DRL-empowered joint batch size and weighted aggregation adjustment mechanism for federated learning on non-IID data

IF 4.1 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Juneseok Bang , Sungpil Woo , Joohyung Lee
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引用次数: 0

Abstract

To address the accuracy degradation as well as prolonged convergence time due to the inherent data heterogeneity among end-devices in federated learning (FL), we introduce the joint batch size and weighted aggregation adjustment problem, which is non-convex problem. To adjust optimal hyperparameters, we develop deep reinforcement learning (DRL) to empower a mechanism known as Batch size and Weighted aggregation Adjustment (BWA). Experimental evaluation demonstrates that BWA not only outperforms methods optimized solely from either a local training or server perspective but also achieves higher accuracy, with an increase of up to 5.53% compared to FedAvg, and additionally accelerates convergence speeds.

DRL 驱动的联合批量大小和加权聚合调整机制,用于非 IID 数据的联合学习
为了解决联合学习(FL)中终端设备之间固有的数据异质性所导致的精度下降和收敛时间延长的问题,我们引入了联合批量大小和加权聚合调整问题,这是一个非凸问题。为了调整最优超参数,我们开发了深度强化学习(DRL),以增强一种称为 "批量大小和加权聚合调整"(BWA)的机制。实验评估表明,BWA 不仅优于仅从本地训练或服务器角度进行优化的方法,还能获得更高的准确性,与 FedAvg 相比最多可提高 5.53%,此外还能加快收敛速度。
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来源期刊
ICT Express
ICT Express Multiple-
CiteScore
10.20
自引率
1.90%
发文量
167
审稿时长
35 weeks
期刊介绍: The ICT Express journal published by the Korean Institute of Communications and Information Sciences (KICS) is an international, peer-reviewed research publication covering all aspects of information and communication technology. The journal aims to publish research that helps advance the theoretical and practical understanding of ICT convergence, platform technologies, communication networks, and device technologies. The technology advancement in information and communication technology (ICT) sector enables portable devices to be always connected while supporting high data rate, resulting in the recent popularity of smartphones that have a considerable impact in economic and social development.
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