Self-exciting Point Processes with Image Features as Covariates for Robbery Modeling

SAI (1)(2021)

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摘要
State-of-the-art crime prediction models exploit the spatio-temporal clustering patterns and the self-exciting nature of criminality to predict vulnerable crime areas. However, omitting spatial covariates correlated with the occurrence of crimes potentially bias the estimated parameters. This research combines self-exciting point processes, generalized additive models and environmental attributes extracted through convolutional neural networks from street-level images to predict robbery hotspots across the locality of Chapinero in Bogota, Colombia. Our model using image features as covariates outperforms a standard self-exciting point process and shed light on the association between crime occurrence and the socioeconomic and environmental conditions of the city.
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关键词
Self-exciting point process, Crime modeling, Street-level images, Environmental attributes
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