6:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2505349",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The objective of any tutoring system is to provide
                 resources to learners that are adapted to their current
                 state of knowledge. With the availability of a large
                 variety of online content and the disjunctive nature of
                 results provided by traditional search engines, it
                 becomes crucial to provide learners with adapted
                 learning paths that propose a sequence of resources
                 that match their learning objectives. In an ideal case,
                 the sequence of documents provided to the learner
                 should be such that each new document relies on
                 concepts that have been already defined in previous
                 documents. Thus, the problem of determining an
                 effective learning path from a corpus of web documents
                 depends on the accurate identification of outcome and
                 prerequisite concepts in these documents and on their
                 ordering according to this information. Until now, only
                 a few works have been proposed to distinguish between
                 prerequisite and outcome concepts, and to the best of
                 our knowledge, no method has been introduced so far to
                 benefit from this information to produce a meaningful
                 learning path. To this aim, this article first
                 describes a concept annotation method that relies on
                 machine-learning techniques to predict the class of
                 each concept-prerequisite or outcome-on the basis of
                 contextual and local features. Then, this
                 categorization is exploited to produce an automatic
                 resource sequencing on the basis of different
                 representations and scoring functions that transcribe
                 the precedence relation between learning resources.
                 Experiments conducted on a real dataset built from
                 online resources show that our concept annotation
                 approach outperforms the baseline method and that the
                 learning paths automatically generated are consistent
                 with the ground truth provided by the author of the
                 online content.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ghosh:2015:MTD,
  author =       "Siddhartha Ghosh and Steve Reece and Alex Rogers and
                 Stephen Roberts and Areej Malibari and Nicholas R.
                 Jennings",
  title =        "Modeling the Thermal Dynamics of Buildings: a
                 Latent-Force- Model-Based Approach",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "7:1--7:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629674",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Minimizing the energy consumed by heating,
                 ventilation, and air conditioning (HVAC) systems of
                 residential buildings without impacting occupants'
                 comfort has been highlighted as an important artificial
                 intelligence (AI) challenge. Typically, approaches that
                 seek to address this challenge use a model that
                 captures the thermal dynamics within a building, also
                 referred to as a thermal model. Among thermal models,
                 gray-box models are a popular choice for modeling the
                 thermal dynamics of buildings. They combine knowledge
                 of the physical structure of a building with various
                 data-driven inputs and are accurate estimators of the
                 state (internal temperature). However, existing
                 gray-box models require a detailed specification of all
                 the physical elements that can affect the thermal
                 dynamics of a building a priori. This limits their
                 applicability, particularly in residential buildings,
                 where additional dynamics can be induced by human
                 activities such as cooking, which contributes
                 additional heat, or opening of windows, which leads to
                 additional leakage of heat. Since the incidence of
                 these additional dynamics is rarely known, their
                 combined effects cannot readily be accommodated within
                 existing models. To overcome this limitation and
                 improve the general applicability of gray-box models,
                 we introduce a novel model, which we refer to as a
                 latent force thermal model of the thermal dynamics of a
                 building, or LFM-TM. Our model is derived from an
                 existing gray-box thermal model, which is augmented
                 with an extra term referred to as the learned residual.
                 This term is capable of modeling the effect of any a
                 priori unknown additional dynamic, which, if not
                 captured, appears as a structure in a thermal model's
                 residual (the error induced by the model). More
                 importantly, the learned residual can also capture the
                 effects of physical elements such as a building's
                 envelope or the lags in a heating system, leading to a
                 significant reduction in complexity compared to
                 existing models. To evaluate the performance of LFM-TM,
                 we apply it to two independent data sources. The first
                 is an established dataset, referred to as the FlexHouse
                 data, which was previously used for evaluating the
                 efficacy of existing gray-box models [Bacher and Madsen
                 2011]. The second dataset consists of heating data
                 logged within homes located on the University of
                 Southampton campus, which were specifically
                 instrumented to collect data for our thermal modeling
                 experiments. On both datasets, we show that LFM-TM
                 outperforms existing models in its ability to
                 accurately fit the observed data, generate accurate
                 day-ahead internal temperature predictions, and explain
                 a large amount of the variability in the future
                 observations. This, along with the fact that we also
                 use a corresponding efficient sequential inference
                 scheme for LFM-TM, makes it an ideal candidate for
                 model-based predictive control, where having accurate
                 online predictions of internal temperatures is
                 essential for high-quality solutions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:SPL,
  author =       "Zhao Zhang and Cheng-Lin Liu and Ming-Bo Zhao",
  title =        "A Sparse Projection and Low-Rank Recovery Framework
                 for Handwriting Representation and Salient Stroke
                 Feature Extraction",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "9:1--9:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2601408",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we consider the problem of
                 simultaneous low-rank recovery and sparse projection.
                 More specifically, a new Robust Principal Component
                 Analysis (RPCA)-based framework called Sparse
                 Projection and Low-Rank Recovery (SPLRR) is proposed
                 for handwriting representation and salient stroke
                 feature extraction. In addition to achieving a low-rank
                 component encoding principal features and identify
                 errors or missing values from a given data matrix as
                 RPCA, SPLRR also learns a similarity-preserving sparse
                 projection for extracting salient stroke features and
                 embedding new inputs for classification. These
                 properties make SPLRR applicable for handwriting
                 recognition and stroke correction and enable online
                 computation. A cosine-similarity-style regularization
                 term is incorporated into the SPLRR formulation for
                 encoding the similarities of local handwriting
                 features. The sparse projection and low-rank recovery
                 are calculated from a convex minimization problem that
                 can be efficiently solved in polynomial time. Besides,
                 the supervised extension of SPLRR is also elaborated.
                 The effectiveness of our SPLRR is examined by extensive
                 handwritten digital repairing, stroke correction, and
                 recognition based on benchmark problems. Compared with
                 other related techniques, SPLRR delivers strong
                 generalization capability and state-of-the-art
                 performance for handwriting representation and
                 recognition.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Stapleton:2015:CST,
  author =       "Gem Stapleton and Beryl Plimmer and Aidan Delaney and
                 Peter Rodgers",
  title =        "Combining Sketching and Traditional Diagram Editing
                 Tools",
  journal =      j-TIST,
  volume =       "6",
  number =       "1",
  pages =        "10:1--10:??",
  month =        mar,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2631925",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Mar 27 18:08:08 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The least cognitively demanding way to create a
                 diagram is to draw it with a pen. Yet there is also a
                 need for more formal visualizations, that is, diagrams
                 created using both traditional keyboard and mouse
                 interaction. Our objective is to allow the creation of
                 diagrams using traditional and stylus-based input.
                 Having two diagram creation interfaces requires that
                 changes to a diagram should be automatically rendered
                 in the other visualization. Because sketches are
                 imprecise, there is always the possibility that
                 conversion between visualizations results in a lack of
                 syntactic consistency between the two visualizations.
                 We propose methods for converting diagrams between
                 forms, checking them for equivalence, and rectifying
                 inconsistencies. As a result of our theoretical
                 contributions, we present an intelligent software
                 system allowing users to create and edit diagrams in
                 sketch or formal mode. Our proof-of-concept tool
                 supports diagrams with connected and spatial syntactic
                 elements. Two user studies show that this approach is
                 viable and participants found the software easy to use.
                 We conclude that supporting such diagram creation is
                 now possible in practice.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hong:2015:VUR,
  author =       "Richang Hong and Shuicheng Yan and Zhengyou Zhang",
  title =        "Visual Understanding with {RGB-D} Sensors: an
                 Introduction to the Special Issue",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "11:1--11:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2732265",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2015:KDR,
  author =       "Chongyu Chen and Jianfei Cai and Jianmin Zheng and Tat
                 Jen Cham and Guangming Shi",
  title =        "{Kinect} Depth Recovery Using a Color-Guided,
                 Region-Adaptive, and Depth-Selective Framework",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "12:1--12:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700475",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Considering that the existing depth recovery
                 approaches have different limitations when applied to
                 Kinect depth data, in this article, we propose to
                 integrate their effective features including adaptive
                 support region selection, reliable depth selection, and
                 color guidance together under an optimization framework
                 for Kinect depth recovery. In particular, we formulate
                 our depth recovery as an energy minimization problem,
                 which solves the depth hole filling and denoising
                 simultaneously. The energy function consists of a
                 fidelity term and a regularization term, which are
                 designed according to the Kinect characteristics. Our
                 framework inherits and improves the idea of guided
                 filtering by incorporating structure information and
                 prior knowledge of the Kinect noise model. Through
                 analyzing the solution to the optimization framework,
                 we also derive a local filtering version that provides
                 an efficient and effective way of improving the
                 existing filtering techniques. Quantitative evaluations
                 on our developed synthesized dataset and experiments on
                 real Kinect data show that the proposed method achieves
                 superior performance in terms of recovery accuracy and
                 visual quality.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Figueroa:2015:CAT,
  author =       "Nadia Figueroa and Haiwei Dong and Abdulmotaleb {El
                 Saddik}",
  title =        "A Combined Approach Toward Consistent Reconstructions
                 of Indoor Spaces Based on {$6$D RGB-D} Odometry and
                 {KinectFusion}",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "14:1--14:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629673",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We propose a 6D RGB-D odometry approach that finds the
                 relative camera pose between consecutive RGB-D frames
                 by keypoint extraction and feature matching both on the
                 RGB and depth image planes. Furthermore, we feed the
                 estimated pose to the highly accurate KinectFusion
                 algorithm, which uses a fast ICP (Iterative Closest
                 Point) to fine-tune the frame-to-frame relative pose
                 and fuse the depth data into a global implicit surface.
                 We evaluate our method on a publicly available RGB-D
                 SLAM benchmark dataset by Sturm et al. The experimental
                 results show that our proposed reconstruction method
                 solely based on visual odometry and KinectFusion
                 outperforms the state-of-the-art RGB-D SLAM system
                 accuracy. Moreover, our algorithm outputs a
                 ready-to-use polygon mesh (highly suitable for creating
                 3D virtual worlds) without any postprocessing steps.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zha:2015:RMF,
  author =       "Zheng-Jun Zha and Yang Yang and Jinhui Tang and Meng
                 Wang and Tat-Seng Chua",
  title =        "Robust Multiview Feature Learning for {RGB-D} Image
                 Understanding",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "15:1--15:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2735521",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The availability of massive RGB-depth (RGB-D) images
                 poses a compelling need for effective RGB-D content
                 understanding techniques. RGB-D images provide
                 synchronized information from multiple views (e.g.,
                 color and depth) of real-world objects and scenes. This
                 work proposes learning compact and discriminative
                 features from the multiple views of RGB-D content
                 toward effective feature representation for RGB-D image
                 understanding. In particular, a robust multiview
                 feature learning approach is developed, which exploits
                 the intrinsic relations among multiple views. The
                 feature learning in multiple views is jointly optimized
                 in an integrated formulation. The joint optimization
                 essentially exploits the intrinsic relations among the
                 views, leading to effective features and making the
                 learning process robust to noises. The feature learning
                 function is formulated as a robust nonnegative graph
                 embedding function over multiple graphs in various
                 views. The graphs characterize the local geometric and
                 discriminating structure of the multiview data. The
                 joint sparsity in $ l_1$-norm graph embedding and $
                 l_{21}$-norm data factorization further enhances the
                 robustness of feature learning. We derive an efficient
                 computational solution for the proposed approach and
                 provide rigorous theoretical proof with regard to its
                 convergence. We apply the proposed approach to two
                 RGB-D image understanding tasks: RGB-D object
                 classification and RGB-D scene categorization. We
                 conduct extensive experiments on two real-world RGB-D
                 image datasets. The experimental results have
                 demonstrated the effectiveness of the proposed
                 approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:RDI,
  author =       "Quanshi Zhang and Xuan Song and Xiaowei Shao and
                 Huijing Zhao and Ryosuke Shibasaki",
  title =        "From {RGB-D} Images to {RGB} Images: Single Labeling
                 for Mining Visual Models",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "16:1--16:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629701",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Mining object-level knowledge, that is, building a
                 comprehensive category model base, from a large set of
                 cluttered scenes presents a considerable challenge to
                 the field of artificial intelligence. How to initiate
                 model learning with the least human supervision (i.e.,
                 manual labeling) and how to encode the structural
                 knowledge are two elements of this challenge, as they
                 largely determine the scalability and applicability of
                 any solution. In this article, we propose a
                 model-learning method that starts from a single-labeled
                 object for each category, and mines further model
                 knowledge from a number of informally captured,
                 cluttered scenes. However, in these scenes, target
                 objects are relatively small and have large variations
                 in texture, scale, and rotation. Thus, to reduce the
                 model bias normally associated with less supervised
                 learning methods, we use the robust 3D shape in RGB-D
                 images to guide our model learning, then apply the
                 properly trained category models to both object
                 detection and recognition in more conventional RGB
                 images. In addition to model training for their own
                 categories, the knowledge extracted from the RGB-D
                 images can also be transferred to guide model learning
                 for a new category, in which only RGB images without
                 depth information in the new category are provided for
                 training. Preliminary testing shows that the proposed
                 method performs as well as fully supervised learning
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Huang:2015:ARM,
  author =       "Meiyu Huang and Yiqiang Chen and Wen Ji and Chunyan
                 Miao",
  title =        "Accurate and Robust Moving-Object Segmentation for
                 Telepresence Systems",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "17:1--17:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629480",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Moving-object segmentation is the key issue of
                 Telepresence systems. With monocular camera--based
                 segmentation methods, desirable segmentation results
                 are hard to obtain in challenging scenes with ambiguous
                 color, illumination changes, and shadows. Approaches
                 based on depth sensors often cause holes inside the
                 object and missegmentations on the object boundary due
                 to inaccurate and unstable estimation of depth data.
                 This work proposes an adaptive multi-cue decision
                 fusion method based on Kinect (which integrates a depth
                 sensor with an RGB camera). First, the algorithm
                 obtains an initial foreground mask based on the depth
                 cue. Second, the algorithm introduces a postprocessing
                 framework to refine the segmentation results, which
                 consists of two main steps: (1) automatically adjusting
                 the weight of two weak decisions to identify foreground
                 holes based on the color and contrast cue separately;
                 and (2) refining the object boundary by integrating the
                 motion probability weighted temporal prior, color
                 likelihood, and smoothness constraint. The extensive
                 experiments we conducted demonstrate that our method
                 can segment moving objects accurately and robustly in
                 various situations in real time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhu:2015:FMF,
  author =       "Yu Zhu and Wenbin Chen and Guodong Guo",
  title =        "Fusing Multiple Features for Depth-Based Action
                 Recognition",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "18:1--18:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629483",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Human action recognition is a very active research
                 topic in computer vision and pattern recognition.
                 Recently, it has shown a great potential for human
                 action recognition using the three-dimensional (3D)
                 depth data captured by the emerging RGB-D sensors.
                 Several features and/or algorithms have been proposed
                 for depth-based action recognition. A question is
                 raised: Can we find some complementary features and
                 combine them to improve the accuracy significantly for
                 depth-based action recognition? To address the question
                 and have a better understanding of the problem, we
                 study the fusion of different features for depth-based
                 action recognition. Although data fusion has shown
                 great success in other areas, it has not been well
                 studied yet on 3D action recognition. Some issues need
                 to be addressed, for example, whether the fusion is
                 helpful or not for depth-based action recognition, and
                 how to do the fusion properly. In this article, we
                 study different fusion schemes comprehensively, using
                 diverse features for action characterization in depth
                 videos. Two different levels of fusion schemes are
                 investigated, that is, feature level and decision
                 level. Various methods are explored at each fusion
                 level. Four different features are considered to
                 characterize the depth action patterns from different
                 aspects. The experiments are conducted on four
                 challenging depth action databases, in order to
                 evaluate and find the best fusion methods generally.
                 Our experimental results show that the four different
                 features investigated in the article can complement
                 each other, and appropriate fusion methods can improve
                 the recognition accuracies significantly over each
                 individual feature. More importantly, our fusion-based
                 action recognition outperforms the state-of-the-art
                 approaches on these challenging databases.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Spurlock:2015:EGD,
  author =       "Scott Spurlock and Richard Souvenir",
  title =        "An Evaluation of Gamesourced Data for Human Pose
                 Estimation",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "19:1--19:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629465",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Gamesourcing has emerged as an approach for rapidly
                 acquiring labeled data for learning-based, computer
                 vision recognition algorithms. In this article, we
                 present an approach for using RGB-D sensors to acquire
                 annotated training data for human pose estimation from
                 2D images. Unlike other gamesourcing approaches, our
                 method does not require a specific game, but runs
                 alongside any gesture-based game using RGB-D sensors.
                 The automatically generated datasets resulting from
                 this approach contain joint estimates within a few
                 pixel units of manually labeled data, and a gamesourced
                 dataset created using a relatively small number of
                 players, games, and locations performs as well as
                 large-scale, manually annotated datasets when used as
                 training data with recent learning-based human pose
                 estimation methods for 2D images.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sun:2015:LSV,
  author =       "Chao Sun and Tianzhu Zhang and Changsheng Xu",
  title =        "Latent Support Vector Machine Modeling for Sign
                 Language Recognition with {Kinect}",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "20:1--20:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629481",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Vision-based sign language recognition has attracted
                 more and more interest from researchers in the computer
                 vision field. In this article, we propose a novel
                 algorithm to model and recognize sign language
                 performed in front of a Microsoft Kinect sensor. Under
                 the assumption that some frames are expected to be both
                 discriminative and representative in a sign language
                 video, we first assign a binary latent variable to each
                 frame in training videos for indicating its
                 discriminative capability, then develop a latent
                 support vector machine model to classify the signs, as
                 well as localize the discriminative and representative
                 frames in each video. In addition, we utilize the depth
                 map together with the color image captured by the
                 Kinect sensor to obtain a more effective and accurate
                 feature to enhance the recognition accuracy. To
                 evaluate our approach, we conducted experiments on both
                 word-level sign language and sentence-level sign
                 language. An American Sign Language dataset including
                 approximately 2,000 word-level sign language phrases
                 and 2,000 sentence-level sign language phrases was
                 collected using the Kinect sensor, and each phrase
                 contains color, depth, and skeleton information.
                 Experiments on our dataset demonstrate the
                 effectiveness of the proposed method for sign language
                 recognition.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2015:RTH,
  author =       "Ao Tang and Ke Lu and Yufei Wang and Jie Huang and
                 Houqiang Li",
  title =        "A Real-Time Hand Posture Recognition System Using Deep
                 Neural Networks",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "21:1--21:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2735952",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Hand posture recognition (HPR) is quite a challenging
                 task, due to both the difficulty in detecting and
                 tracking hands with normal cameras and the limitations
                 of traditional manually selected features. In this
                 article, we propose a two-stage HPR system for Sign
                 Language Recognition using a Kinect sensor. In the
                 first stage, we propose an effective algorithm to
                 implement hand detection and tracking. The algorithm
                 incorporates both color and depth information, without
                 specific requirements on uniform-colored or stable
                 background. It can handle the situations in which hands
                 are very close to other parts of the body or hands are
                 not the nearest objects to the camera and allows for
                 occlusion of hands caused by faces or other hands. In
                 the second stage, we apply deep neural networks (DNNs)
                 to automatically learn features from hand posture
                 images that are insensitive to movement, scaling, and
                 rotation. Experiments verify that the proposed system
                 works quickly and accurately and achieves a recognition
                 accuracy as high as 98.12\%.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:RTS,
  author =       "Liyan Zhang and Fan Liu and Jinhui Tang",
  title =        "Real-Time System for Driver Fatigue Detection by
                 {RGB-D} Camera",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "22:1--22:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2629482",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Drowsy driving is one of the major causes of fatal
                 traffic accidents. In this article, we propose a
                 real-time system that utilizes RGB-D cameras to
                 automatically detect driver fatigue and generate alerts
                 to drivers. By introducing RGB-D cameras, the depth
                 data can be obtained, which provides extra evidence to
                 benefit the task of head detection and head pose
                 estimation. In this system, two important visual cues
                 (head pose and eye state) for driver fatigue detection
                 are extracted and leveraged simultaneously. We first
                 present a real-time 3D head pose estimation method by
                 leveraging RGB and depth data. Then we introduce a
                 novel method to predict eye states employing the WLBP
                 feature, which is a powerful local image descriptor
                 that is robust to noise and illumination variations.
                 Finally, we integrate the results from both head pose
                 and eye states to generate the overall conclusion. The
                 combination and collaboration of the two types of
                 visual cues can reduce the uncertainties and resolve
                 the ambiguity that a single cue may induce. The
                 experiments were performed using an inside-car
                 environment during the day and night, and they fully
                 demonstrate the effectiveness and robustness of our
                 system as well as the proposed methods of predicting
                 head pose and eye states.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kyan:2015:ABD,
  author =       "Matthew Kyan and Guoyu Sun and Haiyan Li and Ling
                 Zhong and Paisarn Muneesawang and Nan Dong and Bruce
                 Elder and Ling Guan",
  title =        "An Approach to Ballet Dance Training through {MS
                 Kinect} and Visualization in a {CAVE} Virtual Reality
                 Environment",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "23:1--23:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2735951",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article proposes a novel framework for the
                 real-time capture, assessment, and visualization of
                 ballet dance movements as performed by a student in an
                 instructional, virtual reality (VR) setting. The
                 acquisition of human movement data is facilitated by
                 skeletal joint tracking captured using the popular
                 Microsoft (MS) Kinect camera system, while instruction
                 and performance evaluation are provided in the form of
                 3D visualizations and feedback through a CAVE virtual
                 environment, in which the student is fully immersed.
                 The proposed framework is based on the unsupervised
                 parsing of ballet dance movement into a structured
                 posture space using the spherical self-organizing map
                 (SSOM). A unique feature descriptor is proposed to more
                 appropriately reflect the subtleties of ballet dance
                 movements, which are represented as gesture
                 trajectories through posture space on the SSOM. This
                 recognition subsystem is used to identify the category
                 of movement the student is attempting when prompted (by
                 a virtual instructor) to perform a particular dance
                 sequence. The dance sequence is then segmented and
                 cross-referenced against a library of gestural
                 components performed by the teacher. This facilitates
                 alignment and score-based assessment of individual
                 movements within the context of the dance sequence. An
                 immersive interface enables the student to review his
                 or her performance from a number of vantage points,
                 each providing a unique perspective and spatial context
                 suggestive of how the student might make improvements
                 in training. An evaluation of the recognition and
                 virtual feedback systems is presented.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2015:ESC,
  author =       "Miaojing Shi and Xinghai Sun and Dacheng Tao and Chao
                 Xu and George Baciu and Hong Liu",
  title =        "Exploring Spatial Correlation for Visual Object
                 Retrieval",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "24:1--24:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2641576",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Bag-of-visual-words (BOVW)-based image representation
                 has received intense attention in recent years and has
                 improved content-based image retrieval (CBIR)
                 significantly. BOVW does not consider the spatial
                 correlation between visual words in natural images and
                 thus biases the generated visual words toward noise
                 when the corresponding visual features are not stable.
                 This article outlines the construction of a visual word
                 co-occurrence matrix by exploring visual word
                 co-occurrence extracted from small affine-invariant
                 regions in a large collection of natural images. Based
                 on this co-occurrence matrix, we first present a novel
                 high-order predictor to accelerate the generation of
                 spatially correlated visual words and a penalty tree
                 (PTree) to continue generating the words after the
                 prediction. Subsequently, we propose two methods of
                 co-occurrence weighting similarity measure for image
                 ranking: Co-Cosine and Co-TFIDF. These two new schemes
                 down-weight the contributions of the words that are
                 less discriminative because of frequent co-occurrences
                 with other words. We conduct experiments on Oxford and
                 Paris Building datasets, in which the ImageNet dataset
                 is used to implement a large-scale evaluation.
                 Cross-dataset evaluations between the Oxford and Paris
                 datasets and Oxford and Holidays datasets are also
                 provided. Thorough experimental results suggest that
                 our method outperforms the state of the art without
                 adding much additional cost to the BOVW model.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Doherty:2015:PMT,
  author =       "Jonathan Doherty and Kevin Curran and Paul McKevitt",
  title =        "Pattern Matching Techniques for Replacing Missing
                 Sections of Audio Streamed across Wireless Networks",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "25:1--25:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2663358",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Streaming media on the Internet can be unreliable.
                 Services such as audio-on-demand drastically increase
                 the loads on networks; therefore, new, robust, and
                 highly efficient coding algorithms are necessary. One
                 method overlooked to date, which can work alongside
                 existing audio compression schemes, is that which takes
                 into account the semantics and natural repetition of
                 music. Similarity detection within polyphonic audio has
                 presented problematic challenges within the field of
                 music information retrieval. One approach to deal with
                 bursty errors is to use self-similarity to replace
                 missing segments. Many existing systems exist based on
                 packet loss and replacement on a network level, but
                 none attempt repairs of large dropouts of 5 seconds or
                 more. Music exhibits standard structures that can be
                 used as a forward error correction (FEC) mechanism. FEC
                 is an area that addresses the issue of packet loss with
                 the onus of repair placed as much as possible on the
                 listener's device. We have developed a
                 server--client-based framework (SoFI) for automatic
                 detection and replacement of large packet losses on
                 wireless networks when receiving time-dependent
                 streamed audio. Whenever dropouts occur, SoFI swaps
                 audio presented to the listener between a live stream
                 and previous sections of the audio stored locally.
                 Objective and subjective evaluations of SoFI where
                 subjects were presented with other simulated approaches
                 to audio repair together with simulations of
                 replacements including varying lengths of time in the
                 repair give positive results.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hai:2015:ABU,
  author =       "Zhen Hai and Kuiyu Chang and Gao Cong and Christopher
                 C. Yang",
  title =        "An Association-Based Unified Framework for Mining
                 Features and Opinion Words",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "26:1--26:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2663359",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Mining features and opinion words is essential for
                 fine-grained opinion analysis of customer reviews. It
                 is observed that semantic dependencies naturally exist
                 between features and opinion words, even among features
                 or opinion words themselves. In this article, we employ
                 a corpus statistics association measure to quantify the
                 pairwise word dependencies and propose a generalized
                 association-based unified framework to identify
                 features, including explicit and implicit features, and
                 opinion words from reviews. We first extract explicit
                 features and opinion words via an association-based
                 bootstrapping method (ABOOT). ABOOT starts with a small
                 list of annotated feature seeds and then iteratively
                 recognizes a large number of domain-specific features
                 and opinion words by discovering the corpus statistics
                 association between each pair of words on a given
                 review domain. Two instances of this ABOOT method are
                 evaluated based on two particular association models,
                 likelihood ratio tests (LRTs) and latent semantic
                 analysis (LSA). Next, we introduce a natural extension
                 to identify implicit features by employing the
                 recognized known semantic correlations between features
                 and opinion words. Experimental results illustrate the
                 benefits of the proposed association-based methods for
                 identifying features and opinion words versus benchmark
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Huang:2015:HMC,
  author =       "Shanshan Huang and Jun Ma and Peizhe Cheng and
                 Shuaiqiang Wang",
  title =        "A {Hybrid Multigroup CoClustering} Recommendation
                 Framework Based on Information Fusion",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "27:1--27:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700465",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Collaborative Filtering (CF) is one of the most
                 successful algorithms in recommender systems. However,
                 it suffers from data sparsity and scalability problems.
                 Although many clustering techniques have been
                 incorporated to alleviate these two problems, most of
                 them fail to achieve further significant improvement in
                 recommendation accuracy. First of all, most of them
                 assume each user or item belongs to a single cluster.
                 Since usually users can hold multiple interests and
                 items may belong to multiple categories, it is more
                 reasonable to assume that users and items can join
                 multiple clusters (groups), where each cluster is a
                 subset of like-minded users and items they prefer.
                 Furthermore, most of the clustering-based CF models
                 only utilize historical rating information in the
                 clustering procedure but ignore other data resources in
                 recommender systems such as the social connections of
                 users and the correlations between items. In this
                 article, we propose HMCoC, a Hybrid Multigroup
                 CoClustering recommendation framework, which can
                 cluster users and items into multiple groups
                 simultaneously with different information resources. In
                 our framework, we first integrate information of
                 user--item rating records, user social networks, and
                 item features extracted from the DBpedia knowledge
                 base. We then use an optimization method to mine
                 meaningful user--item groups with all the information.
                 Finally, we apply the conventional CF method in each
                 cluster to make predictions. By merging the predictions
                 from each cluster, we generate the top-n
                 recommendations to the target users for return.
                 Extensive experimental results demonstrate the superior
                 performance of our approach in top-n recommendation in
                 terms of MAP, NDCG, and F1 compared with other
                 clustering-based CF models.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fire:2015:DMO,
  author =       "Michael Fire and Yuval Elovici",
  title =        "Data Mining of Online Genealogy Datasets for Revealing
                 Lifespan Patterns in Human Population",
  journal =      j-TIST,
  volume =       "6",
  number =       "2",
  pages =        "28:1--28:??",
  month =        apr,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700464",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Apr 21 11:29:25 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Online genealogy datasets contain extensive
                 information about millions of people and their past and
                 present family connections. This vast amount of data
                 can help identify various patterns in the human
                 population. In this study, we present methods and
                 algorithms that can assist in identifying variations in
                 lifespan distributions of the human population in the
                 past centuries, in detecting social and genetic
                 features that correlate with the human lifespan, and in
                 constructing predictive models of human lifespan based
                 on various features that can easily be extracted from
                 genealogy datasets. We have evaluated the presented
                 methods and algorithms on a large online genealogy
                 dataset with over a million profiles and over 9 million
                 connections, all of which were collected from the
                 WikiTree website. Our findings indicate that
                 significant but small positive correlations exist
                 between the parents' lifespan and their children's
                 lifespan. Additionally, we found slightly higher and
                 significant correlations between the lifespans of
                 spouses. We also discovered a very small positive and
                 significant correlation between longevity and
                 reproductive success in males, and a small and
                 significant negative correlation between longevity and
                 reproductive success in females. Moreover, our
                 predictive models presented results with a Mean
                 Absolute Error as low as 13.18 in predicting the
                 lifespans of individuals who outlived the age of 10,
                 and our classification models presented better than
                 random classification results in predicting which
                 people who outlive the age of 50 will also outlive the
                 age of 80. We believe that this study will be the first
                 of many studies to utilize the wealth of data on human
                 populations, existing in online genealogy datasets, to
                 better understand factors that influence the human
                 lifespan. Understanding these factors can assist
                 scientists in providing solutions for successful
                 aging.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zheng:2015:TDM,
  author =       "Yu Zheng",
  title =        "Trajectory Data Mining: an Overview",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "29:1--29:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2743025",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The advances in location-acquisition and mobile
                 computing techniques have generated massive spatial
                 trajectory data, which represent the mobility of a
                 diversity of moving objects, such as people, vehicles,
                 and animals. Many techniques have been proposed for
                 processing, managing, and mining trajectory data in the
                 past decade, fostering a broad range of applications.
                 In this article, we conduct a systematic survey on the
                 major research into trajectory data mining, providing a
                 panorama of the field as well as the scope of its
                 research topics. Following a road map from the
                 derivation of trajectory data, to trajectory data
                 preprocessing, to trajectory data management, and to a
                 variety of mining tasks (such as trajectory pattern
                 mining, outlier detection, and trajectory
                 classification), the survey explores the connections,
                 correlations, and differences among these existing
                 techniques. This survey also introduces the methods
                 that transform trajectories into other data formats,
                 such as graphs, matrices, and tensors, to which more
                 data mining and machine learning techniques can be
                 applied. Finally, some public trajectory datasets are
                 presented. This survey can help shape the field of
                 trajectory data mining, providing a quick understanding
                 of this field to the community.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bouguessa:2015:IAO,
  author =       "Mohamed Bouguessa and Lotfi Ben Romdhane",
  title =        "Identifying Authorities in Online Communities",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "30:1--30:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700481",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Several approaches have been proposed for the problem
                 of identifying authoritative actors in online
                 communities. However, the majority of existing methods
                 suffer from one or more of the following limitations:
                 (1) There is a lack of an automatic mechanism to
                 formally discriminate between authoritative and
                 nonauthoritative users. In fact, a common approach to
                 authoritative user identification is to provide a
                 ranked list of users expecting authorities to come
                 first. A major problem of such an approach is the
                 question of where to stop reading the ranked list of
                 users. How many users should be chosen as
                 authoritative? (2) Supervised learning approaches for
                 authoritative user identification suffer from their
                 dependency on the training data. The problem here is
                 that labeled samples are more difficult, expensive, and
                 time consuming to obtain than unlabeled ones. (3)
                 Several approaches rely on some user parameters to
                 estimate an authority score. Detection accuracy of
                 authoritative users can be seriously affected if
                 incorrect values are used. In this article, we propose
                 a parameterless mixture model-based approach that is
                 capable of addressing the three aforementioned issues
                 in a single framework. In our approach, we first
                 represent each user with a feature vector composed of
                 information related to its social behavior and activity
                 in an online community. Next, we propose a statistical
                 framework, based on the multivariate beta mixtures, in
                 order to model the estimated set of feature vectors.
                 The probability density function is therefore estimated
                 and the beta component that corresponds to the most
                 authoritative users is identified. The suitability of
                 the proposed approach is illustrated on real data
                 extracted from the Stack Exchange question-answering
                 network and Twitter.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lee:2015:WWR,
  author =       "Kyumin Lee and Jalal Mahmud and Jilin Chen and
                 Michelle Zhou and Jeffrey Nichols",
  title =        "Who Will Retweet This? {Detecting} Strangers from
                 {Twitter} to Retweet Information",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "31:1--31:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700466",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "There has been much effort on studying how social
                 media sites, such as Twitter, help propagate
                 information in different situations, including
                 spreading alerts and SOS messages in an emergency.
                 However, existing work has not addressed how to
                 actively identify and engage the right strangers at the
                 right time on social media to help effectively
                 propagate intended information within a desired time
                 frame. To address this problem, we have developed three
                 models: (1) a feature-based model that leverages
                 people's exhibited social behavior, including the
                 content of their tweets and social interactions, to
                 characterize their willingness and readiness to
                 propagate information on Twitter via the act of
                 retweeting; (2) a wait-time model based on a user's
                 previous retweeting wait times to predict his or her
                 next retweeting time when asked; and (3) a subset
                 selection model that automatically selects a subset of
                 people from a set of available people using
                 probabilities predicted by the feature-based model and
                 maximizes retweeting rate. Based on these three models,
                 we build a recommender system that predicts the
                 likelihood of a stranger to retweet information when
                 asked, within a specific time window, and recommends
                 the top-N qualified strangers to engage with. Our
                 experiments, including live studies in the real world,
                 demonstrate the effectiveness of our work.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hirschprung:2015:SDD,
  author =       "Ron Hirschprung and Eran Toch and Oded Maimon",
  title =        "Simplifying Data Disclosure Configurations in a Cloud
                 Computing Environment",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "32:1--32:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700472",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Cloud computing offers a compelling vision of
                 computation, enabling an unprecedented level of data
                 distribution and sharing. Beyond improving the
                 computing infrastructure, cloud computing enables a
                 higher level of interoperability between information
                 systems, simplifying tasks such as sharing documents
                 between coworkers or enabling collaboration between an
                 organization and its suppliers. While these abilities
                 may result in significant benefits to users and
                 organizations, they also present privacy challenges due
                 to unwanted exposure of sensitive information. As
                 information-sharing processes in cloud computing are
                 complex and domain specific, configuring these
                 processes can be an overwhelming and burdensome task
                 for users. This article investigates the feasibility of
                 configuring sharing processes through a small and
                 representative set of canonical configuration options.
                 For this purpose, we present a generic method, named
                 SCON-UP (Simplified CON-figuration of User
                 Preferences). SCON-UP simplifies configuration
                 interfaces by using a clustering algorithm that
                 analyzes a massive set of sharing preferences and
                 condenses them into a small number of discrete
                 disclosure levels. Thus, the user is provided with a
                 usable configuration model while guaranteeing adequate
                 privacy control. We describe the algorithm and
                 empirically evaluate our model using data collected in
                 two user studies (n = 121 and n = 352). Our results
                 show that when provided with three canonical
                 configuration options, on average, 82\% of the
                 population can be covered by at least one option. We
                 exemplify the feasibility of discretizing sharing
                 levels and discuss the tradeoff between coverage and
                 simplicity in discrete configuration options.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Elbadrawy:2015:USF,
  author =       "Asmaa Elbadrawy and George Karypis",
  title =        "User-Specific Feature-Based Similarity Models for
                 Top-$n$ Recommendation of New Items",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "33:1--33:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700495",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recommending new items for suitable users is an
                 important yet challenging problem due to the lack of
                 preference history for the new items. Noncollaborative
                 user modeling techniques that rely on the item features
                 can be used to recommend new items. However, they only
                 use the past preferences of each user to provide
                 recommendations for that user. They do not utilize
                 information from the past preferences of other users,
                 which can potentially be ignoring useful information.
                 More recent factor models transfer knowledge across
                 users using their preference information in order to
                 provide more accurate recommendations. These methods
                 learn a low-rank approximation for the preference
                 matrix, which can lead to loss of information.
                 Moreover, they might not be able to learn useful
                 patterns given very sparse datasets. In this work, we
                 present {{\sc UFSM}, a method for top-$n$
                 recommendation of new items given binary user
                 preferences. {\sc UFSM} learns {{\bf U}ser}-specific
                 {\bf F}eature}-based item-{\bf S}imilarity {\bf
                 M}odels, and its strength lies in combining two points:
                 (1) exploiting preference information across all users
                 to learn multiple global item similarity functions and
                 (2) learning user-specific weights that determine the
                 contribution of each global similarity function in
                 generating recommendations for each user. {\sc UFSM}
                 can be considered as a sparse high-dimensional factor
                 model where the previous preferences of each user are
                 incorporated within his or her latent representation.
                 This way, {\sc UFSM} combines the merits of item
                 similarity models that capture local relations among
                 items and factor models that learn global preference
                 patterns. A comprehensive set of experiments was
                 conduced to compare {\sc UFSM} against state-of-the-art
                 collaborative factor models and noncollaborative user
                 modeling techniques. Results show that {\sc UFSM}
                 outperforms other techniques in terms of recommendation
                 quality. {\sc UFSM} manages to yield better
                 recommendations even with very sparse datasets. Results
                 also show that {\sc UFSM} can efficiently handle
                 high-dimensional as well as low-dimensional item
                 feature spaces.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:TGO,
  author =       "Mingjin Zhang and Huibo Wang and Yun Lu and Tao Li and
                 Yudong Guang and Chang Liu and Erik Edrosa and Hongtai
                 Li and Naphtali Rishe",
  title =        "{TerraFly GeoCloud}: an Online Spatial Data Analysis
                 and Visualization System",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "34:1--34:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700494",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the exponential growth of the usage of web map
                 services, geo-data analysis has become more and more
                 popular. This article develops an online spatial data
                 analysis and visualization system, TerraFly GeoCloud,
                 which helps end-users visualize and analyze spatial
                 data and share the analysis results. Built on the
                 TerraFly Geo spatial database, TerraFly GeoCloud is an
                 extra layer running upon the TerraFly map and can
                 efficiently support many different visualization
                 functions and spatial data analysis models.
                 Furthermore, users can create unique URLs to visualize
                 and share the analysis results. TerraFly GeoCloud also
                 enables the MapQL technology to customize map
                 visualization using SQL-like statements. The system is
                 available at http://terrafly.fiu.edu/GeoCloud/.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2015:SCP,
  author =       "Yi-Cheng Chen and Wen-Chih Peng and Jiun-Long Huang
                 and Wang-Chien Lee",
  title =        "Significant Correlation Pattern Mining in Smart
                 Homes",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "35:1--35:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700484",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Owing to the great advent of sensor technology, the
                 usage data of appliances in a house can be logged and
                 collected easily today. However, it is a challenge for
                 the residents to visualize how these appliances are
                 used. Thus, mining algorithms are much needed to
                 discover appliance usage patterns. Most previous
                 studies on usage pattern discovery are mainly focused
                 on analyzing the patterns of single appliance rather
                 than mining the usage correlation among appliances. In
                 this article, a novel algorithm, namely Correlation
                 Pattern Miner (CoPMiner), is developed to capture the
                 usage patterns and correlations among appliances
                 probabilistically. CoPMiner also employs four pruning
                 techniques and a statistical model to reduce the search
                 space and filter out insignificant patterns,
                 respectively. Furthermore, the proposed algorithm is
                 applied on a real-world dataset to show the
                 practicability of correlation pattern mining.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Guo:2015:ISI,
  author =       "Bin Guo and Alvin Chin and Zhiwen Yu and Runhe Huang
                 and Daqing Zhang",
  title =        "An Introduction to the Special Issue on Participatory
                 Sensing and Crowd Intelligence",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "36:1--36:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2745712",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:SPU,
  author =       "Fuzheng Zhang and Nicholas Jing Yuan and David Wilkie
                 and Yu Zheng and Xing Xie",
  title =        "Sensing the Pulse of Urban Refueling Behavior: a
                 Perspective from Taxi Mobility",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "37:1--37:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2644828",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Urban transportation is an important factor in energy
                 consumption and pollution, and is of increasing concern
                 due to its complexity and economic significance. Its
                 importance will only increase as urbanization continues
                 around the world. In this article, we explore drivers'
                 refueling behavior in urban areas. Compared to
                 questionnaire-based methods of the past, we propose a
                 complete data-driven system that pushes towards
                 real-time sensing of individual refueling behavior and
                 citywide petrol consumption. Our system provides the
                 following: detection of individual refueling events
                 (REs) from which refueling preference can be analyzed;
                 estimates of gas station wait times from which
                 recommendations can be made; an indication of overall
                 fuel demand from which macroscale economic decisions
                 can be made, and a spatial, temporal, and economic view
                 of urban refueling characteristics. For individual
                 behavior, we use reported trajectories from a fleet of
                 GPS-equipped taxicabs to detect gas station visits. For
                 time spent estimates, to solve the sparsity issue along
                 time and stations, we propose context-aware tensor
                 factorization (CATF), a factorization model that
                 considers a variety of contextual factors (e.g., price,
                 brand, and weather condition) that affect consumers'
                 refueling decision. For fuel demand estimates, we apply
                 a queue model to calculate the overall visits based on
                 the time spent inside the station. We evaluated our
                 system on large-scale and real-world datasets, which
                 contain 4-month trajectories of 32,476 taxicabs, 689
                 gas stations, and the self-reported refueling details
                 of 8,326 online users. The results show that our system
                 can determine REs with an accuracy of more than 90\%,
                 estimate time spent with less than 2 minutes of error,
                 and measure overall visits in the same order of
                 magnitude with the records in the field study.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tangmunarunkit:2015:OGE,
  author =       "H. Tangmunarunkit and C. K. Hsieh and B. Longstaff and
                 S. Nolen and J. Jenkins and C. Ketcham and J. Selsky
                 and F. Alquaddoomi and D. George and J. Kang and Z.
                 Khalapyan and J. Ooms and N. Ramanathan and D. Estrin",
  title =        "{Ohmage}: a General and Extensible End-to-End
                 Participatory Sensing Platform",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "38:1--38:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2717318",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Participatory sensing (PS) is a distributed data
                 collection and analysis approach where individuals,
                 acting alone or in groups, use their personal mobile
                 devices to systematically explore interesting aspects
                 of their lives and communities [Burke et al. 2006].
                 These mobile devices can be used to capture diverse
                 spatiotemporal data through both intermittent
                 self-report and continuous recording from on-board
                 sensors and applications. Ohmage (http://ohmage.org) is
                 a modular and extensible open-source, mobile to Web PS
                 platform that records, stores, analyzes, and visualizes
                 data from both prompted self-report and continuous data
                 streams. These data streams are authorable and can
                 dynamically be deployed in diverse settings. Feedback
                 from hundreds of behavioral and technology researchers,
                 focus group participants, and end users has been
                 integrated into ohmage through an iterative
                 participatory design process. Ohmage has been used as
                 an enabling platform in more than 20 independent
                 projects in many disciplines. We summarize the PS
                 requirements, challenges and key design objectives
                 learned through our design process, and ohmage system
                 architecture to achieve those objectives. The
                 flexibility, modularity, and extensibility of ohmage in
                 supporting diverse deployment settings are presented
                 through three distinct case studies in education,
                 health, and clinical research.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xiong:2015:EEE,
  author =       "Haoyi Xiong and Daqing Zhang and Leye Wang and J. Paul
                 Gibson and Jie Zhu",
  title =        "{EEMC}: Enabling Energy-Efficient Mobile Crowdsensing
                 with Anonymous Participants",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "39:1--39:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2644827",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Mobile Crowdsensing (MCS) requires users to be
                 motivated to participate. However, concerns regarding
                 energy consumption and privacy-among other things-may
                 compromise their willingness to join such a crowd. Our
                 preliminary observations and analysis of common MCS
                 applications have shown that the data transfer in MCS
                 applications may incur significant energy consumption
                 due to the 3G connection setup. However, if data are
                 transferred in parallel with a traditional phone call,
                 then such transfer can be done almost ``for free'':
                 with only an insignificant additional amount of energy
                 required to piggy-back the data-usually incoming task
                 assignments and outgoing sensor results-on top of the
                 call. Here, we present an {\em Energy-Efficient Mobile
                 Crowdsensing\/} (EEMC) framework where task assignments
                 and sensing results are transferred in parallel with
                 phone calls. The main objective, and the principal
                 contribution of this article, is an MCS task assignment
                 scheme that guarantees that a minimum number of
                 anonymous participants return sensor results within a
                 specified time frame, while also minimizing the waste
                 of energy due to redundant task assignments and
                 considering privacy concerns of participants.
                 Evaluations with a large-scale real-world phone call
                 dataset show that our proposed {EEMC} framework
                 outperforms the baseline approaches, and it can reduce
                 overall energy consumption in data transfer by 54--66\%
                 when compared to the 3G-based solution.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:CSS,
  author =       "Wangsheng Zhang and Guande Qi and Gang Pan and Hua Lu
                 and Shijian Li and Zhaohui Wu",
  title =        "City-Scale Social Event Detection and Evaluation with
                 Taxi Traces",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "40:1--40:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700478",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "A social event is an occurrence that involves lots of
                 people and is accompanied by an obvious rise in human
                 flow. Analysis of social events has real-world
                 importance because events bring about impacts on many
                 aspects of city life. Traditionally, detection and
                 impact measurement of social events rely on social
                 investigation, which involves considerable human
                 effort. Recently, by analyzing messages in social
                 networks, researchers can also detect and evaluate
                 country-scale events. Nevertheless, the analysis of
                 city-scale events has not been explored. In this
                 article, we use human flow dynamics, which reflect the
                 social activeness of a region, to detect social events
                 and measure their impacts. We first extract human flow
                 dynamics from taxi traces. Second, we propose a method
                 that can not only discover the happening time and venue
                 of events from abnormal social activeness, but also
                 measure the scale of events through changes in such
                 activeness. Third, we extract traffic congestion
                 information from traces and use its change during
                 social events to measure their impact. The results of
                 experiments validate the effectiveness of both the
                 event detection and impact measurement methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sang:2015:ASC,
  author =       "Jitao Sang and Tao Mei and Changsheng Xu",
  title =        "Activity Sensor: Check-In Usage Mining for Local
                 Recommendation",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "41:1--41:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700468",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "While on the go, people are using their phones as a
                 personal concierge discovering what is around and
                 deciding what to do. Mobile phone has become a
                 recommendation terminal customized for
                 individuals-capable of recommending activities and
                 simplifying the accomplishment of related tasks. In
                 this article, we conduct usage mining on the check-in
                 data, with summarized statistics identifying the local
                 recommendation challenges of huge solution space,
                 sparse available data, and complicated user intent, and
                 discovered observations to motivate the hierarchical,
                 contextual, and sequential solution. We present a
                 point-of-interest (POI) category-transition--based
                 approach, with a goal of estimating the visiting
                 probability of a series of successive POIs conditioned
                 on current user context and sensor context. A mobile
                 local recommendation demo application is deployed. The
                 objective and subjective evaluations validate the
                 effectiveness in providing mobile users both accurate
                 recommendation and favorable user experience.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:EDQ,
  author =       "Bo Zhang and Zheng Song and Chi Harold Liu and Jian Ma
                 and Wendong Wang",
  title =        "An Event-Driven {QoI}-Aware Participatory Sensing
                 Framework with Energy and Budget Constraints",
  journal =      j-TIST,
  volume =       "6",
  number =       "3",
  pages =        "42:1--42:??",
  month =        may,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2630074",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu May 21 15:49:31 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Participatory sensing systems can be used for
                 concurrent event monitoring applications, like noise
                 levels, fire, and pollutant concentrations. However,
                 they are facing new challenges as to how to accurately
                 detect the exact boundaries of these events, and
                 further, to select the most appropriate participants to
                 collect the sensing data. On the one hand,
                 participants' handheld smart devices are constrained
                 with different energy conditions and sensing
                 capabilities, and they move around with uncontrollable
                 mobility patterns in their daily life. On the other
                 hand, these sensing tasks are within time-varying
                 quality-of-information (QoI) requirements and budget to
                 afford the users' incentive expectations. Toward this
                 end, this article proposes an event-driven QoI-aware
                 participatory sensing framework with energy and budget
                 constraints. The main method of this framework is event
                 boundary detection. For the former, a two-step
                 heuristic solution is proposed where the coarse-grained
                 detection step finds its approximation and the
                 fine-grained detection step identifies the exact
                 location. Participants are selected by explicitly
                 considering their mobility pattern, required QoI of
                 multiple tasks, and users' incentive requirements,
                 under the constraint of an aggregated task budget.
                 Extensive experimental results, based on a real trace
                 in Beijing, show the effectiveness and robustness of
                 our approach, while comparing with existing schemes.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Anantharam:2015:ECT,
  author =       "Pramod Anantharam and Payam Barnaghi and Krishnaprasad
                 Thirunarayan and Amit Sheth",
  title =        "Extracting City Traffic Events from Social Streams",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "43:1--43:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2717317",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Cities are composed of complex systems with physical,
                 cyber, and social components. Current works on
                 extracting and understanding city events mainly rely on
                 technology-enabled infrastructure to observe and record
                 events. In this work, we propose an approach to
                 leverage citizen observations of various city systems
                 and services, such as traffic, public transport, water
                 supply, weather, sewage, and public safety, as a source
                 of city events. We investigate the feasibility of using
                 such textual streams for extracting city events from
                 annotated text. We formalize the problem of annotating
                 social streams such as microblogs as a sequence
                 labeling problem. We present a novel training data
                 creation process for training sequence labeling models.
                 Our automatic training data creation process utilizes
                 instance-level domain knowledge (e.g., locations in a
                 city, possible event terms). We compare this automated
                 annotation process to a state-of-the-art tool that
                 needs manually created training data and show that it
                 has comparable performance in annotation tasks. An
                 aggregation algorithm is then presented for event
                 extraction from annotated text. We carry out a
                 comprehensive evaluation of the event annotation and
                 event extraction on a real-world dataset consisting of
                 event reports and tweets collected over 4 months from
                 the San Francisco Bay Area. The evaluation results are
                 promising and provide insights into the utility of
                 social stream for extracting city events.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sawant:2015:AGC,
  author =       "Anshul Sawant and John P. Dickerson and Mohammad T.
                 Hajiaghayi and V. S. Subrahmanian",
  title =        "Automated Generation of Counterterrorism Policies
                 Using Multiexpert Input",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "44:1--44:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2716328",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The use of game theory to model conflict has been
                 studied by several researchers, spearheaded by
                 Schelling. Most of these efforts assume a single payoff
                 matrix that captures players' utilities under different
                 assumptions about what the players will do. Our
                 experience in counterterrorism applications is that
                 experts disagree on these payoffs. We leverage
                 Shapley's notion of vector equilibria, which formulates
                 games where there are multiple payoff matrices, but
                 note that they are very hard to compute in practice. To
                 effectively enumerate large numbers of equilibria with
                 payoffs provided by multiple experts, we propose a
                 novel combination of vector payoffs and well-supported
                 $ \epsilon $-approximate equilibria. We develop bounds
                 related to computation of these equilibria for some
                 special cases and give a quasipolynomial time
                 approximation scheme (QPTAS) for the general case when
                 the number of players is small (which is true in many
                 real-world applications). Leveraging this QPTAS, we
                 give efficient algorithms to find such equilibria and
                 experimental results showing that they work well on
                 simulated data. We then built a policy recommendation
                 engine based on vector equilibria, called PREVE. We use
                 PREVE to model the terrorist group Lashkar-e-Taiba
                 (LeT), responsible for the 2008 Mumbai attacks, as a
                 five-player game. Specifically, we apply it to three
                 payoff matrices provided by experts in India--Pakistan
                 relations, analyze the equilibria generated by PREVE,
                 and suggest counterterrorism policies that may reduce
                 attacks by LeT. We briefly discuss these results and
                 identify their strengths and weaknesses from a policy
                 point of view.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bai:2015:OPL,
  author =       "Aijun Bai and Feng Wu and Xiaoping Chen",
  title =        "Online Planning for Large {Markov} Decision Processes
                 with Hierarchical Decomposition",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "45:1--45:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2717316",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Markov decision processes (MDPs) provide a rich
                 framework for planning under uncertainty. However,
                 exactly solving a large MDP is usually intractable due
                 to the ``curse of dimensionality''- the state space
                 grows exponentially with the number of state variables.
                 Online algorithms tackle this problem by avoiding
                 computing a policy for the entire state space. On the
                 other hand, since online algorithm has to find a
                 near-optimal action online in almost real time, the
                 computation time is often very limited. In the context
                 of reinforcement learning, MAXQ is a value function
                 decomposition method that exploits the underlying
                 structure of the original MDP and decomposes it into a
                 combination of smaller subproblems arranged over a task
                 hierarchy. In this article, we present MAXQ-OP-a novel
                 online planning algorithm for large MDPs that utilizes
                 MAXQ hierarchical decomposition in online settings.
                 Compared to traditional online planning algorithms,
                 MAXQ-OP is able to reach much more deeper states in the
                 search tree with relatively less computation time by
                 exploiting MAXQ hierarchical decomposition online. We
                 empirically evaluate our algorithm in the standard Taxi
                 domain-a common benchmark for MDPs-to show the
                 effectiveness of our approach. We have also conducted a
                 long-term case study in a highly complex simulated
                 soccer domain and developed a team named WrightEagle
                 that has won five world champions and five runners-up
                 in the recent 10 years of RoboCup Soccer Simulation 2D
                 annual competitions. The results in the RoboCup domain
                 confirm the scalability of MAXQ-OP to very large
                 domains.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ye:2015:SSB,
  author =       "Yanfang Ye and Tao Li and Haiyin Shen",
  title =        "{Soter}: Smart Bracelets for Children's Safety",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "46:1--46:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700483",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In recent years, crimes against children and cases of
                 missing children have increased at a high rate.
                 Therefore, there is an urgent need for safety support
                 systems to prevent crimes against children or for
                 antiloss, especially when parents are not with their
                 children, such as to and from school. However, existing
                 children's tracking systems are not smart enough to
                 provide the safety supports, as they simply locate the
                 children's positions without offering any notification
                 to parents that their children may be in danger. In
                 addition, there is limited research on children's
                 tracking and their antiloss. In this article, based on
                 location histories, we introduce novel notions of
                 children's life patterns that capture their general
                 lifestyles and regularities, and develop an intelligent
                 data mining framework to learn the safe regions and
                 safe routes of children on the cloud side. When the
                 children may be in danger, their parents will receive
                 automatic notifications from the cloud. We also propose
                 an effective energy-efficient positioning scheme that
                 leverages the location tracking accuracy of the
                 children while keeping energy overhead low by using a
                 hybrid global positioning system and a global system
                 for mobile communications. To the best of our
                 knowledge, this is the first attempt in applying data
                 mining techniques to applications designed for
                 children's safety. Our proposed techniques have been
                 incorporated into Soter, a children's safeguard system
                 that is used to provide cloud service for smart
                 bracelets produced by Qihoo. The case studies on real
                 smart bracelet users of Qihoo demonstrate the
                 effectiveness of our proposed methods and Soter for
                 children's safety.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2015:PLL,
  author =       "Yi Wang and Xuemin Zhao and Zhenlong Sun and Hao Yan
                 and Lifeng Wang and Zhihui Jin and Liubin Wang and Yang
                 Gao and Ching Law and Jia Zeng",
  title =        "{Peacock}: Learning Long-Tail Topic Features for
                 Industrial Applications",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "47:1--47:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700497",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Latent Dirichlet allocation (LDA) is a popular topic
                 modeling technique in academia but less so in industry,
                 especially in large-scale applications involving search
                 engine and online advertising systems. A main
                 underlying reason is that the topic models used have
                 been too small in scale to be useful; for example, some
                 of the largest LDA models reported in literature have
                 up to 10$^3$ topics, which difficultly cover the
                 long-tail semantic word sets. In this article, we show
                 that the number of topics is a key factor that can
                 significantly boost the utility of topic-modeling
                 systems. In particular, we show that a ``big'' LDA
                 model with at least 10$^5$ topics inferred from 10$^9$
                 search queries can achieve a significant improvement on
                 industrial search engine and online advertising
                 systems, both of which serve hundreds of millions of
                 users. We develop a novel distributed system called
                 Peacock to learn big LDA models from big data. The main
                 features of Peacock include hierarchical distributed
                 architecture, real-time prediction, and topic
                 de-duplication. We empirically demonstrate that the
                 Peacock system is capable of providing significant
                 benefits via highly scalable LDA topic models for
                 several industrial applications.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jumadinova:2015:APM,
  author =       "Janyl Jumadinova and Prithviraj Dasgupta",
  title =        "Automated Pricing in a Multiagent Prediction Market
                 Using a Partially Observable Stochastic Game",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "48:1--48:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700488",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Prediction markets offer an efficient market-based
                 mechanism to aggregate large amounts of dispersed or
                 distributed information from different people to
                 predict the possible outcome of future events.
                 Recently, automated prediction markets where software
                 trading agents perform market operations such as
                 trading and updating beliefs on behalf of humans have
                 been proposed. A challenging aspect in automated
                 prediction markets is to develop suitable techniques
                 that can be used by automated trading agents to update
                 the price at which they should trade securities related
                 to an event so that they can increase their profit.
                 This problem is nontrivial, as the decision to trade
                 and the price at which trading should occur depends on
                 several dynamic factors, such as incoming information
                 related to the event for which the security is being
                 traded, the belief-update mechanism and risk attitude
                 of the trading agent, and the trading decision and
                 trading prices of other agents. To address this
                 problem, we have proposed a new behavior model for
                 trading agents based on a game-theoretic framework
                 called partially observable stochastic game with
                 information (POSGI). We propose a correlated
                 equilibrium (CE)-based solution strategy for this game
                 that allows each agent to dynamically choose an action
                 (to buy or sell or hold) in the prediction market. We
                 have also performed extensive simulation experiments
                 using the data obtained from the Intrade prediction
                 market for four different prediction markets. Our
                 results show that our POSGI model and CE strategy
                 produces prices that are strongly correlated with the
                 prices of the real prediction markets. Results
                 comparing our CE strategy with five other strategies
                 commonly used in similar market show that our CE
                 strategy improves price predictions and provides higher
                 utilities to the agents compared to other existing
                 strategies.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fu:2015:ESG,
  author =       "Hao Fu and Aston Zhang and Xing Xie",
  title =        "Effective Social Graph Deanonymization Based on Graph
                 Structure and Descriptive Information",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "49:1--49:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700836",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The study of online social networks has attracted
                 increasing interest. However, concerns are raised for
                 the privacy risks of user data since they have been
                 frequently shared among researchers, advertisers, and
                 application developers. To solve this problem, a number
                 of anonymization algorithms have been recently
                 developed for protecting the privacy of social graphs.
                 In this article, we proposed a graph node similarity
                 measurement in consideration with both graph structure
                 and descriptive information, and a deanonymization
                 algorithm based on the measurement. Using the proposed
                 algorithm, we evaluated the privacy risks of several
                 typical anonymization algorithms on social graphs with
                 thousands of nodes from Microsoft Academic Search,
                 LiveJournal, and the Enron email dataset, and a social
                 graph with millions of nodes from Tencent Weibo. Our
                 results showed that the proposed algorithm was
                 efficient and effective to deanonymize social graphs
                 without any initial seed mappings. Based on the
                 experiments, we also pointed out suggestions on how to
                 better maintain the data utility while preserving
                 privacy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2015:HIR,
  author =       "Bo-Hao Chen and Shih-Chia Huang and Jian Hui Ye",
  title =        "Hazy Image Restoration by Bi-Histogram Modification",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "50:1--50:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2710024",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Visibility restoration techniques are widely used for
                 information recovery of hazy images in many computer
                 vision applications. Estimation of haze density is an
                 essential task of visibility restoration techniques.
                 However, conventional visibility restoration techniques
                 often suffer from either the generation of serious
                 artifacts or the loss of object information in the
                 restored images due to uneven haze density, which
                 usually means that the images contain heavy haze
                 formation within their background regions and little
                 haze formation within their foreground regions. This
                 frequently occurs when the images feature real-world
                 scenes with a deep depth of field. How to effectively
                 and accurately estimate the haze density in the
                 transmission map for these images is the most
                 challenging aspect of the traditional state-of-the-art
                 techniques. In response to this problem, this work
                 proposes a novel visibility restoration approach that
                 is based on Bi-Histogram modification, and which
                 integrates a haze density estimation module and a haze
                 formation removal module for effective and accurate
                 estimation of haze density in the transmission map. As
                 our experimental results demonstrate, the proposed
                 approach achieves superior visibility restoration
                 efficacy in comparison with the other state-of-the-art
                 approaches based on both qualitative and quantitative
                 evaluations. The proposed approach proves effective and
                 accurate in terms of both background and foreground
                 restoration of various hazy scenarios.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Combi:2015:IAT,
  author =       "Carlo Combi and Jiming Liu",
  title =        "Introduction to the {ACM TIST} Special Issue on
                 Intelligent Healthcare Informatics",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "51:1--51:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2791398",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kim:2015:AAR,
  author =       "Eunju Kim and Sumi Helal and Chris Nugent and Mark
                 Beattie",
  title =        "Analyzing Activity Recognition Uncertainties in Smart
                 Home Environments",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "52:1--52:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2651445",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In spite of the importance of activity recognition
                 (AR) for intelligent human-computer interaction in
                 emerging smart space applications, state-of-the-art AR
                 technology is not ready or adequate for real-world
                 deployments due to its insufficient accuracy. The
                 accuracy limitation is directly attributed to
                 uncertainties stemming from multiple sources in the AR
                 system. Hence, one of the major goals of AR research is
                 to improve system accuracy by minimizing or managing
                 the uncertainties encountered throughout the AR
                 process. As we cannot manage uncertainties well without
                 measuring them, we must first quantify their impact.
                 Nevertheless, such a quantification process is very
                 challenging given that uncertainties come from diverse
                 and heterogeneous sources. In this article, we propose
                 an approach, which can account for multiple uncertainty
                 sources and assess their impact on AR systems. We
                 introduce several metrics to quantify the various
                 uncertainties and their impact. We then conduct a
                 quantitative impact analysis of uncertainties utilizing
                 data collected from actual smart spaces that we have
                 instrumented. The analysis is intended to serve as
                 groundwork for developing ``diagnostic'' accuracy
                 measures of AR systems capable of pinpointing the
                 sources of accuracy loss. This is to be contrasted with
                 the currently used accuracy measures.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Soto-Mendoza:2015:DPS,
  author =       "Valeria Soto-Mendoza and J. Antonio
                 Garc{\'\i}a-Mac{\'\i}as and Edgar Ch{\'a}vez and Ana I.
                 Mart{\'\i}nez-Garc{\'\i}a and Jes{\'u}s Favela and
                 Patricia Serrano-Alvarado and Mayth{\'e} R.
                 Z{\'u}{\~n}iga Rojas",
  title =        "Design of a Predictive Scheduling System to Improve
                 Assisted Living Services for Elders",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "53:1--53:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2736700",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "As the number of older adults increases, and with it
                 the demand for dedicated care, geriatric residences
                 face a shortage of caregivers, who themselves
                 experience work overload, stress, and burden. We
                 conducted a long-term field study in three geriatric
                 residences to understand the work conditions of
                 caregivers with the aim of developing technologies to
                 assist them in their work and help them deal with their
                 burdens. From this study, we obtained relevant
                 requirements and insights to design, implement, and
                 evaluate two prototypes for supporting caregivers'
                 tasks (e.g., electronic recording and automatic
                 notifications) in order to validate the feasibility of
                 their implementation in situ and their technical
                 requirements. The evaluation in situ of the prototypes
                 was conducted for a period of 4 weeks. The results of
                 the evaluation, together with the data collected from 6
                 months of use, motivated the design of a predictive
                 schedule, which was iteratively improved and evaluated
                 in participative sessions with caregivers. PRESENCE,
                 the predictive schedule we propose, triggers real-time
                 alerts of risky situations (e.g., falls, entering
                 off-limits areas such as the infirmary or the kitchen)
                 and informs caregivers of routine tasks that need to be
                 performed (e.g., medication administration, diaper
                 change, etc.). Moreover, PRESENCE helps caregivers to
                 record caring tasks (such as diaper changes or
                 medication) and well-being assessments (such as the
                 mood) that are difficult to automate. This facilitates
                 caregiver's shift handover and can help to train new
                 caregivers by suggesting routine tasks and by sending
                 reminders and timely information about residents. It
                 can be seen as a tool to reduce the workload of
                 caregivers and medical staff. Instead of trying to
                 substitute the caregiver with an automatic caring
                 system, as proposed by others, we propose our
                 predictive schedule system that blends caregiver
                 assessments and measurements from sensors. We show the
                 feasibility of predicting caregiver tasks and a
                 formative evaluation with caregivers that provides
                 preliminary evidence of its utility.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Champaign:2015:EPC,
  author =       "John Champaign and Robin Cohen and Disney Yan Lam",
  title =        "Empowering Patients and Caregivers to Manage
                 Healthcare Via Streamlined Presentation of {Web}
                 Objects Selected by Modeling Learning Benefits Obtained
                 by Similar Peers",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "54:1--54:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700480",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we introduce a framework for
                 selecting web objects (texts, videos, simulations) from
                 a large online repository to present to patients and
                 caregivers, in order to assist in their healthcare.
                 Motivated by the paradigm of peer-based intelligent
                 tutoring, we model the learning gains achieved by users
                 when exposed to specific web objects in order to
                 recommend those objects most likely to deliver benefit
                 to new users. We are able to show that this streamlined
                 presentation leads to effective knowledge gains, both
                 through a process of simulated learning and through a
                 user study, for the specific application of caring for
                 children with autism. The value of our framework for
                 peer-driven content selection of health information is
                 emphasized through two additional roles for peers:
                 attaching commentary to web objects and proposing
                 subdivided objects for presentation, both of which are
                 demonstrated to deliver effective learning gains, in
                 simulations. In all, we are offering an opportunity for
                 patients to navigate the deep waters of excessive
                 online information towards effective management of
                 healthcare, through content selection influenced by
                 previous peer experiences.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2015:UHC,
  author =       "Haodong Yang and Christopher C. Yang",
  title =        "Using Health-Consumer-Contributed Data to Detect
                 Adverse Drug Reactions by Association Mining with
                 Temporal Analysis",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "55:1--55:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700482",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Since adverse drug reactions (ADRs) represent a
                 significant health problem all over the world, ADR
                 detection has become an important research topic in
                 drug safety surveillance. As many potential ADRs cannot
                 be detected though premarketing review, drug safety
                 currently depends heavily on postmarketing
                 surveillance. Particularly, current postmarketing
                 surveillance in the United States primarily relies on
                 the FDA Adverse Event Reporting System (FAERS).
                 However, the effectiveness of such spontaneous
                 reporting systems for ADR detection is not as good as
                 expected because of the extremely high underreporting
                 ratio of ADRs. Moreover, it often takes the FDA years
                 to complete the whole process of collecting reports,
                 investigating cases, and releasing alerts. Given the
                 prosperity of social media, many online health
                 communities are publicly available for health consumers
                 to share and discuss any healthcare experience such as
                 ADRs they are suffering. Such
                 health-consumer-contributed content is timely and
                 informative, but this data source still remains
                 untapped for postmarketing drug safety surveillance. In
                 this study, we propose to use (1) association mining to
                 identify the relations between a drug and an ADR and
                 (2) temporal analysis to detect drug safety signals at
                 the early stage. We collect data from MedHelp and use
                 the FDA's alerts and information of drug labeling
                 revision as the gold standard to evaluate the
                 effectiveness of our approach. The experiment results
                 show that health-related social media is a promising
                 source for ADR detection, and our proposed techniques
                 are effective to identify early ADR signals.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ullah:2015:ERL,
  author =       "Md Zia Ullah and Masaki Aono and Md Hanif Seddiqui",
  title =        "Estimating a Ranked List of Human Genetic Diseases by
                 Associating Phenotype-Gene with Gene-Disease Bipartite
                 Graphs",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "56:1--56:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700487",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With vast amounts of medical knowledge available on
                 the Internet, it is becoming increasingly practical to
                 help doctors in clinical diagnostics by suggesting
                 plausible diseases predicted by applying data and text
                 mining technologies. Recently, Genome-Wide Association
                 Studies ( GWAS ) have proved useful as a method for
                 exploring phenotypic associations with diseases.
                 However, since genetic diseases are difficult to
                 diagnose because of their low prevalence, large number,
                 and broad diversity of symptoms, genetic disease
                 patients are often misdiagnosed or experience long
                 diagnostic delays. In this article, we propose a method
                 for ranking genetic diseases for a set of clinical
                 phenotypes. In this regard, we associate a
                 phenotype-gene bipartite graph ( PGBG ) with a
                 gene-disease bipartite graph ( GDBG ) by producing a
                 phenotype-disease bipartite graph ( PDBG ), and we
                 estimate the candidate weights of diseases. In our
                 approach, all paths from a phenotype to a disease are
                 explored by considering causative genes to assign a
                 weight based on path frequency, and the phenotype is
                 linked to the disease in a new PDBG. We introduce the
                 Bidirectionally induced Importance Weight ( BIW )
                 prediction method to PDBG for approximating the weights
                 of the edges of diseases with phenotypes by considering
                 link information from both sides of the bipartite
                 graph. The performance of our system is compared to
                 that of other known related systems by estimating
                 Normalized Discounted Cumulative Gain ( NDCG ), Mean
                 Average Precision ( MAP ), and Kendall's tau metrics.
                 Further experiments are conducted with well-known TF $
                 \cdot $ IDF, BM25, and Jenson-Shannon divergence as
                 baselines. The result shows that our proposed method
                 outperforms the known related tool Phenomizer in terms
                 of NDCG@10, NDCG@20, MAP@10, and MAP@20; however, it
                 performs worse than Phenomizer in terms of Kendall's
                 tau-b metric at the top-10 ranks. It also turns out
                 that our proposed method has overall better performance
                 than the baseline methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Antonelli:2015:MCM,
  author =       "Dario Antonelli and Elena Baralis and Giulia Bruno and
                 Luca Cagliero and Tania Cerquitelli and Silvia Chiusano
                 and Paolo Garza and Naeem A. Mahoto",
  title =        "{MeTA}: Characterization of Medical Treatments at
                 Different Abstraction Levels",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "57:1--57:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700479",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Physicians and health care organizations always
                 collect large amounts of data during patient care.
                 These large and high-dimensional datasets are usually
                 characterized by an inherent sparseness. Hence,
                 analyzing these datasets to figure out interesting and
                 hidden knowledge is a challenging task. This article
                 proposes a new data mining framework based on
                 generalized association rules to discover
                 multiple-level correlations among patient data.
                 Specifically, correlations among prescribed
                 examinations, drugs, and patient profiles are
                 discovered and analyzed at different abstraction
                 levels. The rule extraction process is driven by a
                 taxonomy to generalize examinations and drugs into
                 their corresponding categories. To ease the manual
                 inspection of the result, a worthwhile subset of rules
                 (i.e., nonredundant generalized rules) is considered.
                 Furthermore, rules are classified according to the
                 involved data features (medical treatments or patient
                 profiles) and then explored in a top-down fashion: from
                 the small subset of high-level rules, a drill-down is
                 performed to target more specific rules. The
                 experiments, performed on a real diabetic patient
                 dataset, demonstrate the effectiveness of the proposed
                 approach in discovering interesting rule groups at
                 different abstraction levels.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Motai:2015:SCD,
  author =       "Yuichi Motai and Dingkun Ma and Alen Docef and
                 Hiroyuki Yoshida",
  title =        "Smart Colonography for Distributed Medical Databases
                 with Group Kernel Feature Analysis",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "58:1--58:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668136",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Computer-Aided Detection (CAD) of polyps in Computed
                 Tomographic (CT) colonography is currently very limited
                 since a single database at each hospital/institution
                 doesn't provide sufficient data for training the CAD
                 system's classification algorithm. To address this
                 limitation, we propose to use multiple databases,
                 (e.g., big data studies) to create multiple
                 institution-wide databases using distributed computing
                 technologies, which we call smart colonography. Smart
                 colonography may be built by a larger colonography
                 database networked through the participation of
                 multiple institutions via distributed computing. The
                 motivation herein is to create a distributed database
                 that increases the detection accuracy of CAD diagnosis
                 by covering many true-positive cases. Colonography data
                 analysis is mutually accessible to increase the
                 availability of resources so that the knowledge of
                 radiologists is enhanced. In this article, we propose a
                 scalable and efficient algorithm called Group Kernel
                 Feature Analysis (GKFA), which can be applied to
                 multiple cancer databases so that the overall
                 performance of CAD is improved. The key idea behind the
                 proposed GKFA method is to allow the feature space to
                 be updated as the training proceeds with more data
                 being fed from other institutions into the algorithm.
                 Experimental results show that GKFA achieves very good
                 classification accuracy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kim:2015:RPR,
  author =       "Mi-Young Kim and Ying Xu and Osmar R. Zaiane and Randy
                 Goebel",
  title =        "Recognition of Patient-Related Named Entities in Noisy
                 Tele-Health Texts",
  journal =      j-TIST,
  volume =       "6",
  number =       "4",
  pages =        "59:1--59:??",
  month =        aug,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2651444",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 13 17:37:43 MDT 2015",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We explore methods for effectively extracting
                 information from clinical narratives that are captured
                 in a public health consulting phone service called
                 HealthLink. Our research investigates the application
                 of state-of-the-art natural language processing and
                 machine learning to clinical narratives to extract
                 information of interest. The currently available data
                 consist of dialogues constructed by nurses while
                 consulting patients by phone. Since the data are
                 interviews transcribed by nurses during phone
                 conversations, they include a significant volume and
                 variety of noise. When we extract the patient-related
                 information from the noisy data, we have to remove or
                 correct at least two kinds of noise: explicit noise,
                 which includes spelling errors, unfinished sentences,
                 omission of sentence delimiters, and variants of terms,
                 and implicit noise, which includes non-patient
                 information and patient's untrustworthy information. To
                 filter explicit noise, we propose our own biomedical
                 term detection/normalization method: it resolves
                 misspelling, term variations, and arbitrary
                 abbreviation of terms by nurses. In detecting temporal
                 terms, temperature, and other types of named entities
                 (which show patients' personal information such as age
                 and sex), we propose a bootstrapping-based pattern
                 learning process to detect a variety of arbitrary
                 variations of named entities. To address implicit
                 noise, we propose a dependency path-based filtering
                 method. The result of our denoising is the extraction
                 of normalized patient information, and we visualize the
                 named entities by constructing a graph that shows the
                 relations between named entities. The objective of this
                 knowledge discovery task is to identify associations
                 between biomedical terms and to clearly expose the
                 trends of patients' symptoms and concern; the
                 experimental results show that we achieve reasonable
                 performance with our noise reduction methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ding:2015:LRN,
  author =       "Wenkui Ding and Xiubo Geng and Xu-Dong Zhang",
  title =        "Learning to Rank from Noisy Data",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "1:1--1:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2576230",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Learning to rank, which learns the ranking function
                 from training data, has become an emerging research
                 area in information retrieval and machine learning.
                 Most existing work on learning to rank assumes that the
                 training data is clean, which is not always true,
                 however. The ambiguity of query intent, the lack of
                 domain knowledge, and the vague definition of relevance
                 levels all make it difficult for common annotators to
                 give reliable relevance labels to some documents. As a
                 result, the relevance labels in the training data of
                 learning to rank usually contain noise. If we ignore
                 this fact, the performance of learning-to-rank
                 algorithms will be damaged. In this article, we propose
                 considering the labeling noise in the process of
                 learning to rank and using a two-step approach to
                 extend existing algorithms to handle noisy training
                 data. In the first step, we estimate the degree of
                 labeling noise for a training document. To this end, we
                 assume that the majority of the relevance labels in the
                 training data are reliable and we use a graphical model
                 to describe the generative process of a training query,
                 the feature vectors of its associated documents, and
                 the relevance labels of these documents. The parameters
                 in the graphical model are learned by means of maximum
                 likelihood estimation. Then the conditional probability
                 of the relevance label given the feature vector of a
                 document is computed. If the probability is large, we
                 regard the degree of labeling noise for this document
                 as small; otherwise, we regard the degree as large. In
                 the second step, we extend existing learning-to-rank
                 algorithms by incorporating the estimated degree of
                 labeling noise into their loss functions. Specifically,
                 we give larger weights to those training documents with
                 smaller degrees of labeling noise and smaller weights
                 to those with larger degrees of labeling noise. As
                 examples, we demonstrate the extensions for McRank,
                 RankSVM, RankBoost, and RankNet. Empirical results on
                 benchmark datasets show that the proposed approach can
                 effectively distinguish noisy documents from clean
                 ones, and the extended learning-to-rank algorithms can
                 achieve better performances than baselines.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2015:LSB,
  author =       "Fan Liu and Jinhui Tang and Yan Song and Liyan Zhang
                 and Zhenmin Tang",
  title =        "Local Structure-Based Sparse Representation for Face
                 Recognition",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "2:1--2:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2733383",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article presents a simple yet effective face
                 recognition method, called local structure-based sparse
                 representation classification (LS\_SRC). Motivated by
                 the ``divide-and-conquer'' strategy, we first divide
                 the face into local blocks and classify each local
                 block, then integrate all the classification results to
                 make the final decision. To classify each local block,
                 we further divide each block into several overlapped
                 local patches and assume that these local patches lie
                 in a linear subspace. This subspace assumption reflects
                 the local structure relationship of the overlapped
                 patches, making sparse representation-based
                 classification (SRC) feasible even when encountering
                 the single-sample-per-person (SSPP) problem. To lighten
                 the computing burden of LS\_SRC, we further propose the
                 local structure-based collaborative representation
                 classification (LS\_CRC). Moreover, the performance of
                 LS\_SRC and LS\_CRC can be further improved by using
                 the confusion matrix of the classifier. Experimental
                 results on four public face databases show that our
                 methods not only generalize well to SSPP problem but
                 also have strong robustness to occlusion; little pose
                 variation; and the variations of expression,
                 illumination, and time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Groves:2015:OAT,
  author =       "William Groves and Maria Gini",
  title =        "On Optimizing Airline Ticket Purchase Timing",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "3:1--3:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2733384",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Proper timing of the purchase of airline tickets is
                 difficult even when historical ticket prices and some
                 domain knowledge are available. To address this
                 problem, we introduce an algorithm that optimizes
                 purchase timing on behalf of customers and provides
                 performance estimates of its computed action policy.
                 Given a desired flight route and travel date, the
                 algorithm uses machine-learning methods on recent
                 ticket price quotes from many competing airlines to
                 predict the future expected minimum price of all
                 available flights. The main novelty of our algorithm
                 lies in using a systematic feature-selection technique,
                 which captures time dependencies in the data by using
                 time-delayed features, and reduces the number of
                 features by imposing a class hierarchy among the raw
                 features and pruning the features based on in-situ
                 performance. Our algorithm achieves much closer to the
                 optimal purchase policy than other existing decision
                 theoretic approaches for this domain, and meets or
                 exceeds the performance of existing feature-selection
                 methods from the literature. Applications of our
                 feature-selection process to other domains are also
                 discussed.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Dong:2015:NMR,
  author =       "Yongsheng Dong and Dacheng Tao and Xuelong Li",
  title =        "Nonnegative Multiresolution Representation-Based
                 Texture Image Classification",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "4:1--4:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2738050",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Effective representation of image texture is important
                 for an image-classification task. Statistical modelling
                 in wavelet domains has been widely used to image
                 texture representation. However, due to the intraclass
                 complexity and interclass diversity of textures, it is
                 hard to use a predefined probability distribution
                 function to fit adaptively all wavelet subband
                 coefficients of different textures. In this article, we
                 propose a novel modelling approach, Heterogeneous and
                 Incrementally Generated Histogram (HIGH), to indirectly
                 model the wavelet coefficients by use of four local
                 features in wavelet subbands. By concatenating all the
                 HIGHs in all wavelet subbands of a texture, we can
                 construct a nonnegative multiresolution vector (NMV) to
                 represent a texture image. Considering the NMV's high
                 dimensionality and nonnegativity, we further propose a
                 Hessian regularized discriminative nonnegative matrix
                 factorization to compute a low-dimensional basis of the
                 linear subspace of NMVs. Finally, we present a texture
                 classification approach by projecting NMVs on the
                 low-dimensional basis. Experimental results show that
                 our proposed texture classification method outperforms
                 seven representative approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2015:MKM,
  author =       "Bowei Chen and Jun Wang and Ingemar J. Cox and Mohan
                 S. Kankanhalli",
  title =        "Multi-Keyword Multi-Click Advertisement Option
                 Contracts for Sponsored Search",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "5:1--5:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2743027",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In sponsored search, advertisement (abbreviated ad)
                 slots are usually sold by a search engine to an
                 advertiser through an auction mechanism in which
                 advertisers bid on keywords. In theory, auction
                 mechanisms have many desirable economic properties.
                 However, keyword auctions have a number of limitations
                 including: the uncertainty in payment prices for
                 advertisers; the volatility in the search engine's
                 revenue; and the weak loyalty between advertiser and
                 search engine. In this article, we propose a special ad
                 option that alleviates these problems. In our proposal,
                 an advertiser can purchase an option from a search
                 engine in advance by paying an upfront fee, known as
                 the option price. The advertiser then has the right,
                 but no obligation, to purchase among the prespecified
                 set of keywords at the fixed cost-per-clicks (CPCs) for
                 a specified number of clicks in a specified period of
                 time. The proposed option is closely related to a
                 special exotic option in finance that contains multiple
                 underlying assets (multi-keyword) and is also
                 multi-exercisable (multi-click). This novel structure
                 has many benefits: advertisers can have reduced
                 uncertainty in advertising; the search engine can
                 improve the advertisers' loyalty as well as obtain a
                 stable and increased expected revenue over time. Since
                 the proposed ad option can be implemented in
                 conjunction with the existing keyword auctions, the
                 option price and corresponding fixed CPCs must be set
                 such that there is no arbitrage between the two
                 markets. Option pricing methods are discussed and our
                 experimental results validate the development. Compared
                 to keyword auctions, a search engine can have an
                 increased expected revenue by selling an ad option.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Font:2015:AIT,
  author =       "Frederic Font and Joan Serr{\`a} and Xavier Serra",
  title =        "Analysis of the Impact of a Tag Recommendation System
                 in a Real-World Folksonomy",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "6:1--6:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2743026",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Collaborative tagging systems have emerged as a
                 successful solution for annotating contributed
                 resources to online sharing platforms, facilitating
                 searching, browsing, and organizing their contents. To
                 aid users in the annotation process, several tag
                 recommendation methods have been proposed. It has been
                 repeatedly hypothesized that these methods should
                 contribute to improving annotation quality and reducing
                 the cost of the annotation process. It has been also
                 hypothesized that these methods should contribute to
                 the consolidation of the vocabulary of collaborative
                 tagging systems. However, to date, no empirical and
                 quantitative result supports these hypotheses. In this
                 work, we deeply analyze the impact of a tag
                 recommendation system in the folksonomy of Freesound, a
                 real-world and large-scale online sound sharing
                 platform. Our results suggest that tag recommendation
                 effectively increases vocabulary sharing among users of
                 the platform. In addition, tag recommendation is shown
                 to contribute to the convergence of the vocabulary as
                 well as to a partial increase in the quality of
                 annotations. However, according to our analysis, the
                 cost of the annotation process does not seem to be
                 effectively reduced. Our work is relevant to increase
                 our understanding about the nature of tag
                 recommendation systems and points to future directions
                 for the further development of those systems and their
                 analysis.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cheng:2015:HBS,
  author =       "Fan-Chieh Cheng and Bo-Hao Chen and Shih-Chia Huang",
  title =        "A Hybrid Background Subtraction Method with Background
                 and Foreground Candidates Detection",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "7:1--7:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2746409",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Background subtraction for motion detection is often
                 used in video surveillance systems. However,
                 difficulties in bootstrapping restrict its development.
                 This article proposes a novel hybrid background
                 subtraction technique to solve this problem. For
                 performance improvement of background subtraction, the
                 proposed technique not only quickly initializes the
                 background model but also eliminates unnecessary
                 regions containing only background pixels in the object
                 detection process. Furthermore, an embodiment based on
                 the proposed technique is also presented. Experimental
                 results verify that the proposed technique allows for
                 reduced execution time as well as improvement of
                 performance as evaluated by Recall, Precision, F1, and
                 Similarity metrics when used with state-of-the-art
                 background subtraction methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Muntean:2015:LPM,
  author =       "Cristina Ioana Muntean and Franco Maria Nardini and
                 Fabrizio Silvestri and Ranieri Baraglia",
  title =        "On Learning Prediction Models for Tourists Paths",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "8:1--8:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2766459",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we tackle the problem of predicting
                 the ``next'' geographical position of a tourist, given
                 her history (i.e., the prediction is done accordingly
                 to the tourist's current trail) by means of supervised
                 learning techniques, namely Gradient Boosted Regression
                 Trees and Ranking SVM. The learning is done on the
                 basis of an object space represented by a 68-dimension
                 feature vector specifically designed for
                 tourism-related data. Furthermore, we propose a
                 thorough comparison of several methods that are
                 considered state-of-the-art in recommender and trail
                 prediction systems for tourism, as well as a popularity
                 baseline. Experiments show that the methods we propose
                 consistently outperform the baselines and provide
                 strong evidence of the performance and robustness of
                 our solutions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2015:WHP,
  author =       "Yinting Wang and Mingli Song and Dacheng Tao and Yong
                 Rui and Jiajun Bu and Ah Chung Tsoi and Shaojie Zhuo
                 and Ping Tan",
  title =        "{Where2Stand}: a Human Position Recommendation System
                 for Souvenir Photography",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "9:1--9:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2770879",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "People often take photographs at tourist sites and
                 these pictures usually have two main elements: a person
                 in the foreground and scenery in the background. This
                 type of ``souvenir photo'' is one of the most common
                 photos clicked by tourists. Although algorithms that
                 aid a user-photographer in taking a well-composed
                 picture of a scene exist [Ni et al. 2013], few studies
                 have addressed the issue of properly positioning human
                 subjects in photographs. In photography, the common
                 guidelines of composing portrait images exist. However,
                 these rules usually do not consider the background
                 scene. Therefore, in this article, we investigate
                 human-scenery positional relationships and construct a
                 photographic assistance system to optimize the position
                 of human subjects in a given background scene, thereby
                 assisting the user in capturing high-quality souvenir
                 photos. We collect thousands of well-composed portrait
                 photographs to learn human-scenery aesthetic
                 composition rules. In addition, we define a set of
                 negative rules to exclude undesirable compositions.
                 Recommendation results are achieved by combining the
                 first learned positive rule with our proposed negative
                 rules. We implement the proposed system on an Android
                 platform in a smartphone. The system demonstrates its
                 efficacy by producing well-composed souvenir photos.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hennes:2015:MLS,
  author =       "Daniel Hennes and Steven {De Jong} and Karl Tuyls and
                 Ya'akov (Kobi) Gal",
  title =        "Metastrategies in Large-Scale Bargaining Settings",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "10:1--10:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2774224",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article presents novel methods for representing
                 and analyzing a special class of multiagent bargaining
                 settings that feature multiple players, large action
                 spaces, and a relationship among players' goals, tasks,
                 and resources. We show how to reduce these interactions
                 to a set of bilateral normal-form games in which the
                 strategy space is significantly smaller than the
                 original settings while still preserving much of their
                 structural relationship. The method is demonstrated
                 using the Colored Trails (CT) framework, which
                 encompasses a broad family of games and has been used
                 in many past studies. We define a set of heuristics
                 (metastrategies) in multiplayer CT games that make
                 varying assumptions about players' strategies, such as
                 boundedly rational play and social preferences. We show
                 how these CT settings can be decomposed into canonical
                 bilateral games such as the Prisoners' Dilemma, Stag
                 Hunt, and Ultimatum games in a way that significantly
                 facilitates their analysis. We demonstrate the
                 feasibility of this approach in separate CT settings
                 involving one-shot and repeated bargaining scenarios,
                 which are subsequently analyzed using evolutionary
                 game-theoretic techniques. We provide a set of
                 necessary conditions for CT games for allowing this
                 decomposition. Our results have significance for
                 multiagent systems researchers in mapping large
                 multiplayer CT task settings to smaller, well-known
                 bilateral normal-form games while preserving some of
                 the structure of the original setting.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2015:SSI,
  author =       "Jia-Dong Zhang and Chi-Yin Chow",
  title =        "Spatiotemporal Sequential Influence Modeling for
                 Location Recommendations: a Gravity-based Approach",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "11:1--11:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2786761",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recommending to users personalized locations is an
                 important feature of Location-Based Social Networks
                 (LBSNs), which benefits users who wish to explore new
                 places and businesses to discover potential customers.
                 In LBSNs, social and geographical influences have been
                 intensively used in location recommendations. However,
                 human movement also exhibits spatiotemporal sequential
                 patterns, but only a few current studies consider the
                 spatiotemporal sequential influence of locations on
                 users' check-in behaviors. In this article, we propose
                 a new gravity model for location recommendations,
                 called LORE, to exploit the spatiotemporal sequential
                 influence on location recommendations. First, LORE
                 extracts sequential patterns from historical check-in
                 location sequences of all users as a Location-Location
                 Transition Graph (L$^2$ TG), and utilizes the L$^2$ TG
                 to predict the probability of a user visiting a new
                 location through the developed additive Markov chain
                 that considers the effect of all visited locations in
                 the check-in history of the user on the new location.
                 Furthermore, LORE applies our contrived gravity model
                 to weigh the effect of each visited location on the new
                 location derived from the personalized attractive force
                 (i.e., the weight) between the visited location and the
                 new location. The gravity model effectively integrates
                 the spatiotemporal, social, and popularity influences
                 by estimating a power-law distribution based on (i) the
                 spatial distance and temporal difference between two
                 consecutive check-in locations of the same user, (ii)
                 the check-in frequency of social friends, and (iii) the
                 popularity of locations from all users. Finally, we
                 conduct a comprehensive performance evaluation for LORE
                 using three large-scale real-world datasets collected
                 from Foursquare, Gowalla, and Brightkite. Experimental
                 results show that LORE achieves significantly superior
                 location recommendations compared to other
                 state-of-the-art location recommendation techniques.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Guan:2015:DML,
  author =       "Tao Guan and Yuesong Wang and Liya Duan and Rongrong
                 Ji",
  title =        "On-Device Mobile Landmark Recognition Using Binarized
                 Descriptor with Multifeature Fusion",
  journal =      j-TIST,
  volume =       "7",
  number =       "1",
  pages =        "12:1--12:??",
  month =        oct,
  year =         "2015",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2795234",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Along with the exponential growth of high-performance
                 mobile devices, on-device Mobile Landmark Recognition
                 (MLR) has recently attracted increasing research
                 attention. However, the latency and accuracy of
                 automatic recognition remain as bottlenecks against its
                 real-world usage. In this article, we introduce a novel
                 framework that combines interactive image segmentation
                 with multifeature fusion to achieve improved MLR with
                 high accuracy. First, we propose an effective vector
                 binarization method to reduce the memory usage of image
                 descriptors extracted on-device, which maintains
                 comparable recognition accuracy to the original
                 descriptors. Second, we design a location-aware fusion
                 algorithm that can fuse multiple visual features into a
                 compact yet discriminative image descriptor to improve
                 on-device efficiency. Third, a user-friendly
                 interaction scheme is developed that enables
                 interactive foreground/background segmentation to
                 largely improve recognition accuracy. Experimental
                 results demonstrate the effectiveness of the proposed
                 algorithms for on-device MLR applications.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2016:EFC,
  author =       "Kun Zhang and Zhikun Wang and Jiji Zhang and Bernhard
                 Sch{\"o}lkopf",
  title =        "On Estimation of Functional Causal Models: General
                 Results and Application to the Post-Nonlinear Causal
                 Model",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "13:1--13:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700476",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Compared to constraint-based causal discovery, causal
                 discovery based on functional causal models is able to
                 identify the whole causal model under appropriate
                 assumptions [Shimizu et al. 2006; Hoyer et al. 2009;
                 Zhang and Hyv{\"a}rinen 2009b]. Functional causal
                 models represent the effect as a function of the direct
                 causes together with an independent noise term.
                 Examples include the linear non-Gaussian acyclic model
                 (LiNGAM), nonlinear additive noise model, and
                 post-nonlinear (PNL) model. Currently, there are two
                 ways to estimate the parameters in the models:
                 dependence minimization and maximum likelihood. In this
                 article, we show that for any acyclic functional causal
                 model, minimizing the mutual information between the
                 hypothetical cause and the noise term is equivalent to
                 maximizing the data likelihood with a flexible model
                 for the distribution of the noise term. We then focus
                 on estimation of the PNL causal model and propose to
                 estimate it with the warped Gaussian process with the
                 noise modeled by the mixture of Gaussians. As a
                 Bayesian nonparametric approach, it outperforms the
                 previous one based on mutual information minimization
                 with nonlinear functions represented by multilayer
                 perceptrons; we also show that unlike the ordinary
                 regression, estimation results of the PNL causal model
                 are sensitive to the assumption on the noise
                 distribution. Experimental results on both synthetic
                 and real data support our theoretical claims.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2016:OSC,
  author =       "Jiuyong Li and Thuc Duy Le and Lin Liu and Jixue Liu
                 and Zhou Jin and Bingyu Sun and Saisai Ma",
  title =        "From Observational Studies to Causal Rule Mining",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "14:1--14:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2746410",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Randomised controlled trials (RCTs) are the most
                 effective approach to causal discovery, but in many
                 circumstances it is impossible to conduct RCTs.
                 Therefore, observational studies based on passively
                 observed data are widely accepted as an alternative to
                 RCTs. However, in observational studies, prior
                 knowledge is required to generate the hypotheses about
                 the cause-effect relationships to be tested, and hence
                 they can only be applied to problems with available
                 domain knowledge and a handful of variables. In
                 practice, many datasets are of high dimensionality,
                 which leaves observational studies out of the
                 opportunities for causal discovery from such a wealth
                 of data sources. In another direction, many efficient
                 data mining methods have been developed to identify
                 associations among variables in large datasets. The
                 problem is that causal relationships imply
                 associations, but the reverse is not always true.
                 However, we can see the synergy between the two
                 paradigms here. Specifically, association rule mining
                 can be used to deal with the high-dimensionality
                 problem, whereas observational studies can be utilised
                 to eliminate noncausal associations. In this article,
                 we propose the concept of causal rules (CRs) and
                 develop an algorithm for mining CRs in large datasets.
                 We use the idea of retrospective cohort studies to
                 detect CRs based on the results of association rule
                 mining. Experiments with both synthetic and real-world
                 datasets have demonstrated the effectiveness and
                 efficiency of CR mining. In comparison with the
                 commonly used causal discovery methods, the proposed
                 approach generally is faster and has better or
                 competitive performance in finding correct or sensible
                 causes. It is also capable of finding a cause
                 consisting of multiple variables-a feature that other
                 causal discovery methods do not possess.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Leiva:2016:GGG,
  author =       "Luis A. Leiva and Daniel Mart{\'\i}n-Albo and
                 R{\'e}jean Plamondon",
  title =        "Gestures {\`a} Go Go: Authoring Synthetic Human-Like
                 Stroke Gestures Using the Kinematic Theory of Rapid
                 Movements",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "15:1--15:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2799648",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Training a high-quality gesture recognizer requires
                 providing a large number of examples to enable good
                 performance on unseen, future data. However, recruiting
                 participants, data collection, and labeling, etc.,
                 necessary for achieving this goal are usually time
                 consuming and expensive. Thus, it is important to
                 investigate how to empower developers to quickly
                 collect gesture samples for improving UI usage and user
                 experience. In response to this need, we introduce
                 Gestures {\`a} Go Go ( g3), a web service plus an
                 accompanying web application for bootstrapping stroke
                 gesture samples based on the kinematic theory of rapid
                 human movements. The user only has to provide a gesture
                 example once, and g3 will create a model of that
                 gesture. Then, by introducing local and global
                 perturbations to the model parameters, g3 generates
                 from tens to thousands of synthetic human-like samples.
                 Through a comprehensive evaluation, we show that
                 synthesized gestures perform equally similar to
                 gestures generated by human users. Ultimately, this
                 work informs our understanding of designing better user
                 interfaces that are driven by gestures.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Minkov:2016:EEU,
  author =       "Einat Minkov",
  title =        "Event Extraction using Structured Learning and Rich
                 Domain Knowledge: Application across Domains and Data
                 Sources",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "16:1--16:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2801131",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We consider the task of record extraction from text
                 documents, where the goal is to automatically populate
                 the fields of target relations, such as scientific
                 seminars or corporate acquisition events. There are
                 various inferences involved in the record-extraction
                 process, including mention detection, unification, and
                 field assignments. We use structured learning to find
                 the appropriate field-value assignments. Unlike
                 previous works, the proposed approach generates
                 feature-rich models that enable the modeling of domain
                 semantics and structural coherence at all levels and
                 across fields. Given labeled examples, such an approach
                 can, for instance, learn likely event durations and the
                 fact that start times should come before end times.
                 While the inference space is large, effective learning
                 is achieved using a perceptron-style method and simple,
                 greedy beam decoding. A main focus of this article is
                 on practical aspects involved in implementing the
                 proposed framework for real-world applications. We
                 argue and demonstrate that this approach is favorable
                 in conditions of data shift, a real-world setting in
                 which models learned using a limited set of labeled
                 examples are applied to examples drawn from a different
                 data distribution. Much of the framework's robustness
                 is attributed to the modeling of domain knowledge. We
                 describe design and implementation details for the case
                 study of seminar event extraction from email
                 announcements, and discuss design adaptations across
                 different domains and text genres.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2016:PAT,
  author =       "Kun Zhang and Jiuyong Li and Elias Bareinboim and
                 Bernhard Sch{\"o}lkopf and Judea Pearl",
  title =        "Preface to the {ACM TIST} Special Issue on Causal
                 Discovery and Inference",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "17:1--17:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2840720",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shan:2016:SBS,
  author =       "Na Shan and Xiaogang Dong and Pingfeng Xu and Jianhua
                 Guo",
  title =        "Sharp Bounds on Survivor Average Causal Effects When
                 the Outcome Is Binary and Truncated by Death",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "18:1--18:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700498",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In randomized trials with follow-up, outcomes may be
                 undefined for individuals who die before the follow-up
                 is complete. In such settings, Frangakis and Rubin
                 [2002] proposed the ``principal stratum effect'' or
                 ``Survivor Average Causal Effect'' (SACE), which is a
                 fair treatment comparison in the subpopulation that
                 would have survived under either treatment arm. Many of
                 the existing results for estimating the SACE are
                 difficult to carry out in practice. In this article,
                 when the outcome is binary, we apply the symbolic
                 Balke-Pearl linear programming method to derive simple
                 formulas for the sharp bounds on the SACE under the
                 monotonicity assumption commonly used by many
                 researchers.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2016:SIC,
  author =       "Hua Chen and Peng Ding and Zhi Geng and Xiao-Hua
                 Zhou",
  title =        "Semiparametric Inference of the Complier Average
                 Causal Effect with Nonignorable Missing Outcomes",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "19:1--19:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668135",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Noncompliance and missing data often occur in
                 randomized trials, which complicate the inference of
                 causal effects. When both noncompliance and missing
                 data are present, previous papers proposed moment and
                 maximum likelihood estimators for binary and normally
                 distributed continuous outcomes under the latent
                 ignorable missing data mechanism. However, the latent
                 ignorable missing data mechanism may be violated in
                 practice, because the missing data mechanism may depend
                 directly on the missing outcome itself. Under
                 noncompliance and an outcome-dependent nonignorable
                 missing data mechanism, previous studies showed the
                 identifiability of complier average causal effect for
                 discrete outcomes. In this article, we study the
                 semiparametric identifiability and estimation of
                 complier average causal effect in randomized clinical
                 trials with both all-or-none noncompliance and
                 outcome-dependent nonignorable missing continuous
                 outcomes, and propose a two-step maximum likelihood
                 estimator in order to eliminate the infinite
                 dimensional nuisance parameter. Our method does not
                 need to specify a parametric form for the missing data
                 mechanism. We also evaluate the finite sample property
                 of our method via extensive simulation studies and
                 sensitivity analysis, with an application to a
                 double-blinded psychiatric clinical trial.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Luo:2016:BDI,
  author =       "Peng Luo and Zhi Geng",
  title =        "Bounds on Direct and Indirect Effects of Treatment on
                 a Continuous Endpoint",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "20:1--20:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2668134",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Direct effect of a treatment variable on an endpoint
                 variable and indirect effect through a mediate variable
                 are important concepts for understanding a causal
                 mechanism. However, the randomized assignment of
                 treatment is not sufficient for identifying the direct
                 and indirect effects, and extra assumptions and
                 conditions are required, such as the sequential
                 ignorability assumption without unobserved confounders
                 or the sequential potential ignorability assumption.
                 But these assumptions may not be credible in many
                 applications. In this article, we consider the bounds
                 on controlled direct effect, natural direct effect, and
                 natural indirect effect without these extra
                 assumptions. Cai et al. [2008] presented the bounds for
                 the case of a binary endpoint, and we extend their
                 results to the general case for an arbitrary
                 endpoint.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2016:CDD,
  author =       "Furui Liu and Laiwan Chan",
  title =        "Causal Discovery on Discrete Data with Extensions to
                 Mixture Model",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "21:1--21:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700477",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we deal with the causal discovery
                 problem on discrete data. First, we present a causal
                 discovery method for traditional additive noise models
                 that identifies the causal direction by analyzing the
                 supports of the conditional distributions. Then, we
                 present a causal mixture model to address the problem
                 that the function transforming cause to effect varies
                 across the observations. We propose a novel method
                 called Support Analysis (SA) for causal discovery with
                 the mixture model. Experiments using synthetic and real
                 data are presented to demonstrate the performance of
                 our proposed algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Flaxman:2016:GPI,
  author =       "Seth R. Flaxman and Daniel B. Neill and Alexander J.
                 Smola",
  title =        "{Gaussian} Processes for Independence Tests with
                 Non-iid Data in Causal Inference",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "22:1--22:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2806892",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In applied fields, practitioners hoping to apply
                 causal structure learning or causal orientation
                 algorithms face an important question: which
                 independence test is appropriate for my data? In the
                 case of real-valued iid data, linear dependencies, and
                 Gaussian error terms, partial correlation is
                 sufficient. But once any of these assumptions is
                 modified, the situation becomes more complex.
                 Kernel-based tests of independence have gained
                 popularity to deal with nonlinear dependencies in
                 recent years, but testing for conditional independence
                 remains a challenging problem. We highlight the
                 important issue of non-iid observations: when data are
                 observed in space, time, or on a network, ``nearby''
                 observations are likely to be similar. This fact biases
                 estimates of dependence between variables. Inspired by
                 the success of Gaussian process regression for handling
                 non-iid observations in a wide variety of areas and by
                 the usefulness of the Hilbert--Schmidt Independence
                 Criterion (HSIC), a kernel-based independence test, we
                 propose a simple framework to address all of these
                 issues: first, use Gaussian process regression to
                 control for certain variables and to obtain residuals.
                 Second, use HSIC to test for independence. We
                 illustrate this on two classic datasets, one spatial,
                 the other temporal, that are usually treated as iid. We
                 show how properly accounting for spatial and temporal
                 variation can lead to more reasonable causal graphs. We
                 also show how highly structured data, like images and
                 text, can be used in a causal inference framework using
                 a novel structured input/output Gaussian process
                 formulation. We demonstrate this idea on a dataset of
                 translated sentences, trying to predict the source
                 language.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fire:2016:LPC,
  author =       "Amy Fire and Song-Chun Zhu",
  title =        "Learning Perceptual Causality from Video",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "23:1--23:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2809782",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Perceptual causality is the perception of causal
                 relationships from observation. Humans, even as
                 infants, form such models from observation of the world
                 around them [Saxe and Carey 2006]. For a deeper
                 understanding, the computer must make similar models
                 through the analogous form of observation: video. In
                 this article, we provide a framework for the
                 unsupervised learning of this perceptual causal
                 structure from video. Our method takes action and
                 object status detections as input and uses heuristics
                 suggested by cognitive science research to produce the
                 causal links perceived between them. We greedily modify
                 an initial distribution featuring independence between
                 potential causes and effects by adding dependencies
                 that maximize information gain. We compile the learned
                 causal relationships into a Causal And-Or Graph, a
                 probabilistic and-or representation of causality that
                 adds a prior to causality. Validated against human
                 perception, experiments show that our method correctly
                 learns causal relations, attributing status changes of
                 objects to causing actions amid irrelevant actions. Our
                 method outperforms Hellinger's $ \chi^2$-statistic by
                 considering hierarchical action selection, and
                 outperforms the treatment effect by discounting
                 coincidental relationships.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Demeshko:2016:NCS,
  author =       "Marina Demeshko and Takashi Washio and Yoshinobu
                 Kawahara and Yuriy Pepyolyshev",
  title =        "A Novel Continuous and Structural {VAR} Modeling
                 Approach and Its Application to Reactor Noise
                 Analysis",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "24:1--24:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2710025",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "A vector autoregressive model in discrete time domain
                 (DVAR) is often used to analyze continuous time,
                 multivariate, linear Markov systems through their
                 observed time series data sampled at discrete
                 timesteps. Based on previous studies, the DVAR model is
                 supposed to be a noncanonical representation of the
                 system, that is, it does not correspond to a unique
                 system bijectively. However, in this article, we
                 characterize the relations of the DVAR model with its
                 corresponding Structural Vector AR (SVAR) and
                 Continuous Time Vector AR (CTVAR) models through a
                 finite difference method across continuous and discrete
                 time domain. We further clarify that the DVAR model of
                 a continuous time, multivariate, linear Markov system
                 is canonical under a highly generic condition. Our
                 analysis shows that we can uniquely reproduce its SVAR
                 and CTVAR models from the DVAR model. Based on these
                 results, we propose a novel Continuous and Structural
                 Vector Autoregressive (CSVAR) modeling approach to
                 derive the SVAR and the CTVAR models from their DVAR
                 model empirically derived from the observed time series
                 of continuous time linear Markov systems. We
                 demonstrate its superior performance through some
                 numerical experiments on both artificial and real-world
                 data.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hours:2016:CAS,
  author =       "Hadrien Hours and Ernst Biersack and Patrick Loiseau",
  title =        "A Causal Approach to the Study of {TCP} Performance",
  journal =      j-TIST,
  volume =       "7",
  number =       "2",
  pages =        "25:1--25:??",
  month =        jan,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2770878",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jan 25 06:10:36 MST 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Communication networks are complex systems whose
                 operation relies on a large number of components that
                 work together to provide services to end users. As the
                 quality of these services depends on different
                 parameters, understanding how each of them impacts the
                 final performance of a service is a challenging but
                 important problem. However, intervening on individual
                 factors to evaluate the impact of the different
                 parameters is often impractical due to the high cost of
                 intervention in a network. It is, therefore, desirable
                 to adopt a formal approach to understand the role of
                 the different parameters and to predict how a change in
                 any of these parameters will impact performance. The
                 approach of causality pioneered by J. Pearl provides a
                 powerful framework to investigate these questions. Most
                 of the existing theory is non-parametric and does not
                 make any assumption on the nature of the system under
                 study. However, most of the implementations of causal
                 model inference algorithms and most of the examples of
                 usage of a causal model to predict intervention rely on
                 assumptions such linearity, normality, or discrete
                 data. In this article, we present a methodology to
                 overcome the challenges of working with real-world data
                 and extend the application of causality to complex
                 systems in the area of telecommunication networks, for
                 which assumptions of normality, linearity and discrete
                 data do no hold. Specifically, we study the performance
                 of TCP, which is the prevalent protocol for reliable
                 end-to-end transfer in the Internet. Analytical models
                 of the performance of TCP exist, but they take into
                 account the state of network only and disregard the
                 impact of the application at the sender and the
                 receiver, which often influences TCP performance. To
                 address this point, we take as application the file
                 transfer protocol (FTP), which uses TCP for reliable
                 transfer. Studying a well-understood protocol such as
                 TCP allows us to validate our approach and compare its
                 results to previous studies. We first present and
                 evaluate our methodology using TCP traffic obtained via
                 network emulation, which allows us to experimentally
                 validate the prediction of an intervention. We then
                 apply the methodology to real-world TCP traffic sent
                 over the Internet. Throughout the article, we compare
                 the causal approach for studying TCP performance to
                 other approaches such as analytical modeling or
                 simulation and and show how they can complement each
                 other.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Belem:2016:BRE,
  author =       "Fabiano M. Bel{\'e}m and Carolina S. Batista and
                 Rodrygo L. T. Santos and Jussara M. Almeida and Marcos
                 A. Gon{\c{c}}alves",
  title =        "Beyond Relevance: Explicitly Promoting Novelty and
                 Diversity in Tag Recommendation",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "26:1--26:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2801130",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The design and evaluation of tag recommendation
                 methods has historically focused on maximizing the
                 relevance of the suggested tags for a given object,
                 such as a movie or a song. However, relevance by itself
                 may not be enough to guarantee recommendation
                 usefulness. Promoting novelty and diversity in tag
                 recommendation not only increases the chances that the
                 user will select ``some'' of the recommended tags but
                 also promotes complementary information (i.e., tags),
                 which helps to cover multiple aspects or topics related
                 to the target object. Previous work has addressed the
                 tag recommendation problem by exploiting at most two of
                 the following aspects: (1) relevance, (2) explicit
                 topic diversity, and (3) novelty. In contrast, here we
                 tackle these three aspects conjointly, by introducing
                 two new tag recommendation methods that cover all three
                 aspects of the problem at different levels. Our first
                 method, called Random Forest with topic-related
                 attributes, or RF$_t$, extends a relevance-driven tag
                 recommender based on the Random Forest ( RF )
                 learning-to-rank method by including new tag attributes
                 to capture the extent to which a candidate tag is
                 related to the topics of the target object. This
                 solution captures topic diversity as well as novelty at
                 the attribute level while aiming at maximizing
                 relevance in its objective function. Our second method,
                 called Explicit Tag Recommendation Diversifier with
                 Novelty Promotion, or xTReND, reranks the
                 recommendations provided by any tag recommender to
                 jointly promote relevance, novelty, and topic
                 diversity. We use RF$_t$ as a basic recommender applied
                 before the reranking, thus building a solution that
                 addresses the problem at both attribute and objective
                 levels. Furthermore, to enable the use of our solutions
                 on applications in which category information is
                 unavailable, we investigate the suitability of using
                 latent Dirichlet allocation (LDA) to automatically
                 generate topics for objects. We evaluate all tag
                 recommendation approaches using real data from five
                 popular Web 2.0 applications. Our results show that
                 RF$_t$ greatly outperforms the relevance-driven RF
                 baseline in diversity while producing gains in
                 relevance as well. We also find that our new xTReND
                 reranker obtains considerable gains in both novelty and
                 relevance when compared to that same baseline while
                 keeping the same relevance levels. Furthermore,
                 compared to our previous reranker method, xTReD, which
                 does not consider novelty, xTReND is also quite
                 effective, improving the novelty of the recommended
                 tags while keeping similar relevance and diversity
                 levels in most datasets and scenarios. Comparing our
                 two new proposals, we find that xTReND considerably
                 outperforms RF$_t$ in terms of novelty and diversity
                 with only small losses (under 4\%) in relevance.
                 Overall, considering the trade-off among relevance,
                 novelty, and diversity, our results demonstrate the
                 superiority of xTReND over the baselines and the
                 proposed alternative, RF$_t$. Finally, the use of
                 automatically generated latent topics as an alternative
                 to manually labeled categories also provides
                 significant improvements, which greatly enhances the
                 applicability of our solutions to applications where
                 the latter is not available.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Paik:2016:PDM,
  author =       "Jiaul H. Paik",
  title =        "Parameterized Decay Model for Information Retrieval",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "27:1--27:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2800794",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article proposes a term weighting scheme for
                 measuring query-document similarity that attempts to
                 explicitly model the dependency between separate
                 occurrences of a term in a document. The assumption is
                 that, if a term appears once in a document, it is more
                 likely to appear again in the same document. Thus, as
                 the term appears again and again, the information
                 content of the subsequent occurrences decreases
                 gradually, since they are more predictable. We
                 introduce a parameterized decay function to model this
                 assumption, where the initial contribution of the term
                 can be determined using any reasonable term
                 discrimination factor. The effectiveness of the
                 proposed model is evaluated on a number of recent web
                 test collections of varying nature. The experimental
                 results show that the proposed model significantly
                 outperforms a number of well known retrieval models
                 including a recently proposed strong Term Frequency and
                 Inverse Document Frequency (TF-IDF) model.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2016:MCA,
  author =       "Zhifeng Li and Dihong Gong and Qiang Li and Dacheng
                 Tao and Xuelong Li",
  title =        "Mutual Component Analysis for Heterogeneous Face
                 Recognition",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "28:1--28:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2807705",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Heterogeneous face recognition, also known as
                 cross-modality face recognition or intermodality face
                 recognition, refers to matching two face images from
                 alternative image modalities. Since face images from
                 different image modalities of the same person are
                 associated with the same face object, there should be
                 mutual components that reflect those intrinsic face
                 characteristics that are invariant to the image
                 modalities. Motivated by this rationality, we propose a
                 novel approach called Mutual Component Analysis (MCA)
                 to infer the mutual components for robust heterogeneous
                 face recognition. In the MCA approach, a generative
                 model is first proposed to model the process of
                 generating face images in different modalities, and
                 then an Expectation Maximization (EM) algorithm is
                 designed to iteratively learn the model parameters. The
                 learned generative model is able to infer the mutual
                 components (which we call the hidden factor, where
                 hidden means the factor is unreachable and invisible,
                 and can only be inferred from observations) that are
                 associated with the person's identity, thus enabling
                 fast and effective matching for cross-modality face
                 recognition. To enhance recognition performance, we
                 propose an MCA-based multiclassifier framework using
                 multiple local features. Experimental results show that
                 our new approach significantly outperforms the
                 state-of-the-art results on two typical application
                 scenarios: sketch-to-photo and infrared-to-visible face
                 recognition.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ye:2016:GIL,
  author =       "Jintao Ye and Zhao Yan Ming and Tat Seng Chua",
  title =        "Generating Incremental Length Summary Based on
                 Hierarchical Topic Coverage Maximization",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "29:1--29:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2809433",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Document summarization is playing an important role in
                 coping with information overload on the Web. Many
                 summarization models have been proposed recently, but
                 few try to adjust the summary length and sentence order
                 according to application scenarios. With the popularity
                 of handheld devices, presenting key information first
                 in summaries of flexible length is of great convenience
                 in terms of faster reading and decision-making and
                 network consumption reduction. Targeting this problem,
                 we introduce a novel task of generating summaries of
                 incremental length. In particular, we require that the
                 summaries should have the ability to automatically
                 adjust the coverage of general-detailed information
                 when the summary length varies. We propose a novel
                 summarization model that incrementally maximizes topic
                 coverage based on the document's hierarchical topic
                 model. In addition to the standard Rouge-1 measure, we
                 define a new evaluation metric based on the similarity
                 of the summaries' topic coverage distribution in order
                 to account for sentence order and summary length.
                 Extensive experiments on Wikipedia pages, DUC 2007, and
                 general noninverted writing style documents from
                 multiple sources show the effectiveness of our proposed
                 approach. Moreover, we carry out a user study on a
                 mobile application scenario to show the usability of
                 the produced summary in terms of improving judgment
                 accuracy and speed, as well as reducing the reading
                 burden and network traffic.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2016:PCM,
  author =       "Dingqi Yang and Daqing Zhang and Bingqing Qu",
  title =        "Participatory Cultural Mapping Based on Collective
                 Behavior Data in Location-Based Social Networks",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "30:1--30:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2814575",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Culture has been recognized as a driving impetus for
                 human development. It co-evolves with both human belief
                 and behavior. When studying culture, Cultural Mapping
                 is a crucial tool to visualize different aspects of
                 culture (e.g., religions and languages) from the
                 perspectives of indigenous and local people. Existing
                 cultural mapping approaches usually rely on large-scale
                 survey data with respect to human beliefs, such as
                 moral values. However, such a data collection method
                 not only incurs a significant cost of both human
                 resources and time, but also fails to capture human
                 behavior, which massively reflects cultural
                 information. In addition, it is practically difficult
                 to collect large-scale human behavior data.
                 Fortunately, with the recent boom in Location-Based
                 Social Networks (LBSNs), a considerable number of users
                 report their activities in LBSNs in a participatory
                 manner, which provides us with an unprecedented
                 opportunity to study large-scale user behavioral data.
                 In this article, we propose a participatory cultural
                 mapping approach based on collective behavior in LBSNs.
                 First, we collect the participatory sensed user
                 behavioral data from LBSNs. Second, since only local
                 users are eligible for cultural mapping, we propose a
                 progressive ``home'' location identification method to
                 filter out ineligible users. Third, by extracting three
                 key cultural features from daily activity, mobility,
                 and linguistic perspectives, respectively, we propose a
                 cultural clustering method to discover cultural
                 clusters. Finally, we visualize the cultural clusters
                 on the world map. Based on a real-world LBSN dataset,
                 we experimentally validate our approach by conducting
                 both qualitative and quantitative analysis on the
                 generated cultural maps. The results show that our
                 approach can subtly capture cultural features and
                 generate representative cultural maps that correspond
                 well with traditional cultural maps based on survey
                 data.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jia:2016:LPT,
  author =       "Yantao Jia and Yuanzhuo Wang and Xiaolong Jin and
                 Xueqi Cheng",
  title =        "Location Prediction: a Temporal-Spatial {Bayesian}
                 Model",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "31:1--31:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2816824",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In social networks, predicting a user's location
                 mainly depends on those of his/her friends, where the
                 key lies in how to select his/her most influential
                 friends. In this article, we analyze the theoretically
                 maximal accuracy of location prediction based on
                 friends' locations and compare it with the practical
                 accuracy obtained by the state-of-the-art location
                 prediction methods. Upon observing a big gap between
                 the theoretical and practical accuracy, we propose a
                 new strategy for selecting influential friends in order
                 to improve the practical location prediction accuracy.
                 Specifically, several features are defined to measure
                 the influence of the friends on a user's location,
                 based on which we put forth a sequential
                 random-walk-with-restart procedure to rank the friends
                 of the user in terms of their influence. By dynamically
                 selecting the top N most influential friends of the
                 user per time slice, we develop a temporal-spatial
                 Bayesian model to characterize the dynamics of friends'
                 influence for location prediction. Finally, extensive
                 experimental results on datasets of real social
                 networks demonstrate that the proposed influential
                 friend selection method and temporal-spatial Bayesian
                 model can significantly improve the accuracy of
                 location prediction.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2016:VFE,
  author =       "Xiaoyan Li and Tongliang Liu and Jiankang Deng and
                 Dacheng Tao",
  title =        "Video Face Editing Using Temporal-Spatial-Smooth
                 Warping",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "32:1--32:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2819000",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Editing faces in videos is a popular yet challenging
                 task in computer vision and graphics that encompasses
                 various applications, including facial attractiveness
                 enhancement, makeup transfer, face replacement, and
                 expression manipulation. Directly applying the existing
                 warping methods to video face editing has the major
                 problem of temporal incoherence in the synthesized
                 videos, which cannot be addressed by simply employing
                 face tracking techniques or manual interventions, as it
                 is difficult to eliminate the subtly temporal
                 incoherence of the facial feature point localizations
                 in a video sequence. In this article, we propose a
                 temporal-spatial-smooth warping (TSSW) method to
                 achieve a high temporal coherence for video face
                 editing. TSSW is based on two observations: (1) the
                 control lattices are critical for generating warping
                 surfaces and achieving the temporal coherence between
                 consecutive video frames, and (2) the temporal
                 coherence and spatial smoothness of the control
                 lattices can be simultaneously and effectively
                 preserved. Based upon these observations, we impose the
                 temporal coherence constraint on the control lattices
                 on two consecutive frames, as well as the spatial
                 smoothness constraint on the control lattice on the
                 current frame. TSSW calculates the control lattice (in
                 either the horizontal or vertical direction) by
                 updating the control lattice (in the corresponding
                 direction) on its preceding frame, i.e., minimizing a
                 novel energy function that unifies a data-driven term,
                 a smoothness term, and feature point constraints. The
                 contributions of this article are twofold: (1) we
                 develop TSSW, which is robust to the subtly temporal
                 incoherence of the facial feature point localizations
                 and is effective to preserve the temporal coherence and
                 spatial smoothness of the control lattices for editing
                 faces in videos, and (2) we present a new unified video
                 face editing framework that is capable for improving
                 the performances of facial attractiveness enhancement,
                 makeup transfer, face replacement, and expression
                 manipulation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2016:MNS,
  author =       "Zechao Li and Jinhui Tang and Xueming Wang and Jing
                 Liu and Hanqing Lu",
  title =        "Multimedia News Summarization in Search",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "33:1--33:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2822907",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "It is a necessary but challenging task to relieve
                 users from the proliferative news information and allow
                 them to quickly and comprehensively master the
                 information of the whats and hows that are happening in
                 the world every day. In this article, we develop a
                 novel approach of multimedia news summarization for
                 searching results on the Internet, which uncovers the
                 underlying topics among query-related news information
                 and threads the news events within each topic to
                 generate a query-related brief overview. First, the
                 hierarchical latent Dirichlet allocation (hLDA) model
                 is introduced to discover the hierarchical topic
                 structure from query-related news documents, and a new
                 approach based on the weighted aggregation and max
                 pooling is proposed to identify one representative news
                 article for each topic. One representative image is
                 also selected to visualize each topic as a complement
                 to the text information. Given the representative
                 documents selected for each topic, a time-bias maximum
                 spanning tree (MST) algorithm is proposed to thread
                 them into a coherent and compact summary of their
                 parent topic. Finally, we design a friendly interface
                 to present users with the hierarchical summarization of
                 their required news information. Extensive experiments
                 conducted on a large-scale news dataset collected from
                 multiple news Web sites demonstrate the encouraging
                 performance of the proposed solution for news
                 summarization in news retrieval.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hardegger:2016:SUB,
  author =       "Michael Hardegger and Daniel Roggen and Alberto
                 Calatroni and Gerhard Tr{\"o}ster",
  title =        "{S-SMART}: a Unified {Bayesian} Framework for
                 Simultaneous Semantic Mapping, Activity Recognition,
                 and Tracking",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "34:1--34:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2824286",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The machine recognition of user trajectories and
                 activities is fundamental to devise context-aware
                 applications for support and monitoring in daily life.
                 So far, tracking and activity recognition were mostly
                 considered as orthogonal problems, which limits the
                 richness of possible context inference. In this work,
                 we introduce the novel unified computational and
                 representational framework S-SMART that simultaneously
                 models the environment state (semantic mapping),
                 localizes the user within this map (tracking), and
                 recognizes interactions with the environment (activity
                 recognition). Thus, S-SMART identifies which activities
                 the user executes where (e.g., turning a handle next to
                 a window ), and reflects the outcome of these actions
                 by updating the world model (e.g., the window is now
                 open ). This in turn conditions the future possibility
                 of executing actions at specific places (e.g., closing
                 the window is likely to be the next action at this
                 location). S-SMART works in a self-contained manner and
                 iteratively builds the semantic map from wearable
                 sensors only. This enables the seamless deployment to
                 new environments. We characterize S-SMART in an
                 experimental dataset with people performing hand
                 actions as part of their usual routines at home and in
                 office buildings. The framework combines dead reckoning
                 from a foot-worn motion sensor with
                 template-matching-based action recognition, identifying
                 objects in the environment (windows, doors, water taps,
                 phones, etc.) and tracking their state (open/closed,
                 etc.). In real-life recordings with up to 23 action
                 classes, S-SMART consistently outperforms independent
                 systems for positioning and activity recognition, and
                 constructs accurate semantic maps. This environment
                 representation enables novel applications that build
                 upon information about the arrangement and state of the
                 user's surroundings. For example, it may be possible to
                 remind elderly people of a window that they left open
                 before leaving the house, or of a plant they did not
                 water yet, using solely wearable sensors.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Luo:2016:IMD,
  author =       "Tie Luo and Sajal K. Das and Hwee Pink Tan and Lirong
                 Xia",
  title =        "Incentive Mechanism Design for Crowdsourcing: an
                 All-Pay Auction Approach",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "35:1--35:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2837029",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Crowdsourcing can be modeled as a principal-agent
                 problem in which the principal (crowdsourcer) desires
                 to solicit a maximal contribution from a group of
                 agents (participants) while agents are only motivated
                 to act according to their own respective advantages. To
                 reconcile this tension, we propose an all-pay auction
                 approach to incentivize agents to act in the
                 principal's interest, i.e., maximizing profit, while
                 allowing agents to reap strictly positive utility. Our
                 rationale for advocating all-pay auctions is based on
                 two merits that we identify, namely all-pay auctions
                 (i) compress the common, two-stage ``bid-contribute''
                 crowdsourcing process into a single
                 ``bid-cum-contribute'' stage, and (ii) eliminate the
                 risk of task nonfulfillment. In our proposed approach,
                 we enhance all-pay auctions with two additional
                 features: an adaptive prize and a general crowdsourcing
                 environment. The prize or reward adapts itself as per a
                 function of the unknown winning agent's contribution,
                 and the environment or setting generally accommodates
                 incomplete and asymmetric information, risk-averse (and
                 risk-neutral) agents, and a stochastic (and
                 deterministic) population. We analytically derive this
                 all-pay auction-based mechanism and extensively
                 evaluate it in comparison to classic and optimized
                 mechanisms. The results demonstrate that our proposed
                 approach remarkably outperforms its counterparts in
                 terms of the principal's profit, agent's utility, and
                 social welfare.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ibrahim:2016:IEM,
  author =       "Azhar Mohd Ibrahim and Ibrahim Venkat and K. G.
                 Subramanian and Ahamad Tajudin Khader and Philippe {De
                 Wilde}",
  title =        "Intelligent Evacuation Management Systems: a Review",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "36:1--36:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2842630",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Crowd and evacuation management have been active areas
                 of research and study in the recent past. Various
                 developments continue to take place in the process of
                 efficient evacuation of crowds in mass gatherings. This
                 article is intended to provide a review of intelligent
                 evacuation management systems covering the aspects of
                 crowd monitoring, crowd disaster prediction, evacuation
                 modelling, and evacuation path guidelines. Soft
                 computing approaches play a vital role in the design
                 and deployment of intelligent evacuation applications
                 pertaining to crowd control management. While the
                 review deals with video and nonvideo based aspects of
                 crowd monitoring and crowd disaster prediction,
                 evacuation techniques are reviewed via the theme of
                 soft computing, along with a brief review on the
                 evacuation navigation path. We believe that this review
                 will assist researchers in developing reliable
                 automated evacuation systems that will help in ensuring
                 the safety of the evacuees especially during emergency
                 evacuation scenarios.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ding:2016:CSP,
  author =       "Changxing Ding and Dacheng Tao",
  title =        "A Comprehensive Survey on Pose-Invariant Face
                 Recognition",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "37:1--37:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2845089",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The capacity to recognize faces under varied poses is
                 a fundamental human ability that presents a unique
                 challenge for computer vision systems. Compared to
                 frontal face recognition, which has been intensively
                 studied and has gradually matured in the past few
                 decades, Pose-Invariant Face Recognition (PIFR) remains
                 a largely unsolved problem. However, PIFR is crucial to
                 realizing the full potential of face recognition for
                 real-world applications, since face recognition is
                 intrinsically a passive biometric technology for
                 recognizing uncooperative subjects. In this article, we
                 discuss the inherent difficulties in PIFR and present a
                 comprehensive review of established techniques.
                 Existing PIFR methods can be grouped into four
                 categories, that is, pose-robust feature extraction
                 approaches, multiview subspace learning approaches,
                 face synthesis approaches, and hybrid approaches. The
                 motivations, strategies, pros/cons, and performance of
                 representative approaches are described and compared.
                 Moreover, promising directions for future research are
                 discussed.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cremonesi:2016:ISI,
  author =       "Paolo Cremonesi and Alan Said and Domonkos Tikk and
                 Michelle X. Zhou",
  title =        "Introduction to the Special Issue on Recommender
                 System Benchmarking",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "38:1--38:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2870627",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2016:RMC,
  author =       "Le Wu and Qi Liu and Enhong Chen and Nicholas Jing
                 Yuan and Guangming Guo and Xing Xie",
  title =        "Relevance Meets Coverage: a Unified Framework to
                 Generate Diversified Recommendations",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "39:1--39:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700496",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Collaborative filtering (CF) models offer users
                 personalized recommendations by measuring the relevance
                 between the active user and each individual candidate
                 item. Following this idea, user-based collaborative
                 filtering (UCF) usually selects the local popular items
                 from the like-minded neighbor users. However, these
                 traditional relevance-based models only consider the
                 individuals (i.e., each neighbor user and candidate
                 item) separately during neighbor set selection and
                 recommendation set generation, thus usually incurring
                 highly similar recommendations that lack diversity.
                 While many researchers have recognized the importance
                 of diversified recommendations, the proposed solutions
                 either needed additional semantic information of items
                 or decreased accuracy in this process. In this article,
                 we describe how to generate both accurate and
                 diversified recommendations from a new perspective.
                 Along this line, we first introduce a simple measure of
                 coverage that quantifies the usefulness of the whole
                 set, that is, the neighbor userset and the recommended
                 itemset as a complete entity. Then we propose a
                 recommendation framework named REC that considers both
                 traditional relevance-based scores and the new coverage
                 measure based on UCF. Under REC, we further prove that
                 the goals of maximizing relevance and coverage measures
                 simultaneously in both the neighbor set selection step
                 and the recommendation set generation step are NP-hard.
                 Luckily, we can solve them effectively and efficiently
                 by exploiting the inherent submodular property.
                 Furthermore, we generalize the coverage notion and the
                 REC framework from both a data perspective and an
                 algorithm perspective. Finally, extensive experimental
                 results on three real-world datasets show that the
                 REC-based recommendation models can naturally generate
                 more diversified recommendations without decreasing
                 accuracy compared to some state-of-the-art models.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Doerfel:2016:RCR,
  author =       "Stephan Doerfel and Robert J{\"a}schke and Gerd
                 Stumme",
  title =        "The Role of Cores in Recommender Benchmarking for
                 Social Bookmarking Systems",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "40:1--40:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700485",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Social bookmarking systems have established themselves
                 as an important part in today's Web. In such systems,
                 tag recommender systems support users during the
                 posting of a resource by suggesting suitable tags. Tag
                 recommender algorithms have often been evaluated in
                 offline benchmarking experiments. Yet, the particular
                 setup of such experiments has rarely been analyzed. In
                 particular, since the recommendation quality usually
                 suffers from difficulties such as the sparsity of the
                 data or the cold-start problem for new resources or
                 users, datasets have often been pruned to so-called
                 cores (specific subsets of the original datasets),
                 without much consideration of the implications on the
                 benchmarking results. In this article, we generalize
                 the notion of a core by introducing the new notion of a
                 set-core, which is independent of any graph structure,
                 to overcome a structural drawback in the previous
                 constructions of cores on tagging data. We show that
                 problems caused by some types of cores can be
                 eliminated using set-cores. Further, we present a
                 thorough analysis of tag recommender benchmarking
                 setups using cores. To that end, we conduct a
                 large-scale experiment on four real-world datasets, in
                 which we analyze the influence of different cores on
                 the evaluation of recommendation algorithms. We can
                 show that the results of the comparison of different
                 recommendation approaches depends on the selection of
                 core type and level. For the benchmarking of tag
                 recommender algorithms, our results suggest that the
                 evaluation must be set up more carefully and should not
                 be based on one arbitrarily chosen core type and
                 level.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Dooms:2016:FDB,
  author =       "Simon Dooms and Alejandro Bellog{\'\i}n and Toon {De
                 Pessemier} and Luc Martens",
  title =        "A Framework for Dataset Benchmarking and Its
                 Application to a New Movie Rating Dataset",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "41:1--41:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2751565",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Rating datasets are of paramount importance in
                 recommender systems research. They serve as input for
                 recommendation algorithms, as simulation data, or for
                 evaluation purposes. In the past, public accessible
                 rating datasets were not abundantly available, leaving
                 researchers no choice but to work with old and static
                 datasets like MovieLens and Netflix. More recently,
                 however, emerging trends as social media and
                 smartphones are found to provide rich data sources
                 which can be turned into valuable research datasets.
                 While dataset availability is growing, a structured way
                 for introducing and comparing new datasets is currently
                 still lacking. In this work, we propose a five-step
                 framework to introduce and benchmark new datasets in
                 the recommender systems domain. We illustrate our
                 framework on a new movie rating dataset-called
                 MovieTweetings-collected from Twitter. Following our
                 framework, we detail the origin of the dataset, provide
                 basic descriptive statistics, investigate external
                 validity, report the results of a number of
                 reproducible benchmarks, and conclude by discussing
                 some interesting advantages and appropriate research
                 use cases.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Moody:2016:NCF,
  author =       "Jennifer Moody and David H. Glass",
  title =        "A Novel Classification Framework for Evaluating
                 Individual and Aggregate Diversity in Top-{$N$}
                 Recommendations",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "42:1--42:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2700491",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The primary goal of a recommender system is to
                 generate high quality user-centred recommendations.
                 However, the traditional evaluation methods and metrics
                 were developed before researchers understood all the
                 factors that increase user satisfaction. This study is
                 an introduction to a novel user and item classification
                 framework. It is proposed that this framework should be
                 used during user-centred evaluation of recommender
                 systems and the need for this framework is justified
                 through experiments. User profiles are constructed and
                 matched against other users' profiles to formulate
                 neighbourhoods and generate top-N recommendations. The
                 recommendations are evaluated to measure the success of
                 the process. In conjunction with the framework, a new
                 diversity metric is presented and explained. The
                 accuracy, coverage, and diversity of top-N
                 recommendations is illustrated and discussed for groups
                 of users. It is found that in contradiction to common
                 assumptions, not all users suffer as expected from the
                 data sparsity problem. In fact, the group of users that
                 receive the most accurate recommendations do not belong
                 to the least sparse area of the dataset.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ben-Shimon:2016:AAR,
  author =       "David Ben-Shimon and Lior Rokach and Guy Shani and
                 Bracha Shapira",
  title =        "Anytime Algorithms for Recommendation Service
                 Providers",
  journal =      j-TIST,
  volume =       "7",
  number =       "3",
  pages =        "43:1--43:??",
  month =        apr,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2835496",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Jun 20 11:24:25 MDT 2016",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recommender systems (RS) can now be found in many
                 commercial Web sites, often presenting customers with a
                 short list of additional products that they might
                 purchase. Many commercial sites do not typically have
                 the ability and resources to develop their own system
                 and may outsource the RS to a third party. This had led
                 to the growth of a recommendation as a service
                 industry, where companies, referred to as RS providers,
                 provide recommendation services. These companies must
                 carefully balance the cost of building recommendation
                 models and the payment received from the e-business, as
                 these payments are expected to be low. In such a
                 setting, restricting the computational time required
                 for model building is critical for the RS provider to
                 be profitable. In this article, we propose anytime
                 algorithms as an attractive method for balancing
                 computational time and the recommendation model
                 performance, thus tackling the RS provider problem. In
                 an anytime setting, an algorithm can be stopped after
                 any amount of computational time, always ensuring that
                 a valid, although suboptimal, solution will be
                 returned. Given sufficient time, however, the algorithm
                 should converge to an optimal solution. In this
                 setting, it is important to evaluate the quality of the
                 returned solution over time, monitoring quality
                 improvement. This is significantly different from
                 traditional evaluation methods, which mostly estimate
                 the performance of the algorithm only after its
                 convergence is given sufficient time. We show that the
                 popular item-item top-N recommendation approach can be
                 brought into the anytime framework by smartly
                 considering the order by which item pairs are being
                 evaluated. We experimentally show that the
                 time-accuracy trade-off can be significantly improved
                 for this specific problem.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2016:ISI,
  author =       "Kuan-Ta Chen and Omar Alonso and Martha Larson and
                 Irwin King",
  title =        "Introduction to the Special Issue on Crowd in
                 Intelligent Systems",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "44:1--44:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2920522",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Siddharthan:2016:CCR,
  author =       "Advaith Siddharthan and Christopher Lambin and
                 Anne-Marie Robinson and Nirwan Sharma and Richard
                 Comont and Elaine O'Mahony and Chris Mellish and
                 Ren{\'e} {Van Der Wal}",
  title =        "Crowdsourcing Without a Crowd: Reliable Online Species
                 Identification Using {Bayesian} Models to Minimize
                 Crowd Size",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "45:1--45:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2776896",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We present an incremental Bayesian model that resolves
                 key issues of crowd size and data quality for consensus
                 labeling. We evaluate our method using data collected
                 from a real-world citizen science program, BeeWatch,
                 which invites members of the public in the United
                 Kingdom to classify (label) photographs of bumblebees
                 as one of 22 possible species. The biological recording
                 domain poses two key and hitherto unaddressed
                 challenges for consensus models of crowdsourcing: (1)
                 the large number of potential species makes
                 classification difficult, and (2) this is compounded by
                 limited crowd availability, stemming from both the
                 inherent difficulty of the task and the lack of
                 relevant skills among the general public. We
                 demonstrate that consensus labels can be reliably found
                 in such circumstances with very small crowd sizes of
                 around three to five users (i.e., through group
                 sourcing). Our incremental Bayesian model, which
                 minimizes crowd size by re-evaluating the quality of
                 the consensus label following each species
                 identification solicited from the crowd, is competitive
                 with a Bayesian approach that uses a larger but fixed
                 crowd size and outperforms majority voting. These
                 results have important ecological applicability:
                 biological recording programs such as BeeWatch can
                 sustain themselves when resources such as taxonomic
                 experts to confirm identifications by photo submitters
                 are scarce (as is typically the case), and feedback can
                 be provided to submitters in a timely fashion. More
                 generally, our model provides benefits to any
                 crowdsourced consensus labeling task where there is a
                 cost (financial or otherwise) associated with
                 soliciting a label.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Semertzidis:2016:CPS,
  author =       "Theodoros Semertzidis and Jasminko Novak and Michalis
                 Lazaridis and Mark Melenhorst and Isabel Micheel and
                 Dimitrios Michalopoulos and Martin B{\"o}ckle and
                 Michael G. Strintzis and Petros Daras",
  title =        "A Crowd-Powered System for Fashion Similarity Search",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "46:1--46:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897365",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Driven by the needs of customers and industry, online
                 fashion search and analytics are recently gaining much
                 attention. As fashion is mostly expressed by visual
                 content, the analysis of fashion images in online
                 social networks is a rich source of possible insights
                 on evolving trends and customer preferences. Although a
                 plethora of visual content is available, the modeling
                 of clothes' physics and movement, the implicit
                 semantics in fashion designs, and the subjectivity of
                 their interpretation pose difficulties to fully
                 automated solutions for fashion search and analysis. In
                 this article, we present the design and evaluation of a
                 crowd-powered system for fashion similarity search from
                 Twitter, supporting trend analysis for fashion
                 professionals. The system enables fashion similarity
                 search based on specific human-based similarity
                 criteria. This is achieved by implementing a novel
                 machine--crowd workflow that supports complex tasks
                 requiring highly subjective judgments where multiple
                 true solutions may coexist. We discuss how this leads
                 to a novel class of crowd-powered systems for which the
                 output of the crowd is not used to verify the automatic
                 analysis but is the desired outcome. Finally, we show
                 how this kind of crowd involvement enables a novel kind
                 of similarity search and represents a crucial factor
                 for the acceptance of system results by the end user.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Borish:2016:RLC,
  author =       "Michael Borish and Benjamin Lok",
  title =        "Rapid Low-Cost Virtual Human Bootstrapping via the
                 Crowd",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "47:1--47:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897366",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Virtual human interactions provide an important avenue
                 for training as emergent opportunities arise. In
                 response to a new training need, we propose a framework
                 to rapidly create experiential learning opportunities
                 in the form of a question--answer chat interaction with
                 virtual humans. This framework takes quickly generated
                 case documents and breaks down the case into small
                 tasks that can be crowdsourced by nonexperts. This
                 framework can serve as a first step to rapidly
                 bootstrapping new virtual humans. We have applied our
                 framework to the task of preparing health care students
                 and professionals to infrequent, but high-stakes,
                 situations such as infectious diseases, cranial nerve
                 disorders, and stroke. Our framework was utilized by
                 medical professionals interested in providing new
                 training experiences to students and colleagues. Over
                 the course of two months, these professionals created
                 seven scenarios on a diverse range of topics that
                 included Ebola, cancer, and neurological disorders.
                 These scenarios were developed for multiple target
                 audiences such as medical students, residents, and
                 fellows. As a first step, each scenario utilized our
                 framework and crowdsourced workers to create an initial
                 corpus over the course of two days. From these seven
                 cases, we selected two to evaluate the quality of the
                 resulting virtual-human corpuses. The two scenarios
                 were compared to preexisting reference scenarios that
                 have been in curricular use for several years. We found
                 a reduction in author time commitment of at least 92\%
                 while creating a character that was at least 75\% as
                 accurate as its reference counterparts. The commitment
                 reduction and accuracy achieved by our framework
                 represents a first step towards rapid development of a
                 virtual human. Our framework can then be combined with
                 other creation processes for further virtual-human
                 development in order to create a mature virtual human.
                 As part of a virtual-human development process, our
                 framework can help to rapidly develop new scenarios in
                 response to emergent training opportunities.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Radanovic:2016:IEC,
  author =       "Goran Radanovic and Boi Faltings and Radu Jurca",
  title =        "Incentives for Effort in Crowdsourcing Using the Peer
                 Truth Serum",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "48:1--48:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2856102",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Crowdsourcing is widely proposed as a method to solve
                 a large variety of judgment tasks, such as classifying
                 website content, peer grading in online courses, or
                 collecting real-world data. As the data reported by
                 workers cannot be verified, there is a tendency to
                 report random data without actually solving the task.
                 This can be countered by making the reward for an
                 answer depend on its consistency with answers given by
                 other workers, an approach called peer consistency.
                 However, it is obvious that the best strategy in such
                 schemes is for all workers to report the same answer
                 without solving the task. Dasgupta and Ghosh [2013]
                 show that, in some cases, exerting high effort can be
                 encouraged in the highest-paying equilibrium. In this
                 article, we present a general mechanism that implements
                 this idea and is applicable to most crowdsourcing
                 settings. Furthermore, we experimentally test the novel
                 mechanism, and validate its theoretical properties.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{DeBoer:2016:PTA,
  author =       "Patrick M. {De Boer} and Abraham Bernstein",
  title =        "{PPLib}: Toward the Automated Generation of Crowd
                 Computing Programs Using Process Recombination and
                 Auto-Experimentation",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "49:1--49:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897367",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Crowdsourcing is increasingly being adopted to solve
                 simple tasks such as image labeling and object tagging,
                 as well as more complex tasks, where crowd workers
                 collaborate in processes with interdependent steps. For
                 the whole range of complexity, research has yielded
                 numerous patterns for coordinating crowd workers in
                 order to optimize crowd accuracy, efficiency, and cost.
                 Process designers, however, often don't know which
                 pattern to apply to a problem at hand when designing
                 new applications for crowdsourcing. In this article, we
                 propose to solve this problem by systematically
                 exploring the design space of complex crowdsourced
                 tasks via automated recombination and
                 auto-experimentation for an issue at hand.
                 Specifically, we propose an approach to finding the
                 optimal process for a given problem by defining the
                 deep structure of the problem in terms of its abstract
                 operators, generating all possible alternatives via the
                 (re)combination of the abstract deep structure with
                 concrete implementations from a Process Repository, and
                 then establishing the best alternative via
                 auto-experimentation. To evaluate our approach, we
                 implemented PPLib (pronounced ``People Lib''), a
                 program library that allows for the automated
                 recombination of known processes stored in an easily
                 extensible Process Repository. We evaluated our work by
                 generating and running a plethora of process candidates
                 in two scenarios on Amazon's Mechanical Turk followed
                 by a meta-evaluation, where we looked at the
                 differences between the two evaluations. Our first
                 scenario addressed the problem of text translation,
                 where our automatic recombination produced multiple
                 processes whose performance almost matched the
                 benchmark established by an expert translation. In our
                 second evaluation, we focused on text shortening; we
                 automatically generated 41 crowd process candidates,
                 among them variations of the well-established
                 Find-Fix-Verify process. While Find-Fix-Verify
                 performed well in this setting, our recombination
                 engine produced five processes that repeatedly yielded
                 better results. We close the article by comparing the
                 two settings where the Recombinator was used, and
                 empirically show that the individual processes
                 performed differently in the two settings, which led us
                 to contend that there is no unifying formula, hence
                 emphasizing the necessity for recombination.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kim:2016:UCI,
  author =       "Yubin Kim and Kevyn Collins-Thompson and Jaime
                 Teevan",
  title =        "Using the Crowd to Improve Search Result Ranking and
                 the Search Experience",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "50:1--50:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897368",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Despite technological advances, algorithmic search
                 systems still have difficulty with complex or subtle
                 information needs. For example, scenarios requiring
                 deep semantic interpretation are a challenge for
                 computers. People, on the other hand, are well suited
                 to solving such problems. As a result, there is an
                 opportunity for humans and computers to collaborate
                 during the course of a search in a way that takes
                 advantage of the unique abilities of each. While search
                 tools that rely on human intervention will never be
                 able to respond as quickly as current search engines
                 do, recent research suggests that there are scenarios
                 where a search engine could take more time if it
                 resulted in a much better experience. This article
                 explores how crowdsourcing can be used at query time to
                 augment key stages of the search pipeline. We first
                 explore the use of crowdsourcing to improve search
                 result ranking. When the crowd is used to replace or
                 augment traditional retrieval components such as query
                 expansion and relevance scoring, we find that we can
                 increase robustness against failure for query expansion
                 and improve overall precision for results filtering.
                 However, the gains that we observe are limited and
                 unlikely to make up for the extra cost and time that
                 the crowd requires. We then explore ways to incorporate
                 the crowd into the search process that more drastically
                 alter the overall experience. We find that using crowd
                 workers to support rich query understanding and result
                 processing appears to be a more worthwhile way to make
                 use of the crowd during search. Our results confirm
                 that crowdsourcing can positively impact the search
                 experience but suggest that significant changes to the
                 search process may be required for crowdsourcing to
                 fulfill its potential in search systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Katsimerou:2016:CEI,
  author =       "Christina Katsimerou and Joris Albeda and Alina
                 Huldtgren and Ingrid Heynderickx and Judith A. Redi",
  title =        "Crowdsourcing Empathetic Intelligence: The Case of the
                 Annotation of {EMMA} Database for Emotion and Mood
                 Recognition",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "51:1--51:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897369",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Unobtrusive recognition of the user's mood is an
                 essential capability for affect-adaptive systems. Mood
                 is a subtle, long-term affective state, often
                 misrecognized even by humans. The challenge to train a
                 machine to recognize it from, for example, a video of
                 the user, is significant, and already begins with the
                 lack of ground truth for supervised learning. Existing
                 affective databases consist mainly of short videos,
                 annotated in terms of expressed emotions rather than
                 mood. In very few cases, we encounter perceived mood
                 annotations, of questionable reliability, however, due
                 to the subjectivity of mood estimation and the small
                 number of coders involved. In this work, we introduce a
                 new database for mood recognition from video. Our
                 database contains 180 long, acted videos, depicting
                 typical daily scenarios, and subtle facial and bodily
                 expressions. The videos cover three visual modalities
                 (face, body, Kinect data), and are annotated in terms
                 of emotions (via G-trace) and mood (via the
                 Self-Assessment Manikin and the AffectButton). To
                 annotate the database exhaustively, we exploit
                 crowdsourcing to reach out to an extensive number of
                 nonexpert coders. We validate the reliability of our
                 crowdsourced annotations by (1) adopting a number of
                 criteria to filter out unreliable coders, and (2)
                 comparing the annotations of a subset of our videos
                 with those collected in a controlled lab setting.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2016:UCS,
  author =       "Chen Chen and Pawe{\l} W. Wo{\'z}niak and Andrzej
                 Romanowski and Mohammad Obaid and Tomasz Jaworski and
                 Jacek Kucharski and Krzysztof Grudzie{\'n} and
                 Shengdong Zhao and Morten Fjeld",
  title =        "Using Crowdsourcing for Scientific Analysis of
                 Industrial Tomographic Images",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "52:1--52:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897370",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 09:59:46 2018",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we present a novel application domain
                 for human computation, specifically for crowdsourcing,
                 which can help in understanding particle-tracking
                 problems. Through an interdisciplinary inquiry, we
                 built a crowdsourcing system designed to detect tracer
                 particles in industrial tomographic images, and applied
                 it to the problem of bulk solid flow in silos. As
                 images from silo-sensing systems cannot be adequately
                 analyzed using the currently available computational
                 methods, human intelligence is required. However,
                 limited availability of experts, as well as their high
                 cost, motivates employing additional nonexperts. We
                 report on the results of a study that assesses the task
                 completion time and accuracy of employing nonexpert
                 workers to process large datasets of images in order to
                 generate data for bulk flow research. We prove the
                 feasibility of this approach by comparing results from
                 a user study with data generated from a computational
                 algorithm. The study shows that the crowd is more
                 scalable and more economical than an automatic
                 solution. The system can help analyze and understand
                 the physics of flow phenomena to better inform the
                 future design of silos, and is generalized enough to be
                 applicable to other domains.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{You:2016:CFP,
  author =       "Linlin You and Gianmario Motta and Kaixu Liu and
                 Tianyi Ma",
  title =        "{CITY FEED}: a Pilot System of Citizen-Sourcing for
                 City Issue Management",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "53:1--53:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2873064",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Crowdsourcing implies user collaboration and
                 engagement, which fosters a renewal of city governance
                 processes. In this article, we address a subset of
                 crowdsourcing, named citizen-sourcing, where citizens
                 interact with authorities collaboratively and actively.
                 Many systems have experimented citizen-sourcing in city
                 governance processes; however, their maturity levels
                 are mixed. In order to focus on the service maturity,
                 we introduce a city service maturity framework that
                 contains five levels of service support and two levels
                 of information integration. As an example, we introduce
                 CITY FEED, which implements citizen-sourcing in city
                 issue management process. In order to support such
                 process, CITY FEED supports all levels of the maturity
                 framework (publishing, transacting, interacting,
                 collaborating, and evaluating) and integrates related
                 information relationally and heterogeneously. In order
                 to integrate heterogeneous information, it implements a
                 threefold feed deduplication mechanism based on the
                 geographic, text semantic, and image similarities of
                 feeds. Currently, CITY FEED is in a pilot stage.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rao:2016:LHC,
  author =       "Huaming Rao and Shih-Wen Huang and Wai-Tat Fu",
  title =        "Leveraging Human Computations to Improve
                 Schematization of Spatial Relations from Imagery",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "54:1--54:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2873065",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The process of generating schematic maps of salient
                 objects from a set of pictures of an indoor environment
                 is challenging. It has been an active area of research
                 as it is crucial to a wide range of context- and
                 location-aware services, as well as for general scene
                 understanding. Although many automated systems have
                 been developed to solve the problem, most of them
                 either require predefining labels or expensive
                 equipment, such as RGBD sensors or lasers, to scan the
                 environment. In this article, we introduce a prototype
                 system to show how human computations can be utilized
                 to generate schematic maps from a set of pictures,
                 without making strong assumptions or demanding extra
                 devices. The system requires humans (crowd workers from
                 Amazon Mechanical Turks) to do simple spatial mapping
                 tasks in various conditions, and their data are
                 aggregated by filtering and clustering techniques that
                 allow salient cues to be identified in the pictures and
                 their spatial relations to be inferred and projected on
                 a two-dimensional map. In particular, we tested and
                 demonstrated the effectiveness of two methods that
                 improved the quality of the generated schematic map:
                 (1) We encouraged humans to adopt an allocentric
                 representations of salient objects by guiding them to
                 perform mental rotations of these objects and (2) we
                 sensitized human perception by guided arrows
                 superimposed on the imagery to improve the accuracy of
                 depth and width estimation. We demonstrated the
                 feasibility of our system by evaluating the results of
                 schematic maps generated from indoor pictures taken
                 from an office building. By calculating Riemannian
                 shape distances between the generated maps to the
                 ground truth, we found that the generated schematic
                 maps captured the spatial relations well. Our results
                 showed that the combination of human computations and
                 machine clustering could lead to more-accurate
                 schematized maps from imagery. We also discuss how our
                 approach may have important insights on methods that
                 leverage human computations in other areas.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Moshfeghi:2016:GTA,
  author =       "Yashar Moshfeghi and Alvaro Francisco Huertas Rosero
                 and Joemon M. Jose",
  title =        "A Game-Theory Approach for Effective Crowdsource-Based
                 Relevance Assessment",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "55:1--55:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2873063",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Despite the ever-increasing popularity of
                 crowdsourcing (CS) in both industry and academia,
                 procedures that ensure quality in its results are still
                 elusive. We hypothesise that a CS design based on game
                 theory can persuade workers to perform their tasks as
                 quickly as possible with the highest quality. In order
                 to do so, in this article we propose a CS framework
                 inspired by the n -person Chicken game. Our aim is to
                 address the problem of CS quality without compromising
                 on CS benefits such as low monetary cost and high task
                 completion speed. With that goal in mind, we study the
                 effects of knowledge updates as well as incentives for
                 good workers to continue playing. We define a general
                 task with the characteristics of relevance assessment
                 as a case study, because it has been widely explored in
                 the past with CS due to its potential cost and
                 complexity. In order to investigate our hypotheses, we
                 conduct a simulation where we study the effect of the
                 proposed framework on data accuracy, task completion
                 time, and total monetary rewards. Based on a
                 game-theoretical analysis, we study how different types
                 of individuals would behave under a particular game
                 scenario. In particular, we simulate a population
                 comprised of different types of workers with varying
                 ability to formulate optimal strategies and learn from
                 their experiences. A simulation of the proposed
                 framework produced results that support our
                 hypothesis.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Han:2016:CHA,
  author =       "Shuguang Han and Peng Dai and Praveen Paritosh and
                 David Huynh",
  title =        "Crowdsourcing Human Annotation on {Web} Page
                 Structure: Infrastructure Design and Behavior-Based
                 Quality Control",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "56:1--56:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2870649",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Parsing the semantic structure of a web page is a key
                 component of web information extraction. Successful
                 extraction algorithms usually require large-scale
                 training and evaluation datasets, which are difficult
                 to acquire. Recently, crowdsourcing has proven to be an
                 effective method of collecting large-scale training
                 data in domains that do not require much domain
                 knowledge. For more complex domains, researchers have
                 proposed sophisticated quality control mechanisms to
                 replicate tasks in parallel or sequential ways and then
                 aggregate responses from multiple workers. Conventional
                 annotation integration methods often put more trust in
                 the workers with high historical performance; thus,
                 they are called performance-based methods. Recently,
                 Rzeszotarski and Kittur have demonstrated that
                 behavioral features are also highly correlated with
                 annotation quality in several crowdsourcing
                 applications. In this article, we present a new
                 crowdsourcing system, called Wernicke, to provide
                 annotations for web information extraction. Wernicke
                 collects a wide set of behavioral features and, based
                 on these features, predicts annotation quality for a
                 challenging task domain: annotating web page structure.
                 We evaluate the effectiveness of quality control using
                 behavioral features through a case study where 32
                 workers annotate 200 Q\&A web pages from five popular
                 websites. In doing so, we discover several things: (1)
                 Many behavioral features are significant predictors for
                 crowdsourcing quality. (2) The behavioral-feature-based
                 method outperforms performance-based methods in recall
                 prediction, while performing equally with precision
                 prediction. In addition, using behavioral features is
                 less vulnerable to the cold-start problem, and the
                 corresponding prediction model is more generalizable
                 for predicting recall than precision for cross-website
                 quality analysis. (3) One can effectively combine
                 workers' behavioral information and historical
                 performance information to further reduce prediction
                 errors.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wei:2016:MDC,
  author =       "Yunchao Wei and Yao Zhao and Zhenfeng Zhu and Shikui
                 Wei and Yanhui Xiao and Jiashi Feng and Shuicheng Yan",
  title =        "Modality-Dependent Cross-Media Retrieval",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "57:1--57:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2775109",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we investigate the cross-media
                 retrieval between images and text, that is, using image
                 to search text (I2T) and using text to search images
                 (T2I). Existing cross-media retrieval methods usually
                 learn one couple of projections, by which the original
                 features of images and text can be projected into a
                 common latent space to measure the content similarity.
                 However, using the same projections for the two
                 different retrieval tasks (I2T and T2I) may lead to a
                 tradeoff between their respective performances, rather
                 than their best performances. Different from previous
                 works, we propose a modality-dependent cross-media
                 retrieval (MDCR) model, where two couples of
                 projections are learned for different cross-media
                 retrieval tasks instead of one couple of projections.
                 Specifically, by jointly optimizing the correlation
                 between images and text and the linear regression from
                 one modal space (image or text) to the semantic space,
                 two couples of mappings are learned to project images
                 and text from their original feature spaces into two
                 common latent subspaces (one for I2T and the other for
                 T2I). Extensive experiments show the superiority of the
                 proposed MDCR compared with other methods. In
                 particular, based on the 4,096-dimensional
                 convolutional neural network (CNN) visual feature and
                 100-dimensional Latent Dirichlet Allocation (LDA)
                 textual feature, the mAP of the proposed method
                 achieves the mAP score of 41.5\%, which is a new
                 state-of-the-art performance on the Wikipedia
                 dataset.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Morris:2016:DNM,
  author =       "Robert Morris and Matthew Johnson and K. Brent Venable
                 and James Lindsey",
  title =        "Designing Noise-Minimal Rotorcraft Approach
                 Trajectories",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "58:1--58:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2838738",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "NASA and the international aviation community are
                 investing in the development of a commercial
                 transportation infrastructure that includes the
                 increased use of rotorcraft, specifically helicopters
                 and civil tilt rotors. However, there is significant
                 concern over the impact of noise on the communities
                 surrounding the transportation facilities. One way to
                 address the rotorcraft noise problem is by exploiting
                 powerful search techniques coming from artificial
                 intelligence to design low-noise flight profiles that
                 can be then validated though field tests. This article
                 investigates the use of discrete heuristic search
                 methods to design low-noise approach trajectories for
                 rotorcraft. Our work builds on a long research
                 tradition in trajectory optimization using either
                 numerical methods or discrete search. Novel features of
                 our approach include the use of a discrete search space
                 with a resolution that can be varied, and the coupling
                 of search with a robust simulator to evaluate
                 candidates. The article includes a systematic
                 comparison of different search techniques; in
                 particular, in the experiments, we are able to do a
                 trade study that compares complete search algorithms
                 such as A$^*$ with faster but approximate methods such
                 as local search.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fang:2016:SST,
  author =       "Quan Fang and Changsheng Xu and M. Shamim Hossain and
                 G. Muhammad",
  title =        "{STCAPLRS}: a Spatial-Temporal Context-Aware
                 Personalized Location Recommendation System",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "59:1--59:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2842631",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Newly emerging location-based social media network
                 services (LBSMNS) provide valuable resources to
                 understand users' behaviors based on their location
                 histories. The location-based behaviors of a user are
                 generally influenced by both user intrinsic interest
                 and the location preference, and moreover are
                 spatial-temporal context dependent. In this article, we
                 propose a spatial-temporal context-aware personalized
                 location recommendation system (STCAPLRS), which offers
                 a particular user a set of location items such as
                 points of interest or venues (e.g., restaurants and
                 shopping malls) within a geospatial range by
                 considering personal interest, local preference, and
                 spatial-temporal context influence. STCAPLRS can make
                 accurate recommendation and facilitate people's local
                 visiting and new location exploration by exploiting the
                 context information of user behavior, associations
                 between users and location items, and the location and
                 content information of location items. Specifically,
                 STCAPLRS consists of two components: offline modeling
                 and online recommendation. The core module of the
                 offline modeling part is a context-aware regression
                 mixture model that is designed to model the
                 location-based user behaviors in LBSMNS to learn the
                 interest of each individual user, the local preference
                 of each individual location, and the context-aware
                 influence factors. The online recommendation part takes
                 a querying user along with the corresponding querying
                 spatial-temporal context as input and automatically
                 combines the learned interest of the querying user, the
                 local preference of the querying location, and the
                 context-aware influence factor to produce the top- k
                 recommendations. We evaluate the performance of
                 STCAPLRS on two real-world datasets: Dianping and
                 Foursquare. The results demonstrate the superiority of
                 STCAPLRS in recommending location items for users in
                 terms of both effectiveness and efficiency. Moreover,
                 the experimental analysis results also illustrate the
                 excellent interpretability of STCAPLRS.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xin:2016:EGF,
  author =       "Bo Xin and Yoshinobu Kawahara and Yizhou Wang and
                 Lingjing Hu and Wen Gao",
  title =        "Efficient Generalized Fused Lasso and Its
                 Applications",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "60:1--60:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2847421",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Generalized fused lasso (GFL) penalizes variables with
                 l$^1$ norms based both on the variables and their
                 pairwise differences. GFL is useful when applied to
                 data where prior information is expressed using a graph
                 over the variables. However, the existing GFL
                 algorithms incur high computational costs and do not
                 scale to high-dimensional problems. In this study, we
                 propose a fast and scalable algorithm for GFL. Based on
                 the fact that fusion penalty is the Lov{\'a}sz
                 extension of a cut function, we show that the key
                 building block of the optimization is equivalent to
                 recursively solving graph-cut problems. Thus, we use a
                 parametric flow algorithm to solve GFL in an efficient
                 manner. Runtime comparisons demonstrate a significant
                 speedup compared to existing GFL algorithms. Moreover,
                 the proposed optimization framework is very general; by
                 designing different cut functions, we also discuss the
                 extension of GFL to directed graphs. Exploiting the
                 scalability of the proposed algorithm, we demonstrate
                 the applications of our algorithm to the diagnosis of
                 Alzheimer's disease (AD) and video background
                 subtraction (BS). In the AD problem, we formulated the
                 diagnosis of AD as a GFL regularized classification.
                 Our experimental evaluations demonstrated that the
                 diagnosis performance was promising. We observed that
                 the selected critical voxels were well structured,
                 i.e., connected, consistent according to cross
                 validation, and in agreement with prior pathological
                 knowledge. In the BS problem, GFL naturally models
                 arbitrary foregrounds without predefined grouping of
                 the pixels. Even by applying simple background models,
                 e.g., a sparse linear combination of former frames, we
                 achieved state-of-the-art performance on several public
                 datasets.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Schulz:2016:MTN,
  author =       "Sarah Schulz and Guy {De Pauw} and Orph{\'e}e {De
                 Clercq} and Bart Desmet and V{\'e}ronique Hoste and
                 Walter Daelemans and Lieve Macken",
  title =        "Multimodular Text Normalization of {Dutch}
                 User-Generated Content",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "61:1--61:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2850422",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "As social media constitutes a valuable source for data
                 analysis for a wide range of applications, the need for
                 handling such data arises. However, the nonstandard
                 language used on social media poses problems for
                 natural language processing (NLP) tools, as these are
                 typically trained on standard language material. We
                 propose a text normalization approach to tackle this
                 problem. More specifically, we investigate the
                 usefulness of a multimodular approach to account for
                 the diversity of normalization issues encountered in
                 user-generated content (UGC). We consider three
                 different types of UGC written in Dutch (SNS, SMS, and
                 tweets) and provide a detailed analysis of the
                 performance of the different modules and the overall
                 system. We also apply an extrinsic evaluation by
                 evaluating the performance of a part-of-speech tagger,
                 lemmatizer, and named-entity recognizer before and
                 after normalization.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hegedus:2016:RDL,
  author =       "Istv{\'a}n Heged{\H{u}}s and {\'A}rp{\'a}d Berta and
                 Levente Kocsis and Andr{\'a}s A. Bencz{\'u}r and
                 M{\'a}rk Jelasity",
  title =        "Robust Decentralized Low-Rank Matrix Decomposition",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "62:1--62:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2854157",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Low-rank matrix approximation is an important tool in
                 data mining with a wide range of applications,
                 including recommender systems, clustering, and
                 identifying topics in documents. When the matrix to be
                 approximated originates from a large distributed
                 system, such as a network of mobile phones or smart
                 meters, a challenging problem arises due to the
                 strongly conflicting yet essential requirements of
                 efficiency, robustness, and privacy preservation. We
                 argue that although collecting sensitive data in a
                 centralized fashion may be efficient, it is not an
                 option when considering privacy and efficiency at the
                 same time. Thus, we do not allow any sensitive data to
                 leave the nodes of the network. The local information
                 at each node (personal attributes, documents, media
                 ratings, etc.) defines one row in the matrix. This
                 means that all computations have to be performed at the
                 edge of the network. Known parallel methods that
                 respect the locality constraint, such as synchronized
                 parallel gradient search or distributed iterative
                 methods, require synchronized rounds or have inherent
                 issues with load balancing, and thus they are not
                 robust to failure. Our distributed stochastic gradient
                 descent algorithm overcomes these limitations. During
                 the execution, any sensitive information remains local,
                 whereas the global features (e.g., the factor model of
                 movies) converge to the correct value at all nodes. We
                 present a theoretical derivation and a thorough
                 experimental evaluation of our algorithm. We
                 demonstrate that the convergence speed of our method is
                 competitive while not relying on synchronization and
                 being robust to extreme and realistic failure
                 scenarios. To demonstrate the feasibility of our
                 approach, we present trace-based simulations, real
                 smartphone user behavior analysis, and tests over real
                 movie recommender system data.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Luo:2016:TUA,
  author =       "Chen Luo and Jia Zeng and Mingxuan Yuan and Wenyuan
                 Dai and Qiang Yang",
  title =        "Telco User Activity Level Prediction with Massive
                 Mobile Broadband Data",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "63:1--63:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2856057",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Telecommunication (telco) operators aim to provide
                 users with optimized services and bandwidth in a timely
                 manner. The goal is to increase user experience while
                 retaining profit. To do this, knowing the changing
                 behavior patterns of users through their activity
                 levels in advance can be a great help for operators to
                 adjust their management strategies and reduce
                 operational risk. To achieve this goal, the operators
                 can make use of knowledge discovered from telco's
                 historical mobile broadband (MBB) records to predict
                 mobile access activity level at an early stage. In this
                 article, we report our research in a real-world telco
                 setting involving more than one million telco users.
                 Our novel contribution includes representing users as
                 documents containing a collection of changing
                 spatiotemporal ``words'' that express user behavior. By
                 extracting users' space-time access records in MBB
                 data, we use latent Dirichlet allocation (LDA) to learn
                 user-specific compact topic features for user activity
                 level prediction. We propose a scalable online
                 expectation-maximization (OEM) algorithm that can scale
                 LDA to massive MBB data, which is significantly faster
                 than several state-of-the-art online LDA algorithms.
                 Using these real-world MBB data, we confirm high
                 performance in user activity level prediction. In
                 addition, we show that the inferred topics indicate
                 that future activity level anomalies correlate highly
                 with early skewed bandwidth supply and demand
                 relations. Thus, our prediction system can also guide
                 the telco operators to balance the telecommunication
                 network in terms of supply-demand relations, saving
                 deployment costs and energy of cell towers in the
                 future.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2016:CFI,
  author =       "Senzhang Wang and Sihong Xie and Xiaoming Zhang and
                 Zhoujun Li and Philip S. Yu and Yueying He",
  title =        "Coranking the Future Influence of Multiobjects in
                 Bibliographic Network Through Mutual Reinforcement",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "64:1--64:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897371",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Scientific literature ranking is essential to help
                 researchers find valuable publications from a large
                 literature collection. Recently, with the prevalence of
                 webpage ranking algorithms such as PageRank and HITS,
                 graph-based algorithms have been widely used to
                 iteratively rank papers and researchers through the
                 networks formed by citation and coauthor relationships.
                 However, existing graph-based ranking algorithms mostly
                 focus on ranking the current importance of literature.
                 For researchers who enter an emerging research area,
                 they might be more interested in new papers and young
                 researchers that are likely to become influential in
                 the future, since such papers and researchers are more
                 helpful in letting them quickly catch up on the most
                 recent advances and find valuable research directions.
                 Meanwhile, although some works have been proposed to
                 rank the prestige of a certain type of objects with the
                 help of multiple networks formed of multiobjects, there
                 still lacks a unified framework to rank multiple types
                 of objects in the bibliographic network simultaneously.
                 In this article, we propose a unified ranking framework
                 MRCoRank to corank the future popularity of four types
                 of objects: papers, authors, terms, and venues through
                 mutual reinforcement. Specifically, because the
                 citation data of new publications are sparse and not
                 efficient to characterize their innovativeness, we make
                 the first attempt to extract the text features to help
                 characterize innovative papers and authors. With the
                 observation that the current trend is more indicative
                 of the future trend of citation and coauthor
                 relationships, we then construct time-aware weighted
                 graphs to quantify the importance of links established
                 at different times on both citation and coauthor
                 graphs. By leveraging both the constructed text
                 features and time-aware graphs, we finally fuse the
                 rich information in a mutual reinforcement ranking
                 framework to rank the future importance of multiobjects
                 simultaneously. We evaluate the proposed model through
                 extensive experiments on the ArnetMiner dataset
                 containing more than 1,500,000 papers. Experimental
                 results verify the effectiveness of MRCoRank in
                 coranking the future influence of multiobjects in a
                 bibliographic network.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2016:MLR,
  author =       "Teng Li and Bin Cheng and Bingbing Ni and Guangchan
                 Liu and Shuicheng Yan",
  title =        "Multitask Low-Rank Affinity Graph for Image
                 Segmentation and Image Annotation",
  journal =      j-TIST,
  volume =       "7",
  number =       "4",
  pages =        "65:1--65:??",
  month =        jul,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2856058",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:56 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article investigates a low-rank
                 representation--based graph, which can used in
                 graph-based vision tasks including image segmentation
                 and image annotation. It naturally fuses multiple types
                 of image features in a framework named multitask
                 low-rank affinity pursuit. Given the image patches
                 described with multiple types of features, we aim at
                 inferring a unified affinity matrix that implicitly
                 encodes the relations among these patches. This is
                 achieved by seeking the sparsity-consistent low-rank
                 affinities from the joint decompositions of multiple
                 feature matrices into pairs of sparse and low-rank
                 matrices, the latter of which is expressed as the
                 production of the image feature matrix and its
                 corresponding image affinity matrix. The inference
                 process is formulated as a minimization problem and
                 solved efficiently with the augmented Lagrange
                 multiplier method. Considering image patches as
                 vertices, a graph can be built based on the resulted
                 affinity matrix. Compared to previous methods, which
                 are usually based on a single type of feature, the
                 proposed method seamlessly integrates multiple types of
                 features to jointly produce the affinity matrix in a
                 single inference step. The proposed method is applied
                 to graph-based image segmentation and graph-based image
                 annotation. Experiments on benchmark datasets well
                 validate the superiority of using multiple features
                 over single feature and also the superiority of our
                 method over conventional methods for feature fusion.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Leskovec:2016:SGP,
  author =       "Jure Leskovec and Rok Sosic",
  title =        "{SNAP}: a General-Purpose Network Analysis and
                 Graph-Mining Library",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "1:1--1:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2898361",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Large networks are becoming a widely used abstraction
                 for studying complex systems in a broad set of
                 disciplines, ranging from social-network analysis to
                 molecular biology and neuroscience. Despite an
                 increasing need to analyze and manipulate large
                 networks, only a limited number of tools are available
                 for this task. Here, we describe the Stanford Network
                 Analysis Platform (SNAP), a general-purpose,
                 high-performance system that provides easy-to-use,
                 high-level operations for analysis and manipulation of
                 large networks. We present SNAP functionality, describe
                 its implementational details, and give performance
                 benchmarks. SNAP has been developed for single
                 big-memory machines, and it balances the trade-off
                 between maximum performance, compact in-memory graph
                 representation, and the ability to handle dynamic
                 graphs in which nodes and edges are being added or
                 removed over time. SNAP can process massive networks
                 with hundreds of millions of nodes and billions of
                 edges. SNAP offers over 140 different graph algorithms
                 that can efficiently manipulate large graphs, calculate
                 structural properties, generate regular and random
                 graphs, and handle attributes and metadata on nodes and
                 edges. Besides being able to handle large graphs, an
                 additional strength of SNAP is that networks and their
                 attributes are fully dynamic; they can be modified
                 during the computation at low cost. SNAP is provided as
                 an open-source library in C++ as well as a module in
                 Python. We also describe the Stanford Large Network
                 Dataset, a set of social and information real-world
                 networks and datasets, which we make publicly
                 available. The collection is a complementary resource
                 to our SNAP software and is widely used for development
                 and benchmarking of graph analytics algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Phan:2016:TAP,
  author =       "Nhathai Phan and Javid Ebrahimi and David Kil and
                 Brigitte Piniewski and Dejing Dou",
  title =        "Topic-Aware Physical Activity Propagation with
                 Temporal Dynamics in a Health Social Network",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "2:1--2:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2873066",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Modeling physical activity propagation, such as
                 activity level and intensity, is a key to preventing
                 obesity from cascading through communities, and to
                 helping spread wellness and healthy behavior in a
                 social network. However, there have not been enough
                 scientific and quantitative studies to elucidate how
                 social communication may deliver physical activity
                 interventions. In this work, we introduce a novel model
                 named Topic-aware Community-level Physical Activity
                 Propagation with Temporal Dynamics (TCPT) to analyze
                 physical activity propagation and social influence at
                 different granularities (i.e., individual level and
                 community level). Given a social network, the TCPT
                 model first integrates the correlations between the
                 content of social communication, social influences, and
                 temporal dynamics. Then, a hierarchical approach is
                 utilized to detect a set of communities and their
                 reciprocal influence strength of physical activities.
                 The experimental evaluation shows not only the
                 effectiveness of our approach but also the correlation
                 of the detected communities with various health outcome
                 measures. Our promising results pave a way for
                 knowledge discovery in health social networks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Doucette:2016:MRA,
  author =       "John A. Doucette and Graham Pinhey and Robin Cohen",
  title =        "Multiagent Resource Allocation for Dynamic Task
                 Arrivals with Preemption",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "3:1--3:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2875441",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we present a distributed algorithm
                 for allocating resources to tasks in multiagent
                 systems, one that adapts well to dynamic task arrivals
                 where new work arises at short notice. Our algorithm is
                 designed to leverage preemption if it is available,
                 revoking resource allocations to tasks in progress if
                 new opportunities arise that those resources are better
                 suited to handle. Our multiagent model assigns a task
                 agent to each task that must be completed and a proxy
                 agent to each resource that is available. Preemption
                 occurs when a task agent approaches a proxy agent with
                 a sufficiently compelling need that the proxy agent
                 determines the newcomer derives more benefit from the
                 proxy agent's resource than the task agent currently
                 using that resource. Task agents reason about which
                 resources to request based on a learning of churn and
                 congestion. We compare to a well-established multiagent
                 resource allocation framework that permits preemption
                 under more conservative assumptions and show through
                 simulation that our model allows for improved
                 allocations through more permissive preemption. In all,
                 we offer a novel approach for multiagent resource
                 allocation that is able to cope well with dynamic task
                 arrivals.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ganesan:2016:DSC,
  author =       "Rajesh Ganesan and Sushil Jajodia and Ankit Shah and
                 Hasan Cam",
  title =        "Dynamic Scheduling of Cybersecurity Analysts for
                 Minimizing Risk Using Reinforcement Learning",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "4:1--4:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2882969",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "An important component of the cyber-defense mechanism
                 is the adequate staffing levels of its cybersecurity
                 analyst workforce and their optimal assignment to
                 sensors for investigating the dynamic alert traffic.
                 The ever-increasing cybersecurity threats faced by
                 today's digital systems require a strong cyber-defense
                 mechanism that is both reactive in its response to
                 mitigate the known risk and proactive in being prepared
                 for handling the unknown risks. In order to be
                 proactive for handling the unknown risks, the above
                 workforce must be scheduled dynamically so the system
                 is adaptive to meet the day-to-day stochastic demands
                 on its workforce (both size and expertise mix). The
                 stochastic demands on the workforce stem from the
                 varying alert generation and their significance rate,
                 which causes an uncertainty for the cybersecurity
                 analyst scheduler that is attempting to schedule
                 analysts for work and allocate sensors to analysts.
                 Sensor data are analyzed by automatic processing
                 systems, and alerts are generated. A portion of these
                 alerts is categorized to be significant, which requires
                 thorough examination by a cybersecurity analyst. Risk,
                 in this article, is defined as the percentage of
                 significant alerts that are not thoroughly analyzed by
                 analysts. In order to minimize risk, it is imperative
                 that the cyber-defense system accurately estimates the
                 future significant alert generation rate and
                 dynamically schedules its workforce to meet the
                 stochastic workload demand to analyze them. The article
                 presents a reinforcement learning-based stochastic
                 dynamic programming optimization model that
                 incorporates the above estimates of future alert rates
                 and responds by dynamically scheduling cybersecurity
                 analysts to minimize risk (i.e., maximize significant
                 alert coverage by analysts) and maintain the risk under
                 a pre-determined upper bound. The article tests the
                 dynamic optimization model and compares the results to
                 an integer programming model that optimizes the static
                 staffing needs based on a daily-average alert
                 generation rate with no estimation of future alert
                 rates (static workforce model). Results indicate that
                 over a finite planning horizon, the learning-based
                 optimization model, through a dynamic (on-call)
                 workforce in addition to the static workforce, (a) is
                 capable of balancing risk between days and reducing
                 overall risk better than the static model, (b) is
                 scalable and capable of identifying the quantity and
                 the right mix of analyst expertise in an organization,
                 and (c) is able to determine their dynamic (on-call)
                 schedule and their sensor-to-analyst allocation in
                 order to maintain risk below a given upper bound.
                 Several meta-principles are presented, which are
                 derived from the optimization model, and they further
                 serve as guiding principles for hiring and scheduling
                 cybersecurity analysts. Days-off scheduling was
                 performed to determine analyst weekly work schedules
                 that met the cybersecurity system's workforce
                 constraints and requirements.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Belcastro:2016:USD,
  author =       "Loris Belcastro and Fabrizio Marozzo and Domenico
                 Talia and Paolo Trunfio",
  title =        "Using Scalable Data Mining for Predicting Flight
                 Delays",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "5:1--5:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2888402",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Flight delays are frequent all over the world (about
                 20\% of airline flights arrive more than 15min late)
                 and they are estimated to have an annual cost of
                 billions of dollars. This scenario makes the prediction
                 of flight delays a primary issue for airlines and
                 travelers. The main goal of this work is to implement a
                 predictor of the arrival delay of a scheduled flight
                 due to weather conditions. The predicted arrival delay
                 takes into consideration both flight information
                 (origin airport, destination airport, scheduled
                 departure and arrival time) and weather conditions at
                 origin airport and destination airport according to the
                 flight timetable. Airline flight and weather
                 observation datasets have been analyzed and mined using
                 parallel algorithms implemented as MapReduce programs
                 executed on a Cloud platform. The results show a high
                 accuracy in predicting delays above a given threshold.
                 For instance, with a delay threshold of 15min, we
                 achieve an accuracy of 74.2\% and 71.8\% recall on
                 delayed flights, while with a threshold of 60min, the
                 accuracy is 85.8\% and the delay recall is 86.9\%.
                 Furthermore, the experimental results demonstrate the
                 predictor scalability that can be achieved performing
                 data preparation and mining tasks as MapReduce
                 applications on the Cloud.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2016:RPG,
  author =       "Tianben Wang and Zhu Wang and Daqing Zhang and Tao Gu
                 and Hongbo Ni and Jiangbo Jia and Xingshe Zhou and Jing
                 Lv",
  title =        "Recognizing {Parkinsonian} Gait Pattern by Exploiting
                 Fine-Grained Movement Function Features",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "6:1--6:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2890511",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Parkinson's disease (PD) is one of the typical
                 movement disorder diseases among elderly people, which
                 has a serious impact on their daily lives. In this
                 article, we propose a novel computation framework to
                 recognize gait patterns in patients with PD. The key
                 idea of our approach is to distinguish gait patterns in
                 PD patients from healthy individuals by accurately
                 extracting gait features that capture all three aspects
                 of movement functions, that is, stability, symmetry,
                 and harmony. The proposed framework contains three
                 steps: gait phase discrimination, feature extraction
                 and selection, and pattern classification. In the first
                 step, we put forward a sliding window--based method to
                 discriminate four gait phases from plantar pressure
                 data. Based on the gait phases, we extract and select
                 gait features that characterize stability, symmetry,
                 and harmony of movement functions. Finally, we
                 recognize PD gait patterns by applying a hybrid
                 classification model. We evaluate the framework using
                 an open dataset that contains real plantar pressure
                 data of 93 PD patients and 72 healthy individuals.
                 Experimental results demonstrate that our framework
                 significantly outperforms the four baseline
                 approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Towne:2016:MSS,
  author =       "W. Ben Towne and Carolyn P. Ros{\'e} and James D.
                 Herbsleb",
  title =        "Measuring Similarity Similarly: {LDA} and Human
                 Perception",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "7:1--7:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2890510",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Several intelligent technologies designed to improve
                 navigability in and digestibility of text corpora use
                 topic modeling such as the state-of-the-art Latent
                 Dirichlet Allocation (LDA). This model and variants on
                 it provide lower-dimensional document representations
                 used in visualizations and in computing similarity
                 between documents. This article contributes a method
                 for validating such algorithms against human
                 perceptions of similarity, especially applicable to
                 contexts in which the algorithm is intended to support
                 navigability between similar documents via dynamically
                 generated hyperlinks. Such validation enables
                 researchers to ground their methods in context of
                 intended use instead of relying on assumptions of fit.
                 In addition to the methodology, this article presents
                 the results of an evaluation using a corpus of short
                 documents and the LDA algorithm. We also present some
                 analysis of potential causes of differences between
                 cases in which this model matches human perceptions of
                 similarity more or less well.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jiang:2016:CCS,
  author =       "Yexi Jiang and Chang-Shing Perng and Anca Sailer and
                 Ignacio Silva-Lepe and Yang Zhou and Tao Li",
  title =        "{CSM}: a Cloud Service Marketplace for Complex Service
                 Acquisition",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "8:1--8:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2894759",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The cloud service marketplace (CSM) is an exploratory
                 project aiming to provide ``an AppStore for Services.''
                 It is an intelligent online marketplace that
                 facilitates service discovery and acquisition for
                 enterprise customers. Traditional service discovery and
                 acquisition are time-consuming. In the era of OneClick
                 Checkout and pay-as-you-go service plans, users expect
                 services to be purchased online efficiently and
                 conveniently. However, as services are complex and
                 different from software apps, the currently prevailing
                 App Store based on keyword search is inadequate for
                 services. In CSM, exploring and configuring services
                 are an iterative process. Customers provide their
                 requirements in natural language and interact with the
                 system through questioning and answering. Learning from
                 the input, the system can incrementally clarify users'
                 intention, narrow down the candidate services, and
                 profile the configuration information for the
                 candidates at the same time. CSM's back end is built
                 around the Services Knowledge Graph (SKG) and leverages
                 data mining technologies to enable the semantic
                 understanding of customers' requirements. To
                 quantitatively assess the value of CSM, empirical
                 evaluation on real and synthetic datasets and case
                 studies are given to demonstrate the efficacy and
                 effectiveness of the proposed system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{DiNoia:2016:SSP,
  author =       "Tommaso {Di Noia} and Vito Claudio Ostuni and Paolo
                 Tomeo and Eugenio {Di Sciascio}",
  title =        "{SPrank}: Semantic Path-Based Ranking for Top-{$N$}
                 Recommendations Using Linked Open Data",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "9:1--9:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2899005",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In most real-world scenarios, the ultimate goal of
                 recommender system applications is to suggest a short
                 ranked list of items, namely top- N recommendations,
                 that will appeal to the end user. Often, the problem of
                 computing top- N recommendations is mainly tackled with
                 a two-step approach. The system focuses first on
                 predicting the unknown ratings, which are eventually
                 used to generate a ranked recommendation list.
                 Actually, the top- N recommendation task can be
                 directly seen as a ranking problem where the main goal
                 is not to accurately predict ratings but to directly
                 find the best-ranked list of items to recommend. In
                 this article we present SPrank, a novel hybrid
                 recommendation algorithm able to compute top- N
                 recommendations exploiting freely available knowledge
                 in the Web of Data. In particular, we employ DBpedia, a
                 well-known encyclopedic knowledge base in the Linked
                 Open Data cloud, to extract semantic path-based
                 features and to eventually compute top- N
                 recommendations in a learning-to-rank fashion.
                 Experiments with three datasets related to different
                 domains (books, music, and movies) prove the
                 effectiveness of our approach compared to
                 state-of-the-art recommendation algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cheng:2016:UPI,
  author =       "Chen Cheng and Haiqin Yang and Irwin King and Michael
                 R. Lyu",
  title =        "A Unified Point-of-Interest Recommendation Framework
                 in Location-Based Social Networks",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "10:1--10:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2901299",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Location-based social networks (LBSNs), such as
                 Gowalla, Facebook, Foursquare, Brightkite, and so on,
                 have attracted millions of users to share their social
                 friendship and their locations via check-ins in the
                 past few years. Plenty of valuable information is
                 accumulated based on the check-in behaviors, which
                 makes it possible to learn users' moving patterns as
                 well as their preferences. In LBSNs, point-of-interest
                 (POI) recommendation is one of the most significant
                 tasks because it can help targeted users explore their
                 surroundings as well as help third-party developers
                 provide personalized services. Matrix factorization is
                 a promising method for this task because it can capture
                 users' preferences to locations and is widely adopted
                 in traditional recommender systems such as movie
                 recommendation. However, the sparsity of the check-in
                 data makes it difficult to capture users' preferences
                 accurately. Geographical influence can help alleviate
                 this problem and have a large impact on the final
                 recommendation result. By studying users' moving
                 patterns, we find that users tend to check in around
                 several centers and different users have different
                 numbers of centers. Based on this, we propose a
                 Multi-center Gaussian Model (MGM) to capture this
                 pattern via modeling the probability of a user's
                 check-in on a location. Moreover, users are usually
                 more interested in the top 20 or even top 10
                 recommended POIs, which makes personalized ranking
                 important in this task. From previous work, directly
                 optimizing for pairwise ranking like Bayesian
                 Personalized Ranking (BPR) achieves better performance
                 in the top- k recommendation than directly using matrix
                 matrix factorization that aims to minimize the
                 point-wise rating error. To consider users'
                 preferences, geographical influence and personalized
                 ranking, we propose a unified POI recommendation
                 framework, which unifies all of them together.
                 Specifically, we first fuse MGM with matrix
                 factorization methods and further with BPR using two
                 different approaches. We conduct experiments on Gowalla
                 and Foursquare datasets, which are two large-scale
                 real-world LBSN datasets publicly available online. The
                 results on both datasets show that our unified POI
                 recommendation framework can produce better
                 performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Deng:2016:EKL,
  author =       "Zhaohong Deng and Yizhang Jiang and Hisao Ishibuchi
                 and Kup-Sze Choi and Shitong Wang",
  title =        "Enhanced Knowledge-Leverage-Based {TSK} Fuzzy System
                 Modeling for Inductive Transfer Learning",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "11:1--11:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2903725",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The knowledge-leverage-based Takagi--Sugeno--Kang
                 fuzzy system (KL-TSK-FS) modeling method has shown
                 promising performance for fuzzy modeling tasks where
                 transfer learning is required. However, the
                 knowledge-leverage mechanism of the KL-TSK-FS can be
                 further improved. This is because available training
                 data in the target domain are not utilized for the
                 learning of antecedents and the knowledge transfer
                 mechanism from a source domain to the target domain is
                 still too simple for the learning of consequents when a
                 Takagi--Sugeno--Kang fuzzy system (TSK-FS) model is
                 trained in the target domain. The proposed method, that
                 is, the enhanced KL-TSK-FS (EKL-TSK-FS), has two
                 knowledge-leverage strategies for enhancing the
                 parameter learning of the TSK-FS model for the target
                 domain using available information from the source
                 domain. One strategy is used for the learning of
                 antecedent parameters, while the other is for
                 consequent parameters. It is demonstrated that the
                 proposed EKL-TSK-FS has higher transfer learning
                 abilities than the KL-TSK-FS. In addition, the
                 EKL-TSK-FS has been further extended for the scene of
                 the multisource domain.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{He:2016:STT,
  author =       "Tieke He and Hongzhi Yin and Zhenyu Chen and Xiaofang
                 Zhou and Shazia Sadiq and Bin Luo",
  title =        "A Spatial-Temporal Topic Model for the Semantic
                 Annotation of {POIs} in {LBSNs}",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "12:1--12:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2905373",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Semantic tags of points of interest (POIs) are a
                 crucial prerequisite for location search,
                 recommendation services, and data cleaning. However,
                 most POIs in location-based social networks (LBSNs) are
                 either tag-missing or tag-incomplete. This article aims
                 to develop semantic annotation techniques to
                 automatically infer tags for POIs. We first analyze two
                 LBSN datasets and observe that there are two types of
                 tags, category-related ones and sentimental ones, which
                 have unique characteristics. Category-related tags are
                 hierarchical, whereas sentimental ones are
                 category-aware. All existing related work has adopted
                 classification methods to predict high-level
                 category-related tags in the hierarchy, but they cannot
                 apply to infer either low-level category tags or
                 sentimental ones. In light of this, we propose a
                 latent-class probabilistic generative model, namely the
                 spatial-temporal topic model (STM), to infer personal
                 interests, the temporal and spatial patterns of
                 topics/semantics embedded in users' check-in
                 activities, the interdependence between category-topic
                 and sentiment-topic, and the correlation between
                 sentimental tags and rating scores from users' check-in
                 and rating behaviors. Then, this learned knowledge is
                 utilized to automatically annotate all POIs with both
                 category-related and sentimental tags in a unified way.
                 We conduct extensive experiments to evaluate the
                 performance of the proposed STM on a real large-scale
                 dataset. The experimental results show the superiority
                 of our proposed STM, and we also observe that the real
                 challenge of inferring category-related tags for POIs
                 lies in the low-level ones of the hierarchy and that
                 the challenge of predicting sentimental tags are those
                 with neutral ratings.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sintsova:2016:DDS,
  author =       "Valentina Sintsova and Pearl Pu",
  title =        "Dystemo: Distant Supervision Method for Multi-Category
                 Emotion Recognition in Tweets",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "13:1--13:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2912147",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Emotion recognition in text has become an important
                 research objective. It involves building classifiers
                 capable of detecting human emotions for a specific
                 application, for example, analyzing reactions to
                 product launches, monitoring emotions at sports events,
                 or discerning opinions in political debates. Most
                 successful approaches rely heavily on costly manual
                 annotation. To alleviate this burden, we propose a
                 distant supervision method-Dystemo-for automatically
                 producing emotion classifiers from tweets labeled using
                 existing or easy-to-produce emotion lexicons. The goal
                 is to obtain emotion classifiers that work more
                 accurately for specific applications than available
                 emotion lexicons. The success of this method depends
                 mainly on a novel classifier-Balanced Weighted Voting
                 (BWV)-designed to overcome the imbalance in emotion
                 distribution in the initial dataset, and on novel
                 heuristics for detecting neutral tweets. We demonstrate
                 how Dystemo works using Twitter data about sports
                 events, a fine-grained 20-category emotion model, and
                 three different initial emotion lexicons. Through a
                 series of carefully designed experiments, we confirm
                 that Dystemo is effective both in extending initial
                 emotion lexicons of small coverage to find correctly
                 more emotional tweets and in correcting emotion
                 lexicons of low accuracy to perform more accurately.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Nanni:2016:DPC,
  author =       "Mirco Nanni and Roberto Trasarti and Anna Monreale and
                 Valerio Grossi and Dino Pedreschi",
  title =        "Driving Profiles Computation and Monitoring for Car
                 Insurance {CRM}",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "14:1--14:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2912148",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Customer segmentation is one of the most traditional
                 and valued tasks in customer relationship management
                 (CRM). In this article, we explore the problem in the
                 context of the car insurance industry, where the
                 mobility behavior of customers plays a key role:
                 Different mobility needs, driving habits, and skills
                 imply also different requirements (level of coverage
                 provided by the insurance) and risks (of accidents). In
                 the present work, we describe a methodology to extract
                 several indicators describing the driving profile of
                 customers, and we provide a clustering-oriented
                 instantiation of the segmentation problem based on such
                 indicators. Then, we consider the availability of a
                 continuous flow of fresh mobility data sent by the
                 circulating vehicles, aiming at keeping our segments
                 constantly up to date. We tackle a major scalability
                 issue that emerges in this context when the number of
                 customers is large-namely, the communication
                 bottleneck-by proposing and implementing a
                 sophisticated distributed monitoring solution that
                 reduces communications between vehicles and company
                 servers to the essential. We validate the framework on
                 a large database of real mobility data coming from GPS
                 devices on private cars. Finally, we analyze the
                 privacy risks that the proposed approach might involve
                 for the users, providing and evaluating a
                 countermeasure based on data perturbation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2016:SCW,
  author =       "Jialei Wang and Peilin Zhao and Steven C. H. Hoi",
  title =        "Soft Confidence-Weighted Learning",
  journal =      j-TIST,
  volume =       "8",
  number =       "1",
  pages =        "15:1--15:??",
  month =        oct,
  year =         "2016",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2932193",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Online learning plays an important role in many big
                 data mining problems because of its high efficiency and
                 scalability. In the literature, many online learning
                 algorithms using gradient information have been applied
                 to solve online classification problems. Recently, more
                 effective second-order algorithms have been proposed,
                 where the correlation between the features is utilized
                 to improve the learning efficiency. Among them,
                 Confidence-Weighted (CW) learning algorithms are very
                 effective, which assume that the classification model
                 is drawn from a Gaussian distribution, which enables
                 the model to be effectively updated with the
                 second-order information of the data stream. Despite
                 being studied actively, these CW algorithms cannot
                 handle nonseparable datasets and noisy datasets very
                 well. In this article, we propose a family of Soft
                 Confidence-Weighted (SCW) learning algorithms for both
                 binary classification and multiclass classification
                 tasks, which is the first family of online
                 classification algorithms that enjoys four salient
                 properties simultaneously: (1) large margin training,
                 (2) confidence weighting, (3) capability to handle
                 nonseparable data, and (4) adaptive margin. Our
                 experimental results show that the proposed SCW
                 algorithms significantly outperform the original CW
                 algorithm. When comparing with a variety of
                 state-of-the-art algorithms (including AROW, NAROW, and
                 NHERD), we found that SCW in general achieves better or
                 at least comparable predictive performance, but enjoys
                 considerably better efficiency advantage (i.e., using a
                 smaller number of updates and lower time cost). To
                 facilitate future research, we release all the datasets
                 and source code to the public at
                 http://libol.stevenhoi.org/.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Papalexakis:2017:TDM,
  author =       "Evangelos E. Papalexakis and Christos Faloutsos and
                 Nicholas D. Sidiropoulos",
  title =        "Tensors for Data Mining and Data Fusion: Models,
                 Applications, and Scalable Algorithms",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "16:1--16:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2915921",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Tensors and tensor decompositions are very powerful
                 and versatile tools that can model a wide variety of
                 heterogeneous, multiaspect data. As a result, tensor
                 decompositions, which extract useful latent information
                 out of multiaspect data tensors, have witnessed
                 increasing popularity and adoption by the data mining
                 community. In this survey, we present some of the most
                 widely used tensor decompositions, providing the key
                 insights behind them, and summarizing them from a
                 practitioner's point of view. We then provide an
                 overview of a very broad spectrum of applications where
                 tensors have been instrumental in achieving
                 state-of-the-art performance, ranging from social
                 network analysis to brain data analysis, and from web
                 mining to healthcare. Subsequently, we present recent
                 algorithmic advances in scaling tensor decompositions
                 up to today's big data, outlining the existing systems
                 and summarizing the key ideas behind them. Finally, we
                 conclude with a list of challenges and open problems
                 that outline exciting future research directions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Schedl:2017:IIM,
  author =       "Markus Schedl and Yi-Hsuan Yang and Perfecto
                 Herrera-Boyer",
  title =        "Introduction to Intelligent Music Systems and
                 Applications",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "17:1--17:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2991468",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Intelligent technologies have become an essential part
                 of music systems and applications. This is evidenced by
                 today's omnipresence of digital online music stores and
                 streaming services, which rely on music recommenders,
                 automatic playlist generators, and music browsing
                 interfaces. A large amount of research leading to
                 intelligent music applications deals with the
                 extraction of musical and acoustic information directly
                 from the audio signal using signal processing
                 techniques. Other strategies exploit contextual aspects
                 of music, not present in the signal, for example,
                 community meta-data and trails of user interaction, as
                 found, for instance, on social media platforms. In this
                 editorial, we discuss the notion of ``intelligent music
                 system'' and give an overview of the papers selected to
                 this special issue.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Pachet:2017:JOA,
  author =       "Fran{\c{c}}ois Pachet",
  title =        "A Joyful Ode to Automatic Orchestration",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "18:1--18:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2897738",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Most works in automatic music generation have
                 addressed so far specific tasks. Such a reductionist
                 approach has been extremely successful and some of
                 these tasks have been solved once and for all. However,
                 few works have addressed the issue of generating
                 automatically fully fledged music material, of
                 human-level quality. In this article, we report on a
                 specific experiment in holistic music generation: the
                 reorchestration of Beethoven's Ode to Joy, the European
                 anthem, in seven styles. These reorchestrations were
                 produced with algorithms developed in the Flow Machines
                 project and within a short time frame. We stress the
                 benefits of having had such a challenging and unifying
                 goal, and the interesting problems and challenges it
                 raised along the way.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Widmer:2017:GCE,
  author =       "Gerhard Widmer",
  title =        "Getting Closer to the Essence of Music: The Con
                 Espressione Manifesto",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "19:1--19:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2899004",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This text offers a personal and very subjective view
                 on the current situation of Music Information Research
                 (MIR). Motivated by the desire to build systems with a
                 somewhat deeper understanding of music than the ones we
                 currently have, I try to sketch a number of challenges
                 for the next decade of MIR research, grouped around six
                 simple truths about music that are probably generally
                 agreed on but often ignored in everyday research.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Schindler:2017:HMR,
  author =       "Alexander Schindler and Andreas Rauber",
  title =        "Harnessing Music-Related Visual Stereotypes for Music
                 Information Retrieval",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "20:1--20:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2926719",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Over decades, music labels have shaped easily
                 identifiable genres to improve recognition value and
                 subsequently market sales of new music acts. Referring
                 to print magazines and later to music television as
                 important distribution channels, the visual
                 representation thus played and still plays a
                 significant role in music marketing. Visual stereotypes
                 developed over decades that enable us to quickly
                 identify referenced music only by sight without
                 listening. Despite the richness of music-related visual
                 information provided by music videos and album covers
                 as well as T-shirts, advertisements, and magazines,
                 research towards harnessing this information to advance
                 existing or approach new problems of music retrieval or
                 recommendation is scarce or missing. In this article,
                 we present our research on visual music computing that
                 aims to extract stereotypical music-related visual
                 information from music videos. To provide comprehensive
                 and reproducible results, we present the Music Video
                 Dataset, a thoroughly assembled suite of datasets with
                 dedicated evaluation tasks that are aligned to current
                 Music Information Retrieval tasks. Based on this
                 dataset, we provide evaluations of conventional
                 low-level image processing and affect-related features
                 to provide an overview of the expressiveness of
                 fundamental visual properties such as color,
                 illumination, and contrasts. Further, we introduce a
                 high-level approach based on visual concept detection
                 to facilitate visual stereotypes. This approach
                 decomposes the semantic content of music video frames
                 into concrete concepts such as vehicles, tools, and so
                 on, defined in a wide visual vocabulary. Concepts are
                 detected using convolutional neural networks and their
                 frequency distributions as semantic descriptions for a
                 music video. Evaluations showed that these descriptions
                 show good performance in predicting the music genre of
                 a video and even outperform audio-content descriptors
                 on cross-genre thematic tags. Further, highly
                 significant performance improvements were observed by
                 augmenting audio-based approaches through the
                 introduced visual approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Oramas:2017:SMR,
  author =       "Sergio Oramas and Vito Claudio Ostuni and Tommaso {Di
                 Noia} and Xavier Serra and Eugenio {Di Sciascio}",
  title =        "Sound and Music Recommendation with Knowledge Graphs",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "21:1--21:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2926718",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The Web has moved, slowly but steadily, from a
                 collection of documents towards a collection of
                 structured data. Knowledge graphs have then emerged as
                 a way of representing the knowledge encoded in such
                 data as well as a tool to reason on them in order to
                 extract new and implicit information. Knowledge graphs
                 are currently used, for example, to explain search
                 results, to explore knowledge spaces, to semantically
                 enrich textual documents, or to feed
                 knowledge-intensive applications such as recommender
                 systems. In this work, we describe how to create and
                 exploit a knowledge graph to supply a hybrid
                 recommendation engine with information that builds on
                 top of a collections of documents describing musical
                 and sound items. Tags and textual descriptions are
                 exploited to extract and link entities to external
                 graphs such as WordNet and DBpedia, which are in turn
                 used to semantically enrich the initial data. By means
                 of the knowledge graph we build, recommendations are
                 computed using a feature combination hybrid approach.
                 Two explicit graph feature mappings are formulated to
                 obtain meaningful item feature representations able to
                 catch the knowledge embedded in the graph. Those
                 content features are further combined with additional
                 collaborative information deriving from implicit user
                 feedback. An extensive evaluation on historical data is
                 performed over two different datasets: a dataset of
                 sounds composed of tags, textual descriptions, and
                 user's download information gathered from Freesound.org
                 and a dataset of songs that mixes song textual
                 descriptions with tags and user's listening habits
                 extracted from Songfacts.com and Last.fm, respectively.
                 Results show significant improvements with respect to
                 state-of-the-art collaborative algorithms in both
                 datasets. In addition, we show how the semantic
                 expansion of the initial descriptions helps in
                 achieving much better recommendation quality in terms
                 of aggregated diversity and novelty.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rodriguez-Serrano:2017:TDA,
  author =       "Francisco Jose Rodriguez-Serrano and Julio Jose
                 Carabias-Orti and Pedro Vera-Candeas and Damian
                 Martinez-Munoz",
  title =        "Tempo Driven Audio-to-Score Alignment Using Spectral
                 Decomposition and Online Dynamic Time Warping",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "22:1--22:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2926717",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we present an online score following
                 framework designed to deal with automatic
                 accompaniment. The proposed framework is based on
                 spectral factorization and online Dynamic Time Warping
                 (DTW) and has two separated stages: preprocessing and
                 alignment. In the first one, we convert the score into
                 a reference audio signal using a MIDI synthesizer
                 software and we analyze the provided information in
                 order to obtain the spectral patterns (i.e., basis
                 functions) associated to each score unit. In this work,
                 a score unit represents the occurrence of concurrent or
                 isolated notes in the score. These spectral patterns
                 are learned from the synthetic MIDI signal using a
                 method based on Non-negative Matrix Factorization (NMF)
                 with Beta-divergence, where the gains are initialized
                 as the ground-truth transcription inferred from the
                 MIDI. On the second stage, a non-iterative signal
                 decomposition method with fixed spectral patterns per
                 score unit is used over the magnitude spectrogram of
                 the input signal resulting in a distortion matrix that
                 can be interpreted as the cost of the matching for each
                 score unit at each frame. Finally, the relation between
                 the performance and the musical score times is obtained
                 using a strategy based on online DTW, where the optimal
                 path is biased by the speed of interpretation. Our
                 system has been evaluated and compared to other
                 systems, yielding reliable results and performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tian:2017:TMS,
  author =       "Mi Tian and Mark B. Sandler",
  title =        "Towards Music Structural Segmentation across Genres:
                 Features, Structural Hypotheses, and Annotation
                 Principles",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "23:1--23:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2950066",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article faces the problem of how different audio
                 features and segmentation methods work with different
                 music genres. A new annotated corpus of Chinese
                 traditional Jingju music is presented. We incorporate
                 this dataset with two existing music datasets from the
                 literature in an integrated retrieval system to
                 evaluate existing features, structural hypotheses, and
                 segmentation algorithms outside a Western bias. A
                 harmonic-percussive source separation technique is
                 introduced to the feature extraction process and brings
                 significant improvement to the segmentation. Results
                 show that different features capture the structural
                 patterns of different music genres in different ways.
                 Novelty- or homogeneity-based segmentation algorithms
                 and timbre features can surpass the investigated
                 alternatives for the structure analysis of Jingju due
                 to their lack of harmonic repetition patterns. Findings
                 indicate that the design of audio features and
                 segmentation algorithms as well as the consideration of
                 contextual information related to the music corpora
                 should be accounted dependently in an effective
                 segmentation system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sandouk:2017:LCM,
  author =       "Ubai Sandouk and Ke Chen",
  title =        "Learning Contextualized Music Semantics from Tags Via
                 a {Siamese} Neural Network",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "24:1--24:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2953886",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Music information retrieval faces a challenge in
                 modeling contextualized musical concepts formulated by
                 a set of co-occurring tags. In this article, we
                 investigate the suitability of our recently proposed
                 approach based on a Siamese neural network in fighting
                 off this challenge. By means of tag features and
                 probabilistic topic models, the network captures
                 contextualized semantics from tags via unsupervised
                 learning. This leads to a distributed semantics space
                 and a potential solution to the out of vocabulary
                 problem, which has yet to be sufficiently addressed. We
                 explore the nature of the resultant music-based
                 semantics and address computational needs. We conduct
                 experiments on three public music tag
                 collections-namely, CAL500, MagTag5K and Million Song
                 Dataset-and compare our approach to a number of
                 state-of-the-art semantics learning approaches.
                 Comparative results suggest that this approach
                 outperforms previous approaches in terms of semantic
                 priming and music tag completion.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Marrella:2017:IPA,
  author =       "Andrea Marrella and Massimo Mecella and Sebastian
                 Sardina",
  title =        "Intelligent Process Adaptation in the {SmartPM}
                 System",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "25:1--25:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2948071",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The increasing application of process-oriented
                 approaches in new challenging dynamic domains beyond
                 business computing (e.g., healthcare, emergency
                 management, factories of the future, home automation,
                 etc.) has led to reconsider the level of flexibility
                 and support required to manage complex
                 knowledge-intensive processes in such domains. A
                 knowledge-intensive process is influenced by user
                 decision making and coupled with contextual data and
                 knowledge production, and involves performing complex
                 tasks in the ``physical'' real world to achieve a
                 common goal. The physical world, however, is not
                 entirely predictable, and knowledge-intensive processes
                 must be robust to unexpected conditions and adaptable
                 to unanticipated exceptions, recognizing that in
                 real-world environments it is not adequate to assume
                 that all possible recovery activities can be predefined
                 for dealing with the exceptions that can ensue. To
                 tackle this issue, in this paper we present SmartPM, a
                 model and a prototype Process Management System
                 featuring a set of techniques providing support for
                 automated adaptation of knowledge-intensive processes
                 at runtime. Such techniques are able to automatically
                 adapt process instances when unanticipated exceptions
                 occur, without explicitly defining policies to recover
                 from exceptions and without the intervention of domain
                 experts at runtime, aiming at reducing error-prone and
                 costly manual ad-hoc changes, and thus at relieving
                 users from complex adaptations tasks. To accomplish
                 this, we make use of well-established techniques and
                 frameworks from Artificial Intelligence, such as
                 situation calculus, IndiGolog and classical planning.
                 The approach, which is backed by a formal model, has
                 been implemented and validated with a case study based
                 on real knowledge-intensive processes coming from an
                 emergency management domain.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ramamohanarao:2017:SSM,
  author =       "Kotagiri Ramamohanarao and Hairuo Xie and Lars Kulik
                 and Shanika Karunasekera and Egemen Tanin and Rui Zhang
                 and Eman Bin Khunayn",
  title =        "{SMARTS}: Scalable Microscopic Adaptive Road Traffic
                 Simulator",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "26:1--26:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2898363",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Microscopic traffic simulators are important tools for
                 studying transportation systems as they describe the
                 evolution of traffic to the highest level of detail. A
                 major challenge to microscopic simulators is the slow
                 simulation speed due to the complexity of traffic
                 models. We have developed the Scalable Microscopic
                 Adaptive Road Traffic Simulator (SMARTS), a distributed
                 microscopic traffic simulator that can utilize multiple
                 independent processes in parallel. SMARTS can perform
                 fast large-scale simulations. For example, when
                 simulating 1 million vehicles in an area the size of
                 Melbourne, the system runs 1.14 times faster than real
                 time with 30 computing nodes and 0.2s simulation
                 timestep. SMARTS supports various driver models and
                 traffic rules, such as the car-following model and
                 lane-changing model, which can be driver dependent. It
                 can simulate multiple vehicle types, including bus and
                 tram. The simulator is equipped with a wide range of
                 features that help to customize, calibrate, and monitor
                 simulations. Simulations are accurate and confirm with
                 real traffic behaviours. For example, it achieves
                 79.1\% accuracy in predicting traffic on a 10km freeway
                 90 minutes into the future. The simulator can be used
                 for predictive traffic advisories as well as traffic
                 management decisions as simulations complete well ahead
                 of real time. SMARTS can be easily deployed to
                 different operating systems as it is developed with the
                 standard Java libraries.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kim:2017:DFN,
  author =       "Jungeun Kim and Jae-Gil Lee and Sungsu Lim",
  title =        "Differential Flattening: a Novel Framework for
                 Community Detection in Multi-Layer Graphs",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "27:1--27:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2898362",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "A multi-layer graph consists of multiple layers of
                 weighted graphs, where the multiple layers represent
                 the different aspects of relationships. Considering
                 multiple aspects (i.e., layers) together is essential
                 to achieve a comprehensive and consolidated view. In
                 this article, we propose a novel framework of
                 differential flattening, which facilitates the analysis
                 of multi-layer graphs, and apply this framework to
                 community detection. Differential flattening merges
                 multiple graphs into a single graph such that the graph
                 structure with the maximum clustering coefficient is
                 obtained from the single graph. It has two distinct
                 features compared with existing approaches. First,
                 dealing with multiple layers is done independently of a
                 specific community detection algorithm, whereas
                 previous approaches rely on a specific algorithm. Thus,
                 any algorithm for a single graph becomes applicable to
                 multi-layer graphs. Second, the contribution of each
                 layer to the single graph is determined automatically
                 for the maximum clustering coefficient. Since
                 differential flattening is formulated by an
                 optimization problem, the optimal solution is easily
                 obtained by well-known algorithms such as interior
                 point methods. Extensive experiments were conducted
                 using the Lancichinetti-Fortunato-Radicchi (LFR)
                 benchmark networks as well as the DBLP, 20 Newsgroups,
                 and MIT Reality Mining networks. The results show that
                 our approach of differential flattening leads to
                 discovery of higher-quality communities than baseline
                 approaches and the state-of-the-art algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xie:2017:JSS,
  author =       "Liping Xie and Dacheng Tao and Haikun Wei",
  title =        "Joint Structured Sparsity Regularized Multiview
                 Dimension Reduction for Video-Based Facial Expression
                 Recognition",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "28:1--28:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2956556",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Video-based facial expression recognition (FER) has
                 recently received increased attention as a result of
                 its widespread application. Using only one type of
                 feature to describe facial expression in video
                 sequences is often inadequate, because the information
                 available is very complex. With the emergence of
                 different features to represent different properties of
                 facial expressions in videos, an appropriate
                 combination of these features becomes an important, yet
                 challenging, problem. Considering that the
                 dimensionality of these features is usually high, we
                 thus introduce multiview dimension reduction (MVDR)
                 into video-based FER. In MVDR, it is critical to
                 explore the relationships between and within different
                 feature views. To achieve this goal, we propose a novel
                 framework of MVDR by enforcing joint structured
                 sparsity at both inter- and intraview levels. In this
                 way, correlations on and between the feature spaces of
                 different views tend to be well-exploited. In addition,
                 a transformation matrix is learned for each view to
                 discover the patterns contained in the original
                 features, so that the different views are comparable in
                 finding a common representation. The model can be not
                 only performed in an unsupervised manner, but also
                 easily extended to a semisupervised setting by
                 incorporating some domain knowledge. An alternating
                 algorithm is developed for problem optimization, and
                 each subproblem can be efficiently solved. Experiments
                 on two challenging video-based FER datasets demonstrate
                 the effectiveness of the proposed framework.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Song:2017:PSH,
  author =       "Xuan Song and Quanshi Zhang and Yoshihide Sekimoto and
                 Ryosuke Shibasaki and Nicholas Jing Yuan and Xing Xie",
  title =        "Prediction and Simulation of Human Mobility Following
                 Natural Disasters",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "29:1--29:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2970819",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In recent decades, the frequency and intensity of
                 natural disasters has increased significantly, and this
                 trend is expected to continue. Therefore, understanding
                 and predicting human behavior and mobility during a
                 disaster will play a vital role in planning effective
                 humanitarian relief, disaster management, and long-term
                 societal reconstruction. However, such research is very
                 difficult to perform owing to the uniqueness of various
                 disasters and the unavailability of reliable and
                 large-scale human mobility data. In this study, we
                 collect big and heterogeneous data (e.g., GPS records
                 of 1.6 million users$^1$ over 3 years, data on
                 earthquakes that have occurred in Japan over 4 years,
                 news report data, and transportation network data) to
                 study human mobility following natural disasters. An
                 empirical analysis is conducted to explore the basic
                 laws governing human mobility following disasters, and
                 an effective human mobility model is developed to
                 predict and simulate population movements. The
                 experimental results demonstrate the efficiency of our
                 model, and they suggest that human mobility following
                 disasters can be significantly more predictable and be
                 more easily simulated than previously thought.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Peng:2017:SLM,
  author =       "Chong Peng and Jie Cheng and Qiang Cheng",
  title =        "A Supervised Learning Model for High-Dimensional and
                 Large-Scale Data",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "30:1--30:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2972957",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We introduce a new supervised learning model using a
                 discriminative regression approach. This new model
                 estimates a regression vector to represent the
                 similarity between a test example and training examples
                 while seamlessly integrating the class information in
                 the similarity estimation. This distinguishes our model
                 from usual regression models and locally linear
                 embedding approaches, rendering our method suitable for
                 supervised learning problems in high-dimensional
                 settings. Our model is easily extensible to account for
                 nonlinear relationship and applicable to general data,
                 including both high- and low-dimensional data. The
                 objective function of the model is convex, for which
                 two optimization algorithms are provided. These two
                 optimization approaches induce two scalable solvers
                 that are of mathematically provable, linear time
                 complexity. Experimental results verify the
                 effectiveness of the proposed method on various kinds
                 of data. For example, our method shows comparable
                 performance on low-dimensional data and superior
                 performance on high-dimensional data to several widely
                 used classifiers; also, the linear solvers obtain
                 promising performance on large-scale classification.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2017:IVL,
  author =       "Yan Liu and Yang Liu and Shenghua Zhong and Songtao
                 Wu",
  title =        "Implicit Visual Learning: Image Recognition via
                 Dissipative Learning Model",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "31:1--31:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2974024",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "According to consciousness involvement, human's
                 learning can be roughly classified into explicit
                 learning and implicit learning. Contrasting strongly to
                 explicit learning with clear targets and rules, such as
                 our school study of mathematics, learning is implicit
                 when we acquire new information without intending to do
                 so. Research from psychology indicates that implicit
                 learning is ubiquitous in our daily life. Moreover,
                 implicit learning plays an important role in human
                 visual perception. But in the past 60 years, most of
                 the well-known machine-learning models aimed to
                 simulate explicit learning while the work of modeling
                 implicit learning was relatively limited, especially
                 for computer vision applications. This article proposes
                 a novel unsupervised computational model for implicit
                 visual learning by exploring dissipative system, which
                 provides a unifying macroscopic theory to connect
                 biology with physics. We test the proposed Dissipative
                 Implicit Learning Model (DILM) on various datasets. The
                 experiments show that DILM not only provides a good
                 match to human behavior but also improves the explicit
                 machine-learning performance obviously on image
                 classification tasks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Barbieri:2017:EMI,
  author =       "Nicola Barbieri and Francesco Bonchi and Giuseppe
                 Manco",
  title =        "Efficient Methods for Influence-Based
                 Network-Oblivious Community Detection",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "32:1--32:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2979682",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We study the problem of detecting social communities
                 when the social graph is not available but instead we
                 have access to a log of user activity, that is, a
                 dataset of tuples ( u, i, t ) recording the fact that
                 user u ``adopted'' item i at time t. We propose a
                 stochastic framework that assumes that the adoption of
                 items is governed by an underlying diffusion process
                 over the unobserved social network and that such a
                 diffusion model is based on community-level influence.
                 That is, we aim at modeling communities through the
                 lenses of social contagion. By fitting the model
                 parameters to the user activity log, we learn the
                 community membership and the level of influence of each
                 user in each community. The general framework is
                 instantiated with two different diffusion models, one
                 with discrete time and one with continuous time, and we
                 show that the computational complexity of both
                 approaches is linear in the number of users and in the
                 size of the propagation log. Experiments on synthetic
                 data with planted community structure show that our
                 methods outperform non-trivial baselines. The
                 effectiveness of the proposed techniques is further
                 validated on real-word data, on which our methods are
                 able to detect high-quality communities.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2017:CDT,
  author =       "Zhonggang Wu and Zhao Lu and Shan-Yuan Ho",
  title =        "Community Detection with Topological Structure and
                 Attributes in Information Networks",
  journal =      j-TIST,
  volume =       "8",
  number =       "2",
  pages =        "33:1--33:??",
  month =        jan,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2979681",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Apr 3 11:19:57 MDT 2017",
  bibsource =    "http://portal.acm.org/;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Information networks contain objects connected by
                 multiple links and described by rich attributes.
                 Detecting community for these networks is a challenging
                 research problem, because there is a scarcity of
                 effective approaches that balance the features of the
                 network structure and the characteristics of the nodes.
                 Some methods detect communities by considering
                 topological structures while ignoring the contributions
                 of attributes. Other methods have considered both
                 topological structure and attributes but pay a high
                 price in time complexity. We establish a new community
                 detection algorithm which explores both topological
                 Structure and Attributes using Global structure and
                 Local neighborhood features (SAGL) which also has low
                 computational complexity. The first step of SAGL
                 evaluates the global importance of every node and
                 calculates the similarity of each node pair by
                 combining edge strength and node attribute similarity.
                 The second step of SAGL uses a clustering algorithm
                 that identifies communities by measuring the similarity
                 of two nodes, calculated by the distance of their
                 neighbors. Experimental results on three real-world
                 datasets show the effectiveness of SAGL, particularly
                 its fast convergence compared to current
                 state-of-the-art attributed graph clustering methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ji:2017:MSM,
  author =       "Rongrong Ji and Wei Liu and Xing Xie and Yiqiang Chen
                 and Jiebo Luo",
  title =        "Mobile Social Multimedia Analytics in the Big Data
                 Era: an Introduction to the Special Issue",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "34:1--34:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3040934",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gao:2017:ECM,
  author =       "Yue Gao and Hanwang Zhang and Xibin Zhao and Shuicheng
                 Yan",
  title =        "Event Classification in Microblogs via Social
                 Tracking",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "35:1--35:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2967502",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Social media websites have become important
                 information sharing platforms. The rapid development of
                 social media platforms has led to increasingly
                 large-scale social media data, which has shown
                 remarkable societal and marketing values. There are
                 needs to extract important events in live social media
                 streams. However, microblogs event classification is
                 challenging due to two facts, i.e., the
                 short/conversational nature and the incompatible
                 meanings between the text and the corresponding image
                 in social posts, and the rapidly evolving contents. In
                 this article, we propose to conduct event
                 classification via deep learning and social tracking.
                 First, we introduce a Multi-modal Multi-instance Deep
                 Network (M$^2$ DN) for microblogs classification, which
                 is able to handle the weakly labeled microblogs data
                 oriented from the incompatible meanings inside
                 microblogs. Besides predicting each microblogs as
                 predefined events, we propose to employ social tracking
                 to extract social-related auxiliary information to
                 enrich the testing samples. We extract a set of
                 candidate-relevant microblogs in a short time window by
                 using social connections, such as related users and
                 geographical locations. All these selected microblogs
                 and the testing data are formulated in a Markov Random
                 Field model. The inference on the Markov Random Field
                 is conducted to update the classification results of
                 the testing microblogs. This method is evaluated on the
                 Brand-Social-Net dataset for classification of 20
                 events. Experimental results and comparison with the
                 state of the arts show that the proposed method can
                 achieve better performance for the event classification
                 task.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Nie:2017:LUA,
  author =       "Liqiang Nie and Luming Zhang and Meng Wang and Richang
                 Hong and Aleksandr Farseev and Tat-Seng Chua",
  title =        "Learning User Attributes via Mobile Social Multimedia
                 Analytics",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "36:1--36:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2963105",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Learning user attributes from mobile social media is a
                 fundamental basis for many applications, such as
                 personalized and targeting services. A large and
                 growing body of literature has investigated the user
                 attributes learning problem. However, far too little
                 attention has been paid to jointly consider the dual
                 heterogeneities of user attributes learning by
                 harvesting multiple social media sources. In
                 particular, user attributes are complementarily and
                 comprehensively characterized by multiple social media
                 sources, including footprints from Foursqare, daily
                 updates from Twitter, professional careers from
                 Linkedin, and photo posts from Instagram. On the other
                 hand, attributes are inter-correlated in a complex way
                 rather than independent to each other, and highly
                 related attributes may share similar feature sets.
                 Towards this end, we proposed a unified model to
                 jointly regularize the source consistency and
                 graph-constrained relatedness among tasks. As a
                 byproduct, it is able to learn the attribute-specific
                 and attribute-sharing features via graph-guided fused
                 lasso penalty. Besides, we have theoretically
                 demonstrated its optimization. Extensive evaluations on
                 a real-world dataset thoroughly demonstrated the
                 effectiveness of our proposed model.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tao:2017:LSC,
  author =       "Dapeng Tao and Dacheng Tao and Xuelong Li and Xinbo
                 Gao",
  title =        "Large Sparse Cone Non-negative Matrix Factorization
                 for Image Annotation",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "37:1--37:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2987379",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Image annotation assigns relevant tags to query images
                 based on their semantic contents. Since Non-negative
                 Matrix Factorization (NMF) has the strong ability to
                 learn parts-based representations, recently, a number
                 of algorithms based on NMF have been proposed for image
                 annotation and have achieved good performance. However,
                 most of the efforts have focused on the representations
                 of images and annotations. The properties of the
                 semantic parts have not been well studied. In this
                 article, we revisit the sparseness-constrained NMF
                 (sNMF) proposed by Hoyer [2004]. By endowing the
                 sparseness constraint with a geometric interpretation
                 and sNMF with theoretical analyses of the
                 generalization ability, we show that NMF with such a
                 sparseness constraint has three advantages for image
                 annotation tasks: (i) The sparseness constraint is more
                 l$_0$ -norm oriented than the l$_1$ -norm-based
                 sparseness, which significantly enhances the ability of
                 NMF to robustly learn semantic parts. (ii) The
                 sparseness constraint has a large cone interpretation
                 and thus allows the reconstruction error of NMF to be
                 smaller, which means that the learned semantic parts
                 are more powerful to represent images for tagging.
                 (iii) The learned semantic parts are less correlated,
                 which increases the discriminative ability for
                 annotating images. Moreover, we present a new efficient
                 large sparse cone NMF (LsCNMF) algorithm to optimize
                 the sNMF problem by employing the Nesterov's optimal
                 gradient method. We conducted experiments on the PASCAL
                 VOC07 dataset and demonstrated the effectiveness of
                 LsCNMF for image annotation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2017:LBP,
  author =       "Jiaming Zhang and Shuhui Wang and Qingming Huang",
  title =        "Location-Based Parallel Tag Completion for Geo-Tagged
                 Social Image Retrieval",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "38:1--38:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3001593",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Having benefited from tremendous growth of
                 user-generated content, social annotated tags get
                 higher importance in the organization and retrieval of
                 large-scale image databases on Online Sharing Websites
                 (OSW). To obtain high-quality tags from existing
                 community contributed tags with missing information and
                 noise, tag-based annotation or recommendation methods
                 have been proposed for performance promotion of tag
                 prediction. While images from OSW contain rich social
                 attributes, they have not taken full advantage of rich
                 social attributes and auxiliary information associated
                 with social images to construct global information
                 completion models. In this article, beyond the
                 image-tag relation, we take full advantage of the
                 ubiquitous GPS locations and image-user relationship to
                 enhance the accuracy of tag prediction and improve the
                 computational efficiency. For GPS locations, we define
                 the popular geo-locations where people tend to take
                 more images as Points of Interests (POI), which are
                 discovered by mean shift approach. For image-user
                 relationship, we integrate a localized prior
                 constraint, expecting the completed tag sub-matrix in
                 each POI to maintain consistency with users' tagging
                 behaviors. Based on these two key issues, we propose a
                 unified tag matrix completion framework, which learns
                 the image-tag relation within each POI. To solve the
                 optimization problem, an efficient proximal
                 sub-gradient descent algorithm is designed. The model
                 optimization can be easily parallelized and distributed
                 to learn the tag sub-matrix for each POI. Extensive
                 experimental results reveal that the learned tag
                 sub-matrix of each POI reflects the major trend of
                 users' tagging results with respect to different POIs
                 and users, and the parallel learning process provides
                 strong support for processing large-scale online image
                 databases. To fit the response time requirement and
                 storage limitations of Tag-based Image Retrieval (TBIR)
                 on mobile devices, we introduce Asymmetric Locality
                 Sensitive Hashing (ALSH) to reduce the time cost and
                 meanwhile improve the efficiency of retrieval.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sang:2017:ESM,
  author =       "Jitao Sang and Quan Fang and Changsheng Xu",
  title =        "Exploiting Social-Mobile Information for Location
                 Visualization",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "39:1--39:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3001594",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With a smart phone at hand, it becomes easy now to
                 snap pictures and publish them online with few lines of
                 texts. The GPS coordinates and User-Generated Content
                 (UGC) data embedded in the shared photos provide
                 opportunities to exploit important knowledge to tackle
                 interesting tasks like geographically organizing photos
                 and location visualization. In this work, we propose to
                 organize photos both geographically and semantically,
                 and investigate the problem of location visualization
                 from multiple semantic themes. The novel visualization
                 scheme provides a rich display landscape for
                 geographical exploration from versatile views. A
                 two-level solution is presented, where we first
                 identify the highly photographed places of interest
                 (POI) and discover their focused themes, and then
                 aggregate the lower-level POI themes to generate the
                 higher-level city themes for location visualization. We
                 have conducted experiments on crawled Flickr and
                 Instagram data and exhibited the visualization for the
                 cities of Singapore and Sydney. The experimental
                 results have validated the proposed method and
                 demonstrated the potentials of location visualization
                 from multiple themes.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hu:2017:COM,
  author =       "Han Hu and Yonggang Wen and Tat-Seng Chua and Xuelong
                 Li",
  title =        "Cost-Optimized Microblog Distribution over
                 Geo-Distributed Data Centers: Insights from Cross-Media
                 Analysis",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "40:1--40:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3014431",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The unprecedent growth of microblog services poses
                 significant challenges on network traffic and service
                 latency to the underlay infrastructure (i.e.,
                 geo-distributed data centers). Furthermore, the dynamic
                 evolution in microblog status generates a huge workload
                 on data consistence maintenance. In this article,
                 motivated by insights of cross-media analysis-based
                 propagation patterns, we propose a novel cache strategy
                 for microblog service systems to reduce the inter-data
                 center traffic and consistence maintenance cost, while
                 achieving low service latency. Specifically, we first
                 present a microblog classification method, which
                 utilizes the external knowledge from correlated
                 domains, to categorize microblogs. Then we conduct a
                 large-scale measurement on a representative online
                 social network system to study the category-based
                 propagation diversity on region and time scales. These
                 insights illustrate social common habits on creating
                 and consuming microblogs and further motivate our
                 architecture design. Finally, we formulate the content
                 cache problem as a constrained optimization problem. By
                 jointly using the Lyapunov optimization framework and
                 simplex gradient method, we find the optimal online
                 control strategy. Extensive trace-driven experiments
                 further demonstrate that our algorithm reduces the
                 system cost by 24.5\% against traditional approaches
                 with the same service latency.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xu:2017:DOD,
  author =       "Jun Xu and Long Xia and Yanyan Lan and Jiafeng Guo and
                 Xueqi Cheng",
  title =        "Directly Optimize Diversity Evaluation Measures: a New
                 Approach to Search Result Diversification",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "41:1--41:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2983921",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The queries issued to search engines are often
                 ambiguous or multifaceted, which requires search
                 engines to return diverse results that can fulfill as
                 many different information needs as possible; this is
                 called search result diversification. Recently, the
                 relational learning to rank model, which designs a
                 learnable ranking function following the criterion of
                 maximal marginal relevance, has shown effectiveness in
                 search result diversification [Zhu et al. 2014]. The
                 goodness of a diverse ranking model is usually
                 evaluated with diversity evaluation measures such as $
                 \alpha $-NDCG [Clarke et al. 2008], ERR-IA [Chapelle et
                 al. 2009], and D\#-NDCG [Sakai and Song 2011]. Ideally
                 the learning algorithm would train a ranking model that
                 could directly optimize the diversity evaluation
                 measures with respect to the training data. Existing
                 relational learning to rank algorithms, however, only
                 train the ranking models by optimizing loss functions
                 that loosely relate to the evaluation measures. To deal
                 with the problem, we propose a general framework for
                 learning relational ranking models via directly
                 optimizing any diversity evaluation measure. In
                 learning, the loss function upper-bounding the basic
                 loss function defined on a diverse ranking measure is
                 minimized. We can derive new diverse ranking algorithms
                 under the framework, and several diverse ranking
                 algorithms are created based on different upper bounds
                 over the basic loss function. We conducted comparisons
                 between the proposed algorithms with conventional
                 diverse ranking methods using the TREC benchmark
                 datasets. Experimental results show that the algorithms
                 derived under the diverse learning to rank framework
                 always significantly outperform the state-of-the-art
                 baselines.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Peng:2017:NMF,
  author =       "Chong Peng and Zhao Kang and Yunhong Hu and Jie Cheng
                 and Qiang Cheng",
  title =        "Nonnegative Matrix Factorization with Integrated Graph
                 and Feature Learning",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "42:1--42:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2987378",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Matrix factorization is a useful technique for data
                 representation in many data mining and machine learning
                 tasks. Particularly, for data sets with all nonnegative
                 entries, matrix factorization often requires that
                 factor matrices be nonnegative, leading to nonnegative
                 matrix factorization (NMF). One important application
                 of NMF is for clustering with reduced dimensions of the
                 data represented in the new feature space. In this
                 paper, we propose a new graph regularized NMF method
                 capable of feature learning and apply it to clustering.
                 Unlike existing NMF methods that treat all features in
                 the original feature space equally, our method
                 distinguishes features by incorporating a feature-wise
                 sparse approximation error matrix in the formulation.
                 It enables important features to be more closely
                 approximated by the factor matrices. Meanwhile, the
                 graph of the data is constructed using cleaner features
                 in the feature learning process, which integrates
                 feature learning and manifold learning procedures into
                 a unified NMF model. This distinctly differs from
                 applying the existing graph-based NMF models after
                 feature selection in that, when these two procedures
                 are independently used, they often fail to align
                 themselves toward obtaining a compact and most
                 expressive data representation. Comprehensive
                 experimental results demonstrate the effectiveness of
                 the proposed method, which outperforms state-of-the-art
                 algorithms when applied to clustering.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2017:LKK,
  author =       "Shichao Zhang and Xuelong Li and Ming Zong and
                 Xiaofeng Zhu and Debo Cheng",
  title =        "Learning $k$ for {$k$NN} Classification",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "43:1--43:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2990508",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The K Nearest Neighbor (kNN) method has widely been
                 used in the applications of data mining and machine
                 learning due to its simple implementation and
                 distinguished performance. However, setting all test
                 data with the same k value in the previous kNN methods
                 has been proven to make these methods impractical in
                 real applications. This article proposes to learn a
                 correlation matrix to reconstruct test data points by
                 training data to assign different k values to different
                 test data points, referred to as the Correlation Matrix
                 kNN (CM-kNN for short) classification. Specifically,
                 the least-squares loss function is employed to minimize
                 the reconstruction error to reconstruct each test data
                 point by all training data points. Then, a graph
                 Laplacian regularizer is advocated to preserve the
                 local structure of the data in the reconstruction
                 process. Moreover, an l$_1$ -norm regularizer and an
                 l$_{2, 1}$ -norm regularizer are applied to learn
                 different k values for different test data and to
                 result in low sparsity to remove the redundant/noisy
                 feature from the reconstruction process, respectively.
                 Besides for classification tasks, the kNN methods
                 (including our proposed CM-kNN method) are further
                 utilized to regression and missing data imputation. We
                 conducted sets of experiments for illustrating the
                 efficiency, and experimental results showed that the
                 proposed method was more accurate and efficient than
                 existing kNN methods in data-mining applications, such
                 as classification, regression, and missing data
                 imputation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hoang:2017:MTB,
  author =       "Tuan-Anh Hoang and Ee-Peng Lim",
  title =        "Modeling Topics and Behavior of Microbloggers: an
                 Integrated Approach",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "44:1--44:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2990507",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Microblogging encompasses both user-generated content
                 and behavior. When modeling microblogging data, one has
                 to consider personal and background topics, as well as
                 how these topics generate the observed content and
                 behavior. In this article, we propose the Generalized
                 Behavior-Topic (GBT) model for simultaneously modeling
                 background topics and users' topical interest in
                 microblogging data. GBT considers multiple topical
                 communities (or realms) with different background
                 topical interests while learning the personal topics of
                 each user and the user's dependence on realms to
                 generate both content and behavior. This differentiates
                 GBT from other previous works that consider either one
                 realm only or content data only. By associating user
                 behavior with the latent background and personal
                 topics, GBT helps to model user behavior by the two
                 types of topics. GBT also distinguishes itself from
                 other earlier works by modeling multiple types of
                 behavior together. Our experiments on two Twitter
                 datasets show that GBT can effectively mine the
                 representative topics for each realm. We also
                 demonstrate that GBT significantly outperforms other
                 state-of-the-art models in modeling content topics and
                 user profiling.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mirsky:2017:COP,
  author =       "Reuth Mirsky and Ya'akov (Kobi) Gal and Stuart M.
                 Shieber",
  title =        "{CRADLE}: an Online Plan Recognition Algorithm for
                 Exploratory Domains",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "45:1--45:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2996200",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In exploratory domains, agents' behaviors include
                 switching between activities, extraneous actions, and
                 mistakes. Such settings are prevalent in real world
                 applications such as interaction with open-ended
                 software, collaborative office assistants, and
                 integrated development environments. Despite the
                 prevalence of such settings in the real world, there is
                 scarce work in formalizing the connection between
                 high-level goals and low-level behavior and inferring
                 the former from the latter in these settings. We
                 present a formal grammar for describing users'
                 activities in such domains. We describe a new top-down
                 plan recognition algorithm called CRADLE (Cumulative
                 Recognition of Activities and Decreasing Load of
                 Explanations) that uses this grammar to recognize
                 agents' interactions in exploratory domains. We compare
                 the performance of CRADLE with state-of-the-art plan
                 recognition algorithms in several experimental settings
                 consisting of real and simulated data. Our results show
                 that CRADLE was able to output plans exponentially more
                 quickly than the state-of-the-art without compromising
                 its correctness, as determined by domain experts. Our
                 approach can form the basis of future systems that use
                 plan recognition to provide real-time support to users
                 in a growing class of interesting and challenging
                 domains.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2017:DSM,
  author =       "Peng Zhang and Qian Yu and Yuexian Hou and Dawei Song
                 and Jingfei Li and Bin Hu",
  title =        "A Distribution Separation Method Using Irrelevance
                 Feedback Data for Information Retrieval",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "46:1--46:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2994608",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In many research and application areas, such as
                 information retrieval and machine learning, we often
                 encounter dealing with a probability distribution that
                 is mixed by one distribution that is relevant to our
                 task in hand and the other that is irrelevant and that
                 we want to get rid of. Thus, it is an essential problem
                 to separate the irrelevant distribution from the
                 mixture distribution. This article is focused on the
                 application in Information Retrieval, where relevance
                 feedback is a widely used technique to build a refined
                 query model based on a set of feedback documents.
                 However, in practice, the relevance feedback set, even
                 provided by users explicitly or implicitly, is often a
                 mixture of relevant and irrelevant documents.
                 Consequently, the resultant query model (typically a
                 term distribution) is often a mixture rather than a
                 true relevance term distribution, leading to a negative
                 impact on the retrieval performance. To tackle this
                 problem, we recently proposed a Distribution Separation
                 Method (DSM), which aims to approximate the true
                 relevance distribution by separating a seed irrelevance
                 distribution from the mixture one. While it achieved a
                 promising performance in an empirical evaluation with
                 simulated explicit irrelevance feedback data, it has
                 not been deployed in the scenario where one should
                 automatically obtain the irrelevance feedback data. In
                 this article, we propose a substantial extension of the
                 basic DSM from two perspectives: developing a further
                 regularization framework and deploying DSM in the
                 automatic irrelevance feedback scenario. Specifically,
                 in order to avoid the output distribution of DSM
                 drifting away from the true relevance distribution when
                 the quality of seed irrelevant distribution (as the
                 input to DSM) is not guaranteed, we propose a DSM
                 regularization framework to constrain the estimation
                 for the relevance distribution. This regularization
                 framework includes three algorithms, each corresponding
                 to a regularization strategy incorporated in the
                 objective function of DSM. In addition, we exploit DSM
                 in automatic (i.e., pseudo) irrelevance feedback, by
                 automatically detecting the seed irrelevant documents
                 via three different document reranking methods. We have
                 carried out extensive experiments based on various TREC
                 datasets, in order to systematically evaluate the
                 proposed methods. The experimental results demonstrate
                 the effectiveness of our proposed approaches in
                 comparison with various strong baselines.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xiong:2017:DDA,
  author =       "Haoyi Xiong and Jinghe Zhang and Yu Huang and Kevin
                 Leach and Laura E. Barnes",
  title =        "{Daehr}: a Discriminant Analysis Framework for
                 Electronic Health Record Data and an Application to
                 Early Detection of Mental Health Disorders",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "47:1--47:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3007195",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Electronic health records (EHR) provide a rich source
                 of temporal data that present a unique opportunity to
                 characterize disease patterns and risk of imminent
                 disease. While many data-mining tools have been adopted
                 for EHR-based disease early detection, linear
                 discriminant analysis (LDA) is one of the most commonly
                 used statistical methods. However, it is difficult to
                 train an accurate LDA model for early disease diagnosis
                 when too few patients are known to have the target
                 disease. Furthermore, EHR data are heterogeneous with
                 significant noise. In such cases, the covariance
                 matrices used in LDA are usually singular and estimated
                 with a large variance. This article presents Daehr, an
                 extension of the LDA framework using electronic health
                 record data to address these issues. Beyond existing
                 LDA analyzers, we propose Daehr to (1) eliminate the
                 data noise caused by the manual encoding of EHR data
                 and (2) lower the variance of parameter (covariance
                 matrices) estimation for LDA models when only a few
                 patients' EHR are available for training. To achieve
                 these two goals, we designed an iterative algorithm to
                 improve the covariance matrix estimation with embedded
                 data-noise/parameter-variance reduction for LDA. We
                 evaluated Daehr extensively using the College Health
                 Surveillance Network, a large, real-world EHR dataset.
                 Specifically, our experiments compared the performance
                 of LDA to three baselines (i.e., LDA and its
                 derivatives) in identifying college students at high
                 risk for mental health disorders from 23 U.S.
                 universities. Experimental results demonstrate Daehr
                 significantly outperforms the three baselines by
                 achieving 1.4\%--19.4\% higher accuracy and a
                 7.5\%--43.5\% higher F1-score.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2017:SSS,
  author =       "Weiqing Wang and Hongzhi Yin and Ling Chen and Yizhou
                 Sun and Shazia Sadiq and Xiaofang Zhou",
  title =        "{ST-SAGE}: a Spatial-Temporal Sparse Additive
                 Generative Model for Spatial Item Recommendation",
  journal =      j-TIST,
  volume =       "8",
  number =       "3",
  pages =        "48:1--48:??",
  month =        apr,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3011019",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the rapid development of location-based social
                 networks (LBSNs), spatial item recommendation has
                 become an important mobile application, especially when
                 users travel away from home. However, this type of
                 recommendation is very challenging compared to
                 traditional recommender systems. A user may visit only
                 a limited number of spatial items, leading to a very
                 sparse user-item matrix. This matrix becomes even
                 sparser when the user travels to a distant place, as
                 most of the items visited by a user are usually located
                 within a short distance from the user's home. Moreover,
                 user interests and behavior patterns may vary
                 dramatically across different time and geographical
                 regions. In light of this, we propose ST-SAGE, a
                 spatial-temporal sparse additive generative model for
                 spatial item recommendation in this article. ST-SAGE
                 considers both personal interests of the users and the
                 preferences of the crowd in the target region at the
                 given time by exploiting both the co-occurrence
                 patterns and content of spatial items. To further
                 alleviate the data-sparsity issue, ST-SAGE exploits the
                 geographical correlation by smoothing the crowd's
                 preferences over a well-designed spatial index
                 structure called the spatial pyramid. To speed up the
                 training process of ST-SAGE, we implement a parallel
                 version of the model inference algorithm on the
                 GraphLab framework. We conduct extensive experiments;
                 the experimental results clearly demonstrate that
                 ST-SAGE outperforms the state-of-the-art recommender
                 systems in terms of recommendation effectiveness, model
                 training efficiency, and online recommendation
                 efficiency.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ben-Israel:2017:LPM,
  author =       "Isaac Ben-Israel",
  title =        "The Letter from {Prof. Maj. Gen. (Ret.) Isaac
                 Ben-Israel}",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "49:1--49:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3057727",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49e",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Harel:2017:CSR,
  author =       "Yaniv Harel and Irad Ben Gal and Yuval Elovici",
  title =        "Cyber Security and the Role of Intelligent Systems in
                 Addressing its Challenges",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "49:1--49:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3057729",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Guri:2017:BAG,
  author =       "Mordechai Guri and Matan Monitz and Yuval Elovici",
  title =        "Bridging the Air Gap between Isolated Networks and
                 Mobile Phones in a Practical Cyber-Attack",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "50:1--50:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2870641",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Information is the most critical asset of modern
                 organizations, and accordingly it is one of the
                 resources most coveted by adversaries. When highly
                 sensitive data is involved, an organization may resort
                 to air gap isolation in which there is no networking
                 connection between the inner network and the external
                 world. While infiltrating an air-gapped network has
                 been proven feasible in recent years, data exfiltration
                 from an air-gapped network is still considered one of
                 the most challenging phases of an advanced
                 cyber-attack. In this article, we present
                 ``AirHopper,'' a bifurcated malware that bridges the
                 air gap between an isolated network and nearby infected
                 mobile phones using FM signals. While it is known that
                 software can intentionally create radio emissions from
                 a video card, this is the first time that mobile phones
                 serve as the intended receivers of the maliciously
                 crafted electromagnetic signals. We examine the attack
                 model and its limitations and discuss implementation
                 considerations such as modulation methods, signal
                 collision, and signal reconstruction. We test AirHopper
                 in an existing workplace at a typical office building
                 and demonstrate how valuable data such as keylogging
                 and files can be exfiltrated from physically isolated
                 computers to mobile phones at a distance of 1--7
                 meters, with an effective bandwidth of 13--60 bytes per
                 second.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ovelgonne:2017:URB,
  author =       "Michael Ovelg{\"o}nne and Tudor Dumitras and B. Aditya
                 Prakash and V. S. Subrahmanian and Benjamin Wang",
  title =        "Understanding the Relationship between Human Behavior
                 and Susceptibility to Cyber Attacks: a Data-Driven
                 Approach",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "51:1--51:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2890509",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Despite growing speculation about the role of human
                 behavior in cyber-security of machines, concrete
                 data-driven analysis and evidence have been lacking.
                 Using Symantec's WINE platform, we conduct a detailed
                 study of 1.6 million machines over an 8-month period in
                 order to learn the relationship between user behavior
                 and cyber attacks against their personal computers. We
                 classify users into 4 categories (gamers,
                 professionals, software developers, and others, plus a
                 fifth category comprising everyone) and identify a
                 total of 7 features that act as proxies for human
                 behavior. For each of the 35 possible combinations (5
                 categories times 7 features), we studied the
                 relationship between each of these seven features and
                 one dependent variable, namely the number of attempted
                 malware attacks detected by Symantec on the machine.
                 Our results show that there is a strong relationship
                 between several features and the number of attempted
                 malware attacks. Had these hosts not been protected by
                 Symantec's anti-virus product or a similar product,
                 they would likely have been infected. Surprisingly, our
                 results show that software developers are more at risk
                 of engaging in risky cyber-behavior than other
                 categories.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ganesan:2017:OSC,
  author =       "Rajesh Ganesan and Sushil Jajodia and Hasan Cam",
  title =        "Optimal Scheduling of Cybersecurity Analysts for
                 Minimizing Risk",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "52:1--52:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2914795",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Cybersecurity threats are on the rise with evermore
                 digitization of the information that many day-to-day
                 systems depend upon. The demand for cybersecurity
                 analysts outpaces supply, which calls for optimal
                 management of the analyst resource. Therefore, a key
                 component of the cybersecurity defense system is the
                 optimal scheduling of its analysts. Sensor data is
                 analyzed by automatic processing systems, and alerts
                 are generated. A portion of these alerts is considered
                 to be significant, which requires thorough examination
                 by a cybersecurity analyst. Risk, in this article, is
                 defined as the percentage of unanalyzed or not
                 thoroughly analyzed alerts among the significant alerts
                 by analysts. The article presents a generalized
                 optimization model for scheduling cybersecurity
                 analysts to minimize risk (a.k.a., maximize significant
                 alert coverage by analysts) and maintain risk under a
                 pre-determined upper bound. The article tests the
                 optimization model and its scalability on a set of
                 given sensors with varying analyst experiences, alert
                 generation rates, system constraints, and system
                 requirements. Results indicate that the optimization
                 model is scalable and is capable of identifying both
                 the right mix of analyst expertise in an organization
                 and the sensor-to-analyst allocation in order to
                 maintain risk below a given upper bound. Several
                 meta-principles are presented, which are derived from
                 the optimization model, and they further serve as
                 guiding principles for hiring and scheduling
                 cybersecurity analysts. The simulation studies
                 (validation) of the optimization model outputs indicate
                 that risk varies non-linearly with an analyst/sensor
                 ratio, and for a given analyst/sensor ratio, the risk
                 is independent of the number of sensors in the
                 system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Neria:2017:RSF,
  author =       "Michal Ben Neria and Nancy-Sarah Yacovzada and Irad
                 Ben-Gal",
  title =        "A Risk-Scoring Feedback Model for {Webpages} and {Web}
                 Users Based on Browsing Behavior",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "53:1--53:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2928274",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "It has been claimed that many security breaches are
                 often caused by vulnerable (na{\"\i}ve) employees
                 within the organization [Ponemon Institute LLC 2015a].
                 Thus, the weakest link in security is often not the
                 technology itself but rather the people who use it
                 [Schneier 2003]. In this article, we propose a machine
                 learning scheme for detecting risky webpages and risky
                 browsing behavior, performed by na{\"\i}ve users in the
                 organization. The scheme analyzes the interaction
                 between two modules: one represents na{\"\i}ve users,
                 while the other represents risky webpages. It
                 implements a feedback loop between these modules such
                 that if a webpage is exposed to a lot of traffic from
                 risky users, its ``risk score'' increases, while in a
                 similar manner, as the user is exposed to risky
                 webpages (with a high ``risk score''), his own ``risk
                 score'' increases. The proposed scheme is tested on a
                 real-world dataset of HTTP logs provided by a large
                 American toolbar company. The results suggest that a
                 feedback learning process involving webpages and users
                 can improve the scoring accuracy and lead to the
                 detection of unknown malicious webpages.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kolman:2017:SCG,
  author =       "Eyal Kolman and Benny Pinkas",
  title =        "Securely Computing a Ground Speed Model",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "54:1--54:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2998550",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Consider a server offering risk assessment services
                 and potential clients of these services. The risk
                 assessment model that is run by the server is based on
                 current and historical data of the clients. However,
                 the clients might prefer not sharing such sensitive
                 data with external parties such as the server, and the
                 server might consider the possession of this data as a
                 liability rather than an asset. Secure multi-party
                 computation (MPC) enables one, in principle, to compute
                 any function while hiding the inputs to the function,
                 and would thus enable the computation of the risk
                 assessment model while hiding the client's data from
                 the server. However, a direct application of a generic
                 MPC solution to this problem is rather inefficient due
                 to the large scale of the data and the complexity of
                 the function. We examine a specific case of risk
                 assessment-the ground speed model. In this model, the
                 geographical locations of successive
                 user-authentication attempts are compared, and a
                 warning flag is raised if the physical speed required
                 to move between these locations is greater than some
                 threshold, and some other conditions, such as
                 authentication from two related networks, do not hold.
                 We describe a very efficient secure computation
                 solution that is tailored for this problem. This
                 solution demonstrates that a risk model can be applied
                 over encrypted data with sufficient efficiency to fit
                 the requirements of commercial systems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kleinmann:2017:ACS,
  author =       "Amit Kleinmann and Avishai Wool",
  title =        "Automatic Construction of Statechart-Based Anomaly
                 Detection Models for Multi-Threaded Industrial Control
                 Systems",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "55:1--55:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3011018",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Traffic of Industrial Control System (ICS) between the
                 Human Machine Interface (HMI) and the Programmable
                 Logic Controller (PLC) is known to be highly periodic.
                 However, it is sometimes multiplexed, due to
                 asynchronous scheduling. Modeling the network traffic
                 patterns of multiplexed ICS streams using Deterministic
                 Finite Automata (DFA) for anomaly detection typically
                 produces a very large DFA and a high false-alarm rate.
                 In this article, we introduce a new modeling approach
                 that addresses this gap. Our Statechart DFA modeling
                 includes multiple DFAs, one per cyclic pattern,
                 together with a DFA-selector that de-multiplexes the
                 incoming traffic into sub-channels and sends them to
                 their respective DFAs. We demonstrate how to
                 automatically construct the statechart from a captured
                 traffic stream. Our unsupervised learning algorithms
                 first build a Discrete-Time Markov Chain (DTMC) from
                 the stream. Next, we split the symbols into sets, one
                 per multiplexed cycle, based on symbol frequencies and
                 node degrees in the DTMC graph. Then, we create a
                 sub-graph for each cycle and extract Euler cycles for
                 each sub-graph. The final statechart is comprised of
                 one DFA per Euler cycle. The algorithms allow for
                 non-unique symbols, which appear in more than one
                 cycle, and also for symbols that appear more than once
                 in a cycle. We evaluated our solution on traces from a
                 production ICS using the Siemens S7-0x72 protocol. We
                 also stress-tested our algorithms on a collection of
                 synthetically-generated traces that simulated
                 multiplexed ICS traces with varying levels of symbol
                 uniqueness and time overlap. The algorithms were able
                 to split the symbols into sets with 99.6\% accuracy.
                 The resulting statechart modeled the traces with a
                 median false-alarm rate of as low as 0.483\%. In all
                 but the most extreme scenarios, the Statechart model
                 drastically reduced both the false-alarm rate and the
                 learned model size in comparison with the naive
                 single-DFA model.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Maltinsky:2017:NNM,
  author =       "Alex Maltinsky and Ran Giladi and Yuval Shavitt",
  title =        "On Network Neutrality Measurements",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "56:1--56:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3040966",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Network level surveillance, censorship, and various
                 man-in-the-middle attacks target only specific types of
                 network traffic (e.g., HTTP, HTTPS, VoIP, or Email).
                 Therefore, packets of these types will likely receive
                 ``special'' treatment by a transit network or a
                 man-in-the-middle attacker. A transit Internet Service
                 Provider (ISP) or an attacker may pass the targeted
                 traffic through special software or equipment to gather
                 data or perform an attack. This creates a measurable
                 difference between the performance of the targeted
                 traffic versus the general case. In networking terms,
                 it violates the principle of ``network neutrality,''
                 which states that all traffic should be treated
                 equally. Many techniques were designed to detect
                 network neutrality violations, and some have naturally
                 suggested using them to detect surveillance and
                 censorship. In this article, we show that the existing
                 network neutrality measurement techniques can be easily
                 detected and therefore circumvented. We then briefly
                 propose a new approach to overcome the drawbacks of
                 current measurement techniques.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hirschprung:2017:AOA,
  author =       "Ron Hirschprung and Eran Toch and Hadas
                 Schwartz-Chassidim and Tamir Mendel and Oded Maimon",
  title =        "Analyzing and Optimizing Access Control Choice
                 Architectures in Online Social Networks",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "57:1--57:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3046676",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The way users manage access to their information and
                 computers has a tremendous effect on the overall
                 security and privacy of individuals and organizations.
                 Usually, access management is conducted using a choice
                 architecture, a behavioral economics concept that
                 describes the way decisions are framed to users.
                 Studies have consistently shown that the design of
                 choice architectures, mainly the selection of default
                 options, has a strong effect on the final decisions
                 users make by nudging them toward certain behaviors. In
                 this article, we propose a method for optimizing access
                 control choice architectures in online social networks.
                 We empirically evaluate the methodology on Facebook,
                 the world's largest online social network, by measuring
                 how well the default options cover the existing user
                 choices and preferences and toward which outcome the
                 choice architecture nudges users. The evaluation
                 includes two parts: (a) collecting access control
                 decisions made by 266 users of Facebook for a period of
                 3 months; and (b) surveying 533 participants who were
                 asked to express their preferences regarding default
                 options. We demonstrate how optimal defaults can be
                 algorithmically identified from users' decisions and
                 preferences, and we measure how existing defaults
                 address users' preferences compared with the optimal
                 ones. We analyze how access control defaults can better
                 serve existing users, and we discuss how our method can
                 be used to establish a common measuring tool when
                 examining the effects of default options.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2017:TID,
  author =       "Xitong Yang and Jiebo Luo",
  title =        "Tracking Illicit Drug Dealing and Abuse on {Instagram}
                 Using Multimodal Analysis",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "58:1--58:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3011871",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Illicit drug trade via social media sites, especially
                 photo-oriented Instagram, has become a severe problem
                 in recent years. As a result, tracking drug dealing and
                 abuse on Instagram is of interest to law enforcement
                 agencies and public health agencies. However,
                 traditional approaches are based on manual search and
                 browsing by trained domain experts, which suffers from
                 the problem of poor scalability and reproducibility. In
                 this article, we propose a novel approach to detecting
                 drug abuse and dealing automatically by utilizing
                 multimodal data on social media. This approach also
                 enables us to identify drug-related posts and analyze
                 the behavior patterns of drug-related user accounts. To
                 better utilize multimodal data on social media,
                 multimodal analysis methods including multi-task
                 learning and decision-level fusion are employed in our
                 framework. We collect three datasets using Instagram
                 and web search engine for training and testing our
                 models. Experiment results on expertly labeled data
                 have demonstrated the effectiveness of our approach, as
                 well as its scalability and reproducibility over
                 labor-intensive conventional approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Panagopoulos:2017:AEC,
  author =       "Athanasios Aris Panagopoulos and Sasan Maleki and Alex
                 Rogers and Matteo Venanzi and Nicholas R. Jennings",
  title =        "Advanced Economic Control of Electricity-Based Space
                 Heating Systems in Domestic Coalitions with Shared
                 Intermittent Energy Resources",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "59:1--59:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3041216",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Over the past few years, Domestic Heating Automation
                 Systems (DHASs) that optimize the domestic space
                 heating control process with minimum user input,
                 utilizing appropriate occupancy prediction technology,
                 have emerged as commercial products (e.g., the smart
                 thermostats from Nest and Honeywell). At the same time,
                 many houses are being equipped with, potentially
                 grid-connected, Intermittent Energy Resources (IERs),
                 such as rooftop photovoltaic systems and/or small wind
                 turbine generators. Now, in many regions of the world,
                 such houses can sell energy to the grid but at a lower
                 price than the price of buying it. In this context, and
                 given the anticipated increase in electrification of
                 heating, the next generation DHASs need to incorporate
                 Advanced Economic Control (AEC). Such AEC can exploit
                 the energy buffer that heating loads provide, in order
                 to shift the consumption of electricity-based heating
                 systems to follow the intermittent energy generation of
                 the house. By so doing, the energy imported from the
                 grid can be minimized and considerable monetary gains
                 for the household can be achieved, without affecting
                 the occupants' schedule. These benefits can be
                 amplified still further in domestic coalitions, where a
                 number of houses come together and share their IER
                 generation to minimize their cumulative grid energy
                 import. Given the above, in this work we extend a
                 state-of-the-art DHAS, to propose AdaHeat+, a practical
                 DHAS, that, for the first time, incorporates AEC. Our
                 work is applicable to both individual houses and
                 domestic coalitions and comes complete with an
                 allocation mechanism to share the coalition gains.
                 Importantly, we propose an effective heuristic heating
                 schedule planning approach for collective AEC that (i)
                 has a complexity that scales in a linear and
                 parallelizable manner with the coalition size, and (ii)
                 enables AdaHeat+ to handle the distinct preferences, in
                 balancing heating cost and thermal discomfort, of the
                 households. Our approach relies on stochastic IER power
                 output predictions. In this context, we propose a
                 simple and effective formulation for the site-specific
                 calibration of such predictions based on adaptive
                 Gaussian process modeling. Finally, we demonstrate the
                 effectiveness of AdaHeat+ through real data evaluation,
                 to show that collective AEC can improve heating
                 cost-efficiency by up to 60\%, compared to independent
                 AEC (and even more when compared to no-AEC).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bistaffa:2017:AGC,
  author =       "Filippo Bistaffa and Alessandro Farinelli and
                 Jes{\'u}s Cerquides and Juan Rodr{\'\i}guez-Aguilar and
                 Sarvapali D. Ramchurn",
  title =        "Algorithms for Graph-Constrained Coalition Formation
                 in the Real World",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "60:1--60:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3040967",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Coalition formation typically involves the coming
                 together of multiple, heterogeneous, agents to achieve
                 both their individual and collective goals. In this
                 article, we focus on a special case of coalition
                 formation known as Graph-Constrained Coalition
                 Formation (GCCF) whereby a network connecting the
                 agents constrains the formation of coalitions. We focus
                 on this type of problem given that in many real-world
                 applications, agents may be connected by a
                 communication network or only trust certain peers in
                 their social network. We propose a novel representation
                 of this problem based on the concept of edge
                 contraction, which allows us to model the search space
                 induced by the GCCF problem as a rooted tree. Then, we
                 propose an anytime solution algorithm (Coalition
                 Formation for Sparse Synergies (CFSS)), which is
                 particularly efficient when applied to a general class
                 of characteristic functions called m + a functions.
                 Moreover, we show how CFSS can be efficiently
                 parallelised to solve GCCF using a nonredundant
                 partition of the search space. We benchmark CFSS on
                 both synthetic and realistic scenarios, using a
                 real-world dataset consisting of the energy consumption
                 of a large number of households in the UK. Our results
                 show that, in the best case, the serial version of CFSS
                 is four orders of magnitude faster than the state of
                 the art, while the parallel version is 9.44 times
                 faster than the serial version on a 12-core machine.
                 Moreover, CFSS is the first approach to provide anytime
                 approximate solutions with quality guarantees for very
                 large systems of agents (i.e., with more than 2,700
                 agents).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{An:2017:DDF,
  author =       "Bo An and Haipeng Chen and Noseong Park and V. S.
                 Subrahmanian",
  title =        "Data-Driven Frequency-Based Airline Profit
                 Maximization",
  journal =      j-TIST,
  volume =       "8",
  number =       "4",
  pages =        "61:1--61:??",
  month =        jul,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3041217",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:41 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Although numerous traditional models predict market
                 share and demand along airline routes, the prediction
                 of existing models is not precise enough, and to the
                 best of our knowledge, there is no use of data
                 mining--based forecasting techniques for improving
                 airline profitability. We propose the maximizing
                 airline profits (MAP) architecture designed to help
                 airlines and make two key contributions in airline
                 market share and route demand prediction and
                 prediction-based airline profit optimization. Compared
                 to past methods used to forecast market share and
                 demand along airline routes, we introduce a novel
                 ensemble forecasting (MAP-EF) approach considering two
                 new classes of features: (i) features derived from
                 clusters of similar routes and (ii) features based on
                 equilibrium pricing. We show that MAP-EF achieves much
                 better Pearson correlation coefficients (greater than
                 0.95 vs. 0.82 for market share, 0.98 vs. 0.77 for
                 demand) and R$^2$ -values compared to three
                 state-of-the-art works for forecasting market share and
                 demand while showing much lower variance. Using the
                 results of MAP-EF, we develop MAP--bilevel branch and
                 bound (MAP-BBB) and MAP-greedy (MAP-G) algorithms to
                 optimally allocate flight frequencies over multiple
                 routes to maximize an airline's profit. We also study
                 two extensions of the profit maximization problem
                 considering frequency constraints and long-term
                 profits. Furthermore, we develop algorithms for
                 computing Nash equilibrium frequencies when there are
                 multiple strategic airlines. Experimental results show
                 that airlines can increase profits by a significant
                 margin. All experiments were conducted with data
                 aggregated from four sources: the U.S. Bureau of
                 Transportation Statistics (BTS), the U.S. Bureau of
                 Economic Analysis (BEA), the National Transportation
                 Safety Board (NTSB), and the U.S. Census Bureau (CB).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yao:2017:UCM,
  author =       "Lina Yao and Quan Z. Sheng and Anne H. H. Ngu and Xue
                 Li and Boualem Benattalah",
  title =        "Unveiling Correlations via Mining Human-Thing
                 Interactions in the {Web of Things}",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "62:1--62:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3035967",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With recent advances in radio-frequency identification
                 (RFID), wireless sensor networks, and Web services,
                 physical things are becoming an integral part of the
                 emerging ubiquitous Web. Finding correlations among
                 ubiquitous things is a crucial prerequisite for many
                 important applications such as things search,
                 discovery, classification, recommendation, and
                 composition. This article presents DisCor-T, a novel
                 graph-based approach for discovering underlying
                 connections of things via mining the rich content
                 embodied in the human-thing interactions in terms of
                 user, temporal, and spatial information. We model this
                 various information using two graphs, namely a
                 spatio-temporal graph and a social graph. Then, random
                 walk with restart (RWR) is applied to find proximities
                 among things, and a relational graph of things (RGT)
                 indicating implicit correlations of things is learned.
                 The correlation analysis lays a solid foundation
                 contributing to improved effectiveness in things
                 management and analytics. To demonstrate the utility of
                 the proposed approach, we develop a flexible
                 feature-based classification framework on top of RGT
                 and perform a systematic case study. Our evaluation
                 exhibits the strength and feasibility of the proposed
                 approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lagree:2017:YTS,
  author =       "Paul Lagr{\'e}e and Bogdan Cautis and Hossein Vahabi",
  title =        "As-You-Type Social Aware Search",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "63:1--63:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3035969",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Modern search applications feature real-time
                 as-you-type query search. In its elementary form, the
                 problem consists in retrieving a set of k search
                 results, that is, performing a search with a given
                 prefix, and showing the top-ranked results. In this
                 article, we focus on as-you-type keyword search over
                 social media, that is, data published by users who are
                 interconnected through a social network. We adopt a
                 ``network-aware'' interpretation for information
                 relevance, by which information produced by users who
                 are closer to the user issuing a request is considered
                 more relevant. This query model raises new challenges
                 for effectiveness and efficiency in online search, even
                 when the intent of the user is fully specified, as a
                 complete query given as input in one keystroke. This is
                 mainly because it requires a joint exploration of the
                 social space and traditional IR indexes, such as
                 inverted lists. We describe a memory-efficient and
                 incremental prefix-based retrieval algorithm, which
                 also exhibits an anytime behavior, allowing output of
                 the most likely answer within any chosen runtime limit.
                 We evaluate our approach through extensive experiments
                 for several applications and search scenarios. We
                 consider searching for posts in microblogging (Twitter
                 and Tumblr), for businesses (Yelp), as well as for
                 movies (Amazon) based on reviews. We also conduct a
                 series of experiments comparing our algorithm with
                 baselines using state-of-the-art techniques and
                 measuring the improvements brought by several key
                 optimizations. They show that our solution is effective
                 in answering real-time as-you-type searches over social
                 media.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gao:2017:SOL,
  author =       "Xingyu Gao and Steven C. H. Hoi and Yongdong Zhang and
                 Jianshe Zhou and Ji Wan and Zhenyu Chen and Jintao Li
                 and Jianke Zhu",
  title =        "Sparse Online Learning of Image Similarity",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "64:1--64:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3065950",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Learning image similarity plays a critical role in
                 real-world multimedia information retrieval
                 applications, especially in Content-Based Image
                 Retrieval (CBIR) tasks, in which an accurate retrieval
                 of visually similar objects largely relies on an
                 effective image similarity function. Crafting a good
                 similarity function is very challenging because visual
                 contents of images are often represented as feature
                 vectors in high-dimensional spaces, for example, via
                 bag-of-words (BoW) representations, and traditional
                 rigid similarity functions, for example, cosine
                 similarity, are often suboptimal for CBIR tasks. In
                 this article, we address this fundamental problem, that
                 is, learning to optimize image similarity with sparse
                 and high-dimensional representations from large-scale
                 training data, and propose a novel scheme of Sparse
                 Online Learning of Image Similarity (SOLIS). In
                 contrast to many existing image-similarity learning
                 algorithms that are designed to work with
                 low-dimensional data, SOLIS is able to learn image
                 similarity from large-scale image data in sparse and
                 high-dimensional spaces. Our encouraging results showed
                 that the proposed new technique achieves highly
                 competitive accuracy as compared to the
                 state-of-the-art approaches but enjoys significant
                 advantages in computational efficiency, model sparsity,
                 and retrieval scalability, making it more practical for
                 real-world multimedia retrieval applications.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Pan:2017:TLB,
  author =       "Weike Pan and Qiang Yang and Yuchao Duan and Ben Tan
                 and Zhong Ming",
  title =        "Transfer Learning for Behavior Ranking",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "65:1--65:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3057732",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Intelligent recommendation has been well recognized as
                 one of the major approaches to address the information
                 overload problem in the big data era. A typical
                 intelligent recommendation engine usually consists of
                 three major components, that is, data as the main
                 input, algorithms for preference learning, and system
                 for user interaction and high-performance computation.
                 We observe that the data (e.g., users' behavior) are
                 usually in different forms, such as examinations (e.g.,
                 browse and collection) and ratings, where the former
                 are often much more abundant than the latter. Although
                 the data are in different representations, they are
                 both related to users' true preferences and are also
                 deemed complementary to each other for preference
                 learning. However, very few ranking or recommendation
                 algorithms have been developed to exploit such two
                 types of user behavior. In this article, we focus on
                 jointly modeling the examination behavior and rating
                 behavior and develop a novel and efficient
                 ranking-oriented recommendation algorithm accordingly.
                 First, we formally define a new recommendation problem
                 termed behavior ranking, which aims to build a
                 ranking-oriented model by exploiting both the
                 examination behavior and rating behavior. Second, we
                 develop a simple and generic transfer to rank (ToR)
                 algorithm for behavior ranking, which transfers
                 knowledge of candidate items from a global preference
                 learning task to a local preference learning task.
                 Compared with the previous work on integrating
                 heterogeneous user behavior, our ToR algorithm is the
                 first ranking-oriented solution, which can effectively
                 generate recommendations in a more direct manner than
                 those regression-oriented methods. Extensive empirical
                 studies show that our ToR algorithm performs
                 significantly more accurately than the state-of-the-art
                 methods in most cases. Furthermore, our ToR algorithm
                 is very efficient in terms of the time complexity,
                 which is similar to those for homogeneous user behavior
                 alone.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Agrawal:2017:HWS,
  author =       "Rakesh Agrawal and Behzad Golshan and Evangelos E.
                 Papalexakis",
  title =        "Homogeneity in {Web} Search Results: Diagnosis and
                 Mitigation",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "66:1--66:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3057731",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Access to diverse perspectives nurtures an informed
                 citizenry. Google and Bing have emerged as the duopoly
                 that largely arbitrates which English-language
                 documents are seen by web searchers. We present our
                 empirical study over the search results produced by
                 Google and Bing that shows a large overlap. Thus,
                 citizens may not gain different perspectives by
                 simultaneously probing them for the same query.
                 Fortunately, our study also shows that by mining
                 Twitter data, one can obtain search results that are
                 quite distinct from those produced by Google, Bing, and
                 Bing News. Additionally, the users found those results
                 to be quite informative. We also present two novel
                 tools we designed for this study. One uses tensor
                 analysis to derive low-dimensional compact
                 representation of search results and study their
                 behavior over time. The other uses machine learning and
                 quantifies the similarity of results between two search
                 engines by framing it as a prediction problem. Although
                 these tools have different underpinnings, the
                 analytical results obtained using them corroborate each
                 other, which reinforces the confidence one can place in
                 them for finding meaningful insights from big data.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hu:2017:VCF,
  author =       "Zhenhen Hu and Yonggang Wen and Luoqi Liu and Jianguo
                 Jiang and Richang Hong and Meng Wang and Shuicheng
                 Yan",
  title =        "Visual Classification of Furniture Styles",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "67:1--67:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3065951",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Furniture style describes the discriminative
                 appearance characteristics of furniture. It plays an
                 important role in real-world indoor decoration. In this
                 article, we explore the furniture style features and
                 study the problem of furniture style classification.
                 Differing from traditional object classification,
                 furniture style classification aims at classifying
                 different furniture in terms of the ``style'' that
                 describes its appearance (e.g., American style, Gothic
                 style, Rococo style, etc.) rather than the ``kind''
                 that is more related to its functional structure (e.g.,
                 bed, desk, etc.). To pursue efficient furniture style
                 features, we construct a novel dataset of furniture
                 styles that contains 16 common style categories and
                 implement three strategies with respect to two
                 categories of classification, that is, handcrafted
                 classification and learning-based classification.
                 First, we follow the typical image classification
                 pipeline to extract the handcrafted features and train
                 the classifier by support vector machine. Then we use
                 the convolutional neural network to extract
                 learning-based features from training images. To obtain
                 comprehensive furniture style features, we finally
                 combine the handcrafted image classification pipeline
                 and the learning-based network. We experimentally
                 evaluate the performances of handcrafted features and
                 learning-based features of each strategy, and the
                 results show the superiority of learning-based features
                 and also the comprehensiveness of handcrafted
                 features.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ou:2017:AIV,
  author =       "Xinyu Ou and Hefei Ling and Han Yu and Ping Li and
                 Fuhao Zou and Si Liu",
  title =        "Adult Image and Video Recognition by a Deep
                 Multicontext Network and Fine-to-Coarse Strategy",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "68:1--68:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3057733",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Adult image and video recognition is an important and
                 challenging problem in the real world. Low-level
                 feature cues do not produce good enough information,
                 especially when the dataset is very large and has
                 various data distributions. This issue raises a serious
                 problem for conventional approaches. In this article,
                 we tackle this problem by proposing a deep multicontext
                 network with fine-to-coarse strategy for adult image
                 and video recognition. We employ a deep convolution
                 networks to model fusion features of sensitive objects
                 in images. Global contexts and local contexts are both
                 taken into consideration and are jointly modeled in a
                 unified multicontext deep learning framework. To make
                 the model more discriminative for diverse target
                 objects, we investigate a novel hierarchical method,
                 and a task-specific fine-to-coarse strategy is designed
                 to make the multicontext modeling more suitable for
                 adult object recognition. Furthermore, some recently
                 proposed deep models are investigated. Our approach is
                 extensively evaluated on four different datasets. One
                 dataset is used for ablation experiments, whereas
                 others are used for generalization experiments. Results
                 show significant and consistent improvements over the
                 state-of-the-art methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ottens:2017:DUC,
  author =       "Brammert Ottens and Christos Dimitrakakis and Boi
                 Faltings",
  title =        "{DUCT}: an Upper Confidence Bound Approach to
                 Distributed Constraint Optimization Problems",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "69:1--69:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3066156",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We propose a distributed upper confidence bound
                 approach, DUCT, for solving distributed constraint
                 optimization problems. We compare four variants of this
                 approach with a baseline random sampling algorithm, as
                 well as other complete and incomplete algorithms for
                 DCOPs. Under general assumptions, we theoretically show
                 that the solution found by DUCT after T steps is
                 approximately T$^{-1}$ -close to the optimal.
                 Experimentally, we show that DUCT matches the optimal
                 solution found by the well-known DPOP and O-DPOP
                 algorithms on moderate-size problems, while always
                 requiring less agent communication. For larger
                 problems, where DPOP fails, we show that DUCT produces
                 significantly better solutions than local, incomplete
                 algorithms. Overall, we believe that DUCT is a
                 practical, scalable algorithm for complex DCOPs.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Assem:2017:RRC,
  author =       "Haytham Assem and Teodora Sandra Buda and Declan
                 O'Sullivan",
  title =        "{RCMC}: Recognizing Crowd-Mobility Patterns in Cities
                 Based on Location Based Social Networks Data",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "70:1--70:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3086636",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "During the past few years, the analysis of data
                 generated from Location-Based Social Networks (LBSNs)
                 have aided in the identification of urban patterns,
                 understanding activity behaviours in urban areas, as
                 well as producing novel recommender systems that
                 facilitate users' choices. Recognizing crowd-mobility
                 patterns in cities is very important for public safety,
                 traffic managment, disaster management, and urban
                 planning. In this article, we propose a framework for
                 Recognizing the Crowd Mobility Patterns in Cities using
                 LBSN data. Our proposed framework comprises four main
                 components: data gathering, recurrent crowd-mobility
                 patterns extraction, temporal functional regions
                 detection, and visualization component. More
                 specifically, we employ a novel approach based on
                 Non-negative Matrix Factorization and Gaussian Kernel
                 Density Estimation for extracting the recurrent
                 crowd-mobility patterns in cities illustrating how
                 crowd shifts from one area to another during each day
                 across various time slots. Moreover, the framework
                 employs a hierarchical clustering-based algorithm for
                 identifying what we refer to as temporal functional
                 regions by modeling functional areas taking into
                 account temporal variation by means of check-ins'
                 categories. We build the framework using a
                 spatial-temporal dataset crawled from Twitter for two
                 entire years (2013 and 2014) for the area of Manhattan
                 in New York City. We perform a detailed analysis of the
                 extracted crowd patterns with an exploratory
                 visualization showing that our proposed approach can
                 identify clearly obvious mobility patterns that recur
                 over time and location in the urban scenario. Using
                 same time interval, we show that correlating the
                 temporal functional regions with the recognized
                 recurrent crowd-mobility patterns can yield to a deeper
                 understanding of city dynamics and the motivation
                 behind the crowd mobility. We are confident that our
                 proposed framework not only can help in managing
                 complex city environments and better allocation of
                 resources based on the expected crowd mobility and
                 temporal functional regions but also can have a direct
                 implication on a variety of applications such as
                 personalized recommender systems, anomalous event
                 detection, disaster resilience management systems, and
                 others.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cui:2017:ACF,
  author =       "Chaoran Cui and Jialie Shen and Liqiang Nie and
                 Richang Hong and Jun Ma",
  title =        "Augmented Collaborative Filtering for Sparseness
                 Reduction in Personalized {POI} Recommendation",
  journal =      j-TIST,
  volume =       "8",
  number =       "5",
  pages =        "71:1--71:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3086635",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "As mobile device penetration increases, it has become
                 pervasive for images to be associated with locations in
                 the form of geotags. Geotags bridge the gap between the
                 physical world and the cyberspace, giving rise to new
                 opportunities to extract further insights into user
                 preferences and behaviors. In this article, we aim to
                 exploit geotagged photos from online photo-sharing
                 sites for the purpose of personalized Point-of-Interest
                 (POI) recommendation. Owing to the fact that most users
                 have only very limited travel experiences, data
                 sparseness poses a formidable challenge to personalized
                 POI recommendation. To alleviate data sparseness, we
                 propose to augment current collaborative filtering
                 algorithms along from multiple perspectives.
                 Specifically, hybrid preference cues comprising
                 user-uploaded and user-favored photos are harvested to
                 study users' tastes. Moreover, heterogeneous high-order
                 relationship information is jointly captured from user
                 social networks and POI multimodal contents with
                 hypergraph models. We also build upon the matrix
                 factorization algorithm to integrate the disparate
                 sources of preference and relationship information, and
                 apply our approach to directly optimize user preference
                 rankings. Extensive experiments on a large and publicly
                 accessible dataset well verified the potential of our
                 approach for addressing data sparseness and offering
                 quality recommendations to users, especially for those
                 who have only limited travel experiences.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhao:2017:PLS,
  author =       "Hongke Zhao and Yong Ge and Qi Liu and Guifeng Wang
                 and Enhong Chen and Hefu Zhang",
  title =        "{P2P} Lending Survey: Platforms, Recent Advances and
                 Prospects",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "72:1--72:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078848",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "P2P lending is an emerging Internet-based application
                 where individuals can directly borrow money from each
                 other. The past decade has witnessed the rapid
                 development and prevalence of online P2P lending
                 platforms, examples of which include Prosper,
                 LendingClub, and Kiva. Meanwhile, extensive research
                 has been done that mainly focuses on the studies of
                 platform mechanisms and transaction data. In this
                 article, we provide a comprehensive survey on the
                 research about P2P lending, which, to the best of our
                 knowledge, is the first focused effort in this field.
                 Specifically, we first provide a systematic taxonomy
                 for P2P lending by summarizing different types of
                 mainstream platforms and comparing their working
                 mechanisms in detail. Then, we review and organize the
                 recent advances on P2P lending from various
                 perspectives (e.g., economics and sociology
                 perspective, and data-driven perspective). Finally, we
                 propose our opinions on the prospects of P2P lending
                 and suggest some future research directions in this
                 field. Meanwhile, throughout this paper, some analysis
                 on real-world data collected from Prosper and Kiva are
                 also conducted.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Feyisetan:2017:SIP,
  author =       "Oluwaseyi Feyisetan and Elena Simperl",
  title =        "Social Incentives in Paid Collaborative
                 Crowdsourcing",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "73:1--73:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078852",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Paid microtask crowdsourcing has traditionally been
                 approached as an individual activity, with units of
                 work created and completed independently by the members
                 of the crowd. Other forms of crowdsourcing have,
                 however, embraced more varied models, which allow for a
                 greater level of participant interaction and
                 collaboration. This article studies the feasibility and
                 uptake of such an approach in the context of paid
                 microtasks. Specifically, we compare engagement, task
                 output, and task accuracy in a paired-worker model with
                 the traditional, single-worker version. Our experiments
                 indicate that collaboration leads to better accuracy
                 and more output, which, in turn, translates into lower
                 costs. We then explore the role of the social flow and
                 social pressure generated by collaborating partners as
                 sources of incentives for improved performance. We
                 utilise a Bayesian method in conjunction with interface
                 interaction behaviours to detect when one of the
                 workers in a pair tries to exit the task. Upon this
                 realisation, the other worker is presented with the
                 opportunity to contact the exiting partner to stay:
                 either for personal financial reasons (i.e., they have
                 not completed enough tasks to qualify for a payment) or
                 for fun (i.e., they are enjoying the task). The
                 findings reveal that: (1) these socially motivated
                 incentives can act as furtherance mechanisms to help
                 workers attain and exceed their task requirements and
                 produce better results than baseline collaborations;
                 (2) microtask crowd workers are empathic (as opposed to
                 selfish) agents, willing to go the extra mile to help
                 their partners get paid; and, (3) social furtherance
                 incentives create a win-win scenario for the requester
                 and for the workers by helping more workers get paid by
                 re-engaging them before they drop out.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Khezerlou:2017:TFA,
  author =       "Amin Vahedian Khezerlou and Xun Zhou and Lufan Li and
                 Zubair Shafiq and Alex X. Liu and Fan Zhang",
  title =        "A Traffic Flow Approach to Early Detection of
                 Gathering Events: Comprehensive Results",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "74:1--74:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078850",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Given a spatial field and the traffic flow between
                 neighboring locations, the early detection of gathering
                 events ( edge) problem aims to discover and localize a
                 set of most likely gathering events. It is important
                 for city planners to identify emerging gathering events
                 that might cause public safety or sustainability
                 concerns. However, it is challenging to solve the edge
                 problem due to numerous candidate gathering footprints
                 in a spatial field and the nontrivial task of balancing
                 pattern quality and computational efficiency. Prior
                 solutions to model the edge problem lack the ability to
                 describe the dynamic flow of traffic and the potential
                 gathering destinations because they rely on static or
                 undirected footprints. In our recent work, we modeled
                 the footprint of a gathering event as a Gathering Graph
                 (G-Graph), where the root of the directed acyclic
                 G-Graph is the potential destination and the directed
                 edges represent the most likely paths traffic takes to
                 move toward the destination. We also proposed an
                 efficient algorithm called SmartEdge to discover the
                 most likely nonoverlapping G-Graphs in the given
                 spatial field. However, it is challenging to perform a
                 systematic performance study of the proposed algorithm,
                 due to unavailability of the ground truth of gathering
                 events. In this article, we introduce an event
                 simulation mechanism, which makes it possible to
                 conduct a comprehensive performance study of the
                 SmartEdge algorithm. We measure the quality of the
                 detected patterns, in a systematic way, in terms of
                 timeliness and location accuracy. The results show
                 that, on average, the SmartEdge algorithm is able to
                 detect patterns within a grid cell away (less than 500
                 meters) of the simulated events and detect patterns of
                 the simulated events as early as 10 minutes prior to
                 the first arrival to the gathering event.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Feng:2017:MHC,
  author =       "Xiaodong Feng and Sen Wu and Wenjun Zhou",
  title =        "Multi-Hypergraph Consistent Sparse Coding",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "75:1--75:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078846",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Sparse representation has been a powerful technique
                 for modeling high-dimensional data. As an unsupervised
                 technique to extract sparse representations, sparse
                 coding encodes the original data into a new sparse code
                 space and simultaneously learns a dictionary
                 representing high-level semantics. Existing methods
                 have considered local manifold within high-dimensional
                 data using graph/hypergraph Laplacian regularization,
                 and more from the manifold could be utilized to improve
                 the performance. In this article, we propose to further
                 regulate the sparse coding so that the learned sparse
                 codes can well reconstruct the hypergraph structure. In
                 particular, we add a novel hypergraph consistency
                 regularization term (HC) by minimizing the
                 reconstruction error of the hypergraph incidence or
                 weight matrix. Moreover, we extend the HC term to
                 multi-hypergraph consistent sparse coding (MultiCSC)
                 and automatically select the optimal manifold structure
                 under the multi-hypergraph learning framework. We show
                 that the optimization of MultiCSC can be solved
                 efficiently, and that several existing sparse coding
                 methods can fit into the general framework of MultiCSC
                 as special cases. As a case study, hypergraph incidence
                 consistent sparse coding is applied to perform
                 semi-auto image tagging, demonstrating the
                 effectiveness of hypergraph consistency regulation. We
                 perform further experiments using MultiCSC for image
                 clustering, which outperforms a number of baselines.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "75",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Burt:2017:ISI,
  author =       "Ronald Burt and Jie Tang and Michalis Vazirgiannis and
                 Shuang Yang",
  title =        "Introduction to Special Issue on Social Media
                 Processing ({TIST --- SMP})",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "76:1--76:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3110318",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "76",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2017:PMR,
  author =       "Yang Li and Jing Jiang and Ting Liu and Minghui Qiu
                 and Xiaofei Sun",
  title =        "Personalized Microtopic Recommendation on Microblogs",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "77:1--77:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2932192",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Microblogging services such as Sina Weibo and Twitter
                 allow users to create tags explicitly indicated by the
                 \# symbol. In Sina Weibo, these tags are called
                 microtopics, and in Twitter, they are called hashtags.
                 In Sina Weibo, each microtopic has a designate page and
                 can be directly visited or commented on. Recommending
                 these microtopics to users based on their interests can
                 help users efficiently acquire information. However, it
                 is non-trivial to recommend microtopics to users to
                 satisfy their information needs. In this article, we
                 investigate the task of personalized microtopic
                 recommendation, which exhibits two challenges. First,
                 users usually do not give explicit ratings to
                 microtopics. Second, there exists rich information
                 about users and microtopics, for example, users'
                 published content and biographical information, but it
                 is not clear how to best utilize such information. To
                 address the above two challenges, we propose a joint
                 probabilistic latent factor model to integrate rich
                 information into a matrix factorization-based solution
                 to microtopic recommendation. Our model builds on top
                 of collaborative filtering, content analysis, and
                 feature regression. Using two real-world datasets, we
                 evaluate our model with different kinds of content and
                 contextual information. Experimental results show that
                 our model significantly outperforms a few competitive
                 baseline methods, especially in the circumstance where
                 users have few adoption behaviors.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "77",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Glenski:2017:RES,
  author =       "Maria Glenski and Tim Weninger",
  title =        "Rating Effects on Social News Posts and Comments",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "78:1--78:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/2963104",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "At a time when information seekers first turn to
                 digital sources for news and opinion, it is critical
                 that we understand the role that social media plays in
                 human behavior. This is especially true when
                 information consumers also act as information producers
                 and editors through their online activity. In order to
                 better understand the effects that editorial ratings
                 have on online human behavior, we report the results of
                 a two large-scale in vivo experiments in social media.
                 We find that small, random rating manipulations on
                 social media posts and comments created significant
                 changes in downstream ratings, resulting in
                 significantly different final outcomes. We found
                 positive herding effects for positive treatments on
                 posts, increasing the final rating by 11.02\% on
                 average, but not for positive treatments on comments.
                 Contrary to the results of related work, we found
                 negative herding effects for negative treatments on
                 posts and comments, decreasing the final ratings, on
                 average, of posts by 5.15\% and of comments by 37.4\%.
                 Compared to the control group, the probability of
                 reaching a high rating ($ \geq 2000$) for posts is
                 increased by 24.6\% when posts receive the positive
                 treatment and for comments it is decreased by 46.6\%
                 when comments receive the negative treatment.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "78",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2017:ECB,
  author =       "Chien-Cheng Chen and Kuo-Wei Hsu and Wen-Chih Peng",
  title =        "Exploring Communication Behaviors of Users to Target
                 Potential Users in Mobile Social Networks",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "79:1--79:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3022472",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In mobile communication services, users can
                 communicate with each other over different
                 telecommunication carriers. For telecom operators, how
                 to acquire and retain users is a significant and
                 practical task. Note that telecom operators only have
                 their own customer profiles. For the users from other
                 telecom operators, their information is sparse. Thus,
                 given a set of communication logs, the main theme of
                 our work is to identify the potential users who will
                 possibly join the target services in the near future.
                 Since only a limited amount of information is
                 available, one challenging issue is how to extract
                 features from the communication logs. In this article,
                 we propose a Communication-Based Feature Generation
                 (CBFG) framework that extracts features and builds
                 models to infer the potential users. Explicitly, we
                 construct a heterogeneous information network from the
                 communication logs of users. Then, we extract the
                 explicit features, which refer to those calling
                 features of users, from the potential users'
                 interaction behaviors in the heterogeneous information
                 network. Moreover, from the calling behaviors of users,
                 one could extract the possible community structures of
                 users. Based on the community structures, we further
                 extract the implicit features of users. In light of
                 both explicit and implicit features, we propose an
                 information-gain-based method to select the effective
                 features. According to the features selected, we
                 utilize three popular classifiers (i.e., AdaBoost,
                 Random Forest, and SVM) to build models to target the
                 potential users. In addition, we have designed a
                 sampling approach to extract training data for
                 classifiers. To evaluate our methods, we have conducted
                 experiments on a real dataset. The results of our
                 experiments show that the features extracted by our
                 proposed method can be effective for targeting the
                 potential users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "79",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Huang:2017:UAI,
  author =       "Chao Huang and Dong Wang and Jun Tao",
  title =        "An Unsupervised Approach to Inferring the Localness of
                 People Using Incomplete Geotemporal Online Check-In
                 Data",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "80:1--80:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3022471",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Inferring the localness of people is to classify
                 people who are local residents in a city from people
                 who visit the city by analyzing online check-in points
                 that are contributed by online users. This information
                 is critical for the urban planning, user profiling, and
                 localized recommendation systems. Supervised learning
                 approaches have been developed to infer the location of
                 people in a city by assuming the availability of
                 high-quality training datasets with complete
                 geotemporal information. In this article, we develop an
                 unsupervised model to accurately identify local people
                 in a city by using the incomplete online check-in data
                 that are publicly available. In particular, we develop
                 an incomplete geotemporal expectation maximization
                 (IGT-EM) scheme, which incorporates a set of hidden
                 variables to represent the localness of people and a
                 set of estimation parameters to represent the
                 likelihood of venues to attract local and nonlocal
                 people, respectively. Our solution can accurately
                 classify local people from nonlocal nones without
                 requiring any training data. We also implement a
                 parallel IGT-EM algorithm by leveraging the computing
                 power of a graphic processing unit (GPU) that consists
                 of 2,496 cores. In the evaluation, we compare our new
                 approach with the existing solutions through four
                 real-world case studies using data from the New York
                 City, Chicago, Boston, and Washington, DC. The results
                 show that our approach can identify the local people
                 and significantly outperform the compared baselines in
                 estimation accuracy and execution time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "80",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tu:2017:PPI,
  author =       "Cunchao Tu and Zhiyuan Liu and Huanbo Luan and Maosong
                 Sun",
  title =        "{PRISM}: Profession Identification in Social Media",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "81:1--81:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3070665",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Profession is an important social attribute of people.
                 It plays a crucial role in commercial services such as
                 personalized recommendation and targeted advertising.
                 In practice, profession information is usually
                 unavailable due to privacy and other reasons. In this
                 article, we explore the task of identifying user
                 professions according to their behaviors in social
                 media. The task confronts the following challenges that
                 make it non-trivial: how to incorporate heterogeneous
                 information of user behaviors, how to effectively
                 utilize both labeled and unlabeled data, and how to
                 exploit community structure. To address these
                 challenges, we present a framework called Profession
                 Identification in Social Media. It takes advantage of
                 both personal information and community structure of
                 users in the following aspects: (1) We present a
                 cascaded two-level classifier with heterogeneous
                 personal features to measure the confidence of users
                 belonging to different professions. (2) We present a
                 multi-training process to take advantages of both
                 labeled and unlabeled data to enhance classification
                 performance. (3) We design a profession identification
                 method synthetically considering the confidences from
                 personal features and community structure. We collect a
                 real-world dataset to conduct experiments, and
                 experimental results demonstrate the significant
                 effectiveness of our method compared with other
                 baseline methods. By applying prediction on large-scale
                 users, we also analyze characteristics of microblog
                 users, finding that there are significant diversities
                 among users of different professions in demographics,
                 social network structures, and linguistic styles.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "81",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chikhaoui:2017:DCA,
  author =       "Belkacem Chikhaoui and Mauricio Chiazzaro and Shengrui
                 Wang and Martin Sotir",
  title =        "Detecting Communities of Authority and Analyzing Their
                 Influence in Dynamic Social Networks",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "82:1--82:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3070658",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Users in real-world social networks are organized into
                 communities that differ from each other in terms of
                 influence, authority, interest, size, etc. This article
                 addresses the problems of detecting communities of
                 authority and of estimating the influence of such
                 communities in dynamic social networks. These are new
                 issues that have not yet been addressed in the
                 literature, and they are important in applications such
                 as marketing and recommender systems. To facilitate the
                 identification of communities of authority, our
                 approach first detects communities sharing common
                 interests, which we call ``meta-communities,'' by
                 incorporating topic modeling based on users' community
                 memberships. Then, communities of authority are
                 extracted with respect to each meta-community, using a
                 new measure based on the betweenness centrality. To
                 assess the influence between communities over time, we
                 propose a new model based on the Granger causality
                 method. Through extensive experiments on a variety of
                 social network datasets, we empirically demonstrate the
                 suitability of our approach for community-of-authority
                 detection and assessment of the influence between
                 communities over time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "82",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fu:2017:RSD,
  author =       "Hao Fu and Xing Xie and Yong Rui and Neil Zhenqiang
                 Gong and Guangzhong Sun and Enhong Chen",
  title =        "Robust Spammer Detection in Microblogs: Leveraging
                 User Carefulness",
  journal =      j-TIST,
  volume =       "8",
  number =       "6",
  pages =        "83:1--83:??",
  month =        sep,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3086637",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Microblogging Web sites, such as Twitter and Sina
                 Weibo, have become popular platforms for socializing
                 and sharing information in recent years. Spammers have
                 also discovered this new opportunity to unfairly
                 overpower normal users with unsolicited content, namely
                 social spams. Although it is intuitive for everyone to
                 follow legitimate users, recent studies show that both
                 legitimate users and spammers follow spammers for
                 different reasons. Evidence of users seeking spammers
                 on purpose is also observed. We regard this behavior as
                 useful information for spammer detection. In this
                 article, we approach the problem of spammer detection
                 by leveraging the ``carefulness'' of users, which
                 indicates how careful a user is when she is about to
                 follow a potential spammer. We propose a framework to
                 measure the carefulness and develop a supervised
                 learning algorithm to estimate it based on known
                 spammers and legitimate users. We illustrate how the
                 robustness of the detection algorithms can be improved
                 with aid of the proposed measure. Evaluation on two
                 real datasets from Sina Weibo and Twitter with millions
                 of users are performed, as well as an online test on
                 Sina Weibo. The results show that our approach indeed
                 captures the carefulness, and it is effective for
                 detecting spammers. In addition, we find that our
                 measure is also beneficial for other applications, such
                 as link prediction.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "83",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2017:RGR,
  author =       "Xuelong Li and Guosheng Cui and Yongsheng Dong",
  title =        "Refined-Graph Regularization-Based Nonnegative Matrix
                 Factorization",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "1:1--1:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3090312",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Nonnegative matrix factorization (NMF) is one of the
                 most popular data representation methods in the field
                 of computer vision and pattern recognition.
                 High-dimension data are usually assumed to be sampled
                 from the submanifold embedded in the original
                 high-dimension space. To preserve the locality
                 geometric structure of the data, $k$-nearest neighbor
                 ($k$-NN) graph is often constructed to encode the
                 near-neighbor layout structure. However, $k$-NN graph
                 is based on Euclidean distance, which is sensitive to
                 noise and outliers. In this article, we propose a
                 refined-graph regularized nonnegative matrix
                 factorization by employing a manifold regularized
                 least-squares regression (MRLSR) method to compute the
                 refined graph. In particular, each sample is
                 represented by the whole dataset regularized with $
                 l_2$-norm and Laplacian regularizer. Then a MRLSR graph
                 is constructed based on the representative coefficients
                 of each sample. Moreover, we present two optimization
                 schemes to generate refined-graphs by employing a
                 hard-thresholding technique. We further propose two
                 refined-graph regularized nonnegative matrix
                 factorization methods and use them to perform image
                 clustering. Experimental results on several image
                 datasets reveal that they outperform 11 representative
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2017:MAO,
  author =       "Zhifeng Li and Dihong Gong and Kai Zhu and Dacheng Tao
                 and Xuelong Li",
  title =        "Multifeature Anisotropic Orthogonal {Gaussian} Process
                 for Automatic Age Estimation",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "2:1--2:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3090311",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Automatic age estimation is an important yet
                 challenging problem. It has many promising applications
                 in social media. Of the existing age estimation
                 algorithms, the personalized approaches are among the
                 most popular ones. However, most person-specific
                 approaches rely heavily on the availability of training
                 images across different ages for a single subject,
                 which is usually difficult to satisfy in practical
                 application of age estimation. To address this
                 limitation, we first propose a new model called
                 Orthogonal Gaussian Process (OGP), which is not
                 restricted by the number of training samples per
                 person. In addition, without sacrifice of
                 discriminative power, OGP is much more computationally
                 efficient than the standard Gaussian Process. Based on
                 OGP, we then develop an effective age estimation
                 approach, namely anisotropic OGP (A-OGP), to further
                 reduce the estimation error. A-OGP is based on an
                 anisotropic noise level learning scheme that
                 contributes to better age estimation performance. To
                 finally optimize the performance of age estimation, we
                 propose a multifeature A-OGP fusion framework that uses
                 multiple features combined with a random sampling
                 method in the feature space. Extensive experiments on
                 several public domain face aging datasets (FG-NET,
                 MORPH Album1, and MORPH Album 2) are conducted to
                 demonstrate the state-of-the-art estimation accuracy of
                 our new algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gao:2017:FSV,
  author =       "Yang Gao and Yuefeng Li and Raymond Y. K. Lau and Yue
                 Xu and Md Abul Bashar",
  title =        "Finding Semantically Valid and Relevant Topics by
                 Association-Based Topic Selection Model",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "3:1--3:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3094786",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Topic modelling methods such as Latent Dirichlet
                 Allocation (LDA) have been successfully applied to
                 various fields, since these methods can effectively
                 characterize document collections by using a mixture of
                 semantically rich topics. So far, many models have been
                 proposed. However, the existing models typically
                 outperform on full analysis on the whole collection to
                 find all topics but difficult to capture coherent and
                 specifically meaningful topic representations.
                 Furthermore, it is very challenging to incorporate user
                 preferences into existing topic modelling methods to
                 extract relevant topics. To address these problems, we
                 develop a novel personalized Association-based Topic
                 Selection (ATS) model, which can identify semantically
                 valid and relevant topics from a set of raw topics
                 based on the semantical relatedness between users'
                 preferences and the structured patterns captured in
                 topics. The advantage of the proposed ATS model is that
                 it enables an interactive topic modelling process
                 driven by users' specific interests. Based on three
                 benchmark datasets, namely, RCV1, R8, and WT10G under
                 the context of information filtering (IF) and
                 information retrieval (IR), our rigorous experiments
                 show that the proposed ATS model can effectively
                 identify relevant topics with respect to users'
                 specific interests, and hence to improve the
                 performance of IF and IR.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhu:2017:ATS,
  author =       "Wenwu Zhu and Jean Walrand and Yike Guo and Zhi Wang",
  title =        "{ACM TIST} Special Issue on Data-Driven Intelligence
                 for Wireless Networking",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "4:1--4:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3104984",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fan:2017:RMA,
  author =       "Xiaoyi Fan and Wei Gong and Jiangchuan Liu",
  title =        "{i$^2$ tag}: {RFID} Mobility and Activity
                 Identification Through Intelligent Profiling",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "5:1--5:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3035968",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Many radio frequency identification (RFID)
                 applications, such as virtual shopping cart and
                 tag-assisted gaming, involve sensing and recognizing
                 tag mobility. However, existing RFID localization
                 methods are mostly designed for static or slowly moving
                 targets (less than 0.3m/sec). More importantly, we
                 observe that prior methods suffer from serious
                 performance degradation for detecting real-world moving
                 tags in typical indoor environments with multipath
                 interference. In this article, we present i$^2$ tag, an
                 intelligent mobility-aware activity identification
                 system for RFID tags in multipath-rich environments
                 (e.g., indoors). i$^2$ tag employs a supervised
                 learning framework based on our novel fine-grain
                 mobility profile, which can quantify different levels
                 of mobility. Unlike previous methods that mostly rely
                 on phase measurement, i$^2$ tag takes into account
                 various measurements, including RSSI variance, packet
                 loss rate, and our novel relative phase--based
                 fingerprint. Additionally, we design a multidimensional
                 dynamic time warping--based algorithm to robustly
                 detect mobility and the associated activities. We show
                 that i$^2$ tag is readily deployable using
                 off-the-shelf RFID devices. A prototype has been
                 implemented using a ThingMagic reader and
                 standard-compatible tags. Experimental results
                 demonstrate its superiority in mobility detection and
                 activity identification in various indoor
                 environments.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2017:EEM,
  author =       "Wei Zhang and Rui Fan and Yonggang Wen and Fang Liu",
  title =        "Energy-Efficient Mobile Video Streaming: a
                 Location-Aware Approach",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "6:1--6:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3102301",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Video streaming is one of the most widely used mobile
                 applications today, and it also accounts for a large
                 fraction of mobile battery usage. Much of the energy
                 consumption is for wireless data transmission and is
                 highly correlated to network bandwidth conditions. In
                 periods of poor connectivity, up to 90\% of mobile
                 energy can be used for wireless data transfer. In this
                 article, we study the problem of energy-efficient
                 mobile video streaming. We make use of the observed
                 correlation between bandwidth and user location, and
                 also observe that a user's location is predictable in
                 many situations, such as when commuting to a known
                 destination. Based on the user's predicted locations
                 and bandwidth conditions, we optimize wireless
                 transmission times to achieve high quality video
                 playback while minimizing energy use. We propose an
                 optimal offline algorithm for this problem, which runs
                 in O ( Tk ) time, where T is the duration of the video
                 and k is the size of the video buffer. We also propose
                 LAWS, a Location AWare Streaming algorithm. LAWS learns
                 from historical location-aware bandwidth conditions and
                 predicts future bandwidths along a planned route to
                 make online wireless download decisions. We evaluate
                 LAWS using real bandwidth traces, and show that LAWS
                 closely approximates the performance of the optimal
                 offline algorithm, achieving 90.6\% of the optimal
                 performance on average, and 97\% in certain cases. LAWS
                 also outperforms three popular strategies used in
                 practice by, on average, 69\%, 63\%, and 38\%,
                 respectively. Lastly, we show that LAWS is able to deal
                 with noisy data and can attain the stated performance
                 after sampling bandwidth conditions only five times.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yin:2017:UUI,
  author =       "Hao Yin and Wei Wang and Xu Zhang and Yongqiang Lyu
                 and Geyong Min and Dongchao Guo",
  title =        "{UMCR}: User Interaction-Driven Mobile Content
                 Retrieval",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "7:1--7:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3102292",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Although mobile application ecosystems have
                 experienced tremendous growth in recent years,
                 retrieving content of mobile applications that serves a
                 key to mobile content search engines still faces grand
                 challenges. Compared to web content retrieval, it is
                 much more difficult to capture content in mobile
                 applications due to the diversity of applications and
                 the lack of Uniform Resource Locator indices. In this
                 study, we propose and implement a user
                 interaction-driven mobile content retrieval (UMCR)
                 system to address such issues, which is the first
                 mobile content crawler in the current literature. UMCR
                 is a distributed system that contains many measurement
                 nodes, each of which combines the user interaction path
                 traversing (UIPT) and Deep Package Inspection (DPI)
                 together to obtain mobile content. UIPT determines the
                 events of user interactions in various applications to
                 capture the static content such as text and images, in
                 which a traversal depth termination scheme and an
                 optional cut-off component are adopted to balance the
                 content coverage and traversing efficiency. Meanwhile,
                 the analysis based on DPI is responsible for extracting
                 the videos as well as digging the infrastructural
                 information and performance metrics. In addition, a
                 distributed traversal scheduling method is designed for
                 UIPT tasks to improve the throughput and scalability in
                 large-scale content retrieval. Experiments on
                 retrieving content of 64 real mobile applications
                 demonstrate that UMCR can handle diverse mobile
                 applications efficiently. The scheduler can improve
                 throughput by 3 times compared to the legacy arbitrary
                 task assignment strategy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2017:TTD,
  author =       "Xuyu Wang and Chao Yang and Shiwen Mao",
  title =        "{TensorBeat}: Tensor Decomposition for Monitoring
                 Multiperson Breathing Beats with Commodity {WiFi}",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "8:1--8:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078855",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Breathing signal monitoring can provide important
                 clues for health problems. Compared to existing
                 techniques that require wearable devices and special
                 equipment, a more desirable approach is to provide
                 contact-free and long-term breathing rate monitoring by
                 exploiting wireless signals. In this article, we
                 propose TensorBeat, a system to employ channel state
                 information (CSI) phase difference data to
                 intelligently estimate breathing rates for multiple
                 persons with commodity WiFi devices. The main idea is
                 to leverage the tensor decomposition technique to
                 handle the CSI phase difference data. The proposed
                 TensorBeat scheme first obtains CSI phase difference
                 data between pairs of antennas at the WiFi receiver to
                 create CSI tensors. Then canonical polyadic (CP)
                 decomposition is applied to obtain the desired
                 breathing signals. A stable signal matching algorithm
                 is developed to identify the decomposed signal pairs,
                 and a peak detection method is applied to estimate the
                 breathing rates for multiple persons. Our experimental
                 study shows that TensorBeat can achieve high accuracy
                 under different environments for multiperson breathing
                 rate monitoring.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ying:2017:EIW,
  author =       "Xuhang Ying and Jincheng Zhang and Lichao Yan and Yu
                 Chen and Guanglin Zhang and Minghua Chen and Ranveer
                 Chandra",
  title =        "Exploring Indoor White Spaces in Metropolises",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "9:1--9:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3059149",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "It is a promising vision to exploit white spaces, that
                 is, vacant VHF and UHF TV channels, to meet the rapidly
                 growing demand for wireless data services in both
                 outdoor and indoor scenarios. While most prior works
                 have focused on outdoor white space, the indoor story
                 is largely open for investigation. Motivated by this
                 observation and discovering that 70\% of the spectrum
                 demand comes from indoor environment, we carry out a
                 comprehensive study to explore indoor white spaces. We
                 first conduct a large-scale measurement study and
                 compare outdoor and indoor TV spectrum occupancy at 30+
                 diverse locations in a typical metropolis-Hong Kong.
                 Our results show that abundant white spaces are
                 available in different areas in Hong Kong, which
                 account for more than 50\% and 70\% of the entire TV
                 spectrum in outdoor and indoor scenarios, respectively.
                 Although there are substantially more white spaces
                 indoors than outdoors, there have been very few
                 solutions for identifying indoor white space. To fill
                 in this gap, we develop the first data-driven, low-cost
                 indoor white space identification system for
                 White-space Indoor Spectrum EnhanceR (WISER), to allow
                 secondary users to identify white spaces for
                 communication without sensing the spectrum themselves.
                 We design the architecture and algorithms to address
                 the inherent challenges. We build a WISER prototype and
                 carry out real-world experiments to evaluate its
                 performance. Our results show that WISER can identify
                 30\%--40\% more indoor white spaces with negligible
                 false alarms, as compared to alternative baseline
                 approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yeh:2017:SIB,
  author =       "Lo-Yao Yeh and Woei-Jiunn Tsaur and Hsin-Han Huang",
  title =        "Secure {IoT}-Based, Incentive-Aware Emergency
                 Personnel Dispatching Scheme with Weighted Fine-Grained
                 Access Control",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "10:1--10:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3063716",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Emergency response times following a traffic accident
                 are extremely crucial in reducing the number of
                 traffic-related deaths. Existing emergency vehicle
                 dispatching systems rely heavily on manual assignments.
                 Although some technology-assisted emergency systems
                 engage in emergency message dissemination and path
                 planning, efficient emergency response is one of the
                 main factors that can decrease traffic-related deaths.
                 Obviously, effective emergency response often plays a
                 far more important role in a successful rescue. In this
                 article, we propose a secure IoT-based and
                 incentive-aware emergency personnel dispatching scheme
                 (EPDS) with weighted fine-grained access control. Our
                 EPDS can recruit available medical personnel
                 on-the-fly, such as physicians driving in the vicinity
                 of the accident scene. An appropriate incentive, such
                 as paid leave, can be offered to encourage medical
                 personnel to join rescue missions. Furthermore,
                 IoT-based devices are installed in vehicles or wearable
                 on drivers to gather biometric signals from the driver,
                 which can be used to decide precisely which divisions
                 or physicians are needed to administer the appropriate
                 remedy. Additionally, our scheme can cryptographically
                 authorize the assigned rescue vehicle to control
                 traffic to increase rescue efficacy. Our scheme also
                 takes advantage of adjacent roadside units to organize
                 the appropriate rescue personnel without requiring
                 long-distance communication with a trusted traffic
                 authority. Proof of security is provided and extensive
                 analyses, including qualitative and quantitative
                 analyses and simulations, show that the proposed scheme
                 can significantly improve rescue response time and
                 effectiveness. To the best of our knowledge, this is
                 the first work to make use of medical personnel that
                 are close by in emergency rescue missions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shen:2017:DDD,
  author =       "Jiaxing Shen and Jiannong Cao and Xuefeng Liu and
                 Chisheng Zhang",
  title =        "{DMAD}: Data-Driven Measuring of {Wi-Fi} Access Point
                 Deployment in Urban Spaces",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "11:1--11:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3065949",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Wireless networks offer many advantages over wired
                 local area networks such as scalability and mobility.
                 Strategically deployed wireless networks can achieve
                 multiple objectives like traffic offloading, network
                 coverage, and indoor localization. To this end, various
                 mathematical models and optimization algorithms have
                 been proposed to find optimal deployments of access
                 points (APs). However, wireless signals can be blocked
                 by the human body, especially in crowded urban spaces.
                 As a result, the real coverage of an on-site AP
                 deployment may shrink to some degree and lead to
                 unexpected dead spots (areas without wireless
                 coverage). Dead spots are undesirable, since they
                 degrade the user experience in network service
                 continuity, on one hand, and, on the other hand
                 paralyze some applications and services like tracking
                 and monitoring when users are in these areas.
                 Nevertheless, it is nontrivial for existing methods to
                 analyze the impact of human beings on wireless
                 coverage. Site surveys are too time consuming and labor
                 intensive to conduct. It is also infeasible for
                 simulation methods to predict the number of on-site
                 people. In this article, we propose DMAD, a Data-driven
                 Measuring of Wi-Fi Access point Deployment, which not
                 only estimates potential dead spots of an on-site AP
                 deployment but also quantifies their severity, using
                 simple Wi-Fi data collected from the on-site deployment
                 and shop profiles from the Internet. DMAD first
                 classifies static devices and mobile devices with a
                 decision-tree classifier. Then it locates mobile
                 devices to grid-level locations based on shop
                 popularities, wireless signal, and visit duration.
                 Last, DMAD estimates the probability of dead spots for
                 each grid during different time slots and derives their
                 severity considering the probability and the number of
                 potential users. The analysis of Wi-Fi data from static
                 devices indicates that the Pearson Correlation
                 Coefficient of wireless coverage status and the number
                 of on-site people is over 0.7, which confirms that
                 human beings may have a significant impact on wireless
                 coverage. We also conduct extensive experiments in a
                 large shopping mall in Shenzhen. The evaluation results
                 demonstrate that DMAD can find around 70\% of dead
                 spots with a precision of over 70\%.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2017:TPU,
  author =       "Yanqiu Wu and Tehila Minkus and Keith W. Ross",
  title =        "Taking the Pulse of {US} College Campuses with
                 Location-Based Anonymous Mobile Apps",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "12:1--12:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078843",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We deploy GPS hacking in conjunction with
                 location-based mobile apps to passively survey users in
                 targeted geographical regions. Specifically, we
                 investigate surveying students at different college
                 campuses with Yik Yak, an anonymous mobile app that is
                 popular on US college campuses. In addition to being
                 campus centric, Yik Yak's anonymity allows students to
                 express themselves candidly without self-censorship. We
                 collect nearly 1.6 million Yik Yak messages (``yaks'')
                 from a diverse set of 45 college campuses in the United
                 States. We use natural language processing to determine
                 the sentiment (positive, negative, or neutral) of all
                 of the yaks. We employ supervised machine learning to
                 predict the gender of the authors of the yaks and then
                 analyze how sentiment differs among the two genders on
                 college campuses. We also use supervised machine
                 learning to classify all the yaks into nine topics and
                 then investigate which topics are most popular
                 throughout the US and how topic popularity varies on
                 the different campuses. The results in this article
                 provide significant insight into how campus culture and
                 student's thinking varies among US colleges and
                 universities.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2017:EPE,
  author =       "Ruide Zhang and Ning Zhang and Changlai Du and Wenjing
                 Lou and Y. Thomas Hou and Yuichi Kawamoto",
  title =        "From Electromyogram to Password: Exploring the Privacy
                 Impact of Wearables in Augmented Reality",
  journal =      j-TIST,
  volume =       "9",
  number =       "1",
  pages =        "13:1--13:??",
  month =        oct,
  year =         "2017",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078844",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Dec 23 10:12:42 MST 2017",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the increasing popularity of augmented reality
                 (AR) services, providing seamless human-computer
                 interactions in the AR setting has received notable
                 attention in the industry. Gesture control devices have
                 recently emerged to be the next great gadgets for AR
                 due to their unique ability to enable computer
                 interaction with day-to-day gestures. While these AR
                 devices are bringing revolutions to our interaction
                 with the cyber world, it is also important to consider
                 potential privacy leakages from these always-on
                 wearable devices. Specifically, the coarse access
                 control on current AR systems could lead to possible
                 abuse of sensor data. Although the always-on gesture
                 sensors are frequently quoted as a privacy concern,
                 there has not been any study on information leakage of
                 these devices. In this article, we present our study on
                 side-channel information leakage of the most popular
                 gesture control device, Myo. Using signals recorded
                 from the electromyography (EMG) sensor and
                 accelerometers on Myo, we can recover sensitive
                 information such as passwords typed on a keyboard and
                 PIN sequence entered through a touchscreen. EMG signal
                 records subtle electric currents of muscle
                 contractions. We design novel algorithms based on
                 dynamic cumulative sum and wavelet transform to
                 determine the exact time of finger movements.
                 Furthermore, we adopt the Hudgins feature set in a
                 support vector machine to classify recorded signal
                 segments into individual fingers or numbers. We also
                 apply coordinate transformation techniques to recover
                 fine-grained spatial information with low-fidelity
                 outputs from the sensor in keystroke recovery. We
                 evaluated the information leakage using data collected
                 from a group of volunteers. Our results show that there
                 is severe privacy leakage from these commodity wearable
                 sensors. Our system recovers complex passwords
                 constructed with lowercase letters, uppercase letters,
                 numbers, and symbols with a mean success rate of
                 91\%.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Goodwin:2018:KRI,
  author =       "Travis R. Goodwin and Sanda M. Harabagiu",
  title =        "Knowledge Representations and Inference Techniques for
                 Medical Question Answering",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "14:1--14:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3106745",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Answering medical questions related to complex medical
                 cases, as required in modern Clinical Decision Support
                 (CDS) systems, imposes (1) access to vast medical
                 knowledge and (2) sophisticated inference techniques.
                 In this article, we examine the representation and role
                 of combining medical knowledge automatically derived
                 from (a) clinical practice and (b) research findings
                 for inferring answers to medical questions. Knowledge
                 from medical practice was distilled from a vast
                 Electronic Medical Record (EMR) system, while research
                 knowledge was processed from biomedical articles
                 available in PubMed Central. The knowledge
                 automatically acquired from the EMR system took into
                 account the clinical picture and therapy recognized
                 from each medical record to generate a probabilistic
                 Markov network denoted as a Clinical Picture and
                 Therapy Graph (CPTG). Moreover, we represented the
                 background of medical questions available from the
                 description of each complex medical case as a medical
                 knowledge sketch. We considered three possible
                 representations of medical knowledge sketches that were
                 used by four different probabilistic inference methods
                 to pinpoint the answers from the CPTG. In addition,
                 several answer-informed relevance models were developed
                 to provide a ranked list of biomedical articles
                 containing the answers. Evaluations on the TREC-CDS
                 data show which of the medical knowledge
                 representations and inference methods perform
                 optimally. The experiments indicate an improvement of
                 biomedical article ranking by 49\% over
                 state-of-the-art results.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sun:2018:SVA,
  author =       "Guodao Sun and Tan Tang and Tai-Quan Peng and Ronghua
                 Liang and Yingcai Wu",
  title =        "{SocialWave}: Visual Analysis of Spatio-temporal
                 Diffusion of Information on Social Media",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "15:1--15:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3106775",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Rapid advancement of social media tremendously
                 facilitates and accelerates the information diffusion
                 among users around the world. How and to what extent
                 will the information on social media achieve widespread
                 diffusion across the world? How can we quantify the
                 interaction between users from different geolocations
                 in the diffusion process? How will the spatial patterns
                 of information diffusion change over time? To address
                 these questions, a dynamic social gravity model (SGM)
                 is proposed to quantify the dynamic spatial interaction
                 behavior among social media users in information
                 diffusion. The dynamic SGM includes three factors that
                 are theoretically significant to the spatial diffusion
                 of information: geographic distance, cultural
                 proximity, and linguistic similarity. Temporal
                 dimension is also taken into account to help detect
                 recency effect, and ground-truth data is integrated
                 into the model to help measure the diffusion power.
                 Furthermore, SocialWave, a visual analytic system, is
                 developed to support both spatial and temporal
                 investigative tasks. SocialWave provides a temporal
                 visualization that allows users to quickly identify the
                 overall temporal diffusion patterns, which reflect the
                 spatial characteristics of the diffusion network. When
                 a meaningful temporal pattern is identified, SocialWave
                 utilizes a new occlusion-free spatial visualization,
                 which integrates a node-link diagram into a circular
                 cartogram for further analysis. Moreover, we propose a
                 set of rich user interactions that enable in-depth,
                 multi-faceted analysis of the diffusion on social
                 media. The effectiveness and efficiency of the
                 mathematical model and visualization system are
                 evaluated with two datasets on social media, namely,
                 Ebola Epidemics and Ferguson Unrest.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhuang:2018:SRL,
  author =       "Fuzhen Zhuang and Xiaohu Cheng and Ping Luo and Sinno
                 Jialin Pan and Qing He",
  title =        "Supervised Representation Learning with Double
                 Encoding-Layer Autoencoder for Transfer Learning",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "16:1--16:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3108257",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Transfer learning has gained a lot of attention and
                 interest in the past decade. One crucial research issue
                 in transfer learning is how to find a good
                 representation for instances of different domains such
                 that the divergence between domains can be reduced with
                 the new representation. Recently, deep learning has
                 been proposed to learn more robust or higher-level
                 features for transfer learning. In this article, we
                 adapt the autoencoder technique to transfer learning
                 and propose a supervised representation learning method
                 based on double encoding-layer autoencoder. The
                 proposed framework consists of two encoding layers: one
                 for embedding and the other one for label encoding. In
                 the embedding layer, the distribution distance of the
                 embedded instances between the source and target
                 domains is minimized in terms of KL-Divergence. In the
                 label encoding layer, label information of the source
                 domain is encoded using a softmax regression model.
                 Moreover, to empirically explore why the proposed
                 framework can work well for transfer learning, we
                 propose a new effective measure based on autoencoder to
                 compute the distribution distance between different
                 domains. Experimental results show that the proposed
                 new measure can better reflect the degree of transfer
                 difficulty and has stronger correlation with the
                 performance from supervised learning algorithms (e.g.,
                 Logistic Regression), compared with previous ones, such
                 as KL-Divergence and Maximum Mean Discrepancy.
                 Therefore, in our model, we have incorporated two
                 distribution distance measures to minimize the
                 difference between source and target domains in the
                 embedding representations. Extensive experiments
                 conducted on three real-world image datasets and one
                 text data demonstrate the effectiveness of our proposed
                 method compared with several state-of-the-art baseline
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ranganath:2018:UIR,
  author =       "Suhas Ranganath and Xia Hu and Jiliang Tang and Suhang
                 Wang and Huan Liu",
  title =        "Understanding and Identifying Rhetorical Questions in
                 Social Media",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "17:1--17:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3108364",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Social media provides a platform for seeking
                 information from a large user base. Information seeking
                 in social media, however, occurs simultaneously with
                 users expressing their viewpoints by making statements.
                 Rhetorical questions have the form of a question but
                 serve the function of a statement and are an important
                 tool employed by users to express their viewpoints.
                 Therefore, rhetorical questions might mislead platforms
                 assisting information seeking in social media. It
                 becomes difficult to identify rhetorical questions as
                 they are not syntactically different from other
                 questions. In this article, we develop a framework to
                 identify rhetorical questions by modeling some
                 motivations of the users to post them. We focus on two
                 motivations of the users drawing from linguistic
                 theories to implicitly convey a message and to modify
                 the strength of a statement previously made. We develop
                 a quantitative framework from these motivations to
                 identify rhetorical questions in social media. We
                 evaluate the framework using two datasets of questions
                 posted on a social media platform Twitter and
                 demonstrate its effectiveness in identifying rhetorical
                 questions. This is the first framework, to the best of
                 our knowledge, to model the possible motivations for
                 posting rhetorical questions to identify them on social
                 media platforms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2018:IDC,
  author =       "Ou Wu and Xue Mao and Weiming Hu",
  title =        "Iteratively Divide-and-Conquer Learning for Nonlinear
                 Classification and Ranking",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "18:1--18:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3122802",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Nonlinear classifiers (i.e., kernel support vector
                 machines (SVMs)) are effective for nonlinear data
                 classification. However, nonlinear classifiers are
                 usually prohibitively expensive when dealing with large
                 nonlinear data. Ensembles of linear classifiers have
                 been proposed to address this inefficiency, which is
                 called the ensemble linear classifiers for nonlinear
                 data problem. In this article, a new iterative learning
                 approach is introduced that involves two steps at each
                 iteration: partitioning the data into clusters
                 according to Gaussian mixture models with local
                 consistency and then training basic classifiers (i.e.,
                 linear SVMs) for each cluster. The two
                 divide-and-conquer steps are combined into a graphical
                 model. Meanwhile, with training, each classifier is
                 regarded as a task; clustered multitask learning is
                 employed to capture the relatedness among different
                 tasks and avoid overfitting in each task. In addition,
                 two novel extensions are introduced based on the
                 proposed approach. First, the approach is extended for
                 quality-aware web data classification. In this problem,
                 the types of web data vary in terms of information
                 quality. The ignorance of the variations of information
                 quality of web data leads to poor classification
                 models. The proposed approach can effectively integrate
                 quality-aware factors into web data classification.
                 Second, the approach is extended for listwise learning
                 to rank to construct an ensemble of linear ranking
                 models, whereas most existing listwise ranking methods
                 construct a solely linear ranking model. Experimental
                 results on benchmark datasets show that our approach
                 outperforms state-of-the-art algorithms. During
                 prediction for nonlinear classification, it also
                 obtains comparable classification performance to kernel
                 SVMs, with much higher efficiency.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2018:SCA,
  author =       "Yexun Zhang and Wenbin Cai and Wenquan Wang and Ya
                 Zhang",
  title =        "Stopping Criterion for Active Learning with Model
                 Stability",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "19:1--19:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3125645",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Active learning selectively labels the most
                 informative instances, aiming to reduce the cost of
                 data annotation. While much effort has been devoted to
                 active sampling functions, relatively limited attention
                 has been paid to when the learning process should stop.
                 In this article, we focus on the stopping criterion of
                 active learning and propose a model stability--based
                 criterion, that is, when a model does not change with
                 inclusion of additional training instances. The
                 challenge lies in how to measure the model change
                 without labeling additional instances and training new
                 models. Inspired by the stochastic gradient update
                 rule, we use the gradient of the loss function at each
                 candidate example to measure its effect on model
                 change. We propose to stop active learning when the
                 model change brought by any of the remaining unlabeled
                 examples is lower than a given threshold. We apply the
                 proposed stopping criterion to two popular classifiers:
                 logistic regression (LR) and support vector machines
                 (SVMs). In addition, we theoretically analyze the
                 stability and generalization ability of the model
                 obtained by our stopping criterion. Substantial
                 experiments on various UCI benchmark datasets and
                 ImageNet datasets have demonstrated that the proposed
                 approach is highly effective.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:SCE,
  author =       "Leye Wang and Daqing Zhang and Dingqi Yang and Animesh
                 Pathak and Chao Chen and Xiao Han and Haoyi Xiong and
                 Yasha Wang",
  title =        "{SPACE-TA}: Cost-Effective Task Allocation Exploiting
                 Intradata and Interdata Correlations in Sparse
                 Crowdsensing",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "20:1--20:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3131671",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Data quality and budget are two primary concerns in
                 urban-scale mobile crowdsensing. Traditional research
                 on mobile crowdsensing mainly takes sensing coverage
                 ratio as the data quality metric rather than the
                 overall sensed data error in the target-sensing area.
                 In this article, we propose to leverage spatiotemporal
                 correlations among the sensed data in the
                 target-sensing area to significantly reduce the number
                 of sensing task assignments. In particular, we exploit
                 both intradata correlations within the same type of
                 sensed data and interdata correlations among different
                 types of sensed data in the sensing task. We propose a
                 novel crowdsensing task allocation framework called
                 SPACE-TA (SPArse Cost-Effective Task Allocation),
                 combining compressive sensing, statistical analysis,
                 active learning, and transfer learning, to dynamically
                 select a small set of subareas for sensing in each
                 timeslot (cycle), while inferring the data of unsensed
                 subareas under a probabilistic data quality guarantee.
                 Evaluations on real-life temperature, humidity, air
                 quality, and traffic monitoring datasets verify the
                 effectiveness of SPACE-TA. In the
                 temperature-monitoring task leveraging intradata
                 correlations, SPACE-TA requires data from only 15.5\%
                 of the subareas while keeping the inference error below
                 0.25${}^\circ $C in 95\% of the cycles, reducing the
                 number of sensed subareas by 18.0\% to 26.5\% compared
                 to baselines. When multiple tasks run simultaneously,
                 for example, for temperature and humidity monitoring,
                 SPACE-TA can further reduce $ \approx $10\% of the
                 sensed subareas by exploiting interdata correlations.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Katz:2018:VEC,
  author =       "Gilad Katz and Cornelia Caragea and Asaf Shabtai",
  title =        "Vertical Ensemble Co-Training for Text
                 Classification",
  journal =      j-TIST,
  volume =       "9",
  number =       "2",
  pages =        "21:1--21:??",
  month =        jan,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3137114",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "High-quality, labeled data is essential for
                 successfully applying machine learning methods to
                 real-world text classification problems. However, in
                 many cases, the amount of labeled data is very small
                 compared to that of the unlabeled, and labeling
                 additional samples could be expensive and time
                 consuming. Co-training algorithms, which make use of
                 unlabeled data to improve classification, have proven
                 to be very effective in such cases. Generally,
                 co-training algorithms work by using two classifiers,
                 trained on two different views of the data, to label
                 large amounts of unlabeled data. Doing so can help
                 minimize the human effort required for labeling new
                 data, as well as improve classification performance. In
                 this article, we propose an ensemble-based co-training
                 approach that uses an ensemble of classifiers from
                 different training iterations to improve labeling
                 accuracy. This approach, which we call vertical
                 ensemble, incurs almost no additional computational
                 cost. Experiments conducted on six textual datasets
                 show a significant improvement of over 45\% in AUC
                 compared with the original co-training algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2018:RTH,
  author =       "Desheng Zhang and Tian He and Fan Zhang",
  title =        "Real-Time Human Mobility Modeling with Multi-View
                 Learning",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "22:1--22:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3092692",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Real-time human mobility modeling is essential to
                 various urban applications. To model such human
                 mobility, numerous data-driven techniques have been
                 proposed. However, existing techniques are mostly
                 driven by data from a single view, for example, a
                 transportation view or a cellphone view, which leads to
                 over-fitting of these single-view models. To address
                 this issue, we propose a human mobility modeling
                 technique based on a generic multi-view learning
                 framework called coMobile. In coMobile, we first
                 improve the performance of single-view models based on
                 tensor decomposition with correlated contexts, and then
                 we integrate these improved single-view models together
                 for multi-view learning to iteratively obtain mutually
                 reinforced knowledge for real-time human mobility at
                 urban scale. We implement coMobile based on an
                 extremely large dataset in the Chinese city Shenzhen,
                 including data about taxi, bus, and subway passengers
                 along with cellphone users, capturing more than 27
                 thousand vehicles and 10 million urban residents. The
                 evaluation results show that our approach outperforms a
                 single-view model by 51\% on average. More importantly,
                 we design a novel application where urban taxis are
                 dispatched based on unaccounted mobility demand
                 inferred by coMobile.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{An:2018:ATS,
  author =       "Bo An and Nick Jennings and Zhenhui Jessie Li",
  title =        "{ACM TIST} Special Issue on Urban Intelligence",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "23:1--23:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3154942",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Varakantham:2018:RSS,
  author =       "Pradeep Varakantham and Akshat Kumar and Hoong Chuin
                 Lau and William Yeoh",
  title =        "Risk-Sensitive Stochastic Orienteering Problems for
                 Trip Optimization in Urban Environments",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "24:1--24:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3080575",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Orienteering Problems (OPs) are used to model many
                 routing and trip planning problems. OPs are a variant
                 of the well-known traveling salesman problem where the
                 goal is to compute the highest reward path that
                 includes a subset of vertices and has an overall travel
                 time less than a specified deadline. However, the
                 applicability of OPs is limited due to the assumption
                 of deterministic and static travel times. To that end,
                 Campbell et al. extended OPs to Stochastic OPs (SOPs)
                 to represent uncertain travel times (Campbell et al.
                 2011). In this article, we make the following key
                 contributions: (1) We extend SOPs to Dynamic SOPs
                 (DSOPs), which allow for time-dependent travel times;
                 (2) we introduce a new objective criterion for SOPs and
                 DSOPs to represent a percentile measure of risk; (3) we
                 provide non-linear optimization formulations along with
                 their linear equivalents for solving the risk-sensitive
                 SOPs and DSOPs; (4) we provide a local search mechanism
                 for solving the risk-sensitive SOPs and DSOPs; and (5)
                 we provide results on existing benchmark problems and a
                 real-world theme park trip planning problem.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cao:2018:MBA,
  author =       "Zhiguang Cao and Hongliang Guo and Jie Zhang",
  title =        "A Multiagent-Based Approach for Vehicle Routing by
                 Considering Both Arriving on Time and Total Travel
                 Time",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "25:1--25:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078847",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Arriving on time and total travel time are two
                 important properties for vehicle routing. Existing
                 route guidance approaches always consider them
                 independently, because they may conflict with each
                 other. In this article, we develop a semi-decentralized
                 multiagent-based vehicle routing approach where vehicle
                 agents follow the local route guidance by
                 infrastructure agents at each intersection, and
                 infrastructure agents perform the route guidance by
                 solving a route assignment problem. It integrates the
                 two properties by expressing them as two objective
                 terms of the route assignment problem. Regarding
                 arriving on time, it is formulated based on the
                 probability tail model, which aims to maximize the
                 probability of reaching destination before deadline.
                 Regarding total travel time, it is formulated as a
                 weighted quadratic term, which aims to minimize the
                 expected travel time from the current location to the
                 destination based on the potential route assignment.
                 The weight for total travel time is designed to be
                 comparatively large if the deadline is loose.
                 Additionally, we improve the proposed approach in two
                 aspects, including travel time prediction and
                 computational efficiency. Experimental results on real
                 road networks justify its ability to increase the
                 average probability of arriving on time, reduce total
                 travel time, and enhance the overall routing
                 performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cheng:2018:SUM,
  author =       "Shih-Fen Cheng and Cen Chen and Thivya Kandappu and
                 Hoong Chuin Lau and Archan Misra and Nikita Jaiman and
                 Randy Tandriansyah and Desmond Koh",
  title =        "Scalable Urban Mobile Crowdsourcing: Handling
                 Uncertainty in Worker Movement",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "26:1--26:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078842",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we investigate effective ways of
                 utilizing crowdworkers in providing various urban
                 services. The task recommendation platform that we
                 design can match tasks to crowdworkers based on
                 workers' historical trajectories and time budget
                 limits, thus making recommendations personal and
                 efficient. One major challenge we manage to address is
                 the handling of crowdworker's trajectory uncertainties.
                 In this article, we explicitly allow multiple routine
                 routes to be probabilistically associated with each
                 worker. We formulate this problem as an integer linear
                 program whose goal is to maximize the expected total
                 utility achieved by all workers. We further exploit the
                 separable structures of the formulation and apply the
                 Lagrangian relaxation technique to scale up
                 computation. Numerical experiments have been performed
                 over the instances generated using the realistic public
                 transit dataset in Singapore. The results show that we
                 can find significantly better solutions than the
                 deterministic formulation, and in most cases we can
                 find solutions that are very close to the theoretical
                 performance limit. To demonstrate the practicality of
                 our approach, we deployed our recommendation engine to
                 a campus-scale field trial, and we demonstrate that
                 workers receiving our recommendations incur fewer
                 detours and complete more tasks, and are more efficient
                 against workers relying on their own planning (25\%
                 more for top workers who receive recommendations). This
                 is achieved despite having highly uncertain worker
                 trajectories. We also demonstrate how to further
                 improve the robustness of the system by using a simple
                 multi-coverage mechanism.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kaminka:2018:SUP,
  author =       "Gal A. Kaminka and Natalie Fridman",
  title =        "Simulating Urban Pedestrian Crowds of Different
                 Cultures",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "27:1--27:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3102302",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Models of crowd dynamics are critically important for
                 urban planning and management. They support analysis,
                 facilitate qualitative and quantitative predictions,
                 and synthesize behaviors for simulations. One promising
                 approach to crowd modeling relies on micro-level
                 agent-based simulations, where the interactions of
                 simulated individual agents in the crowd result in
                 macro-level crowd dynamics which are the object of
                 study. This article reports on an agent-based model of
                 urban pedestrian crowds, where culture is explicitly
                 modeled. We extend an established agent-based social
                 agent model, inspired by social psychology, to account
                 for individual cultural attributes discussed in social
                 science literature. We then embed the model in a
                 simulation of pedestrians and explore the resulting
                 macro-level crowd behaviors, such as pedestrian flow,
                 lane changes rate, and so on. We validate the model by
                 quantitatively comparing the simulation results to the
                 pedestrian dynamics in movies of human crowds in five
                 different countries: Iraq, Israel, England, Canada, and
                 France. We conclude that the model can faithfully
                 replicate urban pedestrians in different cultures.
                 Encouraged by these results, we explore simulations of
                 mixed-culture pedestrian crowds.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Auffenberg:2018:CBA,
  author =       "Frederik Auffenberg and Stephen Snow and Sebastian
                 Stein and Alex Rogers",
  title =        "A Comfort-Based Approach to Smart Heating and Air
                 Conditioning",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "28:1--28:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3057730",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we address the interrelated
                 challenges of predicting user comfort and using this to
                 reduce energy consumption in smart heating,
                 ventilation, and air conditioning (HVAC) systems. At
                 present, such systems use simple models of user comfort
                 when deciding on a set-point temperature. Being built
                 using broad population statistics, these models
                 generally fail to represent individual users'
                 preferences, resulting in poor estimates of the users'
                 preferred temperatures. To address this issue, we
                 propose the Bayesian Comfort Model (BCM). This
                 personalised thermal comfort model uses a Bayesian
                 network to learn from a user's feedback, allowing it to
                 adapt to the users' individual preferences over time.
                 We further propose an alternative to the ASHRAE 7-point
                 scale used to assess user comfort. Using this model, we
                 create an optimal HVAC control algorithm that minimizes
                 energy consumption while preserving user comfort.
                 Through an empirical evaluation based on the ASHRAE
                 RP-884 dataset and data collected in a separate
                 deployment by us, we show that our model is
                 consistently 13.2\% to 25.8\% more accurate than
                 current models and how using our alternative comfort
                 scale can increase our model's accuracy. Through
                 simulations we show that using this model, our HVAC
                 control algorithm can reduce energy consumption by
                 7.3\% to 13.5\% while decreasing user discomfort by
                 24.8\% simultaneously.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:STP,
  author =       "Pengfei Wang and Guannan Liu and Yanjie Fu and
                 Yuanchun Zhou and Jianhui Li",
  title =        "Spotting Trip Purposes from Taxi Trajectories: a
                 General Probabilistic Model",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "29:1--29:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078849",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "What is the purpose of a trip? What are the unique
                 human mobility patterns and spatial contexts in or near
                 the pickup points and delivery points of trajectories
                 for a specific trip purpose? Many prior studies have
                 modeled human mobility patterns in urban regions;
                 however, these analytics mainly focus on interpreting
                 the semantic meanings of geographic topics at an
                 aggregate level. Given the lack of information about
                 human activities at pick-up and dropoff points, it is
                 challenging to convert the prior studies into effective
                 tools for inferring trip purposes. To address this
                 challenge, in this article, we study large-scale taxi
                 trajectories from an unsupervised perspective in light
                 of the following observations. First, the POI
                 configurations of origin and destination regions
                 closely relate to the urban functionality of these
                 regions and further indicate various human activities.
                 Second, with respect to the functionality of
                 neighborhood environments, trip purposes can be
                 discerned from the transitions between regions with
                 different functionality at particular time periods.
                 Along these lines, we develop a general probabilistic
                 framework for spotting trip purposes from massive taxi
                 GPS trajectories. Specifically, we first augment the
                 origin and destination regions of trajectories by
                 attaching neighborhood POIs. Then, we introduce a
                 latent factor, POI Topic, to represent the mixed
                 functionality of the regions, such that each origin or
                 destination point in the city can be modeled as a
                 mixture over POI Topics. In addition, considering the
                 transitions from origins to destinations at specific
                 time periods, the trip time is generated
                 collaboratively from the pairwise POI Topics at both
                 ends of the O-D pairs, constituting POI Links, and
                 hence the trip purpose can be explained semantically by
                 the POI Links. Finally, we present extensive
                 experiments with the real-world data of New York City
                 to demonstrate the effectiveness of our proposed method
                 for spotting trip purposes, and moreover, the model is
                 validated to perform well in predicting the
                 destinations and trip time among all the baseline
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2018:PAT,
  author =       "Jie Liu and Bin Liu and Yanchi Liu and Huipeng Chen
                 and Lina Feng and Hui Xiong and Yalou Huang",
  title =        "Personalized Air Travel Prediction: a Multi-factor
                 Perspective",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "30:1--30:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078845",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Human mobility analysis is one of the most important
                 research problems in the field of urban computing.
                 Existing research mainly focuses on the intra-city
                 ground travel behavior modeling, while the inter-city
                 air travel behavior modeling has been largely ignored.
                 Actually, the inter-city travel analysis can be of
                 equivalent importance and complementary to the
                 intra-city travel analysis. Understanding massive
                 passenger-air-travel behavior delivers intelligence for
                 airlines' precision marketing and related socioeconomic
                 activities, such as airport planning, emergency
                 management, local transportation planning, and
                 tourism-related businesses. Moreover, it provides
                 opportunities to study the characteristics of cities
                 and the mutual relationships between them. However,
                 modeling and predicting air traveler behavior is
                 challenging due to the complex factors of the market
                 situation and individual characteristics of customers
                 (e.g., airlines' market share, customer membership, and
                 travelers' intrinsic interests on destinations). To
                 this end, in this article, we present a systematic
                 study on the personalized air travel prediction
                 problem, namely where a customer will fly to and which
                 airline carrier to fly with, by leveraging real-world
                 anonymized Passenger Name Record (PNR) data.
                 Specifically, we first propose a relational travel
                 topic model, which combines the merits of latent factor
                 model with a neighborhood-based method, to uncover the
                 personal travel preferences of aviation customers and
                 the latent travel topics of air routes and airline
                 carriers simultaneously. Then we present a multi-factor
                 travel prediction framework, which fuses complex
                 factors of the market situation and individual
                 characteristics of customers, to predict airline
                 customers' personalized travel demands. Experimental
                 results on two real-world PNR datasets demonstrate the
                 effectiveness of our approach on both travel topic
                 discovery and customer travel prediction.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Pellungrini:2018:DMA,
  author =       "Roberto Pellungrini and Luca Pappalardo and Francesca
                 Pratesi and Anna Monreale",
  title =        "A Data Mining Approach to Assess Privacy Risk in Human
                 Mobility Data",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "31:1--31:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3106774",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Human mobility data are an important proxy to
                 understand human mobility dynamics, develop analytical
                 services, and design mathematical models for simulation
                 and what-if analysis. Unfortunately mobility data are
                 very sensitive since they may enable the
                 re-identification of individuals in a database.
                 Existing frameworks for privacy risk assessment provide
                 data providers with tools to control and mitigate
                 privacy risks, but they suffer two main shortcomings:
                 (i) they have a high computational complexity; (ii) the
                 privacy risk must be recomputed every time new data
                 records become available and for every selection of
                 individuals, geographic areas, or time windows. In this
                 article, we propose a fast and flexible approach to
                 estimate privacy risk in human mobility data. The idea
                 is to train classifiers to capture the relation between
                 individual mobility patterns and the level of privacy
                 risk of individuals. We show the effectiveness of our
                 approach by an extensive experiment on real-world GPS
                 data in two urban areas and investigate the relations
                 between human mobility patterns and the privacy risk of
                 individuals.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2018:UOG,
  author =       "Yingjie Zhang and Beibei Li and Jason Hong",
  title =        "Using Online Geotagged and Crowdsourced Data to
                 Understand Human Offline Behavior in the City: an
                 Economic Perspective",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "32:1--32:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078851",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The pervasiveness of mobile technologies today has
                 facilitated the creation of massive online crowdsourced
                 and geotagged data from individual users at different
                 locations in a city. Such ubiquitous user-generated
                 data allow us to study the social and behavioral
                 trajectories of individuals across both digital and
                 physical environments. This information, combined with
                 traditional economic and behavioral indicators in the
                 city (e.g., store purchases, restaurant visits,
                 parking), can help us better understand human behavior
                 and interactions with cities. In this study, we take an
                 economic perspective and focus on understanding human
                 economic behavior in the city by examining the
                 performance of local businesses based on the values
                 learned from crowsourced and geotagged data.
                 Specifically, we extract multiple traffic and human
                 mobility features from publicly available data source
                 geomapping and geo-social-tagging techniques and
                 examine the effects of both static and dynamic features
                 on booking volume of local restaurants. Our study is
                 instantiated on a unique dataset of restaurant bookings
                 from OpenTable for 3,187 restaurants in New York City
                 from November 2013 to March 2014. Our results suggest
                 that foot traffic can increase local popularity and
                 business performance, while mobility and traffic from
                 automobiles may hurt local businesses, especially the
                 well-established chains and high-end restaurants. We
                 also find that, on average, one or more street closure
                 (caused by events or construction projects) nearby
                 leads to a 4.7\% decrease in the probability of a
                 restaurant being fully booked during the dinner peak.
                 Our study demonstrates the potential to best make use
                 of the large volumes and diverse sources of
                 crowdsourced and geotagged user-generated data to
                 create matrices to predict local economic demand in a
                 manner that is fast, cheap, accurate, and meaningful.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Dong:2018:SBU,
  author =       "Xiaowen Dong and Yoshihiko Suhara and Bur{\c{c}}in
                 Bozkaya and Vivek K. Singh and Bruno Lepri and Alex
                 `Sandy' Pentland",
  title =        "Social Bridges in Urban Purchase Behavior",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "33:1--33:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3149409",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The understanding and modeling of human purchase
                 behavior in city environment can have important
                 implications in the study of urban economy and in the
                 design and organization of cities. In this article, we
                 study human purchase behavior at the community level
                 and argue that people who live in different communities
                 but work at close-by locations could act as ``social
                 bridges'' between the respective communities and that
                 they are correlated with similarity in community
                 purchase behavior. We provide empirical evidence by
                 studying millions of credit card transaction records
                 for tens of thousands of individuals in a city
                 environment during a period of three months. More
                 specifically, we show that the number of social bridges
                 between communities is a much stronger indicator of
                 similarity in their purchase behavior than
                 traditionally considered factors such as income and
                 sociodemographic variables. Our findings also suggest
                 that such an effect varies across different merchant
                 categories, that the presence of female customers in
                 social bridges is a stronger indicator compared to that
                 of their male counterparts, and that there seems to be
                 a geographical constraint for this effect, all of which
                 may have implications in the studies of urban economy
                 and data-driven urban planning.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2018:GER,
  author =       "Chao Zhang and Dongming Lei and Quan Yuan and Honglei
                 Zhuang and Lance Kaplan and Shaowen Wang and Jiawei
                 Han",
  title =        "{GeoBurst+}: Effective and Real-Time Local Event
                 Detection in Geo-Tagged Tweet Streams",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "34:1--34:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3066166",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The real-time discovery of local events (e.g.,
                 protests, disasters) has been widely recognized as a
                 fundamental socioeconomic task. Recent studies have
                 demonstrated that the geo-tagged tweet stream serves as
                 an unprecedentedly valuable source for local event
                 detection. Nevertheless, how to effectively extract
                 local events from massive geo-tagged tweet streams in
                 real time remains challenging. To bridge the gap, we
                 propose a method for effective and real-time local
                 event detection from geo-tagged tweet streams. Our
                 method, named GeoBurst+, first leverages a novel
                 cross-modal authority measure to identify several
                 pivots in the query window. Such pivots reveal
                 different geo-topical activities and naturally attract
                 similar tweets to form candidate events. GeoBurst+
                 further summarizes the continuous stream and compares
                 the candidates against the historical summaries to
                 pinpoint truly interesting local events. Better still,
                 as the query window shifts, GeoBurst+ is capable of
                 updating the event list with little time cost, thus
                 achieving continuous monitoring of the stream. We used
                 crowdsourcing to evaluate GeoBurst+ on two
                 million-scale datasets and found it significantly more
                 effective than existing methods while being orders of
                 magnitude faster.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Muralidhar:2018:III,
  author =       "Nikhil Muralidhar and Chen Wang and Nathan Self and
                 Marjan Momtazpour and Kiyoshi Nakayama and Ratnesh
                 Sharma and Naren Ramakrishnan",
  title =        "{\tt illiad}: {InteLLigent} Invariant and Anomaly
                 Detection in Cyber-Physical Systems",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "35:1--35:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3066167",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Cyber-physical systems (CPSs) are today ubiquitous in
                 urban environments. Such systems now serve as the
                 backbone to numerous critical infrastructure
                 applications, from smart grids to IoT installations.
                 Scalable and seamless operation of such CPSs requires
                 sophisticated tools for monitoring the time series
                 progression of the system, dynamically tracking
                 relationships, and issuing alerts about anomalies to
                 operators. We present an online monitoring system (
                 illiad ) that models the state of the CPS as a function
                 of its relationships between constituent components,
                 using a combination of model-based and data-driven
                 strategies. In addition to accurate inference for state
                 estimation and anomaly tracking, illiad also exploits
                 the underlying network structure of the CPS (wired or
                 wireless) for state estimation purposes. We demonstrate
                 the application of illiad to two diverse settings: a
                 wireless sensor motes application and an IEEE 33-bus
                 microgrid.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2018:EUB,
  author =       "Liangda Li and Hongyuan Zha",
  title =        "Energy Usage Behavior Modeling in Energy
                 Disaggregation via {Hawkes} Processes",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "36:1--36:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3108413",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Energy disaggregation, the task of taking a whole home
                 electricity signal and decomposing it into its
                 component appliances, has been proved to be essential
                 in energy conservation research. One powerful cue for
                 breaking down the entire household's energy consumption
                 is user's daily energy usage behavior, which has so far
                 received little attention: existing works on energy
                 disaggregation mostly ignored the relationship between
                 the energy usages of various appliances by householders
                 across different time slots. The major challenge in
                 modeling such a relationship in that, with ambiguous
                 appliance usage membership of householders, we find it
                 difficult to appropriately model the influence between
                 appliances, since such influence is determined by human
                 behaviors in energy usage. To address this problem, we
                 propose to model the influence between householders'
                 energy usage behaviors directly through a novel
                 probabilistic model, which combines topic models with
                 the Hawkes processes. The proposed model simultaneously
                 disaggregates the whole home electricity signal into
                 each component appliance and infers the appliance usage
                 membership of household members and enables those two
                 tasks to mutually benefit each other. Experimental
                 results on both synthetic data and four real-world data
                 sets demonstrate the effectiveness of our model, which
                 outperforms state-of-the-art approaches in not only
                 decomposing the entire consumed energy to each
                 appliance in houses but also the inference of household
                 structures. We further analyze the inferred
                 appliance-householder assignment and the corresponding
                 influence within the appliance usage of each
                 householder and across different householders, which
                 provides insight into appealing human behavior patterns
                 in appliance usage.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tran:2018:RTF,
  author =       "Luan Tran and Hien To and Liyue Fan and Cyrus
                 Shahabi",
  title =        "A Real-Time Framework for Task Assignment in
                 Hyperlocal Spatial Crowdsourcing",
  journal =      j-TIST,
  volume =       "9",
  number =       "3",
  pages =        "37:1--37:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3078853",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:53 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Spatial Crowdsourcing (SC) is a novel platform that
                 engages individuals in the act of collecting various
                 types of spatial data. This method of data collection
                 can significantly reduce cost and turnover time and is
                 particularly useful in urban environmental sensing,
                 where traditional means fail to provide fine-grained
                 field data. In this study, we introduce hyperlocal
                 spatial crowdsourcing, where all workers who are
                 located within the spatiotemporal vicinity of a task
                 are eligible to perform the task (e.g., reporting the
                 precipitation level at their area and time). In this
                 setting, there is often a budget constraint, either for
                 every time period or for the entire campaign, on the
                 number of workers to activate to perform tasks. The
                 challenge is thus to maximize the number of assigned
                 tasks under the budget constraint despite the dynamic
                 arrivals of workers and tasks. We introduce a taxonomy
                 of several problem variants, such as
                 budget-per-time-period vs. budget-per-campaign and
                 binary-utility vs. distance-based-utility. We study the
                 hardness of the task assignment problem in the offline
                 setting and propose online heuristics which exploit the
                 spatial and temporal knowledge acquired over time. Our
                 experiments are conducted with spatial crowdsourcing
                 workloads generated by the SCAWG tool, and extensive
                 results show the effectiveness and efficiency of our
                 proposed solutions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2018:RCS,
  author =       "Dingwen Zhang and Huazhu Fu and Junwei Han and Ali
                 Borji and Xuelong Li",
  title =        "A Review of Co-Saliency Detection Algorithms:
                 Fundamentals, Applications, and Challenges",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "38:1--38:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3158674",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Co-saliency detection is a newly emerging and rapidly
                 growing research area in the computer vision community.
                 As a novel branch of visual saliency, co-saliency
                 detection refers to the discovery of common and salient
                 foregrounds from two or more relevant images, and it
                 can be widely used in many computer vision tasks. The
                 existing co-saliency detection algorithms mainly
                 consist of three components: extracting effective
                 features to represent the image regions, exploring the
                 informative cues or factors to characterize
                 co-saliency, and designing effective computational
                 frameworks to formulate co-saliency. Although numerous
                 methods have been developed, the literature is still
                 lacking a deep review and evaluation of co-saliency
                 detection techniques. In this article, we aim at
                 providing a comprehensive review of the fundamentals,
                 challenges, and applications of co-saliency detection.
                 Specifically, we provide an overview of some related
                 computer vision works, review the history of
                 co-saliency detection, summarize and categorize the
                 major algorithms in this research area, discuss some
                 open issues in this area, present the potential
                 applications of co-saliency detection, and finally
                 point out some unsolved challenges and promising future
                 works. We expect this review to be beneficial to both
                 fresh and senior researchers in this field and to give
                 insights to researchers in other related areas
                 regarding the utility of co-saliency detection
                 algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:VME,
  author =       "Bingsheng Wang and Zhiqian Chen and Arnold P.
                 Boedihardjo and Chang-Tien Lu",
  title =        "Virtual Metering: an Efficient Water Disaggregation
                 Algorithm via Nonintrusive Load Monitoring",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "39:1--39:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3141770",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The scarcity of potable water is a critical challenge
                 in many regions around the world. Previous studies have
                 shown that knowledge of device-level water usage can
                 lead to significant conservation. Although there is
                 considerable interest in determining discriminative
                 features via sparse coding for water disaggregation to
                 separate whole-house consumption into its component
                 appliances, existing methods lack a mechanism for
                 fitting coefficient distributions and are thus unable
                 to accurately discriminate parallel devices'
                 consumption. This article proposes a Bayesian
                 discriminative sparse coding model, referred to as
                 Virtual Metering (VM), for this disaggregation task.
                 Mixture-of-Gammas is employed for the prior
                 distribution of coefficients, contributing two
                 benefits: (i) guaranteeing the coefficients' sparseness
                 and non-negativity, and (ii) capturing the distribution
                 of active coefficients. The resulting method
                 effectively adapts the bases to aggregated consumption
                 to facilitate discriminative learning in the proposed
                 model, and devices' shape features are formalized and
                 incorporated into Bayesian sparse coding to direct the
                 learning of basis functions. Compact Gibbs Sampling
                 (CGS) is developed to accelerate the inference process
                 by utilizing the sparse structure of coefficients. The
                 empirical results obtained from applying the new model
                 to large-scale real and synthetic datasets revealed
                 that VM significantly outperformed the benchmark
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Fu:2018:MLM,
  author =       "Yanjie Fu and Junming Liu and Xiaolin Li and Hui
                 Xiong",
  title =        "A Multi-Label Multi-View Learning Framework for In-App
                 Service Usage Analysis",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "40:1--40:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3151937",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The service usage analysis, aiming at identifying
                 customers' messaging behaviors based on encrypted App
                 traffic flows, has become a challenging and emergent
                 task for service providers. Prior literature usually
                 starts from segmenting a traffic sequence into
                 single-usage subsequences, and then classify the
                 subsequences into different usage types. However, they
                 could suffer from inaccurate traffic segmentations and
                 mixed-usage subsequences. To address this challenge, we
                 exploit a multi-label multi-view learning strategy and
                 develop an enhanced framework for in-App usage
                 analytics. Specifically, we first devise an enhanced
                 traffic segmentation method to reduce mixed-usage
                 subsequences. Besides, we develop a multi-label
                 multi-view logistic classification method, which
                 comprises two alignments. The first alignment is to
                 make use of the classification consistency between
                 packet-length view and time-delay view of traffic
                 subsequences and improve classification accuracy. The
                 second alignment is to combine the classification of
                 single-usage subsequence and the post-classification of
                 mixed-usage subsequences into a unified multi-label
                 logistic classification problem. Finally, we present
                 extensive experiments with real-world datasets to
                 demonstrate the effectiveness of our approach. We find
                 that the proposed multi-label multi-view framework can
                 help overcome the pain of mixed-usage subsequences and
                 can be generalized to latent activity analysis in
                 sequential data, beyond in-App usage analytics.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:CAB,
  author =       "Pengwei Wang and Lei Ji and Jun Yan and Dejing Dou and
                 Nisansa {De Silva} and Yong Zhang and Lianwen Jin",
  title =        "Concept and Attention-Based {CNN} for Question
                 Retrieval in Multi-View Learning",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "41:1--41:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3151957",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Question retrieval, which aims to find similar
                 versions of a given question, is playing a pivotal role
                 in various question answering (QA) systems. This task
                 is quite challenging, mainly in regard to five aspects:
                 synonymy, polysemy, word order, question length, and
                 data sparsity. In this article, we propose a unified
                 framework to simultaneously handle these five problems.
                 We use the word combined with corresponding concept
                 information to handle the synonymy problem and the
                 polysemous problem. Concept embedding and word
                 embedding are learned at the same time from both the
                 context-dependent and context-independent views. To
                 handle the word-order problem, we propose a high-level
                 feature-embedded convolutional semantic model to learn
                 question embedding by inputting concept embedding and
                 word embedding. Due to the fact that the lengths of
                 some questions are long, we propose a value-based
                 convolutional attentional method to enhance the
                 proposed high-level feature-embedded convolutional
                 semantic model in learning the key parts of the
                 question and the answer. The proposed high-level
                 feature-embedded convolutional semantic model nicely
                 represents the hierarchical structures of word
                 information and concept information in sentences with
                 their layer-by-layer convolution and pooling. Finally,
                 to resolve data sparsity, we propose using the
                 multi-view learning method to train the attention-based
                 convolutional semantic model on question-answer pairs.
                 To the best of our knowledge, we are the first to
                 propose simultaneously handling the above five problems
                 in question retrieval using one framework. Experiments
                 on three real question-answering datasets show that the
                 proposed framework significantly outperforms the
                 state-of-the-art solutions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Khan:2018:NIC,
  author =       "Naimul Mefraz Khan and Riadh Ksantini and Ling Guan",
  title =        "A Novel Image-Centric Approach Toward Direct Volume
                 Rendering",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "42:1--42:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3152875",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Transfer function (TF) generation is a fundamental
                 problem in direct volume rendering (DVR). A TF maps
                 voxels to color and opacity values to reveal inner
                 structures. Existing TF tools are complex and
                 unintuitive for the users who are more likely to be
                 medical professionals than computer scientists. In this
                 article, we propose a novel image-centric method for TF
                 generation where instead of complex tools, the user
                 directly manipulates volume data to generate DVR. The
                 user's work is further simplified by presenting only
                 the most informative volume slices for selection. Based
                 on the selected parts, the voxels are classified using
                 our novel sparse nonparametric support vector machine
                 classifier, which combines both local and near-global
                 distributional information of the training data. The
                 voxel classes are mapped to aesthetically pleasing and
                 distinguishable color and opacity values using harmonic
                 colors. Experimental results on several benchmark
                 datasets and a detailed user survey show the
                 effectiveness of the proposed method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Huang:2018:QBP,
  author =       "Michael Xuelin Huang and Jiajia Li and Grace Ngai and
                 Hong Va Leong",
  title =        "Quick Bootstrapping of a Personalized Gaze Model from
                 Real-Use Interactions",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "43:1--43:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3156682",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Understanding human visual attention is essential for
                 understanding human cognition, which in turn benefits
                 human--computer interaction. Recent work has
                 demonstrated a Personalized, Auto-Calibrating
                 Eye-tracking (PACE) system, which makes it possible to
                 achieve accurate gaze estimation using only an
                 off-the-shelf webcam by identifying and collecting data
                 implicitly from user interaction events. However, this
                 method is constrained by the need for large amounts of
                 well-annotated data. We thus present fast-PACE, an
                 adaptation to PACE that exploits knowledge from
                 existing data from different users to accelerate the
                 learning speed of the personalized model. The result is
                 an adaptive, data-driven approach that continuously
                 ``learns'' its user and recalibrates, adapts, and
                 improves with additional usage by a user. Experimental
                 evaluations of fast-PACE demonstrate its competitive
                 accuracy in iris localization, validity of alignment
                 identification between gaze and interactions, and
                 effectiveness of gaze transfer. In general, fast-PACE
                 achieves an initial visual error of 3.98 degrees and
                 then steadily improves to 2.52 degrees given
                 incremental interaction-informed data. Our performance
                 is comparable to state-of-the-art, but without the need
                 for explicit training or calibration. Our technique
                 addresses the data quality and quantity problems. It
                 therefore has the potential to enable comprehensive
                 gaze-aware applications in the wild.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Kulev:2018:BAI,
  author =       "Igor Kulev and Pearl Pu and Boi Faltings",
  title =        "A {Bayesian} Approach to Intervention-Based
                 Clustering",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "44:1--44:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3156683",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "An important task for intelligent healthcare systems
                 is to predict the effect of a new intervention on
                 individuals. This is especially true for medical
                 treatments. For example, consider patients who do not
                 respond well to a new drug or have adversary reactions.
                 Predicting the likelihood of positive or negative
                 response before trying the drug on the patient can
                 potentially save his or her life. We are therefore
                 interested in identifying distinctive subpopulations
                 that respond differently to a given intervention. For
                 this purpose, we have developed a novel technique,
                 Intervention-based Clustering, based on a Bayesian
                 mixture model. Compared to the baseline techniques, the
                 novelty of our approach lies in its ability to model
                 complex decision boundaries by using soft clustering,
                 thus predicting the effect for individuals more
                 accurately. It can also incorporate prior knowledge,
                 making the method useful even for smaller datasets. We
                 demonstrate how our method works by applying it to both
                 simulated and real data. Results of our evaluation show
                 that our model has strong predictive power and is
                 capable of producing high-quality clusters compared to
                 the baseline methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lu:2018:SPA,
  author =       "Jing Lu and Doyen Sahoo and Peilin Zhao and Steven C.
                 H. Hoi",
  title =        "Sparse Passive-Aggressive Learning for Bounded Online
                 Kernel Methods",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "45:1--45:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3156684",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "One critical deficiency of traditional online kernel
                 learning methods is their unbounded and growing number
                 of support vectors in the online learning process,
                 making them inefficient and non-scalable for
                 large-scale applications. Recent studies on scalable
                 online kernel learning have attempted to overcome this
                 shortcoming, e.g., by imposing a constant budget on the
                 number of support vectors. Although they attempt to
                 bound the number of support vectors at each online
                 learning iteration, most of them fail to bound the
                 number of support vectors for the final output
                 hypothesis, which is often obtained by averaging the
                 series of hypotheses over all the iterations. In this
                 article, we propose a novel framework for bounded
                 online kernel methods, named ``Sparse
                 Passive-Aggressive (SPA)'' learning, which is able to
                 yield a final output kernel-based hypothesis with a
                 bounded number of support vectors. Unlike the common
                 budget maintenance strategy used by many existing
                 budget online kernel learning approaches, the idea of
                 our approach is to attain the bounded number of support
                 vectors using an efficient stochastic sampling strategy
                 that samples an incoming training example as a new
                 support vector with a probability proportional to its
                 loss suffered. We theoretically prove that SPA achieves
                 an optimal mistake bound in expectation, and we
                 empirically show that it outperforms various budget
                 online kernel learning algorithms. Finally, in addition
                 to general online kernel learning tasks, we also apply
                 SPA to derive bounded online multiple-kernel learning
                 algorithms, which can significantly improve the
                 scalability of traditional Online Multiple-Kernel
                 Classification (OMKC) algorithms while achieving
                 satisfactory learning accuracy as compared with the
                 existing unbounded OMKC algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Reyes:2018:ESP,
  author =       "Oscar Reyes and Sebasti{\'a}n Ventura",
  title =        "Evolutionary Strategy to Perform Batch-Mode Active
                 Learning on Multi-Label Data",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "46:1--46:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3161606",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Multi-label learning has become an important area of
                 research owing to the increasing number of real-world
                 problems that contain multi-label data. Data labeling
                 is an expensive process that requires expert handling.
                 The annotation of multi-label data is laborious since a
                 human expert needs to consider the presence/absence of
                 each possible label. Consequently, numerous modern
                 multi-label problems may involve a small number of
                 labeled examples and plentiful unlabeled examples
                 simultaneously. Active learning methods allow us to
                 induce better classifiers by selecting the most useful
                 unlabeled data, thus considerably reducing the labeling
                 effort and the cost of training an accurate model.
                 Batch-mode active learning methods focus on selecting a
                 set of unlabeled examples in each iteration in such a
                 way that the selected examples are informative and as
                 diverse as possible. This article presents a strategy
                 to perform batch-mode active learning on multi-label
                 data. The batch-mode active learning is formulated as a
                 multi-objective problem, and it is solved by means of
                 an evolutionary algorithm. Extensive experiments were
                 conducted in a large collection of datasets, and the
                 experimental results confirmed the effectiveness of our
                 proposal for better batch-mode multi-label active
                 learning.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2018:MQC,
  author =       "Qin Chen and Qinmin Hu and Jimmy Xiangji Huang and
                 Liang He",
  title =        "Modeling Queries with Contextual Snippets for
                 Information Retrieval",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "47:1--47:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3161607",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Query expansion under the pseudo-relevance feedback
                 (PRF) framework has been extensively studied in
                 information retrieval. However, most expansion methods
                 are mainly based on the statistics of single terms,
                 which can generate plenty of irrelevant query terms and
                 decrease retrieval performance. To alleviate this
                 problem, we propose an approach that adapts the
                 PRF-based contextual snippets into a context-aware
                 topic model to enhance query representations.
                 Specifically, instead of selecting a series of
                 independent terms, we make full use of the query
                 contextual information and focus on the snippets with
                 the length of n in the PRF documents. Furthermore, we
                 propose a context-aware topic (CAT) model to mine the
                 topic distributions of the query-relevant snippets,
                 namely, fine contextual snippets. In contrast to the
                 traditional topic models that infer the topics from the
                 whole corpus, we establish a bridge between the
                 snippets and the corresponding PRF documents, which can
                 be used for modeling the topics more precisely and
                 efficiently. Finally, the topic distributions of the
                 fine snippets are used for context-aware and
                 topic-sensitive query representations. To evaluate the
                 performance of our approach, we integrate the obtained
                 queries into a topic-based hybrid retrieval model and
                 conduct extensive experiments on various TREC
                 collections. The experimental results show that our
                 query-modeling approach is more effective in boosting
                 retrieval performance compared with the
                 state-of-the-art methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2018:FCD,
  author =       "Qi Liu and Runze Wu and Enhong Chen and Guandong Xu
                 and Yu Su and Zhigang Chen and Guoping Hu",
  title =        "Fuzzy Cognitive Diagnosis for Modelling Examinee
                 Performance",
  journal =      j-TIST,
  volume =       "9",
  number =       "4",
  pages =        "48:1--48:??",
  month =        feb,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3168361",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Mar 22 10:01:54 MDT 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Recent decades have witnessed the rapid growth of
                 educational data mining (EDM), which aims at
                 automatically extracting valuable information from
                 large repositories of data generated by or related to
                 people's learning activities in educational settings.
                 One of the key EDM tasks is cognitive modelling with
                 examination data, and cognitive modelling tries to
                 profile examinees by discovering their latent knowledge
                 state and cognitive level (e.g. the proficiency of
                 specific skills). However, to the best of our
                 knowledge, the problem of extracting information from
                 both objective and subjective examination problems to
                 achieve more precise and interpretable cognitive
                 analysis remains underexplored. To this end, we propose
                 a fuzzy cognitive diagnosis framework (FuzzyCDF) for
                 examinees' cognitive modelling with both objective and
                 subjective problems. Specifically, to handle the
                 partially correct responses on subjective problems, we
                 first fuzzify the skill proficiency of examinees. Then
                 we combine fuzzy set theory and educational hypotheses
                 to model the examinees' mastery on the problems based
                 on their skill proficiency. Finally, we simulate the
                 generation of examination score on each problem by
                 considering slip and guess factors. In this way, the
                 whole diagnosis framework is built. For further
                 comprehensive verification, we apply our FuzzyCDF to
                 three classical cognitive assessment tasks, i.e.,
                 predicting examinee performance, slip and guess
                 detection, and cognitive diagnosis visualization.
                 Extensive experiments on three real-world datasets for
                 these assessment tasks prove that FuzzyCDF can reveal
                 the knowledge states and cognitive level of the
                 examinees effectively and interpretatively.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2018:DLE,
  author =       "Zixing Zhang and J{\"u}rgen Geiger and Jouni
                 Pohjalainen and Amr El-Desoky Mousa and Wenyu Jin and
                 Bj{\"o}rn Schuller",
  title =        "Deep Learning for Environmentally Robust Speech
                 Recognition: an Overview of Recent Developments",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "49:1--49:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3178115",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Eliminating the negative effect of non-stationary
                 environmental noise is a long-standing research topic
                 for automatic speech recognition but still remains an
                 important challenge. Data-driven supervised approaches,
                 especially the ones based on deep neural networks, have
                 recently emerged as potential alternatives to
                 traditional unsupervised approaches and with sufficient
                 training, can alleviate the shortcomings of the
                 unsupervised methods in various real-life acoustic
                 environments. In this light, we review recently
                 developed, representative deep learning approaches for
                 tackling non-stationary additive and convolutional
                 degradation of speech with the aim of providing
                 guidelines for those involved in the development of
                 environmentally robust speech recognition systems. We
                 separately discuss single- and multi-channel techniques
                 developed for the front-end and back-end of speech
                 recognition systems, as well as joint front-end and
                 back-end training frameworks. In the meanwhile, we
                 discuss the pros and cons of these approaches and
                 provide their experimental results on benchmark
                 databases. We expect that this overview can facilitate
                 the development of the robustness of speech recognition
                 systems in acoustic noisy environments.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2018:MSM,
  author =       "Qiang Liu and Feng Yu and Shu Wu and Liang Wang",
  title =        "Mining Significant Microblogs for Misinformation
                 Identification: an Attention-Based Approach",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "50:1--50:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3173458",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "With the rapid growth of social media, massive
                 misinformation is also spreading widely on social
                 media, e.g., Weibo and Twitter, and brings negative
                 effects to human life. Today, automatic misinformation
                 identification has drawn attention from academic and
                 industrial communities. Whereas an event on social
                 media usually consists of multiple microblogs, current
                 methods are mainly constructed based on global
                 statistical features. However, information on social
                 media is full of noise, which should be alleviated.
                 Moreover, most of the microblogs about an event have
                 little contribution to the identification of
                 misinformation, where useful information can be easily
                 overwhelmed by useless information. Thus, it is
                 important to mine significant microblogs for
                 constructing a reliable misinformation identification
                 method. In this article, we propose an attention-based
                 approach for identification of misinformation (AIM).
                 Based on the attention mechanism, AIM can select
                 microblogs with the largest attention values for
                 misinformation identification. The attention mechanism
                 in AIM contains two parts: content attention and
                 dynamic attention. Content attention is the
                 calculated-based textual features of each microblog.
                 Dynamic attention is related to the time interval
                 between the posting time of a microblog and the
                 beginning of the event. To evaluate AIM, we conduct a
                 series of experiments on the Weibo and Twitter
                 datasets, and the experimental results show that the
                 proposed AIM model outperforms the state-of-the-art
                 methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shah:2018:DOL,
  author =       "Ankit Shah and Rajesh Ganesan and Sushil Jajodia and
                 Hasan Cam",
  title =        "Dynamic Optimization of the Level of Operational
                 Effectiveness of a {CSOC} Under Adverse Conditions",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "51:1--51:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3173457",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The analysts at a cybersecurity operations center
                 (CSOC) analyze the alerts that are generated by
                 intrusion detection systems (IDSs). Under normal
                 operating conditions, sufficient numbers of analysts
                 are available to analyze the alert workload. For the
                 purpose of this article, this means that the
                 cybersecurity analysts in each shift can fully
                 investigate each and every alert that is generated by
                 the IDSs in a reasonable amount of time and perform
                 their normal tasks in a shift. Normal tasks include
                 analysis time, time to attend training programs, report
                 writing time, personal break time, and time to update
                 the signatures on new patterns in alerts as detected by
                 the IDS. There are several disruptive factors that
                 occur randomly and can adversely impact the normal
                 operating condition of a CSOC, such as (1) higher alert
                 generation rates from a few IDSs, (2) new alert
                 patterns that decrease the throughput of the alert
                 analysis process, and (3) analyst absenteeism. The
                 impact of the preceding factors is that the alerts wait
                 for a long duration before being analyzed, which
                 impacts the level of operational effectiveness (LOE) of
                 the CSOC. To return the CSOC to normal operating
                 conditions, the manager of a CSOC can take several
                 actions, such as increasing the alert analysis time
                 spent by analysts in a shift by canceling a training
                 program, spending some of his own time to assist the
                 analysts in alert investigation, and calling upon the
                 on-call analyst workforce to boost the service rate of
                 alerts. However, additional resources are limited in
                 quantity over a 14-day work cycle, and the CSOC manager
                 must determine when and how much action to take in the
                 face of uncertainty, which arises from both the
                 intensity and the random occurrences of the disruptive
                 factors. The preceding decision by the CSOC manager is
                 nontrivial and is often made in an ad hoc manner using
                 prior experiences. This work develops a reinforcement
                 learning (RL) model for optimizing the LOE throughout
                 the entire 14-day work cycle of a CSOC in the face of
                 uncertainties due to disruptive events. Results
                 indicate that the RL model is able to assist the CSOC
                 manager with a decision support tool to make better
                 decisions than current practices in determining when
                 and how much resource to allocate when the LOE of a
                 CSOC deviates from the normal operating condition.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jian:2018:EMI,
  author =       "Ling Jian and Jundong Li and Huan Liu",
  title =        "Exploiting Multilabel Information for Noise-Resilient
                 Feature Selection",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "52:1--52:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3158675",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In a conventional supervised learning paradigm, each
                 data instance is associated with one single class
                 label. Multilabel learning differs in the way that data
                 instances may belong to multiple concepts
                 simultaneously, which naturally appear in a variety of
                 high impact domains, ranging from bioinformatics and
                 information retrieval to multimedia analysis. It
                 targets leveraging the multiple label information of
                 data instances to build a predictive learning model
                 that can classify unlabeled instances into one or
                 multiple predefined target classes. In multilabel
                 learning, even though each instance is associated with
                 a rich set of class labels, the label information could
                 be noisy and incomplete as the labeling process is both
                 time consuming and labor expensive, leading to
                 potential missing annotations or even erroneous
                 annotations. The existence of noisy and missing labels
                 could negatively affect the performance of underlying
                 learning algorithms. More often than not, multilabeled
                 data often has noisy, irrelevant, and redundant
                 features of high dimensionality. The existence of these
                 uninformative features may also deteriorate the
                 predictive power of the learning model due to the curse
                 of dimensionality. Feature selection, as an effective
                 dimensionality reduction technique, has shown to be
                 powerful in preparing high-dimensional data for
                 numerous data mining and machine-learning tasks.
                 However, a vast majority of existing multilabel feature
                 selection algorithms either boil down to solving
                 multiple single-labeled feature selection problems or
                 directly make use of the imperfect labels to guide the
                 selection of representative features. As a result, they
                 may not be able to obtain discriminative features
                 shared across multiple labels. In this article, to
                 bridge the gap between a rich source of multilabel
                 information and its blemish in practical usage, we
                 propose a novel noise-resilient multilabel informed
                 feature selection framework (MIFS) by exploiting the
                 correlations among different labels. In particular, to
                 reduce the negative effects of imperfect label
                 information in obtaining label correlations, we
                 decompose the multilabel information of data instances
                 into a low-dimensional space and then employ the
                 reduced label representation to guide the feature
                 selection phase via a joint sparse regression
                 framework. Empirical studies on both synthetic and
                 real-world datasets demonstrate the effectiveness and
                 efficiency of the proposed MIFS framework.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shen:2018:MDH,
  author =       "Xiaobo Shen and Fumin Shen and Li Liu and Yun-Hao Yuan
                 and Weiwei Liu and Quan-Sen Sun",
  title =        "Multiview Discrete Hashing for Scalable Multimedia
                 Search",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "53:1--53:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3178119",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Hashing techniques have recently gained increasing
                 research interest in multimedia studies. Most existing
                 hashing methods only employ single features for hash
                 code learning. Multiview data with each view
                 corresponding to a type of feature generally provides
                 more comprehensive information. How to efficiently
                 integrate multiple views for learning compact hash
                 codes still remains challenging. In this article, we
                 propose a novel unsupervised hashing method, dubbed
                 multiview discrete hashing (MvDH), by effectively
                 exploring multiview data. Specifically, MvDH performs
                 matrix factorization to generate the hash codes as the
                 latent representations shared by multiple views, during
                 which spectral clustering is performed simultaneously.
                 The joint learning of hash codes and cluster labels
                 enables that MvDH can generate more discriminative hash
                 codes, which are optimal for classification. An
                 efficient alternating algorithm is developed to solve
                 the proposed optimization problem with guaranteed
                 convergence and low computational complexity. The
                 binary codes are optimized via the discrete cyclic
                 coordinate descent (DCC) method to reduce the
                 quantization errors. Extensive experimental results on
                 three large-scale benchmark datasets demonstrate the
                 superiority of the proposed method over several
                 state-of-the-art methods in terms of both accuracy and
                 scalability.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2018:AEB,
  author =       "Chen Li and William K. Cheung and Jiming Liu and
                 Joseph K. Ng",
  title =        "Automatic Extraction of Behavioral Patterns for
                 Elderly Mobility and Daily Routine Analysis",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "54:1--54:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3178116",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The elderly living in smart homes can have their daily
                 movement recorded and analyzed. As different elders can
                 have their own living habits, a methodology that can
                 automatically identify their daily activities and
                 discover their daily routines will be useful for better
                 elderly care and support. In this article, we focus on
                 automatic detection of behavioral patterns from the
                 trajectory data of an individual for activity
                 identification as well as daily routine discovery. The
                 underlying challenges lie in the need to consider
                 longer-range dependency of the sensor triggering events
                 and spatiotemporal variations of the behavioral
                 patterns exhibited by humans. We propose to represent
                 the trajectory data using a behavior-aware flow graph
                 that is a probabilistic finite state automaton with its
                 nodes and edges attributed with some local
                 behavior-aware features. We identify the underlying
                 subflows as the behavioral patterns using the kernel k
                 -means algorithm. Given the identified activities, we
                 propose a novel nominal matrix factorization method
                 under a Bayesian framework with Lasso to extract highly
                 interpretable daily routines. For empirical evaluation,
                 the proposed methodology has been compared with a
                 number of existing methods based on both synthetic and
                 publicly available real smart home datasets with
                 promising results obtained. We also discuss how the
                 proposed unsupervised methodology can be used to
                 support exploratory behavior analysis for elderly
                 care.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:IHU,
  author =       "Jun-Zhe Wang and Jiun-Long Huang",
  title =        "On Incremental High Utility Sequential Pattern
                 Mining",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "55:1--55:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3178114",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "High utility sequential pattern (HUSP) mining is an
                 emerging topic in pattern mining, and only a few
                 algorithms have been proposed to address it. In
                 practice, most sequence databases usually grow over
                 time, and it is inefficient for existing algorithms to
                 mine HUSPs from scratch when databases grow with a
                 small portion of updates. In view of this, we propose
                 the IncUSP-Miner$^+$ algorithm to mine HUSPs
                 incrementally. Specifically, to avoid redundant
                 re-computations, we propose a tighter upper bound of
                 the utility of a sequence, called Tight Sequence
                 Utility (TSU), and then we design a novel data
                 structure, called the candidate pattern tree, to buffer
                 the sequences whose TSU values are greater than or
                 equal to the minimum utility threshold in the original
                 database. Accordingly, to avoid keeping a huge amount
                 of utility information for each sequence, a set of
                 concise utility information is designed to be stored in
                 each tree node. To improve the mining efficiency,
                 several strategies are proposed to reduce the amount of
                 computation for utility update and the scopes of
                 database scans. Moreover, several strategies are also
                 proposed to properly adjust the candidate pattern tree
                 for the support of multiple database updates.
                 Experimental results on some real and synthetic
                 datasets show that IncUSP-Miner$^+$ is able to
                 efficiently mine HUSPs incrementally.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zdesar:2018:OVP,
  author =       "Andrej Zdesar and Igor Skrjanc",
  title =        "Optimum Velocity Profile of Multiple
                 {Bernstein--B{\'e}zier} Curves Subject to Constraints
                 for Mobile Robots",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "56:1--56:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3183891",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article deals with trajectory planning that is
                 suitable for nonholonomic differentially driven wheeled
                 mobile robots. The path is approximated with a spline
                 that consists of multiple Bernstein-B{\'e}zier curves
                 that are merged together in a way that continuous
                 curvature of the spline is achieved. The article
                 presents the approach for optimization of velocity
                 profile of Bernstein-B{\'e}zier spline subject to
                 velocity and acceleration constraints. For the purpose
                 of optimization, velocity and turning points are
                 introduced. Based on these singularity points, local
                 segments are defined where local velocity profiles are
                 optimized independently of each other. From the locally
                 optimum velocity profiles, the global optimum velocity
                 profile is determined. Since each local velocity
                 profile can be evaluated independently, the algorithm
                 is suitable for concurrent implementation and
                 modification of one part of the curve does not require
                 recalculation of all local velocity profiles. These
                 properties enable efficient implementation of the
                 optimization algorithm. The optimization algorithm is
                 also suitable for the splines that consist of
                 Bernstein-B{\'e}zier curves that have substantially
                 different lengths. The proposed optimization approach
                 was experimentally evaluated and validated in
                 simulation environment and on real mobile robots.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Peng:2018:ICD,
  author =       "Chong Peng and Zhao Kang and Shuting Cai and Qiang
                 Cheng",
  title =        "Integrate and Conquer: Double-Sided Two-Dimensional
                 $k$-Means Via Integrating of Projection and Manifold
                 Construction",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "57:1--57:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200488",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In this article, we introduce a novel, general
                 methodology, called integrate and conquer, for
                 simultaneously accomplishing the tasks of feature
                 extraction, manifold construction, and clustering,
                 which is taken to be superior to building a clustering
                 method as a single task. When the proposed novel
                 methodology is used on two-dimensional (2D) data, it
                 naturally induces a new clustering method highly
                 effective on 2D data. Existing clustering algorithms
                 usually need to convert 2D data to vectors in a
                 preprocessing step, which, unfortunately, severely
                 damages 2D spatial information and omits inherent
                 structures and correlations in the original data. The
                 induced new clustering method can overcome the
                 matrix-vectorization-related issues to enhance the
                 clustering performance on 2D matrices. More
                 specifically, the proposed methodology mutually
                 enhances three tasks of finding subspaces, learning
                 manifolds, and constructing data representation in a
                 seamlessly integrated fashion. When used on 2D data, we
                 seek two projection matrices with optimal numbers of
                 directions to project the data into low-rank,
                 noise-mitigated, and the most expressive subspaces, in
                 which manifolds are adaptively updated according to the
                 projections, and new data representation is built with
                 respect to the projected data by accounting for
                 nonlinearity via adaptive manifolds. Consequently, the
                 learned subspaces and manifolds are clean and
                 intrinsic, and the new data representation is
                 discriminative and robust. Extensive experiments have
                 been conducted and the results confirm the
                 effectiveness of the proposed methodology and
                 algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Huang:2018:CFR,
  author =       "Dingjiang Huang and Shunchang Yu and Bin Li and Steven
                 C. H. Hoi and Shuigeng Zhou",
  title =        "Combination Forecasting Reversion Strategy for Online
                 Portfolio Selection",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "58:1--58:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200692",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Machine learning and artificial intelligence
                 techniques have been applied to construct online
                 portfolio selection strategies recently. A popular and
                 state-of-the-art family of strategies is to explore the
                 reversion phenomenon through online learning algorithms
                 and statistical prediction models. Despite gaining
                 promising results on some benchmark datasets, these
                 strategies often adopt a single model based on a
                 selection criterion (e.g., breakdown point) for
                 predicting future price. However, such model selection
                 is often unstable and may cause unnecessarily high
                 variability in the final estimation, leading to poor
                 prediction performance in real datasets and thus
                 non-optimal portfolios. To overcome the drawbacks, in
                 this article, we propose to exploit the reversion
                 phenomenon by using combination forecasting estimators
                 and design a novel online portfolio selection strategy,
                 named Combination Forecasting Reversion (CFR), which
                 outputs optimal portfolios based on the improved
                 reversion estimator. We further present two efficient
                 CFR implementations based on online Newton step (ONS)
                 and online gradient descent (OGD) algorithms,
                 respectively, and theoretically analyze their regret
                 bounds, which guarantee that the online CFR model
                 performs as well as the best CFR model in hindsight. We
                 evaluate the proposed algorithms on various real
                 markets with extensive experiments. Empirical results
                 show that CFR can effectively overcome the drawbacks of
                 existing reversion strategies and achieve the
                 state-of-the-art performance.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rossi:2018:IVG,
  author =       "Ryan A. Rossi and Nesreen K. Ahmed and Rong Zhou and
                 Hoda Eldardiry",
  title =        "Interactive Visual Graph Mining and Learning",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "59:1--59:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200764",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article presents a platform for interactive graph
                 mining and relational machine learning called GraphVis.
                 The platform combines interactive visual
                 representations with state-of-the-art graph mining and
                 relational machine learning techniques to aid in
                 revealing important insights quickly as well as
                 learning an appropriate and highly predictive model for
                 a particular task (e.g., classification, link
                 prediction, discovering the roles of nodes, and finding
                 influential nodes). Visual representations and
                 interaction techniques and tools are developed for
                 simple, fast, and intuitive real-time interactive
                 exploration, mining, and modeling of graph data. In
                 particular, we propose techniques for interactive
                 relational learning (e.g., node/link classification),
                 interactive link prediction and weighting, role
                 discovery and community detection, higher-order network
                 analysis (via graphlets, network motifs), among others.
                 GraphVis also allows for the refinement and tuning of
                 graph mining and relational learning methods for
                 specific application domains and constraints via an
                 end-to-end interactive visual analytic pipeline that
                 learns, infers, and provides rapid interactive
                 visualization with immediate feedback at each
                 change/prediction in real-time. Other key aspects
                 include interactive filtering, querying, ranking,
                 manipulating, exporting, as well as tools for dynamic
                 network analysis and visualization, interactive graph
                 generators (including new block model approaches), and
                 a variety of multi-level network analysis techniques.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Peng:2018:EPH,
  author =       "Xuefeng Peng and Li-Kai Chi and Jiebo Luo",
  title =        "The Effect of Pets on Happiness: a Large-Scale
                 Multi-Factor Analysis Using Social Multimedia",
  journal =      j-TIST,
  volume =       "9",
  number =       "5",
  pages =        "60:1--60:??",
  month =        jul,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200751",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "From reducing stress and loneliness, to boosting
                 productivity and overall well-being, pets are believed
                 to play a significant role in people's daily lives.
                 Many traditional studies have identified that frequent
                 interactions with pets could make individuals become
                 healthier and more optimistic, and ultimately enjoy a
                 happier life. However, most of those studies are not
                 only restricted in scale, but also may carry biases by
                 using subjective self-reports, interviews, and
                 questionnaires as the major approaches. In this
                 article, we leverage large-scale data collected from
                 social media and the state-of-the-art deep learning
                 technologies to study this phenomenon in depth and
                 breadth. Our study includes five major steps: (1)
                 collecting timeline posts from around 20,000 Instagram
                 users; (2) using face detection and recognition on 2
                 million photos to infer users' demographics,
                 relationship status, and whether having children, (3)
                 analyzing a user's degree of happiness based on images
                 and captions via smiling classification and textual
                 sentiment analysis; (4) applying transfer learning
                 techniques to retrain the final layer of the Inception
                 v3 model for pet classification; and (5) analyzing the
                 effects of pets on happiness in terms of multiple
                 factors of user demographics. Our main results have
                 demonstrated the efficacy of our proposed method with
                 many new insights. We believe this method is also
                 applicable to other domains as a scalable, efficient,
                 and effective methodology for modeling and analyzing
                 social behaviors and psychological well-being. In
                 addition, to facilitate the research involving human
                 faces, we also release our dataset of 700K analyzed
                 faces.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:TTP,
  author =       "Weiqing Wang and Hongzhi Yin and Xingzhong Du and Quoc
                 Viet Hung Nguyen and Xiaofang Zhou",
  title =        "{TPM}: a Temporal Personalized Model for Spatial Item
                 Recommendation",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "61:1--61:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3230706",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3230706",
  abstract =     "With the rapid development of location-based social
                 networks (LBSNs), spatial item recommendation has
                 become an important way of helping users discover
                 interesting locations to increase their engagement with
                 location-based services. The availability of spatial,
                 temporal, and social information in LBSNs offers an
                 unprecedented opportunity to enhance the spatial item
                 recommendation. Many previous works studied spatial and
                 social influences on spatial item recommendation in
                 LBSNs. Due to the strong correlations between a user's
                 check-in time and the corresponding check-in location,
                 which include the sequential influence and temporal
                 cyclic effect, it is essential for spatial item
                 recommender system to exploit the temporal effect to
                 improve the recommendation accuracy. Leveraging
                 temporal information in spatial item recommendation is,
                 however, very challenging, considering (1) when
                 integrating sequential influences, users' check-in data
                 in LBSNs has a low sampling rate in both space and
                 time, which renders existing location prediction
                 techniques on GPS trajectories ineffective, and the
                 prediction space is extremely large, with millions of
                 distinct locations as the next prediction target, which
                 impedes the application of classical Markov chain
                 models; (2) there are various temporal cyclic patterns
                 (i.e., daily, weekly, and monthly) in LBSNs, but
                 existing work is limited to one specific pattern; and
                 (3) there is no existing framework that unifies users'
                 personal interests, temporal cyclic patterns, and the
                 sequential influence of recently visited locations in a
                 principled manner. In light of the above challenges, we
                 propose a Temporal Personalized Model ( TPM ), which
                 introduces a novel latent variable topic-region to
                 model and fuse sequential influence, cyclic patterns
                 with personal interests in the latent and exponential
                 space. The advantages of modeling the temporal effect
                 at the topic-region level include a significantly
                 reduced prediction space, an effective alleviation of
                 data sparsity, and a direct expression of the semantic
                 meaning of users' spatial activities. Moreover, we
                 introduce two methods to model the effect of various
                 cyclic patterns. The first method is a time indexing
                 scheme that encodes the effect of various cyclic
                 patterns into a binary code. However, the indexing
                 scheme faces the data sparsity problem in each time
                 slice. To deal with this data sparsity problem, the
                 second method slices the time according to each cyclic
                 pattern separately and explores these patterns in a
                 joint additive model. Furthermore, we design an
                 asymmetric Locality Sensitive Hashing (ALSH) technique
                 to speed up the online top- k recommendation process by
                 extending the traditional LSH. We evaluate the
                 performance of TPM on two real datasets and one
                 large-scale synthetic dataset. The performance of TPM
                 in recommending cold-start items is also evaluated. The
                 results demonstrate a significant improvement in TPM's
                 ability to recommend spatial items, in terms of both
                 effectiveness and efficiency, compared with the
                 state-of-the-art methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Lucchese:2018:XCL,
  author =       "Claudio Lucchese and Franco Maria Nardini and
                 Salvatore Orlando and Raffaele Perego and Fabrizio
                 Silvestri and Salvatore Trani",
  title =        "{X-CLEaVER}: Learning Ranking Ensembles by Growing and
                 Pruning Trees",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "62:1--62:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3205453",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3205453",
  abstract =     "Learning-to-Rank (LtR) solutions are commonly used in
                 large-scale information retrieval systems such as Web
                 search engines, which have to return highly relevant
                 documents in response to user query within fractions of
                 seconds. The most effective LtR algorithms adopt a
                 gradient boosting approach to build additive ensembles
                 of weighted regression trees. Since the required
                 ranking effectiveness is achieved with very large
                 ensembles, the impact on response time and query
                 throughput of these solutions is not negligible. In
                 this article, we propose X-CLE aVER, an iterative
                 meta-algorithm able to build more efficient and
                 effective ranking ensembles. X-CLEaVER interleaves the
                 iterations of a given gradient boosting learning
                 algorithm with pruning and re-weighting phases. First,
                 redundant trees are removed from the given ensemble,
                 then the weights of the remaining trees are fine-tuned
                 by optimizing the desired ranking quality metric. We
                 propose and analyze several pruning strategies and we
                 assess their benefits showing that interleaving pruning
                 and re-weighting phases during learning is more
                 effective than applying a single post-learning
                 optimization step. Experiments conducted using two
                 publicly available LtR datasets show that X-CLEaVER can
                 be successfully exploited on top of several LtR
                 algorithms as it is effective in optimizing the
                 effectiveness of the learnt ensembles, thus obtaining
                 more compact forests that hence are much more efficient
                 at scoring time.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:LUC,
  author =       "Pengyang Wang and Yanjie Fu and Jiawei Zhang and
                 Xiaolin Li and Dan Lin",
  title =        "Learning Urban Community Structures: a Collective
                 Embedding Perspective with Periodic Spatial-temporal
                 Mobility Graphs",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "63:1--63:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3209686",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Learning urban community structures refers to the
                 efforts of quantifying, summarizing, and representing
                 an urban community's (i) static structures, e.g.,
                 Point-Of-Interests (POIs) buildings and corresponding
                 geographic allocations, and (ii) dynamic structures,
                 e.g., human mobility patterns among POIs. By learning
                 the community structures, we can better quantitatively
                 represent urban communities and understand their
                 evolutions in the development of cities. This can help
                 us boost commercial activities, enhance public
                 security, foster social interactions, and, ultimately,
                 yield livable, sustainable, and viable environments.
                 However, due to the complex nature of urban systems, it
                 is traditionally challenging to learn the structures of
                 urban communities. To address this problem, in this
                 article, we propose a collective embedding framework to
                 learn the community structure from multiple periodic
                 spatial-temporal graphs of human mobility.
                 Specifically, we first exploit a probabilistic
                 propagation-based approach to create a set of mobility
                 graphs from periodic human mobility records. In these
                 mobility graphs, the static POIs are regarded as
                 vertexes, the dynamic mobility connectivities between
                 POI pairs are regarded as edges, and the edge weights
                 periodically evolve over time. A collective deep
                 auto-encoder method is then developed to
                 collaboratively learn the embeddings of POIs from
                 multiple spatial-temporal mobility graphs. In addition,
                 we develop a Unsupervised Graph based Weighted
                 Aggregation method to align and aggregate the POI
                 embeddings into the representation of the community
                 structures. We apply the proposed embedding framework
                 to two applications (i.e., spotting vibrant communities
                 and predicting housing price return rates) to evaluate
                 the performance of our proposed method. Extensive
                 experimental results on real-world urban communities
                 and human mobility data demonstrate the effectiveness
                 of the proposed collective embedding framework.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Anaissi:2018:AOO,
  author =       "Ali Anaissi and Nguyen Lu Dang Khoa and Thierry
                 Rakotoarivelo and Mehrisadat Makki Alamdari and Yang
                 Wang",
  title =        "Adaptive Online One-Class Support Vector Machines with
                 Applications in Structural Health Monitoring",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "64:1--64:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3230708",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "One-class support vector machine (OCSVM) has been
                 widely used in the area of structural health
                 monitoring, where only data from one class (i.e.,
                 healthy) are available. Incremental learning of OCSVM
                 is critical for online applications in which huge data
                 streams continuously arrive and the healthy data
                 distribution may vary over time. This article proposes
                 a novel adaptive self-advised online OCSVM that
                 incrementally tunes the kernel parameter and decides
                 whether a model update is required or not. As opposed
                 to existing methods, this novel online algorithm does
                 not rely on any fixed threshold, but it uses the slack
                 variables in the OCSVM to determine which new data
                 points should be included in the training set and
                 trigger a model update. The algorithm also
                 incrementally tunes the kernel parameter of OCSVM
                 automatically based on the spatial locations of the
                 edge and interior samples in the training data with
                 respect to the constructed hyperplane of OCSVM. This
                 new online OCSVM algorithm was extensively evaluated
                 using synthetic data and real data from case studies in
                 structural health monitoring. The results showed that
                 the proposed method significantly improved the
                 classification error rates, was able to assimilate the
                 changes in the positive data distribution over time,
                 and maintained a high damage detection accuracy in all
                 case studies.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2018:DOS,
  author =       "Xuelong Li and Guosheng Cui and Yongsheng Dong",
  title =        "Discriminative and Orthogonal Subspace
                 Constraints-Based Nonnegative Matrix Factorization",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "65:1--65:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3229051",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3229051",
  abstract =     "Nonnegative matrix factorization (NMF) is one widely
                 used feature extraction technology in the tasks of
                 image clustering and image classification. For the
                 former task, various unsupervised NMF methods based on
                 the data distribution structure information have been
                 proposed. While for the latter task, the label
                 information of the dataset is one very important
                 guiding. However, most previous proposed supervised NMF
                 methods emphasis on imposing the discriminant
                 constraints on the coefficient matrix. When dealing
                 with new coming samples, the transpose or the
                 pseudoinverse of the basis matrix is used to project
                 these samples to the low dimension space. In this way,
                 the label influence to the basis matrix is indirect.
                 Although, there are also some methods trying to
                 constrain the basis matrix in NMF framework, either
                 they only restrict within-class samples or impose
                 improper constraint on the basis matrix. To address
                 these problems, in this article a novel NMF framework
                 named discriminative and orthogonal subspace
                 constraints-based nonnegative matrix factorization
                 (DOSNMF) is proposed. In DOSNMF, the discriminative
                 constraints are imposed on the projected subspace
                 instead of the directly learned representation. In this
                 manner, the discriminative information is directly
                 connected with the projected subspace. At the same
                 time, an orthogonal term is incorporated in DOSNMF to
                 adjust the orthogonality of the learned basis matrix,
                 which can ensure the orthogonality of the learned
                 subspace and improve the sparseness of the basis matrix
                 at the same time. This framework can be implemented in
                 two ways. The first way is based on the manifold
                 learning theory. In this way, two graphs, i.e., the
                 intrinsic graph and the penalty graph, are constructed
                 to capture the intra-class structure and the
                 inter-class distinctness. With this design, both the
                 manifold structure information and the discriminative
                 information of the dataset are utilized. For
                 convenience, we name this method as the name of the
                 framework, i.e., DOSNMF. The second way is based on the
                 Fisher's criterion, we name it Fisher's criterion-based
                 DOSNMF (FDOSNMF). The objective functions of DOSNMF and
                 FDOSNMF can be easily optimized using multiplicative
                 update (MU) rules. The new methods are tested on five
                 datasets and compared with several supervised and
                 unsupervised variants of NMF. The experimental results
                 reveal the effectiveness of the proposed methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2018:HPC,
  author =       "Xiaobai Liu and Qian Xu and Yadong Mu and Jiadi Yang
                 and Liang Lin and Shuicheng Yan",
  title =        "High-Precision Camera Localization in Scenes with
                 Repetitive Patterns",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "66:1--66:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3226111",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "This article presents a high-precision multi-modal
                 approach for localizing moving cameras with monocular
                 videos, which has wide potentials in many intelligent
                 applications, including robotics, autonomous vehicles,
                 and so on. Existing visual odometry methods often
                 suffer from symmetric or repetitive scene patterns,
                 e.g., windows on buildings or parking stalls. To
                 address this issue, we introduce a robust camera
                 localization method that contributes in two aspects.
                 First, we formulate feature tracking, the critical step
                 of visual odometry, as a hierarchical min-cost network
                 flow optimization task, and we regularize the formula
                 with flow constraints, cross-scale consistencies, and
                 motion heuristics. The proposed regularized formula is
                 capable of adaptively selecting distinctive features or
                 feature combinations, which is more effective than
                 traditional methods that detect and group repetitive
                 patterns in a separate step. Second, we develop a joint
                 formula for integrating dense visual odometry and
                 sparse GPS readings in a common reference coordinate.
                 The fusion process is guided with high-order statistics
                 knowledge to suppress the impacts of noises, clusters,
                 and model drifting. We evaluate the proposed camera
                 localization method on both public video datasets and a
                 newly created dataset that includes scenes full of
                 repetitive patterns. Results with comparisons show that
                 our method can achieve comparable performance to
                 state-of-the-art methods and is particularly effective
                 for addressing repetitive pattern issues.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2018:CDR,
  author =       "Cheng-Te Li and Chia-Tai Hsu and Man-Kwan Shan",
  title =        "A Cross-Domain Recommendation Mechanism for Cold-Start
                 Users Based on Partial Least Squares Regression",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "67:1--67:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3231601",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3231601",
  abstract =     "Recommender systems are common in e-commerce platforms
                 in recent years. Recommender systems are able to help
                 users find preferential items among a large amount of
                 products so that users' time is saved and sellers'
                 profits are increased. Cross-domain recommender systems
                 aim to recommend items based on users' different tastes
                 across domains. While recommender systems usually
                 suffer from the user cold-start problem that leads to
                 unsatisfying recommendation performance, cross-domain
                 recommendation can remedy such a problem. This article
                 proposes a novel cross-domain recommendation model
                 based on regression analysis, partial least squares
                 regression (PLSR). The proposed recommendation models,
                 PLSR-CrossRec and PLSR-Latent, are able to purely use
                 source-domain ratings to predict the ratings for
                 cold-start users who never rated items in the target
                 domains. Experiments conducted on the Epinions dataset
                 with ten various domains' rating records demonstrate
                 that PLSR-Latent can outperform several matrix
                 factorization-based competing methods under a variety
                 of cross-domain settings. The time efficiency of
                 PLSR-Latent is also satisfactory.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2018:CUS,
  author =       "Longqi Yang and Chen Fang and Hailin Jin and Matthew
                 D. Hoffman and Deborah Estrin",
  title =        "Characterizing User Skills from Application Usage
                 Traces with Hierarchical Attention Recurrent Networks",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "68:1--68:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3232231",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3232231",
  abstract =     "Predicting users' proficiencies is a critical
                 component of AI-powered personal assistants. This
                 article introduces a novel approach for the prediction
                 based on users' diverse, noisy, and passively generated
                 application usage histories. We propose a novel
                 bi-directional recurrent neural network with
                 hierarchical attention mechanism to extract sequential
                 patterns and distinguish informative traces from noise.
                 Our model is able to attend to the most discriminative
                 actions and sessions to make more accurate and directly
                 interpretable predictions while requiring 50$ \times $
                 less training data than the state-of-the-art sequential
                 learning approach. We evaluate our model with two large
                 scale datasets collected from 68K Photoshop users: a
                 digital design skill dataset where the user skill is
                 determined by the quality of the end products and a
                 software skill dataset where users self-disclose their
                 software usage skill levels. The empirical results
                 demonstrate our model's superior performance compared
                 to existing user representation learning techniques
                 that leverage action frequencies and sequential
                 patterns. In addition, we qualitatively illustrate the
                 model's significant interpretative power. The proposed
                 approach is broadly relevant to applications that
                 generate user time-series analytics.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2018:RFI,
  author =       "Suhang Wang and Charu Aggarwal and Huan Liu",
  title =        "Random-Forest-Inspired Neural Networks",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "69:1--69:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3232230",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3232230",
  abstract =     "Neural networks have become very popular in recent
                 years, because of the astonishing success of deep
                 learning in various domains such as image and speech
                 recognition. In many of these domains, specific
                 architectures of neural networks, such as convolutional
                 networks, seem to fit the particular structure of the
                 problem domain very well and can therefore perform in
                 an astonishingly effective way. However, the success of
                 neural networks is not universal across all domains.
                 Indeed, for learning problems without any special
                 structure, or in cases where the data are somewhat
                 limited, neural networks are known not to perform well
                 with respect to traditional machine-learning methods
                 such as random forests. In this article, we show that a
                 carefully designed neural network with random forest
                 structure can have better generalization ability. In
                 fact, this architecture is more powerful than random
                 forests, because the back-propagation algorithm reduces
                 to a more powerful and generalized way of constructing
                 a decision tree. Furthermore, the approach is efficient
                 to train and requires a small constant factor of the
                 number of training examples. This efficiency allows the
                 training of multiple neural networks to improve the
                 generalization accuracy. Experimental results on
                 real-world benchmark datasets demonstrate the
                 effectiveness of the proposed enhancements for
                 classification and regression.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Du:2018:SMS,
  author =       "Bowen Du and Yifeng Cui and Yanjie Fu and Runxing
                 Zhong and Hui Xiong",
  title =        "{SmartTransfer}: Modeling the Spatiotemporal Dynamics
                 of Passenger Transfers for Crowdedness-Aware Route
                 Recommendations",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "70:1--70:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3232229",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3232229",
  abstract =     "In urban transportation systems, transfer stations
                 refer to hubs connecting a variety of bus and subway
                 lines and, thus, are the most important nodes in
                 transportation networks. The pervasive availability of
                 large-scale travel traces of passengers, collected from
                 automated fare collection (AFC) systems, has provided
                 unprecedented opportunities for understanding citywide
                 transfer patterns, which can benefit smart
                 transportation, such as smart route recommendation to
                 avoid crowded lines, and dynamic bus scheduling to
                 enhance transportation efficiency. To this end, in this
                 article, we provide a systematic study of the
                 measurement, patterns, and modeling of spatiotemporal
                 dynamics of passenger transfers. Along this line, we
                 develop a data-driven analytical system for modeling
                 the transfer volumes of each transfer station. More
                 specifically, we first identify and quantify the
                 discriminative patterns of spatiotemporal dynamics of
                 passenger transfers by utilizing heterogeneous sources
                 of transfer related data for each station. Also, we
                 develop a multi-task spatiotemporal learning model for
                 predicting the transfer volumes of a specific station
                 at a specific time period. Moreover, we further
                 leverage the predictive model of passenger transfers to
                 provide crowdedness-aware route recommendations.
                 Finally, we conduct the extensive evaluations with a
                 variety of real-world data. Experimental results
                 demonstrate the effectiveness of our proposed modeling
                 method and its applications for smart transportation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2018:FST,
  author =       "Wenhe Liu and Xiaojun Chang and Yan Yan and Yi Yang
                 and Alexander G. Hauptmann",
  title =        "Few-Shot Text and Image Classification via Analogical
                 Transfer Learning",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "71:1--71:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3230709",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3230709",
  abstract =     "Learning from very few samples is a challenge for
                 machine learning tasks, such as text and image
                 classification. Performance of such task can be
                 enhanced via transfer of helpful knowledge from related
                 domains, which is referred to as transfer learning. In
                 previous transfer learning works, instance transfer
                 learning algorithms mostly focus on selecting the
                 source domain instances similar to the target domain
                 instances for transfer. However, the selected instances
                 usually do not directly contribute to the learning
                 performance in the target domain. Hypothesis transfer
                 learning algorithms focus on the model/parameter level
                 transfer. They treat the source hypotheses as
                 well-trained and transfer their knowledge in terms of
                 parameters to learn the target hypothesis. Such
                 algorithms directly optimize the target hypothesis by
                 the observable performance improvements. However, they
                 fail to consider the problem that instances that
                 contribute to the source hypotheses may be harmful for
                 the target hypothesis, as instance transfer learning
                 analyzed. To relieve the aforementioned problems, we
                 propose a novel transfer learning algorithm, which
                 follows an analogical strategy. Particularly, the
                 proposed algorithm first learns a revised source
                 hypothesis with only instances contributing to the
                 target hypothesis. Then, the proposed algorithm
                 transfers both the revised source hypothesis and the
                 target hypothesis (only trained with a few samples) to
                 learn an analogical hypothesis. We denote our algorithm
                 as Analogical Transfer Learning. Extensive experiments
                 on one synthetic dataset and three real-world benchmark
                 datasets demonstrate the superior performance of the
                 proposed algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chin:2018:EAN,
  author =       "Wei-Sheng Chin and Bo-Wen Yuan and Meng-Yuan Yang and
                 Chih-Jen Lin",
  title =        "An Efficient Alternating {Newton} Method for Learning
                 Factorization Machines",
  journal =      j-TIST,
  volume =       "9",
  number =       "6",
  pages =        "72:1--72:??",
  month =        nov,
  year =         "2018",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3230710",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Nov 15 16:23:08 MST 2018",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/multithreading.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3230710",
  abstract =     "To date, factorization machines (FMs) have emerged as
                 a powerful model in many applications. In this work, we
                 study the training of FM with the logistic loss for
                 binary classification, which is a nonlinear extension
                 of the linear model with the logistic loss (i.e.,
                 logistic regression). For the training of large-scale
                 logistic regression, Newton methods have been shown to
                 be an effective approach, but it is difficult to apply
                 such methods to FM because of the nonconvexity. We
                 consider a modification of FM that is multiblock convex
                 and propose an alternating minimization algorithm based
                 on Newton methods. Some novel optimization techniques
                 are introduced to reduce the running time. Our
                 experiments demonstrate that the proposed algorithm is
                 more efficient than stochastic gradient algorithms and
                 coordinate descent methods. The parallelism of our
                 method is also investigated for the acceleration in
                 multithreading environments.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cao:2019:ATS,
  author =       "Nan Cao and Steffen Koch and David Gotz / Yingcai Wu",
  title =        "{ACM TIST} Special Issue on Visual Analytics",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "1:1--1:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3277019",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3277019",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2019:RVR,
  author =       "Wei Chen and Jing Xia and Xumeng Wang and Yi Wang and
                 Jun Chen and Liang Chang",
  title =        "{RelationLines}: Visual Reasoning of Egocentric
                 Relations from Heterogeneous Urban Data",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "2:1--2:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200766",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200766",
  abstract =     "The increased accessibility of urban sensor data and
                 the popularity of social network applications is
                 enabling the discovery of crowd mobility and personal
                 communication patterns. However, studying the
                 egocentric relationships of an individual can be very
                 challenging because available data may refer to direct
                 contacts, such as phone calls between individuals, or
                 indirect contacts, such as paired location presence. In
                 this article, we develop methods to integrate three
                 facets extracted from heterogeneous urban data
                 (timelines, calls, and locations) through a progressive
                 visual reasoning and inspection scheme. Our approach
                 uses a detect-and-filter scheme such that, prior to
                 visual refinement and analysis, a coarse detection is
                 performed to extract the target individual and
                 construct the timeline of the target. It then detects
                 spatio-temporal co-occurrences or call-based contacts
                 to develop the egocentric network of the individual.
                 The filtering stage is enhanced with a line-based
                 visual reasoning interface that facilitates a flexible
                 and comprehensive investigation of egocentric
                 relationships and connections in terms of time, space,
                 and social networks. The integrated system,
                 RelationLines, is demonstrated using a dataset that
                 contains taxi GPS data, cell-base mobility data, mobile
                 calling data, microblog data, and point-of-interest
                 (POI) data from a city with millions of citizens. We
                 examine the effectiveness and efficiency of our system
                 with three case studies and user review.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xu:2019:TSV,
  author =       "Mingliang Xu and Hua Wang and Shili Chu and Yong Gan
                 and Xiaoheng Jiang and Yafei Li and Bing Zhou",
  title =        "Traffic Simulation and Visual Verification in Smog",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "3:1--3:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200491",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200491",
  abstract =     "Smog causes low visibility on the road and it can
                 impact the safety of traffic. Modeling traffic in smog
                 will have a significant impact on realistic traffic
                 simulations. Most existing traffic models assume that
                 drivers have optimal vision in the simulations, making
                 these simulations are not suitable for modeling smog
                 weather conditions. In this article, we introduce the
                 Smog Full Velocity Difference Model (SMOG-FVDM) for a
                 realistic simulation of traffic in smog weather
                 conditions. In this model, we present a stadia model
                 for drivers in smog conditions. We introduce it into a
                 car-following traffic model using both psychological
                 force and body force concepts, and then we introduce
                 the SMOG-FVDM. Considering that there are lots of
                 parameters in the SMOG-FVDM, we design a visual
                 verification system based on SMOG-FVDM to arrive at an
                 adequate solution which can show visual simulation
                 results under different road scenarios and different
                 degrees of smog by reconciling the parameters.
                 Experimental results show that our model can give a
                 realistic and efficient traffic simulation of smog
                 weather conditions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Xie:2019:VAH,
  author =       "Cong Xie and Wen Zhong and Wei Xu and Klaus Mueller",
  title =        "Visual Analytics of Heterogeneous Data Using
                 Hypergraph Learning",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "4:1--4:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200765",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200765",
  abstract =     "For real-world learning tasks (e.g., classification),
                 graph-based models are commonly used to fuse the
                 information distributed in diverse data sources, which
                 can be heterogeneous, redundant, and incomplete. These
                 models represent the relations in different datasets as
                 pairwise links. However, these links cannot deal with
                 high-order relations which connect multiple objects
                 (e.g., in public health datasets, more than two patient
                 groups admitted by the same hospital in 2014). In this
                 article, we propose a visual analytics approach for the
                 classification on heterogeneous datasets using the
                 hypergraph model. The hypergraph is an extension to
                 traditional graphs in which a hyperedge connects
                 multiple vertices instead of just two. We model various
                 high-order relations in heterogeneous datasets as
                 hyperedges and fuse different datasets with a unified
                 hypergraph structure. We use the hypergraph learning
                 algorithm for predicting missing labels in the
                 datasets. To allow users to inject their domain
                 knowledge into the model-learning process, we augment
                 the traditional learning algorithm in a number of ways.
                 In addition, we also propose a set of visualizations
                 which enable the user to construct the hypergraph
                 structure and the parameters of the learning model
                 interactively during the analysis. We demonstrate the
                 capability of our approach via two real-world cases.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Vogogias:2019:BVS,
  author =       "Athanasios Vogogias and Jessie Kennedy and Daniel
                 Archambault and Benjamin Bach and V. Anne Smith and
                 Hannah Currant",
  title =        "{BayesPiles}: Visualisation Support for {Bayesian}
                 Network Structure Learning",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "5:1--5:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3230623",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3230623",
  abstract =     "We address the problem of exploring, combining, and
                 comparing large collections of scored, directed
                 networks for understanding inferred Bayesian networks
                 used in biology. In this field, heuristic algorithms
                 explore the space of possible network solutions,
                 sampling this space based on algorithm parameters and a
                 network score that encodes the statistical fit to the
                 data. The goal of the analyst is to guide the heuristic
                 search and decide how to determine a final consensus
                 network structure, usually by selecting the top-scoring
                 network or constructing the consensus network from a
                 collection of high-scoring networks. BayesPiles, our
                 visualisation tool, helps with understanding the
                 structure of the solution space and supporting the
                 construction of a final consensus network that is
                 representative of the underlying dataset. BayesPiles
                 builds upon and extends MultiPiles to meet our domain
                 requirements. We developed BayesPiles in conjunction
                 with computational biologists who have used this tool
                 on datasets used in their research. The biologists
                 found our solution provides them with new insights and
                 helps them achieve results that are representative of
                 the underlying data.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2019:DVT,
  author =       "Dongyu Liu and Weiwei Cui and Kai Jin and Yuxiao Guo
                 and Huamin Qu",
  title =        "{DeepTracker}: Visualizing the Training Process of
                 Convolutional Neural Networks",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "6:1--6:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200489",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200489",
  abstract =     "Deep Convolutional Neural Networks (CNNs) have
                 achieved remarkable success in various fields. However,
                 training an excellent CNN is practically a
                 trial-and-error process that consumes a tremendous
                 amount of time and computer resources. To accelerate
                 the training process and reduce the number of trials,
                 experts need to understand what has occurred in the
                 training process and why the resulting CNN behaves as
                 it does. However, current popular training platforms,
                 such as TensorFlow, only provide very little and
                 general information, such as training/validation
                 errors, which is far from enough to serve this purpose.
                 To bridge this gap and help domain experts with their
                 training tasks in a practical environment, we propose a
                 visual analytics system, DeepTracker, to facilitate the
                 exploration of the rich dynamics of CNN training
                 processes and to identify the unusual patterns that are
                 hidden behind the huge amount of information in
                 training log. Specifically, we combine a hierarchical
                 index mechanism and a set of hierarchical small
                 multiples to help experts explore the entire training
                 log from different levels of detail. We also introduce
                 a novel cube-style visualization to reveal the complex
                 correlations among multiple types of heterogeneous
                 training data, including neuron weights, validation
                 images, and training iterations. Three case studies are
                 conducted to demonstrate how DeepTracker provides its
                 users with valuable knowledge in an industry-level CNN
                 training process; namely, in our case, training
                 ResNet-50 on the ImageNet dataset. We show that our
                 method can be easily applied to other state-of-the-art
                 ``very deep'' CNN models.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jin:2019:LFE,
  author =       "Hai Jin and Yuanfeng Lian and Jing Hua",
  title =        "Learning Facial Expressions with {$3$D} Mesh
                 Convolutional Neural Network",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "7:1--7:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200572",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200572",
  abstract =     "Making machines understand human expressions enables
                 various useful applications in human-machine
                 interaction. In this article, we present a novel facial
                 expression recognition approach with 3D Mesh
                 Convolutional Neural Networks (3DMCNN) and a visual
                 analytics-guided 3DMCNN design and optimization scheme.
                 From an RGBD camera, we first reconstruct a 3D face
                 model of a subject with facial expressions and then
                 compute the geometric properties of the surface.
                 Instead of using regular Convolutional Neural Networks
                 (CNNs) to learn intensities of the facial images, we
                 convolve the geometric properties on the surface of the
                 3D model using 3DMCNN. We design a geodesic
                 distance-based convolution method to overcome the
                 difficulties raised from the irregular sampling of the
                 face surface mesh. We further present interactive
                 visual analytics for the purpose of designing and
                 modifying the networks to analyze the learned features
                 and cluster similar nodes in 3DMCNN. By removing
                 low-activity nodes in the network, the performance of
                 the network is greatly improved. We compare our method
                 with the regular CNN-based method by interactively
                 visualizing each layer of the networks and analyze the
                 effectiveness of our method by studying representative
                 cases. Testing on public datasets, our method achieves
                 a higher recognition accuracy than traditional
                 image-based CNN and other 3D CNNs. The proposed
                 framework, including 3DMCNN and interactive visual
                 analytics of the CNN, can be extended to other
                 applications.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2019:RVA,
  author =       "Chen Zhang and Hao Wang",
  title =        "{ResumeVis}: a Visual Analytics System to Discover
                 Semantic Information in Semi-structured Resume Data",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "8:1--8:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3230707",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3230707",
  abstract =     "Massive public resume data emerging on the internet
                 indicates individual-related characteristics in terms
                 of profile and career experiences. Resume Analysis (RA)
                 provides opportunities for many applications, such as
                 recruitment trend predict, talent seeking and
                 evaluation. Existing RA studies either largely rely on
                 the knowledge of domain experts, or leverage classic
                 statistical or data mining models to identify and
                 filter explicit attributes based on pre-defined rules.
                 However, they fail to discover the latent semantic
                 information from semi-structured resume text, i.e.,
                 individual career progress trajectory and
                 social-relations, which are otherwise vital to
                 comprehensive understanding of people's career evolving
                 patterns. Besides, when dealing with large numbers of
                 resumes, how to properly visualize such semantic
                 information to reduce the information load and to
                 support better human cognition is also challenging. To
                 tackle these issues, we propose a visual analytics
                 system called ResumeVis to mine and visualize resume
                 data. First, a text mining-based approach is presented
                 to extract semantic information. Then, a set of
                 visualizations are devised to represent the semantic
                 information in multiple perspectives. Through
                 interactive exploration on ResumeVis performed by
                 domain experts, the following tasks can be
                 accomplished: to trace individual career evolving
                 trajectory; to mine latent social-relations among
                 individuals; and to hold the full picture of massive
                 resumes' collective mobility. Case studies with over
                 2,500 government officer resumes demonstrate the
                 effectiveness of our system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Du:2019:VIR,
  author =       "Fan Du and Catherine Plaisant and Neil Spring and Ben
                 Shneiderman",
  title =        "Visual Interfaces for Recommendation Systems: Finding
                 Similar and Dissimilar Peers",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "9:1--9:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200490",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200490",
  abstract =     "Recommendation applications can guide users in making
                 important life choices by referring to the activities
                 of similar peers. For example, students making academic
                 plans may learn from the data of similar students,
                 while patients and their physicians may explore data
                 from similar patients to select the best treatment.
                 Selecting an appropriate peer group has a strong impact
                 on the value of the guidance that can result from
                 analyzing the peer group data. In this article, we
                 describe a visual interface that helps users review the
                 similarity and differences between a seed record and a
                 group of similar records and refine the selection. We
                 introduce the LikeMeDonuts, Ranking Glyph, and History
                 Heatmap visualizations. The interface was refined
                 through three rounds of formative usability evaluation
                 with 12 target users, and its usefulness was evaluated
                 by a case study with a student review manager using
                 real student data. We describe three analytic workflows
                 observed during use and summarize how users' input
                 shaped the final design.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liang:2019:CTB,
  author =       "Haoran Liang and Ming Jiang and Ronghua Liang and Qi
                 Zhao",
  title =        "{CapVis}: Toward Better Understanding of Visual-Verbal
                 Saliency Consistency",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "10:1--10:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3200767",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3200767",
  abstract =     "When looking at an image, humans shift their attention
                 toward interesting regions, making sequences of eye
                 fixations. When describing an image, they also come up
                 with simple sentences that highlight the key elements
                 in the scene. What is the correlation between where
                 people look and what they describe in an image? To
                 investigate this problem intuitively, we develop a
                 visual analytics system, CapVis, to look into visual
                 attention and image captioning, two types of subjective
                 annotations that are relatively task-free and natural.
                 Using these annotations, we propose a word-weighting
                 scheme to extract visual and verbal saliency ranks to
                 compare against each other. In our approach, a number
                 of low-level and semantic-level features relevant to
                 visual-verbal saliency consistency are proposed and
                 visualized for a better understanding of image content.
                 Our method also shows the different ways that a human
                 and a computational model look at and describe images,
                 which provides reliable information for a captioning
                 model. Experiment also shows that the visualized
                 feature can be integrated into a computational model to
                 effectively predict the consistency between the two
                 modalities on an image dataset with both types of
                 annotations.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Chen:2019:DMI,
  author =       "Siming Chen and Shuai Chen and Zhenhuang Wang and Jie
                 Liang and Yadong Wu and Xiaoru Yuan",
  title =        "{D-Map+}: Interactive Visual Analysis and Exploration
                 of Ego-centric and Event-centric Information Diffusion
                 Patterns in Social Media",
  journal =      j-TIST,
  volume =       "10",
  number =       "1",
  pages =        "11:1--11:??",
  month =        jan,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3183347",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3183347",
  abstract =     "Information diffusion analysis is important in social
                 media. In this work, we present a coherent ego-centric
                 and event-centric model to investigate diffusion
                 patterns and user behaviors. Applying the model, we
                 propose Diffusion Map+ (D-Maps+), a novel visualization
                 method to support exploration and analysis of user
                 behaviors and diffusion patterns through a map
                 metaphor. For ego-centric analysis, users who
                 participated in reposting (i.e., resending a message
                 initially posted by others) one central user's posts
                 (i.e., a series of original tweets) are collected.
                 Event-centric analysis focuses on multiple central
                 users discussing a specific event, with all the people
                 participating and reposting messages about it. Social
                 media users are mapped to a hexagonal grid based on
                 their behavior similarities and in the chronological
                 order of repostings. With the additional interactions
                 and linkings, D-Map+ is capable of providing visual
                 profiling of influential users, describing their social
                 behaviors and analyzing the evolution of significant
                 events in social media. A comprehensive visual analysis
                 system is developed to support interactive exploration
                 with D-Map+. We evaluate our work with real-world
                 social media data and find interesting patterns among
                 users and events. We also perform evaluations including
                 user studies and expert feedback to certify the
                 capabilities of our method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2019:FML,
  author =       "Qiang Yang and Yang Liu and Tianjian Chen and Yongxin
                 Tong",
  title =        "Federated Machine Learning: Concept and Applications",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "12:1--12:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3298981",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3298981",
  abstract =     "Today's artificial intelligence still faces two major
                 challenges. One is that, in most industries, data
                 exists in the form of isolated islands. The other is
                 the strengthening of data privacy and security. We
                 propose a possible solution to these challenges: secure
                 federated learning. Beyond the federated-learning
                 framework first proposed by Google in 2016, we
                 introduce a comprehensive secure federated-learning
                 framework, which includes horizontal federated
                 learning, vertical federated learning, and federated
                 transfer learning. We provide definitions,
                 architectures, and applications for the
                 federated-learning framework, and provide a
                 comprehensive survey of existing works on this subject.
                 In addition, we propose building data networks among
                 organizations based on federated mechanisms as an
                 effective solution to allowing knowledge to be shared
                 without compromising user privacy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2019:SZS,
  author =       "Wei Wang and Vincent W. Zheng and Han Yu and Chunyan
                 Miao",
  title =        "A Survey of Zero-Shot Learning: Settings, Methods, and
                 Applications",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "13:1--13:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3293318",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3293318",
  abstract =     "Most machine-learning methods focus on classifying
                 instances whose classes have already been seen in
                 training. In practice, many applications require
                 classifying instances whose classes have not been seen
                 previously. Zero-shot learning is a powerful and
                 promising learning paradigm, in which the classes
                 covered by training instances and the classes we aim to
                 classify are disjoint. In this paper, we provide a
                 comprehensive survey of zero-shot learning. First of
                 all, we provide an overview of zero-shot learning.
                 According to the data utilized in model optimization,
                 we classify zero-shot learning into three learning
                 settings. Second, we describe different semantic spaces
                 adopted in existing zero-shot learning works. Third, we
                 categorize existing zero-shot learning methods and
                 introduce representative methods under each category.
                 Fourth, we discuss different applications of zero-shot
                 learning. Finally, we highlight promising future
                 research directions of zero-shot learning.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mirsky:2019:GPR,
  author =       "Reuth Mirsky and Kobi Gal and Roni Stern and Meir
                 Kalech",
  title =        "Goal and Plan Recognition Design for Plan Libraries",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "14:1--14:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3234464",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3234464",
  abstract =     "This article provides new techniques for optimizing
                 domain design for goal and plan recognition using plan
                 libraries. We define two new problems: Goal Recognition
                 Design for Plan Libraries (GRD-PL) and Plan Recognition
                 Design (PRD). Solving the GRD-PL helps to infer which
                 goal the agent is trying to achieve, while solving PRD
                 can help to infer how the agent is going to achieve its
                 goal. For each problem, we define a worst-case
                 distinctiveness measure that is an upper bound on the
                 number of observations that are necessary to
                 unambiguously recognize the agent's goal or plan. This
                 article studies the relationship between these
                 measures, showing that the worst-case distinctiveness
                 of GRD-PL is a lower bound of the worst-case plan
                 distinctiveness of PRD and that they are equal under
                 certain conditions. We provide two complete algorithms
                 for minimizing the worst-case distinctiveness of plan
                 libraries without reducing the agent's ability to
                 complete its goals: One is a brute-force search over
                 all possible plans and one is a constraint-based search
                 that identifies plans that are most difficult to
                 distinguish in the domain. These algorithms are
                 evaluated in three hierarchical plan recognition
                 settings from the literature. We were able to reduce
                 the worst-case distinctiveness of the domains using our
                 approach, in some cases reaching 100\% improvement
                 within a predesignated time window. Our iterative
                 algorithm outperforms the brute-force approach by an
                 order of magnitude in terms of runtime.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Skibski:2019:ECS,
  author =       "Oskar Skibski and Talal Rahwan and Tomasz P. Michalak
                 and Michael Wooldridge",
  title =        "Enumerating Connected Subgraphs and Computing the
                 {Myerson} and {Shapley} Values in Graph-Restricted
                 Games",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "15:1--15:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3235026",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3235026",
  abstract =     "At the heart of multi-agent systems is the ability to
                 cooperate to improve the performance of individual
                 agents and/or the system as a whole. While a widespread
                 assumption in the literature is that such cooperation
                 is essentially unrestricted, in many realistic settings
                 this assumption does not hold. A highly influential
                 approach for modelling such scenarios are
                 graph-restricted games introduced by Myerson [36]. In
                 this approach, agents are represented by nodes in a
                 graph, edges represent communication channels, and a
                 group can generate an arbitrary value only if there
                 exists a direct or indirect communication channel
                 between every pair of agents within the group. Two
                 fundamental solution-concepts that were proposed for
                 such games are the Myerson value and the Shapley value.
                 While an algorithm has been developed to compute the
                 Shapley value in arbitrary graph-restricted games, no
                 such general-purpose algorithm has been developed for
                 the Myerson value to date. With this in mind, we set
                 out to develop for such games a general-purpose
                 algorithm to compute the Myerson value, and a more
                 efficient algorithm to compute the Shapley value. Since
                 the computation of either value involves enumerating
                 all connected induced subgraphs of the game's
                 underlying graph, we start by developing an algorithm
                 dedicated to this enumeration, and then we show
                 empirically that it is faster than the state of the art
                 in the literature. Finally, we present a sample
                 application of both algorithms, in which we test the
                 Myerson value and the Shapley value as advanced
                 measures of node centrality in networks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2019:UEO,
  author =       "Jason Shuo Zhang and Qin Lv",
  title =        "Understanding Event Organization at Scale in
                 Event-Based Social Networks",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "16:1--16:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3243227",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3243227",
  abstract =     "Understanding real-world event participation behavior
                 has been a subject of active research and can offer
                 valuable insights for event-related recommendation and
                 advertisement. The emergence of event-based social
                 networks (EBSNs), which attracts online users to
                 host/attend offline events, has enabled exciting new
                 research in this domain. However, most existing works
                 focus on understanding or predicting individual users'
                 event participation behavior or recommending events to
                 individual users. Few studies have addressed the
                 problem of event popularity from the event organizer's
                 point of view. In this work, we study the latent
                 factors for determining event popularity using
                 large-scale datasets collected from the popular
                 Meetup.com EBSN in five major cities around the world.
                 We analyze and model four contextual factors: spatial
                 factor using location convenience, quality, popularity
                 density, and competitiveness; group factor using group
                 member entropy and loyalty; temporal factor using
                 temporal preference and weekly event patterns; and
                 semantic factor using readability, sentiment, part of
                 speech, and text novelty. In addition, we have
                 developed a group-based social influence propagation
                 network to model group-specific influences on events.
                 By combining the COntextual features and Social
                 Influence NEtwork, our integrated prediction framework
                 COSINE can capture the diverse influential factors of
                 event participation and can be used by event organizers
                 to predict/improve the popularity of their events.
                 Detailed evaluations demonstrate that our COSINE
                 framework achieves high accuracy for event popularity
                 prediction in all five cities with diverse cultures and
                 user event behaviors.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Hsieh:2019:IOS,
  author =       "Hsun-Ping Hsieh and Cheng-Te Li",
  title =        "Inferring Online Social Ties from Offline Geographical
                 Activities",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "17:1--17:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3293319",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3293319",
  abstract =     "As mobile devices are becoming ubiquitous nowadays,
                 the geographical activities and interactions of human
                 beings can be easily recorded and accessed. Each mobile
                 individual can belong to an online social network.
                 Unfortunately, the underlying online social
                 relationships are hidden and only available to service
                 providers. Acquiring the social network of mobile users
                 would enrich lots of mobile applications, such as
                 friend recommendation and energy-saving mobile database
                 management. In this work, we propose to infer online
                 social ties using purely offline geographical
                 activities of users, such as check-in records and
                 spatial meeting events. To tackle the problem, we
                 devise a novel inference framework, O2O-I nf, which
                 consists of two components, Feature Modeling and Link
                 Inference. Feature modeling is to characterize both
                 direct and indirect geographical interactions between
                 nodes from co-location and graph features. Link
                 inference aims to infer the social ties based on a
                 small set of observed social links, and the idea is
                 that pairs of nodes sharing similar geographical
                 behaviors have the same tendency of linkage (i.e.,
                 either being friends or non-friends). Experiments
                 conducted on a Gowalla location-based social network
                 and a Meetup event-based social network exhibit a
                 satisfying performance in comparison to
                 state-of-the-art prediction methods under the settings
                 of offline-to-online network inference and geo-link
                 prediction.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yu:2019:RHR,
  author =       "Zeng Yu and Tianrui Li and Ning Yu and Yi Pan and
                 Hongmei Chen and Bing Liu",
  title =        "Reconstruction of Hidden Representation for Robust
                 Feature Extraction",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "18:1--18:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3284174",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3284174",
  abstract =     "This article aims to develop a new and robust approach
                 to feature representation. Motivated by the success of
                 Auto-Encoders, we first theoretically analyze and
                 summarize the general properties of all algorithms that
                 are based on traditional Auto-Encoders: (1) The
                 reconstruction error of the input cannot be lower than
                 a lower bound, which can be viewed as a guiding
                 principle for reconstructing the input. Additionally,
                 when the input is corrupted with noises, the
                 reconstruction error of the corrupted input also cannot
                 be lower than a lower bound. (2) The reconstruction of
                 a hidden representation achieving its ideal situation
                 is the necessary condition for the reconstruction of
                 the input to reach the ideal state. (3) Minimizing the
                 Frobenius norm of the Jacobian matrix of the hidden
                 representation has a deficiency and may result in a
                 much worse local optimum value. We believe that
                 minimizing the reconstruction error of the hidden
                 representation is more robust than minimizing the
                 Frobenius norm of the Jacobian matrix of the hidden
                 representation. Based on the above analysis, we propose
                 a new model termed Double Denoising Auto-Encoders
                 (DDAEs), which uses corruption and reconstruction on
                 both the input and the hidden representation. We
                 demonstrate that the proposed model is highly flexible
                 and extensible and has a potentially better capability
                 to learn invariant and robust feature representations.
                 We also show that our model is more robust than
                 Denoising Auto-Encoders (DAEs) for dealing with noises
                 or inessential features. Furthermore, we detail how to
                 train DDAEs with two different pretraining methods by
                 optimizing the objective function in a combined and
                 separate manner, respectively. Comparative experiments
                 illustrate that the proposed model is significantly
                 better for representation learning than the
                 state-of-the-art models.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wang:2019:SBT,
  author =       "Hongjian Wang and Xianfeng Tang and Yu-Hsuan Kuo and
                 Daniel Kifer and Zhenhui Li",
  title =        "A Simple Baseline for Travel Time Estimation using
                 Large-scale Trip Data",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "19:1--19:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3293317",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3293317",
  abstract =     "The increased availability of large-scale trajectory
                 data provides rich information for the study of urban
                 dynamics. For example, New York City Taxi 8 Limousine
                 Commission regularly releases source/destination
                 information of taxi trips, where 173 million taxi trips
                 released for Year 2013 [29]. Such a big dataset
                 provides us potential new perspectives to address the
                 traditional traffic problems. In this article, we study
                 the travel time estimation problem. Instead of
                 following the traditional route-based travel time
                 estimation, we propose to simply use a large amount of
                 taxi trips without using the intermediate trajectory
                 points to estimate the travel time between source and
                 destination. Our experiments show very promising
                 results. The proposed big-data-driven approach
                 significantly outperforms both state-of-the-art
                 route-based method and online map services. Our study
                 indicates that novel simple approaches could be
                 empowered by big data and these approaches could serve
                 as new baselines for some traditional computational
                 problems.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Deng:2019:DMS,
  author =       "Cheng Deng and Zhao Li and Xinbo Gao and Dacheng Tao",
  title =        "Deep Multi-scale Discriminative Networks for Double
                 {JPEG} Compression Forensics",
  journal =      j-TIST,
  volume =       "10",
  number =       "2",
  pages =        "20:1--20:??",
  month =        feb,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3301274",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3301274",
  abstract =     "As JPEG is the most widely used image format, the
                 importance of tampering detection for JPEG images in
                 blind forensics is self-evident. In this area,
                 extracting effective statistical characteristics from a
                 JPEG image for classification remains a challenge.
                 Effective features are designed manually in traditional
                 methods, suggesting that extensive labor-consuming
                 research and derivation is required. In this article,
                 we propose a novel image tampering detection method
                 based on deep multi-scale discriminative networks
                 (MSD-Nets). The multi-scale module is designed to
                 automatically extract multiple features from the
                 discrete cosine transform (DCT) coefficient histograms
                 of the JPEG image. This module can capture the
                 characteristic information in different scale spaces.
                 In addition, a discriminative module is also utilized
                 to improve the detection effect of the networks in
                 those difficult situations when the first compression
                 quality ( QF 1) is higher than the second one ( QF 2).
                 A special network in this module is designed to
                 distinguish the small statistical difference between
                 authentic and tampered regions in these cases. Finally,
                 a probability map can be obtained and the specific
                 tampering area is located using the last classification
                 results. Extensive experiments demonstrate the
                 superiority of our proposed method in both quantitative
                 and qualitative metrics when compared with
                 state-of-the-art approaches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Sharma:2019:CFN,
  author =       "Karishma Sharma and Feng Qian and He Jiang and Natali
                 Ruchansky and Ming Zhang and Yan Liu",
  title =        "Combating Fake News: a Survey on Identification and
                 Mitigation Techniques",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "21:1--21:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3305260",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3305260",
  abstract =     "The proliferation of fake news on social media has
                 opened up new directions of research for timely
                 identification and containment of fake news and
                 mitigation of its widespread impact on public opinion.
                 While much of the earlier research was focused on
                 identification of fake news based on its contents or by
                 exploiting users' engagements with the news on social
                 media, there has been a rising interest in proactive
                 intervention strategies to counter the spread of
                 misinformation and its impact on society. In this
                 survey, we describe the modern-day problem of fake news
                 and, in particular, highlight the technical challenges
                 associated with it. We discuss existing methods and
                 techniques applicable to both identification and
                 mitigation, with a focus on the significant advances in
                 each method and their advantages and limitations. In
                 addition, research has often been limited by the
                 quality of existing datasets and their specific
                 application contexts. To alleviate this problem, we
                 comprehensively compile and summarize characteristic
                 features of available datasets. Furthermore, we outline
                 new directions of research to facilitate future
                 development of effective and interdisciplinary
                 solutions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2019:CSD,
  author =       "Zun Li and Congyan Lang and Jiashi Feng and Yidong Li
                 and Tao Wang and Songhe Feng",
  title =        "Co-saliency Detection with Graph Matching",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "22:1--22:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3313874",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3313874",
  abstract =     "Recently, co-saliency detection, which aims to
                 automatically discover common and salient objects
                 appeared in several relevant images, has attracted
                 increased interest in the computer vision community. In
                 this article, we present a novel graph-matching based
                 model for co-saliency detection in image pairs. A
                 solution of graph matching is proposed to integrate the
                 visual appearance, saliency coherence, and spatial
                 structural continuity for detecting co-saliency
                 collaboratively. Since the saliency and the visual
                 similarity have been seamlessly integrated, such a
                 joint inference schema is able to produce more accurate
                 and reliable results. More concretely, the proposed
                 model first computes the intra-saliency for each image
                 by aggregating multiple saliency cues. The common and
                 salient regions across multiple images are thus
                 discovered via a graph matching procedure. Then, a
                 graph reconstruction scheme is proposed to refine the
                 intra-saliency iteratively. Compared to existing
                 co-saliency detection methods that only utilize visual
                 appearance cues, our proposed model can effectively
                 exploit both visual appearance and structure
                 information to better guide co-saliency detection.
                 Extensive experiments on several challenging image pair
                 databases demonstrate that our model outperforms
                 state-of-the-art baselines significantly.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Likhyani:2019:LSI,
  author =       "Ankita Likhyani and Srikanta Bedathur and Deepak P.",
  title =        "Location-Specific Influence Quantification in
                 Location-Based Social Networks",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "23:1--23:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3300199",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3300199",
  abstract =     "Location-based social networks (LBSNs) such as
                 Foursquare offer a platform for users to share and be
                 aware of each other's physical movements. As a result
                 of such a sharing of check-in information with each
                 other, users can be influenced to visit (or check-in)
                 at the locations visited by their friends. Quantifying
                 such influences in these LBSNs is useful in various
                 settings such as location promotion, personalized
                 recommendations, mobility pattern prediction, and so
                 forth. In this article, we develop a model to quantify
                 the influence specific to a location between a pair of
                 users. Specifically, we develop a framework called
                 LoCaTe, that combines (a) a user mobility model based
                 on kernel density estimates; (b) a model of the
                 semantics of the location using topic models; and (c) a
                 user correlation model that uses an exponential
                 distribution. We further develop LoCaTe+, an advanced
                 model within the same framework where user correlation
                 is quantified using a Mutually Exciting Hawkes Process.
                 We show the applicability of LoCaTe and LoCaTe+ for
                 location promotion and location recommendation tasks
                 using LBSNs. Our models are validated using a long-term
                 crawl of Foursquare data collected between January 2015
                 and February 2016, as well as other publicly available
                 LBSN datasets. Our experiments demonstrate the efficacy
                 of the LoCaTe framework in capturing location-specific
                 influence between users. We also show that our models
                 improve over state-of-the-art models for the task of
                 location promotion as well as location
                 recommendation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yao:2019:PAP,
  author =       "Huaxiu Yao and Defu Lian and Yi Cao and Yifan Wu and
                 Tao Zhou",
  title =        "Predicting Academic Performance for College Students:
                 a Campus Behavior Perspective",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "24:1--24:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3299087",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3299087",
  abstract =     "Detecting abnormal behaviors of students in time and
                 providing personalized intervention and guidance at the
                 early stage is important in educational management.
                 Academic performance prediction is an important
                 building block to enabling this pre-intervention and
                 guidance. Most of the previous studies are based on
                 questionnaire surveys and self-reports, which suffer
                 from small sample size and social desirability bias. In
                 this article, we collect longitudinal behavioral data
                 from the smart cards of 6,597 students and propose
                 three major types of discriminative behavioral factors,
                 diligence, orderliness, and sleep patterns. Empirical
                 analysis demonstrates these behavioral factors are
                 strongly correlated with academic performance.
                 Furthermore, motivated by the social influence theory,
                 we analyze the correlation between each student's
                 academic performance with his/her behaviorally similar
                 students'. Statistical tests indicate this correlation
                 is significant. Based on these factors, we further
                 build a multi-task predictive framework based on a
                 learning-to-rank algorithm for academic performance
                 prediction. This framework captures inter-semester
                 correlation, inter-major correlation, and integrates
                 student similarity to predict students' academic
                 performance. The experiments on a large-scale
                 real-world dataset show the effectiveness of our
                 methods for predicting academic performance and the
                 effectiveness of proposed behavioral factors.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Yang:2019:MAC,
  author =       "Bailin Yang and Luhong Zhang and Frederick W. B. Li
                 and Xiaoheng Jiang and Zhigang Deng and Meng Wang and
                 Mingliang Xu",
  title =        "Motion-Aware Compression and Transmission of Mesh
                 Animation Sequences",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "25:1--25:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3300198",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3300198",
  abstract =     "With the increasing demand in using 3D mesh data over
                 networks, supporting effective compression and
                 efficient transmission of meshes has caught lots of
                 attention in recent years. This article introduces a
                 novel compression method for 3D mesh animation
                 sequences, supporting user-defined and progressive
                 transmissions over networks. Our motion-aware approach
                 starts with clustering animation frames based on their
                 motion similarities, dividing a mesh animation sequence
                 into fragments of varying lengths. This is done by a
                 novel temporal clustering algorithm, which measures
                 motion similarity based on the curvature and torsion of
                 a space curve formed by corresponding vertices along a
                 series of animation frames. We further segment each
                 cluster based on mesh vertex coherence, representing
                 topological proximity within an object under certain
                 motion. To produce a compact representation, we perform
                 intra-cluster compression based on Graph Fourier
                 Transform (GFT) and Set Partitioning In Hierarchical
                 Trees (SPIHT) coding. Optimized compression results can
                 be achieved by applying GFT due to the proximity in
                 vertex position and motion. We adapt SPIHT to support
                 progressive transmission and design a mechanism to
                 transmit mesh animation sequences with user-defined
                 quality. Experimental results show that our method can
                 obtain a high compression ratio while maintaining a low
                 reconstruction error.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Wu:2019:OHT,
  author =       "Hanrui Wu and Yuguang Yan and Yuzhong Ye and Huaqing
                 Min and Michael K. Ng and Qingyao Wu",
  title =        "Online Heterogeneous Transfer Learning by Knowledge
                 Transition",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "26:1--26:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3309537",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3309537",
  abstract =     "In this article, we study the problem of online
                 heterogeneous transfer learning, where the objective is
                 to make predictions for a target data sequence arriving
                 in an online fashion, and some offline labeled
                 instances from a heterogeneous source domain are
                 provided as auxiliary data. The feature spaces of the
                 source and target domains are completely different,
                 thus the source data cannot be used directly to assist
                 the learning task in the target domain. To address this
                 issue, we take advantage of unlabeled co-occurrence
                 instances as intermediate supplementary data to connect
                 the source and target domains, and perform knowledge
                 transition from the source domain into the target
                 domain. We propose a novel online heterogeneous
                 transfer learning algorithm called Online Heterogeneous
                 Knowledge Transition (OHKT) for this purpose. In OHKT,
                 we first seek to generate pseudo labels for the
                 co-occurrence data based on the labeled source data,
                 and then develop an online learning algorithm to
                 classify the target sequence by leveraging the
                 co-occurrence data with pseudo labels. Experimental
                 results on real-world data sets demonstrate the
                 effectiveness and efficiency of the proposed
                 algorithm.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Shi:2019:CBV,
  author =       "Neng Shi and Yubo Tao",
  title =        "{CNNs} Based Viewpoint Estimation for Volume
                 Visualization",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "27:1--27:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3309993",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3309993",
  abstract =     "Viewpoint estimation from 2D rendered images is
                 helpful in understanding how users select viewpoints
                 for volume visualization and guiding users to select
                 better viewpoints based on previous visualizations. In
                 this article, we propose a viewpoint estimation method
                 based on Convolutional Neural Networks (CNNs) for
                 volume visualization. We first design an
                 overfit-resistant image rendering pipeline to generate
                 the training images with accurate viewpoint
                 annotations, and then train a category-specific
                 viewpoint classification network to estimate the
                 viewpoint for the given rendered image. Our method can
                 achieve good performance on images rendered with
                 different transfer functions and rendering parameters
                 in several categories. We apply our model to recover
                 the viewpoints of the rendered images in publications,
                 and show how experts look at volumes. We also introduce
                 a CNN feature-based image similarity measure for
                 similarity voting based viewpoint selection, which can
                 suggest semantically meaningful optimal viewpoints for
                 different volumes and transfer functions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Mikhail:2019:SBN,
  author =       "Joseph W. Mikhail and John M. Fossaceca and Ronald
                 Iammartino",
  title =        "A Semi-Boosted Nested Model With Sensitivity-Based
                 Weighted Binarization for Multi-Domain Network
                 Intrusion Detection",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "28:1--28:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3313778",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3313778",
  abstract =     "Effective network intrusion detection techniques are
                 required to thwart evolving cybersecurity threats.
                 Historically, traditional enterprise networks have been
                 researched extensively in this regard. However, the
                 cyber threat landscape has grown to include wireless
                 networks. In this article, the authors present a novel
                 model that can be trained on completely different
                 feature sets and applied to two distinct intrusion
                 detection applications: traditional enterprise networks
                 and 802.11 wireless networks. This is the first method
                 that demonstrates superior performance in both
                 aforementioned applications. The model is based on a
                 one-versus-all binary framework comprising multiple
                 nested sub-ensembles. To provide good generalization
                 ability, each sub-ensemble contains a collection of
                 sub-learners, and only a portion of the sub-learners
                 implement boosting. A class weight based on the
                 sensitivity metric (true-positive rate), learned from
                 the training data only, is assigned to the
                 sub-ensembles of each class. The use of pruning to
                 remove sub-learners that do not contribute to or have
                 an adverse effect on overall system performance is
                 investigated as well. The results demonstrate that the
                 proposed system can achieve exceptional performance in
                 applications to both traditional enterprise intrusion
                 detection and 802.11 wireless intrusion detection.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gou:2019:LMR,
  author =       "Jianping Gou and Wenmo Qiu and Zhang Yi and Yong Xu
                 and Qirong Mao and Yongzhao Zhan",
  title =        "A Local Mean Representation-based {$K$}-Nearest
                 Neighbor Classifier",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "29:1--29:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3319532",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3319532",
  abstract =     "K -nearest neighbor classification method (KNN), as
                 one of the top 10 algorithms in data mining, is a very
                 simple and yet effective nonparametric technique for
                 pattern recognition. However, due to the selective
                 sensitiveness of the neighborhood size k, the simple
                 majority vote, and the conventional metric measure, the
                 KNN-based classification performance can be easily
                 degraded, especially in the small training sample size
                 cases. In this article, to further improve the
                 classification performance and overcome the main issues
                 in the KNN-based classification, we propose a local
                 mean representation-based k -nearest neighbor
                 classifier (LMRKNN). In the LMRKNN, the categorical k
                 -nearest neighbors of a query sample are first chosen
                 to calculate the corresponding categorical k -local
                 mean vectors, and then the query sample is represented
                 by the linear combination of the categorical k -local
                 mean vectors; finally, the class-specific
                 representation-based distances between the query sample
                 and the categorical k -local mean vectors are adopted
                 to determine the class of the query sample. Extensive
                 experiments on many UCI and KEEL datasets and three
                 popular face databases are carried out by comparing
                 LMRKNN to the state-of-art KNN-based methods. The
                 experimental results demonstrate that the proposed
                 LMRKNN outperforms the related competitive KNN-based
                 methods with more robustness and effectiveness.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhuo:2019:RMA,
  author =       "Hankz Hankui Zhuo",
  title =        "Recognizing Multi-Agent Plans When Action Models and
                 Team Plans Are Both Incomplete",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "30:1--30:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3319403",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3319403",
  abstract =     "Multi-Agent Plan Recognition (MAPR) aims to recognize
                 team structures (which are composed of team plans) from
                 the observed team traces (action sequences) of a set of
                 intelligent agents. In this article, we introduce the
                 problem formulation of MAPR based on partially observed
                 team traces, and present a weighted MAX-SAT-based
                 framework to recognize multi-agent plans from partially
                 observed team traces with the help of two types of
                 auxiliary knowledge to help recognize multi-agent
                 plans, i.e., a library of incomplete team plans and a
                 set of incomplete action models. Our framework
                 functions with two phases. We first build a set of hard
                 constraints that encode the correctness property of the
                 team plans, and a set of soft constraints that encode
                 the optimal utility property of team plans based on the
                 input team trace, incomplete team plans, and incomplete
                 action models. After that, we solve all of the
                 constraints using a weighted MAX-SAT solver and convert
                 the solution to a set of team plans that best explain
                 the structure of the observed team trace. We
                 empirically exhibit both effectiveness and efficiency
                 of our framework in benchmark domains from
                 International Planning Competition (IPC).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Golpayegani:2019:USD,
  author =       "Fatemeh Golpayegani and Ivana Dusparic and Siobhan
                 Clarke",
  title =        "Using Social Dependence to Enable Neighbourly
                 Behaviour in Open Multi-Agent Systems",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "31:1--31:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3319402",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3319402",
  abstract =     "Agents frequently collaborate to achieve a shared goal
                 or to accomplish a task that they cannot do alone.
                 However, collaboration is difficult in open multi-agent
                 systems where agents share constrained resources to
                 achieve both individual and shared goals. In current
                 approaches to collaboration, agents are organised into
                 disjoint groups and social reasoning is used to capture
                 their capabilities when selecting a qualified set of
                 collaborators. These approaches are not useful when
                 agents are in multiple, overlapping groups; depend on
                 each other when using shared resources; have multiple
                 goals to achieve simultaneously; and have to share the
                 overall costs and benefits. In this article, agents use
                 social reasoning to enhance their understanding of
                 other agents' goals and their dependencies, and
                 self-adaptive techniques to adapt their level of
                 self-interest in a collaborative process, with a view
                 to contributing to lowering shared costs or increasing
                 shared benefits. This model aims at improving the
                 extent to which agents' goals are met while improving
                 shared resource usage efficiency. For example, in a
                 public transport system where each mode of transport
                 has limited capacity, commuters will be enabled to make
                 choices that avoid over-capacity in different modes, or
                 in a smart energy grid with limited capacity, users can
                 make choices as to when they increase their demand. The
                 model simultaneously helps avoid overloading a shared
                 resource while allowing users to achieve their own
                 goals. The proposed model is evaluated in an open
                 multi-agent system with 100 agents operating in
                 multiple overlapping groups and sharing multiple
                 constrained resources. The impact of agents' varying
                 levels of social dependencies, mobility, and their
                 groups' density on their individual and shared goal
                 achievement is analysed.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhu:2019:EVC,
  author =       "Chunbiao Zhu and Wenhao Zhang and Thomas H. Li and
                 Shan Liu and Ge Li",
  title =        "Exploiting the Value of the Center-dark Channel Prior
                 for Salient Object Detection",
  journal =      j-TIST,
  volume =       "10",
  number =       "3",
  pages =        "32:1--32:??",
  month =        may,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3319368",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:44 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3319368",
  abstract =     "Saliency detection aims to detect the most attractive
                 objects in images and is widely used as a foundation
                 for various applications. In this article, we propose a
                 novel salient object detection algorithm for RGB-D
                 images using center-dark channel priors. First, we
                 generate an initial saliency map based on a color
                 saliency map and a depth saliency map of a given RGB-D
                 image. Then, we generate a center-dark channel map
                 based on center saliency and dark channel priors.
                 Finally, we fuse the initial saliency map with the
                 center dark channel map to generate the final saliency
                 map. Extensive evaluations over four benchmark datasets
                 demonstrate that our proposed method performs favorably
                 against most of the state-of-the-art approaches.
                 Besides, we further discuss the application of the
                 proposed algorithm in small target detection and
                 demonstrate the universal value of center-dark channel
                 priors in the field of object detection.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Bian:2019:TDC,
  author =       "Jiang Bian and Dayong Tian and Yuanyan Tang and
                 Dacheng Tao",
  title =        "Trajectory Data Classification: a Review",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "33:1--33:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3330138",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3330138",
  abstract =     "This article comprehensively surveys the development
                 of trajectory data classification. Considering the
                 critical role of trajectory data classification in
                 modern intelligent systems for surveillance security,
                 abnormal behavior detection, crowd behavior analysis,
                 and traffic control, trajectory data classification has
                 attracted growing attention. According to the
                 availability of manual labels, which is critical to the
                 classification performances, the methods can be
                 classified into three categories, i.e., unsupervised,
                 semi-supervised, and supervised. Furthermore,
                 classification methods are divided into some
                 sub-categories according to what extracted features are
                 used. We provide a holistic understanding and deep
                 insight into three types of trajectory data
                 classification methods and present some promising
                 future directions.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Verenich:2019:SCB,
  author =       "Ilya Verenich and Marlon Dumas and Marcello {La Rosa}
                 and Fabrizio Maria Maggi and Irene Teinemaa",
  title =        "Survey and Cross-benchmark Comparison of Remaining
                 Time Prediction Methods in Business Process
                 Monitoring",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "34:1--34:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3331449",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3331449",
  abstract =     "Predictive business process monitoring methods exploit
                 historical process execution logs to generate
                 predictions about running instances (called cases) of a
                 business process, such as the prediction of the
                 outcome, next activity, or remaining cycle time of a
                 given process case. These insights could be used to
                 support operational managers in taking remedial actions
                 as business processes unfold, e.g., shifting resources
                 from one case onto another to ensure the latter is
                 completed on time. A number of methods to tackle the
                 remaining cycle time prediction problem have been
                 proposed in the literature. However, due to differences
                 in their experimental setup, choice of datasets,
                 evaluation measures, and baselines, the relative merits
                 of each method remain unclear. This article presents a
                 systematic literature review and taxonomy of methods
                 for remaining time prediction in the context of
                 business processes, as well as a cross-benchmark
                 comparison of 16 such methods based on 17 real-life
                 datasets originating from different industry domains.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Gong:2019:MMC,
  author =       "Chen Gong and Jian Yang and Dacheng Tao",
  title =        "Multi-Modal Curriculum Learning over Graphs",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "35:1--35:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3322122",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3322122",
  abstract =     "Curriculum Learning (CL) is a recently proposed
                 learning paradigm that aims to achieve satisfactory
                 performance by properly organizing the learning
                 sequence from simple curriculum examples to more
                 difficult ones. Up to now, few works have been done to
                 explore CL for the data with graph structure.
                 Therefore, this article proposes a novel CL algorithm
                 that can be utilized to guide the Label Propagation
                 (LP) over graphs, of which the target is to ``learn''
                 the labels of unlabeled examples on the graphs.
                 Specifically, we assume that different unlabeled
                 examples have different levels of difficulty for
                 propagation, and their label learning should follow a
                 simple-to-difficult sequence with the updated
                 curricula. Furthermore, considering that the practical
                 data are often characterized by multiple modalities,
                 every modality in our method is associated with a
                 ``teacher'' that not only evaluates the difficulties of
                 examples from its own viewpoint, but also cooperates
                 with other teachers to generate the overall simplest
                 curriculum examples for propagation. By taking the
                 curriculums suggested by the teachers as a whole, the
                 common preference (i.e., commonality) of teachers on
                 selecting the simplest examples can be discovered by a
                 row-sparse matrix, and their distinct opinions (i.e.,
                 individuality) are captured by a sparse noise matrix.
                 As a result, an accurate curriculum sequence can be
                 established and the propagation quality can thus be
                 improved. Theoretically, we prove that the propagation
                 risk bound is closely related to the examples'
                 difficulty information, and empirically, we show that
                 our method can generate higher accuracy than the
                 state-of-the-art CL approach and LP algorithms on
                 various multi-modal tasks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ao:2019:LSF,
  author =       "Xiang Ao and Haoran Shi and Jin Wang and Luo Zuo and
                 Hongwei Li and Qing He",
  title =        "Large-Scale Frequent Episode Mining from Complex Event
                 Sequences with Hierarchies",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "36:1--36:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3326163",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3326163",
  abstract =     "Frequent Episode Mining (FEM), which aims at mining
                 frequent sub-sequences from a single long event
                 sequence, is one of the essential building blocks for
                 the sequence mining research field. Existing studies
                 about FEM suffer from unsatisfied scalability when
                 faced with complex sequences as it is an NP-complete
                 problem for testing whether an episode occurs in a
                 sequence. In this article, we propose a scalable,
                 distributed framework to support FEM on ``big'' event
                 sequences. As a rule of thumb, ``big'' illustrates an
                 event sequence is either very long or with masses of
                 simultaneous events. Meanwhile, the events in this
                 article are arranged in a predefined hierarchy. It
                 derives some abstractive events that can form episodes
                 that may not directly appear in the input sequence.
                 Specifically, we devise an event-centered and
                 hierarchy-aware partitioning strategy to allocate
                 events from different levels of the hierarchy into
                 local processes. We then present an efficient
                 special-purpose algorithm to improve the local mining
                 performance. We also extend our framework to support
                 maximal and closed episode mining in the context of
                 event hierarchy, and to the best of our knowledge, we
                 are the first attempt to define and discover
                 hierarchy-aware maximal and closed episodes. We
                 implement the proposed framework on Apache Spark and
                 conduct experiments on both synthetic and real-world
                 datasets. Experimental results demonstrate the
                 efficiency and scalability of the proposed approach and
                 show that we can find practical patterns when taking
                 event hierarchies into account.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cong:2019:EUG,
  author =       "Phan Thanh Cong and Nguyen Thanh Tam and Hongzhi Yin
                 and Bolong Zheng and Bela Stantic and Nguyen Quoc Viet
                 Hung",
  title =        "Efficient User Guidance for Validating Participatory
                 Sensing Data",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "37:1--37:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3326164",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3326164",
  abstract =     "Participatory sensing has become a new data collection
                 paradigm that leverages the wisdom of the crowd for big
                 data applications without spending cost to buy
                 dedicated sensors. It collects data from human sensors
                 by using their own devices such as cell phone
                 accelerometers, cameras, and GPS devices. This benefit
                 comes with a drawback: human sensors are arbitrary and
                 inherently uncertain due to the lack of quality
                 guarantee. Moreover, participatory sensing data are
                 time series that exhibit not only highly irregular
                 dependencies on time but also high variance between
                 sensors. To overcome these limitations, we formulate
                 the problem of validating uncertain time series
                 collected by participatory sensors. In this article, we
                 approach the problem by an iterative validation process
                 on top of a probabilistic time series model. First, we
                 generate a series of probability distributions from raw
                 data by tailoring a state-of-the-art dynamical model,
                 namely Generalised Auto Regressive Conditional
                 Heteroskedasticity (GARCH), for our joint time series
                 setting. Second, we design a feedback process that
                 consists of an adaptive aggregation model to unify the
                 joint probabilistic time series and an efficient user
                 guidance model to validate aggregated data with minimal
                 effort. Through extensive experimentation, we
                 demonstrate the efficiency and effectiveness of our
                 approach on both real data and synthetic data.
                 Highlights from our experiences include the fast
                 running time of a probabilistic model, the robustness
                 of an aggregation model to outliers, and the
                 significant effort saving of a guidance model.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Cui:2019:STA,
  author =       "Wanqiu Cui and Junping Du and Dawei Wang and Xunpu
                 Yuan and Feifei Kou and Liyan Zhou and Nan Zhou",
  title =        "Short Text Analysis Based on Dual Semantic Extension
                 and Deep Hashing in Microblog",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "38:1--38:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3326166",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/hash.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3326166",
  abstract =     "Short text analysis is a challenging task as far as
                 the sparsity and limitation of semantics. The semantic
                 extension approach learns the meaning of a short text
                 by introducing external knowledge. However, for the
                 randomness of short text descriptions in microblogs,
                 traditional extension methods cannot accurately mine
                 the semantics suitable for the microblog theme.
                 Therefore, we use the prominent and refined hashtag
                 information in microblogs as well as complex social
                 relationships to provide implicit guidance for semantic
                 extension of short text. Specifically, we design a deep
                 hash model based on social and conceptual semantic
                 extension, which consists of dual semantic extension
                 and deep hashing representation. In the extension
                 method, the short text is first conceptualized to
                 achieve the construction of hashtag graph under
                 conceptual space. Then, the associated hashtags are
                 generated by correlation calculation based on the
                 integration of social relationships and concepts to
                 extend the short text. In the deep hash model, we use
                 the semantic hashing model to encode the abundant
                 semantic features and form a compact and meaningful
                 binary encoding. Finally, extensive experiments
                 demonstrate that our method can learn and represent the
                 short texts well by using more meaningful semantic
                 signal. It can effectively enhance and guide the
                 semantic analysis and understanding of short text in
                 microblogs.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{He:2019:STA,
  author =       "Suining He and Kang G. Shin",
  title =        "Spatio-temporal Adaptive Pricing for Balancing
                 Mobility-on-Demand Networks",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "39:1--39:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3331450",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3331450",
  abstract =     "Pricing in mobility-on-demand (MOD) networks, such as
                 Uber, Lyft, and connected taxicabs, is done adaptively
                 by leveraging the price responsiveness of drivers
                 (supplies) and passengers (demands) to achieve such
                 goals as maximizing drivers' incomes, improving riders'
                 experience, and sustaining platform operation. Existing
                 pricing policies only respond to short-term demand
                 fluctuations without accurate trip forecast and spatial
                 demand-supply balancing, thus mismatching drivers to
                 riders and resulting in loss of profit. We propose
                 CAPrice, a novel adaptive pricing scheme for urban MOD
                 networks. It uses a new spatio-temporal deep capsule
                 network (STCapsNet) that accurately predicts ride
                 demands and driver supplies with vectorized neuron
                 capsules while accounting for comprehensive
                 spatio-temporal and external factors. Given accurate
                 perception of zone-to-zone traffic flows in a city,
                 CAPrice formulates a joint optimization problem by
                 considering spatial equilibrium to balance the
                 platform, providing drivers and riders/passengers with
                 proactive pricing ``signals.'' We have conducted an
                 extensive experimental evaluation upon over 4.0$ \times
                 $ 10$^8$ MOD trips (Uber, Didi Chuxing, and connected
                 taxicabs) in New York City, Beijing, and Chengdu,
                 validating the accuracy, effectiveness, and
                 profitability (often 20\% ride prediction accuracy and
                 30\% profit improvements over the state-of-the-arts) of
                 CAPrice in managing urban MOD networks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tonge:2019:PAT,
  author =       "Ashwini Tonge and Cornelia Caragea",
  title =        "Privacy-aware Tag Recommendation for Accurate Image
                 Privacy Prediction",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "40:1--40:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3335054",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3335054",
  abstract =     "Online images' tags are very important for indexing,
                 sharing, and searching of images, as well as surfacing
                 images with private or sensitive content, which needs
                 to be protected. Social media sites such as Flickr
                 generate these metadata from user-contributed tags.
                 However, as the tags are at the sole discretion of
                 users, these tags tend to be noisy and incomplete. In
                 this article, we present a privacy-aware approach to
                 automatic image tagging, which aims at improving the
                 quality of user annotations, while also preserving the
                 images' original privacy sharing patterns. Precisely,
                 we recommend potential tags for each target image by
                 mining privacy-aware tags from the most similar images
                 of the target image, which are obtained from a large
                 collection. Experimental results show that, although
                 the user-input tags compose noise, our privacy-aware
                 approach is able to predict accurate tags that can
                 improve the performance of a downstream application on
                 image privacy prediction and outperforms an existing
                 privacy-oblivious approach to image tagging. The
                 results also show that, even for images that do not
                 have any user tags, our proposed approach can recommend
                 accurate tags. Crowd-sourcing the predicted tags
                 exhibits the quality of our privacy-aware recommended
                 tags. Our code, features, and the dataset used in
                 experiments are available at:
                 https://github.com/ashwinitonge/privacy-aware-tag-rec.git.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhao:2019:PRG,
  author =       "Guoshuai Zhao and Hao Fu and Ruihua Song and Tetsuya
                 Sakai and Zhongxia Chen and Xing Xie and Xueming Qian",
  title =        "Personalized Reason Generation for Explainable Song
                 Recommendation",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "41:1--41:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3337967",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3337967",
  abstract =     "Personalized recommendation has received a lot of
                 attention as a highly practical research topic.
                 However, existing recommender systems provide the
                 recommendations with a generic statement such as
                 ``Customers who bought this item also bought
                 \ldots{}''. Explainable recommendation, which makes a
                 user aware of why such items are recommended, is in
                 demand. The goal of our research is to make the users
                 feel as if they are receiving recommendations from
                 their friends. To this end, we formulate a new
                 challenging problem called personalized reason
                 generation for explainable recommendation for songs in
                 conversation applications and propose a solution that
                 generates a natural language explanation of the reason
                 for recommending a song to that particular user. For
                 example, if the user is a student, our method can
                 generate an output such as ``Campus radio plays this
                 song at noon every day, and I think it sounds
                 wonderful,'' which the student may find easy to relate
                 to. In the offline experiments, through manual
                 assessments, the gain of our method is statistically
                 significant on the relevance to songs and
                 personalization to users comparing with baselines.
                 Large-scale online experiments show that our method
                 outperforms manually selected reasons by 8.2\% in terms
                 of click-through rate. Evaluation results indicate that
                 our generated reasons are relevant to songs and
                 personalized to users, and they attract users to click
                 the recommendations.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Thukral:2019:DER,
  author =       "Deepak Thukral and Adesh Pandey and Rishabh Gupta and
                 Vikram Goyal and Tanmoy Chakraborty",
  title =        "{DiffQue}: Estimating Relative Difficulty of Questions
                 in Community Question Answering Services",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "42:1--42:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3337799",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3337799",
  abstract =     "Automatic estimation of relative difficulty of a pair
                 of questions is an important and challenging problem in
                 community question answering (CQA) services. There are
                 limited studies that addressed this problem. Past
                 studies mostly leveraged expertise of users answering
                 the questions and barely considered other properties of
                 CQA services such as metadata of users and posts,
                 temporal information, and textual content. In this
                 article, we propose DiffQue, a novel system that maps
                 this problem to a network-aided edge directionality
                 prediction problem. DiffQue starts by constructing a
                 novel network structure that captures different notions
                 of difficulties among a pair of questions. It then
                 measures the relative difficulty of two questions by
                 predicting the direction of a (virtual) edge connecting
                 these two questions in the network. It leverages
                 features extracted from the network structure, metadata
                 of users/posts, and textual description of questions
                 and answers. Experiments on datasets obtained from two
                 CQA sites (further divided into four datasets) with
                 human annotated ground-truth show that DiffQue
                 outperforms four state-of-the-art methods by a
                 significant margin (28.77\% higher F$_1$ score and
                 28.72\% higher AUC than the best baseline). As opposed
                 to the other baselines, (i) DiffQue appropriately
                 responds to the training noise, (ii) DiffQue is capable
                 of adapting multiple domains (CQA datasets), and (iii)
                 DiffQue can efficiently handle the ``cold start''
                 problem that may arise due to the lack of information
                 for newly posted questions or newly arrived users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Jiang:2019:SEL,
  author =       "Zhe Jiang and Arpan Man Sainju and Yan Li and Shashi
                 Shekhar and Joseph Knight",
  title =        "Spatial Ensemble Learning for Heterogeneous Geographic
                 Data with Class Ambiguity",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "43:1--43:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3337798",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3337798",
  abstract =     "Class ambiguity refers to the phenomenon whereby
                 similar features correspond to different classes at
                 different locations. Given heterogeneous geographic
                 data with class ambiguity, the spatial ensemble
                 learning (SEL) problem aims to find a decomposition of
                 the geographic area into disjoint zones such that class
                 ambiguity is minimized and a local classifier can be
                 learned in each zone. The problem is important for
                 applications such as land cover mapping from
                 heterogeneous earth observation data with spectral
                 confusion. However, the problem is challenging due to
                 its high computational cost. Related work in ensemble
                 learning either assumes an identical sample
                 distribution (e.g., bagging, boosting, random forest)
                 or decomposes multi-modular input data in the feature
                 vector space (e.g., mixture of experts, multimodal
                 ensemble) and thus cannot effectively minimize class
                 ambiguity. In contrast, we propose a spatial ensemble
                 framework that explicitly partitions input data in
                 geographic space. Our approach first preprocesses data
                 into homogeneous spatial patches and uses a greedy
                 heuristic to allocate pairs of patches with high class
                 ambiguity into different zones. We further extend our
                 spatial ensemble learning framework with spatial
                 dependency between nearby zones based on the spatial
                 autocorrelation effect. Both theoretical analysis and
                 experimental evaluations on two real world wetland
                 mapping datasets show the feasibility of the proposed
                 approach.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Banerjee:2019:AAR,
  author =       "Suvadeep Banerjee and Abhijit Chatterjee",
  title =        "{ALERA}: Accelerated Reinforcement Learning Driven
                 Adaptation to Electro-Mechanical Degradation in
                 Nonlinear Control Systems Using Encoded State Space
                 Error Signatures",
  journal =      j-TIST,
  volume =       "10",
  number =       "4",
  pages =        "44:1--44:??",
  month =        aug,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3338123",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3338123",
  abstract =     "The successful deployment of autonomous real-time
                 systems is contingent on their ability to recover from
                 performance degradation of sensors, actuators, and
                 other electro-mechanical subsystems with low latency.
                 In this article, we introduce ALERA, a novel framework
                 for real-time control law adaptation in nonlinear
                 control systems assisted by system state encodings that
                 generate an error signal when the code properties are
                 violated in the presence of failures. The fundamental
                 contributions of this methodology are twofold-first, we
                 show that the time-domain error signal contains
                 perturbed system parameters' diagnostic information
                 that can be used for quick control law adaptation to
                 failure conditions and second, this quick adaptation is
                 performed via reinforcement learning algorithms that
                 relearn the control law of the perturbed system from a
                 starting condition dictated by the diagnostic
                 information, thus achieving significantly faster
                 recovery. The fast (up to 80X faster than traditional
                 reinforcement learning paradigms) performance recovery
                 enabled by ALERA is demonstrated on an inverted
                 pendulum balancing problem, a brake-by-wire system, and
                 a self-balancing robot.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Strobl:2019:ECF,
  author =       "Eric V. Strobl and Peter L. Spirtes and Shyam
                 Visweswaran",
  title =        "Estimating and Controlling the False Discovery Rate of
                 the {PC} Algorithm Using Edge-specific {$P$}-Values",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "46:1--46:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3351342",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Many causal discovery algorithms infer graphical
                 structure from observational data. The PC algorithm in
                 particular estimates a completed partially directed
                 acyclic graph (CPDAG), or an acyclic graph containing
                 directed edges identifiable with conditional
                 independence testing. However, few groups have
                 investigated strategies for estimating and controlling
                 the false discovery rate (FDR) of the edges in the
                 CPDAG. In this article, we introduce PC with p-values
                 (PC-p), a fast algorithm that robustly computes
                 edge-specific p-values and then estimates and controls
                 the FDR across the edges. PC-p specifically uses the
                 p-values returned by many conditional independence (CI)
                 tests to upper bound the p-values of more complex
                 edge-specific hypothesis tests. The algorithm then
                 estimates and controls the FDR using the bounded
                 p-values and the Benjamini-Yekutieli FDR procedure.
                 Modifications to the original PC algorithm also help
                 PC-p accurately compute the upper bounds despite
                 non-zero Type II error rates. Experiments show that
                 PC-p yields more accurate FDR estimation and control
                 across the edges in a variety of CPDAGs compared to
                 alternative methods.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Herd:2019:DCR,
  author =       "Benjamin C. Herd and Simon Miles",
  title =        "Detecting Causal Relationships in Simulation Models
                 Using Intervention-based Counterfactual Analysis",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "47:1--47:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3322123",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Central to explanatory simulation models is their
                 capability to not just show that but also why
                 particular things happen. Explanation is closely
                 related with the detection of causal relationships and
                 is, in a simulation context, typically done by means of
                 controlled experiments. However, for complex simulation
                 models, conventional ``blackbox'' experiments may be
                 too coarse-grained to cope with spurious relationships.
                 We present an intervention-based causal analysis
                 methodology that exploits the manipulability of
                 computational models, and detects and circumvents
                 spurious effects. The core of the methodology is a
                 formal model that maps basic causal assumptions to
                 causal observations and allows for the identification
                 of combinations of assumptions that have a negative
                 impact on observability. First, experiments indicate
                 that the methodology can successfully deal with
                 notoriously tricky situations involving asymmetric and
                 symmetric overdetermination and detect fine-grained
                 causal relationships between events in the simulation.
                 As illustrated in the article, the methodology can be
                 easily integrated into an existing simulation
                 environment.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Rahmadi:2019:SSS,
  author =       "Ridho Rahmadi and Perry Groot and Tom Heskes",
  title =        "Stable Specification Search in Structural Equation
                 Models with Latent Variables",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "48:1--48:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3341557",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "In our previous study, we introduced stable
                 specification search for cross-sectional data (S3C). It
                 is an exploratory causal method that combines the
                 concept of stability selection and multi-objective
                 optimization to search for stable and parsimonious
                 causal structures across the entire range of model
                 complexities. S3C, however, is designed to model causal
                 relations among observed variables. In this study, we
                 extended S3C to S3C-Latent, to model linear causal
                 relations between latent variables that are measured
                 through observed proxies. We evaluated S3C-Latent on
                 simulated data and compared the results to those of
                 PC-MIMBuild, an extension of the PC algorithm, the
                 state-of-the-art causal discovery method. The
                 comparison shows that S3C-Latent achieved better
                 performance. We also applied S3C-Latent to real-world
                 data of children with attention deficit/hyperactivity
                 disorder and data about measuring mental abilities
                 among pupils. The results are consistent with those of
                 previous studies.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Liu:2019:LLA,
  author =       "Yue Liu and Zheng Cai and Chunchen Liu and Zhi Geng",
  title =        "Local Learning Approaches for Finding Effects of a
                 Specified Cause and Their Causal Paths",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "49:1--49:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3313147",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Causal networks are used to describe and to discover
                 causal relationships among variables and data
                 generating mechanisms. There have been many approaches
                 for learning a global causal network of all observed
                 variables. In many applications, we may be interested
                 in finding what are the effects of a specified cause
                 variable and what are the causal paths from the cause
                 variable to its effects. Instead of learning a global
                 causal network, we propose several local learning
                 approaches for finding all effects (or descendants) of
                 the specified cause variable and the causal paths from
                 the cause variable to some effect variable of interest.
                 We discuss the identifiability of the effects and the
                 causal paths from observed data and prior knowledge.
                 For the case that the causal paths are not
                 identifiable, our approaches try to find a path set
                 that contains the causal paths of interest.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2019:MCI,
  author =       "Hao Zhang and Shuigeng Zhou and Jihong Guan and Jun
                 (Luke) Huan",
  title =        "Measuring Conditional Independence by Independent
                 Residuals for Causal Discovery",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "50:1--50:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3325708",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "We investigate the relationship between conditional
                 independence (CI) x \vdbar y | Z and the independence
                 of two residuals x -E( x | Z )\vdbar y -E( y | Z ),
                 where x and y are two random variables and Z is a set
                 of random variables. We show that if x, y, and Z are
                 generated by following linear structural equation
                 models and all external influences follow joint
                 Gaussian distribution, then x \vdbar y | Z if and only
                 if x -E( x | Z )\vdbar y -E( y | Z ). That is, the test
                 of x \vdbar y | Z can be relaxed to a simpler
                 unconditional independence test of x -E( x | Z )\vdbar
                 y -E( y | Z ). Furthermore, testing x -E( x | Z )\vdbar
                 y -E( y | Z ) can be simplified by testing x -E( x | Z
                 )\vdbar y or y -E( y | Z )\vdbar x. On the other side,
                 if all these external influences follow non-Gaussian
                 distributions and the model satisfies structural
                 faithfulness condition, then we have x \vdbar y | Z
                 {$<$}={$>$} x -E( x | Z )\vdbar y -E( y | Z ). We apply
                 the results above to the causal discovery problem,
                 where the causal directions are generally determined by
                 a set of V -structures and their consistent
                 propagations, so CI test-based methods can return a set
                 of Markov equivalence classes. We show that in the
                 linear non-Gaussian context, in many cases x -E( x | Z
                 )\vdbar z or y -E( y | Z )\vdbar z ( \forall z \in Z
                 and Z is a minimal d -separator) is satisfied when x E(
                 x | Z )\vdbar y -E( y | Z ), which implies z causes x
                 (or y ) if z directly connects to x (or y ). Therefore,
                 we conclude that CIs have useful information for
                 distinguishing Markov equivalence classes. In summary,
                 comparing with the existing discretization-based and
                 kernel-based CI testing methods, the proposed method
                 provides a simpler way to measure CI, which needs only
                 one unconditional independence test and two regression
                 operations. When being applied to causal discovery, it
                 can find more causal relationships, which is
                 extensively validated by experiments.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
  remark =       "The symbol denoted \vdbar is a horizontal bar on the
                 baseline, with two vertical bars extending upward; I
                 cannot find it in TeX math font listings, or in Unicode
                 5.0.",
}

@Article{Heckerman:2019:TAH,
  author =       "David Heckerman",
  title =        "Toward Accounting for Hidden Common Causes When
                 Inferring Cause and Effect from Observational Data",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "51:1--51:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3309720",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Hidden common causes make it difficult to infer causal
                 relationships from observational data. Here, we begin
                 an investigation into a new method to account for a
                 hidden common cause that infers its presence from the
                 data. As with other approaches that can account for
                 common causes, this approach is successful only in some
                 cases. We describe such a case taken from the field of
                 genomics, wherein one tries to identify which genomic
                 markers causally influence a trait of interest.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ling:2019:BBM,
  author =       "Zhaolong Ling and Kui Yu and Hao Wang and Lin Liu and
                 Wei Ding and Xindong Wu",
  title =        "{BAMB}: a Balanced {Markov} Blanket Discovery Approach
                 to Feature Selection",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "52:1--52:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3335676",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The discovery of Markov blanket (MB) for feature
                 selection has attracted much attention in recent years,
                 since the MB of the class attribute is the optimal
                 feature subset for feature selection. However, almost
                 all existing MB discovery algorithms focus on either
                 improving computational efficiency or boosting learning
                 accuracy, instead of both. In this article, we propose
                 a novel MB discovery algorithm for balancing efficiency
                 and accuracy, called BAlanced Markov Blanket (BAMB)
                 discovery. To achieve this goal, given a class
                 attribute of interest, BAMB finds candidate PC (parents
                 and children) and spouses and removes false positives
                 from the candidate MB set in one go. Specifically, once
                 a feature is successfully added to the current PC set,
                 BAMB finds the spouses with regard to this feature,
                 then uses the updated PC and the spouse set to remove
                 false positives from the current MB set. This makes the
                 PC and spouses of the target as small as possible and
                 thus achieves a trade-off between computational
                 efficiency and learning accuracy. In the experiments,
                 we first compare BAMB with 8 state-of-the-art MB
                 discovery algorithms on 7 benchmark Bayesian networks,
                 then we use 10 real-world datasets and compare BAMB
                 with 12 feature selection algorithms, including 8
                 state-of-the-art MB discovery algorithms and 4 other
                 well-established feature selection methods. On
                 prediction accuracy, BAMB outperforms 12 feature
                 selection algorithms compared. On computational
                 efficiency, BAMB is close to the IAMB algorithm while
                 it is much faster than the remaining seven MB discovery
                 algorithms.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2019:MVF,
  author =       "Yongshan Zhang and Jia Wu and Chuan Zhou and Zhihua
                 Cai and Jian Yang and Philip S. Yu",
  title =        "Multi-View Fusion with Extreme Learning Machine for
                 Clustering",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "53:1--53:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3340268",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Unlabeled, multi-view data presents a considerable
                 challenge in many real-world data analysis tasks. These
                 data are worth exploring because they often contain
                 complementary information that improves the quality of
                 the analysis results. Clustering with multi-view data
                 is a particularly challenging problem as revealing the
                 complex data structures between many feature spaces
                 demands discriminative features that are specific to
                 the task and, when too few of these features are
                 present, performance suffers. Extreme learning machines
                 (ELMs) are an emerging form of learning model that have
                 shown an outstanding representation ability and
                 superior performance in a range of different learning
                 tasks. Motivated by the promise of this advancement, we
                 have developed a novel multi-view fusion clustering
                 framework based on an ELM, called MVEC. MVEC learns the
                 embeddings from each view of the data via the ELM
                 network, then constructs a single unified embedding
                 according to the correlations and dependencies between
                 each embedding and automatically weighting the
                 contribution of each. This process exposes the
                 underlying clustering structures embedded within
                 multi-view data with a high degree of accuracy. A
                 simple yet efficient solution is also provided to solve
                 the optimization problem within MVEC. Experiments and
                 comparisons on eight different benchmarks from
                 different domains confirm MVEC's clustering accuracy.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Law:2019:TLA,
  author =       "Stephen Law and Brooks Paige and Chris Russell",
  title =        "Take a Look Around: Using Street View and Satellite
                 Images to Estimate House Prices",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "54:1--54:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3342240",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "When an individual purchases a home, they
                 simultaneously purchase its structural features, its
                 accessibility to work, and the neighborhood amenities.
                 Some amenities, such as air quality, are measurable
                 while others, such as the prestige or the visual
                 impression of a neighborhood, are difficult to
                 quantify. Despite the well-known impacts intangible
                 housing features have on house prices, limited
                 attention has been given to systematically quantifying
                 these difficult to measure amenities. Two issues have
                 led to this neglect. Not only do few quantitative
                 methods exist that can measure the urban environment,
                 but that the collection of such data is both costly and
                 subjective. We show that street image and satellite
                 image data can capture these urban qualities and
                 improve the estimation of house prices. We propose a
                 pipeline that uses a deep neural network model to
                 automatically extract visual features from images to
                 estimate house prices in London, UK. We make use of
                 traditional housing features such as age, size, and
                 accessibility as well as visual features from Google
                 Street View images and Bing aerial images in estimating
                 the house price model. We find encouraging results
                 where learning to characterize the urban quality of a
                 neighborhood improves house price prediction, even when
                 generalizing to previously unseen London boroughs. We
                 explore the use of non-linear vs. linear methods to
                 fuse these cues with conventional models of house
                 pricing, and show how the interpretability of linear
                 models allows us to directly extract proxy variables
                 for visual desirability of neighborhoods that are both
                 of interest in their own right, and could be used as
                 inputs to other econometric methods. This is
                 particularly valuable as once the network has been
                 trained with the training data, it can be applied
                 elsewhere, allowing us to generate vivid dense maps of
                 the visual appeal of London streets.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhang:2019:DDF,
  author =       "Ya-Lin Zhang and Jun Zhou and Wenhao Zheng and Ji Feng
                 and Longfei Li and Ziqi Liu and Ming Li and Zhiqiang
                 Zhang and Chaochao Chen and Xiaolong Li and Yuan (Alan)
                 Qi and Zhi-Hua Zhou",
  title =        "Distributed Deep Forest and its Application to
                 Automatic Detection of Cash-Out Fraud",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "55:1--55:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3342241",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Internet companies are facing the need for handling
                 large-scale machine learning applications on a daily
                 basis and distributed implementation of machine
                 learning algorithms which can handle extra-large-scale
                 tasks with great performance is widely needed. Deep
                 forest is a recently proposed deep learning framework
                 which uses tree ensembles as its building blocks and it
                 has achieved highly competitive results on various
                 domains of tasks. However, it has not been tested on
                 extremely large-scale tasks. In this work, based on our
                 parameter server system, we developed the distributed
                 version of deep forest. To meet the need for real-world
                 tasks, many improvements are introduced to the original
                 deep forest model, including MART (Multiple Additive
                 Regression Tree) as base learners for efficiency and
                 effectiveness consideration, the cost-based method for
                 handling prevalent class-imbalanced data, MART based
                 feature selection for high dimension data, and
                 different evaluation metrics for automatically
                 determining the cascade level. We tested the deep
                 forest model on an extra-large-scale task, i.e.,
                 automatic detection of cash-out fraud, with more than
                 100 million training samples. Experimental results
                 showed that the deep forest model has the best
                 performance according to the evaluation metrics from
                 different perspectives even with very little effort for
                 parameter tuning. This model can block fraud
                 transactions in a large amount of money each day. Even
                 compared with the best-deployed model, the deep forest
                 model can additionally bring a significant decrease in
                 economic loss each day.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Braytee:2019:CML,
  author =       "Ali Braytee and Wei Liu and Ali Anaissi and Paul J.
                 Kennedy",
  title =        "Correlated Multi-label Classification with Incomplete
                 Label Space and Class Imbalance",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "56:1--56:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3342512",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Multi-label classification is defined as the problem
                 of identifying the multiple labels or categories of new
                 observations based on labeled training data.
                 Multi-labeled data has several challenges, including
                 class imbalance, label correlation, incomplete
                 multi-label matrices, and noisy and irrelevant
                 features. In this article, we propose an integrated
                 multi-label classification approach with incomplete
                 label space and class imbalance (ML-CIB) for
                 simultaneously training the multi-label classification
                 model and addressing the aforementioned challenges. The
                 model learns a new label matrix and captures new label
                 correlations, because it is difficult to find a
                 complete label vector for each instance in real-world
                 data. We also propose a label regularization to handle
                 the imbalanced multi-labeled issue in the new label,
                 and l$_1$ regularization norm is incorporated in the
                 objective function to select the relevant sparse
                 features. A multi-label feature selection (ML-CIB-FS)
                 method is presented as a variant of the proposed ML-CIB
                 to show the efficacy of the proposed method in
                 selecting the relevant features. ML-CIB is formulated
                 as a constrained objective function. We use the
                 accelerated proximal gradient method to solve the
                 proposed optimisation problem. Last, extensive
                 experiments are conducted on 19 regular-scale and
                 large-scale imbalanced multi-labeled datasets. The
                 promising results show that our method significantly
                 outperforms the state-of-the-art.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zamani:2019:AAT,
  author =       "Hamed Zamani and Markus Schedl and Paul Lamere and
                 Ching-Wei Chen",
  title =        "An Analysis of Approaches Taken in the {ACM RecSys
                 Challenge 2018} for Automatic Music Playlist
                 Continuation",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "57:1--57:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3344257",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The ACM Recommender Systems Challenge 2018 focused on
                 the task of automatic music playlist continuation,
                 which is a form of the more general task of sequential
                 recommendation. Given a playlist of arbitrary length
                 with some additional meta-data, the task was to
                 recommend up to 500 tracks that fit the target
                 characteristics of the original playlist. For the
                 RecSys Challenge, Spotify released a dataset of one
                 million user-generated playlists. Participants could
                 compete in two tracks, i.e., main and creative tracks.
                 Participants in the main track were only allowed to use
                 the provided training set, however, in the creative
                 track, the use of external public sources was
                 permitted. In total, 113 teams submitted 1,228 runs to
                 the main track; 33 teams submitted 239 runs to the
                 creative track. The highest performing team in the main
                 track achieved an R-precision of 0.2241, an NDCG of
                 0.3946, and an average number of recommended songs
                 clicks of 1.784. In the creative track, an R-precision
                 of 0.2233, an NDCG of 0.3939, and a click rate of 1.785
                 was obtained by the best team. This article provides an
                 overview of the challenge, including motivation, task
                 definition, dataset description, and evaluation. We
                 further report and analyze the results obtained by the
                 top-performing teams in each track and explore the
                 approaches taken by the winners. We finally summarize
                 our key findings, discuss generalizability of
                 approaches and results to domains other than music, and
                 list the open avenues and possible future directions in
                 the area of automatic playlist continuation.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Corno:2019:RRI,
  author =       "Fulvio Corno and Luigi {De Russis} and Alberto Monge
                 Roffarello",
  title =        "{RecRules}: Recommending {IF--THEN} Rules for End-User
                 Development",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "58:1--58:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3344211",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "Nowadays, end users can personalize their smart
                 devices and web applications by defining or reusing
                 IF-THEN rules through dedicated End-User Development
                 (EUD) tools. Despite apparent simplicity, such tools
                 present their own set of issues. The emerging and
                 increasing complexity of the Internet of Things, for
                 example, is barely taken into account, and the number
                 of possible combinations between triggers and actions
                 of different smart devices and web applications is
                 continuously growing. Such a large design space makes
                 end-user personalization a complex task for
                 non-programmers, and motivates the need of assisting
                 users in easily discovering and managing rules and
                 functionality, e.g., through recommendation techniques.
                 In this article, we tackle the emerging problem of
                 recommending IF-THEN rules to end users by presenting
                 RecRules, a hybrid and semantic recommendation system.
                 Through a mixed content and collaborative approach, the
                 goal of RecRules is to recommend by functionality: it
                 suggests rules based on their final purposes, thus
                 overcoming details like manufacturers and brands. The
                 algorithm uses a semantic reasoning process to enrich
                 rules with semantic information, with the aim of
                 uncovering hidden connections between rules in terms of
                 shared functionality. Then, it builds a collaborative
                 semantic graph, and it exploits different types of
                 path-based features to train a learning to rank
                 algorithm and compute top-N recommendations. We
                 evaluate RecRules through different experiments on real
                 user data extracted from IFTTT, one of the most popular
                 EUD tools. Results are promising: they show the
                 effectiveness of our approach with respect to other
                 state-of-the-art algorithms and open the way for a new
                 class of recommender systems for EUD that take into
                 account the actual functionality needed by end users.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Pappalardo:2019:PDD,
  author =       "Luca Pappalardo and Paolo Cintia and Paolo Ferragina
                 and Emanuele Massucco and Dino Pedreschi and Fosca
                 Giannotti",
  title =        "{PlayeRank}: Data-driven Performance Evaluation and
                 Player Ranking in Soccer via a Machine Learning
                 Approach",
  journal =      j-TIST,
  volume =       "10",
  number =       "5",
  pages =        "59:1--59:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3343172",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The problem of evaluating the performance of soccer
                 players is attracting the interest of many companies
                 and the scientific community, thanks to the
                 availability of massive data capturing all the events
                 generated during a match (e.g., tackles, passes, shots,
                 etc.). Unfortunately, there is no consolidated and
                 widely accepted metric for measuring performance
                 quality in all of its facets. In this article, we
                 design and implement PlayeRank, a data-driven framework
                 that offers a principled multi-dimensional and
                 role-aware evaluation of the performance of soccer
                 players. We build our framework by deploying a massive
                 dataset of soccer-logs and consisting of millions of
                 match events pertaining to four seasons of 18 prominent
                 soccer competitions. By comparing PlayeRank to known
                 algorithms for performance evaluation in soccer, and by
                 exploiting a dataset of players' evaluations made by
                 professional soccer scouts, we show that PlayeRank
                 significantly outperforms the competitors. We also
                 explore the ratings produced by PlayeRank and discover
                 interesting patterns about the nature of excellent
                 performances and what distinguishes the top players
                 from the others. At the end, we explore some
                 applications of PlayeRank-i.e. searching players and
                 player versatility-showing its flexibility and
                 efficiency, which makes it worth to be used in the
                 design of a scalable platform for soccer analytics.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Ning:2019:DRL,
  author =       "Zhaolong Ning and Peiran Dong and Xiaojie Wang and
                 Joel J. P. C. Rodrigues and Feng Xia",
  title =        "Deep Reinforcement Learning for Vehicular Edge
                 Computing: an Intelligent Offloading System",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "60:1--60:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3317572",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The development of smart vehicles brings drivers and
                 passengers a comfortable and safe environment. Various
                 emerging applications are promising to enrich users'
                 traveling experiences and daily life. However, how to
                 execute computing-intensive applications on
                 resource-constrained vehicles still faces huge
                 challenges. In this article, we construct an
                 intelligent offloading system for vehicular edge
                 computing by leveraging deep reinforcement learning.
                 First, both the communication and computation states
                 are modelled by finite Markov chains. Moreover, the
                 task scheduling and resource allocation strategy is
                 formulated as a joint optimization problem to maximize
                 users' Quality of Experience (QoE). Due to its
                 complexity, the original problem is further divided
                 into two sub-optimization problems. A two-sided
                 matching scheme and a deep reinforcement learning
                 approach are developed to schedule offloading requests
                 and allocate network resources, respectively.
                 Performance evaluations illustrate the effectiveness
                 and superiority of our constructed system.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tariq:2019:EES,
  author =       "Umair Ullah Tariq and Haider Ali and Lu Liu and John
                 Panneerselvam and Xiaojun Zhai",
  title =        "Energy-efficient Static Task Scheduling on {VFI}-based
                 {NoC--HMPSoCs} for Intelligent Edge Devices in
                 Cyber-physical Systems",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "66:1--66:??",
  month =        oct,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3336121",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 22 11:55:45 MDT 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "The interlinked processing units in modern
                 Cyber-Physical Systems (CPS) creates a large network of
                 connected computing embedded systems. Network-on-Chip
                 (NoC)-based Multiprocessor System-on-Chip (MPSoC)
                 architecture is becoming a de facto computing platform
                 for real-time applications due to its higher
                 performance and Quality-of-Service (QoS). The number of
                 processors has increased significantly on the
                 multiprocessor systems in CPS; therefore, Voltage
                 Frequency Island (VFI) has been recently adopted for
                 effective energy management mechanism in the
                 large-scale multiprocessor chip designs. In this
                 article, we investigated energy-efficient and
                 contention-aware static scheduling for tasks with
                 precedence and deadline constraints on intelligent edge
                 devices deploying heterogeneous VFI-based NoC-MPSoCs
                 (VFI-NoC-HMPSoC) with DVFS-enabled processors. Unlike
                 the existing population-based optimization algorithms,
                 we proposed a novel population-based algorithm called
                 ARSH-FATI that can dynamically switch between
                 explorative and exploitative search modes at run-time.
                 Our static scheduler ARHS-FATI collectively performs
                 task mapping, scheduling, and voltage scaling.
                 Consequently, its performance is superior to the
                 existing state-of-the-art approach proposed for
                 homogeneous VFI-based NoC-MPSoCs. We also developed a
                 communication contention-aware Earliest Edge Consistent
                 Deadline First (EECDF) scheduling algorithm and
                 gradient descent--inspired voltage scaling algorithm
                 called Energy Gradient Decent (EGD). We introduced a
                 notion of Energy Gradient (EG) that guides EGD in its
                 search for island voltage settings and minimize the
                 total energy consumption. We conducted the experiments
                 on eight real benchmarks adopted from Embedded Systems
                 Synthesis Benchmarks (E3S). Our static scheduling
                 approach ARSH-FATI outperformed state-of-the-art
                 technique and achieved an average energy-efficiency of
                 $ \approx $24\% and $ \approx $30\% over CA-TMES-Search
                 and CA-TMES-Quick, respectively.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhou:2019:LCN,
  author =       "Junhao Zhou and Hong-Ning Dai and Hao Wang",
  title =        "Lightweight Convolution Neural Networks for Mobile
                 Edge Computing in Transportation Cyber Physical
                 Systems",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "67:1--67:??",
  month =        dec,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3339308",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Dec 16 07:23:45 MST 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3339308",
  abstract =     "Cloud computing extends Transportation Cyber-Physical
                 Systems (T-CPS) with provision of enhanced computing
                 and storage capability via offloading computing tasks
                 to remote cloud servers. However, cloud computing
                 cannot fulfill the requirements such as low latency and
                 context awareness in T-CPS. The appearance of Mobile
                 Edge Computing (MEC) can overcome the limitations of
                 cloud computing via offloading the computing tasks at
                 edge servers in approximation to users, consequently
                 reducing the latency and improving the context
                 awareness. Although MEC has the potential in improving
                 T-CPS, it is incapable of processing
                 computational-intensive tasks such as deep learning
                 algorithms due to the intrinsic storage and
                 computing-capability constraints. Therefore, we design
                 and develop a lightweight deep learning model to
                 support MEC applications in T-CPS. In particular, we
                 put forth a stacked convolutional neural network (CNN)
                 consisting of factorization convolutional layers
                 alternating with compression layers (namely,
                 lightweight CNN-FC). Extensive experimental results
                 show that our proposed lightweight CNN-FC can greatly
                 decrease the number of unnecessary parameters, thereby
                 reducing the model size while maintaining the high
                 accuracy in contrast to conventional CNN models. In
                 addition, we also evaluate the performance of our
                 proposed model via conducting experiments at a
                 realistic MEC platform. Specifically, experimental
                 results at this MEC platform show that our model can
                 maintain the high accuracy while preserving the
                 portable model size.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Tang:2019:EPP,
  author =       "Wenjuan Tang and Ju Ren and Kuan Zhang and Deyu Zhang
                 and Yaoxue Zhang and Xuemin (Sherman) Shen",
  title =        "Efficient and Privacy-preserving Fog-assisted Health
                 Data Sharing Scheme",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "68:1--68:??",
  month =        dec,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3341104",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Dec 16 07:23:45 MST 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3341104",
  abstract =     "Pervasive data collected from e-healthcare devices
                 possess significant medical value through data sharing
                 with professional healthcare service providers.
                 However, health data sharing poses several security
                 issues, such as access control and privacy leakage, as
                 well as faces critical challenges to obtain efficient
                 data analysis and services. In this article, we propose
                 an efficient and privacy-preserving fog-assisted health
                 data sharing (PFHDS) scheme for e-healthcare systems.
                 Specifically, we integrate the fog node to classify the
                 shared data into different categories according to
                 disease risks for efficient health data analysis.
                 Meanwhile, we design an enhanced attribute-based
                 encryption method through combination of a personal
                 access policy on patients and a professional access
                 policy on the fog node for effective medical service
                 provision. Furthermore, we achieve significant
                 encryption consumption reduction for patients by
                 offloading a portion of the computation and storage
                 burden from patients to the fog node. Security
                 discussions show that PFHDS realizes data
                 confidentiality and fine-grained access control with
                 collusion resistance. Performance evaluations
                 demonstrate cost-efficient encryption computation,
                 storage and energy consumption.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Li:2019:SDS,
  author =       "Jin Li and Tong Li and Zheli Liu and Xiaofeng Chen",
  title =        "Secure Deduplication System with Active Key Update and
                 Its Application in {IoT}",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "69:1--69:??",
  month =        dec,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3356468",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Dec 16 07:23:45 MST 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3356468",
  abstract =     "The rich cloud services in the Internet of Things
                 create certain needs for edge computing, in which
                 devices should be able to handle storage tasks
                 securely, reliably, and efficiently. When processing
                 the storage requests from edge devices, each cloud
                 server is supposed to eliminate duplicate copies of
                 repeating data to reduce the amount of storage space
                 and save on bandwidth. To protect data confidentiality
                 while supporting deduplication, some
                 convergent-encryption-based techniques have been
                 proposed to encrypt the data before uploading. However,
                 all these works cannot meet two requirements while
                 preventing brute-force attacks: (i) power-constrained
                 edge nodes should update encryption keys efficiently
                 when an edge node is abandoned; and (ii) the access
                 privacy of edge nodes should be guaranteed. In this
                 article, we propose a novel encryption scheme for
                 secure chunk-level deduplication. Based on this scheme,
                 we present two constructions of the secure
                 deduplication system that support an efficient key
                 update protocol. The key update protocol does not
                 involve any edge node in computational tasks, so that
                 the deduplication system can adopt an active key update
                 strategy. Moreover, one of our constructions, which is
                 called advance construction, can provide access privacy
                 assurances for edge nodes. The security analysis is
                 given in terms of the proposed threat model. The
                 experimental analysis demonstrates that the proposed
                 deduplication system is practical.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhao:2019:VAA,
  author =       "Ying Zhao and Lei Wang and Shijie Li and Fangfang Zhou
                 and Xiaoru Lin and Qiang Lu and Lei Ren",
  title =        "A Visual Analysis Approach for Understanding
                 Durability Test Data of Automotive Products",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "70:1--70:??",
  month =        dec,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3345640",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Dec 16 07:23:45 MST 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  abstract =     "People face data-rich manufacturing environments in
                 Industry 4.0. As an important technology for explaining
                 and understanding complex data, visual analytics has
                 been increasingly introduced into industrial data
                 analysis scenarios. With the durability test of
                 automotive starters as background, this study proposes
                 a visual analysis approach for understanding
                 large-scale and long-term durability test data. Guided
                 by detailed scenario and requirement analyses, we first
                 propose a migration-adapted clustering algorithm that
                 utilizes a segmentation strategy and a group of
                 matching-updating operations to achieve an efficient
                 and accurate clustering analysis of the data for
                 starting mode identification and abnormal test
                 detection. We then design and implement a visual
                 analysis system that provides a set of user-friendly
                 visual designs and lightweight interactions to help
                 people gain data insights into the test process
                 overview, test data patterns, and durability
                 performance dynamics. Finally, we conduct a
                 quantitative algorithm evaluation, case study, and user
                 interview by using real-world starter durability test
                 datasets. The results demonstrate the effectiveness of
                 the approach and its possible inspiration for the
                 durability test data analysis of other similar
                 industrial products.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Leyli-Abadi:2019:MJN,
  author =       "Milad Leyli-Abadi and Allou sam{\'e} and Latifa
                 Oukhellou and Nicolas Cheifetz and Pierre Mandel and
                 C{\'e}dric F{\'e}liers and Olivier Chesneau",
  title =        "Mixture of Joint Nonhomogeneous {Markov} Chains to
                 Cluster and Model Water Consumption Behavior
                 Sequences",
  journal =      j-TIST,
  volume =       "10",
  number =       "6",
  pages =        "71:1--71:??",
  month =        dec,
  year =         "2019",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3347452",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Dec 16 07:23:45 MST 2019",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/ft_gateway.cfm?id=3347452",
  abstract =     "The emergence of smart meters has fostered the
                 collection of massive data that support a better
                 understanding of consumer behaviors and better
                 management of water resources and networks. The main
                 focus of this article is to analyze consumption
                 behavior over time; thus, we first identify the main
                 weekly consumption patterns. This approach allows each
                 meter to be represented by a categorical series, where
                 each category corresponds to a weekly consumption
                 behavior. By considering the resulting consumption
                 behavior sequences, we propose a new methodology based
                 on a mixture of nonhomogeneous Markov models to cluster
                 these categorical time series. Using this method, the
                 meters are described by the Markovian dynamics of their
                 cluster. The latent variable that controls cluster
                 membership is estimated alongside the parameters of the
                 Markov model using a novel classification expectation
                 maximization algorithm. A specific entropy measure is
                 formulated to evaluate the quality of the estimated
                 partition by considering the joint Markovian dynamics.
                 The proposed clustering model can also be used to
                 predict future consumption behaviors within each
                 cluster. Numerical experiments using real water
                 consumption data provided by a water utility in France
                 and gathered over 19 months are conducted to evaluate
                 the performance of the proposed approach in terms of
                 both clustering and prediction. The results demonstrate
                 the effectiveness of the proposed method.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "http://portal.acm.org/citation.cfm?id=J1318",
}

@Article{Zhou:2020:FPT,
  author =       "Binbin Zhou and Sha Zhao and Longbiao Chen and Shijian
                 Li and Zhaohui Wu and Gang Pan",
  title =        "Forecasting Price Trend of Bulk Commodities Leveraging
                 Cross-domain Open Data Fusion",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "1:1--1:26",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3354287",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3354287",
  abstract =     "Forecasting price trend of bulk commodities is
                 important in international trade, not only for markets
                 participants to schedule production and marketing plans
                 but also for government administrators to adjust
                 policies. Previous studies cannot support \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xie:2020:DIS,
  author =       "Yiqun Xie and Xun Zhou and Shashi Shekhar",
  title =        "Discovering Interesting Subpaths with Statistical
                 Significance from Spatiotemporal Datasets",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "2:1--2:24",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3354189",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3354189",
  abstract =     "Given a path in a spatial or temporal framework, we
                 aim to find all contiguous subpaths that are both
                 interesting (e.g., abrupt changes) and statistically
                 significant (i.e., persistent trends rather than local
                 fluctuations). Discovering interesting \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lopes:2020:GBR,
  author =       "Ramon Lopes and Renato Assun{\c{c}}{\~a}o and Rodrygo
                 L. T. Santos",
  title =        "Graph-based Recommendation Meets {Bayes} and
                 Similarity Measures",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "3:1--3:26",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3356882",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3356882",
  abstract =     "Graph-based approaches provide an effective
                 memory-based alternative to latent factor models for
                 collaborative recommendation. Modern approaches rely on
                 either sampling short walks or enumerating short paths
                 starting from the target user in a user-item bipartite
                 graph. While the effectiveness of random walk sampling
                 heavily depends on the underlying path sampling
                 strategy, path enumeration is sensitive to the strategy
                 adopted for scoring each individual path. In this
                 article, we demonstrate how both strategies can be
                 improved through Bayesian reasoning. In particular, we
                 propose to improve random walk sampling by exploiting
                 distributional aspects of items' ratings on the sampled
                 paths. Likewise, we extend existing path enumeration
                 approaches to leverage categorical ratings and to scale
                 the score of each path proportionally to the affinity
                 of pairs of users and pairs of items on the path.
                 Experiments on several publicly available datasets
                 demonstrate the effectiveness of our proposed
                 approaches compared to state-of-the-art graph-based
                 recommenders.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Nelke:2020:MCB,
  author =       "Sofia Amador Nelke and Steven Okamoto and Roie Zivan",
  title =        "Market Clearing-based Dynamic Multi-agent Task
                 Allocation",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "4:1--4:25",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3356467",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3356467",
  abstract =     "Realistic multi-agent team applications often feature
                 dynamic environments with soft deadlines that penalize
                 late execution of tasks. This puts a premium on quickly
                 allocating tasks to agents. However, when such problems
                 include temporal and spatial \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Waniek:2020:SAA,
  author =       "Marcin Waniek and Tomasz P. Michalak and Aamena
                 Alshamsi",
  title =        "Strategic Attack \& Defense in Security Diffusion
                 Games",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "5:1--5:35",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3357605",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3357605",
  abstract =     "Security games model the confrontation between a
                 defender protecting a set of targets and an attacker
                 who tries to capture them. A variant of these games
                 assumes security interdependence between targets,
                 facilitating contagion of an attack. So far, only
                 stochastic spread of an attack has been considered. In
                 this work, we introduce a version of security games,
                 where the attacker strategically drives the entire
                 spread of attack and where interconnections between
                 nodes affect their susceptibility to be captured. We
                 find that the strategies effective in the settings
                 without contagion or with stochastic contagion are no
                 longer feasible when spread of attack is strategic.
                 While in the former settings it was possible to
                 efficiently find optimal strategies of the attacker,
                 doing so in the latter setting turns out to be an
                 NP-complete problem for an arbitrary network. However,
                 for some simpler network structures, such as cliques,
                 stars, and trees, we show that it is possible to
                 efficiently find optimal strategies of both players.
                 For arbitrary networks, we study and compare the
                 efficiency of various heuristic strategies. As opposed
                 to previous works with no or stochastic contagion, we
                 find that centrality-based defense is often effective
                 when spread of attack is strategic, particularly for
                 centrality measures based on the Shapley value.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2020:TLD,
  author =       "Jindong Wang and Yiqiang Chen and Wenjie Feng and Han
                 Yu and Meiyu Huang and Qiang Yang",
  title =        "Transfer Learning with Dynamic Distribution
                 Adaptation",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "6:1--6:25",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3360309",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3360309",
  abstract =     "Transfer learning aims to learn robust classifiers for
                 the target domain by leveraging knowledge from a source
                 domain. Since the source and the target domains are
                 usually from different distributions, existing methods
                 mainly focus on adapting the cross-. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Horne:2020:RFN,
  author =       "Benjamin D. Horne and Jeppe N{\o}rregaard and Sibel
                 Adali",
  title =        "Robust Fake News Detection Over Time and Attack",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "7:1--7:23",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3363818",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3363818",
  abstract =     "In this study, we examine the impact of time on
                 state-of-the-art news veracity classifiers. We show
                 that, as time progresses, classification performance
                 for both unreliable and hyper-partisan news
                 classification slowly degrade. While this degradation
                 does happen, it happens slower than expected,
                 illustrating that hand-crafted, content-based features,
                 such as style of writing, are fairly robust to changes
                 in the news cycle. We show that this small degradation
                 can be mitigated using online learning. Last, we
                 examine the impact of adversarial content manipulation
                 by malicious news producers. Specifically, we test
                 three types of attack based on changes in the input
                 space and data availability. We show that static models
                 are susceptible to content manipulation attacks, but
                 online models can recover from such attacks.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Pan:2020:DDH,
  author =       "Menghai Pan and Weixiao Huang and Yanhua Li and Xun
                 Zhou and Zhenming Liu and Rui Song and Hui Lu and
                 Zhihong Tian and Jun Luo",
  title =        "{DHPA}: Dynamic Human Preference Analytics Framework:
                 a Case Study on Taxi Drivers' Learning Curve Analysis",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "8:1--8:19",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3360312",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3360312",
  abstract =     "Many real-world human behaviors can be modeled and
                 characterized as sequential decision-making processes,
                 such as a taxi driver's choices of working regions and
                 times. Each driver possesses unique preferences on the
                 sequential choices over time and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2020:FMH,
  author =       "Meng Wang and Hui Li and Jiangtao Cui and Sourav S.
                 Bhowmick and Ping Liu",
  title =        "{FROST}: Movement History-Conscious Facility
                 Relocation",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "9:1--9:26",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3361740",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3361740",
  abstract =     "The facility relocation (FR) problem, which aims to
                 optimize the placement of facilities to accommodate the
                 changes of users' locations, has a broad spectrum of
                 applications. Despite the significant progress made by
                 existing solutions to the FR problem, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fu:2020:TER,
  author =       "Tao-Yang Fu and Wang-Chien Lee",
  title =        "{Trembr}: Exploring Road Networks for Trajectory
                 Representation Learning",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "10:1--10:25",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3361741",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3361741",
  abstract =     "In this article, we propose a novel representation
                 learning framework, namely TRajectory EMBedding via
                 Road networks (Trembr), to learn trajectory embeddings
                 (low-dimensional feature vectors) for use in a variety
                 of trajectory applications. The novelty \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Beigi:2020:SSG,
  author =       "Ghazaleh Beigi and Jiliang Tang and Huan Liu",
  title =        "Social Science-guided Feature Engineering: a Novel
                 Approach to Signed Link Analysis",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "11:1--11:27",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3364222",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3364222",
  abstract =     "Many real-world relations can be represented by signed
                 networks with positive links (e.g., friendships and
                 trust) and negative links (e.g., foes and distrust).
                 Link prediction helps advance tasks in social network
                 analysis such as recommendation \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Luo:2020:ECN,
  author =       "Ping Luo and Kai Shu and Junjie Wu and Li Wan and Yong
                 Tan",
  title =        "Exploring Correlation Network for Cheating Detection",
  journal =      j-TIST,
  volume =       "11",
  number =       "1",
  pages =        "12:1--12:23",
  month =        feb,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3364221",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Feb 15 07:31:36 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3364221",
  abstract =     "The correlation network, typically formed by computing
                 pairwise correlations between variables, has recently
                 become a competitive paradigm to discover insights in
                 various application domains, such as climate
                 prediction, financial marketing, and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2020:WTE,
  author =       "Shuo Zhang and Krisztian Balog",
  title =        "{Web} Table Extraction, Retrieval, and Augmentation: a
                 Survey",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "13:1--13:35",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372117",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372117",
  abstract =     "Tables are powerful and popular tools for organizing
                 and manipulating data. A vast number of tables can be
                 found on the Web, which represent a valuable knowledge
                 resource. The objective of this survey is to synthesize
                 and present two decades of research \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhu:2020:FMM,
  author =       "Lei Zhu and Xu Lu and Zhiyong Cheng and Jingjing Li
                 and Huaxiang Zhang",
  title =        "Flexible Multi-modal Hashing for Scalable Multimedia
                 Retrieval",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "14:1--14:20",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3365841",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/hash.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3365841",
  abstract =     "Multi-modal hashing methods could support efficient
                 multimedia retrieval by combining multi-modal features
                 for binary hash learning at the both offline training
                 and online query stages. However, existing multi-modal
                 methods cannot binarize the queries, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shmueli:2020:MSM,
  author =       "Erez Shmueli and Tamir Tassa",
  title =        "Mediated Secure Multi-Party Protocols for
                 Collaborative Filtering",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "15:1--15:25",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3375402",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3375402",
  abstract =     "Recommender systems have become extremely common in
                 recent years and are utilized in a variety of domains
                 such as movies, music, news, products, restaurants, and
                 so on. While a typical recommender system bases its
                 recommendations solely on users' \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Oliveira:2020:RAE,
  author =       "Samuel E. L. Oliveira and Victor Diniz and Anisio
                 Lacerda and Luiz Merschmanm and Gisele L. Pappa",
  title =        "Is Rank Aggregation Effective in Recommender Systems?
                 {An} Experimental Analysis",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "16:1--16:26",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3365375",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3365375",
  abstract =     "Recommender Systems are tools designed to help users
                 find relevant information from the myriad of content
                 available online. They work by actively suggesting
                 items that are relevant to users according to their
                 historical preferences or observed actions. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ye:2020:XLA,
  author =       "Juan Ye and Simon Dobson and Franco Zambonelli",
  title =        "{XLearn}: Learning Activity Labels across
                 Heterogeneous Datasets",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "17:1--17:28",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3368272",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3368272",
  abstract =     "Sensor-driven systems often need to map sensed data
                 into meaningfully labelled activities to classify the
                 phenomena being observed. A motivating and challenging
                 example comes from human activity recognition in which
                 smart home and other datasets are \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhuo:2020:DUP,
  author =       "Hankz Hankui Zhuo and Yantian Zha and Subbarao
                 Kambhampati and Xin Tian",
  title =        "Discovering Underlying Plans Based on Shallow Models",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "18:1--18:30",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3368270",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3368270",
  abstract =     "Plan recognition aims to discover target plans (i.e.,
                 sequences of actions) behind observed actions, with
                 history plan libraries or action models in hand.
                 Previous approaches either discover plans by maximally
                 ``matching'' observed actions to plan \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2020:NMC,
  author =       "Chien-Chih Wang and Kent Loong Tan and Chih-Jen Lin",
  title =        "{Newton} Methods for Convolutional Neural Networks",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "19:1--19:30",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3368271",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3368271",
  abstract =     "Deep learning involves a difficult non-convex
                 optimization problem, which is often solved by
                 stochastic gradient (SG) methods. While SG is usually
                 effective, it may not be robust in some situations.
                 Recently, Newton methods have been investigated as an
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2020:SIS,
  author =       "Shih-Chia Huang and Da-Wei Jaw and Bo-Hao Chen and
                 Sy-Yen Kuo",
  title =        "Single Image Snow Removal Using Sparse Representation
                 and Particle Swarm Optimizer",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "20:1--20:15",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372116",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372116",
  abstract =     "Images are often corrupted by natural obscuration
                 (e.g., snow, rain, and haze) during acquisition in bad
                 weather conditions. The removal of snowflakes from only
                 a single image is a challenging task due to situational
                 variety and has been investigated \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2020:PBU,
  author =       "Wenhe Liu and Xiaojun Chang and Ling Chen and Dinh
                 Phung and Xiaoqin Zhang and Yi Yang and Alexander G.
                 Hauptmann",
  title =        "Pair-based Uncertainty and Diversity Promoting Early
                 Active Learning for Person Re-identification",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "21:1--21:15",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372121",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372121",
  abstract =     "The effective training of supervised Person
                 Re-identification (Re-ID) models requires sufficient
                 pairwise labeled data. However, when there is limited
                 annotation resource, it is difficult to collect
                 pairwise labeled data. We consider a challenging and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2020:TRF,
  author =       "Lei Chen and Zhiang Wu and Jie Cao and Guixiang Zhu
                 and Yong Ge",
  title =        "Travel Recommendation via Fusing Multi-Auxiliary
                 Information into Matrix Factorization",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "22:1--22:24",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372118",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372118",
  abstract =     "As an e-commerce feature, the personalized
                 recommendation is invariably highly-valued by both
                 consumers and merchants. The e-tourism has become one
                 of the hottest industries with the adoption of
                 recommendation systems. Several lines of evidence have
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Pereira:2020:USO,
  author =       "Ramon Fraga Pereira and Nir Oren and Felipe
                 Meneguzzi",
  title =        "Using Sub-Optimal Plan Detection to Identify
                 Commitment Abandonment in Discrete Environments",
  journal =      j-TIST,
  volume =       "11",
  number =       "2",
  pages =        "23:1--23:26",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372119",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 3 09:15:47 MST 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372119",
  abstract =     "Assessing whether an agent has abandoned a goal or is
                 actively pursuing it is important when multiple agents
                 are trying to achieve joint goals, or when agents
                 commit to achieving goals for each other. Making such a
                 determination for a single goal by \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2020:AAD,
  author =       "Wei Emma Zhang and Quan Z. Sheng and Ahoud Alhazmi and
                 Chenliang Li",
  title =        "Adversarial Attacks on Deep-learning Models in Natural
                 Language Processing: a Survey",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "24:1--24:41",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3374217",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3374217",
  abstract =     "With the development of high computational devices,
                 deep neural networks (DNNs), in recent years, have
                 gained significant popularity in many Artificial
                 Intelligence (AI) applications. However, previous
                 efforts have shown that DNNs are vulnerable to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2020:UGA,
  author =       "Zhuang Liu and Keli Xiao and Bo Jin and Kaiyu Huang
                 and Degen Huang and Yunxia Zhang",
  title =        "Unified Generative Adversarial Networks for
                 Multiple-Choice Oriented Machine Comprehension",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "25:1--25:20",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372120",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372120",
  abstract =     "In this article, we address the multiple-choice
                 machine comprehension (MC) problem in natural language
                 processing. Existing approaches for MC are usually
                 designed for general cases; however, we specially
                 develop a novel method for solving the
                 multiple-\ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shah:2020:TCP,
  author =       "Ankit Shah and Arunesh Sinha and Rajesh Ganesan and
                 Sushil Jajodia and Hasan Cam",
  title =        "Two Can Play That Game: an Adversarial Evaluation of a
                 Cyber-Alert Inspection System",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "32:1--32:20",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3377554",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3377554",
  abstract =     "Cyber-security is an important societal concern.
                 Cyber-attacks have increased in numbers as well as in
                 the extent of damage caused in every attack. Large
                 organizations operate a Cyber Security Operation Center
                 (CSOC), which forms the first line of cyber-\ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lin:2020:CDM,
  author =       "Adi Lin and Jie Lu and Junyu Xuan and Fujin Zhu and
                 Guangquan Zhang",
  title =        "A Causal {Dirichlet} Mixture Model for Causal
                 Inference from Observational Data",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "33:1--33:29",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3379500",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3379500",
  abstract =     "Estimating causal effects by making causal inferences
                 from observational data is common practice in
                 scientific studies, business decision-making, and daily
                 life. In today's data-driven world, causal inference
                 has become a key part of the evaluation \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lyu:2020:HPL,
  author =       "Gengyu Lyu and Songhe Feng and Yidong Li and Yi Jin
                 and Guojun Dai and Congyan Lang",
  title =        "{HERA}: Partial Label Learning by Combining
                 Heterogeneous Loss with Sparse and Low-Rank
                 Regularization",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "34:1--34:19",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3379501",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3379501",
  abstract =     "Partial label learning (PLL) aims to learn from the
                 data where each training instance is associated with a
                 set of candidate labels, among which only one is
                 correct. Most existing methods deal with this type of
                 problem by either treating each candidate \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Horvath:2020:CBA,
  author =       "G{\'a}bor Horv{\'a}th and Edith Kov{\'a}cs and Roland
                 Molontay and Szabolcs Nov{\'a}czki",
  title =        "Copula-Based Anomaly Scoring and Localization for
                 Large-Scale, High-Dimensional Continuous Data",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "26:1--26:26",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3372274",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3372274",
  abstract =     "The anomaly detection method presented by this article
                 has a special feature: it not only indicates whether or
                 not an observation is anomalous but also tells what
                 exactly makes an anomalous observation unusual. Hence,
                 it provides support to localize the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jin:2020:MNP,
  author =       "Di Jin and Bingyi Li and Pengfei Jiao and Dongxiao He
                 and Hongyu Shan and Weixiong Zhang",
  title =        "Modeling with Node Popularities for Autonomous
                 Overlapping Community Detection",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "27:1--27:23",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3373760",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3373760",
  abstract =     "Overlapping community detection has triggered recent
                 research in network analysis. One of the promising
                 techniques for finding overlapping communities is the
                 popular stochastic models, which, unfortunately, have
                 some common drawbacks. They do not \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhao:2020:UDR,
  author =       "Yawei Zhao and Qian Zhao and Xingxing Zhang and En Zhu
                 and Xinwang Liu and Jianping Yin",
  title =        "Understand Dynamic Regret with Switching Cost for
                 Online Decision Making",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "28:1--28:21",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3375788",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3375788",
  abstract =     "As a metric to measure the performance of an online
                 method, dynamic regret with switching cost has drawn
                 much attention for online decision making problems.
                 Although the sublinear regret has been provided in much
                 previous research, we still have little \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2020:DNC,
  author =       "Xueliang Liu and Xun Yang and Meng Wang and Richang
                 Hong",
  title =        "Deep Neighborhood Component Analysis for Visual
                 Similarity Modeling",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "29:1--29:15",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3375787",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3375787",
  abstract =     "Learning effective visual similarity is an essential
                 problem in multimedia research. Despite the promising
                 progress made in recent years, most existing approaches
                 learn visual features and similarities in two separate
                 stages, which inevitably limits \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Brock:2020:LTD,
  author =       "Heike Brock and Felix Law and Kazuhiro Nakadai and
                 Yuji Nagashima",
  title =        "Learning Three-dimensional Skeleton Data from Sign
                 Language Video",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "30:1--30:24",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3377552",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3377552",
  abstract =     "Data for sign language research is often difficult and
                 costly to acquire. We therefore present a novel
                 pipeline able to generate motion three-dimensional (3D)
                 skeleton data from single-camera sign language videos
                 only. First, three recurrent neural \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2020:WUA,
  author =       "Lei Zhang and Yixiang Zhang and Xiaolong Zheng",
  title =        "{WiSign}: Ubiquitous {American Sign Language}
                 Recognition Using Commercial {Wi-Fi} Devices",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "31:1--31:24",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3377553",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3377553",
  abstract =     "In this article, we propose WiSign that recognizes the
                 continuous sentences of American Sign Language (ASL)
                 with existing WiFi infrastructure. Instead of
                 identifying the individual ASL words from the manually
                 segmented ASL sentence in existing works, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Arora:2020:ADC,
  author =       "Udit Arora and Hridoy Sankar Dutta and Brihi Joshi and
                 Aditya Chetan and Tanmoy Chakraborty",
  title =        "Analyzing and Detecting Collusive Users Involved in
                 Blackmarket Retweeting Activities",
  journal =      j-TIST,
  volume =       "11",
  number =       "3",
  pages =        "35:1--35:24",
  month =        may,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3380537",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue May 19 09:21:48 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3380537",
  abstract =     "With the rise in popularity of social media platforms
                 like Twitter, having higher influence on these
                 platforms has a greater value attached to it, since it
                 has the power to influence many decisions in the form
                 of brand promotions and shaping opinions. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yao:2020:VOS,
  author =       "Rui Yao and Guosheng Lin and Shixiong Xia and Jiaqi
                 Zhao and Yong Zhou",
  title =        "Video Object Segmentation and Tracking: a Survey",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "36:1--36:47",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391743",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391743",
  abstract =     "Object segmentation and object tracking are
                 fundamental research areas in the computer vision
                 community. These two topics are difficult to handle
                 some common challenges, such as occlusion, deformation,
                 motion blur, scale variation, and more. The former
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2020:KAA,
  author =       "Yingying Zhang and Quan Fang and Shengsheng Qian and
                 Changsheng Xu",
  title =        "Knowledge-aware Attentive {Wasserstein} Adversarial
                 Dialogue Response Generation",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "37:1--37:20",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3384675",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3384675",
  abstract =     "Natural language generation has become a fundamental
                 task in dialogue systems. RNN-based natural response
                 generation methods encode the dialogue context and
                 decode it into a response. However, they tend to
                 generate dull and simple responses. In this \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Feygin:2020:BBI,
  author =       "Sidney A. Feygin and Jessica R. Lazarus and Edward H.
                 Forscher and Valentine Golfier-Vetterli and Jonathan W.
                 Lee and Abhishek Gupta and Rashid A. Waraich and Colin
                 J. R. Sheppard and Alexandre M. Bayen",
  title =        "{BISTRO}: {Berkeley Integrated System for
                 Transportation Optimization}",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "38:1--38:27",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3384344",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3384344",
  abstract =     "The current trend toward urbanization and adoption of
                 flexible and innovative mobility technologies will have
                 complex and difficult-to-predict effects on urban
                 transportation systems. Comprehensive methodological
                 frameworks that account for the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2020:SRM,
  author =       "Hui Liu and Haiou Wang and Yan Wu and Lei Xing",
  title =        "Superpixel Region Merging Based on Deep Network for
                 Medical Image Segmentation",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "39:1--39:22",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3386090",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3386090",
  abstract =     "Automatic and accurate semantic segmentation of
                 pathological structures in medical images is
                 challenging because of noisy disturbance, deformable
                 shapes of pathology, and low contrast between soft
                 tissues. Classical superpixel-based classification
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Singhal:2020:CBM,
  author =       "Divya Singhal and Abhinav Gupta and Anurag Tripathi
                 and Ravi Kothari",
  title =        "{CNN}-based Multiple Manipulation Detector Using
                 Frequency Domain Features of Image Residuals",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "40:1--40:26",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3388634",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3388634",
  abstract =     "Increasingly sophisticated image editing tools make it
                 easy to modify images. Often these modifications are
                 elaborate, convincing, and undetectable by even careful
                 human inspection. These considerations have prompted
                 the development of forensic \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2020:CPC,
  author =       "Lin Li and Weike Pan and Zhong Ming",
  title =        "{CoFi}-points: Collaborative Filtering via Pointwise
                 Preference Learning on User\slash Item-Set",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "41:1--41:24",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3389127",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3389127",
  abstract =     "With the explosive growth of web resources, an
                 increasingly important task in recommender systems is
                 to provide high-quality personalized services by
                 learning users' preferences from historically observed
                 information. As an effective preference learning
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ma:2020:ABR,
  author =       "Jing Ma and Wei Gao and Shafiq Joty and Kam-Fai Wong",
  title =        "An Attention-based Rumor Detection Model with
                 Tree-structured Recursive Neural Networks",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "42:1--42:28",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391250",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391250",
  abstract =     "Rumor spread in social media severely jeopardizes the
                 credibility of online content. Thus, automatic
                 debunking of rumors is of great importance to keep
                 social media a healthy environment. While facing a
                 dubious claim, people often dispute its \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2020:MHU,
  author =       "Jun-Zhe Wang and Yi-Cheng Chen and Wen-Yueh Shih and
                 Lin Yang and Yu-Shao Liu and Jiun-Long Huang",
  title =        "Mining High-utility Temporal Patterns on Time
                 Interval-based Data",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "43:1--43:31",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391230",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391230",
  abstract =     "In this article, we propose a novel temporal pattern
                 mining problem, named high-utility temporal pattern
                 mining, to fulfill the needs of various applications.
                 Different from classical temporal pattern mining aimed
                 at discovering frequent temporal \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2020:DAC,
  author =       "Hanrui Wu and Yuguang Yan and Michael K. Ng and
                 Qingyao Wu",
  title =        "Domain-attention Conditional {Wasserstein} Distance
                 for Multi-source Domain Adaptation",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "44:1--44:19",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391229",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391229",
  abstract =     "Multi-source domain adaptation has received
                 considerable attention due to its effectiveness of
                 leveraging the knowledge from multiple related sources
                 with different distributions to enhance the learning
                 performance. One of the fundamental challenges in
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kim:2020:GCC,
  author =       "Jungeun Kim and Jae-Gil Lee and Byung Suk Lee and
                 Jiajun Liu",
  title =        "Geosocial Co-Clustering: a Novel Framework for
                 Geosocial Community Detection",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "45:1--45:26",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391708",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391708",
  abstract =     "As location-based services using mobile devices have
                 become globally popular these days, social network
                 analysis (especially, community detection) increasingly
                 benefits from combining social relationships with
                 geographic preferences. In this regard, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2020:TDE,
  author =       "Yapei Huang and Yun Tian and Zhijie Liu and Xiaowei
                 Jin and Yanan Liu and Shifeng Zhao and Daxin Tian",
  title =        "A Traffic Density Estimation Model Based on
                 Crowdsourcing Privacy Protection",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "46:1--46:18",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391707",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391707",
  abstract =     "Acquiring traffic condition information is of great
                 significance in transportation guidance, urban
                 planning, and route recommendation. To date, traffic
                 density data are generally acquired by road sound
                 analysis, video data analysis, or in-vehicle \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2020:EET,
  author =       "Min Wang and Congyan Lang and Liqian Liang and Songhe
                 Feng and Tao Wang and Yutong Gao",
  title =        "End-to-End Text-to-Image Synthesis with Spatial
                 Constrains",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "47:1--47:19",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3391709",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3391709",
  abstract =     "Although the performance of automatically generating
                 high-resolution realistic images from text descriptions
                 has been significantly boosted, many challenging issues
                 in image synthesis have not been fully investigated,
                 due to shapes variations, viewpoint \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2020:ULT,
  author =       "Guang Wang and Fan Zhang and Huijun Sun and Yang Wang
                 and Desheng Zhang",
  title =        "Understanding the Long-Term Evolution of Electric Taxi
                 Networks: a Longitudinal Measurement Study on Mobility
                 and Charging Patterns",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "48:1--48:27",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3393671",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3393671",
  abstract =     "Due to the ever-growing concerns over air pollution
                 and energy security, more and more cities have started
                 to replace their conventional taxi fleets with electric
                 ones. Even though environmentally friendly, the rapid
                 promotion of electric taxis raises \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2020:DMB,
  author =       "Xiang Zhang and Lina Yao and Chaoran Huang and Tao Gu
                 and Zheng Yang and Yunhao Liu",
  title =        "{DeepKey}: a Multimodal Biometric Authentication
                 System via Deep Decoding Gaits and Brainwaves",
  journal =      j-TIST,
  volume =       "11",
  number =       "4",
  pages =        "49:1--49:24",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3393619",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Jul 8 17:19:20 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/cryptography2020.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3393619",
  abstract =     "Biometric authentication involves various technologies
                 to identify individuals by exploiting their unique,
                 measurable physiological and behavioral
                 characteristics. However, traditional biometric
                 authentication systems (e.g., face recognition, iris,
                 \ldots{}).",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wilson:2020:SUD,
  author =       "Garrett Wilson and Diane J. Cook",
  title =        "A Survey of Unsupervised Deep Domain Adaptation",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "51:1--51:46",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3400066",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3400066",
  abstract =     "Deep learning has produced state-of-the-art results
                 for a variety of tasks. While such approaches for
                 supervised learning have performed well, they assume
                 that training and testing data are drawn from the same
                 distribution, which may not always be the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2020:PPP,
  author =       "Chaochao Chen and Jun Zhou and Bingzhe Wu and Wenjing
                 Fang and Li Wang and Yuan Qi and Xiaolin Zheng",
  title =        "Practical Privacy Preserving {POI} Recommendation",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "52:1--52:20",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3394138",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3394138",
  abstract =     "Point-of-Interest (POI) recommendation has been
                 extensively studied and successfully applied in
                 industry recently. However, most existing approaches
                 build centralized models on the basis of collecting
                 users' data. Both private data and models are held
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Muralidhar:2020:CRT,
  author =       "Nikhil Muralidhar and Anika Tabassum and Liangzhe Chen
                 and Supriya Chinthavali and Naren Ramakrishnan and B.
                 Aditya Prakash",
  title =        "{Cut-n-Reveal}: Time Series Segmentations with
                 Explanations",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "53:1--53:26",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3394118",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3394118",
  abstract =     "Recent hurricane events have caused unprecedented
                 amounts of damage on critical infrastructure systems
                 and have severely threatened our public safety and
                 economic health. The most observable (and severe)
                 impact of these hurricanes is the loss of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2020:MTL,
  author =       "Jizhou Huang and Haifeng Wang and Wei Zhang and Ting
                 Liu",
  title =        "Multi-Task Learning for Entity Recommendation and
                 Document Ranking in {Web} Search",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "54:1--54:24",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3396501",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3396501",
  abstract =     "Entity recommendation, providing users with an
                 improved search experience by proactively recommending
                 related entities to a given query, has become an
                 indispensable feature of today's Web search engine.
                 Existing studies typically only consider the query
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Albaqsami:2020:AHM,
  author =       "Ahmad Albaqsami and Maryam S. Hosseini and Masoomeh
                 Jasemi and Nader Bagherzadeh",
  title =        "Adaptive {HTF-MPR}: an Adaptive Heterogeneous
                 {TensorFlow} Mapper Utilizing {Bayesian} Optimization
                 and Genetic Algorithms",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "55:1--55:25",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3396949",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3396949",
  abstract =     "Deep neural networks are widely used in many
                 artificial intelligence applications. They have
                 demonstrated state-of-the-art accuracy on many
                 artificial intelligence tasks. For this high accuracy
                 to occur, deep neural networks require the right
                 parameter \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2020:SDA,
  author =       "Rui Liu and Runze Liu and Andrea Pugliese and V. S.
                 Subrahmanian",
  title =        "{STARS}: Defending against Sockpuppet-Based Targeted
                 Attacks on Reviewing Systems",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "56:1--56:25",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3397463",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3397463",
  abstract =     "Customers of virtually all online marketplaces rely
                 upon reviews in order to select the product or service
                 they wish to buy. These marketplaces in turn deploy
                 review fraud detection systems so that the integrity of
                 reviews is preserved. A well-known \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2020:DCN,
  author =       "Yuxiang Zhou and Lejian Liao and Yang Gao and Heyan
                 Huang and Xiaochi Wei",
  title =        "A Discriminative Convolutional Neural Network with
                 Context-aware Attention",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "57:1--57:21",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3397464",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3397464",
  abstract =     "Feature representation and feature extraction are two
                 crucial procedures in text mining. Convolutional Neural
                 Networks (CNN) have shown overwhelming success for
                 text-mining tasks, since they are capable of
                 efficiently extracting n -gram features from \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dai:2020:STM,
  author =       "Chenglong Dai and Dechang Pi and Stefanie I. Becker",
  title =        "Shapelet-transformed Multi-channel {EEG} Channel
                 Selection",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "58:1--58:27",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3397850",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3397850",
  abstract =     "This article proposes an approach to select EEG
                 channels based on EEG shapelet transformation, aiming
                 to reduce the setup time and inconvenience for subjects
                 and to improve the applicable performance of
                 Brain-Computer Interfaces (BCIs). In detail, the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yadamjav:2020:QRC,
  author =       "Munkh-Erdene Yadamjav and Zhifeng Bao and Baihua Zheng
                 and Farhana M. Choudhury and Hanan Samet",
  title =        "Querying Recurrent Convoys over Trajectory Data",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "59:1--59:24",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3400730",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3400730",
  abstract =     "Moving objects equipped with location-positioning
                 devices continuously generate a large amount of
                 spatio-temporal trajectory data. An interesting finding
                 over a trajectory stream is a group of objects that are
                 travelling together for a certain period of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tu:2020:LGI,
  author =       "Xiaoguang Tu and Zheng Ma and Jian Zhao and Guodong Du
                 and Mei Xie and Jiashi Feng",
  title =        "Learning Generalizable and Identity-Discriminative
                 Representations for Face Anti-Spoofing",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "60:1--60:19",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3402446",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/cryptography2020.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3402446",
  abstract =     "Face anti-spoofing aims to detect presentation attack
                 to face recognition--based authentication systems. It
                 has drawn growing attention due to the high security
                 demand. The widely adopted CNN-based methods usually
                 well recognize the spoofing faces when \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tian:2020:MGD,
  author =       "Qing Tian and Wenqiang Zhang and Meng Cao and Liping
                 Wang and Songcan Chen and Hujun Yin",
  title =        "Moment-Guided Discriminative Manifold Correlation
                 Learning on Ordinal Data",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "61:1--61:18",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3402445",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3402445",
  abstract =     "Canonical correlation analysis (CCA) is a typical and
                 useful learning paradigm in big data analysis for
                 capturing correlation across multiple views of the same
                 objects. When dealing with data with additional ordinal
                 information, traditional CCA suffers \ldots{}.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yuan:2020:DTS,
  author =       "Kun Yuan and Guannan Liu and Junjie Wu and Hui Xiong",
  title =        "Dancing with {Trump} in the Stock Market: a Deep
                 Information Echoing Model",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "62:1--62:22",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3403578",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3403578",
  abstract =     "It is always deemed crucial to identify the key
                 factors that could have significant impact on the stock
                 market trend. Recently, an interesting phenomenon has
                 emerged that some of President Trump's posts in Twitter
                 can surge into a dominant role on the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Maddalena:2020:MPI,
  author =       "Eddy Maddalena and Luis-Daniel Ib{\'a}{\~n}ez and
                 Elena Simperl",
  title =        "Mapping Points of Interest Through Street View Imagery
                 and Paid Crowdsourcing",
  journal =      j-TIST,
  volume =       "11",
  number =       "5",
  pages =        "63:1--63:28",
  month =        sep,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3403931",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Mon Sep 7 06:54:29 MDT 2020",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3403931",
  abstract =     "We present the Virtual City Explorer (VCE), an online
                 crowdsourcing platform for the collection of rich
                 geotagged information in urban environments. Compared
                 to other volunteered geographic information approaches,
                 which are constrained by the number and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xia:2020:DPP,
  author =       "Tong Xia and Yong Li and Jie Feng and Depeng Jin and
                 Qing Zhang and Hengliang Luo and Qingmin Liao",
  title =        "{DeepApp}: Predicting Personalized Smartphone App
                 Usage via Context-Aware Multi-Task Learning",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "64:1--64:12",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3408325",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3408325",
  abstract =     "Smartphone mobile application (App) usage prediction,
                 i.e., which Apps will be used next, is beneficial for
                 user experience improvement. Through an in-depth
                 analysis on a real-world dataset, we find that App
                 usage is highly spatio-temporally correlated \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zheng:2020:CAD,
  author =       "Zimu Zheng and Jie Pu and Linghui Liu and Dan Wang and
                 Xiangming Mei and Sen Zhang and Quanyu Dai",
  title =        "Contextual Anomaly Detection in Solder Paste
                 Inspection with Multi-Task Learning",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "65:1--65:17",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3383261",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3383261",
  abstract =     "In this article, we study solder paste inspection
                 (SPI), an important stage that is used in the
                 semiconductor manufacturing industry, where abnormal
                 boards should be detected. A highly accurate SPI can
                 substantially reduce human expert involvement, as
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Levy:2020:SLN,
  author =       "Sharon Levy and Wenhan Xiong and Elizabeth Belding and
                 William Yang Wang",
  title =        "{SafeRoute}: Learning to Navigate Streets Safely in an
                 Urban Environment",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "66:1--66:17",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3402818",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3402818",
  abstract =     "Recent studies show that 85\% of women have changed
                 their traveled routes to avoid harassment and assault.
                 Despite this, current mapping tools do not empower
                 users with information to take charge of their personal
                 safety. We propose SafeRoute, a novel \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jan:2020:MEB,
  author =       "Zohaib Md. Jan and Brijesh Verma",
  title =        "Multiple Elimination of Base Classifiers in Ensemble
                 Learning Using Accuracy and Diversity Comparisons",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "67:1--67:17",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3405790",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3405790",
  abstract =     "When generating ensemble classifiers, selecting the
                 best set of classifiers from the base classifier pool
                 is considered a combinatorial problem and an efficient
                 classifier selection methodology must be utilized.
                 Different researchers have used different \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tama:2020:EID,
  author =       "Bayu Adhi Tama and Marco Comuzzi and Jonghyeon Ko",
  title =        "An Empirical Investigation of Different Classifiers,
                 Encoding, and Ensemble Schemes for Next Event
                 Prediction Using Business Process Event Logs",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "68:1--68:34",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3406541",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3406541",
  abstract =     "There is a growing need for empirical benchmarks that
                 support researchers and practitioners in selecting the
                 best machine learning technique for given prediction
                 tasks. In this article, we consider the next event
                 prediction task in business process \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Banerjee:2020:BRB,
  author =       "Debopriyo Banerjee and Krothapalli Sreenivasa Rao and
                 Shamik Sural and Niloy Ganguly",
  title =        "{BOXREC}: Recommending a {Box} of Preferred Outfits in
                 Online Shopping",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "69:1--69:28",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3408890",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3408890",
  abstract =     "Fashionable outfits are generally created by expert
                 fashionistas, who use their creativity and in-depth
                 understanding of fashion to make attractive outfits.
                 Over the past few years, automation of outfit
                 composition has gained much attention from the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2020:LUR,
  author =       "Pan Li and Alexander Tuzhilin",
  title =        "Latent Unexpected Recommendations",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "70:1--70:25",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3404855",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3404855",
  abstract =     "Unexpected recommender system constitutes an important
                 tool to tackle the problem of filter bubbles and user
                 boredom, which aims at providing unexpected and
                 satisfying recommendations to target users at the same
                 time. Previous unexpected recommendation \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Eiras-Franco:2020:FDN,
  author =       "Carlos Eiras-Franco and David Mart{\'\i}nez-Rego and
                 Leslie Kanthan and C{\'e}sar Pi{\~n}eiro and Antonio
                 Bahamonde and Bertha Guijarro-Berdi{\~n}as and Amparo
                 Alonso-Betanzos",
  title =        "Fast Distributed $k$ {NN} Graph Construction Using
                 Auto-tuned Locality-sensitive Hashing",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "71:1--71:18",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3408889",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/hash.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3408889",
  abstract =     "The k -nearest-neighbors ( k NN) graph is a popular
                 and powerful data structure that is used in various
                 areas of Data Science, but the high computational cost
                 of obtaining it hinders its use on large datasets.
                 Approximate solutions have been described in \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2020:JNM,
  author =       "Junwei Li and Le Wu and Richang Hong and Kun Zhang and
                 Yong Ge and Yan Li",
  title =        "A Joint Neural Model for User Behavior Prediction on
                 Social Networking Platforms",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "72:1--72:25",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3406540",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3406540",
  abstract =     "Social networking services provide platforms for users
                 to perform two kinds of behaviors: consumption behavior
                 (e.g., recommending items of interest) and social link
                 behavior (e.g., recommending potential social links).
                 Accurately modeling and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mash:2020:HCC,
  author =       "Moshe Mash and Roy Fairstein and Yoram Bachrach and
                 Kobi Gal and Yair Zick",
  title =        "Human-computer Coalition Formation in Weighted Voting
                 Games",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "73:1--73:20",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3408294",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3408294",
  abstract =     "This article proposes a negotiation game, based on the
                 weighted voting paradigm in cooperative game theory,
                 where agents need to form coalitions and agree on how
                 to share the gains. Despite the prevalence of weighted
                 voting in the real world, there has \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fang:2020:AEC,
  author =       "Xiu Susie Fang and Quan Z. Sheng and Xianzhi Wang and
                 Wei Emma Zhang and Anne H. H. Ngu and Jian Yang",
  title =        "From Appearance to Essence: Comparing Truth Discovery
                 Methods without Using Ground Truth",
  journal =      j-TIST,
  volume =       "11",
  number =       "6",
  pages =        "74:1--74:24",
  month =        nov,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3411749",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:28 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3411749",
  abstract =     "Truth discovery has been widely studied in recent
                 years as a fundamental means for resolving the
                 conflicts in multi-source data. Although many truth
                 discovery methods have been proposed based on different
                 considerations and intuitions, investigations
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Adamczak:2021:SBH,
  author =       "Jens Adamczak and Yashar Deldjoo and Farshad
                 Bakhshandegan Moghaddam and Peter Knees and Gerard-Paul
                 Leyson and Philipp Monreal",
  title =        "Session-based Hotel Recommendations Dataset: As part
                 of the {ACM Recommender System Challenge 2019}",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "1:1--1:20",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3412379",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3412379",
  abstract =     "In 2019, the Recommender Systems Challenge [17] dealt
                 for the first time with a real-world task from the area
                 of e-tourism, namely the recommendation of hotels in
                 booking sessions. In this context, we present the
                 release of a new dataset that we believe \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2021:IFT,
  author =       "Di Jiang and Yongxin Tong and Yuanfeng Song and
                 Xueyang Wu and Weiwei Zhao and Jinhua Peng and
                 Rongzhong Lian and Qian Xu and Qiang Yang",
  title =        "Industrial Federated Topic Modeling",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "2:1--2:22",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3418283",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3418283",
  abstract =     "Probabilistic topic modeling has been applied in a
                 variety of industrial applications. Training a
                 high-quality model usually requires a massive amount of
                 data to provide comprehensive co-occurrence information
                 for the model to learn. However, industrial \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Duan:2021:NMT,
  author =       "Mingxing Duan and Kenli Li and Keqin Li and Qi Tian",
  title =        "A Novel Multi-task Tensor Correlation Neural Network
                 for Facial Attribute Prediction",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "3:1--3:22",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3418285",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3418285",
  abstract =     "Multi-task learning plays an important role in face
                 multi-attribute prediction. At present, most researches
                 excavate the shared information between attributes by
                 sharing all convolutional layers. However, it is not
                 appropriate to treat the low-level and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yan:2021:SWR,
  author =       "Caixia Yan and Xiaojun Chang and Minnan Luo and
                 Qinghua Zheng and Xiaoqin Zhang and Zhihui Li and
                 Feiping Nie",
  title =        "Self-weighted Robust {LDA} for Multiclass
                 Classification with Edge Classes",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "4:1--4:19",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3418284",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3418284",
  abstract =     "Linear discriminant analysis (LDA) is a popular
                 technique to learn the most discriminative features for
                 multi-class classification. A vast majority of existing
                 LDA algorithms are prone to be dominated by the class
                 with very large deviation from the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xuan:2021:BNU,
  author =       "Junyu Xuan and Jie Lu and Guangquan Zhang",
  title =        "{Bayesian} Nonparametric Unsupervised Concept Drift
                 Detection for Data Stream Mining",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "5:1--5:22",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3420034",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3420034",
  abstract =     "Online data stream mining is of great significance in
                 practice because of its ubiquity in many real-world
                 scenarios, especially in the big data era. Traditional
                 data mining algorithms cannot be directly applied to
                 data streams due to (1) the possible \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bouguessa:2021:BBN,
  author =       "Mohamed Bouguessa and Khaled Nouri",
  title =        "{BiNeTClus}: Bipartite Network Community Detection
                 Based on Transactional Clustering",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "6:1--6:26",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3423067",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3423067",
  abstract =     "We investigate the problem of community detection in
                 bipartite networks that are characterized by the
                 presence of two types of nodes such that connections
                 exist only between nodes of different types. While some
                 approaches have been proposed to identify \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Alim:2021:CSC,
  author =       "Adil Alim and Jin-Hee Cho and Feng Chen",
  title =        "{CSL+}: Scalable Collective Subjective Logic under
                 Multidimensional Uncertainty",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "7:1--7:26",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3426193",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3426193",
  abstract =     "Using unreliable information sources generating
                 conflicting evidence may lead to a large uncertainty,
                 which significantly hurts the decision making process.
                 Recently, many approaches have been taken to integrate
                 conflicting data from multiple sources \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lai:2021:DEF,
  author =       "Chih-Te Lai and Cheng-Te Li and Shou-De Lin",
  title =        "Deep Energy Factorization Model for Demographic
                 Prediction",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "8:1--8:16",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3426240",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3426240",
  abstract =     "Demographic information is important for various
                 commercial and academic proposes, but in reality, few
                 of these data are accessible for analysis and research.
                 To solve this problem, several studies predict
                 demographic attributes from users' behavioral
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2021:DLT,
  author =       "Shuo Liu and Mingliang Gao and Vijay John and Zheng
                 Liu and Erik Blasch",
  title =        "Deep Learning Thermal Image Translation for Night
                 Vision Perception",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "9:1--9:18",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3426239",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3426239",
  abstract =     "Context enhancement is critical for the environmental
                 perception in night vision applications, especially for
                 the dark night situation without sufficient
                 illumination. In this article, we propose a thermal
                 image translation method, which can translate
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2021:TRL,
  author =       "Wendi Wu and Yawei Zhao and En Zhu and Xinwang Liu and
                 Xingxing Zhang and Lailong Luo and Shixiong Wang and
                 Jianping Yin",
  title =        "A Theoretical Revisit to Linear Convergence for Saddle
                 Point Problems",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "10:1--10:17",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3420035",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3420035",
  abstract =     "Recently, convex-concave bilinear Saddle Point
                 Problems (SPP) is widely used in lasso problems,
                 Support Vector Machines, game theory, and so on.
                 Previous researches have proposed many methods to solve
                 SPP, and present their convergence rate \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:RLR,
  author =       "Meng-Xiang Wang and Wang-Chien Lee and Tao-Yang Fu and
                 Ge Yu",
  title =        "On Representation Learning for Road Networks",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "11:1--11:27",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3424346",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3424346",
  abstract =     "Informative representation of road networks is
                 essential to a wide variety of applications on
                 intelligent transportation systems. In this article, we
                 design a new learning framework, called Representation
                 Learning for Road Networks (RLRN), which \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2021:UMB,
  author =       "Yiyi Zhou and Rongrong Ji and Jinsong Su and Jiaquan
                 Yao",
  title =        "Uncovering Media Bias via Social Network Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "12:1--12:12",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3422181",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3422181",
  abstract =     "It is known that media outlets, such as CNN and FOX,
                 have intrinsic political bias that is reflected in
                 their news reports. The computational prediction of
                 such bias has broad application prospects. However, the
                 prediction is difficult via directly \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:PAR,
  author =       "Guang Wang and Zhihan Fang and Xiaoyang Xie and Shuai
                 Wang and Huijun Sun and Fan Zhang and Yunhuai Liu and
                 Desheng Zhang",
  title =        "Pricing-aware Real-time Charging Scheduling and
                 Charging Station Expansion for Large-scale Electric
                 Buses",
  journal =      j-TIST,
  volume =       "12",
  number =       "1",
  pages =        "13:1--13:26",
  month =        feb,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3428080",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Feb 23 10:41:29 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3428080",
  abstract =     "We are witnessing a rapid growth of electrified
                 vehicles due to the ever-increasing concerns on urban
                 air quality and energy security. Compared to other
                 types of electric vehicles, electric buses have not yet
                 been prevailingly adopted worldwide due to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Guo:2021:CTG,
  author =       "Bin Guo and Hao Wang and Yasan Ding and Wei Wu and
                 Shaoyang Hao and Yueqi Sun and Zhiwen Yu",
  title =        "Conditional Text Generation for Harmonious
                 Human-Machine Interaction",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "14:1--14:50",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3439816",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3439816",
  abstract =     "In recent years, with the development of deep
                 learning, text-generation technology has undergone
                 great changes and provided many kinds of services for
                 human beings, such as restaurant reservation and daily
                 communication. The automatically generated text
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Firdaus:2021:AAR,
  author =       "Mauajama Firdaus and Nidhi Thakur and Asif Ekbal",
  title =        "Aspect-Aware Response Generation for Multimodal
                 Dialogue System",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "15:1--15:33",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3430752",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3430752",
  abstract =     "Multimodality in dialogue systems has opened up new
                 frontiers for the creation of robust conversational
                 agents. Any multimodal system aims at bridging the gap
                 between language and vision by leveraging diverse and
                 often complementary information from \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Baek:2021:RMR,
  author =       "Yoonji Baek and Unil Yun and Heonho Kim and Hyoju Nam
                 and Hyunsoo Kim and Jerry Chun-Wei Lin and Bay Vo and
                 Witold Pedrycz",
  title =        "{RHUPS}: Mining Recent High Utility Patterns with
                 Sliding Window-based Arrival Time Control over Data
                 Streams",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "16:1--16:27",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3430767",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3430767",
  abstract =     "Databases that deal with the real world have various
                 characteristics. New data is continuously inserted over
                 time without limiting the length of the database, and a
                 variety of information about the items constituting the
                 database is contained. Recently \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Winter:2021:CBS,
  author =       "Felix Winter and Nysret Musliu",
  title =        "Constraint-based Scheduling for Paint Shops in the
                 Automotive Supply Industry",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "17:1--17:25",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3430710",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3430710",
  abstract =     "Factories in the automotive supply industry paint a
                 large number of items requested by car manufacturing
                 companies on a daily basis. As these factories face
                 numerous constraints and optimization objectives,
                 finding a good schedule becomes a challenging
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dahmen:2021:ISA,
  author =       "Jessamyn Dahmen and Diane J. Cook",
  title =        "Indirectly Supervised Anomaly Detection of Clinically
                 Meaningful Health Events from Smart Home Data",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "18:1--18:18",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3439870",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3439870",
  abstract =     "Anomaly detection techniques can extract a wealth of
                 information about unusual events. Unfortunately, these
                 methods yield an abundance of findings that are not of
                 interest, obscuring relevant anomalies. In this work,
                 we improve upon traditional anomaly \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mansoury:2021:FBP,
  author =       "Masoud Mansoury and Robin Burke and Bamshad Mobasher",
  title =        "Flatter Is Better: Percentile Transformations for
                 Recommender Systems",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "19:1--19:16",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3437910",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3437910",
  abstract =     "It is well known that explicit user ratings in
                 recommender systems are biased toward high ratings and
                 that users differ significantly in their usage of the
                 rating scale. Implementers usually compensate for these
                 issues through rating normalization or \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cui:2021:DIR,
  author =       "Zeyu Cui and Feng Yu and Shu Wu and Qiang Liu and
                 Liang Wang",
  title =        "Disentangled Item Representation for Recommender
                 Systems",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "20:1--20:20",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3445811",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3445811",
  abstract =     "Item representations in recommendation systems are
                 expected to reveal the properties of items.
                 Collaborative recommender methods usually represent an
                 item as one single latent vector. Nowadays the
                 e-commercial platforms provide various kinds of
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ali:2021:PAN,
  author =       "Sarwan Ali and Muhammad Haroon Shakeel and Imdadullah
                 Khan and Safiullah Faizullah and Muhammad Asad Khan",
  title =        "Predicting Attributes of Nodes Using Network
                 Structure",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "21:1--21:23",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3442390",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3442390",
  abstract =     "In many graphs such as social networks, nodes have
                 associated attributes representing their behavior.
                 Predicting node attributes in such graphs is an
                 important task with applications in many domains like
                 recommendation systems, privacy preservation, and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mao:2021:FGB,
  author =       "Jiali Mao and Jiaye Liu and Cheqing Jin and Aoying
                 Zhou",
  title =        "Feature Grouping-based Trajectory Outlier Detection
                 over Distributed Streams",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "22:1--22:23",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3444753",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3444753",
  abstract =     "Owing to a wide variety of deployment of GPS -enabled
                 devices, tremendous amounts of trajectories have been
                 generated in distributed stream manner. It opens up new
                 opportunities to track and analyze the moving behaviors
                 of the entities. In this work, we \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2021:CMT,
  author =       "Zijian Li and Ruichu Cai and Hong Wei Ng and Marianne
                 Winslett and Tom Z. J. Fu and Boyan Xu and Xiaoyan Yang
                 and Zhenjie Zhang",
  title =        "Causal Mechanism Transfer Network for Time Series
                 Domain Adaptation in Mechanical Systems",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "23:1--23:21",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3445033",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3445033",
  abstract =     "Data-driven models are becoming essential parts in
                 modern mechanical systems, commonly used to capture the
                 behavior of various equipment and varying environmental
                 characteristics. Despite the advantages of these
                 data-driven models on excellent \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bashar:2021:ALE,
  author =       "Md Abul Bashar and Richi Nayak",
  title =        "Active Learning for Effectively Fine-Tuning Transfer
                 Learning to Downstream Task",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "24:1--24:24",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3446343",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3446343",
  abstract =     "Language model (LM) has become a common method of
                 transfer learning in Natural Language Processing (NLP)
                 tasks when working with small labeled datasets. An LM
                 is pretrained using an easily available large
                 unlabelled text corpus and is fine-tuned with
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2021:DPB,
  author =       "Jianguo Chen and Kenli Li and Keqin Li and Philip S.
                 Yu and Zeng Zeng",
  title =        "Dynamic Planning of Bicycle Stations in Dockless
                 Public Bicycle-sharing System Using Gated Graph Neural
                 Network",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "25:1--25:22",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3446342",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3446342",
  abstract =     "Benefiting from convenient cycling and flexible
                 parking locations, the Dockless Public Bicycle-sharing
                 (DL-PBS) network becomes increasingly popular in many
                 countries. However, redundant and low-utility stations
                 waste public urban space and maintenance \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2021:AEA,
  author =       "Qianli Zhou and Tianrui Hui and Rong Wang and Haimiao
                 Hu and Si Liu",
  title =        "Attentive Excitation and Aggregation for Bilingual
                 Referring Image Segmentation",
  journal =      j-TIST,
  volume =       "12",
  number =       "2",
  pages =        "26:1--26:17",
  month =        mar,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3446345",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed Mar 17 08:23:18 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3446345",
  abstract =     "The goal of referring image segmentation is to
                 identify the object matched with an input natural
                 language expression. Previous methods only support
                 English descriptions, whereas Chinese is also broadly
                 used around the world, which limits the potential
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cui:2021:MMV,
  author =       "Wanqiu Cui and Junping Du and Dawei Wang and Feifei
                 Kou and Zhe Xue",
  title =        "{MVGAN}: Multi-View Graph Attention Network for Social
                 Event Detection",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "27:1--27:24",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447270",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447270",
  abstract =     "Social networks are critical sources for event
                 detection thanks to the characteristics of publicity
                 and dissemination. Unfortunately, the randomness and
                 semantic sparsity of the social network text bring
                 significant challenges to the event detection task.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2021:MTA,
  author =       "Yan Liu and Bin Guo and Daqing Zhang and Djamal
                 Zeghlache and Jingmin Chen and Sizhe Zhang and Dan Zhou
                 and Xinlei Shi and Zhiwen Yu",
  title =        "{MetaStore}: a Task-adaptative Meta-learning Model for
                 Optimal Store Placement with Multi-city Knowledge
                 Transfer",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "28:1--28:23",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447271",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447271",
  abstract =     "Optimal store placement aims to identify the optimal
                 location for a new brick-and-mortar store that can
                 maximize its sale by analyzing and mining users'
                 preferences from large-scale urban data. In recent
                 years, the expansion of chain enterprises in new
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bhatia:2021:ISG,
  author =       "Munish Bhatia",
  title =        "Intelligent System of Game-Theory-Based Decision
                 Making in Smart Sports Industry",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "29:1--29:23",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447986",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447986",
  abstract =     "Internet of Things (IoT) technology backed by
                 Artificial Intelligence (AI) techniques has been
                 increasingly utilized for the realization of the
                 Industry 4.0 vision. Conspicuously, this work provides
                 a novel notion of the smart sports industry for
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2021:GCE,
  author =       "Di Jiang and Conghui Tan and Jinhua Peng and Chaotao
                 Chen and Xueyang Wu and Weiwei Zhao and Yuanfeng Song
                 and Yongxin Tong and Chang Liu and Qian Xu and Qiang
                 Yang and Li Deng",
  title =        "A {GDPR}-compliant Ecosystem for Speech Recognition
                 with Transfer, Federated, and Evolutionary Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "30:1--30:19",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447687",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447687",
  abstract =     "Automatic Speech Recognition (ASR) is playing a vital
                 role in a wide range of real-world applications.
                 However, Commercial ASR solutions are typically
                 ``one-size-fits-all'' products and clients are
                 inevitably faced with the risk of severe performance
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Elmadany:2021:IAR,
  author =       "Nour Eldin Elmadany and Yifeng He and Ling Guan",
  title =        "Improving Action Recognition via Temporal and
                 Complementary Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "31:1--31:24",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447686",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447686",
  abstract =     "In this article, we study the problem of video-based
                 action recognition. We improve the action recognition
                 performance by finding an effective temporal and
                 appearance representation. For capturing the temporal
                 representation, we introduce two temporal \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shi:2021:GGT,
  author =       "Yukai Shi and Sen Zhang and Chenxing Zhou and Xiaodan
                 Liang and Xiaojun Yang and Liang Lin",
  title =        "{GTAE}: Graph Transformer-Based Auto-Encoders for
                 Linguistic-Constrained Text Style Transfer",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "32:1--32:16",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3448733",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3448733",
  abstract =     "Non-parallel text style transfer has attracted
                 increasing research interests in recent years. Despite
                 successes in transferring the style based on the
                 encoder-decoder framework, current approaches still
                 lack the ability to preserve the content and even
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yin:2021:IFR,
  author =       "Chunyong Yin and Haoqi Cuan and Yuhang Zhu and Zhichao
                 Yin",
  title =        "Improved Fake Reviews Detection Model Based on
                 Vertical Ensemble Tri-Training and Active Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "33:1--33:19",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3450285",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3450285",
  abstract =     "People's increasingly frequent online activity has
                 generated a large number of reviews, whereas fake
                 reviews can mislead users and harm their personal
                 interests. In addition, it is not feasible to label
                 reviews on a large scale because of the high cost of
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2021:VQB,
  author =       "Amulya Gupta and Zhu Zhang",
  title =        "Vector-Quantization-Based Topic Modeling",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "34:1--34:30",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3450946",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3450946",
  abstract =     "With the purpose of learning and utilizing explicit
                 and dense topic embeddings, we propose three variations
                 of novel vector-quantization-based topic models
                 (VQ-TMs): (1) Hard VQ-TM, (2) Soft VQ-TM, and (3)
                 Multi-View Soft VQ-TM. The model family \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2021:PPC,
  author =       "Shilei Li and Meng Li and Jiongming Su and Shaofei
                 Chen and Zhimin Yuan and Qing Ye",
  title =        "{PP-PG}: Combining Parameter Perturbation with Policy
                 Gradient Methods for Effective and Efficient
                 Explorations in Deep Reinforcement Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "35:1--35:21",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3452008",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3452008",
  abstract =     "Efficient and stable exploration remains a key
                 challenge for deep reinforcement learning (DRL)
                 operating in high-dimensional action and state spaces.
                 Recently, a more promising approach by combining the
                 exploration in the action space with the exploration
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hong:2021:SRI,
  author =       "Thanh Phuoc Hong and Ling Guan",
  title =        "A Scale and Rotational Invariant Key-point Detector
                 based on Sparse Coding",
  journal =      j-TIST,
  volume =       "12",
  number =       "3",
  pages =        "36:1--36:19",
  month =        jul,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3452009",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jul 22 08:10:42 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3452009",
  abstract =     "Most popular hand-crafted key-point detectors such as
                 Harris corner, SIFT, SURF aim to detect corners, blobs,
                 junctions, or other human-defined structures in images.
                 Though being robust with some geometric
                 transformations, unintended scenarios or non-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xia:2021:CSK,
  author =       "Zhenchang Xia and Jia Wu and Libing Wu and Yanjiao
                 Chen and Jian Yang and Philip S. Yu",
  title =        "A Comprehensive Survey of the Key Technologies and
                 Challenges Surrounding Vehicular Ad Hoc Networks",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "37:1--37:30",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3451984",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3451984",
  abstract =     "Vehicular ad hoc networks (VANETs) and the services
                 they support are an essential part of intelligent
                 transportation. Through physical technologies,
                 applications, protocols, and standards, they help to
                 ensure traffic moves efficiently and vehicles operate
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tian:2021:CIG,
  author =       "Jiajie Tian and Qihao Tang and Rui Li and Zhu Teng and
                 Baopeng Zhang and Jianping Fan",
  title =        "A Camera Identity-guided Distribution Consistency
                 Method for Unsupervised Multi-target Domain Person
                 Re-identification",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "38:1--38:18",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3454130",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3454130",
  abstract =     "Unsupervised domain adaptation (UDA) for person
                 re-identification (re-ID) is a challenging task due to
                 large variations in human classes, illuminations,
                 camera views, and so on. Currently, existing UDA
                 methods focus on two-domain adaptation and are
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:LMU,
  author =       "Huandong Wang and Yong Li and Gang Wang and Depeng
                 Jin",
  title =        "Linking Multiple User Identities of Multiple Services
                 from Massive Mobility Traces",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "39:1--39:28",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3439817",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3439817",
  abstract =     "Understanding the linkability of online user
                 identifiers (IDs) is critical to both service providers
                 (for business intelligence) and individual users (for
                 assessing privacy risks). Existing methods are designed
                 to match IDs across two services but face \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shen:2021:MMK,
  author =       "Xiangjun Shen and Kou Lu and Sumet Mehta and Jianming
                 Zhang and Weifeng Liu and Jianping Fan and Zhengjun
                 Zha",
  title =        "{MKEL}: Multiple Kernel Ensemble Learning via Unified
                 Ensemble Loss for Image Classification",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "40:1--40:21",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3457217",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3457217",
  abstract =     "In this article, a novel ensemble model, called
                 Multiple Kernel Ensemble Learning (MKEL), is developed
                 by introducing a unified ensemble loss. Different from
                 the previous multiple kernel learning (MKL) methods,
                 which attempt to seek a linear combination \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sun:2021:VIV,
  author =       "Guodao Sun and Hao Wu and Lin Zhu and Chaoqing Xu and
                 Haoran Liang and Binwei Xu and Ronghua Liang",
  title =        "{VSumVis}: Interactive Visual Understanding and
                 Diagnosis of Video Summarization Model",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "41:1--41:28",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3458928",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3458928",
  abstract =     "With the rapid development of mobile Internet, the
                 popularity of video capture devices has brought a surge
                 in multimedia video resources. Utilizing machine
                 learning methods combined with well-designed features,
                 we could automatically obtain video \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:MCB,
  author =       "Daheng Wang and Qingkai Zeng and Nitesh V. Chawla and
                 Meng Jiang",
  title =        "Modeling Complementarity in Behavior Data with
                 Multi-Type Itemset Embedding",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "42:1--42:25",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3458724",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3458724",
  abstract =     "People are looking for complementary contexts, such as
                 team members of complementary skills for project team
                 building and/or reading materials of complementary
                 knowledge for effective student learning, to make their
                 behaviors more likely to be successful. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2021:SHF,
  author =       "Anbu Huang and Yang Liu and Tianjian Chen and Yongkai
                 Zhou and Quan Sun and Hongfeng Chai and Qiang Yang",
  title =        "{StarFL}: Hybrid Federated Learning Architecture for
                 Smart Urban Computing",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "43:1--43:23",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3467956",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3467956",
  abstract =     "From facial recognition to autonomous driving,
                 Artificial Intelligence (AI) will transform the way we
                 live and work over the next couple of decades. Existing
                 AI approaches for urban computing suffer from various
                 challenges, including dealing with \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Abhadiomhen:2021:MCS,
  author =       "Stanley Ebhohimhen Abhadiomhen and Zhiyang Wang and
                 Xiangjun Shen and Jianping Fan",
  title =        "Multiview Common Subspace Clustering via Coupled Low
                 Rank Representation",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "44:1--44:25",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465056",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465056",
  abstract =     "Multi-view subspace clustering (MVSC) finds a shared
                 structure in latent low-dimensional subspaces of
                 multi-view data to enhance clustering performance.
                 Nonetheless, we observe that most existing MVSC methods
                 neglect the diversity in multi-view data by \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Aydogan:2021:NVB,
  author =       "Reyhan Aydogan and {\"O}zg{\"u}r Kafali and Furkan
                 Arslan and Catholijn M. Jonker and Munindar P. Singh",
  title =        "Nova: Value-based Negotiation of Norms",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "45:1--45:29",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465054",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465054",
  abstract =     "Specifying a normative multiagent system (nMAS) is
                 challenging, because different agents often have
                 conflicting requirements. Whereas existing approaches
                 can resolve clear-cut conflicts, tradeoffs might occur
                 in practice among alternative nMAS \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bozzano:2021:CAB,
  author =       "Marco Bozzano and Alessandro Cimatti and Marco
                 Roveri",
  title =        "A Comprehensive Approach to On-board Autonomy
                 Verification and Validation",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "46:1--46:29",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3472715",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3472715",
  abstract =     "Deep space missions are characterized by severely
                 constrained communication links. To meet the needs of
                 future missions and increase their scientific return,
                 future space systems will require an increased level of
                 autonomy on-board. In this work, we \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tajeuna:2021:MCC,
  author =       "Etienne Gael Tajeuna and Mohamed Bouguessa and
                 Shengrui Wang",
  title =        "Mining Customers' Changeable Electricity Consumption
                 for Effective Load Forecasting",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "47:1--47:26",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466684",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466684",
  abstract =     "Most existing approaches for electricity load
                 forecasting perform the task based on overall
                 electricity consumption. However, using such a global
                 methodology can affect load forecasting accuracy, as it
                 does not consider the possibility that customers'
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fu:2021:MCE,
  author =       "Teng Fu and Guido Zampieri and David Hodgson and
                 Claudio Angione and Yifeng Zeng",
  title =        "Modeling Customer Experience in a Contact Center
                 through Process Log Mining",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "48:1--48:21",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3468269",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3468269",
  abstract =     "The use of data mining and modeling methods in service
                 industry is a promising avenue for optimizing current
                 processes in a targeted manner, ultimately reducing
                 costs and improving customer experience. However, the
                 introduction of such tools in already \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Khezerlou:2021:DPU,
  author =       "Amin Vahedian Khezerlou and Xun Zhou and Xinyi Li and
                 W. Nick Street and Yanhua Li",
  title =        "{DILSA+}: Predicting Urban Dispersal Events through
                 Deep Survival Analysis with Enhanced Urban Features",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "49:1--49:25",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469085",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469085",
  abstract =     "Urban dispersal events occur when an unexpectedly
                 large number of people leave an area in a relatively
                 short period of time. It is beneficial for the city
                 authorities, such as law enforcement and city
                 management, to have an advance knowledge of such
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hou:2021:TTL,
  author =       "Chenyu Hou and Bin Cao and Sijie Ruan and Jing Fan",
  title =        "{TLDS}: a Transfer-Learning-Based Delivery Station
                 Location Selection Pipeline",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "50:1--50:24",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469084",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469084",
  abstract =     "Delivery stations play important roles in logistics
                 systems. Well-designed delivery station planning can
                 improve delivery efficiency significantly. However,
                 existing delivery station locations are decided by
                 experts, which requires much preliminary \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhao:2021:PCL,
  author =       "Qi Zhao and Chuqiao Chen and Guangcan Liu and Qingshan
                 Liu and Shengyong Chen",
  title =        "Parallel Connected {LSTM} for Matrix Sequence
                 Prediction with Elusive Correlations",
  journal =      j-TIST,
  volume =       "12",
  number =       "4",
  pages =        "51:1--51:16",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469437",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 28 07:23:27 MDT 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469437",
  abstract =     "This article is about a challenging problem called
                 matrix sequence prediction, which is motivated from the
                 application of taxi order prediction. Remarkably, the
                 problem differs greatly from previous sequence
                 prediction tasks in the sense that the time-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yuan:2021:MGC,
  author =       "Changsen Yuan and Heyan Huang and Chong Feng",
  title =        "Multi-Graph Cooperative Learning Towards Distant
                 Supervised Relation Extraction",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "52:1--52:21",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466560",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466560",
  abstract =     "The Graph Convolutional Network (GCN) is a universal
                 relation extraction method that can predict relations
                 of entity pairs by capturing sentences' syntactic
                 features. However, existing GCN methods often use
                 dependency parsing to generate graph matrices
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chaudhari:2021:ASA,
  author =       "Sneha Chaudhari and Varun Mithal and Gungor Polatkan
                 and Rohan Ramanath",
  title =        "An Attentive Survey of Attention Models",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "53:1--53:32",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465055",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465055",
  abstract =     "Attention Model has now become an important concept in
                 neural networks that has been researched within diverse
                 application domains. This survey provides a structured
                 and comprehensive overview of the developments in
                 modeling attention. In particular, we \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2021:BSB,
  author =       "Qiong Wu and Adam Hare and Sirui Wang and Yuwei Tu and
                 Zhenming Liu and Christopher G. Brinton and Yanhua Li",
  title =        "{BATS}: a Spectral Biclustering Approach to Single
                 Document Topic Modeling and Segmentation",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "54:1--54:29",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3468268",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3468268",
  abstract =     "Existing topic modeling and text segmentation
                 methodologies generally require large datasets for
                 training, limiting their capabilities when only small
                 collections of text are available. In this work, we
                 reexamine the inter-related problems of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhu:2021:CLG,
  author =       "Yisheng Zhu and Hu Han and Guangcan Liu and Qingshan
                 Liu",
  title =        "Collaborative Local-Global Learning for Temporal
                 Action Proposal",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "55:1--55:14",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466181",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466181",
  abstract =     "Temporal action proposal generation is an essential
                 and challenging task in video understanding, which aims
                 to locate the temporal intervals that likely contain
                 the actions of interest. Although great progress has
                 been made, the problem is still far from \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2021:QAE,
  author =       "Congliang Chen and Li Shen and Haozhi Huang and Wei
                 Liu",
  title =        "Quantized {Adam} with Error Feedback",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "56:1--56:26",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3470890",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3470890",
  abstract =     "In this article, we present a distributed variant of
                 an adaptive stochastic gradient method for training
                 deep neural networks in the parameter-server model. To
                 reduce the communication cost among the workers and
                 server, we incorporate two types of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Guo:2021:DDH,
  author =       "Jinjin Guo and Zhiguo Gong and Longbing Cao",
  title =        "{dhCM}: Dynamic and Hierarchical Event Categorization
                 and Discovery for Social Media Stream",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "57:1--57:25",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3470888",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3470888",
  abstract =     "The online event discovery in social media based
                 documents is useful, such as for disaster recognition
                 and intervention. However, the diverse events
                 incrementally identified from social media streams
                 remain accumulated, ad hoc, and unstructured. They
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cheng:2021:SNF,
  author =       "Yuan Cheng and Yuchao Yang and Hai-Bao Chen and Ngai
                 Wong and Hao Yu",
  title =        "{S3-Net}: a Fast Scene Understanding Network by
                 Single-Shot Segmentation for Autonomous Driving",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "58:1--58:19",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3470660",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3470660",
  abstract =     "Real-time segmentation and understanding of driving
                 scenes are crucial in autonomous driving. Traditional
                 pixel-wise approaches extract scene information by
                 segmenting all pixels in a frame, and hence are
                 inefficient and slow. Proposal-wise approaches
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hu:2021:IID,
  author =       "Chuanbo Hu and Minglei Yin and Bin Liu and Xin Li and
                 Yanfang Ye",
  title =        "Identifying Illicit Drug Dealers on {Instagram} with
                 Large-scale Multimodal Data Fusion",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "59:1--59:23",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3472713",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3472713",
  abstract =     "Illicit drug trafficking via social media sites such
                 as Instagram have become a severe problem, thus drawing
                 a great deal of attention from law enforcement and
                 public health agencies. How to identify illicit drug
                 dealers from social media data has \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:FGS,
  author =       "Min Wang and Congyan Lang and Liqian Liang and Songhe
                 Feng and Tao Wang and Yutong Gao",
  title =        "Fine-Grained Semantic Image Synthesis with
                 Object-Attention Generative Adversarial Network",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "60:1--60:18",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3470008",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3470008",
  abstract =     "Semantic image synthesis is a new rising and
                 challenging vision problem accompanied by the recent
                 promising advances in generative adversarial networks.
                 The existing semantic image synthesis methods only
                 consider the global information provided by the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ji:2021:LGE,
  author =       "Shengwei Ji and Chenyang Bu and Lei Li and Xindong
                 Wu",
  title =        "Local Graph Edge Partitioning",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "61:1--61:25",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466685",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466685",
  abstract =     "Graph edge partitioning, which is essential for the
                 efficiency of distributed graph computation systems,
                 divides a graph into several balanced partitions within
                 a given size to minimize the number of vertices to be
                 cut. Existing graph partitioning models \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xie:2021:SDS,
  author =       "Yiqun Xie and Xiaowei Jia and Shashi Shekhar and Han
                 Bao and Xun Zhou",
  title =        "Significant {DBSCAN+}: Statistically Robust
                 Density-based Clustering",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "62:1--62:26",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3474842",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3474842",
  abstract =     "Cluster detection is important and widely used in a
                 variety of applications, including public health,
                 public safety, transportation, and so on. Given a
                 collection of data points, we aim to detect
                 density-connected spatial clusters with varying
                 geometric \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2021:NED,
  author =       "Xingjian Li and Haoyi Xiong and Zeyu Chen and Jun Huan
                 and Cheng-Zhong Xu and Dejing Dou",
  title =        "{``In-Network Ensemble''}: Deep Ensemble Learning with
                 Diversified Knowledge Distillation",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "63:1--63:19",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3473464",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3473464",
  abstract =     "Ensemble learning is a widely used technique to train
                 deep convolutional neural networks (CNNs) for improved
                 robustness and accuracy. While existing algorithms
                 usually first train multiple diversified networks and
                 then assemble these networks as an \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dutta:2021:DAC,
  author =       "Hridoy Sankar Dutta and Mayank Jobanputra and Himani
                 Negi and Tanmoy Chakraborty",
  title =        "Detecting and Analyzing Collusive Entities on
                 {YouTube}",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "64:1--64:28",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3477300",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3477300",
  abstract =     "YouTube sells advertisements on the posted videos,
                 which in turn enables the content creators to monetize
                 their videos. As an unintended consequence, this has
                 proliferated various illegal activities such as
                 artificial boosting of views, likes, comments,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:CSG,
  author =       "Yu Wang and Yuelin Wang and Kai Dang and Jie Liu and
                 Zhuo Liu",
  title =        "A Comprehensive Survey of Grammatical Error
                 Correction",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "65:1--65:51",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3474840",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/spell.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3474840",
  abstract =     "Grammatical error correction (GEC) is an important
                 application aspect of natural language processing
                 techniques, and GEC system is a kind of very important
                 intelligent system that has long been explored both in
                 academic and industrial communities. The past decade
                 has witnessed significant progress achieved in GEC for
                 the sake of increasing popularity of machine learning
                 and deep learning. However, there is not a survey that
                 untangles the large amount of research works and
                 progress in this field. We present the first survey in
                 GEC for a comprehensive retrospective of the literature
                 in this area. We first give the definition of GEC task
                 and introduce the public datasets and data annotation
                 schema. After that, we discuss six kinds of basic
                 approaches, six commonly applied performance boosting
                 techniques for GEC systems, and three data augmentation
                 methods. Since GEC is typically viewed as a sister task
                 of Machine Translation (MT), we put more emphasis on
                 the statistical machine translation (SMT)-based
                 approaches and neural machine translation (NMT)-based
                 approaches for the sake of their importance. Similarly,
                 some performance-boosting techniques are adapted from
                 MT and are successfully combined with GEC systems for
                 enhancement on the final performance. More importantly,
                 after the introduction of the evaluation in GEC, we
                 make an in-depth analysis based on empirical results in
                 aspects of GEC approaches and GEC systems for a clearer
                 pattern of progress in GEC, where error type analysis
                 and system recapitulation are clearly presented.
                 Finally, we discuss five prospective directions for
                 future GEC researches.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Koutroulis:2021:KCC,
  author =       "Georgios Koutroulis and Leo Botler and Belgin Mutlu
                 and Konrad Diwold and Kay R{\"o}mer and Roman Kern",
  title =        "{KOMPOS}: Connecting Causal Knots in Large Nonlinear
                 Time Series with Non-Parametric Regression Splines",
  journal =      j-TIST,
  volume =       "12",
  number =       "5",
  pages =        "66:1--66:27",
  month =        oct,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3480971",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:08 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3480971",
  abstract =     "Recovering causality from copious time series data
                 beyond mere correlations has been an important
                 contributing factor in numerous scientific fields. Most
                 existing works assume linearity in the data that may
                 not comply with many real-world scenarios. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2021:ATS,
  author =       "Senzhang Wang and Junbo Zhang and Yanjie Fu and Yong
                 Li",
  title =        "{ACM TIST} Special Issue on Deep Learning for
                 Spatio-Temporal Data: {Part 1}",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "67:1--67:3",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495188",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495188",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2021:THG,
  author =       "Ling Huang and Xing-Xing Liu and Shu-Qiang Huang and
                 Chang-Dong Wang and Wei Tu and Jia-Meng Xie and Shuai
                 Tang and Wendi Xie",
  title =        "Temporal Hierarchical Graph Attention Network for
                 Traffic Prediction",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "68:1--68:21",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3446430",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3446430",
  abstract =     "As a critical task in intelligent traffic systems,
                 traffic prediction has received a large amount of
                 attention in the past few decades. The early efforts
                 mainly model traffic prediction as the time-series
                 mining problem, in which the spatial dependence
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2021:PEL,
  author =       "Haoyi Zhou and Hao Peng and Jieqi Peng and Shuai Zhang
                 and Jianxin Li",
  title =        "{POLLA}: Enhancing the Local Structure Awareness in
                 Long Sequence Spatial-temporal Modeling",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "69:1--69:24",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447987",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447987",
  abstract =     "The spatial-temporal modeling on long sequences is of
                 great importance in many real-world applications.
                 Recent studies have shown the potential of applying the
                 self-attention mechanism to improve capturing the
                 complex spatial-temporal dependencies. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Qiao:2021:DCN,
  author =       "Shaojie Qiao and Nan Han and Jianbin Huang and Kun Yue
                 and Rui Mao and Hongping Shu and Qiang He and Xindong
                 Wu",
  title =        "A Dynamic Convolutional Neural Network Based
                 Shared-Bike Demand Forecasting Model",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "70:1--70:24",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447988",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447988",
  abstract =     "Bike-sharing systems are becoming popular and generate
                 a large volume of trajectory data. In a bike-sharing
                 system, users can borrow and return bikes at different
                 stations. In particular, a bike-sharing system will be
                 affected by weather, the time period, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dharejo:2021:TGT,
  author =       "Fayaz Ali Dharejo and Farah Deeba and Yuanchun Zhou
                 and Bhagwan Das and Munsif Ali Jatoi and Muhammad
                 Zawish and Yi Du and Xuezhi Wang",
  title =        "{TWIST-GAN}: Towards Wavelet Transform and Transferred
                 {GAN} for Spatio-Temporal Single Image Super
                 Resolution",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "71:1--71:20",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3456726",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3456726",
  abstract =     "Single Image Super-resolution (SISR) produces
                 high-resolution images with fine spatial resolutions
                 from a remotely sensed image with low spatial
                 resolution. Recently, deep learning and generative
                 adversarial networks (GANs) have made breakthroughs for
                 the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{He:2021:TNF,
  author =       "Yifan He and Zhao Li and Lei Fu and Anhui Wang and
                 Peng Zhang and Shuigeng Zhou and Ji Zhang and Ting Yu",
  title =        "{TARA-Net}: a Fusion Network for Detecting Takeaway
                 Rider Accidents",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "72:1--72:19",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3457218",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3457218",
  abstract =     "In the emerging business of food delivery, rider
                 traffic accidents raise financial cost and social
                 traffic burden. Although there has been much effort on
                 traffic accident forecasting using temporal-spatial
                 prediction models, none of the existing work \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dai:2021:PPT,
  author =       "Tianlun Dai and Bohan Li and Ziqiang Yu and Xiangrong
                 Tong and Meng Chen and Gang Chen",
  title =        "{PARP}: a Parallel Traffic Condition Driven Route
                 Planning Model on Dynamic Road Networks",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "73:1--73:24",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3459099",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3459099",
  abstract =     "The problem of route planning on road network is
                 essential to many Location-Based Services (LBSs). Road
                 networks are dynamic in the sense that the weights of
                 the edges in the corresponding graph constantly change
                 over time, representing evolving traffic \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Guo:2021:ROE,
  author =       "Pengzhan Guo and Keli Xiao and Zeyang Ye and Wei Zhu",
  title =        "Route Optimization via Environment-Aware Deep Network
                 and Reinforcement Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "74:1--74:21",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3461645",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3461645",
  abstract =     "Vehicle mobility optimization in urban areas is a
                 long-standing problem in smart city and spatial data
                 analysis. Given the complex urban scenario and
                 unpredictable social events, our work focuses on
                 developing a mobile sequential recommendation system to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2021:TTA,
  author =       "Jiajie Xu and Saijun Xu and Rui Zhou and Chengfei Liu
                 and An Liu and Lei Zhao",
  title =        "{TAML}: a Traffic-aware Multi-task Learning Model for
                 Estimating Travel Time",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "75:1--75:14",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466686",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466686",
  abstract =     "Travel time estimation has been recognized as an
                 important research topic that can find broad
                 applications. Existing approaches aim to explore
                 mobility patterns via trajectory embedding for travel
                 time estimation. Though state-of-the-art methods
                 utilize \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "75",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2021:SVA,
  author =       "Jayant Gupta and Carl Molnar and Yiqun Xie and Joe
                 Knight and Shashi Shekhar",
  title =        "Spatial Variability Aware Deep Neural Networks
                 {(SVANN)}: a General Approach",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "76:1--76:21",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466688",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466688",
  abstract =     "Spatial variability is a prominent feature of various
                 geographic phenomena such as climatic zones, USDA plant
                 hardiness zones, and terrestrial habitat types (e.g.,
                 forest, grasslands, wetlands, and deserts). However,
                 current deep learning methods follow a \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "76",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tedjopurnomo:2021:STS,
  author =       "David Alexander Tedjopurnomo and Xiucheng Li and
                 Zhifeng Bao and Gao Cong and Farhana Choudhury and A.
                 K. Qin",
  title =        "Similar Trajectory Search with Spatio-Temporal Deep
                 Representation Learning",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "77:1--77:26",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466687",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466687",
  abstract =     "Similar trajectory search is a crucial task that
                 facilitates many downstream spatial data analytic
                 applications. Despite its importance, many of the
                 current literature focus solely on the trajectory's
                 spatial similarity while neglecting the temporal
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "77",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tao:2021:PHM,
  author =       "Shuo Tao and Jingang Jiang and Defu Lian and Kai Zheng
                 and Enhong Chen",
  title =        "Predicting Human Mobility with
                 Reinforcement-Learning-Based Long-Term Periodicity
                 Modeling",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "78:1--78:23",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469860",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469860",
  abstract =     "Mobility prediction plays an important role in a wide
                 range of location-based applications and services.
                 However, there are three problems in the existing
                 literature: (1) explicit high-order interactions of
                 spatio-temporal features are not systemically
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "78",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Strohmeier:2021:CFI,
  author =       "Martin Strohmeier and Matthew Smith and Vincent
                 Lenders and Ivan Martinovic",
  title =        "{Classi-Fly}: Inferring Aircraft Categories from Open
                 Data",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "79:1--79:23",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3480969",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3480969",
  abstract =     "In recent years, air traffic communication data has
                 become easy to access, enabling novel research in many
                 fields. Exploiting this new data source, a wide range
                 of applications have emerged, from weather forecasting
                 to stock market prediction, or the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "79",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Qiao:2021:CDC,
  author =       "Jie Qiao and Ruichu Cai and Kun Zhang and Zhenjie
                 Zhang and Zhifeng Hao",
  title =        "Causal Discovery with Confounding Cascade Nonlinear
                 Additive Noise Models",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "80:1--80:28",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3482879",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3482879",
  abstract =     "Identification of causal direction between a
                 causal-effect pair from observed data has recently
                 attracted much attention. Various methods based on
                 functional causal models have been proposed to solve
                 this problem, by assuming the causal process satisfies
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "80",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Notaro:2021:SAM,
  author =       "Paolo Notaro and Jorge Cardoso and Michael Gerndt",
  title =        "A Survey of {AIOps} Methods for Failure Management",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "81:1--81:45",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3483424",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3483424",
  abstract =     "Modern society is increasingly moving toward complex
                 and distributed computing systems. The increase in
                 scale and complexity of these systems challenges O\&M
                 teams that perform daily monitoring and repair
                 operations, in contrast with the increasing demand
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "81",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhao:2021:MSF,
  author =       "Jiaqi Zhao and Yong Zhou and Boyu Shi and Jingsong
                 Yang and Di Zhang and Rui Yao",
  title =        "Multi-Stage Fusion and Multi-Source Attention Network
                 for Multi-Modal Remote Sensing Image Segmentation",
  journal =      j-TIST,
  volume =       "12",
  number =       "6",
  pages =        "82:1--82:20",
  month =        dec,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3484440",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 24 06:30:09 MST 2021",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3484440",
  abstract =     "With the rapid development of sensor technology, lots
                 of remote sensing data have been collected. It
                 effectively obtains good semantic segmentation
                 performance by extracting feature maps based on
                 multi-modal remote sensing images since extra modal
                 data \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "82",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zheng:2022:ISIa,
  author =       "Kai Zheng and Yong Li and Cyrus Shahabi and Hongzhi
                 Yin",
  title =        "Introduction to the Special Issue on Intelligent
                 Trajectory Analytics: {Part I}",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "1:1--1:2",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495230",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495230",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2022:PMP,
  author =       "Yuandong Wang and Hongzhi Yin and Tong Chen and
                 Chunyang Liu and Ben Wang and Tianyu Wo and Jie Xu",
  title =        "Passenger Mobility Prediction via Representation
                 Learning for Dynamic Directed and Weighted Graphs",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "2:1--2:25",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3446344",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3446344",
  abstract =     "In recent years, ride-hailing services have been
                 increasingly prevalent, as they provide huge
                 convenience for passengers. As a fundamental problem,
                 the timely prediction of passenger demands in different
                 regions is vital for effective traffic flow control
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2022:IBD,
  author =       "Wen-Cheng Chen and Wan-Lun Tsai and Huan-Hua Chang and
                 Min-Chun Hu and Wei-Ta Chu",
  title =        "Instant Basketball Defensive Trajectory Generation",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "3:1--3:20",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3460619",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3460619",
  abstract =     "Tactic learning in virtual reality (VR) has been
                 proven to be effective for basketball training. Endowed
                 with the ability of generating virtual defenders in
                 real time according to the movement of virtual
                 offenders controlled by the user, a VR basketball
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2022:CTL,
  author =       "Fan Zhou and Pengyu Wang and Xovee Xu and Wenxin Tai
                 and Goce Trajcevski",
  title =        "Contrastive Trajectory Learning for Tour
                 Recommendation",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "4:1--4:25",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3462331",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3462331",
  abstract =     "The main objective of Personalized Tour Recommendation
                 (PTR) is to generate a sequence of point-of-interest
                 (POIs) for a particular tourist, according to the
                 user-specific constraints such as duration time, start
                 and end points, the number of attractions \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2022:OAL,
  author =       "Meng Chen and Qingjie Liu and Weiming Huang and Teng
                 Zhang and Yixuan Zuo and Xiaohui Yu",
  title =        "Origin-Aware Location Prediction Based on Historical
                 Vehicle Trajectories",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "5:1--5:18",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3462675",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3462675",
  abstract =     "Next location prediction is of great importance for
                 many location-based applications and provides essential
                 intelligence to various businesses. In previous
                 studies, a common approach to next location prediction
                 is to learn the sequential transitions with \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Loffler:2022:DSM,
  author =       "Christoffer L{\"o}ffler and Luca Reeb and Daniel
                 Dzibela and Robert Marzilger and Nicolas Witt and
                 Bj{\"o}rn M. Eskofier and Christopher Mutschler",
  title =        "Deep {Siamese} Metric Learning: a Highly Scalable
                 Approach to Searching Unordered Sets of Trajectories",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "6:1--6:23",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465057",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465057",
  abstract =     "This work proposes metric learning for fast
                 similarity-based scene retrieval of unstructured
                 ensembles of trajectory data from large databases. We
                 present a novel representation learning approach using
                 Siamese Metric Learning that approximates a distance
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sun:2022:PFL,
  author =       "Heli Sun and Xianglan Guo and Zhou Yang and Xuguang
                 Chu and Xinwang Liu and Liang He",
  title =        "Predicting Future Locations with Semantic
                 Trajectories",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "7:1--7:20",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465060",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465060",
  abstract =     "Location prediction has attracted much attention due
                 to its important role in many location-based services,
                 including taxi services, route navigation, traffic
                 planning, and location-based advertisements.
                 Traditional methods only use spatial-temporal
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Luo:2022:LTS,
  author =       "Hui Luo and Zhifeng Bao and Gao Cong and J. Shane
                 Culpepper and Nguyen Lu Dang Khoa",
  title =        "Let Trajectories Speak Out the Traffic Bottlenecks",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "8:1--8:21",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465058",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465058",
  abstract =     "Traffic bottlenecks are a set of road segments that
                 have an unacceptable level of traffic caused by a poor
                 balance between road capacity and traffic volume. A
                 huge volume of trajectory data which captures realtime
                 traffic conditions in road networks \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Niu:2022:ERT,
  author =       "Hongting Niu and Hengshu Zhu and Ying Sun and Xinjiang
                 Lu and Jing Sun and Zhiyuan Zhao and Hui Xiong and Bo
                 Lang",
  title =        "Exploring the Risky Travel Area and Behavior of
                 Car-hailing Service",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "9:1--9:22",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465059",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465059",
  abstract =     "Recent years have witnessed the rapid development of
                 car-hailing services, which provide a convenient
                 approach for connecting passengers and local drivers
                 using their personal vehicles. At the same time, the
                 concern on passenger safety has gradually \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhu:2022:SPC,
  author =       "Yanliang Zhu and Dongchun Ren and Yi Xu and Deheng
                 Qian and Mingyu Fan and Xin Li and Huaxia Xia",
  title =        "Simultaneous Past and Current Social Interaction-aware
                 Trajectory Prediction for Multiple Intelligent Agents
                 in Dynamic Scenes",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "10:1--10:16",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3466182",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3466182",
  abstract =     "Trajectory prediction of multiple agents in a crowded
                 scene is an essential component in many applications,
                 including intelligent monitoring, autonomous robotics,
                 and self-driving cars. Accurate agent trajectory
                 prediction remains a significant challenge \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bi:2022:UBN,
  author =       "Xin Bi and Chao Zhang and Fangtong Wang and Zhixun Liu
                 and Xiangguo Zhao and Ye Yuan and Guoren Wang",
  title =        "An Uncertainty-based Neural Network for Explainable
                 Trajectory Segmentation",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "11:1--11:18",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3467978",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3467978",
  abstract =     "As a variant task of time-series segmentation,
                 trajectory segmentation is a key task in the
                 applications of transportation pattern recognition and
                 traffic analysis. However, segmenting trajectory is
                 faced with challenges of implicit patterns and sparse
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Waniek:2022:HMC,
  author =       "Marcin Waniek and Tomasz P. Michalak and Michael
                 Wooldridge and Talal Rahwan",
  title =        "How Members of Covert Networks Conceal the Identities
                 of Their Leaders",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "12:1--12:29",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3490462",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3490462",
  abstract =     "Centrality measures are the most commonly advocated
                 social network analysis tools for identifying leaders
                 of covert organizations. While the literature has
                 predominantly focused on studying the effectiveness of
                 existing centrality measures or developing \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2022:SAF,
  author =       "Shih-Chia Huang and Quoc-Viet Hoang and Da-Wei Jaw",
  title =        "Self-Adaptive Feature Transformation Networks for
                 Object Detection in low luminance Images",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "13:1--13:11",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3480973",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3480973",
  abstract =     "Despite the recent improvement of object detection
                 techniques, many of them fail to detect objects in
                 low-luminance images. The blurry and dimmed nature of
                 low-luminance images results in the extraction of vague
                 features and failure to detect objects. In \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wen:2022:MWP,
  author =       "Yu-Ting Wen and Hui-Kuo Yang and Wen-Chih Peng",
  title =        "Mining Willing-to-Pay Behavior Patterns from Payment
                 Datasets",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "14:1--14:19",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3485848",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3485848",
  abstract =     "The customer base is the most valuable resource to
                 E-commerce companies. A comprehensive understanding of
                 customers' preferences and behavior is crucial to
                 developing good marketing strategies, in order to
                 achieve optimal customer lifetime values (CLVs).
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2022:GNN,
  author =       "Yu Zhou and Haixia Zheng and Xin Huang and Shufeng Hao
                 and Dengao Li and Jumin Zhao",
  title =        "Graph Neural Networks: Taxonomy, Advances, and
                 Trends",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "15:1--15:54",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495161",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495161",
  abstract =     "Graph neural networks provide a powerful toolkit for
                 embedding real-world graphs into low-dimensional spaces
                 according to specific tasks. Up to now, there have been
                 several surveys on this topic. However, they usually
                 lay emphasis on different angles so \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2022:FFA,
  author =       "Cheng-Te Li and Cheng Hsu and Yang Zhang",
  title =        "{FairSR}: Fairness-aware Sequential Recommendation
                 through Multi-Task Learning with Preference Graph
                 Embeddings",
  journal =      j-TIST,
  volume =       "13",
  number =       "1",
  pages =        "16:1--16:21",
  month =        feb,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495163",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Feb 17 07:52:04 MST 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495163",
  abstract =     "Sequential recommendation (SR) learns from the
                 temporal dynamics of user-item interactions to predict
                 the next ones. Fairness-aware recommendation mitigates
                 a variety of algorithmic biases in the learning of user
                 preferences. This article aims at bringing \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2022:ISI,
  author =       "Senzhang Wang and Junbo Zhang and Yanjie Fu and Yong
                 Li",
  title =        "Introduction to the Special Issue on Deep Learning for
                 Spatio-Temporal Data:{Part 2}",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "17:1--17:4",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510023",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510023",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Saxena:2022:MST,
  author =       "Divya Saxena and Jiannong Cao",
  title =        "Multimodal Spatio-Temporal Prediction with Stochastic
                 Adversarial Networks",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "18:1--18:23",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3458025",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3458025",
  abstract =     "Spatio-temporal (ST) data is a collection of multiple
                 time series data with different spatial locations and
                 is inherently stochastic and unpredictable. An accurate
                 prediction over such data is an important building
                 block for several urban applications, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2022:DST,
  author =       "He Li and Xuejiao Li and Liangcai Su and Duo Jin and
                 Jianbin Huang and Deshuang Huang",
  title =        "Deep Spatio-temporal Adaptive {$3$D} Convolutional
                 Neural Networks for Traffic Flow Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "19:1--19:21",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510829",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510829",
  abstract =     "Traffic flow prediction is the upstream problem of
                 path planning, intelligent transportation system, and
                 other tasks. Many studies have been carried out on the
                 traffic flow prediction of the spatio-temporal network,
                 but the effects of spatio-temporal \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lu:2022:GSN,
  author =       "Zhilong Lu and Weifeng Lv and Zhipu Xie and Bowen Du
                 and Guixi Xiong and Leilei Sun and Haiquan Wang",
  title =        "Graph Sequence Neural Network with an Attention
                 Mechanism for Traffic Speed Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "20:1--20:24",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3470889",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3470889",
  abstract =     "Recent years have witnessed the emerging success of
                 Graph Neural Networks (GNNs) for modeling graphical
                 data. A GNN can model the spatial dependencies of nodes
                 in a graph based on message passing through node
                 aggregation. However, in many application \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2022:PCC,
  author =       "Renhe Jiang and Zekun Cai and Zhaonan Wang and Chuang
                 Yang and Zipei Fan and Quanjun Chen and Xuan Song and
                 Ryosuke Shibasaki",
  title =        "Predicting Citywide Crowd Dynamics at Big Events: a
                 Deep Learning System",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "21:1--21:24",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3472300",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3472300",
  abstract =     "Event crowd management has been a significant research
                 topic with high social impact. When some big events
                 happen such as an earthquake, typhoon, and national
                 festival, crowd management becomes the first priority
                 for governments (e.g., police) and public \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gao:2022:GAN,
  author =       "Nan Gao and Hao Xue and Wei Shao and Sichen Zhao and
                 Kyle Kai Qin and Arian Prabowo and Mohammad Saiedur
                 Rahaman and Flora D. Salim",
  title =        "Generative Adversarial Networks for Spatio-temporal
                 Data: a Survey",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "22:1--22:25",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3474838",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3474838",
  abstract =     "Generative Adversarial Networks (GANs) have shown
                 remarkable success in producing realistic-looking
                 images in the computer vision area. Recently, GAN-based
                 techniques are shown to be promising for
                 spatio-temporal-based applications such as trajectory
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2022:UTD,
  author =       "Yingxue Zhang and Yanhua Li and Xun Zhou and Jun Luo
                 and Zhi-Li Zhang",
  title =        "Urban Traffic Dynamics Prediction --- a Continuous
                 Spatial-temporal Meta-learning Approach",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "23:1--23:19",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3474837",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3474837",
  abstract =     "Urban traffic status (e.g., traffic speed and volume)
                 is highly dynamic in nature, namely, varying across
                 space and evolving over time. Thus, predicting such
                 traffic dynamics is of great importance to urban
                 development and transportation management. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wen:2022:DMC,
  author =       "Haomin Wen and Youfang Lin and Huaiyu Wan and Shengnan
                 Guo and Fan Wu and Lixia Wu and Chao Song and Yinghui
                 Xu",
  title =        "{DeepRoute+}: Modeling Couriers' Spatial-temporal
                 Behaviors and Decision Preferences for Package Pick-up
                 Route Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "24:1--24:23",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3481006",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3481006",
  abstract =     "Over 10 billion packages are picked up every day in
                 China. A fundamental task raised in the emerging
                 intelligent logistics systems is the couriers' package
                 pick-up route prediction, which is beneficial for
                 package dispatching, arrival-time estimation and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2022:WSS,
  author =       "Zhe Jiang and Wenchong He and Marcus Stephen Kirby and
                 Arpan Man Sainju and Shaowen Wang and Lawrence V.
                 Stanislawski and Ethan J. Shavers and E. Lynn Usery",
  title =        "Weakly Supervised Spatial Deep Learning for {Earth}
                 Image Segmentation Based on Imperfect Polyline Labels",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "25:1--25:20",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3480970",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3480970",
  abstract =     "In recent years, deep learning has achieved tremendous
                 success in image segmentation for computer vision
                 applications. The performance of these models heavily
                 relies on the availability of large-scale high-quality
                 training labels (e.g., PASCAL VOC 2012). \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{He:2022:EIS,
  author =       "Wenchong He and Arpan Man Sainju and Zhe Jiang and Da
                 Yan and Yang Zhou",
  title =        "{Earth} Imagery Segmentation on Terrain Surface with
                 Limited Training Labels: a Semi-supervised Approach
                 based on Physics-Guided Graph Co-Training",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "26:1--26:22",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3481043",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3481043",
  abstract =     "Given earth imagery with spectral features on a
                 terrain surface, this paper studies surface
                 segmentation based on both explanatory features and
                 surface topology. The problem is important in many
                 spatial and spatiotemporal applications such as flood
                 extent \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bao:2022:CGE,
  author =       "Han Bao and Xun Zhou and Yiqun Xie and Yingxue Zhang
                 and Yanhua Li",
  title =        "{COVID-GAN+}: Estimating Human Mobility Responses to
                 {COVID-19} through Spatio-temporal Generative
                 Adversarial Networks with Enhanced Features",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "27:1--27:23",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3481617",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3481617",
  abstract =     "Estimating human mobility responses to the large-scale
                 spreading of the COVID-19 pandemic is crucial, since
                 its significance guides policymakers to give
                 Non-pharmaceutical Interventions, such as closure or
                 reopening of businesses. It is challenging to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lu:2022:MMC,
  author =       "Bin Lu and Xiaoying Gan and Haiming Jin and Luoyi Fu
                 and Xinbing Wang and Haisong Zhang",
  title =        "Make More Connections: Urban Traffic Flow Forecasting
                 with Spatiotemporal Adaptive Gated Graph Convolution
                 Network",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "28:1--28:25",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3488902",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3488902",
  abstract =     "Urban traffic flow forecasting is a critical issue in
                 intelligent transportation systems. Due to the
                 complexity and uncertainty of urban road conditions,
                 how to capture the dynamic spatiotemporal correlation
                 and make accurate predictions is very \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2022:DDT,
  author =       "Liang Wang and Zhiwen Yu and Bin Guo and Dingqi Yang
                 and Lianbo Ma and Zhidan Liu and Fei Xiong",
  title =        "Data-driven Targeted Advertising Recommendation System
                 for Outdoor Billboard",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "29:1--29:23",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495159",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495159",
  abstract =     "In this article, we propose and study a novel
                 data-driven framework for Targeted Outdoor Advertising
                 Recommendation (TOAR) with a special consideration of
                 user profiles and advertisement topics. Given an
                 advertisement query and a set of outdoor billboards
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{He:2022:BAB,
  author =       "Yulin He and Xuan Ye and Joshua Zhexue Huang and
                 Philippe Fournier-Viger",
  title =        "{Bayesian} Attribute Bagging-Based Extreme Learning
                 Machine for High-Dimensional Classification and
                 Regression",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "30:1--30:26",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495164",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495164",
  abstract =     "This article presents a Bayesian attribute
                 bagging-based extreme learning machine (BAB-ELM) to
                 handle high-dimensional classification and regression
                 problems. First, the decision-making degree (DMD) of a
                 condition attribute is calculated based on the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2022:STC,
  author =       "Qian Li and Hao Peng and Jianxin Li and Congying Xia
                 and Renyu Yang and Lichao Sun and Philip S. Yu and
                 Lifang He",
  title =        "A Survey on Text Classification: From Traditional to
                 Deep Learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "31:1--31:41",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495162",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495162",
  abstract =     "Text classification is the most fundamental and
                 essential task in natural language processing. The last
                 decade has seen a surge of research in this area due to
                 the unprecedented success of deep learning. Numerous
                 methods, datasets, and evaluation metrics \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gao:2022:LCH,
  author =       "Guangliang Gao and Zhifeng Bao and Jie Cao and A. K.
                 Qin and Timos Sellis",
  title =        "Location-Centered House Price Prediction: a Multi-Task
                 Learning Approach",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "32:1--32:25",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501806",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501806",
  abstract =     "Accurate house prediction is of great significance to
                 various real estate stakeholders such as house owners,
                 buyers, and investors. We propose a location-centered
                 prediction framework that differs from existing work in
                 terms of data profiling and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liang:2022:CFS,
  author =       "Weichao Liang and Zhiang Wu and Zhe Li and Yong Ge",
  title =        "{CrimeTensor}: Fine-Scale Crime Prediction via Tensor
                 Learning with Spatiotemporal Consistency",
  journal =      j-TIST,
  volume =       "13",
  number =       "2",
  pages =        "33:1--33:24",
  month =        apr,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501807",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Apr 22 08:41:23 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501807",
  abstract =     "Crime poses a major threat to human life and property,
                 which has been recognized as one of the most crucial
                 problems in our society. Predicting the number of crime
                 incidents in each region of a city before they happen
                 is of great importance to fight \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zheng:2022:ISIb,
  author =       "Kai Zheng and Yong Li and Cyrus Shahabi and Hongzhi
                 Yin",
  title =        "Introduction to the Special Issue on Intelligent
                 Trajectory Analytics: {Part II}",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "34:1--34:2",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510021",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510021",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Deng:2022:EES,
  author =       "Liwei Deng and Hao Sun and Rui Sun and Yan Zhao and
                 Han Su",
  title =        "Efficient and Effective Similar Subtrajectory Search:
                 a Spatial-aware Comprehension Approach",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "35:1--35:22",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3456723",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3456723",
  abstract =     "Although many applications take subtrajectories as
                 basic units for analysis, there is little research on
                 the similar subtrajectory search problem aiming to
                 return a portion of a trajectory (i.e., subtrajectory),
                 which is the most similar to a query \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sharma:2022:ATG,
  author =       "Arun Sharma and Shashi Shekhar",
  title =        "Analyzing Trajectory Gaps to Find Possible Rendezvous
                 Region",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "36:1--36:23",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3467977",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3467977",
  abstract =     "Given trajectory data with gaps, we investigate
                 methods to identify possible rendezvous regions. The
                 problem has societal applications such as improving
                 maritime safety and regulatory enforcement. The
                 challenges come from two aspects. First, gaps in
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zheng:2022:SDA,
  author =       "Bolong Zheng and Lingfeng Ming and Qi Hu and Zhipeng
                 L{\"u} and Guanfeng Liu and Xiaofang Zhou",
  title =        "Supply-Demand-aware Deep Reinforcement Learning for
                 Dynamic Fleet Management",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "37:1--37:19",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3467979",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3467979",
  abstract =     "Online ride-hailing platforms have reduced
                 significantly the amounts of the time that taxis are
                 idle and that passengers spend on waiting. As a key
                 component of these platforms, the fleet management
                 problem can be naturally modeled as a Markov Decision
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2022:MCA,
  author =       "Senzhang Wang and Meiyue Zhang and Hao Miao and
                 Zhaohui Peng and Philip S. Yu",
  title =        "Multivariate Correlation-aware Spatio-temporal Graph
                 Convolutional Networks for Multi-scale Traffic
                 Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "38:1--38:22",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469087",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469087",
  abstract =     "Traffic flow prediction based on vehicle trajectories
                 collected from the installed GPS devices is critically
                 important to Intelligent Transportation Systems (ITS).
                 One limitation of existing traffic prediction models is
                 that they mostly focus on \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2022:IAS,
  author =       "Yifan Zhang and Jinghuai Zhang and Jindi Zhang and
                 Jianping Wang and Kejie Lu and Jeff Hong",
  title =        "Integrating Algorithmic Sampling-Based Motion Planning
                 with Learning in Autonomous Driving",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "39:1--39:27",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469086",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469086",
  abstract =     "Sampling-based motion planning (SBMP) is a major
                 algorithmic trajectory planning approach in autonomous
                 driving given its high efficiency and outstanding
                 performance in practice. However, driving safety still
                 calls for further refinement of SBMP. In this
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fang:2022:GFC,
  author =       "Chenglong Fang and Feng Wang and Bin Yao and Jianqiu
                 Xu",
  title =        "{GPSClean}: a Framework for Cleaning and Repairing
                 {GPS} Data",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "40:1--40:22",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3469088",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3469088",
  abstract =     "The rise of GPS-equipped mobile devices has led to the
                 emergence of big trajectory data. The collected raw
                 data usually contain errors and anomalies information
                 caused by device failure, sensor error, and environment
                 influence. Low-quality data fails to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2022:DRL,
  author =       "Jianbin Huang and Longji Huang and Meijuan Liu and He
                 Li and Qinglin Tan and Xiaoke Ma and Jiangtao Cui and
                 De-Shuang Huang",
  title =        "Deep Reinforcement Learning-based Trajectory Pricing
                 on Ride-hailing Platforms",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "41:1--41:19",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3474841",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3474841",
  abstract =     "Dynamic pricing plays an important role in solving the
                 problems such as traffic load reduction, congestion
                 control, and revenue improvement. Efficient dynamic
                 pricing strategies can increase capacity utilization,
                 total revenue of service providers, and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yao:2022:PPT,
  author =       "Lin Yao and Zhenyu Chen and Haibo Hu and Guowei Wu and
                 Bin Wu",
  title =        "Privacy Preservation for Trajectory Publication Based
                 on Differential Privacy",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "42:1--42:21",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3474839",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3474839",
  abstract =     "With the proliferation of location-aware devices,
                 trajectory data have been used widely in real-life
                 applications. However, trajectory data are often
                 associated with sensitive labels, such as users'
                 purchase transactions and planned activities. As such,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Han:2022:ATP,
  author =       "Nan Han and Shaojie Qiao and Kun Yue and Jianbin Huang
                 and Qiang He and Tingting Tang and Faliang Huang and
                 Chunlin He and Chang-An Yuan",
  title =        "Algorithms for Trajectory Points Clustering in
                 Location-based Social Networks",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "43:1--43:29",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3480972",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3480972",
  abstract =     "Recent advances in localization techniques have
                 fundamentally enhanced social networking services,
                 allowing users to share their locations and
                 location-related contents. This has further increased
                 the popularity of location-based social networks
                 (LBSNs) \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zheng:2022:UAP,
  author =       "Zhirun Zheng and Zhetao Li and Jie Li and Hongbo Jiang
                 and Tong Li and Bin Guo",
  title =        "Utility-aware and Privacy-preserving Trajectory
                 Synthesis Model that Resists Social Relationship
                 Privacy Attacks",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "44:1--44:28",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3495160",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3495160",
  abstract =     "For academic research and business intelligence,
                 trajectory data has been widely collected and analyzed.
                 Releasing trajectory data to a third party may lead to
                 serious privacy leakage, which has spawned considerable
                 researches on trajectory privacy \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kim:2022:NNE,
  author =       "Cheolhyeong Kim and Haeseong Moon and Hyung Ju Hwang",
  title =        "{NEAR}: Neighborhood Edge {AggregatoR} for Graph
                 Classification",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "45:1--45:17",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3506714",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3506714",
  abstract =     "Learning graph-structured data with graph neural
                 networks (GNNs) has been recently emerging as an
                 important field because of its wide applicability in
                 bioinformatics, chemoinformatics, social network
                 analysis, and data mining. Recent GNN algorithms are
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wei:2022:WSV,
  author =       "Lili Wei and Congyan Lang and Liqian Liang and Songhe
                 Feng and Tao Wang and Shidi Chen",
  title =        "Weakly Supervised Video Object Segmentation via
                 Dual-attention Cross-branch Fusion",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "46:1--46:20",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3506716",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3506716",
  abstract =     "Recently, concerning the challenge of collecting
                 large-scale explicitly annotated videos, weakly
                 supervised video object segmentation (WSVOS) using
                 video tags has attracted much attention. Existing WSVOS
                 approaches follow a general pipeline including two
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yan:2022:CFM,
  author =       "Runze Yan and Xinwen Liu and Janine Dutcher and
                 Michael Tumminia and Daniella Villalba and Sheldon
                 Cohen and David Creswell and Kasey Creswell and
                 Jennifer Mankoff and Anind Dey and Afsaneh Doryab",
  title =        "A Computational Framework for Modeling Biobehavioral
                 Rhythms from Mobile and Wearable Data Streams",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "47:1--47:27",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510029",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510029",
  abstract =     "This paper presents a computational framework for
                 modeling biobehavioral rhythms --- the repeating cycles
                 of physiological, psychological, social, and
                 environmental events --- from mobile and wearable data
                 streams. The framework incorporates four main
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hu:2022:WCK,
  author =       "Yang Hu and Adriane Chapman and Guihua Wen and Dame
                 Wendy Hall",
  title =        "What Can Knowledge Bring to Machine Learning? --- a
                 Survey of Low-shot Learning for Structured Data",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "48:1--48:45",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510030",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510030",
  abstract =     "Supervised machine learning has several drawbacks that
                 make it difficult to use in many situations. Drawbacks
                 include heavy reliance on massive training data,
                 limited generalizability, and poor expressiveness of
                 high-level semantics. Low-shot Learning \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lin:2022:TTP,
  author =       "Fandel Lin and Hsun-Ping Hsieh",
  title =        "Traveling Transporter Problem: Arranging a New
                 Circular Route in a Public Transportation System Based
                 on Heterogeneous Non-Monotonic Urban Data",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "49:1--49:25",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510034",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510034",
  abstract =     "Hybrid computational intelligent systems that
                 synergize learning-based inference models and route
                 planning strategies have thrived in recent years. In
                 this article, we focus on the non-monotonicity
                 originated from heterogeneous urban data, as well as
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2022:DML,
  author =       "Vinayak Gupta and Srikanta Bedathur",
  title =        "Doing More with Less: Overcoming Data Scarcity for
                 {POI} Recommendation via Cross-Region Transfer",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "50:1--50:24",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3511711",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3511711",
  abstract =     "Variability in social app usage across regions results
                 in a high skew of the quantity and the quality of
                 check-in data collected, which in turn is a challenge
                 for effective location recommender systems. In this
                 article, we present Axolotl (Automated cross.
                 \ldots{})",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Choudhary:2022:SSS,
  author =       "Nurendra Choudhary and Charu C. Aggarwal and Karthik
                 Subbian and Chandan K. Reddy",
  title =        "Self-supervised Short-text Modeling through Auxiliary
                 Context Generation",
  journal =      j-TIST,
  volume =       "13",
  number =       "3",
  pages =        "51:1--51:21",
  month =        jun,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3511712",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Wed May 25 07:55:15 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3511712",
  abstract =     "Short text is ambiguous and often relies predominantly
                 on the domain and context at hand in order to attain
                 semantic relevance. Existing classification models
                 perform poorly on short text due to data sparsity and
                 inadequate context. Auxiliary context, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2022:ISI,
  author =       "Qiang Yang and Yongxin Tong and Yang Liu and Yangqiu
                 Song and Hao Peng and Boi Faltings",
  title =        "Introduction to the Special Issue on the Federated
                 Learning: Algorithms, Systems, and Applications: {Part
                 1}",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "52:1--52:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3514223",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3514223",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2022:TSP,
  author =       "Jun Zhou and Longfei Zheng and Chaochao Chen and Yan
                 Wang and Xiaolin Zheng and Bingzhe Wu and Cen Chen and
                 Li Wang and Jianwei Yin",
  title =        "Toward Scalable and Privacy-preserving Deep Neural
                 Network via Algorithmic-Cryptographic Co-design",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "53:1--53:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501809",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501809",
  abstract =     "Deep Neural Networks (DNNs) have achieved remarkable
                 progress in various real-world applications, especially
                 when abundant training data are provided. However, data
                 isolation has become a serious problem currently.
                 Existing works build privacy-preserving \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Antunes:2022:FLH,
  author =       "Rodolfo Stoffel Antunes and Cristiano Andr{\'e} da
                 Costa and Arne K{\"u}derle and Imrana Abdullahi Yari
                 and Bj{\"o}rn Eskofier",
  title =        "Federated Learning for Healthcare: Systematic Review
                 and Architecture Proposal",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "54:1--54:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501813",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501813",
  abstract =     "The use of machine learning (ML) with electronic
                 health records (EHR) is growing in popularity as a
                 means to extract knowledge that can improve the
                 decision-making process in healthcare. Such methods
                 require training of high-quality learning models based
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2022:FSR,
  author =       "Zhiwei Liu and Liangwei Yang and Ziwei Fan and Hao
                 Peng and Philip S. Yu",
  title =        "Federated Social Recommendation with Graph Neural
                 Network",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "55:1--55:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501815",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501815",
  abstract =     "Recommender systems have become prosperous nowadays,
                 designed to predict users' potential interests in items
                 by learning embeddings. Recent developments of the
                 Graph Neural Networks (GNNs) also provide recommender
                 systems (RSs) with powerful backbones to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2022:FDG,
  author =       "Meng Jiang and Taeho Jung and Ryan Karl and Tong
                 Zhao",
  title =        "Federated Dynamic Graph Neural Networks with Secure
                 Aggregation for Video-based Distributed Surveillance",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "56:1--56:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501808",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501808",
  abstract =     "Distributed surveillance systems have the ability to
                 detect, track, and snapshot objects moving around in a
                 certain space. The systems generate video data from
                 multiple personal devices or street cameras.
                 Intelligent video-analysis models are needed to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hu:2022:DAF,
  author =       "Ziheng Hu and Hongtao Xie and Lingyun Yu and Xingyu
                 Gao and Zhihua Shang and Yongdong Zhang",
  title =        "Dynamic-Aware Federated Learning for Face Forgery
                 Video Detection",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "57:1--57:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501814",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501814",
  abstract =     "The spread of face forgery videos is a serious threat
                 to information credibility, calling for effective
                 detection algorithms to identify them. Most existing
                 methods have assumed a shared or centralized training
                 set. However, in practice, data may be \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ren:2022:IAV,
  author =       "Zhenghang Ren and Liu Yang and Kai Chen",
  title =        "Improving Availability of Vertical Federated Learning:
                 Relaxing Inference on Non-overlapping Data",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "58:1--58:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501817",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501817",
  abstract =     "Vertical Federated Learning (VFL) enables multiple
                 parties to collaboratively train a machine learning
                 model over vertically distributed datasets without data
                 privacy leakage. However, there is a limitation of the
                 current VFL solutions: current VFL models \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chai:2022:EFM,
  author =       "Di Chai and Leye Wang and Kai Chen and Qiang Yang",
  title =        "Efficient Federated Matrix Factorization Against
                 Inference Attacks",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "59:1--59:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501812",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501812",
  abstract =     "Recommender systems typically require the revelation
                 of users' ratings to the recommender server, which will
                 subsequently use these ratings to provide personalized
                 services. However, such revelations make users
                 vulnerable to a broader set of inference \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2022:GSE,
  author =       "Zelei Liu and Yuanyuan Chen and Han Yu and Yang Liu
                 and Lizhen Cui",
  title =        "{GTG-Shapley}: Efficient and Accurate Participant
                 Contribution Evaluation in Federated Learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "60:1--60:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501811",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501811",
  abstract =     "Federated Learning (FL) bridges the gap between
                 collaborative machine learning and preserving data
                 privacy. To sustain the long-term operation of an FL
                 ecosystem, it is important to attract high-quality data
                 owners with appropriate incentive schemes. As
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Che:2022:FMV,
  author =       "Sicong Che and Zhaoming Kong and Hao Peng and Lichao
                 Sun and Alex Leow and Yong Chen and Lifang He",
  title =        "Federated Multi-view Learning for Private Medical Data
                 Integration and Analysis",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "61:1--61:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501816",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501816",
  abstract =     "Along with the rapid expansion of information
                 technology and digitalization of health data, there is
                 an increasing concern on maintaining data privacy while
                 garnering the benefits in the medical field. Two
                 critical challenges are identified: First, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2022:FFN,
  author =       "Chuhan Wu and Fangzhao Wu and Lingjuan Lyu and
                 Yongfeng Huang and Xing Xie",
  title =        "{FedCTR}: Federated Native Ad {CTR} Prediction with
                 Cross-platform User Behavior Data",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "62:1--62:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3506715",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3506715",
  abstract =     "Native ad is a popular type of online advertisement
                 that has similar forms with the native content
                 displayed on websites. Native ad click-through rate
                 (CTR) prediction is useful for improving user
                 experience and platform revenue. However, it is
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hu:2022:OBS,
  author =       "Sixu Hu and Yuan Li and Xu Liu and Qinbin Li and
                 Zhaomin Wu and Bingsheng He",
  title =        "The {OARF} Benchmark Suite: Characterization and
                 Implications for Federated Learning Systems",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "63:1--63:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510540",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510540",
  abstract =     "This article presents and characterizes an Open
                 Application Repository for Federated Learning (OARF), a
                 benchmark suite for federated machine learning systems.
                 Previously available benchmarks for federated learning
                 (FL) have focused mainly on synthetic \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kang:2022:FSS,
  author =       "Yan Kang and Yang Liu and Xinle Liang",
  title =        "{FedCVT}: Semi-supervised Vertical Federated Learning
                 with Cross-view Training",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "64:1--64:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510031",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510031",
  abstract =     "Federated learning allows multiple parties to build
                 machine learning models collaboratively without
                 exposing data. In particular, vertical federated
                 learning (VFL) enables participating parties to build a
                 joint machine learning model based upon \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ren:2022:GGR,
  author =       "Hanchi Ren and Jingjing Deng and Xianghua Xie",
  title =        "{GRNN}: Generative Regression Neural Network --- a
                 Data Leakage Attack for Federated Learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "65:1--65:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510032",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510032",
  abstract =     "Data privacy has become an increasingly important
                 issue in Machine Learning (ML), where many approaches
                 have been developed to tackle this challenge, e.g.,
                 cryptography (Homomorphic Encryption (HE), Differential
                 Privacy (DP)) and collaborative training \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tian:2022:FWF,
  author =       "Yuanyishu Tian and Yao Wan and Lingjuan Lyu and
                 Dezhong Yao and Hai Jin and Lichao Sun",
  title =        "{FedBERT}: When Federated Learning Meets
                 Pre-training",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "66:1--66:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510033",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510033",
  abstract =     "The fast growth of pre-trained models (PTMs) has
                 brought natural language processing to a new era, which
                 has become a dominant technique for various natural
                 language processing (NLP) applications. Every user can
                 download the weights of PTMs, then fine-. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mao:2022:CEF,
  author =       "Yuzhu Mao and Zihao Zhao and Guangfeng Yan and Yang
                 Liu and Tian Lan and Linqi Song and Wenbo Ding",
  title =        "Communication-Efficient Federated Learning with
                 Adaptive Quantization",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "67:1--67:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510587",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510587",
  abstract =     "Federated learning (FL) has attracted tremendous
                 attentions in recent years due to its
                 privacy-preserving measures and great potential in some
                 distributed but privacy-sensitive applications, such as
                 finance and health. However, high communication
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Guo:2022:FLP,
  author =       "Xu Guo and Han Yu and Boyang Li and Hao Wang and
                 Pengwei Xing and Siwei Feng and Zaiqing Nie and Chunyan
                 Miao",
  title =        "Federated Learning for Personalized Humor
                 Recognition",
  journal =      j-TIST,
  volume =       "13",
  number =       "4",
  pages =        "68:1--68:??",
  month =        aug,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3511710",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:17 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3511710",
  abstract =     "Computational understanding of humor is an important
                 topic under creative language understanding and
                 modeling. It can play a key role in complex human-AI
                 interactions. The challenge here is that human
                 perception of humorous content is highly subjective.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2022:PFL,
  author =       "Qiang Yang and Yongxin Tong and Yang Liu and Yangqiu
                 Song and Hao Peng and Boi Faltings",
  title =        "Preface to Federated Learning: Algorithms, Systems,
                 and Applications: {Part 2}",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "69:1--69:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3536420",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3536420",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2022:PPA,
  author =       "Xiaolong Xu and Wentao Liu and Yulan Zhang and Xuyun
                 Zhang and Wanchun Dou and Lianyong Qi and Md Zakirul
                 Alam Bhuiyan",
  title =        "{PSDF}: Privacy-aware {IoV} Service Deployment with
                 Federated Learning in Cloud-Edge Computing",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "70:1--70:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501810",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501810",
  abstract =     "Through the collaboration of cloud and edge,
                 cloud-edge computing allows the edge that approximates
                 end-users undertakes those non-computationally
                 intensive service processing of the cloud, reducing the
                 communication overhead and satisfying the low
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhong:2022:FHF,
  author =       "Zhengyi Zhong and Weidong Bao and Ji Wang and Xiaomin
                 Zhu and Xiongtao Zhang",
  title =        "{FLEE}: a Hierarchical Federated Learning Framework
                 for Distributed Deep Neural Network over Cloud, Edge,
                 and End Device",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "71:1--71:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3514501",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3514501",
  abstract =     "With the development of smart devices, the computing
                 capabilities of portable end devices such as mobile
                 phones have been greatly enhanced. Meanwhile,
                 traditional cloud computing faces great challenges
                 caused by privacy-leakage and time-delay problems,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dang:2022:FLE,
  author =       "Trung Kien Dang and Xiang Lan and Jianshu Weng and
                 Mengling Feng",
  title =        "Federated Learning for Electronic Health Records",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "72:1--72:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3514500",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3514500",
  abstract =     "In data-driven medical research, multi-center studies
                 have long been preferred over single-center ones due to
                 a single institute sometimes not having enough data to
                 obtain sufficient statistical power for certain
                 hypothesis testings as well as predictive \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2022:AWR,
  author =       "Shenghui Li and Edith Ngai and Fanghua Ye and Thiemo
                 Voigt",
  title =        "Auto-weighted Robust Federated Learning with Corrupted
                 Data Sources",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "73:1--73:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3517821",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3517821",
  abstract =     "Federated learning provides a communication-efficient
                 and privacy-preserving training process by enabling
                 learning statistical models with massive participants
                 without accessing their local data. Standard federated
                 learning techniques that naively \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2022:SFL,
  author =       "Xue Jiang and Xuebing Zhou and Jens Grossklags",
  title =        "{SignDS-FL}: Local Differentially Private Federated
                 Learning with Sign-based Dimension Selection",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "74:1--74:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3517820",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3517820",
  abstract =     "Federated Learning (FL) [ 31 ] is a decentralized
                 learning mechanism that has attracted increasing
                 attention due to its achievements in computational
                 efficiency and privacy preservation. However, recent
                 research highlights that the original FL framework may
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zeng:2022:CCB,
  author =       "Bixiao Zeng and Xiaodong Yang and Yiqiang Chen and
                 Hanchao Yu and Yingwei Zhang",
  title =        "{CLC}: a Consensus-based Label Correction Approach in
                 Federated Learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "75:1--75:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3519311",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3519311",
  abstract =     "Federated learning (FL) is a novel distributed
                 learning framework where multiple participants
                 collaboratively train a global model without sharing
                 any raw data to preserve privacy. However, data quality
                 may vary among the participants, the most typical of
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "75",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2022:DAP,
  author =       "Chien-Lun Chen and Sara Babakniya and Marco Paolieri
                 and Leana Golubchik",
  title =        "Defending against Poisoning Backdoor Attacks on
                 Federated Meta-learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "76:1--76:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3523062",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3523062",
  abstract =     "Federated learning allows multiple users to
                 collaboratively train a shared classification model
                 while preserving data privacy. This approach, where
                 model updates are aggregated by a central server, was
                 shown to be vulnerable to poisoning backdoor attacks:
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "76",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xie:2022:ELF,
  author =       "Lunchen Xie and Jiaqi Liu and Songtao Lu and Tsung-Hui
                 Chang and Qingjiang Shi",
  title =        "An Efficient Learning Framework for Federated
                 {XGBoost} Using Secret Sharing and Distributed
                 Optimization",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "77:1--77:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3523061",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3523061",
  abstract =     "XGBoost is one of the most widely used machine
                 learning models in the industry due to its superior
                 learning accuracy and efficiency. Targeting at data
                 isolation issues in the big data problems, it is
                 crucial to deploy a secure and efficient federated
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "77",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Stripelis:2022:SSF,
  author =       "Dimitris Stripelis and Paul M. Thompson and Jos{\'e}
                 Luis Ambite",
  title =        "Semi-Synchronous Federated Learning for
                 Energy-Efficient Training and Accelerated Convergence
                 in Cross-Silo Settings",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "78:1--78:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3524885",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3524885",
  abstract =     "There are situations where data relevant to machine
                 learning problems are distributed across multiple
                 locations that cannot share the data due to regulatory,
                 competitiveness, or privacy reasons. Machine learning
                 approaches that require data to be copied \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "78",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Damaskinos:2022:FOF,
  author =       "Georgios Damaskinos and Rachid Guerraoui and
                 Anne-Marie Kermarrec and Vlad Nitu and Rhicheek Patra
                 and Fran{\c{c}}ois Taiani",
  title =        "{FLeet}: Online Federated Learning via Staleness
                 Awareness and Performance Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "79:1--79:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3527621",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3527621",
  abstract =     "Federated learning (FL) is very appealing for its
                 privacy benefits: essentially, a global model is
                 trained with updates computed on mobile devices while
                 keeping the data of users local. Standard FL
                 infrastructures are however designed to have no energy
                 or \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "79",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2022:FMT,
  author =       "Yijing Liu and Dongming Han and Jianwei Zhang and
                 Haiyang Zhu and Mingliang Xu and Wei Chen",
  title =        "Federated Multi-task Graph Learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "80:1--80:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3527622",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3527622",
  abstract =     "Distributed processing and analysis of large-scale
                 graph data remain challenging because of the high-level
                 discrepancy among graphs. This study investigates a
                 novel subproblem: the distributed multi-task learning
                 on the graph, which jointly learns \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "80",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2022:CFP,
  author =       "Fuxian Li and Jie Feng and Huan Yan and Depeng Jin and
                 Yong Li",
  title =        "Crowd Flow Prediction for Irregular Regions with
                 Semantic Graph Attention Network",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "81:1--81:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3501805",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3501805",
  abstract =     "It is essential to predict crowd flow precisely in a
                 city, which is practically partitioned into irregular
                 regions based on road networks and functionality.
                 However, prior works mainly focus on grid-based crowd
                 flow prediction, where a city is divided \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "81",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2022:GBS,
  author =       "Zongwei Wang and Min Gao and Jundong Li and Junwei
                 Zhang and Jiang Zhong",
  title =        "Gray-Box Shilling Attack: an Adversarial Learning
                 Approach",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "82:1--82:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3512352",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3512352",
  abstract =     "Recommender systems are essential components of many
                 information services, which aim to find relevant items
                 that match user preferences. Several studies have shown
                 that shilling attacks can significantly weaken the
                 robustness of recommender systems by \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "82",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Di:2022:FSR,
  author =       "Kai Di and Yifeng Zhou and Fuhan Yan and Jiuchuan
                 Jiang and Shaofu Yang and Yichuan Jiang",
  title =        "A Foraging Strategy with Risk Response for Individual
                 Robots in Adversarial Environments",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "83:1--83:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3514499",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3514499",
  abstract =     "As an essential problem in robotics, foraging means
                 that robots collect objects from a given environment
                 and return them to a specified location. On many
                 occasions, robots are required to perform foraging
                 tasks in adversarial environments, such as \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "83",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Rai:2022:RSC,
  author =       "Sawan Rai and Ramesh Chandra Belwal and Atul Gupta",
  title =        "A Review on Source Code Documentation",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "84:1--84:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3519312",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3519312",
  abstract =     "Context: Coding is an incremental activity where a
                 developer may need to understand a code before making
                 suitable changes in the code. Code documentation is
                 considered one of the best practices in software
                 development but requires significant efforts from
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "84",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2022:IIN,
  author =       "Xiaoyu Chen and Yingyan Zeng and Sungku Kang and Ran
                 Jin",
  title =        "{INN}: an Interpretable Neural Network for {AI}
                 Incubation in Manufacturing",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "85:1--85:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3519313",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3519313",
  abstract =     "Both artificial intelligence (AI) and domain knowledge
                 from human experts play an important role in
                 manufacturing decision making. Smart manufacturing
                 emphasizes a fully automated data-driven
                 decision-making; however, the AI incubation process
                 involves \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "85",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2022:DPG,
  author =       "Ke Li and Bin Guo and Jiaqi Liu and Jiangtao Wang and
                 Haoyang Ren and Fei Yi and Zhiwen Yu",
  title =        "Dynamic Probabilistic Graphical Model for Progressive
                 Fake News Detection on Social Media Platform",
  journal =      j-TIST,
  volume =       "13",
  number =       "5",
  pages =        "86:1--86:??",
  month =        oct,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3523060",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Oct 29 07:22:19 MDT 2022",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3523060",
  abstract =     "Recently, fake news has been readily spread by massive
                 amounts of users in social media, and automatic fake
                 news detection has become necessary. The existing works
                 need to prepare the overall data to perform detection,
                 losing important information about \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "86",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Verma:2022:IDB,
  author =       "Rohit Verma and Sugandh Pargal and Debasree Das and
                 Tanusree Parbat and Sai Shankar Kambalapalli and Bivas
                 Mitra and Sandip Chakraborty",
  title =        "Impact of Driving Behavior on {Commuter}'s Comfort
                 During Cab Rides: Towards a New Perspective of Driver
                 Rating",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "87:1--87:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3523063",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3523063",
  abstract =     "Commuter comfort in cab rides affects driver rating as
                 well as the reputation of ride-hailing firms like
                 Uber/Lyft. Existing research has revealed that commuter
                 comfort not only varies at a personalized level but
                 also is perceived differently on different \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "87",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2022:IPI,
  author =       "Lin Zhang and Lixin Fan and Yong Luo and Ling-Yu
                 Duan",
  title =        "Intrinsic Performance Influence-based Participant
                 Contribution Estimation for Horizontal Federated
                 Learning",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "88:1--88:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3523059",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3523059",
  abstract =     "The rapid development of modern artificial
                 intelligence technique is mainly attributed to
                 sufficient and high-quality data. However, in the data
                 collection, personal privacy is at risk of being
                 leaked. This issue can be addressed by federated
                 learning, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "88",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ren:2022:DHC,
  author =       "Siyuan Ren and Bin Guo and Longbing Cao and Ke Li and
                 Jiaqi Liu and Zhiwen Yu",
  title =        "{DeepExpress}: Heterogeneous and Coupled Sequence
                 Modeling for Express Delivery Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "89:1--89:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3526087",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3526087",
  abstract =     "The prediction of express delivery sequence, i.e.,
                 modeling and estimating the volumes of daily incoming
                 and outgoing parcels for delivery, is critical for
                 online business, logistics, and positive customer
                 experience, and specifically for resource \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "89",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zheng:2022:JOE,
  author =       "Qian Zheng and Yueming Wang and Zhenfang Hu and Xiaobo
                 Zhang and Zhaohui Wu and Gang Pan",
  title =        "Jointly Optimizing Expressional and Residual Models
                 for {$3$D} Facial Expression Removal",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "90:1--90:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3533312",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3533312",
  abstract =     "This article proposes a facial expression removal
                 method to recover a 3D neutral face from a single 3D
                 expressional or non-neutral face. We treat a 3D
                 non-neutral face as the sum of its neutral one and the
                 residual. This can be satisfied if the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "90",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hammedi:2022:TLO,
  author =       "Wided Hammedi and Sidi Mohammed Senouci and Philippe
                 Brunet and Metzli Ramirez-Martinez",
  title =        "Two-Level Optimization to Reduce Waiting Time at Locks
                 in Inland Waterway Transportation",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "91:1--91:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3527822",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3527822",
  abstract =     "Inland vessels often have to cross numerous locks
                 before reaching their final destination, which leads to
                 a significant delay and sometimes represents as much as
                 half of the total travel time. The delay affects
                 shipment costs and can affect other parts of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "91",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Elhamod:2022:CPL,
  author =       "Mohannad Elhamod and Jie Bu and Christopher Singh and
                 Matthew Redell and Abantika Ghosh and Viktor Podolskiy
                 and Wei-Cheng Lee and Anuj Karpatne",
  title =        "{CoPhy-PGNN}: Learning Physics-guided Neural Networks
                 with Competing Loss Functions for Solving Eigenvalue
                 Problems",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "92:1--92:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3530911",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3530911",
  abstract =     "Physics-guided Neural Networks (PGNNs) represent an
                 emerging class of neural networks that are trained
                 using physics-guided (PG) loss functions (capturing
                 violations in network outputs with known physics),
                 along with the supervision contained in data.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "92",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ding:2022:MME,
  author =       "Yasan Ding and Bin Guo and Yan Liu and Yunji Liang and
                 Haocheng Shen and Zhiwen Yu",
  title =        "{MetaDetector}: Meta Event Knowledge Transfer for Fake
                 News Detection",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "93:1--93:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3532851",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3532851",
  abstract =     "The blooming of fake news on social networks has
                 devastating impacts on society, the economy, and public
                 security. Although numerous studies are conducted for
                 the automatic detection of fake news, the majority tend
                 to utilize deep neural networks to learn \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "93",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2022:CST,
  author =       "Yao Zhang and Wenping Fan and Qichen Hao and Xinya Wu
                 and Min-Ling Zhang",
  title =        "{CAFE} and {SOUP}: Toward Adaptive {VDI} Workload
                 Prediction",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "94:1--94:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3529536",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3529536",
  abstract =     "For Virtual Desktop Infrastructure (VDI) system,
                 effective resource management is rather important where
                 turning off spare virtual machines would help save
                 running cost while maintaining sufficient virtual
                 machines is essential to secure satisfactory user
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "94",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dong:2022:HAR,
  author =       "Junyi Dong and Qingze Huo and Silvia Ferrari",
  title =        "A Holistic Approach for Role Inference and Action
                 Anticipation in Human Teams",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "95:1--95:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3531230",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3531230",
  abstract =     "The ability to anticipate human actions is critical to
                 many cyber-physical systems, such as robots and
                 autonomous vehicles. Computer vision and sensing
                 algorithms to date have focused on extracting and
                 predicting visual features that are explicit in the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "95",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hografer:2022:SEP,
  author =       "Marius Hogr{\"a}fer and Marco Angelini and Giuseppe
                 Santucci and Hans-J{\"o}rg Schulz",
  title =        "Steering-by-example for Progressive Visual Analytics",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "96:1--96:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3531229",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3531229",
  abstract =     "Progressive visual analytics allows users to interact
                 with early, partial results of long-running
                 computations on large datasets. In this context,
                 computational steering is often brought up as a means
                 to prioritize the progressive computation. This is
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "96",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2022:RLV,
  author =       "Xian Wu and Chao Huang and Pablo Robles-Granda and
                 Nitesh V. Chawla",
  title =        "Representation Learning on Variable Length and
                 Incomplete Wearable-Sensory Time Series",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "97:1--97:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3531228",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3531228",
  abstract =     "The prevalence of wearable sensors (e.g., smart
                 wristband) is creating unprecedented opportunities to
                 not only inform health and wellness states of
                 individuals, but also assess and infer personal
                 attributes, including demographic and personality
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "97",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ceh-Varela:2022:PEA,
  author =       "Edgar Ceh-Varela and Huiping Cao and Hady W. Lauw",
  title =        "Performance Evaluation of Aggregation-based Group
                 Recommender Systems for Ephemeral Groups",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "98:1--98:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3542804",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3542804",
  abstract =     "Recommender Systems ( RecSys ) provide suggestions in
                 many decision-making processes. Given that groups of
                 people can perform many real-world activities (e.g., a
                 group of people attending a conference looking for a
                 place to dine), the need for \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "98",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Das:2022:CSF,
  author =       "Anirban Das and Timothy Castiglia and Shiqiang Wang
                 and Stacy Patterson",
  title =        "Cross-Silo Federated Learning for Multi-Tier Networks
                 with Vertical and Horizontal Data Partitioning",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "99:1--99:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3543433",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3543433",
  abstract =     "We consider federated learning in tiered communication
                 networks. Our network model consists of a set of silos,
                 each holding a vertical partition of the data. Each
                 silo contains a hub and a set of clients, with the
                 silo's vertical data shard partitioned \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "99",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Navia-Vazquez:2022:BDS,
  author =       "A. Navia-V{\'a}zquez and R. D{\'\i}az-Morales and M.
                 Fern{\'a}ndez-D{\'\i}az",
  title =        "Budget Distributed Support Vector Machine for Non-{ID}
                 Federated Learning Scenarios",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "100:1--100:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3539734",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3539734",
  abstract =     "In recent years, there has been remarkable growth in
                 Federated Learning (FL) approaches because they have
                 proven to be very effective in training large Machine
                 Learning (ML) models and also serve to preserve data
                 confidentiality, as recommended by the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "100",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hu:2022:DET,
  author =       "Yue Hu and Ao Qu and Dan Work",
  title =        "Detecting Extreme Traffic Events Via a Context
                 Augmented Graph Autoencoder",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "101:1--101:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3539735",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3539735",
  abstract =     "Accurate and timely detection of large events on urban
                 transportation networks enables informed mobility
                 management. This work tackles the problem of extreme
                 event detection on large-scale transportation networks
                 using origin-destination mobility data, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "101",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tassa:2022:PPC,
  author =       "Tamir Tassa and Alon {Ben Horin}",
  title =        "Privacy-preserving Collaborative Filtering by
                 Distributed Mediation",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "102:1--102:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3542950",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3542950",
  abstract =     "Recommender systems have become very influential in
                 our everyday decision making, e.g., helping us choose a
                 movie from a content platform, or offering us suitable
                 products on e-commerce websites. While most vendors who
                 utilize recommender systems rely \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "102",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2022:MCT,
  author =       "Vinayak Gupta and Srikanta Bedathur and Sourangshu
                 Bhattacharya and Abir De",
  title =        "Modeling Continuous Time Sequences with Intermittent
                 Observations using Marked Temporal Point Processes",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "103:1--103:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3545118",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3545118",
  abstract =     "A large fraction of data generated via human
                 activities such as online purchases, health records,
                 spatial mobility, etc. can be represented as a sequence
                 of events over a continuous-time. Learning deep
                 learning models over these continuous-time event
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "103",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ou:2022:AAE,
  author =       "Jinxiang Ou and Yunheng Shen and Feng Wang and Qiao
                 Liu and Xuegong Zhang and Hairong Lv",
  title =        "{AggEnhance}: Aggregation Enhancement by Class
                 Interior Points in Federated Learning with Non-{IID}
                 Data",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "104:1--104:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3544495",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3544495",
  abstract =     "Federated learning (FL) is a privacy-preserving
                 paradigm for multi-institutional collaborations, where
                 the aggregation is an essential procedure after
                 training on the local datasets. Conventional
                 aggregation algorithms often apply a weighted averaging
                 of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "104",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Costa:2022:SCN,
  author =       "Miguel Costa and Diogo Costa and Tiago Gomes and
                 Sandro Pinto",
  title =        "Shifting Capsule Networks from the Cloud to the Deep
                 Edge",
  journal =      j-TIST,
  volume =       "13",
  number =       "6",
  pages =        "105:1--105:??",
  month =        dec,
  year =         "2022",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3544562",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:22 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3544562",
  abstract =     "Capsule networks (CapsNets) are an emerging trend in
                 image processing. In contrast to a convolutional neural
                 network, CapsNets are not vulnerable to object
                 deformation, as the relative spatial information of the
                 objects is preserved across the network. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "105",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2023:NFL,
  author =       "Xiaojin Zhang and Hanlin Gu and Lixin Fan and Kai Chen
                 and Qiang Yang",
  title =        "No Free Lunch Theorem for Security and Utility in
                 Federated Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "1:1--1:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3563219",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3563219",
  abstract =     "In a federated learning scenario where multiple
                 parties jointly learn a model from their respective
                 data, there exist two conflicting goals for the choice
                 of appropriate algorithms. On one hand, private and
                 sensitive training data must be kept secure as
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shao:2023:IIT,
  author =       "Erzhuo Shao and Zhenyu Han and Yulai Xie and Yang
                 Zhang and Lu Geng and Yong Li",
  title =        "Interior Individual Trajectory Simulation with
                 Population Distribution Constraint",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "2:1--2:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3529108",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3529108",
  abstract =     "Individual trajectory generation plays an important
                 role in simulation tasks, reconstructing fine-grained
                 mobility behaviors that can be used to evaluate
                 epidemic risks, congestion risks, or commercial profit.
                 Previous research works adopt the Newton's \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Danzinger:2023:SAI,
  author =       "Philipp Danzinger and Tobias Geibinger and David
                 Janneau and Florian Mischek and Nysret Musliu and
                 Christian Poschalko",
  title =        "A System for Automated Industrial Test Laboratory
                 Scheduling",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "3:1--3:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3546871",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3546871",
  abstract =     "Automated scheduling solutions are tremendously
                 important for the efficient operation of industrial
                 laboratories. The Test Laboratory Scheduling Problem
                 (TLSP) is an extension of the well-known Resource
                 Constrained Project Scheduling Problem (RCPSP) and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2023:TAC,
  author =       "Haochen Liu and Yiqi Wang and Wenqi Fan and Xiaorui
                 Liu and Yaxin Li and Shaili Jain and Yunhao Liu and
                 Anil Jain and Jiliang Tang",
  title =        "Trustworthy {AI}: a Computational Perspective",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "4:1--4:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3546872",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3546872",
  abstract =     "In the past few decades, artificial intelligence (AI)
                 technology has experienced swift developments, changing
                 everyone's daily life and profoundly altering the
                 course of human society. The intention behind
                 developing AI was and is to benefit humans by
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:ALC,
  author =       "Pan Li and Brian Brost and Alexander Tuzhilin",
  title =        "Adversarial Learning for Cross Domain
                 Recommendations",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "5:1--5:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3548776",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3548776",
  abstract =     "Existing cross domain recommender systems typically
                 assume homogeneous user preferences across multiple
                 domains to capture similarities of user-item
                 interactions and to provide cross domain
                 recommendations accordingly. Meanwhile, the
                 heterogeneity of user \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2023:IDM,
  author =       "Shaohan Chen and Chuanhou Gao and Ping Zhang",
  title =        "Incorporation of Data-Mined Knowledge into Black-Box
                 {SVM} for Interpretability",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "6:1--6:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3548775",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3548775",
  abstract =     "The lack of interpretability often makes black-box
                 models challenging to be applied in many practical
                 domains. For this reason, the current work, from the
                 black-box model input port, proposes to incorporate
                 data-mined knowledge into the black-box soft-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2023:HSI,
  author =       "Wei-Yao Wang and Teng-Fong Chan and Wen-Chih Peng and
                 Hui-Kuo Yang and Chih-Chuan Wang and Yao-Chung Fan",
  title =        "How Is the Stroke? {Inferring} Shot Influence in
                 Badminton Matches via Long Short-term Dependencies",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "7:1--7:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3551391",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3551391",
  abstract =     "Identifying significant shots in a rally is important
                 for evaluating players' performance in badminton
                 matches. While there are several studies that have
                 quantified player performance in other sports,
                 analyzing badminton data has remained untouched. In
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hao:2023:HMA,
  author =       "Qianyue Hao and Fengli Xu and Lin Chen and Pan Hui and
                 Yong Li",
  title =        "Hierarchical Multi-agent Model for Reinforced Medical
                 Resource Allocation with Imperfect Information",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "8:1--8:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3552436",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3552436",
  abstract =     "With the advent of the COVID-19 pandemic, the shortage
                 in medical resources became increasingly more evident.
                 Therefore, efficient strategies for medical resource
                 allocation are urgently needed. However, conventional
                 rule-based methods employed by public \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Qin:2023:DGA,
  author =       "Xin Qin and Jindong Wang and Yiqiang Chen and Wang Lu
                 and Xinlong Jiang",
  title =        "Domain Generalization for Activity Recognition via
                 Adaptive Feature Fusion",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "9:1--9:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3552434",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3552434",
  abstract =     "Human activity recognition requires the efforts to
                 build a generalizable model using the training datasets
                 with the hope to achieve good performance in test
                 datasets. However, in real applications, the training
                 and testing datasets may have totally \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Freitas:2023:DLE,
  author =       "Lucas Freitas and Valter Martins and Marilton de
                 Aguiar and Lisane de Brisolara and Paulo Ferreira",
  title =        "Deep Learning Embedded into Smart Traps for Fruit
                 Insect Pests Detection",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "10:1--10:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3552435",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3552435",
  abstract =     "This article presents a novel approach to identify two
                 species of fruit insect pests as part of a network of
                 intelligent traps designed to monitor the population of
                 these insects in a plantation. The proposed approach
                 uses a simple Digital Image \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2023:SSD,
  author =       "Wenlu Yang and Hongjun Wang and Yinghui Zhang and
                 Zehao Liu and Tianrui Li",
  title =        "Self-supervised Discriminative Representation Learning
                 by Fuzzy Autoencoder",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "11:1--11:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3555777",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3555777",
  abstract =     "Representation learning based on autoencoders has
                 received great concern for its potential ability to
                 capture valuable latent information. Conventional
                 autoencoders pursue minimal reconstruction error, but
                 in most machine learning tasks such as \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2023:QOR,
  author =       "Jianqiu Xu and Hua Lu and Zhifeng Bao",
  title =        "A Query Optimizer for Range Queries over
                 Multi-Attribute Trajectories",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "12:1--12:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3555811",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3555811",
  abstract =     "A multi-attribute trajectory consists of a
                 spatio-temporal trajectory and a set of descriptive
                 attributes. Such data enrich the representation of
                 traditional spatio-temporal trajectories to have
                 comprehensive knowledge of moving objects. Range query
                 is a \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2023:DOL,
  author =       "Wendi Wu and Zongren Li and Yawei Zhao and Chen Yu and
                 Peilin Zhao and Ji Liu and Kunlun He",
  title =        "Decentralized Online Learning: Take Benefits from
                 Others' Data without Sharing Your Own to Track Global
                 Trend",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "13:1--13:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3559765",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3559765",
  abstract =     "Decentralized online learning (online learning in
                 decentralized networks) has been attracting more and
                 more attention, since it is believed that decentralized
                 online learning can help data providers cooperatively
                 better solve their online problems without \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{He:2023:FFA,
  author =       "Mingkai He and Jing Lin and Jinwei Luo and Weike Pan
                 and Zhong Ming",
  title =        "{FLAG}: a Feedback-aware Local and Global Model for
                 Heterogeneous Sequential Recommendation",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "14:1--14:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3557046",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3557046",
  abstract =     "Heterogeneous sequential recommendation that models
                 sequences of items associated with more than one type
                 of feedback such as examinations and purchases is an
                 emerging topic in the research community, which is also
                 an important problem in many real-world \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lyu:2023:RLL,
  author =       "Gengyu Lyu and Songhe Feng and Wei Liu and Shuoyan Liu
                 and Congyan Lang",
  title =        "Redundant Label Learning via Subspace Representation
                 and Global Disambiguation",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "15:1--15:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3558547",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3558547",
  abstract =     "Redundant Label Learning (RLL) aims at inducing a
                 robust model from training data, where each example is
                 associated with a set of candidate labels, among which
                 some of them are incorrect. Most existing approaches
                 deal with such problem by disambiguating \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Barros:2023:NSS,
  author =       "Pedro Barros and Fabiane Queiroz and Fl{\'a}vio
                 Figueiredo and Jefersson A. {Dos Santos} and Heitor
                 Ramos",
  title =        "A New Similarity Space Tailored for Supervised Deep
                 Metric Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "16:1--16:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3559766",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3559766",
  abstract =     "We propose a novel deep metric learning method.
                 Differently from many works in this area, we define a
                 novel latent space obtained through an autoencoder. The
                 new space, namely S-space, is divided into different
                 regions describing positions where pairs of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sun:2023:MBR,
  author =       "Wei Sun and Shaoxiong Ji and Erik Cambria and Pekka
                 Marttinen",
  title =        "Multitask Balanced and Recalibrated Network for
                 Medical Code Prediction",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "17:1--17:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3563041",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3563041",
  abstract =     "Human coders assign standardized medical codes to
                 clinical documents generated during patients'
                 hospitalization, which is error prone and labor
                 intensive. Automated medical coding approaches have
                 been developed using machine learning methods, such as
                 deep \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shi:2023:MIL,
  author =       "Lei Shi and Yuankai Luo and Shuai Ma and Hanghang Tong
                 and Zhetao Li and Xiatian Zhang and Zhiguang Shan",
  title =        "Mobility Inference on Long-Tailed Sparse Trajectory",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "18:1--18:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3563457",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3563457",
  abstract =     "Analyzing the urban trajectory in cities has become an
                 important topic in data mining. How can we model the
                 human mobility consisting of stay and travel states
                 from the raw trajectory data? How can we infer these
                 mobility states from a single user's \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Leiva:2023:DUS,
  author =       "Luis A. Leiva and Asutosh Hota and Antti Oulasvirta",
  title =        "Describing {UI} Screenshots in Natural Language",
  journal =      j-TIST,
  volume =       "14",
  number =       "1",
  pages =        "19:1--19:??",
  month =        feb,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3564702",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Mar 11 08:47:24 MST 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3564702",
  abstract =     "Being able to describe any user interface (UI)
                 screenshot in natural language can promote
                 understanding of the main purpose of the UI, yet
                 currently it cannot be accomplished with
                 state-of-the-art captioning systems. We introduce XUI,
                 a novel method \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:SDH,
  author =       "Jia Li and Dandan Song and Zhijing Wu",
  title =        "A Semantically Driven Hybrid Network for Unsupervised
                 Entity Alignment",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "20:1--20:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3567829",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3567829",
  abstract =     "The major challenge in the task of entity alignment
                 (EA) lies in the heterogeneity of the knowledge graph.
                 The traditional solution to EA is to first map entities
                 to the same space via knowledge embedding and then
                 calculate the similarity between entities \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:RBE,
  author =       "Lei Li and Yongfeng Zhang and Li Chen",
  title =        "On the Relationship between Explanation and
                 Recommendation: Learning to Rank Explanations for
                 Improved Performance",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "21:1--21:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3569423",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3569423",
  abstract =     "Explaining to users why some items are recommended is
                 critical, as it can help users to make better
                 decisions, increase their satisfaction, and gain their
                 trust in recommender systems (RS). However, existing
                 explainable RS usually consider explanation as
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2023:SCL,
  author =       "Yanzhao Wu and Ling Liu",
  title =        "Selecting and Composing Learning Rate Policies for
                 Deep Neural Networks",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "22:1--22:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3570508",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3570508",
  abstract =     "The choice of learning rate (LR) functions and
                 policies has evolved from a simple fixed LR to the
                 decaying LR and the cyclic LR, aiming to improve the
                 accuracy and reduce the training time of Deep Neural
                 Networks (DNNs). This article presents a systematic
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2023:NTM,
  author =       "Amulya Gupta and Zhu Zhang",
  title =        "Neural Topic Modeling via Discrete Variational
                 Inference",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "23:1--23:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3570509",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3570509",
  abstract =     "Topic models extract commonly occurring latent topics
                 from textual data. Statistical models such as Latent
                 Dirichlet Allocation do not produce dense topic
                 embeddings readily integratable into neural
                 architectures, whereas earlier neural topic models are
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shen:2023:CST,
  author =       "Ziyu Shen and Binghui Liu and Qing Zhou and Zheng Liu
                 and Bin Xia and Yun Li",
  title =        "Cost-sensitive Tensor-based Dual-stage Attention
                 {LSTM} with Feature Selection for Data Center Server
                 Power Forecasting",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "24:1--24:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3569422",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3569422",
  abstract =     "Power forecasting has a guiding effect on power-aware
                 scheduling strategies to reduce unnecessary power
                 consumption in data centers. Many metrics related to
                 power consumption can be collected in physical servers,
                 such as the status of CPU, memory, and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lyu:2023:PKC,
  author =       "Gengyu Lyu and Songhe Feng and Shaokai Wang and Zhen
                 Yang",
  title =        "Prior Knowledge Constrained Adaptive Graph Framework
                 for Partial Label Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "25:1--25:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3569421",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3569421",
  abstract =     "Partial label learning (PLL) aims to learn a robust
                 multi-class classifier from the ambiguous data, where
                 each instance is given with several candidate labels,
                 among which only one label is real. Most existing
                 methods usually cope with such problem by \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sarkar:2023:AHM,
  author =       "Souvika Sarkar and Biddut Sarker Bijoy and Syeda
                 Jannatus Saba and Dongji Feng and Yash Mahajan and
                 Mohammad Ruhul Amin and Sheikh Rabiul Islam and Shubhra
                 Kanti Karmaker (``Santu'')",
  title =        "Ad-Hoc Monitoring of {COVID-19} Global Research Trends
                 for Well-Informed Policy Making",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "26:1--26:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3576901",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3576901",
  abstract =     "The COVID-19 pandemic has affected millions of people
                 worldwide with severe health, economic, social, and
                 political implications. Healthcare Policy Makers (HPMs)
                 and medical experts are at the core of responding to
                 this continuously evolving pandemic \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2023:OOS,
  author =       "Donglin Zhang and Xiao-Jun Wu and Guoqing Chen",
  title =        "{ONION}: Online Semantic Autoencoder Hashing for
                 Cross-Modal Retrieval",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "27:1--27:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3572032",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3572032",
  abstract =     "Cross-modal hashing (CMH) has recently received
                 increasing attention with the merit of speed and
                 storage in performing large-scale cross-media
                 similarity search. However, most existing cross-media
                 approaches utilize the batch-based mode to update hash
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ren:2023:GLA,
  author =       "Jing Ren and Feng Xia and Ivan Lee and Azadeh Noori
                 Hoshyar and Charu Aggarwal",
  title =        "Graph Learning for Anomaly Analytics: Algorithms,
                 Applications, and Challenges",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "28:1--28:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3570906",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3570906",
  abstract =     "Anomaly analytics is a popular and vital task in
                 various research contexts that has been studied for
                 several decades. At the same time, deep learning has
                 shown its capacity in solving many graph-based tasks,
                 like node classification, link prediction, and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kang:2023:HET,
  author =       "Jian Kang and Dan Lin",
  title =        "Highly Efficient Traffic Planning for Autonomous
                 Vehicles to Cross Intersections Without a Stop",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "29:1--29:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3572034",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3572034",
  abstract =     "Waiting in a long queue at traffic lights not only
                 wastes valuable time but also pollutes the environment.
                 With the advances in autonomous vehicles and 5G
                 networks, the previous jamming scenarios at
                 intersections may be turned into non-stop weaving
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tian:2023:SFU,
  author =       "Qing Tian and Shun Peng and Tinghuai Ma",
  title =        "Source-free Unsupervised Domain Adaptation with
                 Trusted Pseudo Samples",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "30:1--30:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3570510",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3570510",
  abstract =     "Source-free unsupervised domain adaptation (SFUDA)
                 aims to accomplish the task of adaptation to the target
                 domain by utilizing pre-trained source domain model and
                 unlabeled target domain samples, without directly
                 accessing any source domain data. Although \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2023:GFF,
  author =       "Hao Wu and Jianyang Gu and Xiaojin Fan and He Li and
                 Lidong Xie and Jian Zhao",
  title =        "{$3$D}-Guided Frontal Face Generation for
                 Pose-Invariant Recognition",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "31:1--31:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3572035",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3572035",
  abstract =     "Although deep learning techniques have achieved
                 extraordinary accuracy in recognizing human faces, the
                 pose variances of images captured in real-world
                 scenarios still hinder reliable model appliance. To
                 mitigate this gap, we propose to recognize faces via
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yao:2023:CCD,
  author =       "Jing Yao and Zheng Liu and Junhan Yang and Zhicheng
                 Dou and Xing Xie and Ji-Rong Wen",
  title =        "{CDSM}: Cascaded Deep Semantic Matching on Textual
                 Graphs Leveraging Ad-hoc Neighbor Selection",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "32:1--32:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3573204",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3573204",
  abstract =     "Deep semantic matching aims at discriminating the
                 relationship between documents based on deep neural
                 networks. In recent years, it becomes increasingly
                 popular to organize documents with a graph structure,
                 then leverage both the intrinsic document \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2023:DRL,
  author =       "Meng Xu and Jianping Wang",
  title =        "Deep Reinforcement Learning for Parameter Tuning of
                 Robot Visual Servoing",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "33:1--33:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579829",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579829",
  abstract =     "Robot visual servoing controls the motion of a robot
                 through real-time visual observations. Kinematics is a
                 key approach to achieving visual servoing. One key
                 challenge of kinematics-based visual servoing is that
                 it requires time-varying parameter \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tian:2023:DLD,
  author =       "Jieru Tian and Yongxin Wang and Zhenduo Chen and Xin
                 Luo and Xinshun Xu",
  title =        "Diagnose Like Doctors: Weakly Supervised Fine-Grained
                 Classification of Breast Cancer",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "34:1--34:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3572033",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3572033",
  abstract =     "Breast cancer is the most common type of cancers in
                 women. Therefore, how to accurately and timely diagnose
                 it becomes very important. Some computer-aided
                 diagnosis models based on pathological images have been
                 proposed for this task. However, there are \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2023:ESV,
  author =       "Guozhen Zhang and Jinhui Yi and Jian Yuan and Yong Li
                 and Depeng Jin",
  title =        "{DAS}: Efficient Street View Image Sampling for Urban
                 Prediction",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "35:1--35:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3576902",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3576902",
  abstract =     "Street view data is one of the most common data
                 sources for urban prediction tasks, such as estimating
                 socioeconomic status, sensing physical urban changes,
                 and identifying urban villages. Typical research in
                 this field consists of two steps: acquiring a
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yu:2023:STG,
  author =       "Shuo Yu and Feng Xia and Shihao Li and Mingliang Hou
                 and Quan Z. Sheng",
  title =        "Spatio-temporal Graph Learning for Epidemic
                 Prediction",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "36:1--36:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579815",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579815",
  abstract =     "The COVID-19 pandemic has posed great challenges to
                 public health services, government agencies, and
                 policymakers, raising huge social conflicts between
                 public health and economic resilience. Policies such as
                 reopening or closure of business activities \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fang:2023:RAG,
  author =       "Yujie Fang and Xin Li and Rui Ye and Xiaoyan Tan and
                 Peiyao Zhao and Mingzhong Wang",
  title =        "Relation-aware Graph Convolutional Networks for
                 Multi-relational Network Alignment",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "37:1--37:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579827",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579827",
  abstract =     "The alignment of multiple multi-relational networks,
                 such as knowledge graphs, is vital for many AI
                 applications. In comparison with existing GCNs which
                 cannot fully utilize relational information of multiple
                 types, we propose a relation-aware graph \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yin:2023:CBA,
  author =       "Chunyong Yin and Shuangshuang Chen and Zhichao Yin",
  title =        "Clustering-based Active Learning Classification
                 towards Data Stream",
  journal =      j-TIST,
  volume =       "14",
  number =       "2",
  pages =        "38:1--38:??",
  month =        apr,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579830",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Mar 21 06:21:38 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579830",
  abstract =     "Many practical applications, such as social media and
                 monitoring system, will constantly generate streaming
                 data, which has problems of instability, lack of labels
                 and multiclass imbalance. In order to solve these
                 problems, a cluster-based active learning \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zaji:2023:OBD,
  author =       "Amirhossein Zaji and Zheng Liu and Takashi Bando and
                 Lihua Zhao",
  title =        "Ontology-Based Driving Simulation for Traffic Lights
                 Optimization",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "39:1--39:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579839",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579839",
  abstract =     "Traffic lights optimization is one of the principal
                 components to lessen the traffic flow and travel time
                 in an urban area. The present article seeks to
                 introduce a novel procedure to design the traffic
                 lights in a city using evolutionary-based \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cai:2023:FLG,
  author =       "Yaoming Cai and Zijia Zhang and Pedram Ghamisi and
                 Zhihua Cai and Xiaobo Liu and Yao Ding",
  title =        "Fully Linear Graph Convolutional Networks for
                 Semi-Supervised and Unsupervised Classification",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "40:1--40:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579828",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579828",
  abstract =     "This article presents FLGC, a simple yet effective
                 fully linear graph convolutional network for
                 semi-supervised and unsupervised learning. Instead of
                 using gradient descent, we train FLGC based on
                 computing a global optimal closed-form solution with a
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Manfredi:2023:TST,
  author =       "Gilda Manfredi and Nicola Capece and Ugo Erra and
                 Monica Gruosso",
  title =        "{TreeSketchNet}: From Sketch to {$3$D} Tree Parameters
                 Generation",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "41:1--41:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579831",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579831",
  abstract =     "Three-dimensional (3D) modeling of non-linear objects
                 from stylized sketches is a challenge even for computer
                 graphics experts. The extrapolation of object
                 parameters from a stylized sketch is a very complex and
                 cumbersome task. In the present study, we \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2023:CVP,
  author =       "Wenshan Wang and Su Yang and Weishan Zhang",
  title =        "Customer Volume Prediction Using Fusion of
                 Shared-private Dynamic Weighting over Multiple
                 Modalities",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "42:1--42:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579826",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579826",
  abstract =     "Customer volume prediction is crucial for a variety of
                 urban applications, such as store location selection.
                 So far, the key challenge lies in how to fuse multiple
                 modalities from different data sources, on account of
                 the massive amount of data accessible,. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2023:REK,
  author =       "Lu Jiang and Kunpeng Liu and Yibin Wang and Dongjie
                 Wang and Pengyang Wang and Yanjie Fu and Minghao Yin",
  title =        "Reinforced Explainable Knowledge Concept
                 Recommendation in {MOOCs}",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "43:1--43:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3579991",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3579991",
  abstract =     "In this article, we study knowledge concept
                 recommendation in Massive Open Online Courses (MOOCs)
                 in an explainable manner. Knowledge concepts, composing
                 course units (e.g., videos) in MOOCs, refer to topics
                 and skills that students are expected to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sun:2023:RLQ,
  author =       "Shuo Sun and Rundong Wang and Bo An",
  title =        "Reinforcement Learning for Quantitative Trading",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "44:1--44:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3582560",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3582560",
  abstract =     "Quantitative trading (QT), which refers to the usage
                 of mathematical models and data-driven techniques in
                 analyzing the financial market, has been a popular
                 topic in both academia and financial industry since
                 1970s. In the last decade, reinforcement \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dai:2023:SAT,
  author =       "Zeyu Dai and Shengcai Liu and Qing Li and Ke Tang",
  title =        "Saliency Attack: Towards Imperceptible Black-box
                 Adversarial Attack",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "45:1--45:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3582563",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3582563",
  abstract =     "Deep neural networks are vulnerable to adversarial
                 examples, even in the black-box setting where the
                 attacker is only accessible to the model output. Recent
                 studies have devised effective black-box attacks with
                 high query efficiency. However, such \ldots{}.",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:RLE,
  author =       "Xing Li and Wei Wei and Ruizhi Zhang and Zhenyu Shi
                 and Zhiming Zheng and Xiangnan Feng",
  title =        "Representation Learning of Enhanced Graphs Using
                 Random Walk Graph Convolutional Network",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "46:1--46:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3582841",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3582841",
  abstract =     "Nowadays, graph structure data has played a key role
                 in machine learning because of its simple topological
                 structure, and therefore, the graph representation
                 learning methods have attracted great attention. And it
                 turns out that the low-dimensional \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cai:2023:RDR,
  author =       "Mingjian Cai and Xiangjun Shen and Stanley Ebhohimhen
                 Abhadiomhen and Yingfeng Cai and Sirui Tian",
  title =        "Robust Dimensionality Reduction via Low-rank
                 {Laplacian} Graph Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "47:1--47:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3582698",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3582698",
  abstract =     "Manifold learning is a widely used technique for
                 dimensionality reduction as it can reveal the intrinsic
                 geometric structure of data. However, its performance
                 decreases drastically when data samples are
                 contaminated by heavy noise or occlusions, which
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yin:2023:HRD,
  author =       "Chunyong Yin and Sun Zhang and Qingkui Zeng",
  title =        "Hybrid Representation and Decision Fusion towards
                 Visual-textual Sentiment",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "48:1--48:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3583076",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3583076",
  abstract =     "The rising use of online media has changed social
                 customs of the public. Users have become gradually
                 accustomed to sharing daily experiences and publishing
                 personal opinions on social networks. Social data
                 carrying with emotions and attitudes have \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2023:MWB,
  author =       "En Xu and Zhiwen Yu and Zhuo Sun and Bin Guo and Lina
                 Yao",
  title =        "Modeling Within-Basket Auxiliary Item Recommendation
                 with Matchability and Ubiquity",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "49:1--49:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3574157",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3574157",
  abstract =     "Within-basket recommendation is to recommend suitable
                 items for the current basket with some already known
                 items. The within-basket auxiliary item recommendation
                 ( WBAIR ) is to recommend auxiliary items based on the
                 primary items in the basket. Such a task \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wen:2023:EWC,
  author =       "Haomin Wen and Youfang Lin and Fan Wu and Huaiyu Wan
                 and Zhongxiang Sun and Tianyue Cai and Hongyu Liu and
                 Shengnan Guo and Jianbin Zheng and Chao Song and Lixia
                 Wu",
  title =        "Enough Waiting for the Couriers: Learning to Estimate
                 Package Pick-up Arrival Time from Couriers'
                 Spatial-Temporal Behaviors",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "50:1--50:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3582561",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3582561",
  abstract =     "In intelligent logistics systems, predicting the
                 Estimated Time of Pick-up Arrival (ETPA) of packages is
                 a crucial task, which aims to predict the courier's
                 arrival time to all the unpicked-up packages at any
                 time. Accurate prediction of ETPA can help \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mei:2023:FRT,
  author =       "Jianbiao Mei and Mengmeng Wang and Yu Yang and Yanjun
                 Li and Yong Liu",
  title =        "Fast Real-Time Video Object Segmentation with a
                 Tangled Memory Network",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "51:1--51:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3585076",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3585076",
  abstract =     "In this article, we present a fast real-time tangled
                 memory network that segments the objects effectively
                 and efficiently for semi-supervised video object
                 segmentation (VOS). We propose a tangled reference
                 encoder and a memory bank organization mechanism
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2023:TBE,
  author =       "Hu Wang and Hui Li and Meng Wang and Jiangtao Cui",
  title =        "Toward Balancing the Efficiency and Effectiveness in
                 $k$-Facility Relocation Problem",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "52:1--52:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3587039",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3587039",
  abstract =     "Facility Relocation (FR), which is an effort to
                 reallocate the placement of facilities to adapt to the
                 changes of urban planning, has remarkable impact on
                 many areas. Existing solutions fail to guarantee the
                 result quality on relocating k {$>$} 1 facilities.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Luo:2023:HLR,
  author =       "Qilun Luo and Ming Yang and Wen Li and Mingqing Xiao",
  title =        "Hyper-{Laplacian} Regularized Multi-View Clustering
                 with Exclusive {L21} Regularization and Tensor
                 Log-Determinant Minimization Approach",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "53:1--53:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3587034",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3587034",
  abstract =     "Multi-view clustering aims to capture the multiple
                 views inherent information by identifying the data
                 clustering that reflects distinct features of datasets.
                 Since there is a consensus in literature that different
                 views of a dataset share a common latent \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Preti:2023:MAM,
  author =       "Giulia Preti and Gianmarco {De Francisci Morales} and
                 Matteo Riondato",
  title =        "{MaNIACS}: Approximate Mining of Frequent Subgraph
                 Patterns through Sampling",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "54:1--54:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3587254",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3587254",
  abstract =     "We present MaNIACS, a sampling-based randomized
                 algorithm for computing high-quality approximations of
                 the collection of the subgraph patterns that are
                 frequent in a single, large, vertex-labeled graph,
                 according to the Minimum Node Image-based (MNI)
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gao:2023:DIT,
  author =       "Lei Gao and Ling Guan",
  title =        "A Discriminant Information Theoretic Learning
                 Framework for Multi-modal Feature Representation",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "55:1--55:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3587253",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3587253",
  abstract =     "As sensory and computing technology advances,
                 multi-modal features have been playing a central role
                 in ubiquitously representing patterns and phenomena for
                 effective information analysis and recognition. As a
                 result, multi-modal feature representation is
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2023:ERV,
  author =       "Trasha Gupta and Rajni Jindal and Indu Sreedevi",
  title =        "Empirical Review of Various Thermography-based
                 Computer-aided Diagnostic Systems for Multiple
                 Diseases",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "56:1--56:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3583778",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3583778",
  abstract =     "The lifestyle led by today's generation and its
                 negligence towards health is highly susceptible to
                 various diseases. Developing countries are at a higher
                 risk of mortality due to late-stage presentation,
                 inaccessible diagnosis, and high-cost treatment.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2023:RPL,
  author =       "Wun-Ting Yang and Chiao-Ting Chen and Chuan-Yun Sang
                 and Szu-Hao Huang",
  title =        "Reinforced {PU}-learning with Hybrid Negative Sampling
                 Strategies for Recommendation",
  journal =      j-TIST,
  volume =       "14",
  number =       "3",
  pages =        "57:1--57:??",
  month =        jun,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3582562",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Jun 1 14:12:36 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3582562",
  abstract =     "The data of recommendation systems typically only
                 contain the purchased item as positive data and other
                 un-purchased items as unlabeled data. To train a good
                 recommendation model, in addition to the known positive
                 information, we also need high-quality \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xiang:2023:TQE,
  author =       "Tao Xiang and Hangcheng Liu and Shangwei Guo and Yan
                 Gan and Wenjian He and Xiaofeng Liao",
  title =        "Towards Query-Efficient Black-{Box} Attacks: a
                 Universal Dual Transferability-Based Framework",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "58:1--58:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3583777",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3583777",
  abstract =     "Adversarial attacks have threatened the application of
                 deep neural networks in security-sensitive scenarios.
                 Most existing black-box attacks fool the target model
                 by interacting with it many times and producing global
                 perturbations. However, all pixels \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lin:2023:CCD,
  author =       "Zhuoyi Lin and Lei Feng and Xingzhi Guo and Yu Zhang
                 and Rui Yin and Chee Keong Kwoh and Chi Xu",
  title =        "{COMET}: Convolutional Dimension Interaction for
                 Collaborative Filtering",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "59:1--59:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3588576",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3588576",
  abstract =     "Representation learning-based recommendation models
                 play a dominant role among recommendation techniques.
                 However, most of the existing methods assume both
                 historical interactions and embedding dimensions are
                 independent of each other, and thus \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2023:UUK,
  author =       "Yu Liu and Jingtao Ding and Yanjie Fu and Yong Li",
  title =        "{UrbanKG}: an Urban Knowledge Graph System",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "60:1--60:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3588577",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3588577",
  abstract =     "Every day, our living city produces a tremendous
                 amount of spatial-temporal data, involved with multiple
                 sources from the individual scale to the city scale.
                 Undoubtedly, such massive urban data can be explored
                 for a better city and better life, as what \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:LRS,
  author =       "Tong Li and Yanxin Xi and Huandong Wang and Yong Li
                 and Sasu Tarkoma and Pan Hui",
  title =        "Learning Representations of Satellite Imagery by
                 Leveraging Point-of-Interests",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "61:1--61:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3589344",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3589344",
  abstract =     "Satellite imagery depicts the Earth's surface remotely
                 and provides comprehensive information for many
                 applications, such as land use monitoring and urban
                 planning. Existing studies on unsupervised
                 representation learning for satellite images only take
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Baradaaji:2023:JLS,
  author =       "A. Baradaaji and F. Dornaika",
  title =        "Joint Latent Space and Label Inference Estimation with
                 Adaptive Fused Data and Label Graphs",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "62:1--62:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3590172",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3590172",
  abstract =     "Recently, structured computing has become an
                 interesting topic in the world of artificial
                 intelligence, especially in the field of machine
                 learning, as most researchers focus on the development
                 of graph-based semi-supervised learning models. In this
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gao:2023:CYF,
  author =       "Yujia Gao and Pengfei Wang and Liang Liu and Chi Zhang
                 and Huadong Ma",
  title =        "Configure Your Federation: Hierarchical
                 Attention-enhanced Meta-Learning Network for
                 Personalized Federated Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "63:1--63:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3591362",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3591362",
  abstract =     "Federated learning, as a distributed machine learning
                 framework, enables clients to conduct model training
                 without transmitting their data to the server, which is
                 used to solve the dilemma of data silos and data
                 privacy. It can work well on clients having \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jin:2023:DGC,
  author =       "Guangyin Jin and Huan Yan and Fuxian Li and Yong Li
                 and Jincai Huang",
  title =        "Dual Graph Convolution Architecture Search for Travel
                 Time Estimation",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "64:1--64:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3591361",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3591361",
  abstract =     "Travel time estimation (TTE) is a crucial task in
                 intelligent transportation systems, which has been
                 widely used in navigation and route planning. In recent
                 years, several deep learning frameworks have been
                 proposed to capture the dynamic features of road
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2023:NAL,
  author =       "Jinghui Zhang and Dingyang Lv and Qiangsheng Dai and
                 Fa Xin and Fang Dong",
  title =        "Noise-aware Local Model Training Mechanism for
                 Federated Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "65:1--65:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3591363",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3591363",
  abstract =     "As a new paradigm in training intelligent models,
                 federated learning is widely used to train a global
                 model without requiring local data to be uploaded from
                 end devices. However, there are often mislabeled
                 samples (i.e., noisy samples) in the dataset,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2023:RFS,
  author =       "Tianying Liu and Lu Zhang and Yang Wang and Jihong
                 Guan and Yanwei Fu and Jiajia Zhao and Shuigeng Zhou",
  title =        "Recent Few-shot Object Detection Algorithms: a Survey
                 with Performance Comparison",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "66:1--66:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3593588",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3593588",
  abstract =     "The generic object detection (GOD) task has been
                 successfully tackled by recent deep neural networks,
                 trained by an avalanche of annotated training samples
                 from some common classes. However, it is still
                 non-trivial to generalize these object detectors to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2023:CLM,
  author =       "Lingling Xu and Haoran Xie and Zongxi Li and Fu Lee
                 Wang and Weiming Wang and Qing Li",
  title =        "Contrastive Learning Models for Sentence
                 Representations",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "67:1--67:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3593590",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3593590",
  abstract =     "Sentence representation learning is a crucial task in
                 natural language processing, as the quality of learned
                 representations directly influences downstream tasks,
                 such as sentence classification and sentiment analysis.
                 Transformer-based pretrained \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kljucaric:2023:DLI,
  author =       "Luke Kljucaric and Alan D. George",
  title =        "Deep Learning Inferencing with High-performance
                 Hardware Accelerators",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "68:1--68:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3594221",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3594221",
  abstract =     "As computer architectures continue to integrate
                 application-specific hardware, it is critical to
                 understand the relative performance of devices for
                 maximum app acceleration. The goal of benchmarking
                 suites, such as MLPerf for analyzing machine learning
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Shi:2023:SLI,
  author =       "Yanhang Shi and Xue Li and Siguang Chen",
  title =        "Skin Lesion Intelligent Diagnosis in Edge Computing
                 Networks: an {FCL} Approach",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "69:1--69:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3595186",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3595186",
  abstract =     "In recent years, automatic skin lesion diagnosis
                 methods based on artificial intelligence have achieved
                 great success. However, the lack of labeled data,
                 visual similarity between skin diseases, and
                 restriction on private data sharing remain the major
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sun:2023:MUM,
  author =       "Li Sun and Zhongbao Zhang and Gen Li and Pengxin Ji
                 and Sen Su and Philip S. Yu",
  title =        "{MC$^2$}: Unsupervised Multiple Social Network
                 Alignment",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "70:1--70:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3596514",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3596514",
  abstract =     "Social network alignment, identifying social accounts
                 of the same individual across different social
                 networks, shows fundamental importance in a wide
                 spectrum of applications, such as link prediction and
                 information diffusion. Individuals more often than
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:YHY,
  author =       "Tong Li and Yong Li and Mingyang Zhang and Sasu
                 Tarkoma and Pan Hui",
  title =        "You Are How You Use Apps: User Profiling Based on
                 Spatiotemporal App Usage Behavior",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "71:1--71:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3597212",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3597212",
  abstract =     "Mobile apps have become an indispensable part of
                 people's daily lives. Users determine what apps to use
                 and when and where to use them based on their tastes,
                 interests, and personal demands, depending on their
                 personality traits. This article aims to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gunarathna:2023:RTR,
  author =       "Udesh Gunarathna and Hairuo Xie and Egemen Tanin and
                 Shanika Karunasekera and Renata Borovica-Gajic",
  title =        "Real-time Road Network Optimization with Coordinated
                 Reinforcement Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "72:1--72:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3603379",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3603379",
  abstract =     "Dynamic road network optimization has been used for
                 improving traffic flow in an infrequent and localized
                 manner. The development of intelligent systems and
                 technology provides an opportunity to improve the
                 frequency and scale of dynamic road network \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2023:HHG,
  author =       "Hanchen Yang and Wengen Li and Siyun Hou and Jihong
                 Guan and Shuigeng Zhou",
  title =        "{HiGRN}: a Hierarchical Graph Recurrent Network for
                 Global Sea Surface Temperature Prediction",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "73:1--73:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3597937",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3597937",
  abstract =     "Sea surface temperature (SST) is one critical
                 parameter of global climate change, and accurate SST
                 prediction is important to various applications, e.g.,
                 weather forecasting, fishing directions, and disaster
                 warnings. The global ocean system is unified \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Choi:2023:GNR,
  author =       "Jeongwhan Choi and Noseong Park",
  title =        "Graph Neural Rough Differential Equations for Traffic
                 Forecasting",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "74:1--74:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604808",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604808",
  abstract =     "Traffic forecasting is one of the most popular
                 spatio-temporal tasks in the field of machine learning.
                 A prevalent approach in the field is to combine graph
                 convolutional networks and recurrent neural networks
                 for the spatio-temporal processing. There has
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Maggi:2023:DAD,
  author =       "Fabrizio Maria Maggi and Andrea Marrella and Fabio
                 Patrizi and Vasyl Skydanienko",
  title =        "Data-Aware Declarative Process Mining with {SAT}",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "75:1--75:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3600106",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3600106",
  abstract =     "Process Mining is a family of techniques for analyzing
                 business process execution data recorded in event logs.
                 Process models can be obtained as output of automated
                 process discovery techniques or can be used as input of
                 techniques for conformance \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "75",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Guo:2023:FCP,
  author =       "Kun Guo and Wenzhong Guo and Enjie Ye and Yutong Fang
                 and Jiachen Zheng and Ximeng Liu and Kai Chen",
  title =        "Federated Clique Percolation for Privacy-preserving
                 Overlapping Community Detection",
  journal =      j-TIST,
  volume =       "14",
  number =       "4",
  pages =        "76:1--76:??",
  month =        aug,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604807",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Aug 19 07:08:56 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604807",
  abstract =     "Community structure is a typical characteristic of
                 complex networks. Finding communities in complex
                 networks has many important applications, such as the
                 advertisement and recommendation based on social
                 networks and the discovery of new protein molecules
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "76",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:JER,
  author =       "Qibin Li and Nianmin Yao and Nai Zhou and Jian Zhao
                 and Yanan Zhang",
  title =        "A Joint Entity and Relation Extraction Model based on
                 Efficient Sampling and Explicit Interaction",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "77:1--77:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604811",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604811",
  abstract =     "Joint entity and relation extraction (RE) construct a
                 framework for unifying entity recognition and
                 relationship extraction, and the approach can exploit
                 the dependencies between the two tasks to improve the
                 performance of the task. However, the existing
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "77",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2023:CFS,
  author =       "Shuai Yang and Xianjie Guo and Kui Yu and Xiaoling
                 Huang and Tingting Jiang and Jin He and Lichuan Gu",
  title =        "Causal Feature Selection in the Presence of Sample
                 Selection Bias",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "78:1--78:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604809",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604809",
  abstract =     "Almost all existing causal feature selection methods
                 are proposed without considering the problem of sample
                 selection bias. However, in practice, as data-gathering
                 process cannot be fully controlled, sample selection
                 bias often occurs, leading to spurious \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "78",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2023:DCT,
  author =       "Mudan Wang and Yuan Yuan and Huan Yan and Hongjie Sui
                 and Fan Zuo and Yue Liu and Yong Li and Depeng Jin",
  title =        "Discovering Causes of Traffic Congestion via Deep
                 Transfer Clustering",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "79:1--79:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604810",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604810",
  abstract =     "Traffic congestion incurs long delay in travel time,
                 which seriously affects our daily travel experiences.
                 Exploring why traffic congestion occurs is
                 significantly important to effectively address the
                 problem of traffic congestion and improve user
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "79",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mullner:2023:RNR,
  author =       "Peter M{\"u}llner and Elisabeth Lex and Markus Schedl
                 and Dominik Kowald",
  title =        "{ReuseKNN}: Neighborhood Reuse for Differentially
                 Private {KNN-Based} Recommendations",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "80:1--80:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3608481",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3608481",
  abstract =     "User-based KNN recommender systems ( UserKNN ) utilize
                 the rating data of a target user's k nearest neighbors
                 in the recommendation process. This, however, increases
                 the privacy risk of the neighbors, since the
                 recommendations could expose the neighbors' \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "80",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lu:2023:RLA,
  author =       "Sidi Lu and Xin Yuan and Aggelos K. Katsaggelos and
                 Weisong Shi",
  title =        "Reinforcement Learning for Adaptive Video Compressive
                 Sensing",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "81:1--81:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3608479",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3608479",
  abstract =     "We apply reinforcement learning to video compressive
                 sensing to adapt the compression ratio. Specifically,
                 video snapshot compressive imaging (SCI), which
                 captures high-speed video using a low-speed camera is
                 considered in this work, in which multiple ( B )
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "81",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhu:2023:UGR,
  author =       "Yanqiao Zhu and Yichen Xu and Feng Yu and Qiang Liu
                 and Shu Wu",
  title =        "Unsupervised Graph Representation Learning with
                 Cluster-aware Self-training and Refining",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "82:1--82:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3608480",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3608480",
  abstract =     "Unsupervised graph representation learning aims to
                 learn low-dimensional node embeddings without
                 supervision while preserving graph topological
                 structures and node attributive features. Previous
                 Graph Neural Networks (GNN) require a large number of
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "82",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Goethals:2023:PIC,
  author =       "Sofie Goethals and Kenneth S{\"o}rensen and David
                 Martens",
  title =        "The Privacy Issue of Counterfactual Explanations:
                 Explanation Linkage Attacks",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "83:1--83:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3608482",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3608482",
  abstract =     "Black-box machine learning models are used in an
                 increasing number of high-stakes domains, and this
                 creates a growing need for Explainable AI (XAI).
                 However, the use of XAI in machine learning introduces
                 privacy risks, which currently remain largely
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "83",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Han:2023:DSA,
  author =       "Zhenyu Han and Siran Ma and Changzheng Gao and Erzhuo
                 Shao and Yulai Xie and Yang Zhang and Lu Geng and Yong
                 Li",
  title =        "Disease Simulation in Airport Scenario Based on
                 Individual Mobility Model",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "84:1--84:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3593589",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3593589",
  abstract =     "As the rapid-spreading disease COVID-19 occupies the
                 world, most governments adopt strict control policies
                 to alleviate the impact of the virus. These policies
                 successfully reduced the prevalence and delayed the
                 epidemic peak, while they are also \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "84",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yu:2023:ODI,
  author =       "Guangsheng Yu and Xu Wang and Caijun Sun and Ping Yu
                 and Wei Ni and Ren Ping Liu",
  title =        "Obfuscating the Dataset: Impacts and Applications",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "85:1--85:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3597936",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3597936",
  abstract =     "Obfuscating a dataset by adding random noises to
                 protect the privacy of sensitive samples in the
                 training dataset is crucial to prevent data leakage to
                 untrusted parties when dataset sharing is essential. We
                 conduct comprehensive experiments to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "85",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Maddalena:2023:QEP,
  author =       "Eddy Maddalena and Luis-Daniel Ib{\'a}{\~n}ez and Neal
                 Reeves and Elena Simperl",
  title =        "{Qrowdsmith}: Enhancing Paid Microtask Crowdsourcing
                 with Gamification and Furtherance Incentives",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "86:1--86:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604940",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604940",
  abstract =     "Microtask crowdsourcing platforms are social
                 intelligence systems in which volunteers, called
                 crowdworkers, complete small, repetitive tasks in
                 return for a small fee. Beyond payments, task
                 requesters are considering non-monetary incentives such
                 as points,. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "86",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhadan:2023:MAR,
  author =       "Anastasia Zhadan and Alexander Allahverdyan and Ivan
                 Kondratov and Vikenty Mikheev and Ovanes Petrosian and
                 Aleksei Romanovskii and Vitaliy Kharin",
  title =        "Multi-agent Reinforcement Learning-based Adaptive
                 Heterogeneous {DAG} Scheduling",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "87:1--87:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3610300",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3610300",
  abstract =     "Static scheduling of computational workflow
                 represented by a directed acyclic graph (DAG) is an
                 important problem in many areas of computer science.
                 The main idea and novelty of the proposed algorithm is
                 an adaptive heuristic or graph metric that uses a
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "87",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2023:DDD,
  author =       "Kuan-Chun Chen and Cheng-Te Li and Kuo-Jung Lee",
  title =        "{DDNAS}: Discretized Differentiable Neural
                 Architecture Search for Text Classification",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "88:1--88:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3610299",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3610299",
  abstract =     "Neural Architecture Search (NAS) has shown promising
                 capability in learning text representation. However,
                 existing text-based NAS neither performs a learnable
                 fusion of neural operations to optimize the
                 architecture nor encodes the latent hierarchical
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "88",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mahesar:2023:ASD,
  author =       "Quratul-Ain Mahesar and Simon Parsons",
  title =        "Argument Schemes and a Dialogue System for Explainable
                 Planning",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "89:1--89:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3610301",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3610301",
  abstract =     "Artificial Intelligence (AI) is being increasingly
                 deployed in practical applications. However, there is a
                 major concern whether AI systems will be trusted by
                 humans. To establish trust in AI systems, there is a
                 need for users to understand the reasoning \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "89",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Deng:2023:RLP,
  author =       "Bangchao Deng and Dingqi Yang and Bingqing Qu and
                 Benjamin Fankhauser and Philippe Cudre-Mauroux",
  title =        "Robust Location Prediction over Sparse Spatiotemporal
                 Trajectory Data: Flashback to the Right Moment!",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "90:1--90:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3616541",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3616541",
  abstract =     "As a fundamental problem in human mobility modeling,
                 location prediction forecasts a user's next location
                 based on historical user mobility trajectories.
                 Recurrent neural networks (RNNs) have been widely used
                 to capture sequential patterns of user visited
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "90",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dominguez-Martin:2023:NAF,
  author =       "Javier Dom{\'\i}nguez-Mart{\'\i}n and Mar{\'\i}a J.
                 G{\'o}mez-Silva and Arturo {De la Escalera}",
  title =        "Neural Architectures for Feature Embedding in Person
                 Re-Identification: a Comparative View",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "91:1--91:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3610298",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3610298",
  abstract =     "Solving Person Re-Identification (Re-Id) through Deep
                 Convolutional Neural Networks is a daunting challenge
                 due to the small size and variety of the training data,
                 especially in Single-Shot Re-Id, where only two images
                 per person are available. The lack \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "91",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhao:2023:FCG,
  author =       "Tianxiang Zhao and Dongsheng Luo and Xiang Zhang and
                 Suhang Wang",
  title =        "Faithful and Consistent Graph Neural Network
                 Explanations with Rationale Alignment",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "92:1--92:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3616542",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3616542",
  abstract =     "Uncovering rationales behind predictions of graph
                 neural networks (GNNs) has received increasing
                 attention over recent years. Instance-level GNN
                 explanation aims to discover critical input elements,
                 such as nodes or edges, that the target GNN relies upon
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "92",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhu:2023:LSA,
  author =       "Yupeng Zhu and Yanxiang Chen and Zuxing Zhao and
                 Xueliang Liu and Jinlin Guo",
  title =        "Local Self-attention-based Hybrid Multiple Instance
                 Learning for Partial Spoof Speech Detection",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "93:1--93:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3616540",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3616540",
  abstract =     "The development of speech synthesis technology has
                 increased the attention toward the threat of spoofed
                 speech. Although various high-performance spoofing
                 countermeasures have been proposed in recent years, a
                 particular scenario is overlooked: partially \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "93",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Moscato:2023:FSN,
  author =       "Vincenzo Moscato and Marco Postiglione and Giancarlo
                 Sperl{\'\i}",
  title =        "Few-shot Named Entity Recognition: Definition,
                 Taxonomy and Research Directions",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "94:1--94:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3609483",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3609483",
  abstract =     "Recent years have seen an exponential growth (+98\% in
                 2022 w.r.t. the previous year) of the number of
                 research articles in the few-shot learning field, which
                 aims at training machine learning models with extremely
                 limited available data. The research \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "94",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:FRF,
  author =       "Yunqi Li and Hanxiong Chen and Shuyuan Xu and
                 Yingqiang Ge and Juntao Tan and Shuchang Liu and
                 Yongfeng Zhang",
  title =        "Fairness in Recommendation: Foundations, Methods, and
                 Applications",
  journal =      j-TIST,
  volume =       "14",
  number =       "5",
  pages =        "95:1--95:??",
  month =        oct,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3610302",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Oct 17 05:58:14 MDT 2023",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3610302",
  abstract =     "As one of the most pervasive applications of machine
                 learning, recommender systems are playing an important
                 role on assisting human decision-making. The
                 satisfaction of users and the interests of platforms
                 are closely related to the quality of the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "95",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Teng:2023:IHF,
  author =       "Shang-Hua Teng",
  title =        "``{Intelligent} Heuristics Are the Future of
                 Computing''",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "96:1--96:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627708",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627708",
  abstract =     "Back in 1988, the partial game trees explored by
                 computer chess programs were among the largest search
                 structures in real-world computing. Because the game
                 tree is too large to be fully evaluated, chess programs
                 must make heuristic strategic decisions \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "96",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Rokh:2023:CSM,
  author =       "Babak Rokh and Ali Azarpeyvand and Alireza
                 Khanteymoori",
  title =        "A Comprehensive Survey on Model Quantization for Deep
                 Neural Networks in Image Classification",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "97:1--97:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3623402",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3623402",
  abstract =     "Recent advancements in machine learning achieved by
                 Deep Neural Networks (DNNs) have been significant.
                 While demonstrating high accuracy, DNNs are associated
                 with a huge number of parameters and computations,
                 which leads to high memory usage and energy \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "97",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2023:TPU,
  author =       "Xiaojin Zhang and Yan Kang and Kai Chen and Lixin Fan
                 and Qiang Yang",
  title =        "Trading Off Privacy, Utility, and Efficiency in
                 Federated Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "98:1--98:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3595185",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3595185",
  abstract =     "Federated learning (FL) enables participating parties
                 to collaboratively build a global model with boosted
                 utility without disclosing private data information.
                 Appropriate protection mechanisms have to be adopted to
                 fulfill the opposing requirements in \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "98",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2023:SHA,
  author =       "Bolei Chen and Yongzheng Cui and Ping Zhong and Wang
                 Yang and Yixiong Liang and Jianxin Wang",
  title =        "{STExplorer}: a Hierarchical Autonomous Exploration
                 Strategy with Spatio-temporal Awareness for Aerial
                 Robots",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "99:1--99:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3595184",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3595184",
  abstract =     "The autonomous exploration task we consider requires
                 Unmanned Aerial Vehicles (UAVs) to actively navigate
                 through unknown environments with the goal of fully
                 perceiving and mapping the environments. Some existing
                 exploration strategies suffer from rough \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "99",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2023:AAN,
  author =       "Yihao Zhang and Chu Zhao and Weiwen Liao and Wei Zhou
                 and Meng Yuan",
  title =        "Asymmetrical Attention Networks Fused Autoencoder for
                 Debiased Recommendation",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "100:1--100:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3596498",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3596498",
  abstract =     "Popularity bias is a massive challenge for
                 autoencoder-based models, which decreases the level of
                 personalization and hurts the fairness of
                 recommendations. User reviews reflect their preferences
                 and help mitigate bias or unfairness in the
                 recommendation. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "100",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2023:UGI,
  author =       "Yingwen Wu and Sizhe Chen and Kun Fang and Xiaolin
                 Huang",
  title =        "Unifying Gradients to Improve Real-World Robustness
                 for Deep Networks",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "101:1--101:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3617895",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3617895",
  abstract =     "The wide application of deep neural networks (DNNs)
                 demands an increasing amount of attention to their
                 real-world robustness, i.e., whether a DNN resists
                 black-box adversarial attacks, among which score-based
                 query attacks (SQAs) are the most threatening
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "101",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yao:2023:AGA,
  author =       "Rui Yao and Ying Chen and Yong Zhou and Fuyuan Hu and
                 Jiaqi Zhao and Bing Liu and Zhiwen Shao",
  title =        "Attention-guided Adversarial Attack for Video Object
                 Segmentation",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "102:1--102:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3617067",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3617067",
  abstract =     "Video Object Segmentation (VOS) methods have made many
                 breakthroughs with the help of the continuous
                 development and advancement of deep learning. However,
                 the deep learning model is vulnerable to malicious
                 adversarial attacks, which mislead the model to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "102",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lin:2023:MAU,
  author =       "Rui Lin and Jing Fan and Haifeng Wu",
  title =        "Multi-aspect Understanding with Cooperative Graph
                 Attention Networks for Medical Dialogue Information
                 Extraction",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "103:1--103:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3620675",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3620675",
  abstract =     "Medical dialogue information extraction is an
                 important but challenging task for Electronic Medical
                 Records. Existing medical information extraction
                 methods ignore the crucial information of sentence and
                 multi-level dependency in dialogue, which limits
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "103",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kasthuriarachchy:2023:MST,
  author =       "Buddhika Kasthuriarachchy and Madhu Chetty and Adrian
                 Shatte and Darren Walls",
  title =        "Meaning-Sensitive Text Data Augmentation with
                 Intelligent Masking",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "104:1--104:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3623403",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3623403",
  abstract =     "With the recent popularity of applying large-scale
                 deep neural network-based models for natural language
                 processing (NLP), attention to develop methods for text
                 data augmentation is at its peak, since the limited
                 size of training data tends to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "104",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2023:LPP,
  author =       "Chu-Chen Li and Cheng-Te Li and Shou-De Lin",
  title =        "Learning Privacy-Preserving Embeddings for Image Data
                 to Be Published",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "105:1--105:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3623404",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3623404",
  abstract =     "Deep learning shows superiority in learning feature
                 representations that offer promising performance in
                 various application domains. Recent advances have shown
                 that privacy attributes of users and patients (e.g.,
                 identity, gender, and race) can be \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "105",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{u:2023:GBA,
  author =       "Shuaiyi L(y)u and Kai Wang and Yuliang Wei and Hongri
                 Liu and Qilin Fan and Bailing Wang",
  title =        "{GNN}-based Advanced Feature Integration for {ICS}
                 Anomaly Detection",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "106:1--106:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3620676",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3620676",
  abstract =     "Recent adversaries targeting the Industrial Control
                 Systems (ICSs) have started exploiting their
                 sophisticated inherent contextual semantics such as the
                 data associativity among heterogeneous field devices.
                 In light of the subtlety rendered in these \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "106",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2023:DWP,
  author =       "Meng Xu and Yechao She and Yang Jin and Jianping
                 Wang",
  title =        "Dynamic Weights and Prior Reward in Policy Fusion for
                 Compound Agent Learning",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "107:1--107:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3623405",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3623405",
  abstract =     "In Deep Reinforcement Learning (DRL) domain, a
                 compound learning task is often decomposed into several
                 sub-tasks in a divide-and-conquer manner, each trained
                 separately and then fused concurrently to achieve the
                 original task, referred to as policy \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "107",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tran:2023:MNB,
  author =       "Nhu-Thuat Tran and Hady W. Lauw",
  title =        "Memory Network-Based Interpreter of User Preferences
                 in Content-Aware Recommender Systems",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "108:1--108:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625239",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625239",
  abstract =     "This article introduces a novel architecture for two
                 objectives recommendation and interpretability in a
                 unified model. We leverage textual content as a source
                 of interpretability in content-aware recommender
                 systems. The goal is to characterize user \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "108",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2023:LEC,
  author =       "Jianhang Zhou and Guancheng Wang and Shaoning Zeng and
                 Bob Zhang",
  title =        "Learning with {Euler} Collaborative Representation for
                 Robust Pattern Analysis",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "109:1--109:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625235",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625235",
  abstract =     "The Collaborative Representation (CR) framework has
                 provided various effective and efficient solutions to
                 pattern analysis. By leveraging between discriminative
                 coefficient coding ($l_2$ regularization) and the best
                 reconstruction quality (collaboration), \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "109",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Reyes:2023:PCD,
  author =       "{\'O}scar Reyes and Eduardo P{\'e}rez",
  title =        "Performing Cancer Diagnosis via an Isoform Expression
                 Ranking-based {LSTM} Model",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "110:1--110:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625237",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625237",
  abstract =     "The known set of genetic factors involved in the
                 development of several types of cancer has considerably
                 been expanded, thus easing to devise and implement
                 better therapeutic strategies. The automatic diagnosis
                 of cancer, however, remains as a complex \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "110",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cheong:2023:AIC,
  author =       "Chin Wang Cheong and Kejing Yin and William K. Cheung
                 and Benjamin C. M. Fung and Jonathan Poon",
  title =        "Adaptive Integration of Categorical and
                 Multi-relational Ontologies with {EHR} Data for Medical
                 Concept Embedding",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "111:1--111:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625224",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625224",
  abstract =     "Representation learning has been applied to Electronic
                 Health Records (EHR) for medical concept embedding and
                 the downstream predictive analytics tasks with
                 promising results. Medical ontologies can also be
                 integrated to guide the learning so the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "111",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sun:2023:WYN,
  author =       "Heli Sun and Chen Cao and Xuguang Chu and Tingting Hu
                 and Junzhi Lu and Liang He and Zhi Wang and Hui He and
                 Hui Xiong",
  title =        "What Your Next Check-in Might Look Like: Next Check-in
                 Behavior Prediction",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "112:1--112:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625234",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625234",
  abstract =     "In recent years, the next-POI recommendation has
                 become a trending research topic in the field of
                 trajectory data mining. For protection of user privacy,
                 users' complete GPS trajectories are difficult to
                 obtain. The check-in information posted by users on
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "112",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Qu:2023:AAD,
  author =       "Ao Qu and Yihong Tang and Wei Ma",
  title =        "Adversarial Attacks on Deep Reinforcement
                 Learning-based Traffic Signal Control Systems with
                 Colluding Vehicles",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "113:1--113:??",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625236",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625236",
  abstract =     "The rapid advancements of Internet of Things (IoT) and
                 Artificial Intelligence (AI) have catalyzed the
                 development of adaptive traffic control systems (ATCS)
                 for smart cities. In particular, deep reinforcement
                 learning (DRL) models produce state-of-the-. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "113",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2023:SAR,
  author =       "Ronghui Xu and Weiming Huang and Jun Zhao and Meng
                 Chen and Liqiang Nie",
  title =        "A Spatial and Adversarial Representation Learning
                 Approach for Land Use Classification with {POIs}",
  journal =      j-TIST,
  volume =       "14",
  number =       "6",
  pages =        "114:1--114:25",
  month =        dec,
  year =         "2023",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627824",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Tue Jun 4 05:57:07 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627824",
  abstract =     "Points-of-interests (POIs) have been proven to be
                 indicative for sensing urban land use in numerous
                 studies. However, recent progress mainly relies on
                 spatial co-occurrence patterns among POI categories,
                 which falls short in utilizing the rich semantic
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "114",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Makhdomi:2024:TGF,
  author =       "Aqsa Ashraf Makhdomi and Iqra Altaf Gillani",
  title =        "Towards a Greener and Fairer Transportation System: a
                 Survey of Route Recommendation Techniques",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "1:1--1:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627825",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627825",
  abstract =     "In recent years, ride-hailing services have emerged as
                 a popular means of transportation for the residents of
                 urban areas. There is an inequality in the
                 spatio-temporal distribution of demand and supply,
                 which requires the proper recommendation of routes
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "1",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lu:2024:ESR,
  author =       "Wei-Qing Lu and Hai-Miao Hu and Jinzuo Yu and Shifeng
                 Zhang and Hanzi Wang",
  title =        "Explicit State Representation Guided Video-based
                 Pedestrian Attribute Recognition",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "2:1--2:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3626240",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3626240",
  abstract =     "The pedestrian attribute recognition aims to generate
                 a structured description of pedestrians, which serves
                 an important role in surveillance. Current works
                 usually assume that the images and the specific
                 pedestrian states, including pedestrian occlusion
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "2",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2024:HPT,
  author =       "Kun Wu and Chengxiang Yin and Zhengping Che and Bo
                 Jiang and Jian Tang and Zheng Guan and Gangyi Ding",
  title =        "Human Pose Transfer with Augmented Disentangled
                 Feature Consistency",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "3:1--3:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3626241",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3626241",
  abstract =     "Deep generative models have made great progress in
                 synthesizing images with arbitrary human poses and
                 transferring the poses of one person to others. Though
                 many different methods have been proposed to generate
                 images with high visual fidelity, the main \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "3",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bougie:2024:IIL,
  author =       "Nicolas Bougie and Takashi Onishi and Yoshimasa
                 Tsuruoka",
  title =        "Interpretable Imitation Learning with Symbolic
                 Rewards",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "4:1--4:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627822",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627822",
  abstract =     "Sample inefficiency of deep reinforcement learning
                 methods is a major obstacle for their use in real-world
                 tasks as they naturally feature sparse rewards. In
                 fact, this from-scratch approach is often impractical
                 in environments where extreme negative \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "4",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2024:WSF,
  author =       "Wenyuan Yang and Shuo Shao and Yue Yang and Xiyao Liu
                 and Ximeng Liu and Zhihua Xia and Gerald Schaefer and
                 Hui Fang",
  title =        "Watermarking in Secure Federated Learning: a
                 Verification Framework Based on Client-Side
                 Backdooring",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "5:1--5:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3630636",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3630636",
  abstract =     "Federated learning (FL) allows multiple participants
                 to collaboratively build deep learning (DL) models
                 without directly sharing data. Consequently, the issue
                 of copyright protection in FL becomes important since
                 unreliable participants may gain access to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "5",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Dornaika:2024:OSM,
  author =       "F. Dornaika",
  title =        "One-step Multi-view Clustering with Consensus Graph
                 and Data Representation Convolution",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "6:1--6:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3630634",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3630634",
  abstract =     "Multi-view clustering aims to partition unlabeled
                 patterns into disjoint clusters using consistent and
                 complementary information derived from features of
                 patterns in multiple views. Downstream methods perform
                 this clustering sequentially: estimation of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "6",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zeng:2024:EAL,
  author =       "Yingyan Zeng and Xiaoyu Chen and Ran Jin",
  title =        "Ensemble Active Learning by Contextual Bandits for
                 {AI} Incubation in Manufacturing",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "7:1--7:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627821",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627821",
  abstract =     "An Industrial Cyber-physical System (ICPS) provides a
                 digital foundation for data-driven decision-making by
                 artificial intelligence (AI) models. However, the poor
                 data quality (e.g., inconsistent distribution,
                 imbalanced classes) of high-speed, large-. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "7",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Belkhouja:2024:DDT,
  author =       "Taha Belkhouja and Yan Yan and Janardhan Rao Doppa",
  title =        "Out-of-distribution Detection in Time-series Domain: a
                 Novel Seasonal Ratio Scoring Approach",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "8:1--8:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3630633",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3630633",
  abstract =     "Safe deployment of time-series classifiers for
                 real-world applications relies on the ability to detect
                 the data that is not generated from the same
                 distribution as training data. This task is referred to
                 as out-of-distribution (OOD) detection. We consider
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "8",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Nguyen:2024:IGE,
  author =       "Thanh Toan Nguyen and Thanh Tam Nguyen and Thanh Hung
                 Nguyen and Hongzhi Yin and Thanh Thi Nguyen and Jun Jo
                 and Quoc Viet Hung Nguyen",
  title =        "Isomorphic Graph Embedding for Progressive Maximal
                 Frequent Subgraph Mining",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "9:1--9:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3630635",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3630635",
  abstract =     "Maximal frequent subgraph mining (MFSM) is the task of
                 mining only maximal frequent subgraphs, i.e., subgraphs
                 that are not a part of other frequent subgraphs.
                 Although many intelligent systems require MFSM, MFSM is
                 challenging compared to frequent \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "9",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lv:2024:SOC,
  author =       "Junwei Lv and Yuqi Chu and Jun Hu and Peipei Li and
                 Xuegang Hu",
  title =        "Second-order Confidence Network for Early
                 Classification of Time Series",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "10:1--10:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3631531",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3631531",
  abstract =     "Time series data are ubiquitous in a variety of
                 disciplines. Early classification of time series, which
                 aims to predict the class label of a time series as
                 early and accurately as possible, is a significant but
                 challenging task in many time-sensitive \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "10",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Saad:2024:QLI,
  author =       "Yossef Saad and Joachim Meyer",
  title =        "Quantifying Levels of Influence and Causal
                 Responsibility in Dynamic Decision Making Events",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "11:1--11:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3631611",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3631611",
  abstract =     "Intelligent systems support human operators'
                 decision-making processes, many of which are dynamic
                 and involve temporal changes in the decision-related
                 parameters. As we increasingly depend on automation, it
                 becomes imperative to understand and quantify
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "11",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gao:2024:IRM,
  author =       "Qiang Gao and Hongzhu Fu and Kunpeng Zhang and Goce
                 Trajcevski and Xu Teng and Fan Zhou",
  title =        "Inferring Real Mobility in Presence of Fake Check-ins
                 Data",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "12:1--12:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3604941",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3604941",
  abstract =     "Understanding human mobility has become an important
                 aspect of location-based services in tasks such as
                 personalized recommendation and individual moving
                 pattern recognition, enabled by the large volumes of
                 data from geo-tagged social media (GTSM). Prior
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "12",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tang:2024:EGN,
  author =       "Hao Tang and Cheng Wang and Jianguo Zheng and Changjun
                 Jiang",
  title =        "Enabling Graph Neural Networks for Semi-Supervised
                 Risk Prediction in Online Credit Loan Services",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "13:1--13:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3623401",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3623401",
  abstract =     "Graph neural networks (GNNs) are playing exciting
                 roles in the application scenarios where features are
                 hidden in information associations. Fraud prediction of
                 online credit loan services (OCLSs) is such a typical
                 scenario. But it has another rather \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "13",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ma:2024:ESI,
  author =       "Shuo Ma and Yingwei Zhang and Yiqiang Chen and Tao Xie
                 and Shuchao Song and Ziyu Jia",
  title =        "Exploring Structure Incentive Domain Adversarial
                 Learning for Generalizable Sleep Stage Classification",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "14:1--14:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625238",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625238",
  abstract =     "Sleep stage classification is crucial for sleep state
                 monitoring and health interventions. In accordance with
                 the standards prescribed by the American Academy of
                 Sleep Medicine, a sleep episode follows a specific
                 structure comprising five distinctive \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "14",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2024:HPD,
  author =       "Yanzhao Wu and Ka-Ho Chow and Wenqi Wei and Ling Liu",
  title =        "Hierarchical Pruning of Deep Ensembles with Focal
                 Diversity",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "15:1--15:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3633286",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3633286",
  abstract =     "Deep neural network ensembles combine the wisdom of
                 multiple deep neural networks to improve the
                 generalizability and robustness over individual
                 networks. It has gained increasing popularity to study
                 and apply deep ensemble techniques in the deep learning
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "15",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2024:VRT,
  author =       "Yunchao Wang and Guodao Sun and Zihao Zhu and Tong Li
                 and Ling Chen and Ronghua Liang",
  title =        "{E$^2$Storyline}: Visualizing the Relationship with
                 Triplet Entities and Event Discovery",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "16:1--16:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3633519",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3633519",
  abstract =     "The narrative progression of events, evolving into a
                 cohesive story, relies on the entity-entity
                 relationships. Among the plethora of visualization
                 techniques, storyline visualization has gained
                 significant recognition for its effectiveness in
                 offering an \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "16",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2024:RTF,
  author =       "Shengyu Chen and Tianshu Bao and Peyman Givi and Can
                 Zheng and Xiaowei Jia",
  title =        "Reconstructing Turbulent Flows Using Spatio-temporal
                 Physical Dynamics",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "17:1--17:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3637491",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3637491",
  abstract =     "Accurate simulation of turbulent flows is of crucial
                 importance in many branches of science and engineering.
                 Direct numerical simulation (DNS) provides the highest
                 fidelity means of capturing all intricate physics of
                 turbulent transport. However, the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "17",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Terroso-Saenz:2024:NAP,
  author =       "Fernando Terroso-Saenz and Juan Morales-Garc{\'\i}a
                 and Andres Mu{\~n}oz",
  title =        "Nationwide Air Pollution Forecasting with
                 Heterogeneous Graph Neural Networks",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "18:1--18:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3637492",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3637492",
  abstract =     "Nowadays, air pollution is one of the most relevant
                 environmental problems in most urban settings. Due to
                 the utility in operational terms of anticipating
                 certain pollution levels, several predictors based on
                 Graph Neural Networks (GNN) have been proposed
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "18",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Khoshraftar:2024:SGR,
  author =       "Shima Khoshraftar and Aijun An",
  title =        "A Survey on Graph Representation Learning Methods",
  journal =      j-TIST,
  volume =       "15",
  number =       "1",
  pages =        "19:1--19:??",
  month =        feb,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3633518",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:38 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3633518",
  abstract =     "Graph representation learning has been a very active
                 research area in recent years. The goal of graph
                 representation learning is to generate graph
                 representation vectors that capture the structure and
                 features of large graphs accurately. This is \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "19",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhao:2024:ELL,
  author =       "Haiyan Zhao and Hanjie Chen and Fan Yang and Ninghao
                 Liu and Huiqi Deng and Hengyi Cai and Shuaiqiang Wang
                 and Dawei Yin and Mengnan Du",
  title =        "Explainability for Large Language Models: a Survey",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "20:1--20:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3639372",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3639372",
  abstract =     "Large language models (LLMs) have demonstrated
                 impressive capabilities in natural language processing.
                 However, their internal mechanisms are still unclear
                 and this lack of transparency poses unwanted risks for
                 downstream applications. Therefore, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "20",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2024:DDU,
  author =       "Yunke Zhang and Tong Li and Yuan Yuan and Fengli Xu
                 and Fan Yang and Funing Sun and Yong Li",
  title =        "Demand-driven Urban Facility Visit Prediction",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "21:1--21:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625233",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625233",
  abstract =     "Predicting citizens' visiting behaviors to urban
                 facilities is instrumental for city governors and
                 planners to detect inequalities in urban opportunities
                 and optimize the distribution of facilities and
                 resources. Previous works predict facility visits
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "21",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Tsouvalas:2024:LCL,
  author =       "Vasileios Tsouvalas and Aaqib Saeed and Tanir Ozcelebi
                 and Nirvana Meratnia",
  title =        "Labeling Chaos to Learning Harmony: Federated Learning
                 with Noisy Labels",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "22:1--22:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3626242",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3626242",
  abstract =     "Federated Learning (FL) is a distributed machine
                 learning paradigm that enables learning models from
                 decentralized private datasets where the labeling
                 effort is entrusted to the clients. While most existing
                 FL approaches assume high-quality labels are \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "22",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2024:DSN,
  author =       "Wei Chen and Hongjun Wang and Yinghui Zhang and Ping
                 Deng and Zhipeng Luo and Tianrui Li",
  title =        "{$T$}-Distributed Stochastic Neighbor Embedding for
                 Co-Representation Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "23:1--23:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627823",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627823",
  abstract =     "Co-clustering is the simultaneous clustering of the
                 samples and attributes of a data matrix that provides
                 deeper insight into data than traditional clustering.
                 However, there is a lack of representation learning
                 algorithms that serve this mechanism of co-. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "23",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lee:2024:TFF,
  author =       "Sangwon Lee and Junho Hong and Ling Liu and Wonik
                 Choi",
  title =        "{TS-Fastformer}: Fast Transformer for Time-series
                 Forecasting",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "24:1--24:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3630637",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3630637",
  abstract =     "Many real-world applications require precise and fast
                 time-series forecasting. Recent trends in time-series
                 forecasting models are shifting from LSTM-based models
                 to Transformer-based models. However, the
                 Transformer-based model has a limited ability to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "24",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lee:2024:EPC,
  author =       "Eunji Lee and Sihyeon Kim and Sundong Kim and Soyeon
                 Jung and Heeja Kim and Meeyoung Cha",
  title =        "Explainable Product Classification for Customs",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "25:1--25:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3635158",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3635158",
  abstract =     "The task of assigning internationally accepted
                 commodity codes (aka HS codes) to traded goods is a
                 critical function of customs offices. Like court
                 decisions made by judges, this task follows the
                 doctrine of precedent and can be nontrivial even for
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "25",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Neacsu:2024:EBA,
  author =       "Ana Neacsu and Jean-Christophe Pesquet and Corneliu
                 Burileanu",
  title =        "{EMG}-Based Automatic Gesture Recognition Using
                 {Lipschitz}-Regularized Neural Networks",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "26:1--26:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3635159",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3635159",
  abstract =     "This article introduces a novel approach for building
                 a robust Automatic Gesture Recognition system based on
                 Surface Electromyographic (sEMG) signals, acquired at
                 the forearm level. Our main contribution is to propose
                 new constrained learning strategies \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "26",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Pessach:2024:FDP,
  author =       "Dana Pessach and Tamir Tassa and Erez Shmueli",
  title =        "Fairness-Driven Private Collaborative Machine
                 Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "27:1--27:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3639368",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3639368",
  abstract =     "The performance of machine learning algorithms can be
                 considerably improved when trained over larger
                 datasets. In many domains, such as medicine and
                 finance, larger datasets can be obtained if several
                 parties, each having access to limited amounts of
                 data,. \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "27",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2024:EDK,
  author =       "Zhiyuan Wu and Sheng Sun and Yuwei Wang and Min Liu
                 and Quyang Pan and Junbo Zhang and Zeju Li and
                 Qingxiang Liu",
  title =        "Exploring the Distributed Knowledge Congruence in
                 Proxy-data-free Federated Distillation",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "28:1--28:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3639369",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3639369",
  abstract =     "Federated learning (FL) is a privacy-preserving
                 machine learning paradigm in which the server
                 periodically aggregates local model parameters from cli
                 ents without assembling their private data. Constrained
                 communication and personalization requirements
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "28",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yuan:2024:GDA,
  author =       "Yuan Yuan and Jingtao Ding and Huandong Wang and
                 Depeng Jin",
  title =        "Generating Daily Activities with Need Dynamics",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "29:1--29:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3637493",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3637493",
  abstract =     "Daily activity data recording individuals' various
                 activities in daily life are widely used in many
                 applications such as activity scheduling, activity
                 recommendation, and policymaking. Though with high
                 value, its accessibility is limited due to high
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "29",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Xu:2024:SCC,
  author =       "Meng Xu and Xinhong Chen and Yechao She and Yang Jin
                 and Guanyi Zhao and Jianping Wang",
  title =        "Strengthening Cooperative Consensus in Multi-Robot
                 Confrontation",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "30:1--30:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3639371",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3639371",
  abstract =     "Multi-agent reinforcement learning (MARL) has proven
                 effective in training multi-robot confrontation, such
                 as StarCraft and robot soccer games. However, the
                 current joint action policies utilized in MARL have
                 been unsuccessful in recognizing and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "30",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Han:2024:RND,
  author =       "Jin Han and Yun-Feng Ren and Alessandro Brighente and
                 Mauro Conti",
  title =        "{RANGO}: a Novel Deep Learning Approach to Detect
                 Drones Disguising from Video Surveillance Systems",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "31:1--31:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641282",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641282",
  abstract =     "Video surveillance systems provide means to detect the
                 presence of potentially malicious drones in the
                 surroundings of critical infrastructures. In
                 particular, these systems collect images and feed them
                 to a deep-learning classifier able to detect the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "31",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zong:2024:RLS,
  author =       "Zefang Zong and Xia Tong and Meng Zheng and Yong Li",
  title =        "Reinforcement Learning for Solving Multiple Vehicle
                 Routing Problem with Time Window",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "32:1--32:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3625232",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3625232",
  abstract =     "Vehicle routing problem with time window (VRPTW) is of
                 great importance for a wide spectrum of services and
                 real-life applications, such as online take-out and
                 car-hailing platforms. A promising method should
                 generate high-qualified solutions within \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "32",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2024:EKG,
  author =       "Jhih-Chen Liu and Chiao-Ting Chen and Chi Lee and
                 Szu-Hao Huang",
  title =        "Evolving Knowledge Graph Representation Learning with
                 Multiple Attention Strategies for Citation
                 Recommendation System",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "33:1--33:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3635273",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3635273",
  abstract =     "The growing number of publications in the field of
                 artificial intelligence highlights the need for
                 researchers to enhance their efficiency in searching
                 for relevant articles. Most paper recommendation models
                 either rely on simplistic citation \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "33",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jiang:2024:VVN,
  author =       "Fenyu Jiang and Huandong Wang and Yong Li",
  title =        "{VesNet}: a Vessel Network for Jointly Learning Route
                 Pattern and Future Trajectory",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "34:1--34:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3639370",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3639370",
  abstract =     "Vessel trajectory prediction is the key to maritime
                 applications such as traffic surveillance, collision
                 avoidance, anomaly detection, and so on. Making
                 predictions more precisely requires a better
                 understanding of the moving trend for a particular
                 vessel \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "34",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2024:CCF,
  author =       "Chiao-Ting Chen and Chi Lee and Szu-Hao Huang and
                 Wen-Chih Peng",
  title =        "Credit Card Fraud Detection via Intelligent Sampling
                 and Self-supervised Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "35:1--35:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641283",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641283",
  abstract =     "The significant increase in credit card transactions
                 can be attributed to the rapid growth of online
                 shopping and digital payments, particularly during the
                 COVID-19 pandemic. To safeguard cardholders, e-commerce
                 companies, and financial institutions, the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "35",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Job:2024:OTS,
  author =       "Simi Job and Xiaohui Tao and Lin Li and Haoran Xie and
                 Taotao Cai and Jianming Yong and Qing Li",
  title =        "Optimal Treatment Strategies for Critical Patients
                 with Deep Reinforcement Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "36:1--36:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643856",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643856",
  abstract =     "Personalized clinical decision support systems are
                 increasingly being adopted due to the emergence of
                 data-driven technologies, with this approach now
                 gaining recognition in critical care. The task of
                 incorporating diverse patient conditions and treatment
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "36",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hao:2024:SSB,
  author =       "Mai Hao and Ming Cai and Minghui Fang and Linlin You",
  title =        "{SiG}: a {Siamese}-Based Graph Convolutional Network
                 to Align Knowledge in Autonomous Transportation
                 Systems",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "37:1--37:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643861",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643861",
  abstract =     "Domain knowledge is gradually renovating its
                 attributes to exhibit distinct features in autonomy,
                 propelled by the shift of modern transportation systems
                 (TS) toward autonomous TS (ATS) comprising three
                 progressive generations. The knowledge graph (KG)
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "37",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ang:2024:TIM,
  author =       "Gary Ang and Ee-Peng Lim",
  title =        "Temporal Implicit Multimodal Networks for Investment
                 and Risk Management",
  journal =      j-TIST,
  volume =       "15",
  number =       "2",
  pages =        "38:1--38:??",
  month =        apr,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643855",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:40 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643855",
  abstract =     "Many deep learning works on financial time-series
                 forecasting focus on predicting future prices/returns
                 of individual assets with numerical price-related
                 information for trading, and hence propose models
                 designed for univariate, single-task, and/or \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "38",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chang:2024:SEL,
  author =       "Yupeng Chang and Xu Wang and Jindong Wang and Yuan Wu
                 and Linyi Yang and Kaijie Zhu and Hao Chen and Xiaoyuan
                 Yi and Cunxiang Wang and Yidong Wang and Wei Ye and Yue
                 Zhang and Yi Chang and Philip S. Yu and Qiang Yang and
                 Xing Xie",
  title =        "A Survey on Evaluation of Large Language Models",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "39:1--39:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641289",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641289",
  abstract =     "Large language models (LLMs) are gaining increasing
                 popularity in both academia and industry, owing to
                 their unprecedented performance in various
                 applications. As LLMs continue to play a vital role in
                 both research and daily use, their evaluation becomes
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "39",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Molho:2024:DLS,
  author =       "Dylan Molho and Jiayuan Ding and Wenzhuo Tang and
                 Zhaoheng Li and Hongzhi Wen and Yixin Wang and Julian
                 Venegas and Wei Jin and Renming Liu and Runze Su and
                 Patrick Danaher and Robert Yang and Yu Leo Lei and
                 Yuying Xie and Jiliang Tang",
  title =        "Deep Learning in Single-cell Analysis",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "40:1--40:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641284",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641284",
  abstract =     "Single-cell technologies are revolutionizing the
                 entire field of biology. The large volumes of data
                 generated by single-cell technologies are high
                 dimensional, sparse, and heterogeneous and have
                 complicated dependency structures, making analyses
                 using \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "40",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ge:2024:MNM,
  author =       "Xuri Ge and Joemon M. Jose and Songpei Xu and Xiao Liu
                 and Hu Han",
  title =        "{MGRR-Net}: Multi-level Graph Relational Reasoning
                 Network for Facial Action Unit Detection",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "41:1--41:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643863",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643863",
  abstract =     "The Facial Action Coding System (FACS) encodes the
                 action units (AUs) in facial images, which has
                 attracted extensive research attention due to its wide
                 use in facial expression analysis. Many methods that
                 perform well on automatic facial action unit (AU)
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "41",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yang:2024:BSN,
  author =       "Qin Yang and Ramviyas Parasuraman",
  title =        "{Bayesian} Strategy Networks Based Soft Actor-Critic
                 Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "42:1--42:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643862",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643862",
  abstract =     "A strategy refers to the rules that the agent chooses
                 the available actions to achieve goals. Adopting
                 reasonable strategies is challenging but crucial for an
                 intelligent agent with limited resources working in
                 hazardous, unstructured, and dynamic \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "42",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Samarakoon:2024:IRR,
  author =       "S. M. Bhagya P. Samarakoon and M. A. Viraj J.
                 Muthugala and Mohan Rajesh Elara",
  title =        "Internal Rehearsals for a Reconfigurable Robot to
                 Improve Area Coverage Performance",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "43:1--43:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643854",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643854",
  abstract =     "Reconfigurable robots are deployed for applications
                 demanding area coverage, such as cleaning and
                 inspections. Reconfiguration per context, considering
                 beyond a small set of predefined shapes, is crucial for
                 area coverage performance. However, the \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "43",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kim:2024:GRG,
  author =       "Bum Jun Kim and Hyeyeon Choi and Hyeonah Jang and Sang
                 Woo Kim",
  title =        "Guidelines for the Regularization of Gammas in Batch
                 Normalization for Deep Residual Networks",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "44:1--44:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643860",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643860",
  abstract =     "L$_2$ regularization for weights in neural networks is
                 widely used as a standard training trick. In addition
                 to weights, the use of batch normalization involves an
                 additional trainable parameter $\gamma$, which acts as
                  a scaling factor. However, L$_2$ regularization
                  \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "44",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{He:2024:MDS,
  author =       "Weidong He and Zhi Li and Hao Wang and Tong Xu and
                 Zhefeng Wang and Baoxing Huai and Nicholas Jing Yuan
                 and Enhong Chen",
  title =        "Multimodal Dialogue Systems via Capturing
                 Context-aware Dependencies and Ordinal Information of
                 Semantic Elements",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "45:1--45:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3645099",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3645099",
  abstract =     "The topic of multimodal conversation systems has
                 recently garnered significant attention across various
                 industries, including travel and retail, among others.
                 While pioneering works in this field have shown
                 promising performance, they often focus solely
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "45",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gherardini:2024:CCA,
  author =       "Luca Gherardini and Varun Ravi Varma and Karol
                 Capa{\l}a and Roger Woods and Jose Sousa",
  title =        "{CACTUS}: a Comprehensive Abstraction and
                 Classification Tool for Uncovering Structures",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "46:1--46:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3649459",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3649459",
  abstract =     "The availability of large datasets is providing the
                 impetus for driving many current artificial intelligent
                 developments. However, specific challenges arise in
                 developing solutions that exploit small datasets,
                 mainly due to practical and cost-effective \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "46",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Vukadin:2024:AAB,
  author =       "Davor Vukadin and Petar Afri{\'c} and Marin Sili{\'c}
                 and Goran Delac",
  title =        "Advancing Attribution-Based Neural Network
                 Explainability through Relative Absolute Magnitude
                 Layer-Wise Relevance Propagation and Multi-Component
                 Evaluation",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "47:1--47:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3649458",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3649458",
  abstract =     "Recent advancement in deep-neural network performance
                 led to the development of new state-of-the-art
                 approaches in numerous areas. However, the black-box
                 nature of neural networks often prohibits their use in
                 areas where model explainability and model \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "47",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liang:2024:LCM,
  author =       "Yunji Liang and Nengzhen Chen and Zhiwen Yu and Lei
                 Tang and Hongkai Yu and Bin Guo and Daniel Dajun Zeng",
  title =        "Learning Cross-modality Interaction for Robust Depth
                 Perception of Autonomous Driving",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "48:1--48:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650039",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650039",
  abstract =     "As one of the fundamental tasks of autonomous driving,
                 depth perception aims to perceive physical objects in
                 three dimensions and to judge their distances away from
                 the ego vehicle. Although great efforts have been made
                 for depth perception, LiDAR-based \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "48",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gupta:2024:TTA,
  author =       "Vinayak Gupta and Srikanta Bedathur",
  title =        "Tapestry of Time and Actions: Modeling Human Activity
                 Sequences Using Temporal Point Process Flows",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "49:1--49:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650045",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650045",
  abstract =     "Human beings always engage in a vast range of
                 activities and tasks that demonstrate their ability to
                 adapt to different scenarios. These activities can
                 range from the simplest daily routines, like walking
                 and sitting, to multi-level complex endeavors such
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "49",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yi:2024:DCM,
  author =       "Jing Yi and Zhenzhong Chen",
  title =        "Deconfounded Cross-modal Matching for Content-based
                 Micro-video Background Music Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "50:1--50:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650042",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650042",
  abstract =     "Object-oriented micro-video background music
                 recommendation is a complicated task where the matching
                 degree between videos and background music is a major
                 issue. However, music selections in user-generated
                 content (UGC) are prone to selection bias caused
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "50",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fu:2024:MMH,
  author =       "Chaofan Fu and Pengyang Yu and Yanwei Yu and Chao
                 Huang and Zhongying Zhao and Junyu Dong",
  title =        "{MHGCN+}: Multiplex Heterogeneous Graph Convolutional
                 Network",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "51:1--51:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650046",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650046",
  abstract =     "Heterogeneous graph convolutional networks have gained
                 great popularity in tackling various network analytical
                 tasks on heterogeneous graph data, ranging from link
                 prediction to node classification. However, most
                 existing works ignore the relation \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "51",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2024:GTF,
  author =       "Xiaojin Zhang and Lixin Fan and Siwei Wang and Wenjie
                 Li and Kai Chen and Qiang Yang",
  title =        "A Game-theoretic Framework for Privacy-preserving
                 Federated Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "52:1--52:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3656049",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3656049",
  abstract =     "In federated learning, benign participants aim to
                 optimize a global model collaboratively. However, the
                 risk of privacy leakage cannot be ignored in the
                 presence of semi-honest adversaries. Existing research
                 has focused either on designing protection \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "52",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhong:2024:SSB,
  author =       "Shenghai Zhong and Shu Guo and Jing Liu and Hongren
                 Huang and Lihong Wang and Jianxin Li and Chen Li and
                 Yiming Hei",
  title =        "Self-supervised Bipartite Graph Representation
                 Learning: a {Dirichlet} Max-margin Matrix Factorization
                 Approach",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "53:1--53:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3645098",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3645098",
  abstract =     "Bipartite graph representation learning aims to obtain
                 node embeddings by compressing sparse vectorized
                 representations of interactions between two types of
                 nodes, e.g., users and items. Incorporating structural
                 attributes among homogeneous nodes, such as \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "53",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zeng:2024:EPM,
  author =       "Jinwei Zeng and Guozhen Zhang and Jian Yuan and Yong
                 Li and Depeng Jin",
  title =        "Empowering Predictive Modeling by {GAN-based} Causal
                 Information Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "54:1--54:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3652610",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3652610",
  abstract =     "Generally speaking, we can easily specify many causal
                 relationships in the prediction tasks of ubiquitous
                 computing, such as human activity prediction, mobility
                 prediction, and health prediction. However, most of the
                 existing methods in these fields \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "54",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2024:MLF,
  author =       "Xiaojin Zhang and Yan Kang and Lixin Fan and Kai Chen
                 and Qiang Yang",
  title =        "A Meta-Learning Framework for Tuning Parameters of
                 Protection Mechanisms in Trustworthy Federated
                 Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "55:1--55:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3652612",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3652612",
  abstract =     "Trustworthy federated learning typically leverages
                 protection mechanisms to guarantee privacy. However,
                 protection mechanisms inevitably introduce utility loss
                 or efficiency reduction while protecting data privacy.
                 Therefore, protection mechanisms and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "55",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lewis:2024:EFG,
  author =       "Cody Lewis and Vijay Varadharajan and Nasimul Noman
                 and Uday Tupakula",
  title =        "Ensuring Fairness and Gradient Privacy in Personalized
                 Heterogeneous Federated Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "56:1--56:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3652613",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3652613",
  abstract =     "With the increasing tension between conflicting
                 requirements of the availability of large amounts of
                 data for effective machine learning-based analysis, and
                 for ensuring their privacy, the paradigm of federated
                 learning has emerged, a distributed machine \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "56",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bano:2024:FFC,
  author =       "Saira Bano and Nicola Tonellotto and Pietro
                 Cassar{\`a} and Alberto Gotta",
  title =        "{FedCMD}: a Federated Cross-modal Knowledge
                 Distillation for Drivers' Emotion Recognition",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "57:1--57:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650040",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650040",
  abstract =     "Emotion recognition has attracted a lot of interest in
                 recent years in various application areas such as
                 healthcare and autonomous driving. Existing approaches
                 to emotion recognition are based on visual, speech, or
                 psychophysiological signals. However, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "57",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2024:PAT,
  author =       "Rongchang Li and Tianyang Xu and Xiao-Jun Wu and
                 Zhongwei Shen and Josef Kittler",
  title =        "Perceiving Actions via Temporal Video Frame Pairs",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "58:1--58:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3652611",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3652611",
  abstract =     "Video action recognition aims at classifying the
                 action category in given videos. In general,
                 semantic-relevant video frame pairs reflect significant
                 action patterns such as object appearance variation and
                 abstract temporal concepts like speed, rhythm,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "58",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2024:SBG,
  author =       "Pengyu Wang and Xuechen Luo and Wenxin Tai and Kunpeng
                 Zhang and Goce Trajcevsky and Fan Zhou",
  title =        "Score-based Graph Learning for Urban Flow Prediction",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "59:1--59:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3655629",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3655629",
  abstract =     "Accurate urban flow prediction (UFP) is crucial for a
                 range of smart city applications such as traffic
                 management, urban planning, and risk assessment. To
                 capture the intrinsic characteristics of urban flow,
                 recent efforts have utilized spatial and \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "59",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{DeSmet:2024:HCA,
  author =       "Chance DeSmet and Diane Cook",
  title =        "{HydraGAN}: a Cooperative Agent Model for
                 Multi-Objective Data Generation",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "60:1--60:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653982",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653982",
  abstract =     "Generative adversarial networks have become a de facto
                 approach to generate synthetic data points that
                 resemble their real counterparts. We tackle the
                 situation where the realism of individual samples is
                 not the sole criterion for synthetic data \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "60",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2024:QBR,
  author =       "Cangqi Zhou and Hui Chen and Jing Zhang and Qianmu Li
                 and Dianming Hu",
  title =        "Quintuple-based Representation Learning for Bipartite
                 Heterogeneous Networks",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "61:1--61:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653978",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653978",
  abstract =     "Recent years have seen rapid progress in network
                 representation learning, which removes the need for
                 burdensome feature engineering and facilitates
                 downstream network-based tasks. In reality, networks
                 often exhibit heterogeneity, which means there may
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "61",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sekulic:2024:AUL,
  author =       "Ivan Sekuli{\'c} and Mohammad Alinannejadi and Fabio
                 Crestani",
  title =        "Analysing Utterances in {LLM-Based} User Simulation
                 for Conversational Search",
  journal =      j-TIST,
  volume =       "15",
  number =       "3",
  pages =        "62:1--62:??",
  month =        jun,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650041",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:41 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650041",
  abstract =     "Clarifying underlying user information needs by asking
                 clarifying questions is an important feature of modern
                 conversational search systems. However, evaluation of
                 such systems through answering prompted clarifying
                 questions requires significant human \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "62",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Miao:2024:FMC,
  author =       "Runxuan Miao and Erdem Koyuncu",
  title =        "Federated Momentum Contrastive Clustering",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "63:1--63:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653981",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653981",
  abstract =     "Self-supervised representation learning and deep
                 clustering are mutually beneficial to learn
                 high-quality representations and cluster data
                 simultaneously in centralized settings. However, it is
                 not always feasible to gather large amounts of data at
                 a \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "63",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Al-Bazzaz:2024:EFM,
  author =       "Hussein Al-Bazzaz and Muhammad Azam and Manar Amayri
                 and Nizar Bouguila",
  title =        "Explainable finite mixture of mixtures of bounded
                 asymmetric generalized {Gaussian} and Uniform
                 distributions learning for energy demand management",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "64:1--64:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653980",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653980",
  abstract =     "We introduce a mixture of mixtures of bounded
                 asymmetric generalized Gaussian and uniform
                 distributions. Based on this framework, we propose
                 model-based classification and model-based clustering
                 algorithms. We develop an objective function for the
                 minimum \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "64",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Piao:2024:DEL,
  author =       "Hai Yin Piao and Shengqi Yang and Hechang Chen and
                 Junnan Li and Jin Yu and Xuanqi Peng and Xin Yang and
                 Zhen Yang and Zhixiao Sun and Yi Chang",
  title =        "Discovering Expert-Level Air Combat Knowledge via Deep
                 Excitatory-Inhibitory Factorized Reinforcement
                 Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "65:1--65:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653979",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653979",
  abstract =     "Artificial Intelligence (AI) has achieved a wide range
                 of successes in autonomous air combat decision-making
                 recently. Previous research demonstrated that
                 AI-enabled air combat approaches could even acquire
                 beyond human-level capabilities. However, there
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "65",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chen:2024:RSA,
  author =       "Xu Chen",
  title =        "Robust Structure-Aware Graph-based Semi-Supervised
                 Learning: Batch and Recursive Processing",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "66:1--66:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653986",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653986",
  abstract =     "Graph-based semi-supervised learning plays an
                 important role in large scale image classification
                 tasks. However, the problem becomes very challenging in
                 the presence of noisy labels and outliers. Moreover,
                 traditional robust semi-supervised learning \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "66",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Jian:2024:CGC,
  author =       "Meng Jian and Yulong Bai and Xusong Fu and Jingjing
                 Guo and Ge Shi and Lifang Wu",
  title =        "Counterfactual Graph Convolutional Learning for
                 Personalized Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "67:1--67:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3655632",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3655632",
  abstract =     "Recently, recommender systems have witnessed the fast
                 evolution of Internet services. However, it suffers
                 hugely from inherent bias and sparsity issues in
                 interactions. The conventional uniform embedding
                 learning policies fail to utilize the imbalanced
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "67",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhu:2024:DCR,
  author =       "Yaochen Zhu and Jing Yi and Jiayi Xie and Zhenzhong
                 Chen",
  title =        "Deep Causal Reasoning for Recommendations",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "68:1--68:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3653985",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3653985",
  abstract =     "Traditional recommender systems aim to estimate a
                 user's rating to an item based on observed ratings from
                 the population. As with all observational studies,
                 hidden confounders, which are factors that affect both
                 item exposures and user ratings, lead to a \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "68",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ting:2024:EEW,
  author =       "Lo Pang-Yun Ting and Rong Chao and Chai-Shi Chang and
                 Kun-Ta Chuang",
  title =        "An Explore-Exploit Workload-Bounded Strategy for Rare
                 Event Detection in Massive Energy Sensor Time Series",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "69:1--69:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3657641",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3657641",
  abstract =     "With the rise of Internet-of-Things devices, the
                 analysis of sensor-generated energy time series data
                 has become increasingly important. This is especially
                 crucial for detecting rare events like unusual
                 electricity usage or water leakages in residential
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "69",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhao:2024:CCG,
  author =       "Zhuo Zhao and Guangyou Zhou and Zhiwen Xie and Lingfei
                 Wu and Jimmy Xiangji Huang",
  title =        "{CGKPN}: Cross-Graph Knowledge Propagation Network
                 with Adaptive Connection for Reasoning-Based Machine
                 Reading Comprehension",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "70:1--70:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3658673",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3658673",
  abstract =     "The task of machine reading comprehension (MRC) is to
                 enable machine to read and understand a piece of text
                 and then answer the corresponding question correctly.
                 This task requires machine to not only be able to
                 perform semantic understanding but also \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "70",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Pai:2024:IDD,
  author =       "Yu-Tung Pai and Nien-En Sun and Cheng-Te Li and
                 Shou-de Lin",
  title =        "Incremental Data Drifting: Evaluation Metrics, Data
                 Generation, and Approach Comparison",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "71:1--71:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3655630",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3655630",
  abstract =     "Incremental data drifting is a common problem when
                 employing a machine-learning model in industrial
                 applications. The underlying data distribution evolves
                 gradually, e.g., users change their buying preferences
                 on an E-commerce website over time. The \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "71",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yao:2024:SIR,
  author =       "Lina Yao and Julian McAuley and Xianzhi Wang and
                 Dietmar Jannach",
  title =        "Special Issue on Responsible Recommender Systems {Part
                 1}",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "72:1--72:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3663528",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3663528",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "72",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ahn:2024:BPU,
  author =       "Yongsu Ahn and Yu-Ru Lin",
  title =        "Break Out of a Pigeonhole: a Unified Framework for
                 Examining Miscalibration, Bias, and Stereotype in
                 Recommender Systems",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "73:1--73:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650044",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650044",
  abstract =     "Despite the benefits of personalizing items and
                 information tailored to users' needs, it has been found
                 that recommender systems tend to introduce biases that
                 favor popular items or certain categories of items and
                 dominant user groups. In this study, we \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "73",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Coppolillo:2024:BQS,
  author =       "Erica Coppolillo and Marco Minici and Ettore Ritacco
                 and Luciano Caroprese and Francesco Pisani and Giuseppe
                 Manco",
  title =        "Balanced Quality Score: Measuring Popularity Debiasing
                 in Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "74:1--74:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3650043",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3650043",
  abstract =     "Popularity bias is the tendency of recommender systems
                 to further suggest popular items while disregarding
                 niche ones, hence giving no chance for items with low
                 popularity to emerge. Although the literature is rich
                 in debiasing techniques, it still lacks \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "74",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Duran:2024:ODU,
  author =       "Paula G. Duran and Pere Gilabert and Santi Segu{\'\i}
                 and Jordi Vitri{\`a}",
  title =        "Overcoming Diverse Undesired Effects in Recommender
                 Systems: a Deontological Approach",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "75:1--75:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643857",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643857",
  abstract =     "In today's digital landscape, recommender systems have
                 gained ubiquity as a means of directing users toward
                 personalized products, services, and content. However,
                 despite their widespread adoption and a long track of
                 research, these systems are not immune \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "75",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2024:PPP,
  author =       "Yuwen Liu and Xiaokang Zhou and Huaizhen Kou and Yawu
                 Zhao and Xiaolong Xu and Xuyun Zhang and Lianyong Qi",
  title =        "Privacy-preserving Point-of-interest Recommendation
                 based on Simplified Graph Convolutional Network for
                 Geological Traveling",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "76:1--76:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3620677",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3620677",
  abstract =     "The provision of privacy-preserving recommendations
                 for geological tourist attractions is an important
                 research area. The historical check-in data collected
                 from location-based social networks (LBSNs) can be
                 utilized to mine their preferences, thereby \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "76",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2024:DFR,
  author =       "Zhitao Li and Zhaohao Lin and Feng Liang and Weike Pan
                 and Qiang Yang and Zhong Ming",
  title =        "Decentralized Federated Recommendation with
                 Privacy-aware Structured Client-level Graph",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "77:1--77:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641287",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641287",
  abstract =     "Recommendation models are deployed in a variety of
                 commercial applications to provide personalized
                 services for users. However, most of them rely on the
                 users' original rating records that are often collected
                 by a centralized server for model training, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "77",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ali:2024:RRS,
  author =       "Waqar Ali and Rajesh Kumar and Xiangmin Zhou and Jie
                 Shao",
  title =        "Responsible Recommendation Services with Blockchain
                 Empowered Asynchronous Federated Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "78:1--78:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3633520",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/bitcoin.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3633520",
  abstract =     "Privacy and trust are highly demanding in practical
                 recommendation engines. Although Federated Learning
                 (FL) has significantly addressed privacy concerns,
                 commercial operators are still worried about several
                 technical challenges while bringing FL into \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "78",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gao:2024:NBB,
  author =       "Tieliang Gao and Li Duan and Lufeng Feng and Wei Ni
                 and Quan Z. Sheng",
  title =        "A Novel Blockchain-based Responsible Recommendation
                 System for Service Process Creation and
                 Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "79:1--79:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643858",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/bitcoin.bib;
                 https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643858",
  abstract =     "Service composition platforms play a crucial role in
                 creating personalized service processes. Challenges,
                 including the risk of tampering with service data
                 during service invocation and the potential single
                 point of failure in centralized service \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "79",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2024:FQR,
  author =       "Nan Li and Bo Kang and Jefrey Lijffijt and Tijl {De
                 Bie}",
  title =        "{FEIR}: Quantifying and Reducing Envy and Inferiority
                 for Fair Recommendation of Limited Resources",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "80:1--80:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643891",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643891",
  abstract =     "Recommendation in settings such as e-recruitment and
                 online dating involves distributing limited
                 opportunities, which differs from recommending
                 practically unlimited goods such as in e-commerce or
                 music recommendation. This setting calls for novel
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "80",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Li:2024:BHE,
  author =       "Ming Li and Lin Li and Xiaohui Tao and Zhongwei Xie
                 and Qing Xie and Jingling Yuan",
  title =        "Boosting Healthiness Exposure in Category-Constrained
                 Meal Recommendation Using Nutritional Standards",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "81:1--81:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3643859",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3643859",
  abstract =     "Food computing, a newly emerging topic, is closely
                 linked to human life through computational
                 methodologies. Meal recommendation, a food-related
                 study about human health, aims to provide users a meal
                 with courses constrained from specific categories
                 (e.g.,. \ldots{})",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "81",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ma:2024:PFR,
  author =       "Jianghong Ma and Huiyue Sun and Dezhao Yang and Haijun
                 Zhang",
  title =        "Personalized Fashion Recommendations for Diverse Body
                 Shapes with Contrastive Multimodal Cross-Attention
                 Network",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "82:1--82:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3637217",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3637217",
  abstract =     "Fashion recommendation has become a prominent focus in
                 the realm of online shopping, with various tasks being
                 explored to enhance the customer experience. Recent
                 research has particularly emphasized fashion
                 recommendation based on body shapes, yet a \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "82",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Elahi:2024:KGE,
  author =       "Ehsan Elahi and Sajid Anwar and Babar Shah and Zahid
                 Halim and Abrar Ullah and Imad Rida and Muhammad
                 Waqas",
  title =        "Knowledge Graph Enhanced Contextualized
                 Attention-Based Network for Responsible User-Specific
                 Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "83:1--83:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641288",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641288",
  abstract =     "With ever-increasing dataset size and data storage
                 capacity, there is a strong need to build systems that
                 can effectively utilize these vast datasets to extract
                 valuable information. Large datasets often exhibit
                 sparsity and pose cold start problems, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "83",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2024:TRS,
  author =       "Shoujin Wang and Xiuzhen Zhang and Yan Wang and
                 Francesco Ricci",
  title =        "Trustworthy Recommender Systems",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "84:1--84:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3627826",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3627826",
  abstract =     "Recommender systems (RSs) aim at helping users to
                 effectively retrieve items of their interests from a
                 large catalogue. For a quite long time, researchers and
                 practitioners have been focusing on developing accurate
                 RSs. Recent years have witnessed an \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "84",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yu:2024:MMS,
  author =       "Dongjin Yu and Xingliang Wang and Yu Xiong and Xudong
                 Shen and Runze Wu and Dongjing Wang and Zhene Zou and
                 Guandong Xu",
  title =        "{MHANER}: a Multi-source Heterogeneous Graph Attention
                 Network for Explainable Recommendation in Online
                 Games",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "85:1--85:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3626243",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3626243",
  abstract =     "Recommender system helps address information overload
                 problem and satisfy consumers' personalized requirement
                 in many applications such as e-commerce, social
                 networks, and in-game store. However, existing
                 approaches mainly focus on improving the accuracy
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "85",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ren:2024:EKG,
  author =       "Xuhui Ren and Tong Chen and Quoc Viet Hung Nguyen and
                 Lizhen Cui and Zi Huang and Hongzhi Yin",
  title =        "Explicit Knowledge Graph Reasoning for Conversational
                 Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "86:1--86:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3637216",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3637216",
  abstract =     "Traditional recommender systems estimate user
                 preference on items purely based on historical
                 interaction records, thus failing to capture
                 fine-grained yet dynamic user interests and letting
                 users receive recommendation only passively. Recent
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "86",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lu:2024:ACD,
  author =       "Kezhi Lu and Qian Zhang and Danny Hughes and Guangquan
                 Zhang and Jie Lu",
  title =        "{AMT-CDR}: a Deep Adversarial Multi-Channel Transfer
                 Network for Cross-Domain Recommendation",
  journal =      j-TIST,
  volume =       "15",
  number =       "4",
  pages =        "87:1--87:??",
  month =        aug,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3641286",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Thu Aug 29 08:03:44 MDT 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3641286",
  abstract =     "Recommender systems are one of the most successful
                 applications of using AI for providing personalized
                 e-services to customers. However, data sparsity is
                 presenting enormous challenges that are hindering the
                 further development of advanced recommender \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "87",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gilman:2024:ADC,
  author =       "Ekaterina Gilman and Francesca Bugiotti and Ahmed
                 Khalid and Hassan Mehmood and Panos Kostakos and Lauri
                 Tuovinen and Johanna Ylipulli and Xiang Su and Denzil
                 Ferreira",
  title =        "Addressing Data Challenges to Drive the Transformation
                 of Smart Cities",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "88:1--88:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3663482",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3663482",
  abstract =     "Cities serve as vital hubs of economic activity and
                 knowledge generation and dissemination. As such, cities
                 bear a significant responsibility to uphold
                 environmental protection measures while promoting the
                 welfare and living comfort of their residents.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "88",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sharma:2024:NMD,
  author =       "Mandar Sharma and Ajay Kumar Gogineni and Naren
                 Ramakrishnan",
  title =        "Neural Methods for Data-to-text Generation",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "89:1--89:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3660639",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3660639",
  abstract =     "The neural boom that has sparked natural language
                 processing (NLP) research throughout the last decade
                 has similarly led to significant innovations in
                 data-to-text (D2T) generation. This survey offers a
                 consolidated view into the neural D2T paradigm with
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "89",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Diffallah:2024:TSF,
  author =       "Zhor Diffallah and Hadjer Ykhlef and Hafida Bouarfa",
  title =        "Teacher--Student Framework for Polyphonic
                 Semi-supervised Sound Event Detection: Survey and
                 Empirical Analysis",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "90:1--90:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3660641",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3660641",
  abstract =     "Polyphonic sound event detection refers to the task of
                 automatically identifying sound events occurring
                 simultaneously in an auditory scene. Due to the
                 inherent complexity and variability of real-world
                 auditory scenes, building robust detectors for
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "90",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fan:2024:BRL,
  author =       "Lizhou Fan and Lingyao Li and Zihui Ma and Sanggyu Lee
                 and Huizi Yu and Libby Hemphill",
  title =        "A Bibliometric Review of Large Language Models
                 Research from 2017 to 2023",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "91:1--91:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3664930",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3664930",
  abstract =     "Large language models (LLMs), such as OpenAI's
                 Generative Pre-trained Transformer (GPT), are a class
                 of language models that have demonstrated outstanding
                 performance across a range of natural language
                 processing (NLP) tasks. LLMs have become a highly
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "91",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Choudhary:2024:BTM,
  author =       "Monika Choudhary and Satyendra Singh Chouhan and
                 Santosh Singh Rathore",
  title =        "Beyond Text: Multimodal Credibility Assessment
                 Approaches for Online User-Generated Content",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "92:1--92:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3673236",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3673236",
  abstract =     "User-generated content (UGC) is increasingly becoming
                 prevalent on various digital platforms. The content
                 generated on social media, review forums, and
                 question-answer platforms impacts a larger audience and
                 influences their political, social, and other
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "92",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Layne:2024:ARA,
  author =       "Janet Layne and Qudrat E. Alahy Ratul and Edoardo
                 Serra and Sushil Jajodia",
  title =        "Analyzing Robustness of Automatic Scientific Claim
                 Verification Tools against Adversarial Rephrasing
                 Attacks",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "93:1--93:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3663481",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3663481",
  abstract =     "The coronavirus pandemic has fostered an explosion of
                 misinformation about the disease, including the risk
                 and effectiveness of vaccination. AI tools for
                 automatic Scientific Claim Verification (SCV) can be
                 crucial to defeat misinformation campaigns \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "93",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Mahajan:2024:PPD,
  author =       "Yash Mahajan and Jin-Hee Cho and Ing-Ray Chen",
  title =        "Privacy-Preserving and Diversity-Aware Trust-based
                 Team Formation in Online Social Networks",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "94:1--94:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3670411",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3670411",
  abstract =     "As online social networks (OSNs) become more
                 prevalent, a new paradigm for problem-solving through
                 crowd-sourcing has emerged. By leveraging the OSN
                 platforms, users can post a problem to be solved and
                 then form a team to collaborate and solve the
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "94",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Bi:2024:MAA,
  author =       "Haoyang Bi and Qi Liu and Han Wu and Weidong He and
                 Zhenya Huang and Yu Yin and Haiping Ma and Yu Su and
                 Shijin Wang and Enhong Chen",
  title =        "Model-Agnostic Adaptive Testing for Intelligent
                 Education Systems via Meta-learned Gradient
                 Embeddings",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "95:1--95:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3660642",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3660642",
  abstract =     "The field of education has undergone a significant
                 revolution with the advent of intelligent systems and
                 technology, which aim to personalize the learning
                 experience, catering to the unique needs and abilities
                 of individual learners. In this pursuit, a \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "95",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yu:2024:FGC,
  author =       "Fudan Yu and Guozhen Zhang and Haotian Wang and Depeng
                 Jin and Yong Li",
  title =        "Fine-grained {Courier} Delivery Behavior Recovery with
                 a Digital Twin Based Iterative Calibration Framework",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "96:1--96:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3663484",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3663484",
  abstract =     "Recovering the fine-grained working process of
                 couriers is becoming one of the essential problems for
                 improving the express delivery systems because knowing
                 the detailed process of how couriers accomplish their
                 daily work facilitates the analyzing, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "96",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2024:DDI,
  author =       "Xuansheng Wu and Hanqin Wan and Qiaoyu Tan and Wenlin
                 Yao and Ninghao Liu",
  title =        "{DIRECT}: Dual Interpretable Recommendation with
                 Multi-aspect Word Attribution",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "97:1--97:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3663483",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3663483",
  abstract =     "Recommending products to users with intuitive
                 explanations helps improve the system in transparency,
                 persuasiveness, and satisfaction. Existing
                 interpretation techniques include post hoc methods and
                 interpretable modeling. The former category could
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "97",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Luo:2024:PEP,
  author =       "Sichun Luo and Yuanzhang Xiao and Xinyi Zhang and Yang
                 Liu and Wenbo Ding and Linqi Song",
  title =        "{PerFedRec++}: Enhancing Personalized Federated
                 Recommendation with Self-Supervised Pre-Training",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "98:1--98:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3664927",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3664927",
  abstract =     "Federated recommendation systems employ federated
                 learning techniques to safeguard user privacy by
                 transmitting model parameters instead of raw user data
                 between user devices and the central server.
                 Nevertheless, the current federated recommender system
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "98",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wang:2024:DDN,
  author =       "Dexian Wang and Tianrui Li and Ping Deng and Zhipeng
                 Luo and Pengfei Zhang and Keyu Liu and Wei Huang",
  title =        "{DNSRF}: Deep Network-based {Semi-NMF} Representation
                 Framework",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "99:1--99:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3670408",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3670408",
  abstract =     "Representation learning is an important topic in
                 machine learning, pattern recognition, and data mining
                 research. Among many representation learning
                 approaches, semi-nonnegative matrix factorization
                 (SNMF) is a frequently-used one. However, a typical
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "99",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Levy:2024:RTA,
  author =       "Moshe Levy and Guy Amit and Yuval Elovici and Yisroel
                 Mirsky",
  title =        "Ranking the Transferability of Adversarial Examples",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "100:1--100:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3670409",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3670409",
  abstract =     "Adversarial transferability in blackbox scenarios
                 presents a unique challenge: while attackers can employ
                 surrogate models to craft adversarial examples, they
                 lack assurance on whether these examples will
                 successfully compromise the target model. Until
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "100",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cai:2024:MRB,
  author =       "Miaomiao Cai and Min Hou and Lei Chen and Le Wu and
                 Haoyue Bai and Yong Li and Meng Wang",
  title =        "Mitigating Recommendation Biases via Group-Alignment
                 and Global-Uniformity in Representation Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "101:1--101:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3664931",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3664931",
  abstract =     "Collaborative Filtering (CF) plays a crucial role in
                 modern recommender systems, leveraging historical
                 user-item interactions to provide personalized
                 suggestions. However, CF-based methods often encounter
                 biases due to imbalances in training data. This
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "101",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Baghersalimi:2024:MMS,
  author =       "Saleh Baghersalimi and Alireza Amirshahi and Farnaz
                 Forooghifar and Tomas Teijeiro and Amir Aminifar and
                 David Atienza",
  title =        "{M2SKD}: Multi-to-Single Knowledge Distillation of
                 Real-Time Epileptic Seizure Detection for Low-Power
                 Wearable Systems",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "102:1--102:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3675402",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3675402",
  abstract =     "Integrating low-power wearable systems into routine
                 health monitoring is an ongoing challenge. Recent
                 advances in the computation capabilities of wearables
                 make it possible to target complex scenarios by
                 exploiting multiple biosignals and using high-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "102",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Breve:2024:HPL,
  author =       "Bernardo Breve and Gaetano Cimino and Vincenzo
                 Deufemia",
  title =        "Hybrid Prompt Learning for Generating Justifications
                 of Security Risks in Automation Rules",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "103:1--103:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3675401",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3675401",
  abstract =     "Trigger-action platforms (TAPs) enable users without
                 programming experience to personalize the behavior of
                 Internet of Things applications and services through
                 IF-THEN rules. Unfortunately, the arbitrary connection
                 of smart devices and online services, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "103",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Fu:2024:DOD,
  author =       "Shucun Fu and Fang Dong and Dian Shen and Runze Chen
                 and Jiangshan Hao",
  title =        "{DESIGN}: Online Device Selection and Edge Association
                 for Federated Synergy Learning-enabled {AIoT}",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "104:1--104:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3673237",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3673237",
  abstract =     "The artificial intelligence of things (AIoT) is an
                 emerging technology that enables numerous AIoT devices
                 to participate in big data analytics and machine
                 learning (ML) model training, providing various
                 customized intelligent services for industry \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "104",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Makhdomi:2024:FER,
  author =       "Aqsa Ashraf Makhdomi and Iqra Altaf Gillani",
  title =        "Fair and Efficient Ridesharing: a Dynamic
                 Programming-based Relocation Approach",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "105:1--105:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3675403",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3675403",
  abstract =     "Recommending routes by their probability of having a
                 rider has long been the goal of conventional route
                 recommendation systems. While this maximizes the
                 platform-specific criteria of efficiency, it results in
                 sub-optimal outcomes with the disparity among
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "105",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sharma:2024:PBA,
  author =       "Arun Sharma and Subhankar Ghosh and Shashi Shekhar",
  title =        "Physics-Based Abnormal Trajectory Gap Detection",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "106:1--106:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3673235",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3673235",
  abstract =     "Given trajectories with gaps (i.e., missing data), we
                 investigate algorithms to identify abnormal gaps in
                 trajectories which occur when a given moving object did
                 not report its location, but other moving objects in
                 the same geographic region periodically \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "106",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Sghaier:2024:LNB,
  author =       "Oussama Sghaier and Manar Amayri and Nizar Bouguila",
  title =        "{Libby--Novick} Beta-{Liouville} Distribution for
                 Enhanced Anomaly Detection in Proportional Data",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "107:1--107:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3675405",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3675405",
  abstract =     "We consider the problem of anomaly detection in
                 proportional data by investigating the Libby-Novick
                 Beta-Liouville distribution, a novel distribution
                 merging the salient characteristics of Liouville and
                 Libby-Novick Beta distributions. Its main benefit,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "107",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhuang:2024:MEN,
  author =       "Yan Zhuang and Junyan Zhang and Ruogu Lu and Kunlun He
                 and Xiuxing Li",
  title =        "{MedNER}: Enhanced Named Entity Recognition in Medical
                 Corpus via Optimized Balanced and Deep Active
                 Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "108:1--108:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3678178",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3678178",
  abstract =     "Ever-growing electronic medical corpora provide
                 unprecedented opportunities for researchers to analyze
                 patient conditions and drug effects. Meanwhile, severe
                 challenges emerged in the large-scale electronic
                 medical records process phase. Primarily, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "108",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ting:2024:OST,
  author =       "Lo Pang-Yun Ting and Huan-Yang Wang and Jhe-Yun Jhang
                 and Kun-Ta Chuang",
  title =        "Online Spatial-Temporal {EV} Charging Scheduling with
                 Incentive Promotion",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "109:1--109:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3678180",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3678180",
  abstract =     "The growing adoption of electric vehicles (EVs) has
                 resulted in an increased demand for public EV charging
                 infrastructure. Currently, the collaboration between
                 these stations has become vital for efficient charging
                 scheduling and cost reduction. However, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "109",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{LaQuatra:2024:SST,
  author =       "Moreno {La Quatra} and Giuseppe Gallipoli and Luca
                 Cagliero",
  title =        "Self-supervised Text Style Transfer Using
                 Cycle-Consistent Adversarial Networks",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "110:1--110:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3678179",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3678179",
  abstract =     "Text Style Transfer (TST) is a relevant branch of
                 natural language processing that aims to control the
                 style attributes of a piece of text while preserving
                 its original content. To address TST in the absence of
                 parallel data, Cycle-consistent Generative \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "110",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Chi:2024:WSZ,
  author =       "Te-Yu Chi and Jyh-Shing Roger Jang",
  title =        "{WC-SBERT}: Zero-Shot Topic Classification Using
                 {SBERT} and Light Self-Training on {Wikipedia}
                 Categories",
  journal =      j-TIST,
  volume =       "15",
  number =       "5",
  pages =        "111:1--111:??",
  month =        oct,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3678183",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Sat Nov 9 16:17:42 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3678183",
  abstract =     "In natural language processing (NLP), zero-shot topic
                 classification requires machines to understand the
                 contextual meanings of texts in a downstream task
                 without using the corresponding labeled texts for
                 training, which is highly desirable for various
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "111",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhang:2024:STF,
  author =       "Yifei Zhang and Dun Zeng and Jinglong Luo and Xinyu Fu
                 and Guanzhong Chen and Zenglin Xu and Irwin King",
  title =        "A Survey of Trustworthy Federated Learning: Issues,
                 Solutions, and Challenges",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "112:1--112:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3678181",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3678181",
  abstract =     "Trustworthy artificial intelligence (TAI) has proven
                 invaluable in curbing potential negative repercussions
                 tied to AI applications. Within the TAI spectrum,
                 federated learning (FL) emerges as a promising solution
                 to safeguard personal information in \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "112",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Arbaoui:2024:FLS,
  author =       "Meriem Arbaoui and Mohamed-el-Amine Brahmia and
                 Abdellatif Rahmoun and Mourad Zghal",
  title =        "Federated Learning Survey: a Multi-Level Taxonomy of
                 Aggregation Techniques, Experimental Insights, and
                 Future Frontiers",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "113:1--113:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3678182",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3678182",
  abstract =     "The emerging integration of Internet of Things (IoT)
                 and AI has unlocked numerous opportunities for
                 innovation across diverse industries. However, growing
                 privacy concerns and data isolation issues have
                 inhibited this promising advancement. Unfortunately,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "113",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gabbolini:2024:SMT,
  author =       "Giovanni Gabbolini and Derek Bridge",
  title =        "Surveying More Than Two Decades of Music Information
                 Retrieval Research on Playlists",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "114:1--114:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3688398",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3688398",
  abstract =     "In this article, we present an extensive survey of
                 music information retrieval (MIR) research into music
                 playlists. Our survey spans more than 20 years, and
                 includes around 300 papers about playlists, with over
                 70 supporting sources. It is the first \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "114",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Song:2024:EGP,
  author =       "Peipei Song and Yuanen Zhou and Xun Yang and Daqing
                 Liu and Zhenzhen Hu and Depeng Wang and Meng Wang",
  title =        "Efficiently Gluing Pre-Trained Language and Vision
                 Models for Image Captioning",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "115:1--115:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3682067",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3682067",
  abstract =     "Vision-and-language pre-training models have achieved
                 impressive performance for image captioning. But most
                 of them are trained with millions of paired image-text
                 data and require huge memory and computing overhead. To
                 alleviate this, we try to stand on \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "115",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Wu:2024:IGB,
  author =       "Jingjing Wu and Richang Hong and Shengeng Tang",
  title =        "Intermediary-Generated Bridge Network for {RGB-D}
                 Cross-Modal Re-Identification",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "116:1--116:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3682066",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3682066",
  abstract =     "RGB-D cross-modal person re-identification (re-id)
                 targets at retrieving the person of interest across RGB
                 and depth image modalities. To cope with the modal
                 discrepancy, some existing methods generate an
                 auxiliary mode with either inherent properties of
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "116",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Huang:2024:TUI,
  author =       "Huiqun Huang and Xi Yang and Suining He and Mahan
                 Tabatabaie",
  title =        "Toward Ubiquitous Interaction-Attentive and
                 Extreme-Aware Crowd Activity Level Prediction",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "117:1--117:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3682063",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3682063",
  abstract =     "Accurate prediction of citywide crowd activity levels
                 (CALs), i.e., the numbers of participants of citywide
                 crowd activities under different venue categories at
                 certain time and locations, is essential for the city
                 management, the personal service \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "117",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Prakash:2024:UFA,
  author =       "V. Jothi Prakash and S. Arul Antran Vijay",
  title =        "A Unified Framework for Analyzing Textual Context and
                 Intent in Social Media",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "118:1--118:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3682064",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3682064",
  abstract =     "In the realm of natural language processing, tasks
                 like emotion recognition, irony detection, hate speech
                 detection, offensive language identification, and
                 stance detection are pivotal for understanding
                 user-generated content. While several task-specific
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "118",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Koyuncu:2024:AMA,
  author =       "Deniz Koyuncu and Alex Gittens and B{\"u}lent Yener
                 and Moti Yung",
  title =        "Adversarial Missingness Attacks on Causal Structure
                 Learning",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "119:1--119:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3682065",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3682065",
  abstract =     "Causality-informed machine learning has been proposed
                 as an avenue for achieving many of the goals of modern
                 machine learning, from ensuring generalization under
                 domain shifts to attaining fairness, robustness, and
                 interpretability. A key component of \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "119",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Meng:2024:GBA,
  author =       "Kevin Meng and Damian Jimenez and Jacob Daniel
                 Devasier and Sai Sandeep Naraparaju and Fatma Arslan
                 and Daniel Obembe and Chengkai Li",
  title =        "Gradient-Based Adversarial Training on Transformer
                 Networks for Detecting Check-Worthy Factual Claims",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "120:1--120:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3689212",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3689212",
  abstract =     "This article presents the latest developments to
                 ClaimBuster's claim-spotting model, which tackles the
                 critical task of identifying check-worthy claims from
                 large streams of information. We introduce the first
                 adversarially regularized, transformer-based \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "120",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lian:2024:RCC,
  author =       "Yuanfeng Lian and Shoushuang Pei and Mengqi Chen and
                 Jing Hua",
  title =        "Relation Constrained Capsule Graph Neural Networks for
                 Non-Rigid Shape Correspondence",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "121:1--121:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3688851",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3688851",
  abstract =     "Non-rigid 3D shape correspondence aims to establish
                 dense correspondences between two non-rigidly deformed
                 3D shapes. However, the variability and symmetry of
                 non-rigid shapes usually lead to mismatches due to
                 shape deformation, topological changes, or \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "121",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Liu:2024:EFL,
  author =       "Ji Liu and Juncheng Jia and Hong Zhang and Yuhui Yun
                 and Leye Wang and Yang Zhou and Huaiyu Dai and Dejing
                 Dou",
  title =        "Efficient Federated Learning Using Dynamic Update and
                 Adaptive Pruning with Momentum on Shared Server Data",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "122:1--122:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3690648",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3690648",
  abstract =     "Despite achieving remarkable performance, Federated
                 Learning (FL) encounters two important problems, i.e.,
                 low training efficiency and limited computational
                 resources. In this article, we propose a new FL
                 framework, i.e., FedDUMAP, with three original
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "122",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Gong:2024:KKG,
  author =       "Jiahui Gong and Tong Li and Huandong Wang and Yu Liu
                 and Xing Wang and Zhendong Wang and Chao Deng and
                 Junlan Feng and Depeng Jin and Yong Li",
  title =        "{KGDA}: a Knowledge Graph Driven Decomposition
                 Approach for Cellular Traffic Prediction",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "123:1--123:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3690650",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3690650",
  abstract =     "Understanding and accurately predicting cellular
                 traffic data is vital for communication operators and
                 device users, as it facilitates efficient resource
                 allocation and ensures superior service quality.
                 However, large-scale cellular traffic data \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "123",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Yi:2024:RST,
  author =       "Jinhui Yi and Huan Yan and Haotian Wang and Jian Yuan
                 and Yong Li",
  title =        "{RCCNet}: a Spatial-Temporal Neural Network Model for
                 Logistics Delivery Timely Rate Prediction",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "124:1--124:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3690649",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3690649",
  abstract =     "In logistics service, the delivery timely rate is a
                 key experience indicator, which is highly essential to
                 the competitive advantage of express companies.
                 Prediction on it enables intervention on couriers with
                 low predicted results in advance, thus \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "124",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Maroto-Gomez:2024:AMU,
  author =       "Marcos Maroto-G{\'o}mez and Matthew Lewis and
                 {\'A}lvaro Castro-Gonz{\'a}lez and Mar{\'\i}a Malfaz
                 and Miguel {\'A}ngel Salichs and Lola Ca{\~n}amero",
  title =        "Adapting to My User, Engaging with My Robot: an
                 Adaptive Affective Architecture for a Social Assistive
                 Robot",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "125:1--125:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3691348",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3691348",
  abstract =     "Affective feedback from social robots is a useful
                 technique for communicating to people whether they are
                 interacting ``well'' with the robot or not. However,
                 some users, such as people with physical or cognitive
                 difficulties, may not be able to interact in \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "125",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Ahanger:2024:QIA,
  author =       "Tariq Ahamed Ahanger and Munish Bhatia and Abdulaziz
                 Aldaej",
  title =        "Quantum Informative Analysis in Smart Power
                 Distribution",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "126:1--126:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3691350",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3691350",
  abstract =     "Advancements in the Internet of Things (IoT) paradigm
                 have greatly improved the quality of services in the
                 electricity industry through the integration of smart
                 energy distribution and dependable electric devices.
                 Conspicuously, the current research \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "126",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Zhou:2024:MIL,
  author =       "Shengjie Zhou and Senlin Shu and Haobo Wang and
                 Hongxin Wei and Tao Xiang and Beibei Li",
  title =        "Multiple-Instance Learning from Pairwise Comparison
                 Bags",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "127:1--127:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3696460",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3696460",
  abstract =     "Multiple-instance learning (MIL) is a significant
                 weakly supervised learning problem, where the training
                 data consist of bags containing multiple instances and
                 bag-level labels. Most previous MIL research required
                 fully labeled bags. However, collecting \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "127",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Phan:2024:FEF,
  author =       "Nguyen Minh Thao Phan and Ling Chen and Chun-Hung Chen
                 and Wen-Chih Peng",
  title =        "{FastRx}: Exploring Fastformer and Memory-Augmented
                 Graph Neural Networks for Personalized Medication
                 Recommendations",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "128:1--128:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3696111",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3696111",
  abstract =     "Personalized medication recommendations aim to suggest
                 a set of medications based on the clinical conditions
                 of a patient. Not only should the patient's diagnosis,
                 procedure, and medication history be considered, but
                 drug-drug interactions (DDIs) must \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "128",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Lee:2024:UOF,
  author =       "Hyunho Lee and Younghoon Lee",
  title =        "User Opinion-Focused Abstractive Summarization Using
                 Explainable Artificial Intelligence",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "129:1--129:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3696456",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3696456",
  abstract =     "Recent methodologies have achieved good performance in
                 objectively summarizing important information from
                 fact-based datasets such as Extreme Summarization and
                 CNN Daily Mail. These methodologies involve abstractive
                 summarization, extracting the core \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "129",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Cascavilla:2024:FIM,
  author =       "Giuseppe Cascavilla and Gemma Catolino and Mauro Conti
                 and Dimos Mellios and Damian Tamburri",
  title =        "Few Images, Many Insights: Illicit Content Detection
                 Using a Limited Number of Images",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "130:1--130:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3696458",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3696458",
  abstract =     "The anonymity and untraceability benefits of the dark
                 web increased its popularity exponentially. The cost of
                 these technical benefits is that such anonymity has
                 created a suitable womb for illicit activity. Hence-in
                 collaboration with cybersecurity \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "130",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hu:2024:URE,
  author =       "Jiayu Hu and Senlin Shu and Beibei Li and Tao Xiang
                 and Zhongshi He",
  title =        "An Unbiased Risk Estimator for Partial Label Learning
                 with Augmented Classes",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "131:1--131:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3700137",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3700137",
  abstract =     "Partial Label Learning (PLL) is a typical weakly
                 supervised learning task, which assumes each training
                 instance is annotated with a set of candidate labels
                 containing the ground-truth label. Recent PLL methods
                 adopt identification-based disambiguation to \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "131",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Le:2024:QAR,
  author =       "Trung-Hoang Le and Hady W. Lauw",
  title =        "Question-Attentive Review-Level Explanation for Neural
                 Rating Regression",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "132:1--132:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3699516",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3699516",
  abstract =     "Recommendation explanations help to improve their
                 acceptance by end users. Explanations come in many
                 different forms. One that is of interest here is
                 presenting an existing review of the recommended item
                 as the explanation. The challenge is in selecting a
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "132",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Hussain:2024:ONO,
  author =       "Hanan Hussain and P. S. Tamizharasan and Praveen Kumar
                 Yadav",
  title =        "{OptiRet-Net}: an Optimized Low-Light Image
                 Enhancement Technique for {CV}-Based Applications in
                 Resource-Constrained Environments",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "133:1--133:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3700136",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3700136",
  abstract =     "The illumination of images can significantly impact
                 computer-vision applications such as image
                 classification, multiple object detection, and
                 tracking, leading to a significant decline in detection
                 and tracking accuracy. Recent advancements in deep
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "133",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Kang:2024:OPU,
  author =       "Yan Kang and Hanlin Gu and Xingxing Tang and Yuanqin
                 He and Yuzhu Zhang and Jinnan He and Yuxing Han and
                 Lixin Fan and Kai Chen and Qiang Yang",
  title =        "Optimizing Privacy, Utility, and Efficiency in a
                 Constrained Multi-Objective Federated Learning
                 Framework",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "134:1--134:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3701039",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3701039",
  abstract =     "Conventionally, federated learning aims to optimize a
                 single objective, typically the utility. However, for a
                 federated learning system to be trustworthy, it needs
                 to simultaneously satisfy multiple objectives, such as
                 maximizing model performance, \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "134",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}

@Article{Su:2024:PSR,
  author =       "Shaowen Su and Yan Zhang and Minggang Gan",
  title =        "Proposal Semantic Relationship Graph Network for
                 Temporal Action Detection",
  journal =      j-TIST,
  volume =       "15",
  number =       "6",
  pages =        "135:1--135:??",
  month =        dec,
  year =         "2024",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3702233",
  ISSN =         "2157-6904 (print), 2157-6912 (electronic)",
  ISSN-L =       "2157-6904",
  bibdate =      "Fri Dec 20 17:01:44 MST 2024",
  bibsource =    "https://www.math.utah.edu/pub/tex/bib/tist.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3702233",
  abstract =     "Temporal action detection, a critical task in video
                 activity understanding, is typically divided into two
                 stages: proposal generation and classification.
                 However, most existing methods overlook the importance
                 of information transfer among proposals during
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "ACM Trans. Intell. Syst. Technol.",
  articleno =    "135",
  fjournal =     "ACM Transactions on Intelligent Systems and Technology
                 (TIST)",
  journal-URL =  "https://dl.acm.org/loi/tist",
}