ACL2021
Synchronous Syntactic Attention for Transformer Neural Machine Translation
Hiroyuki Deguchi, Akihiro Tamura, Takashi Ninomiya
摘要
This paper proposes a novel attention mechanism for Transformer Neural Machine Translation, "Synchronous Syntactic Attention," inspired by synchronous dependency grammars. The mechanism synchronizes source-side and target-side syntactic self-attentions by minimizing the difference between target-side selfattentions and the source-side self-attentions mapped by the encoder-decoder attention matrix. The experiments show that the proposed method improves the translation performance on WMT14 En-De, WMT16 En-Ro, and AS-PEC Ja-En (up to +0.38 points in BLEU).