Thermodynamic integration (TI) for computing marginal likelihoods is based on an inverse annealing path from the prior to the posterior distribution. In many cases, the resulting estimator suffers from high variability, which particularly stems from the prior regime. When comparing complex models with differences in a comparatively small number of parameters, intrinsic errors from sampling fluctuations may outweigh the differences in the log marginal likelihood estimates. In the present article, we propose a TI scheme that directly targets the log Bayes factor. The method is based on a modified annealing path between the posterior distributions of the two models compared, which systematically avoids the high variance prior regime. We combin...
Approximation of the model evidence is well known to be challenging. One promising approach is based...
Approximation of the model evidence is well known to be challenging. One promising approach is based...
Evaluating normalising constants is important across a range of topics in statistical learning, nota...
Thermodynamic integration (TI) for computing marginal likelihoods is based on an inverse annealing p...
A Bayesian approach to model comparison based on the integrated or marginal likelihood is considered...
Abstract.—In the Bayesian paradigm, a common method for comparing two models is to compute the Bayes...
International audienceIn the Bayesian paradigm, a common method for comparing two models is to compu...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
There often are many alternative models of a biochemical system. Distinguishing models and finding t...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
Bayesian model comparison relies upon the model evidence, yet for many models of interest the model ...
this paper is to illustrate how this may be achieved using ideas from thermodynamic integration or p...
Approximation of the model evidence is well known to be challenging. One promising approach is based...
Approximation of the model evidence is well known to be challenging. One promising approach is based...
Evaluating normalising constants is important across a range of topics in statistical learning, nota...
Thermodynamic integration (TI) for computing marginal likelihoods is based on an inverse annealing p...
A Bayesian approach to model comparison based on the integrated or marginal likelihood is considered...
Abstract.—In the Bayesian paradigm, a common method for comparing two models is to compute the Bayes...
International audienceIn the Bayesian paradigm, a common method for comparing two models is to compu...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
There often are many alternative models of a biochemical system. Distinguishing models and finding t...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
Bayesian model comparison relies upon the model evidence, yet for many models of interest the model ...
this paper is to illustrate how this may be achieved using ideas from thermodynamic integration or p...
Approximation of the model evidence is well known to be challenging. One promising approach is based...
Approximation of the model evidence is well known to be challenging. One promising approach is based...
Evaluating normalising constants is important across a range of topics in statistical learning, nota...