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Leveraging Monolingual Data with Self-Supervision for Multilingual Neural Machine Translation

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arxiv 2005.04816 v1 pith:7BNRJ2WS submitted 2020-05-11 cs.CL cs.LG

Leveraging Monolingual Data with Self-Supervision for Multilingual Neural Machine Translation

classification cs.CL cs.LG
keywords datamultilingualtranslationmonolingualself-supervisionlanguagesmodelslow-resource
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Over the last few years two promising research directions in low-resource neural machine translation (NMT) have emerged. The first focuses on utilizing high-resource languages to improve the quality of low-resource languages via multilingual NMT. The second direction employs monolingual data with self-supervision to pre-train translation models, followed by fine-tuning on small amounts of supervised data. In this work, we join these two lines of research and demonstrate the efficacy of monolingual data with self-supervision in multilingual NMT. We offer three major results: (i) Using monolingual data significantly boosts the translation quality of low-resource languages in multilingual models. (ii) Self-supervision improves zero-shot translation quality in multilingual models. (iii) Leveraging monolingual data with self-supervision provides a viable path towards adding new languages to multilingual models, getting up to 33 BLEU on ro-en translation without any parallel data or back-translation.

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