Simplices-based higher-order enhancement graph neural network for multi-behavior recommendation

IF 7.4 1区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Qingbo Hao , Chundong Wang , Yingyuan Xiao , Hao Lin
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引用次数: 0

Abstract

Multi-behavior recommendations effectively integrate various types of behaviors and have been proven to enhance recommendation performance. However, existing researches primarily focus on distinguishing between various behaviors, neglecting the exploration of common representations within each behavior that might reflect individual preferences from different perspectives. Meanwhile, interactions within each behavior remain sparse; how to learn effective information from limited data poses a significant challenge. In this study, we propose a simplices-based higher-order enhancement graph neural network for multi-behavior recommendations, HEM-GNN. Specifically, we adopt a supervised method to distinguish the importance of different behaviors and perform inter-behavior representation learning. Meanwhile, for each behavior, we define implicit relationships to mitigate data sparsity, and then aggregate information from nodes within simplices to extract their higher-order commonalities. Finally, HEM-GNN leverages these representations to make recommendations. Through experiments on three public datasets (Taobao, Beibei, and IJCAI), HEM-GNN demonstrates better performance compared to 10 baseline algorithms. It outperforms state-of-the-art models by margins ranging from 8.99% to 10.58% in HR@K and 8.18% to 9.69% in NDCG@K, highlighting the significance of higher-order features in multi-behavior recommendations. The model and datasets are released at: https://github.com/SamuelZack/MultiRec.

用于多行为推荐的基于简约的高阶增强图神经网络
多行为推荐有效地整合了各种类型的行为,并被证明可以提高推荐性能。然而,现有的研究主要侧重于区分各种行为,而忽视了对每种行为中可能从不同角度反映个人偏好的共同表征的探索。同时,每种行为内部的交互仍然稀少;如何从有限的数据中学习有效的信息是一个巨大的挑战。在本研究中,我们提出了一种用于多行为推荐的基于简约的高阶增强图神经网络(HEM-GNN)。具体来说,我们采用了一种监督方法来区分不同行为的重要性,并进行行为间的表征学习。同时,对于每种行为,我们都定义了隐含关系以缓解数据稀疏性,然后汇总简约内节点的信息以提取其高阶共性。最后,HEM-GNN 利用这些表征提出建议。通过在三个公共数据集(淘宝、贝贝和 IJCAI)上的实验,HEM-GNN 与 10 种基线算法相比表现出了更好的性能。在 HR@K 和 NDCG@K 中,HEM-GNN 分别以 8.99% 至 10.58% 和 8.18% 至 9.69% 的优势优于最先进的模型,突出了高阶特征在多行为推荐中的重要性。模型和数据集发布于:https://github.com/SamuelZack/MultiRec。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Information Processing & Management
Information Processing & Management 工程技术-计算机:信息系统
CiteScore
17.00
自引率
11.60%
发文量
276
审稿时长
39 days
期刊介绍: Information Processing and Management is dedicated to publishing cutting-edge original research at the convergence of computing and information science. Our scope encompasses theory, methods, and applications across various domains, including advertising, business, health, information science, information technology marketing, and social computing. We aim to cater to the interests of both primary researchers and practitioners by offering an effective platform for the timely dissemination of advanced and topical issues in this interdisciplinary field. The journal places particular emphasis on original research articles, research survey articles, research method articles, and articles addressing critical applications of research. Join us in advancing knowledge and innovation at the intersection of computing and information science.
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