The full Bayesian analysis of multinomial data using informative and flexible prior distributions has, in the past, been restricted by the technical problems involved in performing the numerical integrations required to obtain marginal densities for parameters and other functions thereof. In this paper it is shown that Gibbs sampling is suitable for obtaining accurate approximations to marginal densities for a large and flexible family of posterior distributions—the family. The method is illustrated with a three-way contingency table. Two alternative Monte Carlo strategies are also discussed
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
Density estimation has a long history in statistics. There are two main approaches to density, estim...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...
We introduce two new methods for estimating the Marginal Data Density (MDD) from the Gibbs output, w...
A variation of the Gibbs sampling scheme is defined by driving the simulated Markov chain by the con...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
grantor: University of TorontoA fully Bayesian method is developed for modelling the distr...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
The approximation of marginal densities is central to the Bayesian approach to testing of hy-pothese...
An exact formula of the convolution of two t densities with odd degrees of freedom is derived. From ...
Consider Bayesian inference on statistical models in which contrasts among parameters are of interes...
In a multinomial sampling, contingency tables can be parametrized by probabilities of each cell. The...
The computation of marginal posterior density in Bayesian analysis is essential in that it can provi...
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
Density estimation has a long history in statistics. There are two main approaches to density, estim...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...
We introduce two new methods for estimating the Marginal Data Density (MDD) from the Gibbs output, w...
A variation of the Gibbs sampling scheme is defined by driving the simulated Markov chain by the con...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
grantor: University of TorontoA fully Bayesian method is developed for modelling the distr...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
The approximation of marginal densities is central to the Bayesian approach to testing of hy-pothese...
An exact formula of the convolution of two t densities with odd degrees of freedom is derived. From ...
Consider Bayesian inference on statistical models in which contrasts among parameters are of interes...
In a multinomial sampling, contingency tables can be parametrized by probabilities of each cell. The...
The computation of marginal posterior density in Bayesian analysis is essential in that it can provi...
Two new approaches to estimate Bayes factors in a finite mixture model context are proposed. Specifi...
Density estimation has a long history in statistics. There are two main approaches to density, estim...
The Bayesian approach allows an intuitive way to derive the methods of statistics. Probability is de...