Recommender systems have become prosperous nowadays, designed to predict users' potential interests in items by learning embeddings. Recent developments of the Graph Neural Networks~(GNNs) also provide recommender systems with powerful backbones to learn embeddings from a user-item graph. However, only leveraging the user-item interactions suffers from the cold-start issue due to the difficulty in data collection. Hence, current endeavors propose fusing social information with user-item interactions to alleviate it, which is the social recommendation problem. Existing work employs GNNs to aggregate both social links and user-item interactions simultaneously. However, they all require centralized storage of the social links and item interactions of users, which leads to privacy concerns. Additionally, according to strict privacy protection under General Data Protection Regulation, centralized data storage may not be feasible in the future, urging a decentralized framework of social recommendation. To this end, we devise a novel framework \textbf{Fe}drated \textbf{So}cial recommendation with \textbf{G}raph neural network (FeSoG). Firstly, FeSoG adopts relational attention and aggregation to handle heterogeneity. Secondly, FeSoG infers user embeddings using local data to retain personalization. Last but not least, the proposed model employs pseudo-labeling techniques with item sampling to protect the privacy and enhance training. Extensive experiments on three real-world datasets justify the effectiveness of FeSoG in completing social recommendation and privacy protection. We are the first work proposing a federated learning framework for social recommendation to the best of our knowledge.
翻译:目前,建议系统已经变得繁荣,目的是通过学习嵌入来预测用户对项目的潜在兴趣。图表神经网络~(GNNS)的最近发展也为推荐系统提供了强大的骨干,以学习用户项目图中的嵌入。然而,由于数据收集困难,只有利用用户项目互动才受到冷启动问题的困扰。因此,目前的努力提议用用户项目互动来将社会信息与用户项目互动联系起来以缓解它,这是社会建议问题。现有的工作利用GNS来同时汇总社会链接和用户项目互动。然而,它们都需要集中存储用户的社会链接和项目互动,从而导致隐私问题。此外,根据《数据保护总条例》的严格隐私保护,集中数据储存今后可能不可行,因此敦促社会建议的分散化框架。为此,我们设计了一个新的框架 \ textb{frded\ textbff{SOfferation{Social ficial commission commissional commissional commissional commissional oration to the real commissional ficial ficial ficial ficial ficial ficial filodistrational ficial ficial figistration