分布不变微分隐私

IF 9.9 3区 经济学 Q1 ECONOMICS Journal of Econometrics Pub Date : 2023-08-01 DOI:10.1016/j.jeconom.2022.05.004
Xuan Bi , Xiaotong Shen
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引用次数: 7

摘要

差别隐私正在成为保护公开共享数据隐私的黄金标准。它已被广泛应用于社会科学、数据科学、公共卫生、信息技术和美国十年一次的人口普查。然而,为了保证差异隐私,现有方法不可避免地会改变原始数据分析的结论,因为私有化往往会改变样本分布。这种现象被称为隐私保护和统计准确性之间的权衡。在这项工作中,我们通过开发一种分布不变私有化(DIP)方法来缓解这种权衡,以协调高统计准确性和严格的差分隐私。因此,任何下游统计或机器学习任务产生的结论基本上与使用原始数据相同。在数字上,在同样严格的隐私保护下,DIP在广泛的模拟研究和现实世界基准中实现了卓越的统计准确性。
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Distribution-invariant differential privacy

Differential privacy is becoming one gold standard for protecting the privacy of publicly shared data. It has been widely used in social science, data science, public health, information technology, and the U.S. decennial census. Nevertheless, to guarantee differential privacy, existing methods may unavoidably alter the conclusion of original data analysis, as privatization often changes the sample distribution. This phenomenon is known as the trade-off between privacy protection and statistical accuracy. In this work, we mitigate this trade-off by developing a distribution-invariant privatization (DIP) method to reconcile both high statistical accuracy and strict differential privacy. As a result, any downstream statistical or machine learning task yields essentially the same conclusion as if one used the original data. Numerically, under the same strictness of privacy protection, DIP achieves superior statistical accuracy in in a wide range of simulation studies and real-world benchmarks.

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来源期刊
Journal of Econometrics
Journal of Econometrics 社会科学-数学跨学科应用
CiteScore
8.60
自引率
1.60%
发文量
220
审稿时长
3-8 weeks
期刊介绍: The Journal of Econometrics serves as an outlet for important, high quality, new research in both theoretical and applied econometrics. The scope of the Journal includes papers dealing with identification, estimation, testing, decision, and prediction issues encountered in economic research. Classical Bayesian statistics, and machine learning methods, are decidedly within the range of the Journal''s interests. The Annals of Econometrics is a supplement to the Journal of Econometrics.
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