联盟学习中的隐私与性能平衡:关于方法和指标的系统性文献综述

IF 3.4 3区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS Journal of Parallel and Distributed Computing Pub Date : 2024-05-17 DOI:10.1016/j.jpdc.2024.104918
Samaneh Mohammadi , Ali Balador , Sima Sinaei , Francesco Flammini
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引用次数: 0

摘要

联合学习(FL)作为人工智能(AI)领域的一种新模式,通过消除数据集中并将学习直接带到用户设备的边缘,确保了更高的隐私性。然而,新的隐私问题也随之而来,尤其是在训练以及服务器和客户端之间交换参数的过程中。虽然已经开发了几种保护隐私的 FL 解决方案来减少 FL 架构中潜在的漏洞,但它们的整合也带来了一系列挑战。在边缘计算层面将这些隐私保护机制纳入 FL 可能会增加通信和计算开销,进而可能会影响数据效用和学习性能指标。本文对基本方法和指标进行了系统的文献综述,以支持在 FL 隐私和其他性能相关应用要求(如准确性、损失、收敛时间、效用、通信和计算开销)之间进行最适当的权衡。我们的目标是广泛概述最近在各种应用中使用的 FL 隐私保护机制,特别关注 FL 中的定量隐私评估方法,以及在隐私和真实世界 FL 应用的其他要求之间实现平衡的必要性。本综述以结构化的方式对相关论文进行了收集、分类和讨论,强调了挑战、开放性问题和有前景的研究方向。
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Balancing privacy and performance in federated learning: A systematic literature review on methods and metrics

Federated learning (FL) as a novel paradigm in Artificial Intelligence (AI), ensures enhanced privacy by eliminating data centralization and brings learning directly to the edge of the user's device. Nevertheless, new privacy issues have been raised particularly during training and the exchange of parameters between servers and clients. While several privacy-preserving FL solutions have been developed to mitigate potential breaches in FL architectures, their integration poses its own set of challenges. Incorporating these privacy-preserving mechanisms into FL at the edge computing level can increase both communication and computational overheads, which may, in turn, compromise data utility and learning performance metrics. This paper provides a systematic literature review on essential methods and metrics to support the most appropriate trade-offs between FL privacy and other performance-related application requirements such as accuracy, loss, convergence time, utility, communication, and computation overhead. We aim to provide an extensive overview of recent privacy-preserving mechanisms in FL used across various applications, placing a particular focus on quantitative privacy assessment approaches in FL and the necessity of achieving a balance between privacy and the other requirements of real-world FL applications. This review collects, classifies, and discusses relevant papers in a structured manner, emphasizing challenges, open issues, and promising research directions.

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来源期刊
Journal of Parallel and Distributed Computing
Journal of Parallel and Distributed Computing 工程技术-计算机:理论方法
CiteScore
10.30
自引率
2.60%
发文量
172
审稿时长
12 months
期刊介绍: This international journal is directed to researchers, engineers, educators, managers, programmers, and users of computers who have particular interests in parallel processing and/or distributed computing. The Journal of Parallel and Distributed Computing publishes original research papers and timely review articles on the theory, design, evaluation, and use of parallel and/or distributed computing systems. The journal also features special issues on these topics; again covering the full range from the design to the use of our targeted systems.
期刊最新文献
SpEpistasis: A sparse approach for three-way epistasis detection Robust and Scalable Federated Learning Framework for Client Data Heterogeneity Based on Optimal Clustering Editorial Board Front Matter 1 - Full Title Page (regular issues)/Special Issue Title page (special issues) Survey of federated learning in intrusion detection
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