DCL: Diversified Graph Recommendation With Contrastive Learning

IF 4.5 2区 计算机科学 Q1 COMPUTER SCIENCE, CYBERNETICS IEEE Transactions on Computational Social Systems Pub Date : 2024-02-07 DOI:10.1109/TCSS.2024.3355780
Daohan Su;Bowen Fan;Zhi Zhang;Haoyan Fu;Zhida Qin
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Abstract

Diversified recommendation systems have gained increasing popularity in recent years. Nowadays, the emerged graph neural networks (GNNs) have been used to improve the diversity performance. Although some progresses have been made, existing works purely focus on the user–item interactions and overlook the category information, which limits the capability to capture complex diversification among users or items and leads to poor performance. In this article, our target is to integrate full category information into user and item embeddings. To this end, we propose a diversified GNN-based recommendation systems diversified graph recommendation with contrastive learning (DCL). Specifically, we design three key components in our model: 1) the user–item interaction with category-related sampling enhances the interaction of unpopular items; 2) contrastive learning between users and categories shortens the distance of representations between users and their uninteracted categories; and 3) contrastive learning between items and categories diverges the distance of representations between items and their corresponding categories. By applying these three modules, we build a multitask training framework to achieve a balance between accuracy and diversity. Experiments on real-world datasets show that our proposed DCL achieves optimal diversity while paying a little price for accuracy.
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DCL:利用对比学习的多样化图表推荐
近年来,多元化推荐系统越来越受欢迎。如今,新兴的图神经网络(GNN)已被用于提高多样性性能。虽然已经取得了一些进展,但现有的研究仅仅关注用户与物品之间的交互,而忽略了类别信息,这限制了捕捉用户或物品之间复杂多样化的能力,导致性能不佳。在本文中,我们的目标是将完整的类别信息整合到用户和项目嵌入中。为此,我们提出了一种基于 GNN 的多样化推荐系统--具有对比学习功能的多样化图推荐(DCL)。具体来说,我们在模型中设计了三个关键组件:1)与类别相关采样的用户-物品交互增强了不受欢迎物品的交互;2)用户与类别之间的对比学习缩短了用户与其未交互类别之间的表征距离;3)物品与类别之间的对比学习发散了物品与其相应类别之间的表征距离。通过应用这三个模块,我们建立了一个多任务训练框架,以实现准确性和多样性之间的平衡。在真实世界数据集上的实验表明,我们提出的 DCL 在实现最佳多样性的同时,也为准确性付出了一点代价。
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来源期刊
IEEE Transactions on Computational Social Systems
IEEE Transactions on Computational Social Systems Social Sciences-Social Sciences (miscellaneous)
CiteScore
10.00
自引率
20.00%
发文量
316
期刊介绍: IEEE Transactions on Computational Social Systems focuses on such topics as modeling, simulation, analysis and understanding of social systems from the quantitative and/or computational perspective. "Systems" include man-man, man-machine and machine-machine organizations and adversarial situations as well as social media structures and their dynamics. More specifically, the proposed transactions publishes articles on modeling the dynamics of social systems, methodologies for incorporating and representing socio-cultural and behavioral aspects in computational modeling, analysis of social system behavior and structure, and paradigms for social systems modeling and simulation. The journal also features articles on social network dynamics, social intelligence and cognition, social systems design and architectures, socio-cultural modeling and representation, and computational behavior modeling, and their applications.
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