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On the Evaluation of Semantic Phenomena in Neural Machine Translation Using Natural Language Inference

2018-04-25NAACL 2018Code Available1· sign in to hype

Adam Poliak, Yonatan Belinkov, James Glass, Benjamin Van Durme

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Abstract

We propose a process for investigating the extent to which sentence representations arising from neural machine translation (NMT) systems encode distinct semantic phenomena. We use these representations as features to train a natural language inference (NLI) classifier based on datasets recast from existing semantic annotations. In applying this process to a representative NMT system, we find its encoder appears most suited to supporting inferences at the syntax-semantics interface, as compared to anaphora resolution requiring world-knowledge. We conclude with a discussion on the merits and potential deficiencies of the existing process, and how it may be improved and extended as a broader framework for evaluating semantic coverage.

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