TGNRec: Recommendation Based on Trust Networks and Graph Neural Networks

IF 0.9 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Ting Li, Chundong Wang, Huai-bin Wang
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引用次数: 0

Abstract

In recent years, user-user trust relationships have played an important role in recommendation based on graph neural networks(GNNs). However, existing studies based on GNNs still face the following challenges: how to obtain more rating information of users’ trust from trust networks when using GNNs to learn the user latent feature. And how to effectively mine items’ relationships from the recommended data so that GNNs can better learn the item latent feature. To address the above challenges, in this paper, we propose a new model called TGNRec that accomplishes recommendation based on trust networks and graph neural networks. TGNRec consists of three modules: User Spatial Module, Item Spatial Module, Prediction Module. User Spatial Module considers both the rating information of users’ direct and indirect trust based on the transfer properties of trust relationships in trust networks. It mainly learns the user latent feature using user-item interactions and user-user trust relationships. Item Spatial Module establishes items’ similarity relationships based on the rating mean, which helps GNNs learn the item latent feature from user-item interactions and item-item relationships. Prediction Module realizes users’ rating prediction for unrated items by aggregating User Spatial Module and Item Spatial Module. At last, we conduct experiments on two real-world datasets, Film Trust and Ciao-DVD. The experimental results demonstrate the effectiveness of TGNRec for rating prediction in recommendation.
TGNRec:基于信任网络和图神经网络的推荐
近年来,用户-用户信任关系在基于图神经网络(gnn)的推荐中发挥了重要作用。然而,基于gnn的现有研究仍然面临着以下挑战:在使用gnn学习用户潜在特征时,如何从信任网络中获取更多的用户信任评级信息。如何从推荐的数据中有效地挖掘项目之间的关系,使gnn能够更好地学习项目的潜在特征。为了解决上述挑战,本文提出了一种名为TGNRec的新模型,该模型基于信任网络和图神经网络来完成推荐。TGNRec由三个模块组成:用户空间模块、项目空间模块、预测模块。用户空间模块基于信任网络中信任关系的传递特性,考虑了用户直接信任和间接信任的评级信息。它主要利用用户-物品交互和用户-用户信任关系来学习用户潜在特征。物品空间模块基于评分均值建立物品相似关系,帮助gnn从用户-物品交互和物品-物品关系中学习物品潜在特征。预测模块通过聚合用户空间模块和物品空间模块实现用户对未评级物品的评级预测。最后,我们在Film Trust和Ciao-DVD两个真实数据集上进行了实验。实验结果证明了TGNRec算法在推荐评价预测中的有效性。
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
Scalable Computing-Practice and Experience
Scalable Computing-Practice and Experience COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.00
自引率
0.00%
发文量
10
期刊介绍: The area of scalable computing has matured and reached a point where new issues and trends require a professional forum. SCPE will provide this avenue by publishing original refereed papers that address the present as well as the future of parallel and distributed computing. The journal will focus on algorithm development, implementation and execution on real-world parallel architectures, and application of parallel and distributed computing to the solution of real-life problems.
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