异构量化的联邦学习

Cong Shen, Shengbo Chen
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引用次数: 6

摘要

在上传到参数服务器之前对本地模型更新进行量化是减少联邦学习中通信开销的主要解决方案。然而,先前的文献总是假设所有客户端都是同质量化,而实际上设备是异构的,它们支持不同级别的量化精度。这种量化的异质性带来了新的挑战:精细量化的模型更新比粗量化的模型更新更准确,而如何在服务器上优化聚合它们是一个未解决的问题。本文提出了FEDHQ:基于异构量化的联邦学习。其中,FEDHQ通过最小化收敛率上界来为客户分配不同的权重,该上界是所有客户量化误差的函数。得到了FEDHQ在强凸损失函数下的收敛速率。为了进一步加快收敛速度,在每个客户端上传本地模型更新时计算并承载瞬时量化误差,服务器动态计算当前回合的权重。数值实验表明,FEDHQ+的性能优于传统的FEDAVG,该FEDAVG具有标准等权和启发式方案,该方案根据客户端的量化精度线性比例分配权重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning with Heterogeneous Quantization
Quantization of local model updates before uploading to the parameter server is a primary solution to reduce the communication overhead in federated learning. However, prior literature always assumes homogeneous quantization for all clients, while in reality devices are heterogeneous and they support different levels of quantization precision. This heterogeneity of quantization poses a new challenge: fine-quantized model updates are more accurate than coarse-quantized ones, and how to optimally aggregate them at the server is an unsolved problem. In this paper, we propose FEDHQ: Federated Learning with Heterogeneous Quantization. In particular, FEDHQ allocates different weights to clients by minimizing the convergence rate upper bound, which is a function of quantization errors of all clients. We derive the convergence rate of FEDHQ under strongly convex loss functions. To further accelerate the convergence, the instantaneous quantization error is computed and piggybacked when each client uploads the local model update, and the server dynamically calculates the weight accordingly for the current round. Numerical experiments demonstrate the performance advantages of FEDHQ+ over conventional FEDAVG with standard equal weights and a heuristic scheme which assigns weights linearly proportional to the clients’ quantization precision.
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