We construct non-Gaussian processes that vary continuously in space and time with nonseparable covariance functions. Starting from a general and flexible way of constructing valid nonseparable covariance functions through mixing over separable covariance functions, the resulting models are generalized by allowing for outliers as well as regions with larger variances. We induce this through scale mixing with separate positive-valued processes. Smooth mixing processes are applied to the underlying correlated processes in space and in time, thus leading to regions in space and time of increased spread. An uncorrelated mixing process on the nugget effect accommodates outliers. Posterior and predictive Bayesian inference with these models is imp...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
The aim of this work is to construct nonseparable, stationary covariance functions for processes th...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...
Spatio-temporal processes in the environmental science are usually assumed to follow a Gaussian proc...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
The aim of this work is to construct nonseparable, stationary covariance functions for processes tha...
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...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
Abstract: In this paper we develop a nonparametric multivariate spatial model that avoids specifying...
We develop a class of nearest-neighbor mixture models that provide direct, computationally efficient...
We discuss models for multivariate counts observed at fixed spatial locations of a region of interes...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...
Understanding and predicting environmental phenomena often requires the construction of spatio-tempo...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
The aim of this work is to construct nonseparable, stationary covariance functions for processes th...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...
Spatio-temporal processes in the environmental science are usually assumed to follow a Gaussian proc...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
The aim of this work is to construct nonseparable, stationary covariance functions for processes tha...
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...
Sampling models for geostatistical data are usually based on Gaussian processes. However, real data ...
Abstract: In this paper we develop a nonparametric multivariate spatial model that avoids specifying...
We develop a class of nearest-neighbor mixture models that provide direct, computationally efficient...
We discuss models for multivariate counts observed at fixed spatial locations of a region of interes...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...
Understanding and predicting environmental phenomena often requires the construction of spatio-tempo...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
The aim of this work is to construct nonseparable, stationary covariance functions for processes th...
National audienceStandard geostatistical models assume second order stationarity for the underlying ...