向匿名数据集注入实用程序

Daniel Kifer, J. Gehrke
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引用次数: 329

摘要

在数据发布中限制披露需要在隐私和实用之间取得谨慎的平衡。关于个体的信息不能泄露,但是数据集对于研究群体的特征仍然是有用的。诸如k-匿名和l-多样性之类的隐私要求旨在阻止试图在数据中识别个人并发现其敏感信息的攻击。另一方面,这些数据的效用还没有得到很好的研究。在本文中,我们将讨论当前衡量效用的启发式方法的缺点,我们将介绍一种正式的方法来衡量效用。有了这个实用指标,我们将展示如何向k-anonymous和l-diverse表中注入额外的信息。该信息具有直观的语义意义,它增加了原始k-匿名和l-多样性框架所不能实现的效用,并且保持了k-匿名和l-多样性的隐私保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Injecting utility into anonymized datasets
Limiting disclosure in data publishing requires a careful balance between privacy and utility. Information about individuals must not be revealed, but a dataset should still be useful for studying the characteristics of a population. Privacy requirements such as k-anonymity and l-diversity are designed to thwart attacks that attempt to identify individuals in the data and to discover their sensitive information. On the other hand, the utility of such data has not been well-studied.In this paper we will discuss the shortcomings of current heuristic approaches to measuring utility and we will introduce a formal approach to measuring utility. Armed with this utility metric, we will show how to inject additional information into k-anonymous and l-diverse tables. This information has an intuitive semantic meaning, it increases the utility beyond what is possible in the original k-anonymity and l-diversity frameworks, and it maintains the privacy guarantees of k-anonymity and l-diversity.
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