For many applications with multivariate data, random-field models capturing departures from Gaussianity within realizations are appropriate. For this reason, we formulate a new class of multivariate non-Gaussian models based on systems of stochastic partial differential equations with additive type G noise whose marginal covariance functions are of Matérn type. We consider four increasingly flexible constructions of the noise, where the first two are similar to existing copula-based models. In contrast with these, the last two constructions can model non-Gaussian spatial data without replicates. Computationally efficient methods for likelihood-based parameter estimation and probabilistic prediction are proposed, and the flexibility of the m...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
Non-Gaussian stochastic fields are introduced by means of integrals with respect to independently sc...
This paper presents theoretical advances in the application of the Stochastic Partial Differential E...
The article studies non-Gaussian extensions of a recently discovered link between certain Gaussian r...
The article studies non-Gaussian extensions of a recently discovered link between certain Gaussian r...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
Gaussian random fields (GRFs) constitute an important part of spatial modelling, but can be computat...
In recent years, stochastic partial differential equations (SPDEs) have been shown to provide a usef...
In recent years, stochastic partial differential equations (SPDEs) have been shown to provide a usef...
International audienceThis paper deals with the construction of a non Gaussian positive-definite mat...
This thesis is based on five papers (A-E) treating estimation methods for unbounded densities, rando...
Continuously indexed Gaussian fields (GFs) is the most important ingredient in spatial statistical m...
A non-stationary spatial Gaussian random field (GRF) is described as the solution of an inhomogeneou...
A new class of stochastic field models is constructed using nested stochastic partial differential e...
Continuously indexed Gaussian fields (GFs) are the most important ingredient in spatial statistical ...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
Non-Gaussian stochastic fields are introduced by means of integrals with respect to independently sc...
This paper presents theoretical advances in the application of the Stochastic Partial Differential E...
The article studies non-Gaussian extensions of a recently discovered link between certain Gaussian r...
The article studies non-Gaussian extensions of a recently discovered link between certain Gaussian r...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
Gaussian random fields (GRFs) constitute an important part of spatial modelling, but can be computat...
In recent years, stochastic partial differential equations (SPDEs) have been shown to provide a usef...
In recent years, stochastic partial differential equations (SPDEs) have been shown to provide a usef...
International audienceThis paper deals with the construction of a non Gaussian positive-definite mat...
This thesis is based on five papers (A-E) treating estimation methods for unbounded densities, rando...
Continuously indexed Gaussian fields (GFs) is the most important ingredient in spatial statistical m...
A non-stationary spatial Gaussian random field (GRF) is described as the solution of an inhomogeneou...
A new class of stochastic field models is constructed using nested stochastic partial differential e...
Continuously indexed Gaussian fields (GFs) are the most important ingredient in spatial statistical ...
This paper represents a survey of recent advances in modeling of space or space-time Gaussian Random...
Non-Gaussian stochastic fields are introduced by means of integrals with respect to independently sc...
This paper presents theoretical advances in the application of the Stochastic Partial Differential E...