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k-Anonymization with Minimal Loss of Information

机译:具有最小信息损失的k匿名化

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摘要

The technique of k-anonymization allows the releasing of databases that contain personal information while ensuring some degree of individual privacy. Anonymization is usually performed by generalizing database entries. We formally study the concept of generalization, and propose three information-theoretic measures for capturing the amount of information that is lost during the anonymization process. The proposed measures are more general and more accurate than those that were proposed by Meyerson and Williams [23] and Aggarwal et al. [1]. We study the problem of achieving k-anonymity with minimal loss of information. We prove that it is NP-hard and study polynomial approximations for the optimal solution. Our first algorithm gives an approximation guarantee of O(ln k) for two of our measures as well as for the previously studied measures. This improves the best-known O(k)-approximation in [1]. While the previous approximation algorithms relied on the graph representation framework, our algorithm relies on a novel hypergraph representation that enables the improvement in the approximation ratio from O(k) to O(ln k). As the running time of the algorithm is O(n^{2k}), we also show how to adapt the algorithm in [1] in order to obtain an O(k)-approximation algorithm that is polynomial in both n and k.
机译:k匿名化技术允许释放包含个人信息的数据库,同时确保一定程度的个人隐私。匿名化通常通过概括数据库条目来执行。我们正式研究泛化的概念,并提出了三种信息理论方法来捕获匿名过程中丢失的信息量。与Meyerson和Williams [23]和Aggarwal等人所提出的措施相比,所提出的措施更为通用和准确。 [1]。我们研究了以最小的信息损失实现k-匿名性的问题。我们证明它是NP难的,并研究了多项式逼近的最优解。我们的第一个算法为我们的两个量度以及先前研究的量度提供了O(ln k)的近似保证。这改善了[1]中最著名的O(k)逼近。尽管先前的近似算法依赖于图表示框架,但我们的算法依赖于一种新颖的超图表示,该超图表示能够提高从O(k)到O(ln k)的逼近比。由于该算法的运行时间为O(n ^ {2k}),因此我们还将展示如何在[1]中对算法进行调整,以获取在n和k均为多项式的O(k)逼近算法。

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