减少二次使用收集的个人信息的k-匿名化中的信息损失

Kunihiko Harada, Yoshinori Sato, Yumiko Togashi
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引用次数: 5

摘要

最近收集了大量的信息,并且将其用于二次利用的需求正在扩大。这是因为它包含了很多有用的知识。个人信息的二次使用总会涉及到隐私问题。k-匿名化是一种工具,使我们能够以隐私保护的方式发布个人信息。在经典的k-匿名化中,总是需要被称为泛化层次结构的侧信息。此外,k-匿名数据的质量一直是该领域的中心问题,因为信息丢失是匿名化的固有特征。本文提出了一种根据输入信息自动构建泛化层次结构的新方案。该方案不仅减少了准备侧信息的操作成本,而且提高了k-匿名化结果的质量。实验表明,自动构建层次结构的k-匿名化比完全二叉树(作为经典使用的层次结构引入)少牺牲38%的数据(以信息熵衡量)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing Amount of Information Loss in k-Anonymization for Secondary Use of Collected Personal Information
A lot of information has recently been collected and the need to put it to secondary use is expanding. This is because a lot of useful knowledge is contained in it. There are always privacy concerns with the secondary use of personal information. k-anonymization is a tool that enables us to release personal information in a manner that is privacy-protected. In classical k-anonymization, side information, which is termed generalization hierarchies, is always needed. In addition, the quality of k-anonymized data has always been a central problem in the area because information loss is an inherent feature of anonymization. This paper proposes a new scheme in which generalization hierarchies are automatically constructed by input information. This scheme not only contributes to reducing the cost of operations for preparing side information, but also to increasing the quality of k-anonymization results. Experiments have demonstrated that k-anonymization with automatically constructed hierarchies sacrifices 38% less data (measured by information entropy) than that with complete binary trees (introduced as classically-used hierarchies).
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