An Application of Natural Language Processing to Classify What Terrorists Say They Want
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Date
2022
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Abstract
Knowing what perpetrators want can inform strategies to achieve safe, secure, and sustainable societies. To help advance the body of knowledge in counterterrorism, this research applied natural language processing and machine learning techniques to a comprehensive database of terrorism events. A specially designed empirical topic modeling technique provided a machine-aided human decision process to glean six categories of perpetrator aims from the motive text narrative. Subsequently, six different machine learning models validated the aim categories based on the accuracy of their association with a different narrative field, the event summary. The ROC-AUC scores of the classification ranged from 86% to 93%. The Extreme Gradient Boosting model provided the best predictive performance. The intelligence community can use the identified aim categories to help understand the incentive structure of terrorist groups and customize strategies for dealing with them.
Description
Raj Bridgelall is the program director for the Upper Great Plains Transportation Institute (UGPTI) Center for Surface Mobility Applications & Real-time Simulation environments (SMARTSeSM).
Keywords
Counterterrorism., Machine learning., Risk modeling., Sustainable societies., Text mining.
Citation
Bridgelall, Raj. 2022. An Application of Natural Language Processing to Classify What Terrorists Say They Want. Social Sciences 11: 23. https://doi.org/10.3390/ socsci11010023