On the Performance of Federated Learning Algorithms for IoT

Mehreen Tahir, M. Ali
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引用次数: 5

Abstract

Federated Learning (FL) is a state-of-the-art technique used to build machine learning (ML) models based on distributed data sets. It enables In-Edge AI, preserves data locality, protects user data, and allows ownership. These characteristics of FL make it a suitable choice for IoT networks due to its intrinsic distributed infrastructure. However, FL presents a few unique challenges; the most noteworthy is training over largely heterogeneous data samples on IoT devices. The heterogeneity of devices and models in the complex IoT networks greatly influences the FL training process and makes traditional FL unsuitable to be directly deployed, while many recent research works claim to mitigate the negative impact of heterogeneity in FL networks, unfortunately, the effectiveness of these proposed solutions has never been studied and quantified. In this study, we thoroughly analyze the impact of heterogeneity in FL and present an overview of the practical problems exerted by the system and statistical heterogeneity. We have extensively investigated state-of-the-art algorithms focusing on their practical use over IoT networks. We have also conducted a comparative analysis of the top available federated algorithms over a heterogeneous dynamic IoT network. Our analysis shows that the existing solutions fail to effectively mitigate the problem, thus highlighting the significance of incorporating both system and statistical heterogeneity in FL system design.
物联网联邦学习算法的性能研究
联邦学习(FL)是一种最先进的技术,用于基于分布式数据集构建机器学习(ML)模型。它支持In-Edge AI,保留数据局部性,保护用户数据,并允许所有权。由于其固有的分布式基础设施,FL的这些特性使其成为物联网网络的合适选择。然而,FL提出了一些独特的挑战;最值得注意的是在物联网设备上对大量异构数据样本进行训练。复杂物联网网络中设备和模型的异质性极大地影响了FL训练过程,使传统的FL不适合直接部署,而最近许多研究工作声称可以减轻FL网络中异质性的负面影响,不幸的是,这些提出的解决方案的有效性从未被研究和量化。在本研究中,我们深入分析了异质性对FL的影响,并概述了系统和统计异质性所带来的实际问题。我们广泛研究了最先进的算法,重点关注它们在物联网网络中的实际应用。我们还对异构动态物联网网络上可用的顶级联邦算法进行了比较分析。我们的分析表明,现有的解决方案未能有效缓解这一问题,从而突出了在FL系统设计中同时考虑系统和统计异质性的重要性。
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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