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Siamese Network cooperating with Multi-head Attention for semantic sentence matching

机译:暹罗网络与多针关注的语义句子匹配合作

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To compare a pair of sentences is a fundamental technology in many NLP tasks. According to the difference between the pair of sentence, we divide semantic sentence matching into two situations: Situation A is that the pair of sentences are worded with a context relationship, Situation B is that two are equal in semantics. Models for Situation A works in Situation B too, so prior deep work mostly model each sentence's representation considering the interaction of the other sentence simultaneously. However, models designed for Situation A bring redundant information for Situation B. In this paper, for sentence pairs with equivalence, we present a deep architecture with comparison-interaction separated to match two sentences, which based on Siamese network for comparison and multi-head attention for interaction information between sentence pairs. Experimental results on the latest Chinese sentence matching datasets outline the effectiveness of our approach.
机译:为了比较一对句子是许多NLP任务中的基本技术。根据这对句子之间的差异,我们将语义句子匹配分为两个情况:情况A是一对句子用上下文关系措辞,情况B是两个是语义中的两个等于语义。情况的模型是情况B中的作品,所以先前的深度工作主要是模拟每个句子的代表,考虑同时对方的互动。但是,为情况设计的模型是为情况B带来冗余信息。在本文中,对于具有等价的句子对,我们呈现了一个与比较交互的深度架构,以匹配两个句子,基于暹罗网络进行比较和多头句子对之间的互动信息的关注。最新句子匹配数据集的实验结果概述了我们方法的有效性。

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