Sampling models for geostatistical data are usually based on Gaussian processes. However, real data often display non-Gaussian features, such as heavy tails. In this article we propose a more flexible class of sampling models. We start from the spatial linear model that has a spatial trend plus a stationary Gaussian error process. We extend the sampling model to non-Gaussianity by including a scale parameter at each location. We make sure that we obtain a valid stochastic process. The scale parameters are spatially correlated to ensure that the process is mean square continuous. We derive expressions for the moments and the kurtosis of the process. This more general stochastic process allows us to accommodate and identify observations that ...
In geostatistics it is commonly assumed that the selection of the sampling locations does not depend...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
Preferential sampling refers to any situation in which the spatial process and the sampling location...
Conventional geostatistical methodology solves the problem of predicting the realized value of a lin...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
This paper proposes a four-pronged approach to efficient Bayesian estimation and prediction for comp...
Conventional geostatistical methodology solves the problem of predicting the realised value of a lin...
This paper proposes a novel family of geostatistical models to account for features that cannot be p...
In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often car...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
We construct non-Gaussian processes that vary continuously in space and time with nonseparable covar...
In geostatistics it is commonly assumed that the selection of the sampling locations does not depend...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
Preferential sampling refers to any situation in which the spatial process and the sampling location...
Conventional geostatistical methodology solves the problem of predicting the realized value of a lin...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
This paper proposes a four-pronged approach to efficient Bayesian estimation and prediction for comp...
Conventional geostatistical methodology solves the problem of predicting the realised value of a lin...
This paper proposes a novel family of geostatistical models to account for features that cannot be p...
In a geostatistical analysis, spatial interpolation or smoothing of the observed values is often car...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
We construct non-Gaussian processes that vary continuously in space and time with nonseparable covar...
In geostatistics it is commonly assumed that the selection of the sampling locations does not depend...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...
We introduce a class of scalable Bayesian hierarchical models for the analysis of massive geostatist...