In the present paper we explore various approaches of computing model likelihoods from the MCMC output for mixture and switching models, among them the candidate's formula, importance sampling, reciprocal importance sampling and bridge sampling. We demonstrate that the candidate's formula is sensitive to label switching. It turns out that the best method to estimate the model likelihood is the bridge sampling technique, where the MCMC sample is combined with an iid sample from an importance density. The importance density is constructed in an unsupervised manner from the MCMC output using a mixture of complete data posteriors. Whereas the importance sampling estimator as well as the reciprocal importance sampling estimator are sensitive to ...
Finite mixture models are used in statistics and other disciplines, but inference for mixture models...
Bayesian methods for variable selection and model choice have become increasingly popular in recent ...
This article shows how Bayesian inference for switching regression models and their generalizations ...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
We consider Bayesian model choice for the setting where the observed data are partially observed rea...
We consider Bayesian model choice for the setting where the observed data are partially observed rea...
In the present paper we study switching state space models from a Bayesian point of view. For estima...
Papers published in this report series are preliminary versions of journal articles and not for quot...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
Mixture models can be used to approximate irregular densities or to model heterogeneity. ·When a den...
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
We consider a time series model with autoregressive conditional heteroskedas-ticity that is subject ...
We study model selection issues and some extensions of Markov switching models. We establish both th...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Finite mixture models are used in statistics and other disciplines, but inference for mixture models...
Bayesian methods for variable selection and model choice have become increasingly popular in recent ...
This article shows how Bayesian inference for switching regression models and their generalizations ...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
The marginal likelihood is a central tool for drawing Bayesian inference about the number of compone...
We consider Bayesian model choice for the setting where the observed data are partially observed rea...
We consider Bayesian model choice for the setting where the observed data are partially observed rea...
In the present paper we study switching state space models from a Bayesian point of view. For estima...
Papers published in this report series are preliminary versions of journal articles and not for quot...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
Mixture models can be used to approximate irregular densities or to model heterogeneity. ·When a den...
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
We consider a time series model with autoregressive conditional heteroskedas-ticity that is subject ...
We study model selection issues and some extensions of Markov switching models. We establish both th...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Finite mixture models are used in statistics and other disciplines, but inference for mixture models...
Bayesian methods for variable selection and model choice have become increasingly popular in recent ...
This article shows how Bayesian inference for switching regression models and their generalizations ...