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A Data Sanitization Method for Privacy Preserving Data Re-publication

机译:隐私保留数据重新发布的数据消毒方法

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When a table containing personal information is published, sensitive information should not be revealed. Although k-anonymity and l-diversity models are popular approaches to protect privacy, they are limited to one time data publishing. After a dataset is updated with insertions and deletions, a data holder cannot safely release up-to-date information. Recently, m-invariance model has been proposed to support republication of dynamic datasets. However, m-invariance model has two drawbacks. First, the m-invariant generalization can cause high information loss. Second, if the adversary already obtained sensitive values of some individuals before accessing released information, m-invariance leads to severe privacy breaches. In this paper, we propose a new data sanitization technique for safely releasing dynamic datasets. The proposed technique prevents two drawbacks of m-invariance and provides a simple and effective method for handling inserted and deleted records.
机译:当公布包含个人信息的表时,不应显示敏感信息。虽然k-匿名和l-多样性模型是保护隐私的流行方法,但它们仅限于一次数据发布。使用插入和删除更新数据集后,数据持有人无法安全地释放最新信息。最近,已经提出了M-Invariance模型来支持强制动态数据集。但是,M-Invariance Model具有两个缺点。首先,M-不变的泛化可能导致高信息丢失。其次,如果对手已经获得了一些人的敏感值,请在访问发布的信息之前,M-Invariance导致严重的隐私违规行为。在本文中,我们提出了一种新的数据消毒技术,用于安全地释放动态数据集。所提出的技术可防止M-Invariance的两个缺点,并提供了一种简单有效的处理插入和删除的记录方法。

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