SpatGC - Bayesian Modeling of Spatial Count Data
Provides a collection of functions for preparing data and
fitting Bayesian count spatial regression models, with a
specific focus on the Gamma-Count (GC) model. The GC model is
well-suited for modeling dispersed count data, including
under-dispersed or over-dispersed counts, or counts with
equivalent dispersion, using Integrated Nested Laplace
Approximations (INLA). The package includes functions for
generating data from the GC model, as well as spatially
correlated versions of the model. See Nadifar, Baghishani,
Fallah (2023) <doi:10.1007/s13253-023-00550-5>.