Skip Navigation

Publication Detail

Title: Modeling Massive Spatial Datasets Using a Conjugate Bayesian Linear Modeling Framework.

Authors: Banerjee, Sudipto

Published In Spat Stat, (2020 Jun)

Abstract: Geographic Information Systems (GIS) and related technologies have generated substantial interest among statisticians with regard to scalable methodologies for analyzing large spatial datasets. A variety of scalable spatial process models have been proposed that can be easily embedded within a hierarchical modeling framework to carry out Bayesian inference. While the focus of statistical research has mostly been directed toward innovative and more complex model development, relatively limited attention has been accorded to approaches for easily implementable scalable hierarchical models for the practicing scientist or spatial analyst. This article discusses how point-referenced spatial process models can be cast as a conjugate Bayesian linear regression that can rapidly deliver inference on spatial processes. The approach allows exact sampling directly (avoids iterative algorithms such as Markov chain Monte Carlo) from the joint posterior distribution of regression parameters, the latent process and the predictive random variables, and can be easily implemented on statistical programming environments such as R.

PubMed ID: 35265456 Exiting the NIEHS site

MeSH Terms: No MeSH terms associated with this publication

Back
to Top