Literature DB >> 22298952

Adaptive Gaussian Predictive Process Models for Large Spatial Datasets.

Rajarshi Guhaniyogi1, Andrew O Finley, Sudipto Banerjee, Alan E Gelfand.   

Abstract

Large point referenced datasets occur frequently in the environmental and natural sciences. Use of Bayesian hierarchical spatial models for analyzing these datasets is undermined by onerous computational burdens associated with parameter estimation. Low-rank spatial process models attempt to resolve this problem by projecting spatial effects to a lower-dimensional subspace. This subspace is determined by a judicious choice of "knots" or locations that are fixed a priori. One such representation yields a class of predictive process models (e.g., Banerjee et al., 2008) for spatial and spatial-temporal data. Our contribution here expands upon predictive process models with fixed knots to models that accommodate stochastic modeling of the knots. We view the knots as emerging from a point pattern and investigate how such adaptive specifications can yield more flexible hierarchical frameworks that lead to automated knot selection and substantial computational benefits.

Entities:  

Year:  2011        PMID: 22298952      PMCID: PMC3268014          DOI: 10.1002/env.1131

Source DB:  PubMed          Journal:  Environmetrics        ISSN: 1099-095X            Impact factor:   1.900


  4 in total

1.  Bayesian geostatistical modelling with informative sampling locations.

Authors:  D Pati; B J Reich; D B Dunson
Journal:  Biometrika       Date:  2011-03       Impact factor: 2.445

2.  Hierarchical Spatial Process Models for Multiple Traits in Large Genetic Trials.

Authors:  Sudipto Banerjee; Andrew O Finley; Patrik Waldmann; Tore Ericsson
Journal:  J Am Stat Assoc       Date:  2010-06-01       Impact factor: 5.033

3.  Improving the performance of predictive process modeling for large datasets.

Authors:  Andrew O Finley; Huiyan Sang; Sudipto Banerjee; Alan E Gelfand
Journal:  Comput Stat Data Anal       Date:  2009-06-15       Impact factor: 1.681

4.  Gaussian predictive process models for large spatial data sets.

Authors:  Sudipto Banerjee; Alan E Gelfand; Andrew O Finley; Huiyan Sang
Journal:  J R Stat Soc Series B Stat Methodol       Date:  2008-09-01       Impact factor: 4.488

  4 in total
  5 in total

1.  Threshold Knot Selection for Large-Scale Spatial Models With Applications to the Deepwater Horizon Disaster.

Authors:  Casey M Jelsema; Richard K Kwok; Shyamal D Peddada
Journal:  J Stat Comput Simul       Date:  2019-04-30       Impact factor: 1.424

2.  Spatial Multivariate Trees for Big Data Bayesian Regression.

Authors:  Michele Peruzzi; David B Dunson
Journal:  J Mach Learn Res       Date:  2022       Impact factor: 5.177

3.  Highly Scalable Bayesian Geostatistical Modeling via Meshed Gaussian Processes on Partitioned Domains.

Authors:  Michele Peruzzi; Sudipto Banerjee; Andrew O Finley
Journal:  J Am Stat Assoc       Date:  2020-11-24       Impact factor: 4.369

4.  Hierarchical factor models for large spatially misaligned data: a low-rank predictive process approach.

Authors:  Qian Ren; Sudipto Banerjee
Journal:  Biometrics       Date:  2013-02-04       Impact factor: 2.571

5.  Efficient Gaussian process regression for large datasets.

Authors:  Anjishnu Banerjee; David B Dunson; Surya T Tokdar
Journal:  Biometrika       Date:  2013-03       Impact factor: 2.445

  5 in total

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