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CTS-DP: Publishing correlated time-series data via differential privacy

机译:CTS-DP:通过差分隐私发布相关的时间序列数据

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Analyzing and mining time-series data by taking advantage of the correlation between the data values can provide outstanding beneficial. But data owners may be unwilling to publish the data's true values due to privacy considerations. Recently, researchers have begun to leverage differential privacy to address this challenge. However, the Laplace noise series used in the current state-of-the-art approaches has a drawback in that it is independent and identically distributed. An adversary can remove the independent noise from the correlated time-series by utilizing a refinement method (e.g., filtering), resulting in a lesser than expected effective degree of privacy. To remedy this problem, we propose an effective correlated time-series data publication solution based on differential privacy by enforcing Series-Indistinguishability and designing a correlated Laplace mechanism. Based on the concept of indistinguishability from the unconditional security definition, Series-Indistinguishability guarantees that the correlation between the noise and original series is indistinguishable to an adversary. Furthermore, instead of using an independent Laplace mechanism, a correlated Laplace noise series is produced using four Gauss white noise series passed through a specific linear system, to satisfy Series-Indistinguishability. Experimental results demonstrate that our solution outperforms the state-of-the-art differential privacy mechanisms in terms of security and mean absolute error for large quantities of queries. (C) 2017 Elsevier B.V. All rights reserved.
机译:通过利用数据值之间的相关性来分析和挖掘时间序列数据可以提供突出的好处。但是出于隐私考虑,数据所有者可能不愿意发布数据的真实值。最近,研究人员已开始利用差异隐私来应对这一挑战。但是,当前的最新方法中使用的拉普拉斯噪声序列具有一个缺点,即它是独立的并且分布均匀。对手可以通过利用改进方法(例如,滤波)从相关的时间序列中去除独立噪声,从而导致小于预期的有效隐私度。为了解决这个问题,我们通过执行序列不可区分性并设计相关的拉普拉斯机制,提出了一种基于差分隐私的有效的相关时间序列数据发布解决方案。基于与无条件安全性定义的不可区分性的概念,序列不可区分性可确保噪声与原始序列之间的相关性对于对手来说是不可区分的。此外,不是使用独立的拉普拉斯机制,而是使用经过特定线性系统的四个高斯白噪声序列来生成相关的拉普拉斯噪声序列,以满足串联不可分辨性。实验结果表明,对于大量查询,我们的解决方案在安全性和平均绝对错误方面均优于最新的差异隐私机制。 (C)2017 Elsevier B.V.保留所有权利。

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