Training Neural Machine Translation using Word Embedding-based Loss

30 Jul 2018Katsuki ChousaKatsuhito SudohSatoshi Nakamura

In neural machine translation (NMT), the computational cost at the output layer increases with the size of the target-side vocabulary. Using a limited-size vocabulary instead may cause a significant decrease in translation quality... (read more)

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