Entry Fankhauser:EPODD-6-4-447 from epodd.bib

Last update: Fri Jan 5 02:09:17 MST 2018                Valid HTML 3.2!

Index sections

Top | Symbols | A | B | C | D | E | F | G | H | I | J | K | L | M | N | O | P | Q | R | S | T | U | V | W | X | Y | Z

BibTeX entry

@Article{Fankhauser:EPODD-6-4-447,
  author =       "Peter Fankhauser and Yi Xu",
  title =        "{\em {MarkItUp}!\/} An incremental approach to
                 document structure recognition",
  journal =      j-EPODD,
  volume =       "6",
  number =       "4",
  pages =        "447--456",
  month =        dec,
  year =         "1993",
  CODEN =        "EPODEU",
  ISSN =         "0894-3982",
  bibdate =      "Sat Aug 27 10:40:29 1994",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/epodd.bib",
  abstract =     "This paper presents {\sl MarkItUp!}, a system to
                 recognize the structure of untagged electronic
                 documents which contain sub--documents with similar
                 format. For these kinds of documents manual structure
                 recognition is a highly repetitive task. On the other
                 hand, the specification of recognition grammars
                 requires significant intellectual effort. Our approach
                 uses manually structured examples to incrementally
                 generate recognition grammars by means of techniques
                 for learning by example. Users can structure example
                 portions of a document by inserting mark--ups. {\em
                 MarkItUp!\/} then abstracts and unifies the structure
                 of the examples. On this basis it tries to structure
                 another example with similar format. Users can correct
                 or accept the produced structure. With every accepted
                 example thereby a grammar is acquired and gradually
                 refined, which can be used to successfully structure
                 the other portions of the document.",
  keywords =     "Document structure recognition, Learning by example,
                 Structure unification, SGML",
}

Related entries