Bayesian Spatial Modelling withR-INLA
Author(s) -
Finn Lindgren,
Håvard Rue
Publication year - 2015
Publication title -
journal of statistical software
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 7.636
H-Index - 145
ISSN - 1548-7660
DOI - 10.18637/jss.v063.i19
Subject(s) - laplace's method , bayesian probability , computer science , point process , geostatistics , inference , gaussian process , bayesian inference , interface (matter) , gaussian , data mining , mathematics , statistics , spatial variability , artificial intelligence , physics , quantum mechanics , maximum bubble pressure method , parallel computing , bubble
The principles behind the interface to continuous domain spatial models in the RINLA software package for R are described. The integrated nested Laplace approximation (INLA) approach proposed by Rue, Martino, and Chopin (2009) is a computationally effective alternative to MCMC for Bayesian inference. INLA is designed for latent Gaussian models, a very wide and flexible class of models ranging from (generalized) linear mixed to spatial and spatio-temporal models. Combined with the stochastic partial differential equation approach (SPDE, Lindgren, Rue, and Lindstrom 2011), one can accommodate all kinds of geographically referenced data, including areal and geostatistical ones, as well as spatial point process data. The implementation interface covers stationary spatial models, non-stationary spatial models, and also spatio-temporal models, and is applicable in epidemiology, ecology, environmental risk assessment, as well as general geostatistics.
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