A Statistical Framework for Differential Privacy 论文

2010Journal of the American Statistical Association引用 395
Privacy-Preserving Technologies in DataCryptography and Data SecurityMobile Crowdsensing and Crowdsourcing

详细信息

发表期刊/会议
Journal of the American Statistical Association
发表日期
2010-03-01
发表年份
2010

关键词

Privacy-Preserving Technologies in DataCryptography and Data SecurityMobile Crowdsensing and Crowdsourcing

摘要

One goal of statistical privacy research is to construct a data release mechanism that protects individual privacy while preserving information content. An example is a random mechanism that takes an input database X and outputs a random database Z according to a distribution Qn(⋅|X). Differential privacy is a particular privacy requirement developed by computer scientists in which Qn(⋅|X) is required to be insensitive to changes in one data point in X. This makes it difficult to infer from Z whether a given individual is in the original database X. We consider differential privacy from a statistical perspective. We consider several data-release mechanisms that satisfy the differential privacy requirement. We show that it is useful to compare these schemes by computing the rate of convergence of distributions and densities constructed from the released data. We study a general privacy method, called the exponential mechanism, introduced by McSherry and Talwar (2007). We show that the accuracy of this method is intimately linked to the rate at which the probability that the empirical distribution concentrates in a small ball around the true distribution.

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