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ARUBA: A Risk-Utility-Based Algorithm for Data Disclosure

机译:Aruba:一种用于数据披露的风险实用算法

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Dealing with sensitive data has been the focus of much of recent research. On one hand data disclosure may incur some risk due to security breaches, but on the other hand data sharing has many advantages. For example, revealing customer transactions at a grocery store may be beneficial when studying purchasing patterns and market demand. However, a potential misuse of the revealed information may be harmful due to privacy violations. In this paper we study the tradeoff between data disclosure and data retention. Specifically, we address the problem of minimizing the risk of data disclosure while maintaining its utility above a certain acceptable threshold. We formulate the problem as a discrete optimization problem and leverage the special monotonicity characteristics for both risk and utility to construct an efficient algorithm to solve it. Such an algorithm determines the optimal transformations that need to be performed on the microdata before it gets released. These optimal transformations take into account both the risk associated with data disclosure and the benefit of it (referred to as utility). Through extensive experimental studies we compare the performance of our proposed algorithm with other date disclosure algorithms in the literature in terms of risk, utility, and time. We show that our proposed framework outperforms other techniques for sensitive data disclosure.
机译:处理敏感数据一直是最近研究的重点。在一方面,数据披露可能由于安全漏洞而产生的一些风险,但另一方面,数据共享具有许多优点。例如,在研究购买模式和市场需求时,在杂货店揭示杂货店的客户交易可能是有益的。但是,由于隐私违规行为,潜在的滥用可能有害。在本文中,我们研究了数据披露与数据保留之间的权衡。具体地,我们解决了最小化数据披露风险的问题,同时保持其实用性高于某个可接受的阈值。我们将问题与离散优化问题一起制定,并利用风险和实用程序的特殊单调性特征来构建有效的算法来解决它。这样的算法确定在释放之前需要在Microdata上执行的最佳变换。这些最佳变换考虑了与数据披露相关的风险以及它的益处(称为实用程序)。通过广泛的实验研究,我们在风险,效用和时间方面将我们提出的算法与文献中的其他日期披露算法进行比较。我们表明我们所提出的框架优于敏感数据披露的其他技术。

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