Uncertainty Measured Active Client Selection for Federated Learning in Smart Grid

Peng Li, Yunfeng Zhao, Liandong Chen, Kai Cheng, Chuyue Xie, Xiaofei Wang, Qinghua Hu
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引用次数: 3

Abstract

Federated learning is a hot machine learning research direction, its goal is to train a high quality central model while protecting the privacy of all parties, and it has a broad application prospect in smart grid and other fields. However, in federated learning with massive client participation, it is impossible to have all clients participate in training and model aggregation every time due to the limitation of communication and computing resources. Usually the method of selecting clients for federated learning is random, some studies have studied this problem from aspects of client data quality, model training effect, communication and computing resources, etc. In this paper, we propose an active client selection algorithm from the perspective of model uncertainty, this algorithm is called uncertainty measured active client selection in FL (UCS-FL). The server actively selects a subset of clients to participate in the FL training, and the unselected clients do not need to train in this round, saving computing and communication resources. Perform a thorough empirical analysis of the image classification task to demonstrate the excellent performance of UCS-FL against baseline in the context of monitored FL settings. Finally, we describes the real-world application of the proposed architecture, especially in smart grid scenarios.
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基于不确定性测量的智能电网联邦学习主动客户端选择
联邦学习是一个热门的机器学习研究方向,其目标是在保护各方隐私的同时训练出高质量的中心模型,在智能电网等领域具有广阔的应用前景。然而,在大规模客户端参与的联邦学习中,由于通信和计算资源的限制,不可能每次都让所有客户端参与训练和模型聚合。通常联邦学习的客户端选择方法是随机的,一些研究从客户端数据质量、模型训练效果、通信和计算资源等方面对这个问题进行了研究。本文从模型不确定性的角度提出了一种主动客户端选择算法,该算法称为不确定性测量主动客户端选择算法(UCS-FL)。服务器主动选择一部分客户端参与FL训练,未选择的客户端不需要在这一轮进行训练,节省了计算和通信资源。对图像分类任务进行彻底的实证分析,以证明UCS-FL在监控FL设置的背景下相对于基线的出色性能。最后,我们描述了所提出的体系结构的实际应用,特别是在智能电网场景中。
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