Optimizing Federated Averaging over Fading Channels

Yujia Mu, Cong Shen, Yonina C. Eldar
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引用次数: 2

Abstract

Deep fading represents the typical error event when communicating over wireless channels. We show that deep fading is particularly detrimental for federated learning (FL) over wireless communications. In particular, the celebrated FEDAVG and several of its variants break down for FL tasks when deep fading exists in the communication phase. The main contribution of this paper is an optimal global model aggregation method at the parameter server, which allocates different weights to different clients based on not only their learning characteristics but also the instantaneous channel state information at the receiver (CSIR). This is accomplished by first deriving an upper bound on the parallel stochastic gradient descent (SGD) convergence over fading channels, and then solving an optimization problem for the server aggregation weights that minimizes this upper bound. The derived optimal aggregation solution is closed-form, and achieves the well-known O(1/t) convergence rate for strongly-convex loss functions under arbitrary fading and decaying learning rates. We validate our approach using several real-world FL tasks.
在衰落信道上优化联邦平均
深度衰落是通过无线信道通信时的典型错误事件。我们表明,深度衰落对无线通信中的联邦学习(FL)尤其有害。特别是,当通信阶段存在深度衰落时,著名的FEDAVG及其几个变体在FL任务中失效。本文的主要贡献是在参数服务器上提出了一种最优全局模型聚合方法,该方法不仅根据客户端的学习特征,而且根据接收端的瞬时信道状态信息(CSIR)为不同的客户端分配不同的权重。这是通过首先在衰落信道上推导并行随机梯度下降(SGD)收敛的上界来实现的,然后解决使该上界最小化的服务器聚合权的优化问题。导出的最优聚合解是封闭形式的,在任意衰落和衰减学习率下实现了众所周知的强凸损失函数的O(1/t)收敛速率。我们用几个真实的FL任务验证了我们的方法。
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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