Autores
Godoy Calderón Salvador
Calvo Castro Francisco Hiram
Martínez Hernández Víctor Manuel
Moreno Armendáriz Marco Antonio
Título The CR-Omega+ Classification Algorithm for Spatio-Temporal Prediction of Criminal Activity
Tipo Revista
Sub-tipo JCR
Descripción Journal of Applied Research and Technology
Resumen We present a spatio-temporal prediction model that allows forecasting of the criminal activity behavior in a particular region by using supervised classification. The degree of membership of each pattern is interpreted as the forecasted increase or decrease in the criminal activity for the specified time and location. The proposed forecasting model (CR-omega+) is based on the family of Kora-Omega Logical-Combinatorial algorithms operating on large data volumes from several heterogeneous sources using an inductive learning process. We propose several modifications to the original algorithms by Bongard and Baskakova and Zhuravlëv which improve the prediction performance on the studied dataset of criminal activity. We perform two analyses: punctual prediction and tendency analysis, which show that it is possible to predict punctually one of four crimes to be perpetrated (crime family, in a specific space and time), and 66% of effectiveness in the prediction of the place of crime, despite of the noise of the dataset. The tendency analysis yielded an STRMSE (Spatio-Temporal RMSE) of less than 1.0.
Observaciones El nombre correcto de la publicación es con el símbolo de Omega.
Lugar Distrito Federal
País Mexico
No. de páginas 5-25
Vol. / Cap. Vol. 8, No. 1
Inicio 2010-04-01
Fin
ISBN/ISSN