Multi-Source Neural Translation

NAACL 2016  ·  Barret Zoph, Kevin Knight ·

We build a multi-source machine translation model and train it to maximize the probability of a target English string given French and German sources. Using the neural encoder-decoder framework, we explore several combination methods and report up to +4.8 Bleu increases on top of a very strong attention-based neural translation model.

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