Equi-Width Data Swapping for Private Data Publication

Yidong Li, Hong Shen
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引用次数: 3

Abstract

Data Swapping is a popular value-invariant data perturbation technique. The quality of a data swapping method is measured by how well it preserves data privacy and data utility. As swapping data globally is computationally impractical, to guarantee its performance in these metrics appropriate, localization schemes are often conducted in advance. Equi-depth partitioning is preferred by most of the existing data perturbation techniques as it provides uniform privacy protection for each data tuple. However, this method performs ineffectively for two types of applications: one is to maintain statistics based on equi-width partitioning, such as the multivariate histogram with equal bin width, and the other is to preserve parametric statistics, such as covariance, in the context of sparse data with non-uniform distribution. As a natural solution for the above application, this paper explores the possibility of using data swapping with equi-width partitioning for private data publication, which has been little used in data perturbation due to the difficulty of preserving data privacy. With extensive theoretical analysis and experimental results, we show that, Equi-Width Swapping (EWS)can achieve a similar performance in privacy preservation to that of Equi-Depth Swapping (EDS) if the number of partitions is sufficiently large (e. g. &get;=sqrt(N), where N is the size of dataset). Our experimental results in both synthetic and real-world data validate our theoretical analysis.
私有数据发布的等宽数据交换
数据交换是一种流行的值不变数据扰动技术。数据交换方法的质量是通过它在多大程度上保护数据隐私和数据效用来衡量的。由于全局交换数据在计算上是不切实际的,为了保证其在这些指标中的性能,通常需要提前执行本地化方案。等深度分区是大多数现有数据扰动技术的首选,因为它为每个数据元组提供了统一的隐私保护。然而,该方法在两类应用中表现不佳:一类是基于等宽划分的统计量保持,如具有等bin宽度的多元直方图;另一类是在非均匀分布的稀疏数据环境下保持参数统计量,如协方差。作为上述应用的一种自然解决方案,本文探索了使用具有等宽分区的数据交换进行私有数据发布的可能性,这种方法由于难以保护数据隐私而在数据扰动中很少使用。通过广泛的理论分析和实验结果,我们表明,如果分区数量足够大(例如&get;=sqrt(N),其中N是数据集的大小),等宽交换(EWS)在隐私保护方面可以达到与等深交换(EDS)相似的性能。我们在合成数据和实际数据中的实验结果验证了我们的理论分析。
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