社交图的多个k -匿名最短路径的匿名化

Shyue-Liang Wang, Zheng-Ze Tsai, T. Hong, I. Ting, Yu-Chuan Tsai
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引用次数: 0

摘要

为了保护隐私,k-匿名在关系数据、集值数据和图数据上得到了广泛的研究。社交网络上的信息可以建模为未加权或加权的图形数据,以便共享和发布。我们之前在加权社交图上提出了k匿名路径隐私概念,以保护最短路径[9]的隐私。已发布的具有k-匿名路径隐私的社交网络图在源顶点和目标顶点之间至少有k条不可区分的最短路径。然而,以前的工作只考虑了用其他最短路径修改NV边。在这项工作中,我们进一步扩展了该方法,并提出了一种既可以修改NV边又可以修改全访问(AV)边的新技术,以实现k匿名路径隐私。实验结果显示了每种技术的特点。它显然提供了不同的选项,以在不同的要求下实现相同的隐私级别。
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Anonymizing Multiple K-anonymous Shortest Paths for Social Graphs
To preserve privacy, k-anonymity on relational, set-valued, and graph data have been studied extensively in recent years. Information on social networks can be modeled as un-weighted or weighted graph data for sharing and publishing. We have previously proposed k-anonymous path privacy concept on weighted social graphs to preserve privacy of the shortest path [9]. A published social network graph with k-anonymous path privacy has at least k indistinguishable shortest paths between the source and destination vertices. However, previous work only considered modifying Never-Visited (NV) edges by other shortest paths. In this work, we further extend the approach and propose a new technique that can modify both NV edges and All-Visited (AV) edges to achieve the k-anonymous path privacy. Experimental results showing the characteristics of each technique are presented. It clearly provides different options to achieve the same level of privacy under different requirements.
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