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Topic-relevant Response Generation using Optimal Transport for an Open-domain Dialog System

机译:主题相关响应生成使用最优传输对开放式对话框系统

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Conventional neural generative models tend to generate safe and generic responses which have little connection with previous utterances semantically and would disengage users in a dialog system. To generate relevant responses, we propose a method that employs two types of constraints - topical constraint and semantic constraint. Under the hypothesis that a response and its context have higher relevance when they share the same topics, the topical constraint encourages the topics of a response to match its context by conditioning response decoding on topic words' embeddings. The semantic constraint, which encourages a response to be semantically related to its context by regularizing the decoding objective function with semantic distance, is proposed. Optimal transport is applied to compute a weighted semantic distance between the representation of a response and the context. Generated responses are evaluated by automatic metrics, as well as human judgment, showing that the proposed method can generate more topic-relevant and content-rich responses than conventional models.
机译:传统的神经生成模型倾向于产生安全和通用的响应,这与先前的话语相结合,并且可以在对话系统中脱离用户。为了生成相关响应,我们提出了一种采用两种类型的约束 - 局部约束和语义约束的方法。在假设中,当响应及其上下文具有更高的相关性时,当他们共享相同的主题时,题目约束会鼓励通过对主题单词“嵌入的调节解码来匹配其上下文的响应的主题。提出了一种语义约束,其鼓励通过规则用语义距离进行解码目标函数来从语义上与上下文进行语义相关的响应。应用最佳传输来计算响应的表示与上下文之间的加权语义距离。通过自动度量和人为判断来评估生成的响应,表明所提出的方法可以产生比传统模型更具多主题相关和内容的响应。

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