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Research on Sentence Similarity Calculation Based on Attention Mechanism and Sememe Information

机译:基于注意机制和语素信息的句子相似度计算研究

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Focusing on the research of sentence similarity calculation, this paper proposes a method combining bidirectional long short-term memory networks, attention mechanism and sememe (BILSTM-ATTENTION-SEMEME) to achieve better results on semantic representation and in-depth understanding of the semantic level, consequently better resolve the problem in the aspect of semantics in the field of intelligent customer service. This method first solves the semantic representation problem through a model based on bidirectional long short-term memory networks and attention mechanism (Bilstm-Attention), then combines the sememe information of HowNet in the training of word vectors to improve the performance of semantic under-standing. Experimental results show that the proposed method is effective in the computation of sentence similarity in the field of intelligent customer service, and it can well combine the sememe knowledge of HowNet with the deep learning model based on attention mechanism. Compared with the baseline system, the accuracy rate increased by 6.5%.
机译:针对句子相似度计算的研究,提出了一种结合双向长短时记忆网络,注意力机制和语义的方法(BILSTM-ATTENTION-SEMEME),以取得更好的语义表示结果和对语义水平的深入理解。因此,可以更好地解决智能客户服务领域中语义方面的问题。该方法首先通过基于双向长短期记忆网络和注意力机制(Bilstm-Attention)的模型解决语义表示问题,然后将HowNet的音素信息结合到单词向量的训练中以提高语义欠缺的性能。常设。实验结果表明,该方法在智能客户服务领域中句子相似度的计算中是有效的,并且可以很好地将知网的语义知识与基于注意力机制的深度学习模型相结合。与基准系统相比,准确率提高了6.5%。

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