Differential Privacy: An Economic Method for Choosing Epsilon

Justin Hsu, Marco Gaboardi, Andreas Haeberlen, S. Khanna, Arjun Narayan, B. Pierce, Aaron Roth
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引用次数: 267

Abstract

Differential privacy is becoming a gold standard notion of privacy; it offers a guaranteed bound on loss of privacy due to release of query results, even under worst-case assumptions. The theory of differential privacy is an active research area, and there are now differentially private algorithms for a wide range of problems. However, the question of when differential privacy works in practice has received relatively little attention. In particular, there is still no rigorous method for choosing the key parameter ε, which controls the crucial tradeoff between the strength of the privacy guarantee and the accuracy of the published results. In this paper, we examine the role of these parameters in concrete applications, identifying the key considerations that must be addressed when choosing specific values. This choice requires balancing the interests of two parties with conflicting objectives: the data analyst, who wishes to learn something abou the data, and the prospective participant, who must decide whether to allow their data to be included in the analysis. We propose a simple model that expresses this balance as formulas over a handful of parameters, and we use our model to choose ε on a series of simple statistical studies. We also explore a surprising insight: in some circumstances, a differentially private study can be more accurate than a non-private study for the same cost, under our model. Finally, we discuss the simplifying assumptions in our model and outline a research agenda for possible refinements.
差分隐私:选择Epsilon的一种经济方法
差别隐私正成为隐私概念的黄金标准;即使在最坏的情况下,它也提供了由于发布查询结果而导致的隐私损失的保证范围。差分隐私理论是一个活跃的研究领域,目前已经出现了针对各种问题的差分隐私算法。然而,差别隐私在实践中何时起作用的问题受到的关注相对较少。特别是,仍然没有严格的方法来选择关键参数ε,该参数控制隐私保证强度和发布结果准确性之间的关键权衡。在本文中,我们研究了这些参数在具体应用中的作用,确定了在选择特定值时必须考虑的关键因素。这种选择需要平衡目标冲突的两方的利益:希望了解数据的数据分析师和必须决定是否允许将其数据包含在分析中的潜在参与者。我们提出了一个简单的模型,将这种平衡表达为几个参数的公式,并使用我们的模型在一系列简单的统计研究中选择ε。我们还探索了一个令人惊讶的发现:在某些情况下,在我们的模型下,在相同的成本下,不同的私人研究可能比非私人研究更准确。最后,我们讨论了模型中的简化假设,并概述了可能改进的研究议程。
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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