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Multilingual Machine Translation: Closing the Gap between Shared and Language-specific Encoder-Decoders

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arxiv 2004.06575 v1 pith:EU6UITHN submitted 2020-04-14 cs.CL

Multilingual Machine Translation: Closing the Gap between Shared and Language-specific Encoder-Decoders

classification cs.CL
keywords languagesencoder-decoderslanguage-specificmachinemultilingualtranslationapproachencoder-decoder
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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State-of-the-art multilingual machine translation relies on a universal encoder-decoder, which requires retraining the entire system to add new languages. In this paper, we propose an alternative approach that is based on language-specific encoder-decoders, and can thus be more easily extended to new languages by learning their corresponding modules. So as to encourage a common interlingua representation, we simultaneously train the N initial languages. Our experiments show that the proposed approach outperforms the universal encoder-decoder by 3.28 BLEU points on average, and when adding new languages, without the need to retrain the rest of the modules. All in all, our work closes the gap between shared and language-specific encoder-decoders, advancing toward modular multilingual machine translation systems that can be flexibly extended in lifelong learning settings.

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