A Tutorial of Personalized Federated Recommender Systems: Recent Advances and Future Directions
Jing Jiang, Chunxu Zhang, Honglei Zhang, Zhiwei Li, Yidong Li, Bo Yang

TL;DR
This paper provides a comprehensive tutorial on personalized federated recommender systems, discussing recent advances, challenges like data heterogeneity, and future research directions to enhance privacy and personalization.
Contribution
It offers an overview, taxonomy, and analysis of recent developments and open challenges in personalized federated recommender systems.
Findings
Survey of existing PFedRecSys studies
Taxonomy covering four key research directions
Identification of open challenges and future directions
Abstract
Personalization stands as the cornerstone of recommender systems (RecSys), striving to sift out redundant information and offer tailor-made services for users. However, the conventional cloud-based RecSys necessitates centralized data collection, posing significant risks of user privacy breaches. In response to this challenge, federated recommender systems (FedRecSys) have emerged, garnering considerable attention. FedRecSys enable users to retain personal data locally and solely share model parameters with low privacy sensitivity for global model training, significantly bolstering the system's privacy protection capabilities. Within the distributed learning framework, the pronounced non-iid nature of user behavior data introduces fresh hurdles to federated optimization. Meanwhile, the ability of federated learning to concurrently learn multiple models presents an opportunity for…
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Taxonomy
TopicsRecommender Systems and Techniques · Privacy-Preserving Technologies in Data · Caching and Content Delivery
