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

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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.

Aditya Siddhant, Ankur Bapna, Yuan Cao, Orhan Firat, Mia Chen, Sneha Kudugunta, Naveen Arivazhagan, Yonghui Wu• 2020

Related benchmarks

TaskDatasetResultRank
Multimodal Machine TranslationEMMT
BLEU Score42.71
18
Multimodal Machine TranslationEMMT (test)
BLEURT0.5662
18
Multi-modal Machine TranslationMulti30k WMT17 (test)
BLEU40.46
16
Multimodal Machine TranslationMulti30K 2016 (test)
BLEU44.13
11
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