Cargando…

Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes

Spatial probit generalized linear mixed models (spGLMM) with a linear fixed effect and a spatial random effect, endowed with a Gaussian Process prior, are widely used for analysis of binary spatial data. However, the canonical Bayesian implementation of this hierarchical mixed model can involve prot...

Descripción completa

Detalles Bibliográficos
Autores principales: Saha, Arkajyoti, Datta, Abhirup, Banerjee, Sudipto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10544813/
https://www.ncbi.nlm.nih.gov/pubmed/37786782
http://dx.doi.org/10.6339/22-jds1073
_version_ 1785114556460171264
author Saha, Arkajyoti
Datta, Abhirup
Banerjee, Sudipto
author_facet Saha, Arkajyoti
Datta, Abhirup
Banerjee, Sudipto
author_sort Saha, Arkajyoti
collection PubMed
description Spatial probit generalized linear mixed models (spGLMM) with a linear fixed effect and a spatial random effect, endowed with a Gaussian Process prior, are widely used for analysis of binary spatial data. However, the canonical Bayesian implementation of this hierarchical mixed model can involve protracted Markov Chain Monte Carlo sampling. Alternate approaches have been proposed that circumvent this by directly representing the marginal likelihood from spGLMM in terms of multivariate normal cummulative distribution functions (cdf). We present a direct and fast rendition of this latter approach for predictions from a spatial probit linear mixed model. We show that the covariance matrix of the cdf characterizing the marginal cdf of binary spatial data from spGLMM is amenable to approximation using Nearest Neighbor Gaussian Processes (NNGP). This facilitates a scalable prediction algorithm for spGLMM using NNGP that only involves sparse or small matrix computations and can be deployed in an embarrassingly parallel manner. We demonstrate the accuracy and scalability of the algorithm via numerous simulation experiments and an analysis of species presence-absence data.
format Online
Article
Text
id pubmed-10544813
institution National Center for Biotechnology Information
language English
publishDate 2022
record_format MEDLINE/PubMed
spelling pubmed-105448132023-10-02 Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes Saha, Arkajyoti Datta, Abhirup Banerjee, Sudipto J Data Sci Article Spatial probit generalized linear mixed models (spGLMM) with a linear fixed effect and a spatial random effect, endowed with a Gaussian Process prior, are widely used for analysis of binary spatial data. However, the canonical Bayesian implementation of this hierarchical mixed model can involve protracted Markov Chain Monte Carlo sampling. Alternate approaches have been proposed that circumvent this by directly representing the marginal likelihood from spGLMM in terms of multivariate normal cummulative distribution functions (cdf). We present a direct and fast rendition of this latter approach for predictions from a spatial probit linear mixed model. We show that the covariance matrix of the cdf characterizing the marginal cdf of binary spatial data from spGLMM is amenable to approximation using Nearest Neighbor Gaussian Processes (NNGP). This facilitates a scalable prediction algorithm for spGLMM using NNGP that only involves sparse or small matrix computations and can be deployed in an embarrassingly parallel manner. We demonstrate the accuracy and scalability of the algorithm via numerous simulation experiments and an analysis of species presence-absence data. 2022 2022-11-03 /pmc/articles/PMC10544813/ /pubmed/37786782 http://dx.doi.org/10.6339/22-jds1073 Text en https://creativecommons.org/licenses/by/4.0/Open access article under the CC BY (https://creativecommons.org/licenses/by/4.0/) license.
spellingShingle Article
Saha, Arkajyoti
Datta, Abhirup
Banerjee, Sudipto
Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes
title Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes
title_full Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes
title_fullStr Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes
title_full_unstemmed Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes
title_short Scalable Predictions for Spatial Probit Linear Mixed Models Using Nearest Neighbor Gaussian Processes
title_sort scalable predictions for spatial probit linear mixed models using nearest neighbor gaussian processes
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10544813/
https://www.ncbi.nlm.nih.gov/pubmed/37786782
http://dx.doi.org/10.6339/22-jds1073
work_keys_str_mv AT sahaarkajyoti scalablepredictionsforspatialprobitlinearmixedmodelsusingnearestneighborgaussianprocesses
AT dattaabhirup scalablepredictionsforspatialprobitlinearmixedmodelsusingnearestneighborgaussianprocesses
AT banerjeesudipto scalablepredictionsforspatialprobitlinearmixedmodelsusingnearestneighborgaussianprocesses