Abstract
The resilience and resistance of criminal networks, particularly drug trafficking organizations, remain crucial issues in contemporary society. Existing studies have unrealistically modelled law enforcement interventions and have failed to capture the complexity of the adaptations of criminal networks. This study introduces MADTOR, the first agent-based model that examines the responses of drug trafficking organizations to different types of law enforcement interventions. MADTOR addresses previous research gaps by enabling more realistic simulations of law enforcement interventions, modelling adaptations by organizations based on real-world operations and allowing comparisons of different interventions. To demonstrate the possible applications of MADTOR, we assessed the impact of arresting varying proportions of members on the resilience of drug trafficking organizations. Our results reveal the disruptive impact of arresting even a few members, and a non-linear relationship between the share of arrestedmembers and disruptive impact, with diminishing returns as the proportion increases. Surviving organizations face increasing recovery difficulties as more members are arrested. These findings contribute to the development of strategies for effective interventions against drug trafficking.
Lingua originale | English |
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pagine (da-a) | 1-13 |
Numero di pagine | 13 |
Rivista | JASSS |
Volume | 27 |
DOI | |
Stato di pubblicazione | Pubblicato - 2024 |
Keywords
- Organized crime
- Criminal networks
- Resilience
- Drug trafficking
- Disruption
- Agent-based modeling
- Asset Recovery