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Accuracy in Privacy-Preserving Data Mining Using the Paradigm of Cryptographic Elections

机译:使用加密选举范例的隐私数据挖掘准确性

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Data mining technology raises concerns about the handling and use of sensitive information, especially in highly distributed environments where the participants in the system may by mutually mistrustful. In this paper we argue in favor of using some well-known cryptographic primitives, borrowed from the literature on large-scale Internet elections, in order to preserve accuracy in privacy-preserving data mining (PPDM) systems. Our approach is based on the classical homomorphic model for online elections, and more particularly on some extensions of the model for supporting multi-candidate elections. We also describe some weak-nesses and present an attack on a recent scheme [1] which was the first to use a variation of the homomorphic model in the PPDM setting. In addition, we show how PPDM can be used as a building block to obtain a Random Forests classification algorithm over a set of homogeneous databases with horizontally partitioned data.
机译:数据挖掘技术提出了对处理和使用敏感信息的担忧,尤其是在系统中的参与者可以通过互相不信任的高度分布式环境中。在本文中,我们认为赞成使用一些着名的加密原语,从文献中借用大规模互联网选举,以便在保留隐私数据挖掘(PPDM)系统中的准确性。我们的方法是基于在线选举的经典同性态模型,更具体地,尤其是用于支持多候选选举的模型的一些扩展。我们还描述了一些弱者,并在最近的方案[1]上呈现攻击,这是第一个使用PPDM设置中同态模型的变化的攻击。此外,我们展示了PPDM如何用作构建块,以在具有水平分区数据的一组同类数据库上获取随机林分类算法。

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