空中辅助边缘计算异步联邦学习中的自适应差分隐私

IF 7.7 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Network and Computer Applications Pub Date : 2024-12-12 DOI:10.1016/j.jnca.2024.104087
Yadong Zhang, Huixiang Zhang, Yi Yang, Wen Sun, Haibin Zhang, Yaru Fu
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引用次数: 0

摘要

空中辅助边缘计算和联邦学习(FL)的集成有望彻底改变边缘计算场景中数据的收集和利用方式,同时有效解决该场景下的数据隐私保护和数据分布问题。然而,面对边缘计算系统中设备异构的挑战,目前大多数同步联邦学习方法由于离散效应而存在效率低下的问题。采用异步联邦学习(AFL)可以显著缓解这个问题。尽管有潜在的好处,但AFL仍未得到充分开发,这对优化隐私增强AFL的效用构成了重大障碍。为了解决这个问题,我们引入了自适应差分隐私算法,旨在增强AFL中模型效用和隐私之间的平衡。我们的方法首先定义了两个隐私增强AFL框架,考虑到与不同对手模型相关的各种因素。通过深入分析AFL中的模型收敛性,我们展示了如何在保持高效用的同时自适应地实现差异隐私。在不同的训练模型和基准数据集上进行的大量实验表明,我们提出的算法在整体性能方面优于现有的基准方法,在类似的隐私约束下提高了测试精度,并实现了更快的收敛速度。
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Adaptive differential privacy in asynchronous federated learning for aerial-aided edge computing
The integration of aerial-aided edge computing and federated learning (FL) is expected to completely change the way data is collected and utilized in edge computing scenarios, while effectively addressing the issues of data privacy protection and data distribution in this scenario. However, in the face of the challenge of device heterogeneity at the edge computing systems, most current synchronous federated learning approaches suffer from low efficiency because of the straggler effect. This issue can be significantly mitigated by adopting Asynchronous Federated Learning (AFL). Despite the potential benefits, AFL remains under-explored, posing a significant hurdle to optimizing the utility of privacy-enhanced AFL. To address this, we introduce adaptive differential privacy algorithms aimed at enhancing the balance between model utility and privacy in AFL. Our approach begins by defining two frameworks for privacy-enhanced AFL, taking into account various factors relevant to different adversary models. Through in-depth analysis of the model convergence in AFL, we demonstrate how differential privacy can be adaptively achieved while maintaining high utility. Extensive experiments on diverse training models and benchmark datasets showcase that our proposed algorithms outperform existing benchmark methods in terms of overall performance, enhancing test accuracy under similar privacy constraints and achieving faster convergence rates.
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来源期刊
Journal of Network and Computer Applications
Journal of Network and Computer Applications 工程技术-计算机:跨学科应用
CiteScore
21.50
自引率
3.40%
发文量
142
审稿时长
37 days
期刊介绍: The Journal of Network and Computer Applications welcomes research contributions, surveys, and notes in all areas relating to computer networks and applications thereof. Sample topics include new design techniques, interesting or novel applications, components or standards; computer networks with tools such as WWW; emerging standards for internet protocols; Wireless networks; Mobile Computing; emerging computing models such as cloud computing, grid computing; applications of networked systems for remote collaboration and telemedicine, etc. The journal is abstracted and indexed in Scopus, Engineering Index, Web of Science, Science Citation Index Expanded and INSPEC.
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