2021
DOI: 10.48550/arxiv.2110.00712
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Improving Zero-shot Multilingual Neural Machine Translation for Low-Resource Languages

Chenyang Li,
Gongxu Luo

Abstract: Although the multilingual Neural Machine Translation(NMT), which extends Google's multilingual NMT, has ability to perform zero-shot translation and the iterative self-learning algorithm can improve the quality of zero-shot translation, it confronts with two problems: the multilingual NMT model is prone to generate wrong target language when implementing zero-shot translation; the self-learning algorithm, which uses beam search to generate synthetic parallel data, demolishes the diversity of the generated sour… Show more

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