Spatiotemporal prediction of crime is crucial for public safety and smart cities operation. As crime incidents are distributed sparsely across space and time, existing deep-learning methods constrained by coarse spatial scale offer only limited values in prediction of crime density. This paper proposes the use of deep inception-residual networks (DIRNet) to conduct fine-grained, theft-related crime prediction based on non-emergency service request data (311 events). Specifically, it outlines the employment of inception units comprising asymmetrical convolution layers to draw low-level spatiotemporal dependencies hidden in crime events and complaint records in the 311 dataset. Afterward, this paper details how residual units can be applied t...
Crime is a well-known social problem faced worldwide. With the availability of large city datasets, ...
In a world where data has become precious thanks to what we can do with it like forecasting the futu...
Crime issues have been attracting widespread attention from citizens and managers of cities due to t...
Accurate real time crime prediction is a fundamental issue for public safety, but remains a challeng...
The distributional patterns of crime occurrences are closely related to their spatial, temporal, and...
"December 2013.""A Thesis Presented to The Faculty of the Graduate School At the University of Misso...
In recent years, various studies have been conducted on the prediction of crime occurrences. This pr...
Crime is hard to anticipate since it occurs at random and can occur anywhere at any moment, making i...
<div><p>In recent years, various studies have been conducted on the prediction of crime occurrences....
Crime activity in many cities worldwide causes significant damages to the lives of victims and their...
In this paper, a detailed study on crime classification and prediction using deep learning architect...
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Machine learning is useful for grid-based crime prediction. Many previous studies have examined fact...
Machine learning is useful for grid-based crime prediction. Many previous studies have examined fact...
Crime issues have been attracting widespread attention from citizens and managers of cities due to t...
Crime is a well-known social problem faced worldwide. With the availability of large city datasets, ...
In a world where data has become precious thanks to what we can do with it like forecasting the futu...
Crime issues have been attracting widespread attention from citizens and managers of cities due to t...
Accurate real time crime prediction is a fundamental issue for public safety, but remains a challeng...
The distributional patterns of crime occurrences are closely related to their spatial, temporal, and...
"December 2013.""A Thesis Presented to The Faculty of the Graduate School At the University of Misso...
In recent years, various studies have been conducted on the prediction of crime occurrences. This pr...
Crime is hard to anticipate since it occurs at random and can occur anywhere at any moment, making i...
<div><p>In recent years, various studies have been conducted on the prediction of crime occurrences....
Crime activity in many cities worldwide causes significant damages to the lives of victims and their...
In this paper, a detailed study on crime classification and prediction using deep learning architect...
Smart city infrastructure has a significant impact on improving the quality of humans life. However,...
Machine learning is useful for grid-based crime prediction. Many previous studies have examined fact...
Machine learning is useful for grid-based crime prediction. Many previous studies have examined fact...
Crime issues have been attracting widespread attention from citizens and managers of cities due to t...
Crime is a well-known social problem faced worldwide. With the availability of large city datasets, ...
In a world where data has become precious thanks to what we can do with it like forecasting the futu...
Crime issues have been attracting widespread attention from citizens and managers of cities due to t...