大数据中的二维私集交集

Xiuguang Li, Pan Feng, Shuguang Liu
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引用次数: 0

摘要

随着大数据时代的到来,处理的数据规模越来越大,这给隐私保护协议的设计带来了新的挑战。对于私有集相交问题,当集合规模较大时,保持其效率和可扩展性变得非常困难。此外,这些集合中的元素可能是二维数据,通常包含一个属性及其相应的权重。这增加了解决问题的难度。为解决PSI问题,近年来提出了一些有创意的方案。然而,这些协议只能保护用户私有集的一维元素的隐私。当元素是二维的时候,它们是不工作的。在本文中,我们提出了一个有效的、可扩展的包含二维元素集合的协议。深入的安全性分析表明,该方案是有效和高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-Dimensional Private Set Intersection in Big Data
With the advent of the era of big data, the data scale being processed is more and more large, which brings new challenge to the design of privacy-preserving protocols. For the Private Set Intersection (PSI) problem, when the sizes of sets is large, keeping its efficiency and scalability is becoming very difficult. In addition, elements in these sets are likely to be twodimensional data, which usually contains an attribute and its corresponding weight. That increases the difficulty to solve the problem. Some creative protocols were proposed to settle the PSI problem recently. However, these protocols can only protect the privacy of the one-dimension elements of users' private sets. And when the elements are two-dimensional, they are not work. In this paper, we propose an efficient and scalable protocol for sets which have two-dimensional elements. Thorough security analysis indicate that our scheme is effective and efficient.
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