云中最短路径的敏感和邻域隐私

Shyue-Liang Wang, Jiawei Chen, I. Ting, T. Hong
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引用次数: 0

摘要

高效的最短路径计算已经得到了广泛的研究,特别是在分布式环境下。然而,在云环境中保护隐私刚刚引起了人们的关注。为了在云中保持固定模式的单邻域隐私,目前的方法需要提前计算全对最短路径,这对于大型图来说非常耗时。此外,需要隐藏源顶点和目标顶点的敏感路径没有得到很好的处理。在这项工作中,我们提出了一种新的灵活的k邻域隐私保护和高效的云环境中敏感最短路径的最短距离计算方案。该方法结合k-skip最短路径子图的构造、敏感顶点调整、顶点层次标记和自底向上划分技术,不仅包容了单邻域隐私,而且为敏感最短路径提供了高效的分区和查询处理。数值实验证明了该方法的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensitive and Neighborhood Privacy on Shortest Paths in the Cloud
Efficient shortest path calculation has been studied extensively, in particular, in the distributed environment. However, preserving privacy in the cloud environment has just attracted latest attention. To preserve fixed-pattern one-neighborhood privacy in the cloud, current approach requires the calculation of all-pairs shortest paths in advance, which is time consuming for large graphs. In addition, specific paths that are sensitive and require hiding the source and destination vertices are not well addressed. In this work, we propose a new flexible k-neighborhood privacy-protection and efficient shortest distance computation scheme for sensitive shortest paths in the cloud environment. Combining the construction of k-skip shortest path sub-graphs, sensitive vertex adjustment, vertex hierarchy labeling and bottom-up partitioning techniques, the proposed approach not only subsumes one-neighborhood privacy but also provides efficient partitioning and query processing for sensitive shortest paths. Numerical experiments demonstrating the characteristics of proposed approach are presented.
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