针对定时攻击的差异隐私框架

Zachary Ratliff, Salil Vadhan
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引用次数: 0

摘要

差分隐私(DP)的标准定义确保了一个机制在相邻数据集上的输出分布是不可区分的。然而,DP在现实世界中的实现可能而且经常会通过其运行时分布泄露信息,从而使它们容易受到定时攻击。在这项工作中,我们建立了一个通用框架,用于在存在定时侧信道的情况下确保差分隐私。我们定义了一个新的定时隐私概念,它捕捉了对除了观察程序运行时间外还观察程序输出的对手保持不同隐私的程序。重要的是,我们的定义允许使用不同的隐私度量方法来测量时序隐私和输出隐私。我们通过给出 RAM 和 WordRAM 计算模型中标准 DP 计算的程序,说明了如何将我们的框架实例化。此外,我们还展示了如何通过对 OpenDP 编程框架的自然扩展,在代码中实现我们的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Differential Privacy Against Timing Attacks
The standard definition of differential privacy (DP) ensures that a mechanism's output distribution on adjacent datasets is indistinguishable. However, real-world implementations of DP can, and often do, reveal information through their runtime distributions, making them susceptible to timing attacks. In this work, we establish a general framework for ensuring differential privacy in the presence of timing side channels. We define a new notion of timing privacy, which captures programs that remain differentially private to an adversary that observes the program's runtime in addition to the output. Our framework enables chaining together component programs that are timing-stable followed by a random delay to obtain DP programs that achieve timing privacy. Importantly, our definitions allow for measuring timing privacy and output privacy using different privacy measures. We illustrate how to instantiate our framework by giving programs for standard DP computations in the RAM and Word RAM models of computation. Furthermore, we show how our framework can be realized in code through a natural extension of the OpenDP Programming Framework.
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