Convergence Time Minimization for Federated Reinforcement Learning over Wireless Networks

Sihua Wang, Mingzhe Chen, Changchuan Yin, H. Poor
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Abstract

In this paper, the convergence time of federated reinforcement learning (FRL) that is deployed over a realistic wireless network is studied. In the considered model, several devices and the base station (BS) jointly participate in the iterative training of an FRL algorithm. Due to limited wireless resources, the BS must select a subset of devices to exchange FRL training parameters at each iteration, which will significantly affect the training loss and convergence time of the considered FRL algorithm. This joint learning, wireless resource allocation, and device selection problem is formulated as an optimization problem aiming to minimize the FRL convergence time while meeting the FRL temporal difference (TD) error requirement. To solve this problem, a deep Q network based algorithm is designed. The proposed method enables the BS to dynamically select an appropriate subset of devices to join the FRL training. Given the selected devices, a resource block allocation scheme can be derived to further minimize the FRL convergence time. Simulation results with real data show that the proposed approach can reduce the FRL convergence time by up to 44.7% compared to a baseline that randomly determines the subset of participating devices and their occupied resource blocks.
无线网络上联邦强化学习的收敛时间最小化
本文研究了部署在实际无线网络中的联邦强化学习(FRL)的收敛时间问题。在考虑的模型中,多个设备和基站(BS)共同参与FRL算法的迭代训练。由于无线资源有限,每次迭代时,BS必须选择一个设备子集来交换FRL训练参数,这将显著影响所考虑的FRL算法的训练损失和收敛时间。该联合学习、无线资源分配和设备选择问题被表述为一个优化问题,其目标是在满足FRL时域差分(TD)误差要求的同时最小化FRL收敛时间。为了解决这一问题,设计了一种基于深度Q网络的算法。提出的方法使BS能够动态选择适当的设备子集加入FRL训练。给定所选设备,可以推导出一种资源块分配方案,以进一步最小化FRL收敛时间。实际数据的仿真结果表明,与随机确定参与设备子集及其占用资源块的基准相比,该方法可将FRL收敛时间缩短44.7%。
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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