GN:一种基于泛化和噪声技术的隐私保护数据发布方法

Yeling Ma, Jiyi Wang, Jianmin Han, Lixia Wang
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引用次数: 0

摘要

泛化是实现k-匿名的常用技术。然而,当原始数据的分布不均匀时,泛化会对数据造成很大的扭曲,使得匿名数据的效用不高。为了解决这个问题,我们提出了一种GN方法,该方法通过在匿名化过程中添加噪声元组来限制泛化程度。我们还提出了一种基于GN方法的GN-自下而上算法来实现k-匿名。实验表明,与泛化方法相比,GN方法生成的匿名数据失真更小,分类精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GN: A privacy preserving data publishing method based on generalization and noise techniques
Generalization is a popular technique to realize k-anonymity. However, when the distribution of original data is uneven, generalization will distort the data greatly, which makes the anonymous data low utility. To address the problem, we propose a GN method, which limits the degree of generalization by adding noise tuples during anonymization. We also propose a GN-Bottom-up algorithm to achieve k-anonymity based on GN method. Experiments show that the GN method can generate anonymous data with less distortion and higher classification accuracy than generalization method.
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