arXiv:cs/0703135 [cs.CL]AbstractReferencesReviewsResources
Dependency Parsing with Dynamic Bayesian Network
Virginia Savova, Leonid Peshkin
Published 2007-03-27Version 1
Exact parsing with finite state automata is deemed inappropriate because of the unbounded non-locality languages overwhelmingly exhibit. We propose a way to structure the parsing task in order to make it amenable to local classification methods. This allows us to build a Dynamic Bayesian Network which uncovers the syntactic dependency structure of English sentences. Experiments with the Wall Street Journal demonstrate that the model successfully learns from labeled data.
Comments: 6 pages
Journal: In proceedings of American Association for Artificial Intelligence AAAI 2005
Keywords: dynamic bayesian network, dependency parsing, wall street journal demonstrate, local classification methods, finite state automata
Tags: journal article
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