不可计算敏感性下的差分隐私

Tomoaki Mimoto, Masayuki Hashimoto, Hiroyuki Yokoyama, Toru Nakamura, T. Isohara, R. Kojima, Aki Hasegawa, Yasushi Okuno
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引用次数: 0

摘要

为了保证不同类型统计信息中的个人隐私,人们提出了不同的隐私保护机制。在构建满足差分隐私的概率机制时,需要考虑任意记录对其统计量的影响,即灵敏度,但在某些情况下,灵敏度很难推导。本文首先总结了一般情况下难以导出敏感性的情况,然后提出了一个等价于差分隐私的传统定义来处理这些情况。该定义与传统定义一样考虑相邻数据集。因此,可以应用已知的差分隐私机制。接下来,我们以统计分析中的基本工具t检验为例,说明敏感性的推导困难,并表明在实践中可以构建具体的差分隐私机制。我们提出的定义可以用与传统的差分隐私定义相同的方式处理,并且可以应用于难以导出敏感性的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential Privacy under Incalculable Sensitivity
Differential privacy mechanisms have been proposed to guarantee the privacy of individuals in various types of statistical information. When constructing a probabilistic mechanism to satisfy differential privacy, it is necessary to consider the impact of an arbitrary record on its statistics, i.e., sensitivity, but there are situations where sensitivity is difficult to derive. In this paper, we first summarize the situations in which it is difficult to derive sensitivity in general, and then propose a definition equivalent to the conventional definition of differential privacy to deal with them. This definition considers neighboring datasets as in the conventional definition. Therefore, known differential privacy mechanisms can be applied. Next, as an example of the difficulty in deriving sensitivity, we focus on the t-test, a basic tool in statistical analysis, and show that a concrete differential privacy mechanism can be constructed in practice. Our proposed definition can be treated in the same way as the conventional differential privacy definition, and can be applied to cases where it is difficult to derive sensitivity.
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