Skip to main content
U.S. flag

An official website of the United States government

Bayes factors and multimodel inference

June 9, 2009

Multimodel inference has two main themes: model selection, and model averaging. Model averaging is a means of making inference conditional on a model set, rather than on a selected model, allowing formal recognition of the uncertainty associated with model choice. The Bayesian paradigm provides a natural framework for model averaging, and provides a context for evaluation of the commonly used AIC weights. We review Bayesian multimodel inference, noting the importance of Bayes factors. Noting the sensitivity of Bayes factors to the choice of priors on parameters, we define and propose nonpreferential priors as offering a reasonable standard for objective multimodel inference.

Publication Year 2009
Title Bayes factors and multimodel inference
Authors W. A. Link, R. J. Barker
Publication Type Book Chapter
Publication Subtype Book Chapter
Series Number 3
Index ID 5211454
Record Source USGS Publications Warehouse
USGS Organization Patuxent Wildlife Research Center