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Social Networks Integration and Privacy Preservation using Subgraph Generalization

机译:使用子图泛化的社交网络集成和隐私保护

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Intelligence and law enforcement force make use of terrorist and criminal social networks to support their investigations such as identifying suspects, terrorist or criminal subgroups, and their communication patterns. . Social networks are valuable resources but it is not easy to obtain information to create a complete terrorist or criminal social network. Missing information in a terrorist or criminal social network always diminish the effectiveness of investigation. An individual agency only has a partial terrorist or criminal social network due to their limited information sources. Sharing and integration of social networks between different agencies increase the effectiveness of social network analysis. Unfortunately, information sharing is usually forbidden due to the concern of privacy preservation. In this paper, we introduce the KNN algorithm for subgraph generation and a mechanism to integrate the generalized information to conduct social network analysis. Generalized information such as lengths of the shortest paths, number of nodes on the boundary, and the total number of nodes is constructed for each generalized subgraphs. By utilizing the generalized information shared from other sources, an estimation of distance between nodes is developed to compute closeness centrality. Two experiments have been conducted with random graphs and the Global Salafi Jihad terrorist social network. The result shows that the proposed technique improves the accuracy of closeness centrality measures substantially while protecting the sensitive data.
机译:情报和执法部队利用恐怖分子和犯罪分子的社交网络来支持他们的调查,例如确定嫌疑犯,恐怖分子或犯罪分子及其通信方式。 。社交网络是宝贵的资源,但要获得完整的恐怖或犯罪社交网络的信息并不容易。在恐怖主义或犯罪社会网络中丢失信息总是会削弱调查的有效性。单个机构由于信息来源有限,仅拥有部分恐怖分子或犯罪社交网络。不同机构之间的社交网络共享和集成提高了社交网络分析的有效性。不幸的是,出于保护隐私的考虑,通常禁止信息共享。在本文中,我们介绍了用于子图生成的KNN算法以及一种集成广义信息以进行社交网络分析的机制。为每个广义子图构造通用信息,例如最短路径的长度,边界上的节点数以及节点总数。通过利用从其他来源共享的通用信息,可以估算出节点之间的距离,以计算紧密度中心度。已经用随机图和全球萨拉菲圣战恐怖组织社交网络进行了两个实验。结果表明,所提出的技术在保护敏感数据的同时,极大地提高了近距离中心度测量的精度。

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