Tencent Neural Machine Translation Systems for WMT18

WS 2018  ·  Mingxuan Wang, Li Gong, Wenhuan Zhu, Jun Xie, Chao Bian ·

We participated in the WMT 2018 shared news translation task on English↔Chinese language pair. Our systems are based on attentional sequence-to-sequence models with some form of recursion and self-attention. Some data augmentation methods are also introduced to improve the translation performance. The best translation result is obtained with ensemble and reranking techniques. Our Chinese→English system achieved the highest cased BLEU score among all 16 submitted systems, and our English→Chinese system ranked the third out of 18 submitted systems.

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