Low-Latency Federated Learning over Wireless Channels with Differential Privacy
Kang Wei, Jun Li, Chuan Ma, Ming Ding, Cailian Chen, Shi Jin, Zhu Han, and H. Vincent Poor

TL;DR
This paper develops a low-latency federated learning framework over wireless channels that balances training delay, privacy, and performance using multi-armed bandit techniques and efficient matching algorithms.
Contribution
It introduces a novel MAMAB-based approach with virtual queues and matching algorithms to optimize FL over wireless channels under privacy and performance constraints.
Findings
Proposed algorithms achieve near-optimal solutions with low complexity.
Theoretical analysis shows linear regret growth over logarithmic rounds.
Experimental results validate the effectiveness of the algorithms in wireless edge networks.
Abstract
In federated learning (FL), model training is distributed over clients and local models are aggregated by a central server. The performance of uploaded models in such situations can vary widely due to imbalanced data distributions, potential demands on privacy protections, and quality of transmissions. In this paper, we aim to minimize FL training delay over wireless channels, constrained by overall training performance as well as each client's differential privacy (DP) requirement. We solve this problem in the framework of multi-agent multi-armed bandit (MAMAB) to deal with the situation where there are multiple clients confornting different unknown transmission environments, e.g., channel fading and interferences. Specifically, we first transform the long-term constraints on both training performance and each client's DP into a virtual queue based on the Lyapunov drift technique.…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing · Age of Information Optimization
