利用遗传算法增强加速联邦学习

IF 7.5 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Huanqing Zheng , Jielei Chu , Zhaoyu Li , Jinghao Ji , Tianrui Li
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引用次数: 0

摘要

联邦学习(FL)支持跨多个设备的协作模型训练,同时保护数据隐私。然而,开发健壮和高效的FL面临着重大挑战,如数据异构、计算资源约束、通信瓶颈和恶意参与者的存在。为了解决这些问题,我们引入了GenFed,这是一个通过遗传算法机制增强联邦学习的创新框架。GenFed优化了模型聚合策略并平衡了资源利用,从而提高了性能和弹性。该框架旨在与现有FL系统无缝集成,促进快速适应。GenFed加速了模型收敛并增强了鲁棒性,特别是在具有大量客户端的环境中。实验结果表明,GenFed在收敛速度、准确性和抗不同数据集对抗性攻击的弹性方面显著优于传统的FL方法。值得注意的是,随着客户机数量的增加,传统联邦方法的性能通常会大幅下降。相比之下,GenFed保持稳定、高水平的性能,使其特别适用于涉及广泛客户参与的实际场景。我们的研究结果表明,GenFed是一种通用且高效的解决方案,在可伸缩性和健壮性方面提供了显著的改进,有助于在实际应用程序中部署可靠的联邦学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Federated Learning with genetic algorithm enhancements
Federated Learning (FL) enables collaborative model training across multiple devices while preserving data privacy. However, developing robust and efficient FL faces significant challenges, such as data heterogeneity, computational resource constraints, communication bottlenecks, and the presence of malicious participants. To address these issues, we introduce GenFed, an innovative framework that enhances federated learning through genetic algorithm mechanisms. GenFed optimizes model aggregation strategies and balances resource utilization, thereby improving performance and resilience. This framework is designed for seamless integration with existing FL systems, facilitating rapid adaptation. GenFed accelerates model convergence and enhances robustness, particularly in environments with a large number of clients. Experimental results demonstrate that GenFed significantly outperforms traditional FL methods in terms of convergence speed, accuracy, and resilience against adversarial attacks across diverse datasets. Notably, as the number of clients increases, conventional federated methods often suffer substantial performance degradation. In contrast, GenFed maintains stable, high-level performance, making it especially practical for real-world scenarios involving extensive client participation. Our findings indicate that GenFed is a versatile and efficient solution that offers significant improvements in scalability and robustness, contributing to the deployment of reliable federated learning in real-world applications.
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来源期刊
Expert Systems with Applications
Expert Systems with Applications 工程技术-工程:电子与电气
CiteScore
13.80
自引率
10.60%
发文量
2045
审稿时长
8.7 months
期刊介绍: Expert Systems With Applications is an international journal dedicated to the exchange of information on expert and intelligent systems used globally in industry, government, and universities. The journal emphasizes original papers covering the design, development, testing, implementation, and management of these systems, offering practical guidelines. It spans various sectors such as finance, engineering, marketing, law, project management, information management, medicine, and more. The journal also welcomes papers on multi-agent systems, knowledge management, neural networks, knowledge discovery, data mining, and other related areas, excluding applications to military/defense systems.
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