Universal Optimality and Robust Utility Bounds for Metric Differential Privacy

Natasha Fernandes, Annabelle McIver, C. Palamidessi, Ming Ding
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引用次数: 4

Abstract

We study the privacy-utility trade-off in the context of metric differential privacy. Ghosh et al. introduced the idea of universal optimality to characterise the “best” mechanism for a certain query that simultaneously satisfies (a fixed) $\mathcal{E-}$ differential privacy constraint whilst at the same time providing better utility compared to any other s-differentially private mechanism for the same query. They showed that the Geometric mechanism is universally optimal for the class of counting queries. On the other hand, Brenner and Nissim showed that outside the space of counting queries, and for the Bayes risk loss function, no such universally optimal mechanisms exist. Except for universal optimality of the Laplace mechanism, there have been no generalisations of these universally optimal results to other classes of differentially-private mechanisms. In this paper we use metric differential privacy and quantitative information flow as the fundamental principle for studying universal optimality. Metric differential privacy is a generali-sation of both standard (i.e., central) differential privacy and local differential privacy, and it is increasingly being used in various application domains, for instance in location privacy and in privacy preserving machine learning. As do Ghosh et al. and Brenner and Nissim, we measure utility in terms of loss functions, and we interpret the notion of a privacy mechanism as an information-theoretic channel satisfying constraints defined by ε-differcntlal privacy and a metric meaningful to the underlying state space. Using this framework we are able to clarify Nissim and Brenner's negative results by (a) that in fact all privacy types contain optimal mechanisms relative to certain kinds of non-trivial loss functions, and (b) extending and generalising their negative results beyond Bayes risk specifically to a wide class of non-trivial loss functions. Our exploration suggests that universally optimal mechanisms are indeed rare within privacy types. We therefore propose weaker universal benchmarks of utility called privacy type ca-pacities. We show that such capacities always exist and can be computed using a convex optimisation algorithm. We illustrate these ideas on a selection of examples with several different underlying metrics.
度量差分隐私的通用最优性和鲁棒效用界
本文研究了度量差分隐私环境下的隐私-效用权衡问题。Ghosh等人引入了普遍最优性的概念来描述特定查询的“最佳”机制,该机制同时满足(固定的)$\mathcal{E-}$差分隐私约束,同时与相同查询的任何其他s-差分隐私机制相比,提供更好的效用。他们证明了几何机制对于计数查询类是普遍最优的。另一方面,Brenner和Nissim表明,在计数查询空间之外,对于贝叶斯风险损失函数,不存在这样的普遍最优机制。除了拉普拉斯机制的普遍最优性外,还没有将这些普遍最优结果推广到其他类型的微分私有机制。本文将度量差分隐私和定量信息流作为研究全局最优性的基本原理。度量差分隐私是标准(即中心)差分隐私和局部差分隐私的概括,它越来越多地用于各种应用领域,例如位置隐私和保护隐私的机器学习。与Ghosh等人、Brenner和Nissim一样,我们用损失函数来衡量效用,并将隐私机制的概念解释为满足ε-差分隐私和对底层状态空间有意义的度量所定义的约束的信息理论通道。使用这个框架,我们能够通过(a)澄清Nissim和Brenner的负面结果,即实际上所有隐私类型都包含相对于某些类型的非平凡损失函数的最佳机制,以及(b)将他们的负面结果扩展和推广到贝叶斯风险之外,特别是广泛的非平凡损失函数。我们的研究表明,在隐私类型中,普遍最优的机制确实很少见。因此,我们提出了较弱的通用基准,称为隐私类型容量。我们证明了这样的容量总是存在的,并且可以使用凸优化算法计算。我们通过几个不同的基本指标来说明这些想法。
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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