Data-driven system identification of the social network dynamics in online postings of an extremist group

A. Diaz, Jongeun Choi, T. Holt, S. Chermak, Joshua D. Freilich
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引用次数: 3

Abstract

Terrorism research has begun to focus on the issue of radicalization, or the acceptance of ideological belief systems that lead toward violence. There has been particular attention paid to the role of the Internet in the exposure to and promotion of radical ideas. There is, however, minimal work that attempts to model the ways that messages are spread or how individual participation in radical on-line communities operates. In this paper, we present a stochastic linear system to represent the evolution of contribution to a sample of 126 threads in an on-line forum where individuals discuss radical belief systems. To estimate or predict the time-varying contributions of agents for given online-forum data, each agent's contribution has been modeled as a state variable. We then use the expectation-maximization (EM) algorithm to identify the model parameters including the adjacency matrix of the graph constructed among participating agents along with measurement and system uncertainty levels in online-postings. Our approach reveals the identified dynamical influences among agents in the time-varying shaping of the contribution in a datadriven fashion. We use the real-world data from online-postings to demonstrate the usefulness of our approach, and its application toward on-line radicalization.
数据驱动系统识别极端组织在线帖子中的社会网络动态
恐怖主义研究已经开始关注激进化问题,或者接受导致暴力的意识形态信仰体系。人们特别关注互联网在暴露和宣传激进思想方面的作用。然而,对信息传播方式或激进的在线社区中的个人参与如何运作进行建模的工作很少。在本文中,我们提出了一个随机线性系统来表示对126个在线论坛中个人讨论激进信仰系统的贡献的演变。对于给定的在线论坛数据,为了估计或预测代理的时变贡献,每个代理的贡献都被建模为状态变量。然后,我们使用期望最大化(EM)算法来识别模型参数,包括参与代理之间构建的图的邻接矩阵以及在线帖子的测量和系统不确定性水平。我们的方法以数据驱动的方式揭示了在贡献的时变塑造中确定的代理之间的动态影响。我们使用来自在线帖子的真实世界数据来证明我们的方法的有效性,以及它在在线激进化方面的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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