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Word clustering and disambiguation based on co-occurrence data

Published online by Cambridge University Press:  17 June 2002

HANG LI
Affiliation:
Theory NEC Laboratory, Real World Computing Partnership, c/o Internet Systems Research Laboratories, NEC Corporation, 4-1-1 Miyazaki, Miyamae-ku, Kawasaki 216-8555, Japan; e-mail: [email protected] Current Address: Hang Li, Microsoft Research Asia, 5F Sigma Center, No. 49 Zhichun Road Haidian District, Beijing, China 100080. Email: [email protected], Home Page: http://www.research.microsoft.com/users/hangli/

Abstract

We address the problem of clustering words (or constructing a thesaurus) based on co-occurrence data, and conducting syntactic disambiguation by using the acquired word classes. We view the clustering problem as that of estimating a class-based probability distribution specifying the joint probabilities of word pairs. We propose an efficient algorithm based on the Minimum Description Length (MDL) principle for estimating such a probability model. Our clustering method is a natural extension of that proposed in Brown, Della Pietra, deSouza, Lai and Mercer (1992). We next propose a syntactic disambiguation method which combines the use of automatically constructed word classes and that of a hand-made thesaurus. The overall disambiguation accuracy achieved by our method is 88.2%, which compares favorably against the accuracies obtained by the state-of-the-art disambiguation methods.

Type
Research Article
Copyright
© 2002 Cambridge University Press

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Footnotes

A previous version of this paper appeared in COLING-ACL'98 (Li and Abe 1998b).