A Discriminative Model for Joint Morphological Disambiguation and Dependency Parsing.

HLT '11: Proceedings of the 49th Annual Meeting of the Association for Computational Linguistics: Human Language Technologies - Volume 1(2011)

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摘要
Most previous studies of morphological disambiguation and dependency parsing have been pursued independently. Morphological taggers operate on n-grams and do not take into account syntactic relations; parsers use the "pipeline" approach, assuming that morphological information has been separately obtained. However, in morphologically-rich languages, there is often considerable interaction between morphology and syntax, such that neither can be disambiguated without the other. In this paper, we propose a discriminative model that jointly infers morphological properties and syntactic structures. In evaluations on various highly-inflected languages, this joint model outperforms both a baseline tagger in morphological disambiguation, and a pipeline parser in head selection.
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关键词
morphological disambiguation,infers morphological property,morphological information,account syntactic relation,discriminative model,joint model,pipeline parser,syntactic structure,Morphological taggers,baseline tagger,dependency parsing,joint morphological disambiguation
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