<div><p>Gaussian process models have been widely used in spatial statistics but face tremendous modeling and computational challenges for very large nonstationary spatial datasets. To address these challenges, we develop a Bayesian modeling approach using a nonstationary covariance function constructed based on adaptively selected partitions. The partitioned nonstationary class allows one to knit together local covariance parameters into a valid global nonstationary covariance for prediction, where the local covariance parameters are allowed to be estimated within each partition to reduce computational cost. To further facilitate the computations in local covariance estimation and global prediction, we use the full-scale covariance approxim...
Nonstationary and non-Gaussian spatial data are prevalent across many fields (e.g., counts of animal...
Understanding and predicting environmental phenomena often requires the construction of spatio-tempo...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...
With the proliferation of modern high-resolution measuring instruments mounted on satel-lites, plane...
Spatial modeling with stationary Gaussian processes (GPs) has been widely used, but the assumption t...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
© 2021, Korean Statistical Society.We consider modeling of Fourier coefficients, known as a spectral...
The main objective of this dissertation is to apply Bayesian modeling to different complex and high-...
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
<p>Modern digital data production methods, such as computer simulation and remote sensing, have vast...
Spectral methods are powerful tools to study and model the dependency structure of spatial temporal ...
[[abstract]]We propose a method for estimating nonstationary spatial covariance functions by represe...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Many geophysical and environmental problems depend on estimating a spa-tial process that has nonstat...
Nonstationary and non-Gaussian spatial data are prevalent across many fields (e.g., counts of animal...
Understanding and predicting environmental phenomena often requires the construction of spatio-tempo...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...
With the proliferation of modern high-resolution measuring instruments mounted on satel-lites, plane...
Spatial modeling with stationary Gaussian processes (GPs) has been widely used, but the assumption t...
This dissertation builds a modeling framework for non-Gaussian spatial processes, time series, and p...
© 2021, Korean Statistical Society.We consider modeling of Fourier coefficients, known as a spectral...
The main objective of this dissertation is to apply Bayesian modeling to different complex and high-...
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
<p>Modern digital data production methods, such as computer simulation and remote sensing, have vast...
Spectral methods are powerful tools to study and model the dependency structure of spatial temporal ...
[[abstract]]We propose a method for estimating nonstationary spatial covariance functions by represe...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Many geophysical and environmental problems depend on estimating a spa-tial process that has nonstat...
Nonstationary and non-Gaussian spatial data are prevalent across many fields (e.g., counts of animal...
Understanding and predicting environmental phenomena often requires the construction of spatio-tempo...
Large spatial datasets often exhibit fine scale features that only occur in sub-domains of the space...