4.7 Article

Crime risk prediction incorporating geographical spatiotemporal dependency into machine learning models

Journal

INFORMATION SCIENCES
Volume 646, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2023.119414

Keywords

Crime risk prediction; Spatiotemporal dependency; Inverse distance weighting; Spatiotemporal lag variable; Machine learning

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In this study, the introduction of spatiotemporal lag variables effectively mitigated the spatiotemporal dependence in crime data. Four machine learning methods were used to verify the feasibility of this approach. The results showed that incorporating spatiotemporal lag variables significantly improved the prediction accuracy of machine learning models, nonlinear tree-based models outperformed linear models in predicting crime, and interpretable machine learning models revealed the unique contribution of each variable. These findings enhance our understanding of the mechanism of crime occurrence and inform the development of crime prevention strategies.
The spatiotemporal distribution of crime is closely related to the environment, exhibiting a typical characteristic of spatiotemporal autocorrelation. However, most of the existing machine learning-based crime prediction methods have difficulty in simulate the spatiotemporal dependence of crime. In this study, we mitigate the spatiotemporal dependence embedded in crime data by introducing a spatiotemporal lag variable. To verify the feasibility of the proposed methods, four machine learning methods were used to determine whether considering spatiotemporal dependency could improve model prediction accuracy and explore the impact of various factors (i.e., environmental factors and demographical factors) on crime risk intensity in different locations using crime data collected from June 2014 to May 2018 in Dallas. The results indicated the following: (1) incorporating spatiotemporal lag variables can effectively improve the prediction accuracy of machine learning models; (2) variables predicting crime are highly nonlinear over time and space, and tree-based nonlinear models greatly outperform linear models in predicting crime; and (3) interpretable machine learning models can reveal the unique contribution of each variable to researchers and practitioners. These findings contribute to our understanding of the mechanism of crime occurrence and may guide the development of crime prevention strategies.

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