A Digital Shadow for Modeling, Studying and Preventing Urban Crime
Juan Palma-Borda, Eduardo Guzm\'an, Mar\'ia-Victoria Belmonte

TL;DR
This paper introduces a novel digital shadow platform that models and simulates urban crime using data-driven agent-based techniques, integrating criminological theories and real data to aid in crime prevention and policy making.
Contribution
It presents the first large-scale, data-calibrated digital shadow for urban crime, combining real crime reports, socio-economic data, and criminological theories into a comprehensive simulation tool.
Findings
Model accurately replicates crime patterns in Malaga
Calibrated with over 300,000 complaints and geographic data
Performance metrics align with historical crime data
Abstract
Crime is one of the greatest threats to urban security. Around 80 percent of the world's population lives in countries with high levels of criminality. Most of the crimes committed in the cities take place in their urban environments. This paper presents the development and validation of a digital shadow platform for modeling and simulating urban crime. This digital shadow has been constructed using data-driven agent-based modeling and simulation techniques, which are suitable for capturing dynamic interactions among individuals and with their environment. Our approach transforms and integrates well-known criminological theories and the expert knowledge of law enforcement agencies (LEA), policy makers, and other stakeholders under a theoretical model, which is in turn combined with real crime, spatial (cartographic) and socio-economic data into an urban model characterizing the daily…
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Taxonomy
TopicsData Visualization and Analytics · Digital and Cyber Forensics
