匿名:风险与现实

A. Basu, Toru Nakamura, Seira Hidano, S. Kiyomoto
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引用次数: 16

摘要

很多时候,包含私有和敏感信息的数据集对第三方数据挖掘很有用。为了防止个人信息被识别,数据所有者使用保护隐私的数据发布技术发布这些数据。一种著名的技术——k-匿名——建议基于准标识符对记录进行分组,这样组中的准标识符与组中的任何其他标识符具有完全相同的值。这个过程将基于准标识符重新识别记录的最坏情况概率降低到1/k。最优k-匿名问题是np困难问题。根据所使用的k-匿名方法和攻击者已知的准标识符的数量,重新识别的概率可能低于最坏情况的保证。我们将风险量化为重新识别的概率,并提出了一种机制来计算关于获得准标识符知识的成本的经验风险,使用具有k-匿名保证的真实数据集。此外,我们表明k-匿名可能是有害的,因为除了准标识符之外的其他属性的知识可以提高重新标识的概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
k-anonymity: Risks and the Reality
Many a time, datasets containing private and sensitive information are useful for third-party data mining. To prevent identification of personal information, data owners release such data using privacy-preserving data publishing techniques. One well-known technique - k-anonymity - proposes that the records be grouped based on quasi-identifiers such that quasi-identifiers in a group have exactly the same values as any other in the same group. This process reduces the worst-case probability of re-identification of the records based on the quasi identifiers to 1/k. The problem of optimal k-anonymisation is NP-hard. Depending on the k-anonymisation method used and the number of quasi identifiers known to the attacker, the probability of re-identification could be lower than the worst-case guarantee. We quantify risk as the probability of re-identification and propose a mechanism to compute the empirical risk with respect to the cost of acquiring the knowledge about quasi-identifiers, using an real-world dataset released with some k-anonymity guarantee. In addition, we show that k-anonymity can be harmful because the knowledge of additional attributes other than quasi-identifiers can raise the probability of re-identification.
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