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δ-privacy: Bounding Privacy Leaks in Privacy Preserving Data Mining

机译:δ-privacy:隐私保护数据挖掘中的隐私泄露问题

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We propose a new definition for privacy, called δ-privacy, for privacy preserving data mining. The intuition of this work is, after obtaining a result from a data mining method, an adversary has better ability in discovering data providers' privacy; if this improvement is large, the method, which generated the response, is not privacy considerate. δ-privacy requires that no adversary could improve more than 6. This definition can be used to assess the risk of privacy leak in any data mining methods, in particular, we show its relations to differential privacy and data anonymity, the two major evaluation methods. We also provide a quantitative analysis on the tradeoff between privacy and utility, rigorously prove that the information gains of any δ-private methods do not exceed δ. Under the framework of (5-privacy, it is able to design a pricing mechanism for privacy-utility trading system, which is one of our major future works.
机译:我们为隐私保护提出了一个新的定义,称为δ-privacy,用于隐私保护数据挖掘。这项工作的直觉是,从数据挖掘方法获得结果后,对手具有更好的发现数据提供者隐私的能力。如果此改进很大,则生成响应的方法就不会考虑隐私问题。 δ-privacy要求没有对手能将其提高到6以上。此定义可用于评估任何数据挖掘方法中的隐私泄漏风险,特别是,我们展示了其与差异性隐私和数据匿名性这两种主要评估方法的关系。 。我们还对隐私和效用之间的折衷进行了定量分析,严格证明了任何δ私有方法的信息收益都不会超过δ。在(5-privacy)的框架下,它能够设计用于隐私实用程序交易系统的定价机制,这是我们未来的主要工作之一。

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