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Partial Domain Theories for Privacy

机译:部分域名理论为隐私理论

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摘要

Generalization and Suppression are two of the most used techniques to achieve k-anonymity. However, the generalization concept is also used in machine learning to obtain domain models useful for the classification task, and the suppression is the way to achieve such generalization. In this paper we want to address the anonymization of data preserving the classification task. What we propose is to use machine learning methods to obtain partial domain theories formed by partial descriptions of classes. Differently than in machine learning, we impose that such descriptions be as specific as possible, i.e., formed by the maximum number of attributes. This is achieved by suppressing some values of some records. In our method, we suppress only a particular value of an attribute in only a subset of records, that is, we use local suppression. This avoids one of the problems of global suppression that is the loss of more information than necessary.
机译:泛化和抑制是实现k-匿名的最常用技术的两个。然而,泛化概念也用于机器学习,以获得对分类任务有用的域模型,抑制是实现这种概括的方法。在本文中,我们希望解决保留分类任务的数据的匿名化。我们建议的是使用机器学习方法来获得通过课程描述形成的部分领域理论。不同于在机器学习中,我们强加这种描述尽可能具体,即,由最大属性数形成。这是通过抑制一些记录的一些值来实现的。在我们的方法中,我们只抑制了仅在记录子集中的属性的特定值,即我们使用本地抑制。这避免了全局抑制问题之一,这是比必要的更多信息的丢失。

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