In spite of the interest in and appeal of convolution-based approaches for nonstationary spatial modeling, off-the-shelf software for model fitting does not as of yet exist. Convolution-based models are highly flexible yet notoriously difficult to fit, even with relatively small data sets. The general lack of pre-packaged options for model fitting makes it difficult to compare new methodology in nonstationary modeling with other existing methods, and as a result most new models are simply compared to stationary models. Using a convolution-based approach, we present a new nonstationary covariance function for spatial Gaussian process models that allows for efficient computing in two ways: first, by representing the spatially-varying paramete...
Modelling spatio-temporal processes has become an important issue in current research. Since Gaussia...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
In spite of the interest in and appeal of convolution-based approaches for nonstationary spatial mod...
In this article we address two important issues common to the analysis of large spatial datasets. On...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...
[[abstract]]We propose a method for estimating nonstationary spatial covariance functions by represe...
Standard geostatistical models assume second order stationarity of the underlying Random Function. I...
We develop a class of nearest-neighbor mixture models that provide direct, computationally efficient...
Spatio-temporal processes in the environmental science are usually assumed to follow a Gaussian proc...
<div><p>Gaussian process models have been widely used in spatial statistics but face tremendous mode...
Spatial and spatio-temporal phenomena are commonly modelled as Gaussian processes via the geostatist...
Modelling spatio-temporal processes has become an important issue in current research. Since Gaussia...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
In spite of the interest in and appeal of convolution-based approaches for nonstationary spatial mod...
In this article we address two important issues common to the analysis of large spatial datasets. On...
AbstractWe derive a class of matrix valued covariance functions where the direct and cross-covarianc...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
Over the last decade, convolution-based models for spatial data have increased in popularity as a re...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...
[[abstract]]We propose a method for estimating nonstationary spatial covariance functions by represe...
Standard geostatistical models assume second order stationarity of the underlying Random Function. I...
We develop a class of nearest-neighbor mixture models that provide direct, computationally efficient...
Spatio-temporal processes in the environmental science are usually assumed to follow a Gaussian proc...
<div><p>Gaussian process models have been widely used in spatial statistics but face tremendous mode...
Spatial and spatio-temporal phenomena are commonly modelled as Gaussian processes via the geostatist...
Modelling spatio-temporal processes has become an important issue in current research. Since Gaussia...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...