Quantifying Differential Privacy under Temporal Correlations.

Yang Cao, Masatoshi Yoshikawa, Yonghui Xiao, Li Xiong
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引用次数: 95

Abstract

Differential Privacy (DP) has received increasing attention as a rigorous privacy framework. Many existing studies employ traditional DP mechanisms (e.g., the Laplace mechanism) as primitives, which assume that the data are independent, or that adversaries do not have knowledge of the data correlations. However, continuous generated data in the real world tend to be temporally correlated, and such correlations can be acquired by adversaries. In this paper, we investigate the potential privacy loss of a traditional DP mechanism under temporal correlations in the context of continuous data release. First, we model the temporal correlations using Markov model and analyze the privacy leakage of a DP mechanism when adversaries have knowledge of such temporal correlations. Our analysis reveals that the privacy loss of a DP mechanism may accumulate and increase over time. We call it temporal privacy leakage. Second, to measure such privacy loss, we design an efficient algorithm for calculating it in polynomial time. Although the temporal privacy leakage may increase over time, we also show that its supremum may exist in some cases. Third, to bound the privacy loss, we propose mechanisms that convert any existing DP mechanism into one against temporal privacy leakage. Experiments with synthetic data confirm that our approach is efficient and effective.

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时间相关下的差分隐私量化。
差分隐私(DP)作为一种严格的隐私框架受到越来越多的关注。许多现有的研究采用传统的DP机制(例如拉普拉斯机制)作为基元,假设数据是独立的,或者对手不知道数据的相关性。然而,在现实世界中,连续生成的数据往往是暂时相关的,而这种相关性可以被对手获取。在本文中,我们研究了在持续数据发布的背景下,在时间相关性下传统DP机制的潜在隐私损失。首先,我们使用马尔可夫模型对时间相关性进行建模,并分析了当对手知道这种时间相关性时DP机制的隐私泄漏。我们的分析表明,DP机制的隐私损失可能会随着时间的推移而累积和增加。我们称之为暂时隐私泄露。其次,为了测量这种隐私损失,我们设计了一个在多项式时间内计算隐私损失的有效算法。虽然时间隐私泄漏可能随着时间的推移而增加,但我们也表明,在某些情况下,它可能存在最大值。第三,为了约束隐私损失,我们提出了将现有的数据保护机制转换为防止暂时隐私泄露的机制。综合数据实验证实了该方法的有效性。
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