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Approximate Privacy-Preserving Data Mining on Vertically Partitioned Data

机译:垂直分区数据上的近似隐私保留数据挖掘

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In today's ever-increasingly digital world, the concept of data privacy has become more and more important. Researchers have developed many privacy-preserving technologies, particularly in the area of data mining and data sharing. These technologies can compute exact data mining models from private data without revealing private data, but are generally slow. We therefore present a framework for implementing efficient privacy-preserving secure approximations of data mining tasks. In particular, we implement two sketching protocols for the scalar (dot) product of two vectors which can be used as sub-protocols in larger data mining tasks. These protocols can lead to approximations which have high accuracy, low data leakage, and one to two orders of magnitude improvement in efficiency. We show these accuracy and efficiency results through extensive experimentation. We also analyze the security properties of these approximations under a security definition which, in contrast to previous definitions, allows for very efficient approximation protocols.
机译:在今天越来越多的数字世界中,数据隐私的概念变得越来越重要。研究人员开发了许多隐私保存技术,特别是在数据挖掘和数据共享领域。这些技术可以从私有数据计算精确的数据挖掘模型,而不会透露私人数据,但通常是慢的。因此,我们提出了一种实现有效的隐私保留安全近似数据挖掘任务的框架。特别地,我们为两个向量的标量(点)乘以两个矢量的乘积来实现两个可以用作较大数据挖掘任务中的子协议的速写协议。这些协议可以导致具有高精度,低数据泄漏和效率提高一到两个数量级的近似值。通过广泛的实验,我们展示了这些准确性和效率。我们还在安全性定义下分析了这些近似值的安全性质,与之前的定义相比,允许非常有效的近似协议。

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