Approximation of the model evidence is well known to be challenging. One promising approach is based on thermodynamic integration, but a key concern is that the thermodynamic integral can suffer from high variability in many applications. This article considers the reduction of variance that can be achieved by exploiting control variates in this setting. Our methodology applies whenever the gradient of both the log-likelihood and the log-prior with respect to the parameters can be efficiently evaluated. Results obtained on regression models and popular benchmark datasets demonstrate a significant and sometimes dramatic reduction in estimator variance and provide insight into the wider applicability of control variates to evidence estimation...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
International audienceIn the Bayesian paradigm, a common method for comparing two models is to compu...
(A) Aspects of linear regression model assessed by model selection and model averaging (see Fig 1A)....
Approximation of the model evidence is well known to be challenging. One promising approach is based...
<p>Approximation of the model evidence is well known to be challenging. One promising approach is ba...
Bayesian model comparison relies upon the model evidence, yet for many models of interest the model ...
The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to th...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
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...
In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically co...
2005 Joint Annual Meeting of the Interface and the Classification Society of North America, St. Loui...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
Many popular statistical models for complex phenomena areintractable, in the sense that the l...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
International audienceIn the Bayesian paradigm, a common method for comparing two models is to compu...
(A) Aspects of linear regression model assessed by model selection and model averaging (see Fig 1A)....
Approximation of the model evidence is well known to be challenging. One promising approach is based...
<p>Approximation of the model evidence is well known to be challenging. One promising approach is ba...
Bayesian model comparison relies upon the model evidence, yet for many models of interest the model ...
The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to th...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
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...
In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically co...
2005 Joint Annual Meeting of the Interface and the Classification Society of North America, St. Loui...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
Many popular statistical models for complex phenomena areintractable, in the sense that the l...
One of the more principled methods of performing model selection is via Bayes factors. However, calc...
International audienceIn the Bayesian paradigm, a common method for comparing two models is to compu...
(A) Aspects of linear regression model assessed by model selection and model averaging (see Fig 1A)....