Topology-aware Federated Learning in Edge Computing: A Comprehensive Survey

IF 23.8 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS ACM Computing Surveys Pub Date : 2024-04-18 DOI:10.1145/3659205
Jiajun Wu, Fan Dong, Henry Leung, Zhuangdi Zhu, Jiayu Zhou, Steve Drew
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Abstract

The ultra-low latency requirements of 5G/6G applications and privacy constraints call for distributed machine learning systems to be deployed at the edge. With its simple yet effective approach, federated learning (FL) is a natural solution for massive user-owned devices in edge computing with distributed and private training data. FL methods based on FedAvg typically follow a naive star topology, ignoring the heterogeneity and hierarchy of the volatile edge computing architectures and topologies in reality. Several other network topologies exist and can address the limitations and bottlenecks of the star topology. This motivates us to survey network topology-related FL solutions. In this paper, we conduct a comprehensive survey of the existing FL works focusing on network topologies. After a brief overview of FL and edge computing networks, we discuss various edge network topologies as well as their advantages and disadvantages. Lastly, we discuss the remaining challenges and future works for applying FL to topology-specific edge networks.

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边缘计算中的拓扑感知联合学习:全面调查
5G/6G 应用的超低延迟要求和隐私限制要求在边缘部署分布式机器学习系统。联盟学习(FL)方法简单而有效,是边缘计算中大规模用户自有设备与分布式私有训练数据的自然解决方案。基于 FedAvg 的联合学习方法通常采用天真的星形拓扑结构,忽略了现实中多变的边缘计算架构和拓扑结构的异质性和层次性。现有的几种其他网络拓扑结构可以解决星形拓扑结构的局限性和瓶颈。这促使我们调查与网络拓扑相关的 FL 解决方案。在本文中,我们将对现有的 FL 作品进行全面调查,重点关注网络拓扑结构。在简要概述 FL 和边缘计算网络之后,我们讨论了各种边缘网络拓扑结构及其优缺点。最后,我们讨论了将 FL 应用于特定拓扑边缘网络的其余挑战和未来工作。
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来源期刊
ACM Computing Surveys
ACM Computing Surveys 工程技术-计算机:理论方法
CiteScore
33.20
自引率
0.60%
发文量
372
审稿时长
12 months
期刊介绍: ACM Computing Surveys is an academic journal that focuses on publishing surveys and tutorials on various areas of computing research and practice. The journal aims to provide comprehensive and easily understandable articles that guide readers through the literature and help them understand topics outside their specialties. In terms of impact, CSUR has a high reputation with a 2022 Impact Factor of 16.6. It is ranked 3rd out of 111 journals in the field of Computer Science Theory & Methods. ACM Computing Surveys is indexed and abstracted in various services, including AI2 Semantic Scholar, Baidu, Clarivate/ISI: JCR, CNKI, DeepDyve, DTU, EBSCO: EDS/HOST, and IET Inspec, among others.
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