Use of cluster analysis to study crime in the State of Rio de Janeiro (#1757)
Read ArticleDate of Conference
July 17-19, 2024
Published In
"Sustainable Engineering for a Diverse, Equitable, and Inclusive Future at the Service of Education, Research, and Industry for a Society 5.0."
Location of Conference
Costa Rica
Authors
Coelho Moreira de Oliveira, Max William
Fernández Pérez, Miguel
Fernández Pérez, Aldo
Santos, Wagner
Costa Neto, Antonio
Abstract
This article aims to construct clusters based on historical data of thefts in the State of Rio de Janeiro, aiming to identify possible similarities among the records. Monthly quantities of vehicle thefts, robberies on public transportation, pedestrian robberies, cell phone thefts, cargo thefts, and robberies at commercial establishments were selected. Using these records, the k-means algorithm was employed to build clusters, resulting in two subsets of records. These subsets present distinct characteristics and are valuable for analyzing the interaction between different types of thefts in a disaggregated manner, thus avoiding statistical fallacies. Additionally, we propose a classification model that establishes criteria for assigning scenarios to a specific cluster. This model can assist in developing more effective strategies in public security, and in the use of human and logistical resources.