Training Task Allocation in Federated Edge Learning: A Matching-Theoretic Approach

Jiawen Kang, Zehui Xiong, D. Niyato, Zhiguang Cao, Amir Leshem
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引用次数: 8

Abstract

Federated edge learning has emerged as a promising technique to enable distributed machine learning using local datasets from large-scale edge devices, e.g., mobile phones or parked vehicles, that share only model updates without uploading raw training data. This technique not only preserves data privacy of edge devices but also simultaneously ensures high learning performance. However, the emerging federated edge learning still confronts serious challenges, such as the lack of efficient training task assignment schemes with reliable edge devices acting as workers. To address this challenge, we utilize a many-to-one matching model to solve the training task assignment problem between the workers and multiple task publishers. In the matching model, we minimize not only the overall training time of the task publishers but also the energy consumption of the workers. To define against malicious model updates from unreliable workers, we present reputation as a metric to evaluate the reliability and trustworthiness of the edge devices, and also take the reputation into consideration when assigning training tasks. The numerical results indicate that the proposed schemes can efficiently improve the performance of federated edge learning.
联邦边缘学习中的训练任务分配:一种匹配理论方法
联邦边缘学习已经成为一种很有前途的技术,它可以使用来自大型边缘设备(例如手机或停放的车辆)的本地数据集来实现分布式机器学习,这些设备只共享模型更新而不上传原始训练数据。该技术既保护了边缘设备的数据隐私,又保证了较高的学习性能。然而,新兴的联合边缘学习仍然面临着严峻的挑战,例如缺乏可靠的边缘设备作为工人的有效培训任务分配方案。为了解决这一挑战,我们利用多对一匹配模型来解决工人和多个任务发布者之间的培训任务分配问题。在匹配模型中,我们不仅使任务发布者的总体训练时间最小化,而且使工作者的能量消耗最小化。为了防止来自不可靠工作人员的恶意模型更新,我们将声誉作为评估边缘设备可靠性和可信度的指标,并在分配培训任务时考虑声誉。数值结果表明,所提出的方案能够有效地提高联邦边缘学习的性能。
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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