articleJan 1, 2003GOLD OA

Shallow parsing with conditional random fields

University of Pennsylvania

Indexed incrossref

Abstract

Conditional random fields for sequence labeling offer advantages over both generative models like HMMs and classifiers applied at each sequence position. Among sequence labeling tasks in language processing, shallow parsing has received much attention, with the development of standard evaluation datasets and extensive comparison among methods. We show here how to train a conditional random field to achieve performance as good as any reported base noun-phrase chunking method on the CoNLL task, and better than any reported single model. Improved training methods based on modern optimization algorithms were critical in achieving these results. We present extensive comparisons between models and training methods…

Citation impact

1,251
total citations
FWCI
93.72
Percentile
100%
References
43
Citations per year

Authors

2

Topics & keywords

Keywords
  • Conditional random field
  • Computer science
  • Chunking (psychology)
  • Parsing
  • Sequence labeling
  • Artificial intelligence
  • CRFS
  • Generative grammar
UN Sustainable Development Goals
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