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Augmenting Topic Aware Knowledge-Grounded Conversations with Dynamic Built Knowledge Graphs

机译:使用动态构建的知识图增强基于主题的知识对话

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Dialog topic management and background knowledge selection are essential factors for the success of knowledge-grounded open-domain conversations. However, existing models are primarily performed with symmetric knowledge bases or stylized with pre-defined roles between conversational partners, while people usually have their own knowledge before a real chit-chat. To address this problem, we propose a dynamic knowledge graph-based topical conversation model (DKGT). Given a dialog history context, our model first builds knowledge graphs from the context as an imitation of human's ability to form logical relationships between known and unknown topics during a conversation. This logical information will be fed into a topic predictor to promote topic management, then facilitate background knowledge selection and response generation. To the best of our knowledge, this is the first attempt to dynamically form knowledge graphs between chatting topics to assist dialog topic management during a conversation. Experimental results manifest that our model can properly schedule conversational topics and pick suitable knowledge to generate informative responses comparing to several strong baselines.
机译:对话主题管理和背景知识选择是基于知识的开放领域对话成功的关键因素。然而,现有的模型主要使用对称的知识库来执行,或者在对话伙伴之间使用预定义的角色进行样式化,而人们通常在真正的聊天之前就有自己的知识。为了解决这个问题,我们提出了一个基于动态知识图的话题对话模型(DKGT)。给定一个对话历史上下文,我们的模型首先从上下文中构建知识图,以模仿人类在对话期间在已知和未知主题之间形成逻辑关系的能力。这些逻辑信息将被输入主题预测器,以促进主题管理,然后促进背景知识选择和响应生成。据我们所知,这是第一次尝试在聊天主题之间动态形成知识图,以帮助会话期间的对话主题管理。实验结果表明,与几个强基线相比,我们的模型能够正确地安排会话主题,并选择合适的知识来生成信息性响应。

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