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Paraphrase thought: Sentence embedding module imitating human language recognition

机译:释义思想:句子嵌入模块模仿人类语言识别

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摘要

Sentence embedding is an important research topic in natural language processing. It is essential to generate a good embedding vector that fully reflects the semantic meaning of a sentence in order to achieve an enhanced performance for various natural language processing tasks, such as machine translation and document classification. Thus far, various sentence embedding models have been proposed, and their feasibility has been demonstrated through good performances on tasks following embedding, such as sentiment analysis and sentence classification. However, because the performances of sentence classification and sentiment analysis can be enhanced by using a simple sentence representation method, it is not sufficient to claim that these models fully reflect the meanings of sentences based on good performances for such tasks. In this paper, inspired by human language recognition, we propose the following concept of semantic coherence, which should be satisfied for a good sentence embedding method: similar sentences should be located close to each other in the embedding space. Then, we propose the Paraphrase-Thought (P-thought) model to pursue semantic coherence as much as possible. Experimental results on three paraphrase identification datasets (MS COCO, STS benchmark, SICK) show that the P-thought models outperform the benchmarked sentence embedding methods. (C) 2020 Elsevier Inc. All rights reserved.
机译:句子嵌入是自然语言处理中的重要研究主题。必须生成一个良好的嵌入载体,它充分反映了一个句子的语义含义,以便为各种自然语言处理任务实现增强的性能,例如机器转换和文档分类。到目前为止,已经提出了各种句子嵌入模型,并通过嵌入后的任务的良好性能来证明它们的可行性,例如情感分析和句子分类。然而,由于可以通过使用简单的句子表示方法来增强句子分类和情感分析的性能,所以不足以要求这些模型完全反映了基于这种任务的良好性能的句子的含义。在本文中,受人类语言认可的启发,我们提出了以下的语义一致性概念,这应该对一个好句子嵌入方法感到满意:类似的句子应该在嵌入空间中彼此靠近。然后,我们提出了令人思想(p思想)模型尽可能地追求语义连贯性。实验结果在三个释义识别数据集(Coco Ms,STS基准,病态)表明,P思想模型优于基准句子嵌入方法。 (c)2020 Elsevier Inc.保留所有权利。

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