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Language Model Prior for Low-Resource Neural Machine Translation

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arxiv 2004.14928 v3 pith:B4Z3BNNU submitted 2020-04-30 cs.CL

Language Model Prior for Low-Resource Neural Machine Translation

classification cs.CL
keywords translationlanguagemachineneuralpriorapproachdatadistributions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The scarcity of large parallel corpora is an important obstacle for neural machine translation. A common solution is to exploit the knowledge of language models (LM) trained on abundant monolingual data. In this work, we propose a novel approach to incorporate a LM as prior in a neural translation model (TM). Specifically, we add a regularization term, which pushes the output distributions of the TM to be probable under the LM prior, while avoiding wrong predictions when the TM "disagrees" with the LM. This objective relates to knowledge distillation, where the LM can be viewed as teaching the TM about the target language. The proposed approach does not compromise decoding speed, because the LM is used only at training time, unlike previous work that requires it during inference. We present an analysis of the effects that different methods have on the distributions of the TM. Results on two low-resource machine translation datasets show clear improvements even with limited monolingual data.

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