Prediction of Homicides in Urban Centers: A Machine Learning Approach
August 16, 2020 Β· Declared Dead Β· π Intelligent Systems with Applications
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Authors
JosΓ© Ribeiro, Lair Meneses, Denis Costa, Wando Miranda, Ronnie Alves
arXiv ID
2008.06979
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY,
cs.LG
Citations
4
Venue
Intelligent Systems with Applications
Last Checked
4 months ago
Abstract
Relevant research has been highlighted in the computing community to develop machine learning models capable of predicting the occurrence of crimes, analyzing contexts of crimes, extracting profiles of individuals linked to crime, and analyzing crimes over time. However, models capable of predicting specific crimes, such as homicide, are not commonly found in the current literature. This research presents a machine learning model to predict homicide crimes, using a dataset that uses generic data (without study location dependencies) based on incident report records for 34 different types of crimes, along with time and space data from crime reports. Experimentally, data from the city of BelΓ©m - ParΓ‘, Brazil was used. These data were transformed to make the problem generic, enabling the replication of this model to other locations. In the research, analyses were performed with simple and robust algorithms on the created dataset. With this, statistical tests were performed with 11 different classification methods and the results are related to the prediction's occurrence and non-occurrence of homicide crimes in the month subsequent to the occurrence of other registered crimes, with 76% assertiveness for both classes of the problem, using Random Forest. Results are considered as a baseline for the proposed problem.
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