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Proving Differential Privacy via Probabilistic Couplings

机译:通过概率耦合证明差异隐私

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Over the last decade, differential privacy has achieved widespread adoption within the privacy community. Moreover, it has attracted significant attention from the verification community, resulting in several successful tools for formally proving differential privacy. Although their technical approaches vary greatly, all existing tools rely on reasoning principles derived from the composition theorem of differential privacy. While this suffices to verify most common private algorithms, there are several important algorithms whose privacy analysis does not rely solely on the composition theorem. Their proofs are significantly more complex, and are currently beyond the reach of verification tools.In this paper, we develop compositional methods for formally verifying differential privacy for algorithms whose analysis goes beyond the composition theorem. Our methods are based on deep connections between differential privacy and probabilistic couplings, an established mathematical tool for reasoning about stochastic processes. Even when the composition theorem is not helpful, we can often prove privacy by a coupling argument.We demonstrate our methods on two algorithms: the Exponential mechanism and the Above Threshold algorithm, the critical component of the famous Sparse Vector algorithm. We verify these examples in a relational program logic apRHL+, which can construct approximate couplings. This logic extends the existing apRHL logic with more general rules for the Laplace mechanism and the one-sided Laplace mechanism, and new structural rules enabling pointwise reasoning about privacy; all the rules are inspired by the connection with coupling. While our paper is presented from a formal verification perspective, we believe that its main insight is of independent interest for the differential privacy community.
机译:在过去的十年中,差异隐私在隐私社区中得到了广泛的采用。此外,它引起了验证界的极大关注,从而产生了一些成功的工具,用于正式证明差异性隐私。尽管它们的技术方法差异很大,但是所有现有工具都依赖于源自差异性隐私组成定理的推理原理。尽管这足以验证大多数常见的私有算法,但仍有几种重要的算法,其隐私分析不仅仅依赖于合成定理。他们的证明要复杂得多,并且目前不在验证工具的研究范围之内。在本文中,我们开发了组合方法来正式验证差分分析的算法,这些算法的分析超出了组合定理。我们的方法基于差分隐私和概率耦合之间的深层联系,概率耦合是推理随机过程的公认数学工具。即使合成定理没有帮助,我们也经常可以通过耦合参数来证明隐私。我们在两种算法上展示了我们的方法:指数机制和阈值之上算法,这是著名的稀疏向量算法的关键组成部分。我们在关系程序逻辑apRHL中验证了这些示例 + ,可以构造近似耦合。该逻辑扩展了现有的apRHL逻辑,其中包含针对Laplace机制和单面Laplace机制的更为通用的规则,以及新的结构性规则,可针对隐私进行逐点推理。所有规则都受耦合耦合的启发。虽然我们的论文是从形式验证的角度介绍的,但我们认为其主要见解对差异性隐私社区具有独立利益。

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