A Greedy Control Policy for Latency and Energy Constrained Wireless Federated Learning

Rui Sun, M. Tao
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Abstract

For federated learning, each device participates in the model learning in a collaborative training manner. Due to the constraint of delay and energy consumption in actual wireless environment, resource allocation is essential for the convergence speed of federated learning. This paper analyzes the convergence bound of federated learning from a theoretical perspective, based on which, we propose a greedy control policy that combines aggregation frequency control and device scheduling together. The proposed policy minimizes the loss of model training under a given time and energy budget with a greedy strategy which eliminates the device with the worst performance gain in each step. Simulation results show that under different wireless environments, the proposed global control policy achieves higher accuracy than the commonly used federated learning algorithms and has a good robustness to non-i.i.d. data.
延迟与能量约束无线联邦学习的贪心控制策略
对于联邦学习,每个设备以协作训练的方式参与模型学习。由于实际无线环境中时延和能量消耗的限制,资源分配对联邦学习的收敛速度至关重要。本文从理论的角度分析了联邦学习的收敛界,在此基础上提出了一种将聚合频率控制和设备调度相结合的贪心控制策略。该策略采用贪婪策略,在给定的时间和能量预算下,将每一步性能增益最差的设备淘汰,从而最大限度地减少模型训练的损失。仿真结果表明,在不同的无线环境下,所提出的全局控制策略比常用的联邦学习算法具有更高的精度,并且对非pid具有良好的鲁棒性。数据。
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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