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A Survey on Federated Recommendation Systems

Zehua Sun, Yonghui Xu, Yong Liu, Wei He, Lanju Kong, Fangzhao Wu, Yali Jiang, Lizhen Cui

2024IEEE Transactions on Neural Networks and Learning Systems82 citationsDOI

Abstract

Federated learning has recently been applied to recommendation systems to protect user privacy. In federated learning settings, recommendation systems can train recommendation models by collecting the intermediate parameters instead of the real user data, which greatly enhances user privacy. In addition, federated recommendation systems (FedRSs) can cooperate with other data platforms to improve recommendation performance while meeting the regulation and privacy constraints. However, FedRSs face many new challenges such as privacy, security, heterogeneity, and communication costs. While significant research has been conducted in these areas, gaps in the surveying literature still exist. In this article, we: 1) summarize some common privacy mechanisms used in FedRSs and discuss the advantages and limitations of each mechanism; 2) review several novel attacks and defenses against security; 3) summarize some approaches to address heterogeneity and communication costs problems; 4) introduce some realistic applications and public benchmark datasets for FedRSs; and 5) present some prospective research directions in the future. This article can guide researchers and practitioners understand the research progress in these areas.

Topics & Concepts

Computer scienceRecommender systemBenchmark (surveying)Mechanism (biology)Information privacyData scienceInternet privacyComputer securityWorld Wide WebPhilosophyGeographyGeodesyEpistemologyPrivacy-Preserving Technologies in DataRecommender Systems and TechniquesPrivacy, Security, and Data Protection
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