Learning Evolving Preferences: A Federated Continual Framework for User-Centric Recommendation

March 18, 2026 ยท Grace Period ยท ๐Ÿ› WWW 2026

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Authors Chunxu Zhang, Zhiheng Xue, Guodong Long, Weipeng Zhang, Bo Yang arXiv ID 2603.17315 Category cs.IR: Information Retrieval Citations 0 Venue WWW 2026
Abstract
User-centric recommendation has become essential for delivering personalized services, as it enables systems to adapt to users' evolving behaviors while respecting their long-term preferences and privacy constraints. Although federated learning offers a promising alternative to centralized training, existing approaches largely overlook user behavior dynamics, leading to temporal forgetting and weakened collaborative personalization. In this work, we propose FCUCR, a federated continual recommendation framework designed to support long-term personalization in a privacy-preserving manner. To address temporal forgetting, we introduce a time-aware self-distillation strategy that implicitly retains historical preferences during local model updates. To tackle collaborative personalization under heterogeneous user data, we design an inter-user prototype transfer mechanism that enriches each client's representation using knowledge from similar users while preserving individual decision logic. Extensive experiments on four public benchmarks demonstrate the superior effectiveness of our approach, along with strong compatibility and practical applicability. Code is available.
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