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TripleNet: Triple Attention Network for Multi-Turn Response Selection in Retrieval-based Chatbots

机译:TripleNet:用于基于检索的聊天机器人中多回合响应选择的三重注意网络

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We consider the importance of different utterances in the context for selecting the response usually depends on the current query.~1 In this paper, we propose the model TripleNet to fully model the task with the triple (context, query, response) instead of (context, response) in previous works. The heart of TripeNet is a novel attention mechanism named triple attention to model the relationships within the triple at four levels. The new mechanism updates the representation for each element based on the attention with the other two concurrently and symmetrically. We match the triple (C, Q, R) centered on the response from char to context level for prediction. Experimental results on two large-scale multi-turn response selection datasets show that the proposed model can significantly outperform the state-of-the-art methods.~2
机译:我们认为在上下文中选择不同话语的重要性通常取决于当前查询。〜1在本文中,我们提出了模型TripleNet以使用三元组(上下文,查询,响应)而不是(上下文,响应)。 TripeNet的核心是一种名为三重注意力的新颖注意力机制,可以在四个级别上模拟三重成员之间的关系。新机制基于注意力同时更新了每个元素的表示形式,并同时对称地更新了其他两个元素。我们以字符到上下文级别的响应为中心匹配三元组(C,Q,R),以进行预测。在两个大规模多匝响应选择数据集上的实验结果表明,所提出的模型可以明显优于最新方法。〜2

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