Entry Keating:1993:HNN from sigcse1990.bib

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BibTeX entry

@Article{Keating:1993:HNN,
  author =       "John G. Keating",
  title =        "{Hopfield} networks, neural data structures and the
                 nine flies problem: neural network programming projects
                 for undergraduates",
  journal =      j-SIGCSE,
  volume =       "25",
  number =       "4",
  pages =        "33--37",
  month =        dec,
  year =         "1993",
  CODEN =        "SIGSD3",
  DOI =          "https://doi.org/10.1145/164205.164224",
  ISSN =         "0097-8418 (print), 2331-3927 (electronic)",
  ISSN-L =       "0097-8418",
  bibdate =      "Sat Nov 17 18:57:24 MST 2012",
  bibsource =    "http://portal.acm.org/;
                 http://www.math.utah.edu/pub/tex/bib/sigcse1990.bib",
  abstract =     "This paper describes two neural network programming
                 projects suitable for undergraduate students who have
                 already completed introductory courses in Programming
                 and Data Structures. It briefly outlines the structure
                 and operation of Hopfield Networks from a data
                 structure stand-point and demonstrates how these type
                 of neural networks may be used to solve interesting
                 problems like Perelman's Nine Flies Problem. Although
                 the Hopfield model is well defined mathematically,
                 students do not have to be very familiar with the
                 mathematics of the model in order to use it to solve
                 problems. Students are actively encouraged to design
                 modifications to their implementations in order to
                 obtain faster or more accurate solutions. Additionally,
                 students are also expected to compare the neural
                 network's performance with traditional approaches, in
                 order that they may appreciate the subtleties of both
                 approaches. Sample results are provided from projects
                 which have been completed during the last three-year
                 period.",
  acknowledgement = ack-nhfb,
  fjournal =     "SIGCSE Bulletin (ACM Special Interest Group on
                 Computer Science Education)",
  journal-URL =  "http://portal.acm.org/browse_dl.cfm?idx=J688",
}

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