The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to the model evidence that has received little practical consideration. WBIC uses the fact that the log evidence can be written as an expectation, with respect to a powered posterior proportional to the likelihood raised to a power t(0,1)t(0,1) , of the log deviance. Finding this temperature value tt is generally an intractable problem. We find that for a particular tractable statistical model that the mean squared error of an optimally-tuned version of WBIC with correct temperature tt is lower than an optimally-tuned version of thermodynamic integration (power posteriors). However in practice WBIC uses the a canonical choice of t=1/log(n)t=...
Selecting between competing structural equation models is a common problem. Often selection is based...
20 pages plus 5 pages of Supplementary MaterialThe Bayes factor is the gold-standard figure of merit...
Abstract: When the goal is inference about an unknown θ and prediction of future data D * on the bas...
The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to th...
We present a new approach to model selection and Bayes factor determination, based on Laplace expans...
A statistical model or a learning machine is called regular if the map taking a parameter to a prob-...
We present a careful derivation of the Bayesian Inference Criterion (BIC) for model selection. The B...
In Bayesian data analysis, a deviance information criterion (DIC)proposed by Spiegelhalter et al. (2...
The problem of evaluating the goodness of the predictive distributions devel-oped by the Bayesian mo...
Abstract. We study BIC-like model selection criteria and in particular, their refinements that inclu...
<p>Many modern applications fall into the category of "large-scale" statistical problems, in which b...
This paper presents a refinement of the Bayesian Information Criterion (BIC). While the original BIC...
Bayes factors (BFs) play an important role in comparing the fit of statistical models. However, comp...
The BIC can be viewed as an easily computable proxy to fully Bayesian model choice, which is conduct...
Note A. Contrasting AIC vs posterior probability calculated by Bayes-MMI for model selection and mul...
Selecting between competing structural equation models is a common problem. Often selection is based...
20 pages plus 5 pages of Supplementary MaterialThe Bayes factor is the gold-standard figure of merit...
Abstract: When the goal is inference about an unknown θ and prediction of future data D * on the bas...
The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to th...
We present a new approach to model selection and Bayes factor determination, based on Laplace expans...
A statistical model or a learning machine is called regular if the map taking a parameter to a prob-...
We present a careful derivation of the Bayesian Inference Criterion (BIC) for model selection. The B...
In Bayesian data analysis, a deviance information criterion (DIC)proposed by Spiegelhalter et al. (2...
The problem of evaluating the goodness of the predictive distributions devel-oped by the Bayesian mo...
Abstract. We study BIC-like model selection criteria and in particular, their refinements that inclu...
<p>Many modern applications fall into the category of "large-scale" statistical problems, in which b...
This paper presents a refinement of the Bayesian Information Criterion (BIC). While the original BIC...
Bayes factors (BFs) play an important role in comparing the fit of statistical models. However, comp...
The BIC can be viewed as an easily computable proxy to fully Bayesian model choice, which is conduct...
Note A. Contrasting AIC vs posterior probability calculated by Bayes-MMI for model selection and mul...
Selecting between competing structural equation models is a common problem. Often selection is based...
20 pages plus 5 pages of Supplementary MaterialThe Bayes factor is the gold-standard figure of merit...
Abstract: When the goal is inference about an unknown θ and prediction of future data D * on the bas...