2018
DOI: 10.1155/2018/5676712
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Terrorist Group Behavior Prediction by Wavelet Transform-Based Pattern Recognition

Abstract: Predicting terrorist attacks by group networks is an important but difficult issue in intelligence and security informatics. Effective prediction of the behavior not only facilitates the understanding of the dynamics of organizational behaviors but also supports homeland security's missions in prevention, preparedness, and response to terrorist acts. There are certain dynamic characteristics of terrorist groups, such as periodic features and correlations between the behavior and the network. In this paper, we … Show more

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Cited by 17 publications
(14 citation statements)
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References 42 publications
(47 reference statements)
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“…Five different machine learning models, i.e., SVM, ANN, Naïve Bayes, Random Forest, and Decision Trees, were used to make predictions on attack type, attack region, and weapon type in 2018 by Verma et al [21], reporting an accuracy of around 90%. In 2018, Li et al [22] predicted the behavior of terrorist groups by presenting a comprehensive framework that uses social network analysis, wavelet transform, and pattern recognition approaches to understand the dynamics of the terrorist group and eventually predict the attack behavior. e paper has claimed that the framework has made accurate prediction of the behavior of the terrorist groups.…”
Section: Related Workmentioning
confidence: 99%
“…Five different machine learning models, i.e., SVM, ANN, Naïve Bayes, Random Forest, and Decision Trees, were used to make predictions on attack type, attack region, and weapon type in 2018 by Verma et al [21], reporting an accuracy of around 90%. In 2018, Li et al [22] predicted the behavior of terrorist groups by presenting a comprehensive framework that uses social network analysis, wavelet transform, and pattern recognition approaches to understand the dynamics of the terrorist group and eventually predict the attack behavior. e paper has claimed that the framework has made accurate prediction of the behavior of the terrorist groups.…”
Section: Related Workmentioning
confidence: 99%
“…13 Они посебно истичу анонимност чланова групе као кључну претпоставку уклањања негативних последица које могу проистећи из односа међу члановима групе (статусних, професионалних и слично). 14 Мада у литератури постоје настојања да се техника методолошки што више систематизује, неколико препрека угрожава таква настојања. 15 Први разлог непотпуне систематизације јесте проблем у вези са прикупљањем података.…”
Section: предвиђање засновано на експертском знању -делфи техникаunclassified
“…This approach of using data-driven predictive models to predict malicious behaviour is not new and current models using machine learning technologies have a high degree of theoretical accuracy in detecting terrorist behaviour (Salih et al 2017;RAND National Security Research Division 2005;Li et al 2018;Ding et al 2017;Schneider et al 2011). With accessibility to more data for machine learning and iterative improvements, these terrorist focussed models are likely to improve over time and the learnings from these models are likely to be useful inputs into an AI treachery model.…”
Section: Artificial Intelligence Treachery Threat Modelmentioning
confidence: 99%