Gradient Obfuscation Gives a False Sense of Security in Federated Learning

K. Yue, Richeng Jin, Chau-Wai Wong, D. Baron, H. Dai
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引用次数: 11

Abstract

Federated learning has been proposed as a privacy-preserving machine learning framework that enables multiple clients to collaborate without sharing raw data. However, client privacy protection is not guaranteed by design in this framework. Prior work has shown that the gradient sharing strategies in federated learning can be vulnerable to data reconstruction attacks. In practice, though, clients may not transmit raw gradients considering the high communication cost or due to privacy enhancement requirements. Empirical studies have demonstrated that gradient obfuscation, including intentional obfuscation via gradient noise injection and unintentional obfuscation via gradient compression, can provide more privacy protection against reconstruction attacks. In this work, we present a new data reconstruction attack framework targeting the image classification task in federated learning. We show that commonly adopted gradient postprocessing procedures, such as gradient quantization, gradient sparsification, and gradient perturbation, may give a false sense of security in federated learning. Contrary to prior studies, we argue that privacy enhancement should not be treated as a byproduct of gradient compression. Additionally, we design a new method under the proposed framework to reconstruct the image at the semantic level. We quantify the semantic privacy leakage and compare with conventional based on image similarity scores. Our comparisons challenge the image data leakage evaluation schemes in the literature. The results emphasize the importance of revisiting and redesigning the privacy protection mechanisms for client data in existing federated learning algorithms.
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梯度混淆在联邦学习中给人一种错误的安全感
联邦学习被提议作为一种保护隐私的机器学习框架,它允许多个客户端在不共享原始数据的情况下进行协作。然而,在这个框架中,客户端隐私保护并不是由设计来保证的。先前的研究表明,联邦学习中的梯度共享策略容易受到数据重构攻击。但在实践中,考虑到高昂的通信成本或出于隐私增强需求,客户端可能不会传输原始梯度。经验研究表明,梯度混淆,包括通过梯度噪声注入的故意混淆和通过梯度压缩的无意混淆,可以提供更多的隐私保护,防止重建攻击。本文针对联邦学习中的图像分类任务,提出了一种新的数据重构攻击框架。我们表明,通常采用的梯度后处理程序,如梯度量化、梯度稀疏化和梯度扰动,可能会在联邦学习中给人一种错误的安全感。与先前的研究相反,我们认为隐私增强不应被视为梯度压缩的副产品。此外,在此框架下,我们设计了一种新的语义层图像重构方法。我们量化了语义隐私泄露,并根据图像相似度评分与传统方法进行了比较。我们的比较挑战了文献中的图像数据泄漏评估方案。研究结果强调了在现有的联邦学习算法中重新审视和重新设计客户数据隐私保护机制的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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