Incorporating Source-Side Phrase Structures into Neural Machine Translation
Computational Linguistics(2019)
摘要
Neural Machine Translation (NMT) has shown great successes as a new alternative to traditional Statistical Machine Translation (SMT) model in multiple languages. Early NMT models are based on sequence-to-sequence learning that encodes a sequence of source words into a vector space and generates another sequence of target words from the vector. In those NMT models, sentences are simply treated as sequences of words without any internal structure. In this article, we focus on the role of the syntactic structure of source sentences and propose a novel end-to-end syntactic NMT model, which we call a tree-to-sequence NMT model, extending a sequence-to-sequence model with the source-side phrase structure. Our proposed model has an attention mechanism that enables the decoder to generate a translated word while softly aligning it with phrases as well as words of the source sentence. We have empirically compared the proposed model with sequence-to-sequence models in various settings on Chinese-to-Japanese and Eng...
更多查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络