统计数据隐私:隐私与实用之歌

IF 7.4 1区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Annual Review of Statistics and Its Application Pub Date : 2023-03-10 DOI:10.1146/annurev-statistics-033121-112921
Aleksandra Slavković, Jeremy Seeman
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引用次数: 5

摘要

为了量化对开放数据共享日益增长的需求和对敏感信息披露的担忧之间的权衡,统计数据隐私(SDP)方法分析了基于机密数据的数据发布机制。目前存在两种主要框架:统计披露控制(SDC)和最近的差异隐私(DP)。尽管框架存在差异,但SDC和DP的核心都存在相同的统计问题。对于推理问题,我们可以设计最优的释放机制和相关的估计器,满足披露风险度量的界限,或者我们可以调整现有的净化输出来创建新的统计有效和最优的估计器。无论设计或调整如何,在评估风险和效用时,机制输出的有效统计推断需要不确定性量化,以解释引入偏差和/或方差的消毒机制的影响。在这篇综述中,我们讨论了SDC和DP共同的统计基础,重点介绍了SDP的主要发展,并提出了私人推理中令人兴奋的开放研究问题。
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Statistical Data Privacy: A Song of Privacy and Utility
To quantify trade-offs between increasing demand for open data sharing and concerns about sensitive information disclosure, statistical data privacy (SDP) methodology analyzes data release mechanisms that sanitize outputs based on confidential data. Two dominant frameworks exist: statistical disclosure control (SDC) and the more recent differential privacy (DP). Despite framing differences, both SDC and DP share the same statistical problems at their core. For inference problems, either we may design optimal release mechanisms and associated estimators that satisfy bounds on disclosure risk measures, or we may adjust existing sanitized output to create new statistically valid and optimal estimators. Regardless of design or adjustment, in evaluating risk and utility, valid statistical inferences from mechanism outputs require uncertainty quantification that accounts for the effect of the sanitization mechanism that introduces bias and/or variance. In this review, we discuss the statistical foundations common to both SDC and DP, highlight major developments in SDP, and present exciting open research problems in private inference.
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来源期刊
Annual Review of Statistics and Its Application
Annual Review of Statistics and Its Application MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-STATISTICS & PROBABILITY
CiteScore
13.40
自引率
1.30%
发文量
29
期刊介绍: The Annual Review of Statistics and Its Application publishes comprehensive review articles focusing on methodological advancements in statistics and the utilization of computational tools facilitating these advancements. It is abstracted and indexed in Scopus, Science Citation Index Expanded, and Inspec.
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