Literature DB >> 33868538

Practical Bayesian Modeling and Inference for Massive Spatial Datasets On Modest Computing Environments.

Lu Zhang1, Abhirup Datta2, Sudipto Banerjee1.   

Abstract

With continued advances in Geographic Information Systems and related computational technologies, statisticians are often required to analyze very large spatial datasets. This has generated substantial interest over the last decade, already too vast to be summarized here, in scalable methodologies for analyzing large spatial datasets. Scalable spatial process models have been found especially attractive due to their richness and flexibility and, particularly so in the Bayesian paradigm, due to their presence in hierarchical model settings. However, the vast majority of research articles present in this domain have been geared toward innovative theory or more complex model development. Very limited attention has been accorded to approaches for easily implementable scalable hierarchical models for the practicing scientist or spatial analyst. This article devises massively scalable Bayesian approaches that can rapidly deliver inference on spatial process that are practically indistinguishable from inference obtained using more expensive alternatives. A key emphasis is on implementation within very standard (modest) computing environments (e.g., a standard desktop or laptop) using easily available statistical software packages. Key insights are offered regarding assumptions and approximations concerning practical efficiency.

Entities:  

Keywords:  Bayesian inference; Gaussian processes; Latent spatial processes; Nearest-neighbor Gaussian processes

Year:  2019        PMID: 33868538      PMCID: PMC8048149          DOI: 10.1002/sam.11413

Source DB:  PubMed          Journal:  Stat Anal Data Min        ISSN: 1932-1864            Impact factor:   1.051


  4 in total

1.  On geodetic distance computations in spatial modeling.

Authors:  Sudipto Banerjee
Journal:  Biometrics       Date:  2005-06       Impact factor: 2.571

2.  NONSEPARABLE DYNAMIC NEAREST NEIGHBOR GAUSSIAN PROCESS MODELS FOR LARGE SPATIO-TEMPORAL DATA WITH AN APPLICATION TO PARTICULATE MATTER ANALYSIS.

Authors:  Abhirup Datta; Sudipto Banerjee; Andrew O Finley; Nicholas A S Hamm; Martijn Schaap
Journal:  Ann Appl Stat       Date:  2016-09-28       Impact factor: 2.083

3.  High-Dimensional Bayesian Geostatistics.

Authors:  Sudipto Banerjee
Journal:  Bayesian Anal       Date:  2017-05-16       Impact factor: 3.728

4.  Hierarchical Nearest-Neighbor Gaussian Process Models for Large Geostatistical Datasets.

Authors:  Abhirup Datta; Sudipto Banerjee; Andrew O Finley; Alan E Gelfand
Journal:  J Am Stat Assoc       Date:  2016-08-18       Impact factor: 5.033

  4 in total
  1 in total

1.  Modeling Massive Spatial Datasets Using a Conjugate Bayesian Linear Modeling Framework.

Authors:  Sudipto Banerjee
Journal:  Spat Stat       Date:  2020-02-07
  1 in total

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