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An Enhanced K-Anonymity Model against Homogeneity Attack

机译:针对同质性攻击的增强型K-匿名模型

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k-anonymity is an important model in the field of privacy protection and it is an effective method to prevent privacy disclosure in micro-data release. However, it is ineffective for the attribute disclosure by the homogeneity attack. The existing models based on k-anonymity have solved this problem to a certain extent, but they did not distinguish the different values of the sensitive attribute, processed a series of unnecessary generalization and expanded the information loss when they protect the sensitive attribute. Based on k-anonymity, this paper proposed a model based on average leakage probability and probability difference of sensitive attribute value. It is not only an effective method to deal with the problem of attributes disclosure that k-anonymity cannot deal, but also to realize different levels of protection to the various sensitive attribute values. It has reduced the generalization to the data in the most possibility during the procedure and ensures the most effectiveness of quasi-identifier attributes. Greedy generalization algorithm based on the generalization information loss is also proposed in this paper. To choose the generalization attributes, the information loss is considered and the importance of generalization attribute to sensitive attribute is accounted as well. Comparison experiment and performance experiment are made to the proposed model. The experiment results show that the model is feasible.
机译:k-匿名性是隐私保护领域中的重要模型,并且是防止微数据发布中隐私泄露的有效方法。但是,对于同质攻击的属性公开是无效的。现有的基于k匿名的模型在一定程度上解决了这个问题,但是它们没有区分敏感属性的不同值,处理了一系列不必要的泛化,并且在保护敏感属性时扩大了信息丢失的范围。基于k匿名,提出了一种基于平均泄漏概率和敏感属性值的概率差的模型。它不仅是一种有效的方法,可以解决k-匿名性无法解决的属性公开问题,而且可以实现对各种敏感属性值的不同级别的保护。它在程序执行过程中极有可能将对数据的概括化为最小,并确保最有效的准标识符属性。本文还提出了一种基于泛化信息损失的贪婪泛化算法。选择泛化属性时,要考虑信息丢失,并考虑泛化属性对敏感属性的重要性。对该模型进行了对比实验和性能实验。实验结果表明该模型是可行的。

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