Literature DB >> 29441529

Toward a diagnostic toolkit for linear models with Gaussian-process distributed random effects.

Maitreyee Bose1, James S Hodges2, Sudipto Banerjee3.   

Abstract

Gaussian processes (GPs) are widely used as distributions of random effects in linear mixed models, which are fit using the restricted likelihood or the closely related Bayesian analysis. This article addresses two problems. First, we propose tools for understanding how data determine estimates in these models, using a spectral basis approximation to the GP under which the restricted likelihood is formally identical to the likelihood for a gamma-errors GLM with identity link. Second, to examine the data's support for a covariate and to understand how adding that covariate moves variation in the outcome y out of the GP and error parts of the fit, we apply a linear-model diagnostic, the added variable plot (AVP), both to the original observations and to projections of the data onto the spectral basis functions. The spectral- and observation-domain AVPs estimate the same coefficient for a covariate but emphasize low- and high-frequency data features respectively and thus highlight the covariate's effect on the GP and error parts of the fit, respectively. The spectral approximation applies to data observed on a regular grid; for data observed at irregular locations, we propose smoothing the data to a grid before applying our methods. The methods are illustrated using the forest-biomass data of Finley et al. (2008).
© 2018, The International Biometric Society.

Entities:  

Keywords:  Added variable plot; Gaussian process; Lack of fit; Linear mixed model; Missing predictor; Spectral approximation

Mesh:

Year:  2018        PMID: 29441529      PMCID: PMC6089687          DOI: 10.1111/biom.12848

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  5 in total

1.  Bayesian Smoothing with Gaussian Processes Using Fourier Basis Functions in the spectralGP Package.

Authors:  Christopher J Paciorek
Journal:  J Stat Softw       Date:  2007-04       Impact factor: 6.440

2.  spBayes: An R Package for Univariate and Multivariate Hierarchical Point-referenced Spatial Models.

Authors:  Andrew O Finley; Sudipto Banerjee; Bradley P Carlin
Journal:  J Stat Softw       Date:  2007-04       Impact factor: 6.440

3.  The importance of scale for spatial-confounding bias and precision of spatial regression estimators.

Authors:  Christopher J Paciorek
Journal:  Stat Sci       Date:  2010-02       Impact factor: 2.901

4.  Bayesian Spatial Quantile Regression.

Authors:  Brian J Reich; Montserrat Fuentes; David B Dunson
Journal:  J Am Stat Assoc       Date:  2012-01-01       Impact factor: 5.033

5.  Hierarchical spatial modeling of additive and dominance genetic variance for large spatial trial datasets.

Authors:  Andrew O Finley; Sudipto Banerjee; Patrik Waldmann; Tore Ericsson
Journal:  Biometrics       Date:  2009-06       Impact factor: 2.571

  5 in total

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