Efficient Disruption of Criminal Networks through Multi-Objective Genetic Algorithms
Yehezkiel Darmadi, Thanh Thi Nguyen, Campbell Wilson

TL;DR
This paper introduces a multi-objective genetic algorithm approach to disrupt criminal networks efficiently by balancing network fragmentation with operational costs, improving practical law enforcement strategies.
Contribution
It incorporates operational costs into network disruption strategies using multi-objective optimization, a novel approach in this context.
Findings
Proposed algorithms achieve similar disruption with lower operational costs.
Centrality-based methods are less cost-effective despite effective fragmentation.
Multi-objective optimization enhances strategic decision-making for law enforcement.
Abstract
Criminal networks, such as the Sicilian Mafia, pose substantial threats to public safety, national security, and economic stability. Outdated disruption methods with a focus on removing influential individuals or key players have proven ineffective due to the covertness of the network. Thus, researchers have been trying to apply Social Network Analysis (SNA) techniques, such as centrality-based measures, to identify key players. However, removing individuals with high centrality often proves to be inefficient, as it does not mimic the real-world scenarios that Law Enforcement Agencies (LEAs) face. For instance, the operational costs limit the LEAs from exploiting the results of the centrality-based methods. This study proposes a multi-objective optimisation framework like the Weighted Sum Genetic Algorithm (WS-GA) and the Non-dominated Sorting Genetic Algorithm II (NSGA-II) to identify…
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