Practical anonymous subscription system with privacy preserving data mining

Liu Xin
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Abstract

To date, one interesting research topic in constructing anonymous subscription systems is how to allow client profiling, while keeping customers anonymous when they access one service. Though several solutions have been proposed, the service providers are only endowed with limited ability of utilizing and analyzing accumulated transaction transcripts at the cost of weakened privacy protection. To overcome this obstacle, we put forth the first anonymous subscription system with privacy preserving data mining, which is derived by applying the technique of Kiayias-Xu-Yung data mining group signature to the underlying multi-service subscription system by Canard and Jambert. The most prominent benefit of the new system is that service providers can obtain the desired output by a quorum of trusted data mining servers, and at the same time the customers can preserve maximum possible anonymity. Performance comparison shows that the proposed system is more practical than several related schemes published recently.
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具有隐私保护数据挖掘功能的实用匿名订阅系统
迄今为止,构建匿名订阅系统的一个有趣的研究主题是如何允许客户端分析,同时在客户访问一个服务时保持匿名。虽然已经提出了几种解决方案,但服务提供商仅具有有限的利用和分析积累的交易记录的能力,其代价是削弱了隐私保护。为了克服这一障碍,我们将Kiayias-Xu-Yung数据挖掘组签名技术应用于Canard和Jambert的底层多服务订阅系统,提出了第一个具有隐私保护的匿名订阅系统。新系统最突出的优点是服务提供商可以通过一组受信任的数据挖掘服务器获得期望的输出,同时客户可以最大限度地保持匿名。性能比较表明,该系统比最近发表的几种相关方案更实用。
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