This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geostatistical data. The models are constructed as solutions to stochastic partial differential equations driven by generalized hyperbolic noise and are incorporated in a standard geostatistical setting with irregularly spaced observations, measurement errors and covariates. A maximum likelihood estimation technique based on the Monte Carlo expectation-maximization algorithm is presented, and a Monte Carlo method for spatial prediction is derived. Finally, an application to precipitation data is presented, and the performance of the non-Gaussian models is compared with standard Gaussian and transformed Gaussian models through cross-validation
Though in the last decade many works have appeared in the literature dealing with model-based extens...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...
A non-stationary spatial Gaussian random field (GRF) is described as the solution of an inhomogeneou...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
For many applications with multivariate data, random-field models capturing departures from Gaussian...
AbstractGaussian geostatistical models (GGMs) and Gaussian Markov random fields (GMRFs) are two dist...
Spatial models have been widely used in the public health set-up. In the case of continuous outcomes...
In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often car...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...
Conventional geostatistical methodology solves the problem of predicting the realized value of a lin...
Multivariate model-based geostatistics refers to the extension of classical multivariate geostatisti...
Though in the last decade many works have appeared in the literature dealing with model-based extens...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
Though in the last decade many works have appeared in the literature dealing with model-based extens...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...
A non-stationary spatial Gaussian random field (GRF) is described as the solution of an inhomogeneou...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
For many applications with multivariate data, random-field models capturing departures from Gaussian...
AbstractGaussian geostatistical models (GGMs) and Gaussian Markov random fields (GMRFs) are two dist...
Spatial models have been widely used in the public health set-up. In the case of continuous outcomes...
In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often car...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...
Conventional geostatistical methodology solves the problem of predicting the realized value of a lin...
Multivariate model-based geostatistics refers to the extension of classical multivariate geostatisti...
Though in the last decade many works have appeared in the literature dealing with model-based extens...
From the work of G. Matheron till nowadays, multivariate geostatistics has been dominated by the lin...
Though in the last decade many works have appeared in the literature dealing with model-based extens...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...