Differential privacy is a definition of "privacy'" for algorithms that analyze and publish information about statistical databases. It is often claimed that differential privacy provides guarantees against adversaries with arbitrary side information. In this paper, we provide a precise formulation of these guarantees in terms of the inferences drawn by a Bayesian adversary. We show that this formulation is satisfied by both "vanilla" differential privacy as well as a relaxation known as (epsilon,delta)-differential privacy. Our formulation follows the ideas originally due to Dwork and McSherry [Dwork 2006]. This paper is, to our knowledge, the first place such a formulation appears explicitly. The analysis of the relaxed definition is new to this paper, and provides some concrete guidance for setting parameters when using (epsilon,delta)-differential privacy.
翻译:差异隐私是分析和公布统计数据库信息的算法的“隐私”定义,人们常常声称,差异隐私为对抗对手提供了任意侧面信息的保障。在本文中,我们用巴伊西亚对手的推论提供了对这些保障的精确表述。我们表明,这种表述既符合“香草”差异隐私,也符合所谓的(epsilon,delta)差异隐私。我们的表述遵循了最初由Dwork和McShelry[Dwork,2006]产生的想法。据我们所知,该文件是第一位这种表述。对宽松定义的分析对本文来说是新的,并为在使用(epsilon,delta)差异隐私时设定参数提供了一些具体的指导。