Spatial Data Analysis with R-INLA with Some Extensions
Journal article, Peer reviewed

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Date
2015-01Metadata
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Original version
Journal of Statistical Software 2015, 63(20)Abstract
The integrated nested Laplace approximation (INLA) provides an interesting way of
approximating the posterior marginals of a wide range of Bayesian hierarchical models.
This approximation is based on conducting a Laplace approximation of certain functions
and numerical integration is extensively used to integrate some of the models parameters
out.
The
R
-
INLA
package o ers an interface to INLA, providing a suitable framework for
data analysis. Although the INLA methodology can deal with a large number of models,
only the most relevant have been implemented within
R
-
INLA
. However, many other
important models are not available for
R
-
INLA
yet.
In this paper we show how to fit a number of spatial models with
R
-
INLA
, including its
interaction with other
R
packages for data analysis. Secondly, we describe a novel method
to extend the number of latent models available for the model parameters. Our approach
is based on conditioning on one or several model parameters and fit these conditioned
models with R-INLA. Then these models are combined using Bayesian model averaging
to provide the final approximations to the posterior marginals of the model.
Finally, we show some examples of the application of this technique in spatial statistics.
It is worth noting that our approach can be extended to a number of other fields, and not
only spatial statistics
Description
http://www.jstatsoft.org/v63/i20