Paraphrase-Supervised Models of Compositionality

31 Jan 2018Avneesh SalujaChris DyerJean-David Ruvini

Compositional vector space models of meaning promise new solutions to stubborn language understanding problems. This paper makes two contributions toward this end: (i) it uses automatically-extracted paraphrase examples as a source of supervision for training compositional models, replacing previous work which relied on manual annotations used for the same purpose, and (ii) develops a context-aware model for scoring phrasal compositionality... (read more)

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