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(p+, α)-sensitive k-anonymity: a new enhanced privacy protection model

机译:(p +,α)敏感的k匿名性:新的增强型隐私保护模型

摘要

Publishing data for analysis from a microdata table containing sensitive attributes, while maintaining individual privacy, is a problem of increasing significance today. The k-anonymity model was proposed for privacy preserving data publication. While focusing on identity disclosure, k-anonymity model fails to protect attribute disclosure to some extent. Many efforts are made to enhance the kanonymity model recently. In this paper, we propose a new privacy protection model called (p+, α)-sensitive kanonymity, where sensitive attributes are first partitioned into categories by their sensitivity, and then the categories that sensitive attributes belong to are published. Different from previous enhanced k-anonymity models, this model allows us to release a lot more information without compromising privacy. We also provide testing and heuristic generating algorithms. Experimental results show that our introduced model could significantly reduce the privacy breach.ud
机译:从包含敏感属性的微数据表中发布数据进行分析,同时又保持个人隐私,是当今日益重要的问题。提出了k-匿名模型用于隐私保护数据发布。当着重于身份公开时,k-匿名模型在某种程度上不能保护属性公开。最近,人们进行了很多努力来增强同名性模型。在本文中,我们提出了一种新的隐私保护模型,称为(p +,α)敏感的匿名性,其中首先根据敏感属性的敏感度将敏感属性划分为类别,然后发布敏感属性所属的类别。与以前的增强的k-匿名模型不同,此模型使我们可以发布更多的信息而不会损害隐私。我们还提供测试和启发式生成算法。实验结果表明,我们引入的模型可以显着减少隐私泄露。 ud

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