Age-Dependent Differential Privacy

Meng Zhang, Ermin Wei, R. Berry, Jianwei Huang
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引用次数: 3

Abstract

The proliferation of real-time applications has motivated extensive research on analyzing and optimizing data freshness in the context of age of information. However, classical frameworks of privacy (e.g., differential privacy (DP)) have overlooked the impact of data freshness on privacy guarantees, and hence may lead to unnecessary accuracy loss when trying to achieve meaningful privacy guarantees in time-varying databases. In this work, we introduce age-dependent DP, taking into account the underlying stochastic nature of a time-varying database. In this new framework, we establish a connection between classical DP and age-dependent DP, based on which we characterize the impact of data staleness and temporal correlation on privacy guarantees. Our characterization demonstrates that aging, i.e., using stale data inputs and/or postponing the release of outputs, can be a new strategy to protect data privacy in addition to noise injection in the traditional DP framework. Furthermore, to generalize our results to a multi-query scenario, we present a sequential composition result for age-dependent DP. We then characterize and achieve the optimal tradeoffs between privacy risk and utility. Finally, case studies show that, when achieving a target of an arbitrarily small privacy risk in a single-query case, the approach of combining aging and noise injection can achieve a bounded accuracy loss, whereas using noise injection only (as in the DP benchmark) will lead to an unbounded accuracy loss.
年龄差异隐私
实时应用的激增激发了在信息时代背景下分析和优化数据新鲜度的广泛研究。然而,经典的隐私框架(如差分隐私(DP))忽略了数据新鲜度对隐私保证的影响,因此在时变数据库中试图实现有意义的隐私保证时,可能会导致不必要的准确性损失。在这项工作中,我们引入了年龄相关的DP,考虑到时变数据库的潜在随机性质。在这个新框架中,我们建立了经典数据保护和年龄相关数据保护之间的联系,并在此基础上描述了数据过时性和时间相关性对隐私保障的影响。我们的特征表明,老化,即使用陈旧的数据输入和/或推迟输出的释放,除了传统DP框架中的噪声注入之外,还可以成为保护数据隐私的新策略。此外,为了将我们的结果推广到多查询场景,我们提出了年龄相关DP的顺序组合结果。然后,我们描述并实现隐私风险和效用之间的最佳权衡。最后,案例研究表明,当在单个查询情况下实现任意小隐私风险的目标时,结合老化和噪声注入的方法可以实现有界的精度损失,而仅使用噪声注入(如DP基准)将导致无界的精度损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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