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Enhanced Text Matching Based on Semantic Transformation

机译:基于语义转换的增强文本匹配

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摘要

Text matching is the core of natural language processing (NLP) system. It's considered as a touchstone of the NLP, and it aims to find whether text pairs are equal in semantics. However, the semantic gap in text matching is still an open problem to solve. Inspired by successes of cycle-consistent adversarial network (CycleGAN) in image domain transformation, we propose an enhanced text matching method based on the CycleGAN combined with the Transformer network. Based on the proposed method, the text semantics in a source domain is transferred to a similar or different target domain, and the semantic distance between text pairs is decreased. Meanwhile, we demonstrate our method in paraphrase identification and question answer matching. The matching degree is computed by a standard text matching model to evaluate the transforming influence on narrowing the text semantic gap. The experiments show that our method achieves text domain adaptation, and the effects on different matching models are remarkable.
机译:文本匹配是自然语言处理(NLP)系统的核心。它被认为是NLP的一款Thegstone,它旨在找到文本对在语义中是否相等。然而,文本匹配中的语义差距仍然是解决问题的开放问题。灵感来自图像域转换中的周期一致的对冲网络(Cyclegan)的成功,我们提出了一种基于Cycleangan与变压器网络相结合的增强的文本匹配方法。基于所提出的方法,源域中的文本语义被传送到类似或不同的目标域,文本对之间的语义距离减小。同时,我们展示了我们在释放识别和问题答案匹配中的方法。匹配度由标准文本匹配模型计算,以评估对缩小文本语义间隙的转换影响。实验表明,我们的方法达到了文本域的适应,并且对不同匹配模型的影响是显着的。

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