In a world where data has become precious thanks to what we can do with it like forecasting the future, the fight against crime can also benefit from this technological trend. In this work, we propose a crime prediction model based on historical data that we prepare and transform into spatiotemporal data by crime type, for use in machine learning algorithms and then predict, with maximum accuracy, the risk of having crimes in a spatiotemporal point in the city. And in order to have a general model not related to a specific type of crime, we have described our risk by a vector of n values that represent the risks by type of crime
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Crime is one of the biggest and dominating problem in our society and its forestallment is an import...
Crime exacts high financial, physical, and emotional costs from individuals and societies. Therefore...
Crime is hard to anticipate since it occurs at random and can occur anywhere at any moment, making i...
The distributional patterns of crime occurrences are closely related to their spatial, temporal, and...
Crime is a bone of contention that can create a societal disturbance. Crime forecasting using time s...
Police databases hold a large amount of crime data that could be used to inform us about current and...
"December 2013.""A Thesis Presented to The Faculty of the Graduate School At the University of Misso...
In recent years there has been growing interest in development of computer methods that can model an...
Background: Predictive policing and crime analytics with a spatiotemporal focus get increasing atten...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
The main objective of this study is to test and compare the prediction performance of three of the m...
This paper is a review paper of journal and conference papers published in the field of crime predic...
Crime is a well-known social problem faced worldwide. With the availability of large city datasets, ...
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Crime is one of the biggest and dominating problem in our society and its forestallment is an import...
Crime exacts high financial, physical, and emotional costs from individuals and societies. Therefore...
Crime is hard to anticipate since it occurs at random and can occur anywhere at any moment, making i...
The distributional patterns of crime occurrences are closely related to their spatial, temporal, and...
Crime is a bone of contention that can create a societal disturbance. Crime forecasting using time s...
Police databases hold a large amount of crime data that could be used to inform us about current and...
"December 2013.""A Thesis Presented to The Faculty of the Graduate School At the University of Misso...
In recent years there has been growing interest in development of computer methods that can model an...
Background: Predictive policing and crime analytics with a spatiotemporal focus get increasing atten...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
The main objective of this study is to test and compare the prediction performance of three of the m...
This paper is a review paper of journal and conference papers published in the field of crime predic...
Crime is a well-known social problem faced worldwide. With the availability of large city datasets, ...
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Crime is one of the biggest and dominating problem in our society and its forestallment is an import...
Crime exacts high financial, physical, and emotional costs from individuals and societies. Therefore...