Over-the-Air Federated Learning Exploiting Channel Perturbation

Shayan Mohajer Hamidi, M. Mehrabi, A. Khandani, Deniz Gündüz
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引用次数: 4

Abstract

Federated learning (FL) is a promising technology which trains a machine learning model on edge devices in a distributed manner orchestrated by a parameter server (PS). To realize fast model aggregation, the uplink phase of FL could be carried out by over-the-air computation (OAC). On the one hand, engaging more devices in FL yields a model with higher prediction accuracy. On the other hand, the edge devices in OAC need to perform appropriate magnitude alignment to compensate for underlying channel coefficients. However, due to the limited power budget, this is not possible for devices experiencing deep fade. Consequently, these devices are excluded from the FL algorithm. In this paper, we propose a channel perturbation method so that no edge device is excluded due to experiencing deep fade. To this end, OAC is performed in multiple phases. In each phase, the radio frequency (RF) vicinity of PS’s antenna is intentionally perturbed by means of RF mirror structure coined in [1]. This yields independent realizations of channels between PS and devices in each phase. By using proper transmit scalars, all devices concurrently transmit their local model updates in each phase subject to a total power constraint. Then, the PS estimates the arithmetic sum of the local updates by properly combining the aggregated models obtained across all phases. The devices’ transmit scalars and PS’s de-noising factors can be efficiently found by solving a tractable optimization problem. Index Terms—Federated learning, over-the-air computation, edge machine learning, wireless communications.
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利用信道扰动的空中联合学习
联邦学习(FL)是一种很有前途的技术,它以参数服务器(PS)编排的分布式方式在边缘设备上训练机器学习模型。为了实现快速的模型聚合,可通过空中计算(OAC)对FL的上行阶段进行处理。一方面,在FL中使用更多的设备可以产生具有更高预测精度的模型。另一方面,OAC中的边缘器件需要执行适当的幅度对准以补偿底层通道系数。然而,由于有限的功率预算,这是不可能的设备经历深度衰减。因此,这些设备被排除在FL算法之外。在本文中,我们提出了一种通道摄动方法,使任何边缘器件都不会因经历深度衰减而被排除在外。为此,OAC分多个阶段执行。在每个相位,PS天线附近的射频(RF)都被[1]中创造的射频镜像结构有意地扰动。这在每个阶段产生PS和设备之间的通道的独立实现。通过使用适当的传输标量,在总功率约束下,所有设备在每个阶段同时传输其本地模型更新。然后,通过正确组合各个阶段获得的聚合模型,估计局部更新的算术和。通过求解一个易于处理的优化问题,可以有效地找到器件的传输标量和PS的去噪因子。索引术语:联邦学习,无线计算,边缘机器学习,无线通信。
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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