Multi-grained hypergraph interest modeling for conversational recommendation

Chenzhan Shang , Yupeng Hou , Wayne Xin Zhao , Yaliang Li , Jing Zhang
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Abstract

Conversational recommender system (CRS) interacts with users through multi-turn dialogues in natural language, which aims to provide high-quality recommendations for user’s instant information need. Although great efforts have been made to develop effective CRS, most of them still focus on the contextual information from the current dialogue, usually suffering from the data scarcity issue. Therefore, we consider leveraging historical dialogue data to enrich the limited contexts of the current dialogue session.

In this paper, we propose a novel multi-grained hypergraph interest modeling approach to capture user interest beneath intricate historical data from different perspectives. As the core idea, we employ hypergraph to represent complicated semantic relations underlying historical dialogues. In our approach, we first employ the hypergraph structure to model users’ historical dialogue sessions and form a session-based hypergraph, which captures coarse-grained, session-level relations. Second, to alleviate the issue of data scarcity, we use an external knowledge graph and construct a knowledge-based hypergraph considering fine-grained, entity-level semantics. We further conduct multi-grained hypergraph convolution on the two kinds of hypergraphs, and utilize the enhanced representations to develop interest-aware CRS. Extensive experiments on two benchmarks ReDial and TG-ReDial validate the effectiveness of our approach on both recommendation and conversation tasks. Code is available at: https://github.com/RUCAIBox/MHIM.

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用于会话推荐的多粒度超图兴趣建模
会话推荐系统(CRS)通过自然语言的多回合对话与用户进行交互,旨在为用户提供即时信息需求的高质量推荐。尽管已经为开发有效的CRS做出了巨大努力,但大多数CRS仍然侧重于当前对话的上下文信息,通常存在数据稀缺问题。因此,我们考虑利用历史对话数据来丰富当前对话的有限背景。在本文中,我们提出了一种新的多粒度超图兴趣建模方法,从不同的角度捕捉复杂历史数据下的用户兴趣。我们的核心思想是利用超图来表示历史对话背后复杂的语义关系。在我们的方法中,我们首先使用超图结构对用户的历史对话会话进行建模,并形成基于会话的超图,该超图捕获粗粒度的会话级关系。其次,为了缓解数据稀缺性问题,我们使用外部知识图,并考虑细粒度的实体级语义,构建基于知识的超图。我们进一步对这两种超图进行了多粒度的超图卷积,并利用增强的表示来开发兴趣感知的CRS。在两个基准测试ReDial和TG-ReDial上进行的大量实验验证了我们的方法在推荐和对话任务上的有效性。代码可从https://github.com/RUCAIBox/MHIM获得。
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