无线边缘网络中节能联邦学习的稀疏化与优化

Lei Lei, Yaxiong Yuan, Yang Yang, Yu Luo, Lina Pu, S. Chatzinotas
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引用次数: 1

摘要

联邦学习(FL)作为一种有效的去中心化方法,在无线边缘网络的隐私保护应用中引起了广泛关注。在实践中,边缘设备通常受到能量、内存和计算能力的限制。此外,中央服务器和边缘设备之间的通信具有有限的资源,例如功率或带宽。在本文中,我们提出了一种联合稀疏和优化方案,以减少局部训练和数据传输的能耗。一方面,我们引入稀疏化,在稀疏神经网络中产生大量的零权值,以减轻设备的计算负担,减少需要上传的数据量。为了处理稀疏化带来的非平滑性,我们开发了一种增强的随机梯度下降算法来提高学习性能。另一方面,我们优化了功率、带宽和学习参数,以避免通信拥塞,并实现了中央服务器和边缘设备之间的节能传输。通过协同部署以上两个组件,数值结果表明,与使用全连接神经网络的基准FL相比,FL的总体能耗可以显着降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparsification and Optimization for Energy-Efficient Federated Learning in Wireless Edge Networks
Federated Learning (FL), as an effective decentral-ized approach, has attracted considerable attention in privacy-preserving applications for wireless edge networks. In practice, edge devices are typically limited by energy, memory, and computation capabilities. In addition, the communications be-tween the central server and edge devices are with constrained resources, e.g., power or bandwidth. In this paper, we propose a joint sparsification and optimization scheme to reduce the energy consumption in local training and data transmission. On the one hand, we introduce sparsification, leading to a large number of zero weights in sparse neural networks, to alleviate devices' computational burden and mitigate the data volume to be uploaded. To handle the non-smoothness incurred by sparsification, we develop an enhanced stochastic gradient descent algorithm to improve the learning performance. On the other hand, we optimize power, bandwidth, and learning parameters to avoid communication congestion and enable an energy-efficient transmission between the central server and edge devices. By collaboratively deploying the above two components, the numerical results show that the overall energy consumption in FL can be significantly reduced, compared to benchmark FL with fully-connected neural networks.
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