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K-jump: A strategy to design publicly-known algorithms for privacy preserving micro-data disclosure

机译:K-jump:一种设计用于保护隐私的微数据公开的公知算法的策略

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摘要

Data owners are expected to disclose micro-data for research, analysis, and various other purposes. In disclosing micro-data with sensitive attributes, the goal is usually two fold. First, the data utility of disclosed data should be maximized for analysis purposes. Second, the private information contained in such data must be to an acceptable level. Typically, a disclosure algorithm evaluates potential generalization functions in a predetermined order, and then discloses the first generalization that satisfies the desired privacy property. Recent studies show that adversarial inferences using knowledge about such disclosure algorithms can usually render the algorithm unsafe. In this paper, we show that an existing unsafe algorithm can be transformed into a large family of safe algorithms, namely, k-jump algorithms. We then prove that the data utility of different k-jump algorithms is generally incomparable. The comparison of data utility is independent of utility measures and syntactic privacy models. Finally, we analyze the computational complexity of k-jump algorithms, and confirm the necessity of safe algorithms even when a secret choice is made among algorithms.
机译:数据所有者应披露微数据,以用于研究,分析和其他各种目的。在公开具有敏感属性的微数据时,目标通常是两倍。首先,出于分析目的,应最大化公开数据的数据实用性。其次,此类数据中包含的私人信息必须达到可接受的水平。通常,公开算法以预定顺序评估潜在的概括功能,然后公开满足所需隐私属性的第一概括。最近的研究表明,使用有关此类公开算法的知识进行对抗性推理通常会使该算法不安全。在本文中,我们证明了现有的不安全算法可以转化为一大类安全算法,即k-jump算法。然后,我们证明了不同k跳跃算法的数据实用性通常是无法比拟的。数据效用的比较独立于效用度量和句法隐私模型。最后,我们分析了k跳算法的计算复杂度,并确认了安全算法的必要性,即使在算法之间进行秘密选择时也是如此。

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