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Paraphrase to Explicate: Revealing Implicit Noun-Compound Relations (1805.02442v1)

Published 7 May 2018 in cs.CL

Abstract: Revealing the implicit semantic relation between the constituents of a noun-compound is important for many NLP applications. It has been addressed in the literature either as a classification task to a set of pre-defined relations or by producing free text paraphrases explicating the relations. Most existing paraphrasing methods lack the ability to generalize, and have a hard time interpreting infrequent or new noun-compounds. We propose a neural model that generalizes better by representing paraphrases in a continuous space, generalizing for both unseen noun-compounds and rare paraphrases. Our model helps improving performance on both the noun-compound paraphrasing and classification tasks.

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Authors (2)
  1. Vered Shwartz (49 papers)
  2. Ido Dagan (72 papers)
Citations (25)

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