The aim in this article is to provide a means to undertake Bayesian inference for mixture models when the likelihood function is raised to a power between 0 and 1. The main purpose for doing this is to guarantee a strongly consistent model and hence, make it possible to compare the consistent posterior with the correct posterior, looking for signs of discrepancy. This will be explained in detail in the article. Another purpose would be for simulated annealing algorithms. In particular, for the widely used mixture of Dirichlet process model, it is far from obvious how to undertake inference via Markov chain Monte Carlo methods when the likelihood is raised to a power other than 1. In this article, we demonstrate how posterior sampling can be...
Nonparametric Bayesian models are commonly used to obtain robust statistical inference, and the most...
Parametric modeling has long dominated both classical and Bayesian inference work. The restrictive a...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...
The aim in this article is to provide a means to undertake Bayesian inference for mixture models whe...
The aim in this article is to provide a means to undertake Bayesian inference for mixture models whe...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
In this paper we present an application of read-once cou-pling from the past to problems in Bayesian...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
This thesis explores how a Bayesian should update their beliefs in the knowledge that any model ava...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
Robust statistical data modelling under potential model mis-specification often requires leaving the...
Nonparametric Bayesian models are commonly used to obtain robust statistical inference, and the most...
Parametric modeling has long dominated both classical and Bayesian inference work. The restrictive a...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...
The aim in this article is to provide a means to undertake Bayesian inference for mixture models whe...
The aim in this article is to provide a means to undertake Bayesian inference for mixture models whe...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
In this paper we present an application of read-once cou-pling from the past to problems in Bayesian...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
This thesis explores how a Bayesian should update their beliefs in the knowledge that any model ava...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
Robust statistical data modelling under potential model mis-specification often requires leaving the...
Nonparametric Bayesian models are commonly used to obtain robust statistical inference, and the most...
Parametric modeling has long dominated both classical and Bayesian inference work. The restrictive a...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...