Prediction of Recidivism in Thefts and Burglaries Using Machine Learning

Fredy Humberto Troncoso Espinosa

Keywords: recidivism, machine learning, Criminal Analysis, Theft, Burglary

Abstract

Background/objectives: Theft and burglary are two crimes against property that have a great social impact. Their prevention drastically lowers victimization rates and the feeling of insecurity in the population. The objective of this investigation is to obtain an index that allows the prediction of repeat offenses by criminals in these types of crimes, in order to support decision-making with respect to preventative actions. Methodology: In order to obtain the index, a group of machines learning was trained, with information provided by the Criminal Analysis and Investigative Focus System (CAIFS) from the Regional Public Prosecutor’s Office in Biobío, Chile. The information provided was from thefts and burglaries committed between 2012 and 2017 in the city of Concepción. Findings/application: The results show a characterization of repeat offenders in these types of crime and a recurrence index that allows for a greater assertiveness in the prediction of recidivism than the method that is currently being used.

Más información

Título de la Revista: INDIAN JOURNAL OF SCIENCE AND TECHNOLOGY
Volumen: 13(6)
Editorial: Editorial Office:Indian Society of Education and Environment Co-Publisher Office : Informatics Publishing Limited
Fecha de publicación: 2020
Página de inicio: 696
Página final: 711
Idioma: Ingles
DOI:

10.17485/ijst/2020/v013i06/149853

Notas: SCOPUS