An Anonymization Method Based on Tradeoff between Utility and Privacy for Data Publishing

P. Xiong, Tianqing Zhu
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引用次数: 7

Abstract

Privacy preserving is an important issue in data publishing. Many anonymization algorithms are available in meeting the privacy requirements of the privacy models such as k-anonymity, l-diversity and t-closeness. In this paper, we discuss the requirements that anonymized data should meet and propose a new data anonymization approach based on tradeoff between utility and privacy to resist probabilistic inference attacks. To evaluate the quality of anonymized results, a method of measuring the utility loss and privacy gain of anonymized data is brought out which can be used to find the optimal anonymization solution. The result of the experiments validates the availability of the approach.
一种基于实用性和隐私性权衡的数据发布匿名化方法
隐私保护是数据发布中的一个重要问题。为了满足隐私模型的隐私要求,有许多匿名化算法,如k-匿名、l-多样性和t-接近。本文讨论了匿名化数据应满足的要求,提出了一种基于效用与隐私权衡的数据匿名化方法,以抵抗概率推理攻击。为了评估匿名化结果的质量,提出了一种衡量匿名化数据的效用损失和隐私增益的方法,该方法可用于寻找最优匿名化解决方案。实验结果验证了该方法的有效性。
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