Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method
Crime prediction using machine learning and data fusion assimilation has become a hot topic. Most of the models rely on historical crime data and related environment variables. The activity of potential offenders affects the crime patterns, but the data with fine resolution have not been applied in...
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doaj-d7ceb8713dee4dd1ae2b2da611cbf5c22020-12-08T00:02:45ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-12-01973273210.3390/ijgi9120732Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging MethodHongjie Yu0Lin Liu1Bo Yang2Minxuan Lan3School of Geography and Planning, Sun Yat-sen University, Guangzhou 510275, ChinaCenter of GeoInformatics for Public Security, School of Geography and Remote Sensing, Guangzhou University, Guangzhou 510006, ChinaDepartment of Geography and GIS, University of Cincinnati, Cincinnati, OH 45221, USADepartment of Geography and GIS, University of Cincinnati, Cincinnati, OH 45221, USACrime prediction using machine learning and data fusion assimilation has become a hot topic. Most of the models rely on historical crime data and related environment variables. The activity of potential offenders affects the crime patterns, but the data with fine resolution have not been applied in the crime prediction. The goal of this study is to test the effect of the activity of potential offenders in the crime prediction by combining this data in the prediction models and assessing the prediction accuracies. This study uses the movement data of past offenders collected in routine police stop-and-question operations to infer the movement of future offenders. The offender movement data compensates historical crime data in a Spatio-Temporal Cokriging (ST-Cokriging) model for crime prediction. The models are implemented for weekly, biweekly, and quad-weekly prediction in the XT police district of ZG city, China. Results with the incorporation of the offender movement data are consistently better than those without it. The improvement is most pronounced for the weekly model, followed by the biweekly model, and the quad-weekly model. In sum, the addition of offender movement data enhances crime prediction, especially for short periods.https://www.mdpi.com/2220-9964/9/12/732crime predictionhistorical crimepotential offendersST-Cokriging algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hongjie Yu Lin Liu Bo Yang Minxuan Lan |
spellingShingle |
Hongjie Yu Lin Liu Bo Yang Minxuan Lan Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method ISPRS International Journal of Geo-Information crime prediction historical crime potential offenders ST-Cokriging algorithm |
author_facet |
Hongjie Yu Lin Liu Bo Yang Minxuan Lan |
author_sort |
Hongjie Yu |
title |
Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method |
title_short |
Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method |
title_full |
Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method |
title_fullStr |
Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method |
title_full_unstemmed |
Crime Prediction with Historical Crime and Movement Data of Potential Offenders Using a Spatio-Temporal Cokriging Method |
title_sort |
crime prediction with historical crime and movement data of potential offenders using a spatio-temporal cokriging method |
publisher |
MDPI AG |
series |
ISPRS International Journal of Geo-Information |
issn |
2220-9964 |
publishDate |
2020-12-01 |
description |
Crime prediction using machine learning and data fusion assimilation has become a hot topic. Most of the models rely on historical crime data and related environment variables. The activity of potential offenders affects the crime patterns, but the data with fine resolution have not been applied in the crime prediction. The goal of this study is to test the effect of the activity of potential offenders in the crime prediction by combining this data in the prediction models and assessing the prediction accuracies. This study uses the movement data of past offenders collected in routine police stop-and-question operations to infer the movement of future offenders. The offender movement data compensates historical crime data in a Spatio-Temporal Cokriging (ST-Cokriging) model for crime prediction. The models are implemented for weekly, biweekly, and quad-weekly prediction in the XT police district of ZG city, China. Results with the incorporation of the offender movement data are consistently better than those without it. The improvement is most pronounced for the weekly model, followed by the biweekly model, and the quad-weekly model. In sum, the addition of offender movement data enhances crime prediction, especially for short periods. |
topic |
crime prediction historical crime potential offenders ST-Cokriging algorithm |
url |
https://www.mdpi.com/2220-9964/9/12/732 |
work_keys_str_mv |
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