Mining the crime data using naïve Bayes model

A massive number of documents on crime has been handled by police departments worldwide and today's criminals are becoming technologically elegant. One obstacle faced by law enforcement is the complexity of processing voluminous crime data. Approximately 439 crimes have been registered in sanch...

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Bibliographic Details
Published inIndonesian Journal of Electrical Engineering and Computer Science Vol. 23; no. 2; p. 1084
Main Authors Padirayon, Lourdes M., Atayan, Melvin S., Panelo, Jose Sherief, Fagela, Jr, Carlito R.
Format Journal Article
LanguageEnglish
Published 01.08.2021
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ISSN2502-4752
2502-4760
2502-4760
DOI10.11591/ijeecs.v23.i2.pp1084-1092

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Summary:A massive number of documents on crime has been handled by police departments worldwide and today's criminals are becoming technologically elegant. One obstacle faced by law enforcement is the complexity of processing voluminous crime data. Approximately 439 crimes have been registered in sanchez mira municipality in the past seven years. Police officers have no clear view as to the pattern crimes in the municipality, peak hours, months of the commission and the location where the crimes are concentrated. The naïve Bayes modelis a classification algorithm using the Rapid miner auto model which is used and analyze the crime data set. This approach helps to recognize crime trends and of which, most of the crimes committed were a violation of special penal laws. The month of May has the highest for index and non-index crimes and Tuesday as for the day of crimes. Hotspots were barangay centro 1 for non-index crimes and barangay centro 2 for index crimes. Most non-index crimes committed were violations of special law and for index crime rape recorded the highest crime and usually occurs at 2 o’clock in the afternoon. The crime outcome takes various decisions to maximize the efficacy of crime solutions.
ISSN:2502-4752
2502-4760
2502-4760
DOI:10.11591/ijeecs.v23.i2.pp1084-1092