SimProx:基于相似性的客户权重优化联邦学习聚合

IF 6.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Ayoub El-Niss;Ahmad Alzu’Bi;Abdelrahman Abuarqoub;Mohammad Hammoudeh;Ammar Muthanna
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引用次数: 0

摘要

联邦学习(FL)支持跨多个客户端分散训练机器学习模型,通过聚合本地训练模型而不共享原始数据来保护数据隐私。传统的聚合方法,如Federated Averaging (fedag),通常假定客户端贡献是一致的,从而导致异构数据环境中的全局模型不是最优的。本文介绍SimProx,这是一种用于聚合的新颖FL方法,通过三个关键改进来解决数据的异构性。首先,SimProx采用基于相似度的复合加权机制,整合余弦和高斯相似度度量来动态优化客户端贡献。然后,它在客户端加权方案中加入了一个近端项,使用梯度规范来优先考虑更接近全局最优的更新,从而增强了模型的收敛性和鲁棒性。最后,介绍了一种动态参数学习技术,该技术基于数据异构性调整相似性度量之间的平衡,改进了聚合过程。在标准基准数据集和真实多模态数据上进行的大量实验表明,SimProx在准确性方面明显优于fedag等传统方法。SimProx为多样化和异构环境中的分散深度学习提供了可扩展和有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SimProx: A Similarity-Based Aggregation in Federated Learning With Client Weight Optimization
Federated Learning (FL) enables decentralized training of machine learning models across multiple clients, preserving data privacy by aggregating locally trained models without sharing raw data. Traditional aggregation methods, such as Federated Averaging (FedAvg), often assume uniform client contributions, leading to suboptimal global models in heterogeneous data environments. This article introduces SimProx, a novel FL approach for aggregation that addresses heterogeneity in data through three key improvements. First, SimProx employs a composite similarity-based weighting mechanism, integrating cosine and Gaussian similarity measures to dynamically optimize client contributions. Then, it incorporates a proximal term in the client weighting scheme, using gradient norms to prioritize updates closer to the global optimum, thereby enhancing model convergence and robustness. Finally, a dynamic parameter learning technique is introduced, which adapts the balance between similarity measures based on data heterogeneity, refining the aggregation process. Extensive experiments on standard benchmarking datasets and real-world multimodal data demonstrate that SimProx significantly outperforms traditional methods like FedAvg in terms of accuracy. SimProx offers a scalable and effective solution for decentralized deep learning in diverse and heterogeneous environments.
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来源期刊
CiteScore
13.70
自引率
3.80%
发文量
94
审稿时长
10 weeks
期刊介绍: The IEEE Open Journal of the Communications Society (OJ-COMS) is an open access, all-electronic journal that publishes original high-quality manuscripts on advances in the state of the art of telecommunications systems and networks. The papers in IEEE OJ-COMS are included in Scopus. Submissions reporting new theoretical findings (including novel methods, concepts, and studies) and practical contributions (including experiments and development of prototypes) are welcome. Additionally, survey and tutorial articles are considered. The IEEE OJCOMS received its debut impact factor of 7.9 according to the Journal Citation Reports (JCR) 2023. The IEEE Open Journal of the Communications Society covers science, technology, applications and standards for information organization, collection and transfer using electronic, optical and wireless channels and networks. Some specific areas covered include: Systems and network architecture, control and management Protocols, software, and middleware Quality of service, reliability, and security Modulation, detection, coding, and signaling Switching and routing Mobile and portable communications Terminals and other end-user devices Networks for content distribution and distributed computing Communications-based distributed resources control.
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