Unsupervised learning of contextual role knowledge for coreference resolution

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Publication Type Journal Article
School or College College of Engineering
Department Computing, School of
Creator Riloff, Ellen M.
Other Author Bean, David
Title Unsupervised learning of contextual role knowledge for coreference resolution
Date 2004
Description We present a coreference resolver called BABAR that uses contextual role knowledge to evaluate possible antecedents for an anaphor. BABAR uses information extraction patterns to identify contextual roles and creates four contextual role knowledge sources using unsupervised learning. These knowledge sources determine whether the contexts surrounding an anaphor and antecedent are compatible. BABAR applies a Dempster-Shafer probabilistic model to make resolutions based on evidence from the contextual role knowledge sources as well as general knowledge sources. Experiments in two domains showed that the contextual role knowledge improved coreference performance, especially on pronouns.
Type Text
Publisher Association for Computational Linguistics
First Page 1
Last Page 8
Subject Coreference resolution; Coreference resolver; BABAR; Contextual role knowledge; Unsupervised learning
Subject LCSH Information retrieval; Natural language processing (Computer science); Dempster-Shafer theory
Language eng
Bibliographic Citation Bean, D., & Riloff, E. M. (2004). Unsupervised learning of contextual role knowledge for coreference resolution. Proceedings of the Human Language Technology Conference / North American Chapter of the Association for Computational Linguistics Annual Meeting (HLT/NAACL-04), 1-8.
Rights Management (c) Bean, D., & Riloff, E. M.
Format Medium application/pdf
Format Extent 92,707 bytes
Identifier ir-main,12428
ARK ark:/87278/s6794p3x
Setname ir_uspace
ID 705545
Reference URL https://collections.lib.utah.edu/ark:/87278/s6794p3x
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