FedSens:资源受限边缘计算中类不平衡智能健康感知的联邦学习方法

D. Zhang, Ziyi Kou, Dong Wang
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引用次数: 22

摘要

移动传感和边缘计算的进步为异常健康检测(AHD)系统带来了新的机遇,智能手机和可穿戴传感器等边缘设备用于收集人们的健康信息,并为中风和抑郁症等异常健康状况提供早期警报。联邦学习(FL)的最新发展允许参与者协作训练强大的AHD模型,同时将他们的健康数据保密到本地设备。本文旨在解决使FL适应训练AHD模型的关键挑战,其中参与者的健康数据高度不平衡并且包含有偏差的类分布。由于参与者严格的隐私要求以及其边缘设备的异构资源约束,现有的FL解决方案无法解决类不平衡问题。在这项工作中,我们提出了FedSens,这是一个新的FL框架,致力于解决AHD应用中的类不平衡问题,明确考虑了参与者隐私和设备资源约束。我们在两个真实的AHD应用程序上使用真实的边缘计算测试平台来评估FedSens。结果表明,FedSens可以显著提高AHD模型在严重类别不平衡的情况下的准确性,并且对边缘设备的能量成本较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FedSens: A Federated Learning Approach for Smart Health Sensing with Class Imbalance in Resource Constrained Edge Computing
The advance of mobile sensing and edge computing has brought new opportunities for abnormal health detection (AHD) systems where edge devices such as smartphones and wearable sensors are used to collect people’s health information and provide early alerts for abnormal health conditions such as stroke and depression. The recent development of federated learning (FL) allows participants to collaboratively train powerful AHD models while keeping their health data private to local devices. This paper targets at addressing a critical challenge of adapting FL to train AHD models, where the participants’ health data is highly imbalanced and contains biased class distributions. Existing FL solutions fail to address the class imbalance issue due to the strict privacy requirements of participants as well as the heterogeneous resource constraints of their edge devices. In this work, we propose FedSens, a new FL framework dedicated to address the class imbalance problem in AHD applications with explicit considerations of participant privacy and device resource constraints. We evaluate FedSens using a real-world edge computing testbed on two real-world AHD applications. The results show that FedSens can significantly improve the accuracy of AHD models in the presence of severe class imbalance with low energy cost to the edge devices.
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