FedEdge: Accelerating Edge-Assisted Federated Learning

Kaibin Wang, Qiang He, Feifei Chen, Hai Jin, Yun Yang
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引用次数: 3

Abstract

Federated learning (FL) has been widely acknowledged as a promising solution to training machine learning (ML) model training with privacy preservation. To reduce the traffic overheads incurred by FL systems, edge servers have been included between clients and the parameter server to aggregate clients’ local models. Recent studies on this edge-assisted hierarchical FL scheme have focused on ensuring or accelerating model convergence by coping with various factors, e.g., uncertain network conditions, unreliable clients, heterogeneous compute resources, etc. This paper presents our three new discoveries of the edge-assisted hierarchical FL scheme: 1) it wastes significant time during its two-phase training rounds; 2) it does not recognize or utilize model diversity when producing a global model; and 3) it is vulnerable to model poisoning attacks. To overcome these drawbacks, we propose FedEdge, a novel edge-assisted hierarchical FL scheme that accelerates model training with asynchronous local federated training and adaptive model aggregation. Extensive experiments are conducted on two widely-used public datasets. The results demonstrate that, compared with state-of-the-art FL schemes, FedEdge accelerates model convergence by 1.14 × −3.20 ×, and improves model accuracy by 2.14% - 6.63%.
加速边缘辅助联邦学习
联邦学习(FL)已被广泛认为是具有隐私保护的机器学习(ML)模型训练的一种有前途的解决方案。为了减少FL系统带来的流量开销,在客户端和参数服务器之间包含了边缘服务器,以聚合客户端的本地模型。近年来对这种边缘辅助分层FL方案的研究主要集中在通过应对各种因素,如不确定的网络条件、不可靠的客户端、异构计算资源等,来保证或加速模型收敛。本文介绍了我们对边缘辅助分层FL方案的三个新发现:1)它在两阶段训练回合中浪费了大量时间;2)在生成全球模式时未识别或利用模式多样性;3)容易受到模型中毒攻击。为了克服这些缺点,我们提出了FedEdge,一种新的边缘辅助分层FL方案,通过异步本地联邦训练和自适应模型聚合加速模型训练。在两个广泛使用的公共数据集上进行了大量的实验。结果表明,与目前最先进的FL方案相比,FedEdge将模型收敛速度提高了1.14 × ~ 3.20 ×,将模型精度提高了2.14% ~ 6.63%。
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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