Criminophysics an application to the study of Darknet Operation
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Abstract
In this paper, we re-studied, with a language aimed at the Police Science community, the network of users of a child pornography forum on the Tor browser investigated during the Operation Darknet by the Brazilian Federal Police. This criminal structure has unique criminophysical characteristics such as a small fraction of users responsible for sharing illicit media, and a relationship architecture very resilient to police intervention. The network differs from typical criminal organizations, approaching to some degree the dynamics observed in terrorist cells. It also shows a topology analogous to the structure
of many known biological viruses. Correlation measures such as rich-club and assortativity indicate that there is a cooperation between small and medium-sized criminals, while the most prominent individuals in the network get support from the large number of users who only view the illicit material. Interventions based on High Topological Payoff
Targets indicate that police work could have been 1.6 times more efficient. While structurally wise police intervention was similar to random attacks, it achieved high efficiency by focusing on the viewing network, as only 10 users contributed to more than 1/3 of the total post views and, of these, 8 were arrested by the police.
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