多级隐私保护k -匿名

J. Weng, Po-Wen Chi
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引用次数: 1

摘要

k-匿名是一个众所周知的隐私定义,它保证发布的数据集中的任何人都不能与至少k-1个其他个人区分开来。在保护模型中,记录通过泛化或抑制的方式匿名化,k为固定值。因此,每条记录在发布的数据集中具有相同的匿名级别。然而,不同的人或物品通常有不一致的隐私要求。一些记录需要额外的保护,而另一些记录需要相对较低的隐私约束。本文提出了一种基于k-匿名的高级保护模型——多级隐私保护k-匿名,该模型将记录划分为不同的组,并要求每组满足各自的隐私要求。此外,我们还提出了一种实用的算法,利用聚类技术来保证这一特性。在真实数据集上的评估证实,所提出的方法在设置隐私参数方面具有更大的灵活性,并且比传统的k-匿名提供更高的数据效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Level Privacy Preserving K-Anonymity
k-anonymity is a well-known definition of privacy, which guarantees that any person in the released dataset cannot be distinguished from at least k-1 other individuals. In the protection model, the records are anonymized through generalization or suppression with a fixed value of k. Accordingly, each record has the same level of anonymity in the published dataset. However, different people or items usually have inconsistent privacy requirements. Some records need extra protection while others require a relatively low level of privacy constraint. In this paper, we propose Multi-Level Privacy Preserving K-Anonymity, an advanced protection model based on k-anonymity, which divides records into different groups and requires each group to satisfy its respective privacy requirement. Moreover, we present a practical algorithm using clustering techniques to ensure the property. The evaluation on a real-world dataset confirms that the proposed method has the advantages of offering more flexibility in setting privacy parameters and providing higher data utility than traditional k-anonymity.
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