Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval

Artificial Intelligence Lab, Department of MIS, University of Arizona === The basic problem in information retrieval is that large scale searches can only match terms specified by the user to terms appearing in documents in the digital library collection. Intermediate sources that support term sugge...

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Main Authors: Schatz, Bruce R., Johnson, Eric H., Cochrane, Pauline A., Chen, Hsinchun
Language:en
Published: ACM 1996
Subjects:
Online Access:http://hdl.handle.net/10150/106216
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-1062162015-10-23T04:24:18Z Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval Schatz, Bruce R. Johnson, Eric H. Cochrane, Pauline A. Chen, Hsinchun Digital Libraries Information Extraction Artificial Intelligence Lab, Department of MIS, University of Arizona The basic problem in information retrieval is that large scale searches can only match terms specified by the user to terms appearing in documents in the digital library collection. Intermediate sources that support term suggestion can thus enhance retrieval by providing altentative search terms for the user. Term suggestion increases the recall, while interaction enables the user to attempt to not decrease the precision. We are building a prototype user interface that will become the Web interface for the University of Illinois Digital Library Initiative (DLI) testbed. It supports the principle of multiple views, wherc different kinds of term suggestors can be used to complement search and each other. This paper discusses its operation with two complementary term suggestors, subject thesauri and co-occurrence lists, and compares their utility. Thesauri are generatad by human indexers and place selected terms in a subject hierarchy. Co-occurrence lists are generated by computer and place all terms in frequency order of occurrence together. This paper concludes with a discussion of how multiple views can help provide good quality Search for the Net. This is a paper about the design of a retrieval system prototype that allows users to simultaneously combine terms offered by different suggestion techniques, not about comparing the merits of each in a systematic and controlled way. It offers no experimental results. 1996 Conference Paper Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval 1996, :126-133 http://hdl.handle.net/10150/106216 en ACM
collection NDLTD
language en
sources NDLTD
topic Digital Libraries
Information Extraction
spellingShingle Digital Libraries
Information Extraction
Schatz, Bruce R.
Johnson, Eric H.
Cochrane, Pauline A.
Chen, Hsinchun
Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval
description Artificial Intelligence Lab, Department of MIS, University of Arizona === The basic problem in information retrieval is that large scale searches can only match terms specified by the user to terms appearing in documents in the digital library collection. Intermediate sources that support term suggestion can thus enhance retrieval by providing altentative search terms for the user. Term suggestion increases the recall, while interaction enables the user to attempt to not decrease the precision. We are building a prototype user interface that will become the Web interface for the University of Illinois Digital Library Initiative (DLI) testbed. It supports the principle of multiple views, wherc different kinds of term suggestors can be used to complement search and each other. This paper discusses its operation with two complementary term suggestors, subject thesauri and co-occurrence lists, and compares their utility. Thesauri are generatad by human indexers and place selected terms in a subject hierarchy. Co-occurrence lists are generated by computer and place all terms in frequency order of occurrence together. This paper concludes with a discussion of how multiple views can help provide good quality Search for the Net. This is a paper about the design of a retrieval system prototype that allows users to simultaneously combine terms offered by different suggestion techniques, not about comparing the merits of each in a systematic and controlled way. It offers no experimental results.
author Schatz, Bruce R.
Johnson, Eric H.
Cochrane, Pauline A.
Chen, Hsinchun
author_facet Schatz, Bruce R.
Johnson, Eric H.
Cochrane, Pauline A.
Chen, Hsinchun
author_sort Schatz, Bruce R.
title Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval
title_short Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval
title_full Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval
title_fullStr Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval
title_full_unstemmed Interactive Term Suggestion for Users of Digital Libraries: Using Subject Thesauri and Co-occurrence Lists for Information Retrieval
title_sort interactive term suggestion for users of digital libraries: using subject thesauri and co-occurrence lists for information retrieval
publisher ACM
publishDate 1996
url http://hdl.handle.net/10150/106216
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