A Spatially Correlated Model with Generalized Autoregressive Conditionally Heteroskedastic Structure for Counts of Crimes
Metadatos
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MDPI
Materia
Autoregressive structure Bayesian inference B-splines Crimes MCMC Self-exciting models Spatio-temporal patterns
Fecha
2022-06-29Referencia bibliográfica
Escudero, I.; Angulo, J.M.; Mateu, J. A Spatially Correlated Model with Generalized Autoregressive Conditionally Heteroskedastic Structure for Counts of Crimes. Entropy 2022, 24, 892. [https://doi.org/10.3390/e24070892]
Patrocinador
MCIU/AEI/ERDF, UE PGC2018-098860-B-I00; ERDF Operational Programme 2014-2020 A-FQM-345-UGR18; Economy and Knowledge Council of the Regional Government of Andalusia, Spain MCIN/AEI CEX2020-001105-M; Spanish Government PID2019-107392RB-I00/AEI/10.13039/501100011033; University Jaume I, Spain UJI-B2018-04Resumen
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.