2023
DOI: 10.1007/978-3-031-46664-9_28
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A Hessian-Based Federated Learning Approach to Tackle Statistical Heterogeneity

Adnan Ahmad,
Wei Luo,
Antonio Robles-Kelly

Abstract: This paper presents a novel hierarchical federated learning algorithm within multiple sets that incorporates quantization for communication-efficiency and demonstrates resilience to statistical heterogeneity. Unlike conventional hierarchical federated learning algorithms, our approach combines gradient aggregation in intra-set iterations with model aggregation in inter-set iterations. We offer a comprehensive analytical framework to evaluate its optimality gap and convergence rate, comparing these aspects with… Show more

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