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A survey on cross-user federated recommendation
被引:0
|作者:
Enyue Yang
[1
]
Yudi Xiong
[1
]
Wei Yuan
[2
]
Weike Pan
[1
]
Qiang Yang
[3
]
Zhong Ming
[4
]
机构:
[1] Shenzhen University,College of Computer Science and Software Engineering
[2] The University of Queensland,School of Electrical Engineering and Computer Science
[3] WeBank,WeBank AI Lab
[4] Hong Kong University of Science and Technology,Department of Computer Science and Engineering
[5] Shenzhen Technology University,College of Big Data and Internet
[6] Guangdong Laboratory of Artificial Intelligence and Digital Economy (SZ),undefined
关键词:
cross-user federated recommendation;
federated recommendation;
federated learning;
recommender systems;
user privacy;
D O I:
10.1007/s11432-024-4310-7
中图分类号:
学科分类号:
摘要:
Recommender systems are effective in mitigating information overload, yet the centralized storage of user data raises significant privacy concerns. Cross-user federated recommendation (CUFR) provides a promising distributed paradigm to address these concerns by enabling privacy-preserving recommendations directly on user devices. In this survey, we review and categorize current progress in CUFR, focusing on four key aspects: privacy, security, accuracy, and efficiency. Firstly, we conduct an in-depth privacy analysis, discuss various cases of privacy leakage, and then review recent methods for privacy protection. Secondly, we analyze security concerns and review recent methods for untargeted and targeted attacks. For untargeted attack methods, we categorize them into data poisoning attack methods and parameter poisoning attack methods. For targeted attack methods, we categorize them into user-based methods and item-based methods. Thirdly, we provide an overview of the federated variants of some representative methods, and then review the recent methods for improving accuracy from two categories: data heterogeneity and high-order information. Fourthly, we review recent methods for improving training efficiency from two categories: client sampling and model compression. Finally, we conclude this survey and explore some potential future research topics in CUFR.
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