Age-aware Communication Strategy in Federated Learning with Energy Harvesting Devices

Xin Liu, Xiaoqi Qin, Hao Chen, Yiming Liu, Baoling Liu, Ping Zhang
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引用次数: 4

Abstract

Federated learning is considered as a privacy-preserving distributed machine learning framework, where the model training is distributed over end devices by fully exploiting scattered computation capability and training data. Different from centralized machine learning where the convergence time is decided by number of training rounds, under the framework of FL, the convergence time also depends on the communication delay and computation delay for local training in each round. Therefore, we employ total training delay as the performance metric in our strategy design. Note that the training delay per round is prone to the limited wireless resources and system heterogeneity, where end devices have different computational and communication capabilities. To achieve timely parameter aggregation over limited spectrum, we incorporate age of parameter in device scheduling for each training round, which is defined as the number of rounds elapsed since last time of parameter uploading. Moreover, since diversity of uploaded parameters is important for training performance over data with non-IID distributions, we exploit energy harvesting technology to prevent device drop-outs during training process. In this paper, we propose an age-aware communication strategy for federated learning over wireless networks, by jointly considering the staleness of parameters and heterogeneous capabilities at end devices to realize fast and accurate model training. Numerical results demonstrate the effectiveness and accuracy of our proposed strategy.
基于能量收集装置的联邦学习中的年龄感知沟通策略
联邦学习被认为是一种保护隐私的分布式机器学习框架,通过充分利用分散的计算能力和训练数据,将模型训练分布在终端设备上。与集中式机器学习的收敛时间由训练轮数决定不同,在FL框架下,收敛时间还取决于每轮局部训练的通信延迟和计算延迟。因此,我们在策略设计中采用总训练延迟作为性能指标。注意,每轮训练延迟容易受到无线资源有限和系统异构的影响,其中终端设备具有不同的计算和通信能力。为了在有限的频谱范围内实现参数的及时聚合,我们将参数的年龄纳入到每一轮训练的设备调度中,其定义为自上一次参数上传以来经过的轮数。此外,由于上传参数的多样性对于非iid分布数据的训练性能很重要,我们利用能量收集技术来防止训练过程中的设备辍学。在本文中,我们提出了一种基于年龄感知的无线网络联邦学习通信策略,通过联合考虑参数的陈旧性和终端设备的异构能力来实现快速准确的模型训练。数值结果验证了该策略的有效性和准确性。
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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