Learning Neighbor User Intention on User-Item Interaction Graphs for Better Sequential Recommendation

IF 2.6 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on the Web Pub Date : 2023-02-01 DOI:https://dl.acm.org/doi/10.1145/3580520
Mei Yu, Kun Zhu, Mankun Zhao, Jian Yu, Tianyi Xu, Di Jin, Xuewei Li, Ruiguo Yu
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Abstract

The task of Sequential Recommendation aims to predict the user’s preference by analyzing the user’s historical behaviours. Existing methods model item transitions through leveraging sequential patterns. However, they mainly consider the target user’s own behaviours and dynamic characteristics, while often ignore the high-order collaborative connections when modelling user preferences. Some recent works try to use graph-based methods to introduce high-order collaborative signals for Sequential Recommendation, but they have two main problems. One is that the sequential patterns cannot be effectively mined, and the other is that their way of introducing high-order collaborative signals is not very suitable for Sequential Recommendation. To address these problems, we propose to fully exploit sequence features and model high-order collaborative signals for Sequential Recommendation. We propose a Neighbor user Intention based Sequential Recommender, namely NISRec, which utilizes the intentions of high-order connected neighbor users as high-order collaborative signals, in order to improve recommendation performance for the target user. To be specific, NISRec contains two main modules: the neighbor user intention embedding module (NIE) and the fusion module. The NIE describes both the long-term and the short-term intentions of neighbor users and aggregates them separately. The fusion module uses these two types of aggregated intentions to model high-order collaborative signals in both the embedding process and the user preference modelling phase for recommendation of the target user. Experimental results show that our new approach outperforms the state-of-the-art methods on both sparse and dense datasets. Extensive studies further show the effectiveness of the diverse neighbor intentions introduced by NISRec.

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在用户-项目交互图上学习邻居用户意图,以获得更好的顺序推荐
顺序推荐的任务是通过分析用户的历史行为来预测用户的偏好。现有方法通过利用顺序模式对项目转换进行建模。然而,他们在建模用户偏好时主要考虑目标用户自身的行为和动态特征,而往往忽略了高阶协作连接。最近的一些研究尝试使用基于图的方法为顺序推荐引入高阶协作信号,但它们存在两个主要问题。一是序列模式不能有效挖掘,二是它们引入高阶协同信号的方式不太适合序列推荐。为了解决这些问题,我们提出充分利用序列特征,对序列推荐的高阶协同信号进行建模。为了提高目标用户的推荐性能,我们提出了一种基于邻居用户意向的顺序推荐器,即NISRec,它利用高阶连接邻居用户的意向作为高阶协同信号。NISRec包含两个主要模块:邻居用户意图嵌入模块(NIE)和融合模块(fusion module)。NIE同时描述邻居用户的长期意图和短期意图,并分别进行聚合。融合模块使用这两种类型的聚合意图在嵌入过程和用户偏好建模阶段对高阶协作信号进行建模,以推荐目标用户。实验结果表明,我们的新方法在稀疏和密集数据集上都优于最先进的方法。大量的研究进一步证明了NISRec引入的多样化邻居意图的有效性。
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来源期刊
ACM Transactions on the Web
ACM Transactions on the Web 工程技术-计算机:软件工程
CiteScore
4.90
自引率
0.00%
发文量
26
审稿时长
7.5 months
期刊介绍: Transactions on the Web (TWEB) is a journal publishing refereed articles reporting the results of research on Web content, applications, use, and related enabling technologies. Topics in the scope of TWEB include but are not limited to the following: Browsers and Web Interfaces; Electronic Commerce; Electronic Publishing; Hypertext and Hypermedia; Semantic Web; Web Engineering; Web Services; and Service-Oriented Computing XML. In addition, papers addressing the intersection of the following broader technologies with the Web are also in scope: Accessibility; Business Services Education; Knowledge Management and Representation; Mobility and pervasive computing; Performance and scalability; Recommender systems; Searching, Indexing, Classification, Retrieval and Querying, Data Mining and Analysis; Security and Privacy; and User Interfaces. Papers discussing specific Web technologies, applications, content generation and management and use are within scope. Also, papers describing novel applications of the web as well as papers on the underlying technologies are welcome.
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