多接入边缘计算中数据异构管理的分层联邦学习优化(DRL-Enabled Hierarchical Federated Learning Optimization

IF 3.4 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Access Pub Date : 2024-10-03 DOI:10.1109/ACCESS.2024.3473008
Suhyun Cho;Sunhwan Lim;Joohyung Lee
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引用次数: 0

摘要

本文针对多访问边缘计算(MEC)环境设计了一种新型分层联合学习(HFL)管理方案,该方案由深度强化学习(DRL)支持,可加快收敛速度。为此,所提出的方案控制了移动设备(MD)执行的本地更新次数,以及数据传输到云端进行全局聚合之前在 MEC 服务器上进行的中间聚合次数。这种优化旨在 i) 通过平衡 MEC 和云服务器之间的训练时间来减轻滞后效应;ii) 通过避免过度依赖速度更快的 MD 来降低过拟合风险。此外,为了提高 DRL 的效率,还采用了贝叶斯优化来初始化行动值,从而避免了低效的行动探索。大量仿真表明,我们提出的方案在测试准确性和训练时间方面都优于各种基准。
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DRL-Enabled Hierarchical Federated Learning Optimization for Data Heterogeneity Management in Multi-Access Edge Computing
This paper designs a novel Hierarchical Federated Learning (HFL) management scheme, enabled by deep reinforcement learning (DRL), for multi-access edge computing (MEC) environments to accelerate convergence. To do this, the proposed scheme controls the number of local updates performed by mobile devices (MDs) and the number of intermediate aggregations at the MEC server before data is transmitted to the cloud for global aggregation. This optimization aims to i) mitigate the straggler effect by balancing training times between MEC and cloud servers, and ii) reduce the risk of overfitting by avoiding excessive reliance on faster MDs. Additionally, to improve the efficiency of DRL, Bayesian optimization is employed to initialize action values, thereby avoiding inefficient exploration of actions. Extensive simulations demonstrate that our proposed scheme outperforms various benchmarks in terms of test accuracy and training time.
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来源期刊
IEEE Access
IEEE Access COMPUTER SCIENCE, INFORMATION SYSTEMSENGIN-ENGINEERING, ELECTRICAL & ELECTRONIC
CiteScore
9.80
自引率
7.70%
发文量
6673
审稿时长
6 weeks
期刊介绍: IEEE Access® is a multidisciplinary, open access (OA), applications-oriented, all-electronic archival journal that continuously presents the results of original research or development across all of IEEE''s fields of interest. IEEE Access will publish articles that are of high interest to readers, original, technically correct, and clearly presented. Supported by author publication charges (APC), its hallmarks are a rapid peer review and publication process with open access to all readers. Unlike IEEE''s traditional Transactions or Journals, reviews are "binary", in that reviewers will either Accept or Reject an article in the form it is submitted in order to achieve rapid turnaround. Especially encouraged are submissions on: Multidisciplinary topics, or applications-oriented articles and negative results that do not fit within the scope of IEEE''s traditional journals. Practical articles discussing new experiments or measurement techniques, interesting solutions to engineering. Development of new or improved fabrication or manufacturing techniques. Reviews or survey articles of new or evolving fields oriented to assist others in understanding the new area.
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