完全分散环境下基于有序ADMM的通信高效联邦学习

Yicheng Chen, Rick S. Blum, Brian M. Sadler
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引用次数: 4

摘要

近年来,高效通信分布式优化问题引起了人们的广泛关注。本文在一般的完全去中心化网络环境下,设计了一种基于有序的交替方向乘法器(OADMM)的高效通信算法。与经典的ADMM相比,OADMM的一个关键特征是,在每次迭代中,工作人员之间的传输是有序的,这样具有最多信息数据的工作人员首先将其局部变量广播给邻居,而尚未传输的邻居可以根据接收到的传输更新其局部变量。在OADMM中,如果工人当前的局部变量与先前传输的值没有足够的不同,我们禁止工人进行传输。提出了OADMM的一种变体,称为SOADMM,其中传输是有序的,但在每次迭代时不会停止每个节点的传输。数值结果表明,在给定目标精度的情况下,与现有算法相比,OADMM可以显著减少通信次数。我们还从数值上表明,与传统的ADMM相比,SOADMM可以加速收敛,从而节省通信费用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Communication Efficient Federated Learning via Ordered ADMM in a Fully Decentralized Setting
The challenge of communication-efficient distributed optimization has attracted attention in recent years. In this paper, a communication efficient algorithm, called ordering-based alternating direction method of multipliers (OADMM) is devised in a general fully decentralized network setting where a worker can only exchange messages with neighbors. Compared to the classical ADMM, a key feature of OADMM is that transmissions are ordered among workers at each iteration such that a worker with the most informative data broadcasts its local variable to neighbors first, and neighbors who have not transmitted yet can update their local variables based on that received transmission. In OADMM, we prohibit workers from transmitting if their current local variables are not sufficiently different from their previously transmitted value. A variant of OADMM, called SOADMM, is proposed where transmissions are ordered but transmissions are never stopped for each node at each iteration. Numerical results demonstrate that given a targeted accuracy, OADMM can significantly reduce the number of communications compared to existing algorithms including ADMM. We also show numerically that SOADMM can accelerate convergence, resulting in communication savings compared to the classical ADMM.
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