A Scenario-Oriented Survey of Federated Recommender Systems: Techniques, Challenges, and Future Directions
Yunqi Mi, Jiakui Shen, Guoshuai Zhao, Jialie Shen, Xueming Qian

TL;DR
This paper surveys federated recommender systems, analyzing their unique challenges and scenarios to guide practical deployment, emphasizing privacy preservation and scenario-specific solutions.
Contribution
It provides a comprehensive analysis linking recommendation scenarios with federated learning, highlighting practical challenges and future directions for real-world applications.
Findings
Analysis of scenario-specific federated recommender techniques
Identification of practical challenges like data heterogeneity
Guidance for deploying federated recommender systems in real-world settings
Abstract
Extending recommender systems to federated learning (FL) frameworks to protect the privacy of users or platforms while making recommendations has recently gained widespread attention in academia. This is due to the natural coupling of recommender systems and federated learning architectures: the data originates from distributed clients (mostly mobile devices held by users), which are highly related to privacy. In a centralized recommender system (CenRec), the central server collects clients' data, trains the model, and provides the service. Whereas in federated recommender systems (FedRec), the step of data collecting is omitted, and the step of model training is offloaded to each client. The server only aggregates the model and other knowledge, thus avoiding client privacy leakage. Some surveys of federated recommender systems discuss and analyze related work from the perspective of…
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