articleJul 8, 2012Closed access

Improving Word Representations via Global Context and Multiple Word Prototypes

Stanford University

Abstract

Unsupervised word representations are very useful in NLP tasks both as inputs to learning algorithms and as extra word features in NLP systems. However, most of these models are built with only local context and one representation per word. This is problematic because words are often polysemous and global context can also provide useful information for learning word meanings. We present a new neural network architecture which 1) learns word embeddings that better capture the semantics of words by incorporating both local and global document context, and 2) accounts for homonymy and polysemy by learning multiple embeddings per word. We introduce a new dataset with human judgments on pairs of words in sentential…

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Authors

4

Topics & keywords

Keywords
  • Polysemy
  • Computer science
  • Word (group theory)
  • Natural language processing
  • Artificial intelligence
  • Context (archaeology)
  • Semantics (computer science)
  • Context model
UN Sustainable Development Goals
  • Quality Education
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