基于k近邻和边缘间性的恐怖分子社交网络泛化研究

Xuning Tang, Christopher C. Yang
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引用次数: 17

摘要

社会网络分析已被证明在支持情报和执法力量识别嫌疑人、恐怖分子或犯罪团伙及其通信模式方面是有效的。但是,个别执法单位拥有的社交网络数据包含私人信息,在与其他执法单位共享之前必须保留这些信息。这种隐私问题极大地降低了社交网络数据的效用,因为来自不同执法单位的社交网络的整合不能完全整合。如果不整合社交网络数据,恐怖分子或犯罪分子社交网络分析的有效性就会降低。本文介绍了构造广义子图的KNN算法和EBB算法,并提出了一种整合广义信息进行接近中心性度量的机制。结果表明,该方法在保护敏感数据的同时,大大提高了接近中心性度量的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalizing terrorist social networks with K-nearest neighbor and edge betweeness for social network integration and privacy preservation
Social network analysis has been shown to be effective in supporting intelligence and law enforcement force to identify suspects, terrorist or criminal subgroups, and their communication patterns. However, social network data owned by individual law enforcement units contain private information that must be preserved before sharing with other law enforcement units. Such privacy issue tremendously reduces the utility of the social network data since the integration of social networks from different law enforcement units cannot be fully integrated. Without integration of social network data, the effectiveness of terrorist or criminal social network analysis is diminished. In this paper, we introduce the KNN and EBB algorithm for constructing generalized subgraphs and a mechanism to integrate the generalized information to conduct the closeness centrality measures. The result shows that the proposed technique improves the accuracy of closeness centrality measures substantially while protecting the sensitive data.
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