Over-the-air federated learning: Status quo, open challenges, and future directions

IF 6.3 3区 综合性期刊 Q1 Multidisciplinary
Bingnan Xiao , Xichen Yu , Wei Ni , Xin Wang , H. Vincent Poor
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Abstract

The development of applications based on artificial intelligence and implemented over wireless networks is increasingly rapidly and is expected to grow dramatically in the future. The resulting demand for the aggregation of large amounts of data has caused serious communication bottlenecks in wireless networks and particularly at the network edge. Over-the-air federated learning (OTA-FL), leveraging the superposition feature of multi-access channels, enables users at the network edge to share spectrum resources and achieves efficient and low-latency global model aggregation. This paper provides a holistic review of progress in OTA-FL and points to potential future research directions. Specifically, we classify OTA-FL from the perspective of system settings, including single-antenna OTA-FL, multi-antenna OTA-FL, and OTA-FL with the aid of the emerging reconfigurable intelligent surface technology, and the contributions of existing works in these areas are summarized. Moreover, we discuss the trust, security and privacy aspects of OTA-FL, and highlight concerns arising from security and privacy. Finally, challenges and potential research directions are discussed to promote the future development of OTA-FL in terms of improving system performance, reliability, and trustworthiness. Specifical challenges to be addressed include model distortion under channel fading, the ineffective OTA aggregation of local models trained on substantially unbalanced data, and the limited accessibility and verifiability of individual local models.
无线联合学习:现状、开放挑战和未来方向
基于人工智能并在无线网络上实现的应用程序的发展日益迅速,并有望在未来大幅增长。由此产生的对大量数据聚合的需求在无线网络中造成了严重的通信瓶颈,特别是在网络边缘。OTA-FL (Over-the-air federated learning)利用多接入信道的叠加特性,使网络边缘用户能够共享频谱资源,实现高效、低延迟的全局模型聚合。本文对OTA-FL的研究进展进行了综述,并对未来的研究方向进行了展望。具体来说,我们从系统设置的角度对OTA-FL进行了分类,包括单天线OTA-FL、多天线OTA-FL和借助新兴的可重构智能表面技术的OTA-FL,并总结了这些领域现有工作的贡献。此外,我们讨论了OTA-FL的信任、安全和隐私方面,并强调了安全和隐私方面的问题。最后,讨论了OTA-FL在提高系统性能、可靠性和可信度方面面临的挑战和潜在的研究方向,以促进OTA-FL的未来发展。需要解决的具体挑战包括信道衰落下的模型失真,在极不平衡的数据上训练的局部模型的无效OTA聚合,以及单个局部模型的有限可访问性和可验证性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Fundamental Research
Fundamental Research Multidisciplinary-Multidisciplinary
CiteScore
4.00
自引率
1.60%
发文量
294
审稿时长
79 days
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