Federated Learning for Online Resource Allocation in Mobile Edge Computing: A Deep Reinforcement Learning Approach

Jingjing Zheng, Kai Li, N. Mhaisen, Wei Ni, E. Tovar, M. Guizani
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引用次数: 2

Abstract

Federated learning (FL) is increasingly considered to circumvent the disclosure of private data in mobile edge computing (MEC) systems. Training with large data can enhance FL learning accuracy, which is associated with non-negligible energy use. Scheduled edge devices with small data save energy but decrease FL learning accuracy due to a reduction in energy consumption. A trade-off between the energy consumption of edge devices and the learning accuracy of FL is formulated in this proposed work. The FL-enabled twin-delayed deep deterministic policy gradient (FL-TD3) framework is proposed as a solution to the formulated problem because its state and action spaces are large in a continuous domain. This framework provides the maximum accuracy ratio of FL divided by the device’s energy consumption. A comparison of the numerical results with the state-of-the-art demonstrates that the ratio has been improved significantly.
移动边缘计算中在线资源分配的联邦学习:一种深度强化学习方法
越来越多的人认为联邦学习(FL)可以避免移动边缘计算(MEC)系统中私有数据的泄露。使用大数据进行训练可以提高FL学习的准确性,这与不可忽略的能量消耗有关。具有小数据的定时边缘设备可以节省能源,但由于能耗降低,会降低FL学习的准确性。在此工作中,提出了边缘设备的能量消耗与FL学习精度之间的权衡。由于FL-TD3框架的状态和动作空间在连续域中较大,因此提出了FL-TD3框架来解决该问题。该框架提供了FL的最大精度比除以设备的能耗。数值计算结果与实际计算结果的比较表明,该比值得到了显著提高。
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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