差异隐私中的遗忘机制:实验、猜想和开放性问题

Chien-Lun Chen, R. Pal, L. Golubchik
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引用次数: 8

摘要

差分隐私(DP)是一个框架,用于量化统计数据库中个人隐私的保留程度,同时发布有关数据库的有用汇总信息。在这项工作中,我们的目的是进行探索性研究,通过考虑(i)查询敏感性,(ii)查询侧信息,以及(iii)纵向和共谋攻击的存在,了解与差异隐私中噪声产生机制(NGMs)最优性相关的问题。我们的研究结果/观察结果有三个重要目的:(i)为我们提供关于在非贝叶斯和贝叶斯用户设置中对标量查询进行适当(在隐私效用权衡的意义上)无关的NGM选择的猜想,(ii)为在宽松假设集上测试NGM的最优性时的现有理论结果提供支持证据和反例。(ii)为理论界带来一系列有趣的开放问题,涉及可证明的最优遗忘微分隐私机制的设计和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Oblivious Mechanisms in Differential Privacy: Experiments, Conjectures, and Open Questions
Differential privacy (DP) is a framework to quantify to what extent individual privacy in a statistical database is preserved while releasing useful aggregate information about the database. In this work, we aim an exploratory study to understand questions related to the optimality of noise generation mechanisms (NGMs) in differential privacy by taking into consideration the (i) query sensitivity, (ii) query side information, and (iii) the presence of longitudinal and collusion attacks. The results/observations from our study serve three important purposes: (i) provide us with conjectures on appropriate (in the sense of privacy-utility tradeoffs) oblivious NGM selection for scalar queries in both non-Bayesian as well as Bayesian user settings, (ii) provide supporting evidence and counterexamples to existing theory results on the optimality of NGMs when they are tested on a relaxed assumption set, and (ii) lead to a string of interesting open questions for the theory community in relation to the design and analysis of provably optimal oblivious differential privacy mechanisms.
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