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Modeling Latent Sentence Structure in Neural Machine Translation

18 January 2019
Jasmijn Bastings
Wilker Aziz
Ivan Titov
K. Simaán
ArXiv (abs)PDFHTML
Abstract

Recently it was shown that linguistic structure predicted by a supervised parser can be beneficial for neural machine translation (NMT). In this work we investigate a more challenging setup: we incorporate sentence structure as a latent variable in a standard NMT encoder-decoder and induce it in such a way as to benefit the translation task. We consider German-English and Japanese-English translation benchmarks and observe that when using RNN encoders the model makes no or very limited use of the structure induction apparatus. In contrast, CNN and word-embedding-based encoders rely on latent graphs and force them to encode useful, potentially long-distance, dependencies.

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