Attribute Compartmentation and Greedy UCC Discovery for High-Dimensional Data Anonymization

N. Podlesny, Anne Kayem, C. Meinel
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引用次数: 4

Abstract

High-dimensional data is particularly useful for data analytics research. In the healthcare domain, for instance, high-dimensional data analytics has been used successfully for drug discovery. Yet, in order to adhere to privacy legislation, data analytics service providers must guarantee anonymity for data owners. In the context of high-dimensional data, ensuring privacy is challenging because increased data dimensionality must be matched by an exponential growth in the size of the data to avoid sparse datasets. Syntactically, anonymising sparse datasets with methods that rely of statistical significance, makes obtaining sound and reliable results, a challenge. As such, strong privacy is only achievable at the cost of high information loss, rendering the data unusable for data analytics. In this paper, we make two contributions to addressing this problem from both the privacy and information loss perspectives. First, we show that by identifying dependencies between attribute subsets we can eliminate privacy violating attributes from the anonymised dataset. Second, to minimise information loss, we employ a greedy search algorithm to determine and eliminate maximal partial unique attribute combinations. Thus, one only needs to find the minimal set of identifying attributes to prevent re-identification. Experiments on a health cloud based on the SAP HANA platform using a semi-synthetic medical history dataset comprised of 109 attributes, demonstrate the effectiveness of our approach.
高维数据匿名化的属性划分与贪婪UCC发现
高维数据对于数据分析研究特别有用。例如,在医疗保健领域,高维数据分析已成功用于药物发现。然而,为了遵守隐私立法,数据分析服务提供商必须保证数据所有者的匿名性。在高维数据的上下文中,确保隐私是具有挑战性的,因为增加的数据维数必须与数据大小的指数增长相匹配,以避免数据集稀疏。在语法上,使用依赖统计显著性的方法对稀疏数据集进行匿名化,使得获得健全可靠的结果成为一个挑战。因此,只有以高信息丢失为代价才能实现强隐私,从而使数据无法用于数据分析。在本文中,我们从隐私和信息丢失的角度来解决这个问题。首先,我们表明,通过识别属性子集之间的依赖关系,我们可以从匿名数据集中消除侵犯隐私的属性。其次,为了最小化信息损失,我们采用贪婪搜索算法来确定和消除最大的部分唯一属性组合。因此,我们只需要找到标识属性的最小集合来防止重复标识。在基于SAP HANA平台的健康云上,使用由109个属性组成的半合成病史数据集进行了实验,证明了我们的方法的有效性。
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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