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Privacy Preserving Classification Algorithm BasedRandom Diffusion Map

机译:基于随机扩散图的隐私保护分类算法

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摘要

In this paper, a privacy preserving classification algorithm based random Diffusion Map is presented. We first alter the selection of the parameter dimension d and metaparameter fixed value ε for satisfying the security of privacy-preserving classification. Further the sensitive attributes are embedded into random(even higher) dimension feature space using random Diffusion Map, thus the sensitive attributes are transformed and protected. Because the transformed space dimension d and the ε are both stochastic, this algorithm is not easily be breached. In addition, diffusion Map can keep topology structure of dataset, so the classification precision after encryption are kept well. The experiment shows that the present method can provide sensitive information enough protect without much loss of the classification precision.
机译:本文提出了一种基于隐私保护的分类算法,基于随机扩散图。我们首先更改参数维数d和元参数固定值ε的选择,以满足保护隐私分类的安全性。此外,使用随机扩散图将敏感属性嵌入到随机(甚至更高)维度的特征空间中,从而对敏感属性进行转换和保护。由于变换后的空间维数d和ε都是随机的,因此不容易违反该算法。另外,扩散图可以保持数据集的拓扑结构,因此加密后的分类精度保持得很好。实验表明,该方法能够提供足够的敏感信息保护,而又不损失分类精度。

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