Comparing Regression Models to Predict Property Crime in High-Risk Lima Districts
Abstract
Crime continues to be an issue, in Metropolitan Lima, Peru affecting society. Our focus is on property crimes. We recognized the lack of studies on predicting these crimes. To tackle this problem, we used regression techniques such as XGBoost, Extra Tree, Support Vector, Bagging, Random Forest and AdaBoost. Through GridsearchCV we optimized hyperparameters to enhance our research findings. The results showed that Extra Tree Regression stood out as the model with an R2 value of 0.79. Additionally, error metrics like MSE (185.43) RMSE (13.62) and MAE (10.47) were considered to evaluate the model's performance. Our approach considers time patterns in crime incidents. Contributes, to addressing the issue of insecurity in a meaningful way.
How to cite
Escobedo, M., Tapia, C., Gutierrez, J., & Ayma, V. (2024). Comparing Regression Models to Predict Property Crime in High-Risk Lima Districts. International Journal of Advanced Computer Science and Applications. https://doi.org/10.14569/IJACSA.2024.0150307.Publisher
Science and Information OrganizationCategory / Subcategory
PendienteSubject
Journal
International Journal of Advanced Computer Science and ApplicationsISSN
2156-5570Collections