Sparse Cholesky matrices in spatial statistics

02/26/2021
by   Abhirup Datta, et al.
0

Gaussian Processes (GP) is a staple in the toolkit of a spatial statistician. Well-documented computing roadblocks in the analysis of large geospatial datasets using Gaussian Processes have now been successfully mitigated via several recent statistical innovations. Nearest Neighbor Gaussian Processes (NNGP) has emerged as one of the leading candidates for such massive-scale geospatial analysis owing to their empirical success. This article reviews the connection of NNGP to sparse Cholesky factors of the spatial precision (inverse-covariance) matrices. Focus of the review is on these sparse Cholesky matrices which are versatile and have recently found many diverse applications beyond the primary usage of NNGP for fast parameter estimation and prediction in the spatial (generalized) linear models. In particular, we discuss applications of sparse NNGP Cholesky matrices to address multifaceted computational issues in spatial bootstrapping, simulation of large-scale realizations of Gaussian random fields, and extensions to non-parametric mean function estimation of a Gaussian Process using Random Forests. We also review a sparse-Cholesky-based model for areal (geographically-aggregated) data that addresses interpretability issues of existing areal models. Finally, we highlight some yet-to-be-addressed issues of such sparse Cholesky approximations that warrants further research.

READ FULL TEXT

page 11

page 13

research
08/18/2019

Block Nearest Neighboor Gaussian processes for large datasets

This work develops a valid spatial block-Nearest Neighbor Gaussian proce...
research
01/30/2023

Variational sparse inverse Cholesky approximation for latent Gaussian processes via double Kullback-Leibler minimization

To achieve scalable and accurate inference for latent Gaussian processes...
research
11/09/2018

A Note on the comparison of Nearest Neighbor Gaussian Process (NNGP) based models

This note is devoted to the comparison between two Nearest-neighbor Gaus...
research
07/25/2019

Bayesian Analysis of Spatial Generalized Linear Mixed Models with Laplace Random Fields

Gaussian random field (GRF) models are widely used in spatial statistics...
research
09/22/2021

Adapting conditional simulation using circulant embedding for irregularly spaced spatial data

Computing an ensemble of random fields using conditional simulation is a...
research
11/27/2022

Radial Neighbors for Provably Accurate Scalable Approximations of Gaussian Processes

In geostatistical problems with massive sample size, Gaussian processes ...
research
07/03/2020

Karhunen-Loève Expansions for Axially Symmetric Gaussian Processes: Modeling Strategies and L^2 Approximations

Axially symmetric processes on spheres, for which the second-order depen...

Please sign up or login with your details

Forgot password? Click here to reset