Prediction of the level of crime cases using multiple linear regression in the city of Pontianak

  • Fadillah Bergas Universitas Muhammadiyah Pontianak, Indonesia
  • Sucipto Universitas Muhammadiyah Pontianak, Indonesia
  • Asrul Abdullah Universitas Muhammadiyah Pontianak, Indonesia
Keywords: Criminality, data mining, multiple linear regression, MAPE

Abstract

This study aims to develop a predictive model for the crime rate in the Police Resort Area of Kota (POLRESTA) Pontianak using the Multiple Linear Regression method based on secondary data obtained from the Criminal Investigation Unit of POLRESTA Pontianak. The utilization of descriptive statistical techniques and data visualization aids in identifying relevant features that enrich the information within the model. The evaluation results indicate that this model performs well in both modeling and predicting crime rates in Kota Pontianak. Despite the variations in error rates between training and testing data, the model still demonstrates its proficiency in predicting known data. The testing results also reveal that the Mean Absolute Percentage Error (MAPE) values for each crime category exhibit variations in the testing dataset, with MAPE for "Berat" increasing to 12.91%, MAPE for "Sedang" increasing to 30.11%, and MAPE for "Ringan" increasing to 26.59%. Consequently, this study concludes that the Multiple Linear Regression method holds potential as an effective tool for decision-making and the development of strategies to combat criminal activities in Kota Pontianak

Published
2024-07-31
How to Cite
Fadillah Bergas, Sucipto, & Asrul Abdullah. (2024). Prediction of the level of crime cases using multiple linear regression in the city of Pontianak. TEKNOSAINS : Jurnal Sains, Teknologi Dan Informatika, 11(2), 245-256. https://doi.org/10.37373/tekno.v11i2.1025