Attribute selection in multivariate microaggregation

Jordi Nin, Javier Herranz, V. Torra
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引用次数: 8

Abstract

Microaggregation is one of the most employed microdata protection methods. The idea is to build clusters of at least k original records, and then replace them with the centroid of the cluster. When the number of attributes of the dataset is large, a common practice is to split the dataset into smaller blocks of attributes. Microaggregation is successively and independently applied to each block. In this way, the effect of the noise introduced by microaggregation is reduced, but at the cost of losing the k-anonymity property. The goal of this work is to show that, besides of the specific microaggregation method employed, the value of the parameter k, and the number of blocks in which the dataset is split, there exists another factor which can influence the quality of the microaggregation: the way in which the attributes are grouped to form the blocks. When correlated attributes are grouped in the same block, the statistical utility of the protected dataset is higher. In contrast, when correlated attributes are dispersed into different blocks, the achieved anonymity is higher, and, so, the disclosure risk is lower. We present quantitative evaluations of such statements based on different experiments on real datasets.
多元微聚合中的属性选择
微聚合是应用最广泛的微数据保护方法之一。这个想法是建立至少k个原始记录的集群,然后用集群的质心替换它们。当数据集的属性数量很大时,通常的做法是将数据集分成更小的属性块。微聚合依次独立地应用于每个块。通过这种方式,微聚集引入的噪声的影响降低了,但代价是失去了k-匿名性。这项工作的目标是表明,除了采用特定的微聚合方法、参数k的值和数据集被分割的块的数量之外,还有另一个因素可以影响微聚合的质量:属性分组形成块的方式。当将相关属性分组在同一块中时,受保护数据集的统计效用更高。相反,当相关属性分散到不同的区块时,实现的匿名性更高,因此披露风险更低。我们基于真实数据集上的不同实验,对这些陈述进行了定量评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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