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(l1, ..., lq)-diversity for Anonymizing Sensitive Quasi-Identifiers

机译:(l1,...,lq) - 用于匿名敏感的准标识符的大学

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摘要

A lot of studies of privacy-preserving data mining have been proposed. Most of them assume that they can separate quasi-identifiers (QIDs) from sensitive attributes. For instance, they assume that address, job, and age are QIDs but not sensitive attributes, and that a disease name is a sensitive attribute but not a QID. However, all of these attributes can have features that are both sensitive attributes and QIDs depending on the persons in practice. In this paper, we refer to these attributes as sensitive QIDs, and we propose a novel privacy definition (l1, ..., lq)-diversity and a method that can treat sensitive QIDs. Our method is composed of two algorithms: an anonymization algorithm and a reconstruction algorithm. The anonymization algorithm, which is conducted by data holders, is simple but effective, whereas the reconstruction algorithm, which is conducted by data users, can be conducted according to each data user's objective. Our proposed method is experimentally evaluated using real datasets.
机译:提出了许多对隐私数据挖掘的研究。其中大多数人假设它们可以将准识别器(Qids)分开从敏感属性。例如,它们假设地址,作业和年龄是QIDS但不敏感的属性,并且疾病名称是一个敏感的属性,但不是一个Qid。但是,所有这些属性都可以具有敏感属性和QID的功能,具体取决于实际人员。在本文中,我们将这些属性的敏感QIDS,我们提出了一种新的隐私定义(L1,...,LQ)-diversity并且可以治疗敏感QIDS的方法。我们的方法由两种算法组成:一种匿名化算法和重建算法。由数据保持器进行的匿名化算法简单但有效,而通过数据用户进行的重建算法可以根据每个数据用户的目标进行。我们所提出的方法是使用真实数据集进行实验评估的。

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