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Cluster-Based Anonymization of Directed Graphs

机译:有向图的基于聚类的匿名化

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摘要

Social network providers anonymize graphs storing users' relationships to protect users from being re-identified. Despite the fact that most of the relationships are directed (e.g., follows), few works (e.g., the Paired-degree [1] and K-In&Out-Degree Anonymity [2]) have been designed to work with directed graphs. In this paper, we show that given a graph, DGA [1]and DSNDG-KIODA [2] are not always able to generate its anonymized version. We overcome this limitation by presenting the Cluster-based Directed Graph Anonymization Algorithm(CDGA) and prove that, by choosing the appropriate parameters, CDGA can generate an anonymized graph satisfying both the Paired k-degree [1] and K-In&Out-Degree Anonymity [2]. Also, we present the Out-and In-Degree Information Loss Metric to minimize the number of changes made to anonymize the graph. We conduct extensive experiments on three real-life data sets to evaluate the effectiveness of CDGA and compare the quality of the graphs anonymized by CDGA, DGA, and DSNDG-KIODA. The experimental results show that we can generate anonymized graphs, by modifying less than 0.007% of edges in the original graph.
机译:社交网络提供商将存储用户关系的图表匿名化,以防止用户被重新标识。尽管大多数关系都是有向的(例如,遵循),但很少有作品(例如,成对度[1]和K-In&Out-Degree匿名[2])设计用于有向图。在本文中,我们显示给定一个图,DGA [1]和DSNDG-KIODA [2]并不总是能够生成其匿名版本。我们通过提出基于簇的有向图匿名化算法(CDGA)克服了这一局限性,并证明了通过选择适当的参数,CDGA可以生成同时满足配对k度[1]和K-In&Out-Degree匿名性的匿名图。 [2]。此外,我们提出了“外和内”信息丢失度量标准,以最大程度地减少匿名化图表的次数。我们对三个现实数据集进行了广泛的实验,以评估CDGA的有效性,并比较CDGA,DGA和DSNDG-KIODA匿名化的图的质量。实验结果表明,通过修改原始图中少于0.007%的边,我们可以生成匿名图。

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