Stackelberg Game Based Resource Allocation Algorithm for Federated Learning in MEC Systems

Xiongyan Tang, Yue Wang, Rong Huang, Gao Chen, Liwen Wang
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Abstract

Introducing Federated Learning (FL) into the mo- bile edge computing (MEC) system can effectively deal with delay-sensitive tasks and protect end devices (EDs) data privacy. In the process of participating in FL, the EDs will carry out a large number of local iterations and multiple rounds of communication with the MEC server to achieve a target model accuracy. These will bring delay and energy cost which may reduce EDs’ willingness to participate. In this paper, a resource allocation algorithm considering EDs incentives is proposed. We model the resource allocation of the MEC server and EDs as a two-layer Stackelberg game model and design two-layer utility functions. In EDs layer, we provide rewards to incentive EDs to contribute computing resource to achieve higher local model accuracy and weigh it against energy consumption of ED. In MEC server layer, the tradeoff between global model accuracy and system delay is conducted. We take utilities maximization as the optimization objective, and optimize the number of local iterations and bandwidth of EDs to achieve joint computing and communication resource allocation in the MEC system. Then, according to the solution of the optimization problems, we propose a resource allocation algorithm. Finally, the simulation results show that the proposed algorithm is superior to the benchmark schemes in reducing EDs’ energy consumption and system delay, which can achieve the purpose of encouraging EDs to participate.
基于Stackelberg博弈的MEC系统联邦学习资源分配算法
在移动边缘计算(MEC)系统中引入联邦学习(FL)可以有效地处理延迟敏感任务,保护终端设备(ed)的数据隐私。在参与FL的过程中,EDs将进行大量的局部迭代,并与MEC服务器进行多轮通信,以达到目标模型精度。这将带来延迟和能源成本,可能会降低EDs的参与意愿。本文提出了一种考虑EDs激励的资源分配算法。将MEC服务器和EDs的资源分配建模为两层Stackelberg博弈模型,并设计了两层效用函数。在EDs层,我们对激励EDs贡献计算资源以实现更高的局部模型精度提供奖励,并将其与ED的能耗进行权衡。在MEC服务器层,我们在全局模型精度和系统延迟之间进行权衡。以效用最大化为优化目标,优化局部迭代次数和带宽,实现MEC系统中计算资源和通信资源的联合分配。然后,根据优化问题的求解,提出了一种资源分配算法。最后,仿真结果表明,该算法在降低EDs能耗和系统延迟方面优于基准方案,能够达到激励EDs参与的目的。
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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