articleAug 1, 2013Closed access

Parsing with Compositional Vector Grammars

Stanford University

Abstract

Natural language parsing has typically been done with small sets of discrete categories such as NP and VP, but this representation does not capture the full syntactic nor semantic richness of linguistic phrases, and attempts to improve on this by lexicalizing phrases or splitting categories only partly address the problem at the cost of huge feature spaces and sparseness. Instead, we introduce a Compositional Vector Grammar (CVG), which combines PCFGs with a syntactically untied recursive neural network that learns syntactico-semantic, compositional vector representations. The CVG improves the PCFG of the Stanford Parser by 3.8 % to obtain an F1 score of 90.4%. It is fast to train and implemented approximately…

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Authors

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Topics & keywords

Keywords
  • Computer science
  • Parsing
  • Natural language processing
  • Artificial intelligence
  • Rule-based machine translation
  • Feature (linguistics)
  • Representation (politics)
  • Grammar
UN Sustainable Development Goals
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