This paper describes and illustrates functionality of the spNNGP R package. The package provides a suite of spatial regression models for Gaussian and non-Gaussian pointreferenced outcomes that are spatially indexed. The package implements several Markov chain Monte Carlo (MCMC) and MCMC-free nearest neighbor Gaussian process (NNGP) models for inference about large spatial data. Non-Gaussian outcomes are modeled using a NNGP Pólya-Gamma latent variable. OpenMP parallelization options are provided to take advantage of multiprocessor systems. Package features are illustrated using simulated and real data sets
Non-Gaussian spatial and spatio-temporal data are becoming increasingly prevalent, and their analysi...
Over the past five years, Nearest Neighbor Gaussian Processes (NNGP) arose as a computationally scal...
Over the past five years, Nearest Neighbor Gaussian Processes (NNGP) arose as a computationally scal...
Gaussian process (GP) regression models make for powerful predictors in out of sample exercises, but...
Gaussian Process (GP) models provide a very flexible nonparametric approach to modeling location-and...
<p>Spatial process models for analyzing geostatistical data entail computations that become prohibit...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
We consider alternate formulations of recently proposed hierarchical nearest neighbor Gaussian proce...
We develop a class of nearest-neighbor mixture models that provide direct, computationally efficient...
Scientists and investigators in such diverse fields as geological and environmen-tal sciences, ecolo...
Scientists and investigators in such diverse fields as geological and environmental sci-ences, ecolo...
Particulate matter (PM) is a class of malicious environmental pollutants known to be detrimental to ...
The spectral representation of stationary Gaussian processes via the Fourier basis provides a comput...
This paper introduces an R package for spatial and spatio-temporal prediction and forecasting for lo...
Non-Gaussian spatial and spatio-temporal data are becoming increasingly prevalent, and their analysi...
Over the past five years, Nearest Neighbor Gaussian Processes (NNGP) arose as a computationally scal...
Over the past five years, Nearest Neighbor Gaussian Processes (NNGP) arose as a computationally scal...
Gaussian process (GP) regression models make for powerful predictors in out of sample exercises, but...
Gaussian Process (GP) models provide a very flexible nonparametric approach to modeling location-and...
<p>Spatial process models for analyzing geostatistical data entail computations that become prohibit...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
We consider alternate formulations of recently proposed hierarchical nearest neighbor Gaussian proce...
We develop a class of nearest-neighbor mixture models that provide direct, computationally efficient...
Scientists and investigators in such diverse fields as geological and environmen-tal sciences, ecolo...
Scientists and investigators in such diverse fields as geological and environmental sci-ences, ecolo...
Particulate matter (PM) is a class of malicious environmental pollutants known to be detrimental to ...
The spectral representation of stationary Gaussian processes via the Fourier basis provides a comput...
This paper introduces an R package for spatial and spatio-temporal prediction and forecasting for lo...
Non-Gaussian spatial and spatio-temporal data are becoming increasingly prevalent, and their analysi...
Over the past five years, Nearest Neighbor Gaussian Processes (NNGP) arose as a computationally scal...
Over the past five years, Nearest Neighbor Gaussian Processes (NNGP) arose as a computationally scal...