利用扩散先验探索用户级梯度反演

Zhuohang Li, Andrew Lowy, Jing Liu, Toshiaki Koike-Akino, Bradley Malin, Kieran Parsons, Ye Wang
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引用次数: 0

摘要

我们将用户级梯度反转作为一种新的分布式学习攻击面进行了探索。我们首先研究了现有攻击在训练数据重建之外对隐私信息进行推断的能力。由于现有方法的重建质量较低,我们提出了一种新的梯度反转攻击,它应用去噪扩散模型作为强图像先验,以增强大批量环境下的恢复能力。传统攻击旨在重建单个样本,在大批量和大图像规模下会受到影响,而我们的方法则旨在恢复呈现性图像,捕捉与底层用户相对应的敏感共享语义信息。我们对人脸图像的实验证明,我们的方法能够恢复真实的人脸图像以及用户的私人属性。
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Exploring User-level Gradient Inversion with a Diffusion Prior
We explore user-level gradient inversion as a new attack surface in distributed learning. We first investigate existing attacks on their ability to make inferences about private information beyond training data reconstruction. Motivated by the low reconstruction quality of existing methods, we propose a novel gradient inversion attack that applies a denoising diffusion model as a strong image prior in order to enhance recovery in the large batch setting. Unlike traditional attacks, which aim to reconstruct individual samples and suffer at large batch and image sizes, our approach instead aims to recover a representative image that captures the sensitive shared semantic information corresponding to the underlying user. Our experiments with face images demonstrate the ability of our methods to recover realistic facial images along with private user attributes.
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