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9 <Metadata name="Title">Bronwyn; page: 1 of 1 1 Using language models for generic entity extraction</Metadata>
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22 <Metadata name="dc.Creator">Ian H. Witten</Metadata>
23 <Metadata name="dc.Creator">Zane Bray</Metadata>
24 <Metadata name="dc.Creator">Malika Mahoui</Metadata>
25 <Metadata name="dc.Creator">W.J. Teahan</Metadata>
26 <Metadata name="dc.Title">Using language models for generic entity extraction</Metadata>
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36Bronwyn; page: 1 of 1 1 Using language models for generic entity extraction
37Ian H. Witten, Zane Bray, Malika Mahoui, W.J. Teahan Computer ScienceUniversity
38of WaikatoHamilton, New [email protected] AbstractThis paper describes
39the use of statisticallanguage modeling techniques, such as arecommonly used
40for text compression, to extractmeaningful, low-level, information about
41thelocation of semantic tokens, or \\322entities,\\323 in text.We begin by
42marking up several different tokentypes in training documents\\321for example,people\\325s
43names, dates and time periods, phonenumbers, and sums of money. We form alanguage
44model for each token type and examinehow accurately it identifies new tokens.
45We thenapply a search algorithm to insert tokenboundaries in a way that maximizes
46compressionof the entire test document. The technique can beapplied to hierarchically-defined
47tokens, leadingto a kind of \\322soft parsing\\323 that will, we believe,be
48able to identify structured items such asreferences and tables in html or
49plain text, basedon nothing more than a few marked-up examplesin training
50documents. 1. INTRODUCTIONText mining is about looking for patterns in
51text, and maybe defined as the process of analyzing text to extractinformation
52that is useful for particular purposes.Compared with the kind of data stored
53in databases, textis unstructured, amorphous, and difficult to deal with.Nevertheless,
54in modern Western culture, text is the mostcommon vehicle for the formal
55exchange of information.The motivation for trying to extract information
56from it iscompelling\\321even if success is only partial.Text mining is possible
57because you do not have tounderstand text in order to extract useful information
58fromit. Here are four examples. First, if only names could beidentified,
59links could be inserted automatically to otherplaces that mention the same
60name\\321links that are\\322dynamically evaluated\\323 by calling upon a search
61engineto bind them at click time. Second, actions can beassociated with different
62types of data, using eitherexplicit programming or programming-by-demonstrationtechniques.
63A day/time specification appearing anywherewithin one\\325s email could be
64associated with diary actionssuch as updating a personal organizer or creating
65anautomatic reminder, and each mention of a day/time in thetext could raise
66a popup menu of calendar-based actions.Third, text could be mined for data
67in tabular format,allowing databases to be created from formatted tablessuch
68as stock-market information on Web pages. Fourth,an agent could monitor incoming
69newswire stories forcompany names and collect documents that mentionthem\\321an
70automated press clipping service.In all these examples, the key problem is
71to recognizedifferent types of target fragments, which we will calltokens
72or \\322entities\\323. This is really a kind of languagerecognition problem:
73we have a text made up of differentsublanguages {for personal names, company
74names, dates,table entries, and so on} and seek to determine whichparts are
75expressed in which language.The information extraction research community
76{of whichwe were, until recently, unaware} has studied these tasksand reported
77results at annual Message UnderstandingConferences {MUC}. For example, \\322named
78entities\\323 aredefined as proper names and quantities of interest,including
79personal, organization, and location names, aswell as dates, times, percentages,
80and monetary amounts{Chinchor, 1999}.The standard approach to this problem
81is manual:tokenizers and grammars are hand-designed for theparticular data
82being extracted. Looking at currentcommercial state-of-the-art text mining
83software, forexample, IBM\\325s Intelligent Miner for Text {Tkach, 1997}uses
84specific recognition modules carefully programmedfor the different data types,
85while Apple\\325s data detectors{Nardi et al., 1998} uses language grammars.
86The TextTokenization Tool of Grover et al. {1999} is anotherexample, and
87a demonstration version is available on theWeb. The challenge for machine
88learning is to use
89&lt;/pre&gt;</Content>
90</Section>
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