Introduction: The growing threat of terrorism against military entities necessitates a comprehensive understanding of terrorist networks to develop effective counter-terrorism strategies. This study employs advanced network analysis and artificial intelligence (AI) to explore interconnections and influence within these networks. AI tools, including machine learning algorithms and natural language processing, identify critical nodes and propose strategic interventions that enhance public safety and health. Methods: Data from the Global Terrorism Database from 1970 to 2020, focusing on incidents involving military targets, were analyzed using centrality measures and hierarchical clustering to identify influential nodes and vulnerabilities. Specific AI techniques, such as supervised learning models for pattern recognition and natural language processing for threat language detection, were integrated to improve threat detection and automate responses. Ethical considerations regarding data privacy and algorithmic transparency were prioritized throughout the analysis. Results: The analysis identified key nodes such as the Taliban, ISIL, and Al-Qaeda, with degree centrality scores of 0.80, 0.75, and 0.65, respectively, highlighting their significant influence across the network. Quantitative metrics revealed that regions such as Iraq and Afghanistan serve as operational hubs, with eigenvector centrality scores above 0.85, indicating them as strategic targets for disruption. AI-enhanced threat detection demonstrated a 30% improvement in accuracy, increasing from 70% to 91%, significantly reducing false positives from 20% to 7%, and enabling proactive interventions. Targeting high-centrality nodes within the network’s scale-free structure could reduce operational capacity by 40%, effectively diminishing threats. Conclusion: The integration of network analysis and AI technologies reveals crucial insights into the structure and dynamics of terrorist networks. Targeting key nodes and vulnerabilities allows policymakers to develop strategies to disrupt terrorist activities and enhance public safety. AI-driven tools significantly improve threat detection and response, offering transformative potential in counter terrorism. Policymakers should address data privacy and algorithmic bias and incorporate these insights into security strategies to enable effective threat responses.
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Heejun Shin
Heesun Han
Jieun Lee
Prehospital and Disaster Medicine
Soonchunhyang University
Soonchunhyang University Hospital Seoul
Bucheon University
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Shin et al. (Sun,) studied this question.
synapsesocial.com/papers/69c37be2b34aaaeb1a67ec93 — DOI: https://doi.org/10.1017/s1049023x26107857