AI Article Synopsis

  • Crime significantly impacts society and requires proper statistical modeling for analysis, focusing on spatial and temporal relationships.
  • The paper introduces a self-exciting spatio-temporal model for crime data that accounts for both self-excitation and spatial dependencies, deviating from traditional Cox process methods.
  • A Bayesian inference approach is used to analyze crime data from Riobamba, Ecuador, demonstrating that this model outperforms existing alternatives in fitting and prediction.

Article Abstract

Crime is a negative phenomenon that affects the daily life of the population and its development. When modeling crime data, assumptions on either the spatial or the temporal relationship between observations are necessary if any statistical analysis is to be performed. In this paper, we structure space-time dependency for count data by considering a stochastic difference equation for the intensity of the space-time process rather than placing structure on a latent space-time process, as Cox processes would do. We introduce a class of spatially correlated self-exciting spatio-temporal models for count data that capture both dependence due to self-excitation, as well as dependence in an underlying spatial process. We follow the principles in Clark and Dixon (2021) but considering a generalized additive structure on spatio-temporal varying covariates. A Bayesian framework is proposed for inference of model parameters. We analyze three distinct crime datasets in the city of Riobamba (Ecuador). Our model fits the data well and provides better predictions than other alternatives.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9322816PMC
http://dx.doi.org/10.3390/e24070892DOI Listing

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