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T-Closeness Slicing: A New Privacy-Preserving Approach for Transactional Data Publishing

机译:T贴近度切片:交易数据发布的一种新的隐私保护方法

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摘要

Privacy-preserving data publishing has received much attention in recent years. Prior studies have developed various algorithms such as generalization, anatomy, and L-diversity slicing to protect individuals' privacy when transactional data are published for public use. These existing algorithms, however, all have certain limitations. For instance, generalization protects identity privacy well but loses a considerable amount of information. Anatomy prevents attribute disclosure and lowers information loss, but fails to protect membership privacy. The more recent probability L-diversity slicing algorithm overcomes some shortcomings of generalization and anatomy, but cannot shield data from more subtle types of attacks such as skewness attack and similarity attack. To meet the demand of data owners with high privacy-preserving requirement, this study develops a novel method named t-closeness slicing (TCS) to better protect transactional data against various attacks. The time complexity of TCS is log-linear, hence the algorithm scales well with large data. We conduct experiments using three transactional data sets and find that TCS not only effectively protects membership privacy, identity privacy, and attribute privacy, but also preserves better data utility than benchmarking algorithms.
机译:近年来,保护隐私的数据发布备受关注。先前的研究已经开发了各种算法,例如泛化,解剖和L多样性切片,以在交易数据发布供公众使用时保护个人隐私。但是,这些现有算法都有一定的局限性。例如,归纳可以很好地保护身份隐私,但会丢失大量信息。解剖学可以防止属性泄露并降低信息丢失,但不能保护成员的隐私。最新的概率L分集切片算法克服了泛化和解剖学方面的一些缺点,但无法屏蔽数据免受更细微类型的攻击,例如偏度攻击和相似性攻击。为了满足具有较高隐私保护要求的数据所有者的需求,本研究开发了一种新颖的方法,称为t紧密切片(TCS),可以更好地保护事务数据免受各种攻击。 TCS的时间复杂度是对数线性的,因此该算法可以很好地扩展大数据。我们使用三个交易数据集进行了实验,发现TCS不仅有效地保护了会员隐私,身份隐私和属性隐私,而且还保留了比基准算法更好的数据实用性。

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