KC2UM: Knowledge-Conversation Cyclic Utilization Mechanism for Knowledge-Grounded Dialogue Generation

Yajing Sun, Yue Hu, Luxi Xing, Wei Peng, Yuqiang Xie, Xingsheng Zhang
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Abstract

End-to-End open-domain dialogue systems suffer from the issues of generating inconsistent and repetitive responses. Existing dialogue models pay attention to unilaterally incorporating personalized knowledge into the dialogue to enhance the quality of generated response. However, they ignore that incorporating the personality-related information from dialogue history into personalized knowledge can boost the subsequent dialogue quality. In this paper, A Knowledge-Conversation Cyclic Utilization Mechanism (KC2UM) is proposed to enhance the dialogue quality. Specifically, A novel cyclic interaction module is designed to iteratively incorporate personalized knowledge into each turn conversation and capture the personality-related conversation information to enhance personalized knowledge semantic representation. We represent the knowledge with semantic and utilization representations to keep track of the personalized knowledge utilization. Experiments on two knowledge-grounded dialogue datasets show that our approach manages to select knowledge more accurately and generates more informative responses.
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KC2UM:基于知识的对话生成的知识会话循环利用机制
端到端开放域对话系统存在产生不一致和重复响应的问题。现有的对话模型注重单方面地将个性化的知识融入到对话中,以提高生成响应的质量。然而,他们忽略了将对话历史中的个性相关信息纳入个性化知识中可以提高后续对话的质量。本文提出了一种知识会话循环利用机制(KC2UM)来提高对话质量。具体而言,设计了一种新的循环交互模块,将个性化知识迭代地融入到每一轮会话中,并捕获与个性相关的会话信息,增强个性化知识的语义表示。我们用语义表示和利用表示来表示知识,以跟踪个性化的知识利用情况。在两个基于知识的对话数据集上的实验表明,我们的方法能够更准确地选择知识并产生更丰富的信息响应。
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