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arxiv: 1607.03780 · v1 · pith:7F4HB4TU · submitted 2016-07-13 · cs.CL · cs.LG

A Vector Space for Distributional Semantics for Entailment

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classification cs.CL cs.LG
keywords entailmentdistributionalmodelsemanticssemanticvector-spaceapproximateapproximating
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Distributional semantics creates vector-space representations that capture many forms of semantic similarity, but their relation to semantic entailment has been less clear. We propose a vector-space model which provides a formal foundation for a distributional semantics of entailment. Using a mean-field approximation, we develop approximate inference procedures and entailment operators over vectors of probabilities of features being known (versus unknown). We use this framework to reinterpret an existing distributional-semantic model (Word2Vec) as approximating an entailment-based model of the distributions of words in contexts, thereby predicting lexical entailment relations. In both unsupervised and semi-supervised experiments on hyponymy detection, we get substantial improvements over previous results.

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