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Confidence-Weighted Learning of Factored Discriminative Language Models
2011
Annual Meeting of the Association for Computational Linguistics
Language models based on word surface forms only are unable to benefit from available linguistic knowledge, and tend to suffer from poor estimates for rare features. We propose an approach to overcome these two limitations. We use factored features that can flexibly capture linguistic regularities, and we adopt confidence-weighted learning, a form of discriminative online learning that can better take advantage of a heavy tail of rare features. Finally, we extend the confidence-weighted
dblp:conf/acl/Ha-ThucC11
fatcat:scry4uerife7xkt4coq3gvnmxu