个性化PageRank作为一种利用异构网络的反恐和国土安全方法

Akash Anil, Sanasam Ranbir Singh, R. Sarmah
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引用次数: 2

摘要

大多数针对反恐和国土安全的社会网络分析研究都考虑同质网络。然而,恐怖活动(袭击)通常由几个属性来定义,如恐怖组织、时间、地点、袭击类型等。为了捕获属性之间的内在依赖关系,我们需要采用一个能够捕获属性之间依赖关系的网络。在本文中,我们定义了一个异构网络来表示恐怖活动的集合。此外,我们提出个性化PageRank (PPR)作为一种能够在异构网络上执行各种分析操作的方法,只需改变模型参数而不改变底层模型。利用全球恐怖分子数据(GTD)、行为网络和新闻讨论网络,通过改变模型参数,展示了PPR在异构网络反恐中的各种应用。此外,我们还提出了四种基于局部邻近的链路预测方法的异构版本,即共同邻居、Adamic-Adar、Jaccard系数和资源分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalised PageRank as a Method of Exploiting Heterogeneous Network for Counter Terrorism and Homeland Security
Majority of the social network analysis studies for counter-terrorism and homeland security consider homogeneous network. However, a terrorist activity (attack) is often defined by several attributes such as terrorist organisation, time, place, attack type etc. To capture inherent dependency between the attributes, we need to adopt a network which is capable of capturing the dependency between the attributes. In this paper, we define a heterogeneous network to represent a collection of terrorist activities. Further, we propose personalised PageRank (PPR) as a method capable of performing various analytical operations over heterogeneous network just by changing model parameters without changing the underlying model. Using global terrorist data (GTD), behavioural network, and news discussion network, we show various applications of PPR for counter-terrorism over heterogeneous network just by changing the model parameter. In addition we propose heterogeneous version of four local proximity based link prediction methods, namely, Common Neighbour, Adamic-Adar, Jaccard Coefficient, and Resource Allocation.
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