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STATISTICAL DEPENDENCE AS THE BASIS FOR A PRIVACY MEASURE FOR MICRODATA RELEASE

机译:统计独立性是微数据发布的私密性衡量依据

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摘要

Government agencies and other organizations commonly release or share microdata for purposes of analysis. In many cases, microdata release needs to preserve the privacy of individuals and/or sensitive attributes. Current measures of privacy of released microdata are often based on empirical assessments of identity and value disclosure. The disadvantage of empirical assessments of privacy is that their results cannot be generalized with confidence across datasets or protection methods. While theoretical definitions of privacy are available for other methods of data release such as query-response output perturbation systems, they are unsuitable for the microdata release context. This study proposes a theoretical basis for measuring privacy in the microdata release context based on statistical dependence. Using this theoretical basis, we develop practical privacy measures that possess several desirable properties, including generalizability. We illustrate the conceptual benefits of this approach and also show that a privacy measure based on statistical dependence can be used effectively for assessing privacy in microdata.
机译:政府机构和其他组织通常出于分析目的发布或共享微数据。在许多情况下,微数据发布需要保留个人的隐私和/或敏感属性。当前发布的微数据的隐私度量通常基于对身份和价值披露的经验评估。对隐私进行实证评估的缺点是,无法对整个数据集或保护方法的置信度来概括其结果。虽然隐私的理论定义可用于其他数据发布方法,例如查询-响应输出扰动系统,但它们不适用于微数据发布上下文。这项研究为基于统计依赖性的微数据发布环境下的隐私测量提供了理论基础。利用这一理论基础,我们开发了具有几种理想属性(包括可概括性)的实用隐私措施。我们说明了此方法的概念好处,并且还表明基于统计依赖性的隐私权度量可以有效地用于评估微数据中的隐私权。

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