While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they are not available in closed form. Furthermore, they often are improper priors. Hence, they have never been used to draw inference on the mixture parameters. The implementation and the properties of Jeffreys priors in several mixture settings are studied. It is shown that the associated posterior distributions most often are improper. Nevertheless, the Jeffreys prior for the mixture weights conditionally on the parameters of the mixture components will be shown to have the property of conservativeness with respect to the number of components, in case of overfitted mixture and it can be therefore used as a default priors in this context
We introduce a prior distribution for the number of components of a mixture model. The prior conside...
We consider a novel paradigm for Bayesian testing of hypotheses and Bayesian model comparison. Our a...
The infinite mixture of normals model has become a popular method for density estimation problems. T...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
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 ...
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...
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...
Zellner’s g prior remains a popular conventional prior for use in Bayesian variable selection, despi...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for...
Default Bayesian analysis has been very successful in dealing with most estimation and prediction pr...
While mixtures of Gaussian distributions have been studied for more than a century (Pearson, 1894), ...
While mixtures of Gaussian distributions have been studied for more than a century (Pearson, 1894), ...
We introduce a prior distribution for the number of components of a mixture model. The prior conside...
We consider a novel paradigm for Bayesian testing of hypotheses and Bayesian model comparison. Our a...
The infinite mixture of normals model has become a popular method for density estimation problems. T...
While Jeffreys priors usually are well-defined for the parameters of mixtures of distributions, they...
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 ...
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...
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...
Zellner’s g prior remains a popular conventional prior for use in Bayesian variable selection, despi...
Mixture models may be a useful and flexible tool to describe data with a complicated structure, for...
Default Bayesian analysis has been very successful in dealing with most estimation and prediction pr...
While mixtures of Gaussian distributions have been studied for more than a century (Pearson, 1894), ...
While mixtures of Gaussian distributions have been studied for more than a century (Pearson, 1894), ...
We introduce a prior distribution for the number of components of a mixture model. The prior conside...
We consider a novel paradigm for Bayesian testing of hypotheses and Bayesian model comparison. Our a...
The infinite mixture of normals model has become a popular method for density estimation problems. T...