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A Survey on Cluster-based Federated Learning

2025-01-29Unverified0· sign in to hype

Omar El-Rifai, Michael Ben Ali, Imen Megdiche, André Peninou, Olivier Teste

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Abstract

As the industrial and commercial use of Federated Learning (FL) has expanded, so has the need for optimized algorithms. In settings were FL clients' data is non-independently and identically distributed (non-IID) and with highly heterogeneous distributions, the baseline FL approach seems to fall short. To tackle this issue, recent studies, have looked into personalized FL (PFL) which relaxes the implicit single-model constraint and allows for multiple hypotheses to be learned from the data or local models. Among the personalized FL approaches, cluster-based solutions (CFL) are particularly interesting whenever it is clear -through domain knowledge -that the clients can be separated into groups. In this paper, we study recent works on CFL, proposing: i) a classification of CFL solutions for personalization; ii) a structured review of literature iii) a review of alternative use cases for CFL. CCS Concepts: General and reference Surveys and overviews; Computing methodologies Machine learning; Information systems Clustering; Security and privacy Privacy-preserving protocols.

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