2022
DOI: 10.32604/cmc.2022.013956
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Prediction of Extremist Behaviour and Suicide Bombing from Terrorism Contents Using Supervised Learning

Abstract: This study proposes an architecture for the prediction of extremist human behaviour from projected suicide bombings. By linking 'dots' of police data comprising scattered information of people, groups, logistics, locations, communication, and spatiotemporal characters on different social media groups, the proposed architecture will spawn beneficial information. This useful information will, in turn, help the police both in predicting potential terrorist events and in investigating previous events. Furthermore,… Show more

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“…Additionally, interpretability of ML algorithms is a critical area for future work. Developing techniques to enhance the transparency of these models will not only increase trust in their decisions but also provide more insight into the underlying patterns of extremist content [48].…”
Section: Future Perspectivesmentioning
confidence: 99%
“…Additionally, interpretability of ML algorithms is a critical area for future work. Developing techniques to enhance the transparency of these models will not only increase trust in their decisions but also provide more insight into the underlying patterns of extremist content [48].…”
Section: Future Perspectivesmentioning
confidence: 99%