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Privacy preserving research for re-publication multiple sensitive attributes in data

机译:重新发布数据中多个敏感属性的隐私保护研究

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Previous works about privacy preserving data publication have most focused on static dataset, which have no update and need “one-time” releases. Only a little of literature has considered the serial data publication on dynamic dataset, but none of them consider perfectly. They can not against various kind of background, or the utility for serial data publishing is low. Based on theoretical analysis, we develop a new generalization principle that effectively limits the risk of Multiple Sensitive Attributes privacy disclosure in re-publication. The results show that our algorithm has higher degree of privacy protection and lower hiding rate.
机译:以前有关隐私保护数据发布的工作主要集中在静态数据集,该数据集没有更新,需要“一次性”发布。只有很少的文献考虑过在动态数据集上发布串行数据,但没有一个人考虑得很好。它们不能针对各种背景,或者用于串行数据发布的实用程序很低。在理论分析的基础上,我们开发了一种新的归纳原则,有效地限制了重新发布中多个敏感属性隐私公开的风险。结果表明,该算法具有较高的隐私保护度和较低的隐藏率。

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