联邦学习中差分隐私的有效自适应防御方案

IF 3.8 2区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Fangfang Shan , Yanlong Lu , Shuaifeng Li , Shiqi Mao , Yuang Li , Xin Wang
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引用次数: 0

摘要

联邦学习作为人工智能领域的新兴技术,在保证隐私保护的同时,有效解决了数据孤岛问题。然而,研究表明,通过分析梯度更新,泄露的梯度信息仍然可以用来重构原始数据,从而推断出隐私信息。近年来,差分隐私技术被广泛应用于联邦学习,以增强数据隐私保护。然而,引入的噪声往往会显著降低学习性能。以往的研究通常采用固定梯度剪切策略,并添加固定噪声。尽管这种方法提供了隐私保护,但它仍然容易受到梯度泄漏攻击,并且训练性能通常低于标准。尽管后续提出的动态差分隐私参数旨在解决模型效用问题,但频繁的参数调整导致效率降低。为了解决这些问题,本文提出了一种高效的带有噪声衰减和自动修剪的联邦学习差分隐私保护框架(EADS-DPFL)。该框架不仅有效防御了梯度泄漏攻击,而且显著提高了联邦学习模型的训练性能。大量的实验结果表明,我们的框架在模型精度、收敛速度和抗攻击性方面优于现有的差分隐私联邦学习方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient adaptive defense scheme for differential privacy in federated learning
Federated learning, as an emerging technology in the field of artificial intelligence, effectively addresses the issue of data islands while ensuring privacy protection. However, studies have shown that by analyzing gradient updates, leaked gradient information can still be used to reconstruct original data, thus inferring private information. In recent years, differential privacy techniques have been widely applied to federated learning to enhance data privacy protection. However, the noise introduced often significantly reduces the learning performance. Previous studies typically employed a fixed gradient clipping strategy with added fixed noise. Although this method offers privacy protection, it remains vulnerable to gradient leakage attacks, and training performance is often subpar. Although subsequent proposals of dynamic differential privacy parameters aim to address the issue of model utility, frequent parameter adjustments lead to reduced efficiency. To solve these issues, this paper proposes an efficient federated learning differential privacy protection framework with noise attenuation and automatic pruning (EADS-DPFL). This framework not only effectively defends against gradient leakage attacks but also significantly improves the training performance of federated learning models.
Extensive experimental results demonstrate that our framework outperforms existing differential privacy federated learning schemes in terms of model accuracy, convergence speed, and resistance to attacks.
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来源期刊
Journal of Information Security and Applications
Journal of Information Security and Applications Computer Science-Computer Networks and Communications
CiteScore
10.90
自引率
5.40%
发文量
206
审稿时长
56 days
期刊介绍: Journal of Information Security and Applications (JISA) focuses on the original research and practice-driven applications with relevance to information security and applications. JISA provides a common linkage between a vibrant scientific and research community and industry professionals by offering a clear view on modern problems and challenges in information security, as well as identifying promising scientific and "best-practice" solutions. JISA issues offer a balance between original research work and innovative industrial approaches by internationally renowned information security experts and researchers.
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