Syntax-based Attention Model for Natural Language Inference

22 Jul 2016PengFei LiuXipeng QiuXuanjing Huang

Introducing attentional mechanism in neural network is a powerful concept, and has achieved impressive results in many natural language processing tasks. However, most of the existing models impose attentional distribution on a flat topology, namely the entire input representation sequence... (read more)

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