Enhancing Federated Learning Through Layer-Wise Aggregation Over Non-IID Data

IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yang Xu;Ying Zhu;Zhiyuan Wang;Hongli Xu;Yunming Liao
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Abstract

Nowadays, federated learning (FL) has been widely adopted to train deep neural networks (DNNs) among massive devices without revealing their local data in edge computing (EC). To relieve the communication bottleneck of the central server in FL, hierarchical federated learning (HFL), which leverages edge servers as intermediaries to perform model aggregation among devices in proximity, comes into being. Nevertheless, the existing HFL systems may not perform training effectively due to bandwidth constraints and non-IID issues on devices. To conquer these challenges, we introduce an HFL system with device-edge assignment and layer selection, namely Heal. Specifically, Heal organizes all the devices into a hierarchical structure (i.e., device-edge assignment) and enables each device to forward only a sub-model with several valuable layers for aggregation (i.e., layer selection). This processing procedure is called layer-wise aggregation. To further save communication resource and improve the convergence performance, we then design an iteration-based algorithm to optimize the development of our layer-wise aggregation strategy by considering the data distribution as well as resource constraints among devices. Extensive experiments on both the physical platform and the simulated environment show that Heal accelerates DNN training by about 1.4–12.5×, and reduces the network traffic consumption by about 31.9–64.1%, compared with the existing HFL systems.
通过非iid数据的分层聚合增强联邦学习
目前,在边缘计算(EC)中,联邦学习(FL)已被广泛用于在海量设备之间训练深度神经网络(dnn),而不会泄露其本地数据。为了缓解FL中中心服务器的通信瓶颈,分层联邦学习(hierarchical federated learning, HFL)应运而生,它利用边缘服务器作为中介,在邻近设备之间进行模型聚合。然而,由于带宽限制和设备上的非iid问题,现有的HFL系统可能无法有效地执行训练。为了克服这些挑战,我们引入了一个具有设备边缘分配和层选择的HFL系统,即Heal。具体来说,Heal将所有设备组织成一个分层结构(即设备-边缘分配),并使每个设备仅转发具有几个有价值层的子模型用于聚合(即层选择)。这个处理过程称为分层聚合。为了进一步节省通信资源,提高收敛性能,我们设计了一种基于迭代的算法来优化分层聚合策略的开发,同时考虑了设备间的数据分布和资源约束。在物理平台和模拟环境上的大量实验表明,与现有的HFL系统相比,Heal将DNN训练速度提高了约1.4 - 12.5倍,将网络流量消耗降低了约31.9-64.1%。
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来源期刊
IEEE Transactions on Services Computing
IEEE Transactions on Services Computing COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
11.50
自引率
6.20%
发文量
278
审稿时长
>12 weeks
期刊介绍: IEEE Transactions on Services Computing encompasses the computing and software aspects of the science and technology of services innovation research and development. It places emphasis on algorithmic, mathematical, statistical, and computational methods central to services computing. Topics covered include Service Oriented Architecture, Web Services, Business Process Integration, Solution Performance Management, and Services Operations and Management. The transactions address mathematical foundations, security, privacy, agreement, contract, discovery, negotiation, collaboration, and quality of service for web services. It also covers areas like composite web service creation, business and scientific applications, standards, utility models, business process modeling, integration, collaboration, and more in the realm of Services Computing.
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