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An efficient hash-based algorithm for minimal k-anonymity

机译:一种高效的基于散列的算法,用于最小化k匿名性

摘要

A number of organizations publish microdata for purposes such as public health and demographic research. Although attributes of microdata that clearly identify individuals, such as name and medical care card number, are generally removed, these databases can sometimes be joined with other public databases on attributes such as Zip code, Gender and Age to re- identify individuals who were supposed to remainudanonymous. 'Linking' attacks are made easier by theudavailability of other complementary databases over the Internet.ududk-anonymity is a technique that prevents 'linking' attacks by generalizing and/or suppressing portions of the released microdata so that no individual can be uniquely distinguished from a group of size k.udIn this paper, we investigate a practical model of k-udanonymity, called full-domain generalization. We examine the issue of computing minimal k-anonymous table based on the definition of minimality described by Samarati. We introduce the hash-based technique previously used in mining associate rules and present an efficient hash-based algorithm to find the minimal k-anonymous table, which improves the previous binary search algorithm first proposed by Samarati.
机译:许多组织出于公共卫生和人口统计研究等目的发布微数据。尽管通常会删除可清楚识别个人的微数据属性(例如姓名和医疗卡号),但有时这些数据库可以与其他公共数据库(例如邮政编码,性别和年龄)一起加入,以重新识别被认为是个人的个人保持 udanonymous。 ud udk-匿名性是一种技术,可通过泛化和/或抑制部分已释放的微数据来防止“链接”攻击,从而使任何人都无法通过它来简化“链接”攻击。在本文中,我们研究了一种实用的k- udanonymity模型,称为全域泛化。我们根据Samarati描述的极小定义来研究计算极小k匿名表的问题。我们介绍了先前用于挖掘关联规则的基于哈希的技术,并提出了一种有效的基于哈希的算法来查找最小k-匿名表,从而改进了Samarati最初提出的先前的二进制搜索算法。

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