Catching up Faster in Bayesian Model Selection and Model Averaging
Abstract
Bayesian model averaging, model selection and their approximations such as BIC are generally statistically consistent, but sometimes achieve slower rates of con- vergence than other methods such as AIC and leave-one-out cross-validation. On the other hand, these other methods can be inconsistent. We identify the catch-up phenomenon as a novel explanation for the slow convergence of Bayesian meth- ods. Based on this analysis we define the switch-distribution, a modification of the Bayesian model averaging distribution. We prove that in many situations model selection and prediction based on the switch-distribution is both consistent and achieves optimal convergence rates, thereby resolving the AIC-BIC dilemma. The method is practical; we give an efficient algorithm.
Cite
Text
Erven et al. "Catching up Faster in Bayesian Model Selection and Model Averaging." Neural Information Processing Systems, 2007.Markdown
[Erven et al. "Catching up Faster in Bayesian Model Selection and Model Averaging." Neural Information Processing Systems, 2007.](https://mlanthology.org/neurips/2007/erven2007neurips-catching/)BibTeX
@inproceedings{erven2007neurips-catching,
title = {{Catching up Faster in Bayesian Model Selection and Model Averaging}},
author = {Erven, Tim V. and Rooij, Steven D. and Grünwald, Peter},
booktitle = {Neural Information Processing Systems},
year = {2007},
pages = {417-424},
url = {https://mlanthology.org/neurips/2007/erven2007neurips-catching/}
}