从猜测或近似敏感属性的优势来解释差分隐私的Epsilon

Peeter Laud, A. Pankova
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引用次数: 9

摘要

差分隐私是一种具有可证明保证的隐私技术,通常通过在发布统计数据之前引入噪声来实现。隐私级别的特征是一个特定的数值参数E > 0,其中E越小意味着隐私越多。然而,对于E应该有多小,并没有统一的意见,对于相同的E,数据泄漏的实际可能性可能因不同的发布统计数据和不同的数据集而有所不同。在本文中,我们展示了如何将E与攻击者成功猜测私有数据的可能性的增加联系起来。攻击者的目标被描述为布尔表达式,而不是猜测特定的分类和数值属性,其中数值属性可以以一定的精度猜测。本文建立在d-隐私定义的基础上,它是e -差分隐私的推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpreting Epsilon of Differential Privacy in Terms of Advantage in Guessing or Approximating Sensitive Attributes
Differential privacy is a privacy technique with provable guarantees which is typically achieved by introducing noise to statistics before releasing them. The level of privacy is characterized by a certain numeric parameter E > 0, where smaller E means more privacy. However, there is no common agreement on how small E should be, and the actual likelihood of data leakage for the same E may vary for different released statistics and different datasets. In this paper, we show how to relate E to the increase in the probability of attacker's success in guessing something about the private data. The attacker's goal is stated as a Boolean expression over guessing particular categorical and numerical attributes, where numeric attributes can be guessed with some precision. The paper is built upon the definition of d-privacy, which is a gencralization of E-differential privacy.
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