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

Zhao Yuan, Sun-Ah Jun
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引用次数: 4

Abstract

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.
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连体网络与多头注意协同进行语义句匹配
比较一对句子是许多NLP任务中的一项基本技术。根据这对句子之间的差异,我们将语义句子匹配分为两种情况:情况A是这对句子的措辞有上下文关系,情况B是两个句子在语义上相等。情境A的模型也适用于情境B,所以之前的深度工作主要是在考虑另一个句子同时相互作用的情况下对每个句子的表示进行建模。然而,为情景A设计的模型给情景b带来了冗余信息。本文针对具有等价性的句子对,提出了一种基于Siamese网络的比较-交互分离匹配两句的深层架构,该架构基于句子对间交互信息的多头关注进行比较。在最新的汉语句子匹配数据集上的实验结果表明了该方法的有效性。
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