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HKA: A Hierarchical Knowledge Attention Mechanism for Multi-Turn Dialogue System

机译:香港会议:多转对话系统的分层知识关注机制

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Generating informative responses by incorporating external knowledge into dialogue system attracts more and more attention. Most previous works facilitate single-turn dialogue system on generating such responses. However, few works focus on incorporating knowledge for multi-turn system, since the hierarchy of knowledge, from the words and utterances in context, is ignored. Motivated by this, we propose a novel hierarchical knowledge attention (HKA) mechanism for open-domain multi-turn dialogue system in this paper, which utilizes both word and utterance level attention jointly. Experiments demonstrate that the proposed HKA can incorporate more appropriate knowledge and make the state-of-the-art models generate more informative responses. Further analysis shows that our HKA can improve the model's ability of dialogue state management, especially when the number of dialogue turns is large.
机译:通过将外部知识纳入对话系统来产生信息响应,吸引了越来越多的关注。 最先前的作品有助于单匝对话系统生成此类响应。 然而,很少有人作品侧重于纳入多转系统的知识,因为知识的层次,从上下文中的单词和话语中被忽略。 由此激励,在本文中提出了一种新的等级知识关注(HKA)用于开放式多转对对话系统的机制,这利用单词和话语级别关注。 实验表明,建议的香港的香港会议可以纳入更合适的知识,并使最先进的模型产生更具信息性的反应。 进一步的分析表明,我们的香港会议可以提高模型的对话国家管理能力,特别是当对话匝数较大时。

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