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Privacy-Preserving Cloud-Based Statistical Analyses on Sensitive Categorical Data

机译:敏感分类数据的隐私保留基于云的统计分析

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We consider the problem of privacy-preserving cloud-based statistical computation on sensitive categorical data. Specifically, we focus on protocols to obtain the contingency matrix and the sample covariance matrix of the categorical data set. A multi-cloud is used not only to store the sensitive data but also to perform computations on them. However, the multi-cloud is semi-honest, that is, it follows the protocols but is not authorized to learn the sensitive data. Hence, the data must be stored and computed on by the multi-cloud in a privacy-preserving format, which we choose to be vertical splitting among the various clouds. We give a comparison of our proposals, based on the secure scalar product, against a benchmark protocol consisting of down-loading plus local computation.
机译:我们考虑对敏感分类数据的隐私保留云的统计计算问题。具体而言,我们专注于协议获得分类数据集的应急矩阵和样本协方差矩阵。多云不仅用于存储敏感数据,还用于对其执行计算。但是,多云是半诚实的,也就是说,它遵循协议但未被授权学习敏感数据。因此,必须以多云以隐私保留格式存储和计算数据,我们选择在各种云中垂直分割。我们根据安全标量产品对我们的建议进行比较,该协议根据由下载加载PLUS本地计算组成的基准协议。

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