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Towards Bidirectional Hierarchical Representations for Attention-Based Neural Machine Translation

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arxiv 1707.05114 v1 pith:EXPJDTJA submitted 2017-07-17 cs.CL

Towards Bidirectional Hierarchical Representations for Attention-Based Neural Machine Translation

classification cs.CL
keywords translationhierarchicalmodelneuraltree-basedattention-basedbidirectionalinformation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper proposes a hierarchical attentional neural translation model which focuses on enhancing source-side hierarchical representations by covering both local and global semantic information using a bidirectional tree-based encoder. To maximize the predictive likelihood of target words, a weighted variant of an attention mechanism is used to balance the attentive information between lexical and phrase vectors. Using a tree-based rare word encoding, the proposed model is extended to sub-word level to alleviate the out-of-vocabulary (OOV) problem. Empirical results reveal that the proposed model significantly outperforms sequence-to-sequence attention-based and tree-based neural translation models in English-Chinese translation tasks.

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