FedHiSyn:面向资源和数据异构的分层同步联邦学习框架

Guang-Ming Li, Yue Hu, Miao Zhang, Ji Liu, Quanjun Yin, Yong Peng, D. Dou
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引用次数: 12

摘要

联邦学习(FL)可以在不共享存储在多个设备上的分散原始数据的情况下训练全局模型,以保护数据隐私。由于设备的不同容量,FL框架难以解决离散效应和过时模型的问题。此外,在FL训练过程中,数据的异质性导致全局模型的精度严重下降。为了解决上述问题,我们提出了一个分层同步FL框架,即FedHiSyn。FedHiSyn首先根据计算能力将所有可用设备分成几个类别。经过一定时间间隔的局部训练后,不同类别训练出来的模型同时上传到中央服务器。在单个类别中,设备之间基于环形拓扑相互通信本地更新的模型权重。由于环形拓扑的训练效率更倾向于资源同质的设备,基于计算能力的分类可以减轻离散效应的影响。此外,将多类别的同步更新与单一类别内的设备通信相结合,有助于在实现高精度的同时解决数据异构问题。我们基于MNIST, EMNIST, CIFAR10和CIFAR100数据集以及各种设备的异构设置来评估所提出的框架。实验结果表明,FedHiSyn在训练精度和效率方面优于fedag、SCAFFOLD、FedAT等6种基准方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedHiSyn: A Hierarchical Synchronous Federated Learning Framework for Resource and Data Heterogeneity
Federated Learning (FL) enables training a global model without sharing the decentralized raw data stored on multiple devices to protect data privacy. Due to the diverse capacity of the devices, FL frameworks struggle to tackle the problems of straggler effects and outdated models. In addition, the data heterogeneity incurs severe accuracy degradation of the global model in the FL training process. To address aforementioned issues, we propose a hierarchical synchronous FL framework, i.e., FedHiSyn. FedHiSyn first clusters all available devices into a small number of categories based on their computing capacity. After a certain interval of local training, the models trained in different categories are simultaneously uploaded to a central server. Within a single category, the devices communicate the local updated model weights to each other based on a ring topology. As the efficiency of training in the ring topology prefers devices with homogeneous resources, the classification based on the computing capacity mitigates the impact of straggler effects. Besides, the combination of the synchronous update of multiple categories and the device communication within a single category help address the data heterogeneity issue while achieving high accuracy. We evaluate the proposed framework based on MNIST, EMNIST, CIFAR10 and CIFAR100 datasets and diverse heterogeneous settings of devices. Experimental results show that FedHiSyn outperforms six baseline methods, e.g., FedAvg, SCAFFOLD, and FedAT, in terms of training accuracy and efficiency.
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