This thesis deals with how computationally effective lattice models could be used for inference of data with a continuous spatial index. The fundamental idea is to approximate a Gaussian field with a Gaussian Markov random field (GMRF) on a lattice. Using a bilinear interpolation at non-lattice locations we get a reasonable model also at non-lattice locations. We can thus exploit the computational benefits of a lattice model even for data with continuous spatial index. In Paper A, a GMRF model is used in a Bayesian approach for prediction of a spatial random field. A hierarchical parametric model is setup, and inference is made by Markov Chain Monte Carlo simulations. In this way we obtain predictors and estimated prediction uncertainties a...
Gaussian Markov random fields are used in a large number of disciplines in machine vision and spatia...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
Gaussian Markov random fields (GMRFs) are frequently used as computationally efficient models in spa...
Spatial datasets are common in the environmental sciences. In this study we suggest a hierarchical m...
Abstract in Undeterminedpatial data sets are analysed in many scientific disciplines. Kriging, i.e. ...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...
The purpose of this paper is to extend the locally based prediction methodology of BayMar to a globa...
In many scientific disciplines, there is frequently a need to describe purely spatial interactions a...
Gaussian Markov Random Field (GMRF) models are most widely used in spatial statistics - a very activ...
A powerful modelling tool for spatial data is the framework of Gaussian Markov random fields (GMRFs)...
The Gaussian distribution is the most fundamental distribution in statistics. However, many applicat...
In recent years, interest in spatial statistics has increased significantly. However, for large data...
The application of Markov random field models to problems involving spatial data on lattice systems ...
I consider the use of Markov random fields (MRFs) on a fine grid to represent latent spatial process...
<p>Applied studies in multiple areas involving spatial and dynamic systems increasingly challenge ou...
Gaussian Markov random fields are used in a large number of disciplines in machine vision and spatia...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
Gaussian Markov random fields (GMRFs) are frequently used as computationally efficient models in spa...
Spatial datasets are common in the environmental sciences. In this study we suggest a hierarchical m...
Abstract in Undeterminedpatial data sets are analysed in many scientific disciplines. Kriging, i.e. ...
A multi-resolution basis is developed to predict two-dimensional spatial fields based on irregularly...
The purpose of this paper is to extend the locally based prediction methodology of BayMar to a globa...
In many scientific disciplines, there is frequently a need to describe purely spatial interactions a...
Gaussian Markov Random Field (GMRF) models are most widely used in spatial statistics - a very activ...
A powerful modelling tool for spatial data is the framework of Gaussian Markov random fields (GMRFs)...
The Gaussian distribution is the most fundamental distribution in statistics. However, many applicat...
In recent years, interest in spatial statistics has increased significantly. However, for large data...
The application of Markov random field models to problems involving spatial data on lattice systems ...
I consider the use of Markov random fields (MRFs) on a fine grid to represent latent spatial process...
<p>Applied studies in multiple areas involving spatial and dynamic systems increasingly challenge ou...
Gaussian Markov random fields are used in a large number of disciplines in machine vision and spatia...
Spatial prediction is commonly achieved under the assumption of a Gaussian random field (GRF) by obt...
Gaussian Markov random fields (GMRFs) are frequently used as computationally efficient models in spa...