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Clustering-Based Evolutionary Federated Multiobjective Optimization and Learning

Published: April 29, 2025 | arXiv ID: 2504.20346v1

By: Chengui Xiao, Songbai Liu

Potential Business Impact:

Makes AI learn without sharing private data.

Business Areas:
MOOC Education, Software

Federated learning enables decentralized model training while preserving data privacy, yet it faces challenges in balancing communication efficiency, model performance, and privacy protection. To address these trade-offs, we formulate FL as a federated multiobjective optimization problem and propose FedMOEAC, a clustering-based evolutionary algorithm that efficiently navigates the Pareto-optimal solution space. Our approach integrates quantization, weight sparsification, and differential privacy to reduce communication overhead while ensuring model robustness and privacy. The clustering mechanism en-hances population diversity, preventing premature convergence and improving optimization efficiency. Experimental results on MNIST and CIFAR-10 demonstrate that FedMOEAC achieves 98.2% accuracy, reduces communication overhead by 45%, and maintains a privacy budget below 1.0, outperforming NSGA-II in convergence speed by 33%. This work provides a scalable and efficient FL framework, ensuring an optimal balance between accuracy, communication efficiency, and privacy in resource-constrained environments.

Country of Origin
🇨🇳 China

Page Count
13 pages

Category
Computer Science:
Neural and Evolutionary Computing