textabstractA sensible Bayesian model selection or comparison strategy implies selecting the model with the highest posterior probability. While some improper priors have attractive properties such as, e.g., low frequentist risk, it is generally claimed that Bartlett's paradox implies that using improper priors for the parameters in alternative models results in Bayes factors that are not well defined, thus preventing model comparison in this case. In this paper we demonstrate this latter result is not generally true and expand the class of priors that may be used for computing posterior odds to include some improper priors. Our approach is to give a new representation of the issue of undefined Bayes factors and, from this representation, d...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...
While some improper priors have attractive properties, it is generally claimed that Bartlett’s parad...
Bartlett’s paradox has been taken to imply that using improper priors results in Bayes factors that ...
textabstractBartlett's paradox has been taken to imply that using improper priors results in Bayes f...
textabstractDivergent priors are improper when defined on unbounded supports. Bartlett's paradox has...
A new method is suggested to evaluate the Bayes factor for choosing between two nested models using ...
What is a good prior? Actual prior knowledge should be used, but for complex models this is often no...
Abstract: The Bayes factor is a popular criterion in Bayesian model selection. Due to the lack of sy...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
In this paper a new type of prior is proposed that could be suitable in the context of model selecti...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...
While some improper priors have attractive properties, it is generally claimed that Bartlett’s parad...
Bartlett’s paradox has been taken to imply that using improper priors results in Bayes factors that ...
textabstractBartlett's paradox has been taken to imply that using improper priors results in Bayes f...
textabstractDivergent priors are improper when defined on unbounded supports. Bartlett's paradox has...
A new method is suggested to evaluate the Bayes factor for choosing between two nested models using ...
What is a good prior? Actual prior knowledge should be used, but for complex models this is often no...
Abstract: The Bayes factor is a popular criterion in Bayesian model selection. Due to the lack of sy...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
In this paper a new type of prior is proposed that could be suitable in the context of model selecti...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...