https://github.com/cran/spate
Revision 5e0d0fe2f1f654df256311e24076b17a851571f9 authored by Fabio Sigrist on 29 August 2016, 19:29:37 UTC, committed by cran-robot on 29 August 2016, 19:29:37 UTC
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Tip revision: 5e0d0fe2f1f654df256311e24076b17a851571f9 authored by Fabio Sigrist on 29 August 2016, 19:29:37 UTC
version 1.5
Tip revision: 5e0d0fe
DESCRIPTION
Package: spate
Title: Spatio-Temporal Modeling of Large Data Using a Spectral SPDE
        Approach
Version: 1.5
Date: 2016-08-29
Author: Fabio Sigrist, Hans R. Kuensch, Werner A. Stahel
Maintainer: Fabio Sigrist <sigrist@stat.math.ethz.ch>
Depends: R (>= 2.10), mvtnorm, truncnorm
SystemRequirements: fftw3 (>= 3.1.2)
Description: Functionality for spatio-temporal modeling of large data sets is provided. A Gaussian process in space and time is defined through a stochastic partial differential equation (SPDE). The SPDE is solved in the spectral space, and after discretizing in time and space, a linear Gaussian state space model is obtained. When doing inference, the main computational difficulty consists in evaluating the likelihood and in sampling from the full conditional of the spectral coefficients, or equivalently, the latent space-time process. In comparison to the traditional approach of using a spatio-temporal covariance function, the spectral SPDE approach is computationally advantageous. This package aims at providing tools for two different modeling approaches. First, the SPDE based spatio-temporal model can be used as a component in a customized hierarchical Bayesian model (HBM). The functions of the package then provide parameterizations of the process part of the model as well as computationally efficient algorithms needed for doing inference with the HBM. Alternatively, the adaptive MCMC algorithm implemented in the package can be used as an algorithm for doing inference without any additional modeling. The MCMC algorithm supports data that follow a Gaussian or a censored distribution with point mass at zero. Covariates can be included in the model through a regression term.
License: GPL-2
Packaged: 2016-08-29 16:56:25 UTC; fabiosigrist
NeedsCompilation: yes
Repository: CRAN
Date/Publication: 2016-08-29 19:29:37
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