基于粒子群优化的联邦学习超参数整定

Zhiyuan Li, Hao Li, Mingyang Zhang
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引用次数: 3

摘要

联邦学习(FL)的学习任务是通过中心服务器和各个客户端的联合来解决的。与传统的深度学习模型不同,联邦学习由全局模型和个体模型两部分组成。然而,由于这个过程是由两个同等重要的部分进行的,因此同时处理这两个部分是理想的。为了获得优异的性能,联邦学习需要精心选择超参数,它比传统的深度学习模型有更多的超参数。为了解决这一调谐问题,我们提出了一种使用粒子群优化(PSO)算法对联邦学习的超参数进行调谐的方法。粒子群算法是一种无梯度的随机优化方法,在较大的搜索空间中优于网格搜索方法。它有助于找到多个参数的最佳组合。本文将粒子群算法应用于FL模型的超参数整定,并证明了它是一种获得满意结果的有效方法。用卷积神经网络在MNIST数据集上的实验证明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyper-parameter Tuning of Federated Learning Based on Particle Swarm Optimization
The learning task of federated learning (FL) is solved by a federation of a center server and individual clients. Contrary to traditional deep learning models, federated learning consists of two parts, the global model and individual models. However, since the process is carried out by two parts of equal importance, it is ideal to deal with both parts simultaneously. To achieve superior performance, federated learning requires carefully selected hyper-parameters, which has more hyper-parameters than those of traditional deep learning models. To solve this tuning problem, we propose a method using particle swarm optimization (PSO) algorithm to tune the hyperparameters of federated learning. PSO algorithm is a gradient-free, stochastic optimization method which is better than grid search method when it comes to large search space. It helps locate the optimal combination of multiple parameters. In this article, we focus on applying PSO method on tuning the hyper-parameters of FL models, and prove that it is an efficient way to acquire satisfactory results. Experiments on MNIST dataset with convolution neural networks have proved the superiority of the proposed method.
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