articleJan 1, 2002GOLD OA

Discriminative training methods for hidden Markov models

AT&T (United States)

Indexed incrossref

Abstract

We describe new algorithms for training tagging models, as an alternative to maximum-entropy models or conditional random fields (CRFs). The algorithms rely on Viterbi decoding of training examples, combined with simple additive updates. We describe theory justifying the algorithms through a modification of the proof of convergence of the perceptron algorithm for classification problems. We give experimental results on part-of-speech tagging and base noun phrase chunking, in both cases showing improvements over results for a maximum-entropy tagger.

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1,894
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FWCI
45.62
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Authors

1

Topics & keywords

Keywords
  • Maximum-entropy Markov model
  • Computer science
  • Discriminative model
  • Hidden Markov model
  • Conditional random field
  • Artificial intelligence
  • CRFS
  • Principle of maximum entropy
UN Sustainable Development Goals
  • Reduced inequalities
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