Privacy-Enhanced Over-the-Air Federated Learning via Client-Driven Power Balancing
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

1

초록

This paper introduces a novel privacy-enhanced over-the-air Federated Learning (OTA-FL) framework using client-driven power balancing (CDPB) to address privacy concerns in OTA-FL systems. In recent studies, a server determines the power balancing based on the continuous transmission of channel state information (CSI) from each client. Furthermore, they concentrate on fulfilling privacy requirements in every global iteration, which can heighten the risk of privacy exposure as the learning process extends. To mitigate these risks, we propose two CDPB strategies—CDPB-n (noisy) and CDPB-i (idle)—allowing clients to adjust transmission power independently, without sharing CSI. CDPB-n transmits noise during poor conditions, while CDPB-i pauses transmission until conditions improve. To further enhance privacy and learning efficiency, we show a mixed strategy, CDPB-mixed, which combines CDPB-n and CDPB-i. Our experimental results show that CDPB outperforms traditional approaches in terms of model accuracy and privacy guarantees providing a practical solution for enhancing OTA-FL in resource-constrained environments.

키워드

client-driven power balancingOver-the-air federated learningRényi differential privacy
제목
Privacy-Enhanced Over-the-Air Federated Learning via Client-Driven Power Balancing
저자
Kim, BumjunSeo, HyowoonChoi, Wan
DOI
10.1109/TCOMM.2025.3605478
발행일
2025-12
유형
Article
저널명
IEEE Transactions on Communications
73
12
페이지
15537 ~ 15553