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内蒙古自治区呼和浩特市赛罕区大学西街235号 邮编: 010021
作者机构:Northwestern Polytech Univ Sch Comp Sci Xian 710072 Shaanxi Peoples R China Peking Univ Sch Comp Sci Beijing 100871 Peoples R China
出 版 物:《EXPERT SYSTEMS WITH APPLICATIONS》 (Expert Sys Appl)
年 卷 期:2024年第247卷
核心收录:
学科分类:1201[管理学-管理科学与工程(可授管理学、工学学位)] 0808[工学-电气工程] 08[工学] 0812[工学-计算机科学与技术(可授工学、理学学位)]
基 金:National Science Fund for Distinguished Young Scholars National Natural Science Foundation of China [62032020, 61960206008, 61725205, 62002292]
主 题:Social recommendation Recommendation for new users Variational Graph Autoencoder Composite prior Disentangled feature
摘 要:Social recommendation has been an effective approach to solve the new user recommendation problem based on user -item interactions and user -user social relations. Although lots of research has been done, it is still an emergent and challenging issue to predict the behaviors of new users without any historical interaction. Firstly, the previous methods fail to consider social structures and social semantics when looking for potential social neighbors for new users, resulting in inconsistent preferences of these neighbors. Secondly, existing methods employ deterministic modeling way to represent and aggregate neighbors, limiting the diversity and robustness of new user representations. Therefore, we present a novel new user preference uncertainty modeling framework, named Disentangled -feature and Composite -prior VAE(DC-VAE), to predict the behaviors of new users without any interaction. Concretely, a length -adaptive similarity metric considering the length of user behaviors and social relationships is designed for all users to choose more analogous neighbors, especially more effective for new users due to the metric incorporating the social structures and social semantics. Then the Neighbor -based Disentangled Features module is proposed to disentangle different types of neighbor characteristics and model more diversified new user representations. Next, unlike traditional Gaussian prior constraint, the Neighbor -based Composite prior module is proposed to fuse the priors of neighbors and obtain more expressive and robust new user representations. Finally, we theoretically prove the advantages of composite prior and disentangled features. Extensive experiments on three datasets demonstrate that our model DC-VAE is remarkably superior to other baselines.