Mixture models may be a useful and flexible tool to describe data with a complicated structure, for instance characterized by multimodality or asymmetry. In a Bayesian setting, it is a well established fact that one need to be careful in using improper prior distributions, since the posterior distribution may not be proper. This feature leads to problems in carry out an objective Bayesian approach. In this work an analysis of Jeffreys priors in the setting of finite mixture models will be presented
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
A natural Bayesian approach for mixture models with an unknown number of com-ponents is to take the ...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for ...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for ...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
Consider observations Y , distributed according to a mixture of densities Y j=1 w j f(\Deltaj` j )...
This paper deals with Bayesian inference of a mixture of Gaussian dis-tributions. A novel formulatio...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
Finite mixture and Markov-switching models generalize and, therefore, nest specifications featuring ...
Default Bayesian analysis has been very successful in dealing with most estimation and prediction pr...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
A natural Bayesian approach for mixture models with an unknown number of com-ponents is to take the ...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for ...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for ...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
Consider observations Y , distributed according to a mixture of densities Y j=1 w j f(\Deltaj` j )...
This paper deals with Bayesian inference of a mixture of Gaussian dis-tributions. A novel formulatio...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
PRIOR AND CANDIDATE MODELS IN THE BAYESIAN ANALYSIS OF FINITE MIXTURES This paper discusses the prob...
Finite mixture and Markov-switching models generalize and, therefore, nest specifications featuring ...
Default Bayesian analysis has been very successful in dealing with most estimation and prediction pr...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
In this paper, we show how a complete and exact Bayesian analysis of a parametric mixture model is p...
A natural Bayesian approach for mixture models with an unknown number of com-ponents is to take the ...