
Friday Jun 13, 2025
Fast & Energy Efficient Federated Learning Using Multi-Attribute Client Clustering and Sel...
Federated Learning (FL) presents a promising paradigm for decentralized model training; however, its real-world adoption is hindered by several critical challenges, including non-independent and identically distributed (non-IID) data across clients, heterogeneous computational capabilities, and significant communication overhead. To address these issues, this paper introduces a novel multi-attribute client clustering and selection framework for FL. The proposed approach groups clients according to data distribution, device capabilities, geographic location, and model update behavior. Within each cluster, an adaptive client selection mechanism leverages dynamic attributes such as residual energy, data freshness, and client participation motivation to identify the most suitable participants. Experimental evaluations on standard FL benchmark datasets demonstrate that the proposed framework achieves faster convergence, higher global model accuracy, and improved energy efficiency compared to state-of-the-art approaches.
Fast & Energy Efficient Federated Learning Using Multi-Attribute Client Clustering and Selection
Maryam Ben Driss, University of Quebec at Montreal; Essaid Sabir, Teluq University; Halima Elbiaze, University of Quebec a Montreal; Abdoulaye Baniré Diallo, University of Quebec at Montreal
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