:: Volume 10, Issue 2 (2-2017) ::
JSS 2017, 10(2): 233-260 Back to browse issues page
Approximate Bayesian Analysis of Spatio-Temporal Data Using a Gaussian Markov Random Field
Fatemeh Hosseini * , Elham Homayonfal
Abstract:   (11763 Views)

Hierarchical spatio-temporal models are used for modeling space-time responses and temporally and spatially correlations of the data is considered via Gaussian latent random field with Matérn covariance function. The most important interest in these models is estimation of the model parameters and the latent variables, and is predict of the response variables at new locations and times. In this paper, to analyze these models, the Bayesian approach is presented. Because of the complexity of the posterior distributions and the full conditional distributions of these models and the use of Monte Carlo samples in a Bayesian analysis, the computation time is too long. For solving this problem, Gaussian latent random field with Matern covariance function are represented as a Gaussian Markov Random Field (GMRF) through the Stochastic Partial Differential Equations (SPDE) approach. Approximatin Baysian method and Integrated Nested Laplace Approximation (INLA) are used to obtain an approximation of the posterior distributions and to inference about the model. Finally, the presented methods are applied to a case study on rainfall data observed in the weather stations of Semnan in 2013.

Keywords: Spatio-Temporal Data, Gaussian Markov Random Field, Integrated Nested Laplace Approximation, Stochastic Partial Differential Equations.
Full-Text [PDF 752 kb]   (2818 Downloads)    
Type of Study: Applied | Subject: Spatial Statistics
Received: 2015/01/23 | Accepted: 2015/11/9 | Published: 2016/12/20



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Volume 10, Issue 2 (2-2017) Back to browse issues page