English

Personalizing Federated Learning with Over-the-Air Computations

Machine Learning 2023-02-27 v1

Abstract

Federated edge learning is a promising technology to deploy intelligence at the edge of wireless networks in a privacy-preserving manner. Under such a setting, multiple clients collaboratively train a global generic model under the coordination of an edge server. But the training efficiency is often throttled by challenges arising from limited communication and data heterogeneity. This paper presents a distributed training paradigm that employs analog over-the-air computation to address the communication bottleneck. Additionally, we leverage a bi-level optimization framework to personalize the federated learning model so as to cope with the data heterogeneity issue. As a result, it enhances the generalization and robustness of each client's local model. We elaborate on the model training procedure and its advantages over conventional frameworks. We provide a convergence analysis that theoretically demonstrates the training efficiency. We also conduct extensive experiments to validate the efficacy of the proposed framework.

Keywords

Cite

@article{arxiv.2302.12509,
  title  = {Personalizing Federated Learning with Over-the-Air Computations},
  author = {Zihan Chen and Zeshen Li and Howard H. Yang and Tony Q. S. Quek},
  journal= {arXiv preprint arXiv:2302.12509},
  year   = {2023}
}

Comments

5 pages. Accepted by ICASSP 2023

R2 v1 2026-06-28T08:48:37.759Z