Literature DB >> 21947451

An evaluation of prior influence on the predictive ability of Bayesian model averaging.

Véronique St-Louis1, Murray K Clayton, Anna M Pidgeon, Volker C Radeloff.   

Abstract

Model averaging is gaining popularity among ecologists for making inference and predictions. Methods for combining models include Bayesian model averaging (BMA) and Akaike's Information Criterion (AIC) model averaging. BMA can be implemented with different prior model weights, including the Kullback-Leibler prior associated with AIC model averaging, but it is unclear how the prior model weight affects model results in a predictive context. Here, we implemented BMA using the Bayesian Information Criterion (BIC) approximation to Bayes factors for building predictive models of bird abundance and occurrence in the Chihuahuan Desert of New Mexico. We examined how model predictive ability differed across four prior model weights, and how averaged coefficient estimates, standard errors and coefficients' posterior probabilities varied for 16 bird species. We also compared the predictive ability of BMA models to a best single-model approach. Overall, Occam's prior of parsimony provided the best predictive models. In general, the Kullback-Leibler prior, however, favored complex models of lower predictive ability. BMA performed better than a best single-model approach independently of the prior model weight for 6 out of 16 species. For 6 other species, the choice of the prior model weight affected whether BMA was better than the best single-model approach. Our results demonstrate that parsimonious priors may be favorable over priors that favor complexity for making predictions. The approach we present has direct applications in ecology for better predicting patterns of species' abundance and occurrence.

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Year:  2011        PMID: 21947451     DOI: 10.1007/s00442-011-2118-6

Source DB:  PubMed          Journal:  Oecologia        ISSN: 0029-8549            Impact factor:   3.225


  5 in total

1.  Model selection in ecology and evolution.

Authors:  Jerald B Johnson; Kristian S Omland
Journal:  Trends Ecol Evol       Date:  2004-02       Impact factor: 17.712

2.  Model weights and the foundations of multimodel inference.

Authors:  William A Link; Richard J Barker
Journal:  Ecology       Date:  2006-10       Impact factor: 5.499

3.  Predicting bird species distributions in reconstructed landscapes.

Authors:  James R Thomson; Ralph Mac Nally; Erica Fleishman; Greg Horrocks
Journal:  Conserv Biol       Date:  2007-06       Impact factor: 6.560

4.  Bayesian multimodel inference for dose-response studies.

Authors:  William A Link; Peter H Albers
Journal:  Environ Toxicol Chem       Date:  2007-09       Impact factor: 3.742

5.  Prediction uncertainty of environmental change effects on temperate European biodiversity.

Authors:  Carsten F Dormann; Oliver Schweiger; P Arens; I Augenstein; St Aviron; Debra Bailey; J Baudry; R Billeter; R Bugter; R Bukácek; F Burel; M Cerny; Raphaël De Cock; Geert De Blust; R DeFilippi; Tim Diekötter; J Dirksen; W Durka; P J Edwards; M Frenzel; R Hamersky; Frederik Hendrickx; F Herzog; St Klotz; B Koolstra; A Lausch; D Le Coeur; J Liira; J P Maelfait; P Opdam; M Roubalova; Agnes Schermann-Legionnet; N Schermann; T Schmidt; M J M Smulders; M Speelmans; P Simova; J Verboom; Walter van Wingerden; M Zobel
Journal:  Ecol Lett       Date:  2007-12-07       Impact factor: 9.492

  5 in total
  1 in total

1.  A Bayesian model averaging approach to examining changes in quality of life among returning Iraq and Afghanistan veterans.

Authors:  Eileen M Stock; Nathan A Kimbrel; Eric C Meyer; Laurel A Copeland; Ralph Monte; John E Zeber; Suzy Bird Gulliver; Sandra B Morissette
Journal:  Int J Methods Psychiatr Res       Date:  2014-06-18       Impact factor: 4.035

  1 in total

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