Model choice plays an increasingly important role in statistics. From a Bayesian perspective a crucial goal is to compute the marginal likelihood of the data for a given model. However, this is typically a difficult task since it amounts to integrating over all model parameters. The aim of the paper is to illustrate how this may be achieved by using ideas from thermodynamic integration or path sampling. We show how the marginal likelihood can be computed via Markov chain Monte Carlo methods on modified posterior distributions for each model. This then allows Bayes factors or posterior model probabilities to be calculated. We show that this approach requires very little tuning and is straightforward to implement. The new method is illustrate...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
2005 Joint Annual Meeting of the Interface and the Classification Society of North America, St. Loui...
The efficiency of a marginal likelihood estimator where the product of the marginal posterior distri...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
this paper is to illustrate how this may be achieved using ideas from thermodynamic integration or p...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...
[[abstract]]Computing marginal probabilities is an important and fundamental issue in Bayesian infer...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
A Bayesian approach to model comparison based on the integrated or marginal likelihood is considered...
The key quantity needed for Bayesian hypothesis testing and model selection is the marginal likeliho...
Weinberg (2012) described a constructive algorithm for computing the marginal likelihood, Z, from a ...
Recent advances in Markov chain Monte Carlo (MCMC) extend the scope of Bayesian inference to models ...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
2005 Joint Annual Meeting of the Interface and the Classification Society of North America, St. Loui...
The efficiency of a marginal likelihood estimator where the product of the marginal posterior distri...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
this paper is to illustrate how this may be achieved using ideas from thermodynamic integration or p...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...
[[abstract]]Computing marginal probabilities is an important and fundamental issue in Bayesian infer...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
A Bayesian approach to model comparison based on the integrated or marginal likelihood is considered...
The key quantity needed for Bayesian hypothesis testing and model selection is the marginal likeliho...
Weinberg (2012) described a constructive algorithm for computing the marginal likelihood, Z, from a ...
Recent advances in Markov chain Monte Carlo (MCMC) extend the scope of Bayesian inference to models ...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
A typical goal in cognitive psychology is to select the model that provides the best explanation of ...
2005 Joint Annual Meeting of the Interface and the Classification Society of North America, St. Loui...
The efficiency of a marginal likelihood estimator where the product of the marginal posterior distri...