reviewIEEE Transactions on Consumer ElectronicsApr 5, 2024Closed access

A Review of Federated Learning Methods in Heterogeneous Scenarios

The University of Sydney · Shandong University of Science and Technology · +2 more institutions

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Abstract

Federated learning emerges as a solution to the dilemma of data silos while safeguarding data privacy, particularly relevant in the consumer electronics sector where user data privacy is paramount. However, federated learning is generally employed in a heterogeneous scenario, consisting of various factors that influence the training efficiency and accuracy of the federated learning models. There are many classic references focusing on federated communications, federated robustness and federated fairness, conversely, few of them clarify and summary systematically the influence of heterogeneity on the effect of federated learning. Therefore, we provide an overview of three heterogeneous challenges faced by…

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