Bayesian Model Comparison by Monte Carlo Chaining

Abstract

The techniques of Bayesian inference have been applied with great success to many problems in neural computing including evaluation of regression functions, determination of error bars on predictions, and the treatment of hyper-parameters. However, the problem of model comparison is a much more challenging one for which current techniques have significant limitations. In this paper we show how an extended form of Markov chain Monte Carlo, called chaining, is able to provide effective estimates of the relative probabilities of different models. We present results from the robot arm problem and compare them with the corresponding results obtained using the standard Gaussian approximation framework.

Cite

Text

Barber and Bishop. "Bayesian Model Comparison by Monte Carlo Chaining." Neural Information Processing Systems, 1996.

Markdown

[Barber and Bishop. "Bayesian Model Comparison by Monte Carlo Chaining." Neural Information Processing Systems, 1996.](https://mlanthology.org/neurips/1996/barber1996neurips-bayesian/)

BibTeX

@inproceedings{barber1996neurips-bayesian,
  title     = {{Bayesian Model Comparison by Monte Carlo Chaining}},
  author    = {Barber, David and Bishop, Christopher M.},
  booktitle = {Neural Information Processing Systems},
  year      = {1996},
  pages     = {333-339},
  url       = {https://mlanthology.org/neurips/1996/barber1996neurips-bayesian/}
}