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On the Evaluation of the Privacy Breach in Disassociated Set-valued Datasets

机译:关于脱离定型数据集中隐私违约的评估

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Data anonymization is gaining much attention these days as it provides the fundamental requirements to safely outsource datasets containing identifying information. While some techniques add noise to protect privacy others use generalization to hide the link between sensitive and non-sensitive information or separate the dataset into clusters to gain more utility. In the latter, often referred to as bucketization, data values are kept intact, only the link is hidden to maximize the utility. In this paper, we showcase the limits of disassociation, a bucketization technique that divides a set-valued dataset into k~m-anonymous clusters. We demonstrate that a privacy breach might occur if the disassociated dataset is subject to a cover problem. We finally evaluate the privacy breach using the quantitative privacy breach detection algorithm on real disassociated datasets.
机译:如今,数据匿名化正在赢得很多关注,因为它提供了安全地外包包含识别信息的数据集的基本要求。虽然某些技术添加了噪声以保护隐私其他人使用概括以隐藏敏感和非敏感信息之间的链接,或将数据集分为群集以获得更多实用程序。在后者中,通常被称为托管,数据值保持完整,只隐藏了链接以最大化实用程序。在本文中,我们展示了解除分离的限制,一种将设定值数​​据集分成k〜M-匿名集群的铲斗化技术。我们证明如果解除关联的数据集受封面问题,可能会发生隐私漏洞。我们最终使用实际解除数据集上的定量隐私漏洞检测算法评估隐私违规。

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