NICT Self-Training Approach to Neural Machine Translation at NMT-2018

WS 2018  ·  Kenji Imamura, Eiichiro Sumita ·

This paper describes the NICT neural machine translation system submitted at the NMT-2018 shared task. A characteristic of our approach is the introduction of self-training. Since our self-training does not change the model structure, it does not influence the efficiency of translation, such as the translation speed. The experimental results showed that the translation quality improved not only in the sequence-to-sequence (seq-to-seq) models but also in the transformer models.

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