Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We present a simple method which arises from a likelihood identity for computation. The likelihood identity, called Candidate's formula, sets the marginal probability as a ratio of the prior likelihood to the posterior density. Based on Markov chain Monte Carlo output simulated from the posterior distribution, a nonparametric kernel estimate is used to estimate the posterior density contained in that ratio. This derived nonparametric Candidate's estimate requires only one evaluation of the posterior density estimate at a point. The optimal point for such evaluation can be chosen to minimize the expected mean square relative error. The results show ...
We consider exact and approximate Bayesian computation in the presence of latent variables or missin...
This chapter surveys computational methods for posterior inference with intractable likelihoods, tha...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
[[abstract]]Computing marginal probabilities is an important and fundamental issue in Bayesian infer...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];具代表性[[note]]http://gateway.isiknowledge.com/gateway/Gateway....
this paper is to illustrate how this may be achieved using ideas from thermodynamic integration or p...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
This paper proposes and discusses the use of composite marginal likelihoods for Bayesian inference. ...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
The computation of marginal posterior density in Bayesian analysis is essential in that it can provi...
We consider exact and approximate Bayesian computation in the presence of latent variables or missin...
This chapter surveys computational methods for posterior inference with intractable likelihoods, tha...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
[[abstract]]Computing marginal probabilities is an important and fundamental issue in Bayesian infer...
Computation of the marginal likelihood from a simulated posterior distribution is central to Bayesia...
Model choice plays an increasingly important role in statistics. From a Bayesian perspective a cruci...
[[sponsorship]]統計科學研究所[[note]]已出版;[SCI];具代表性[[note]]http://gateway.isiknowledge.com/gateway/Gateway....
this paper is to illustrate how this may be achieved using ideas from thermodynamic integration or p...
Bayesian model comparison involves the evaluation of the marginal likelihood, the expectation of the...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
This paper proposes and discusses the use of composite marginal likelihoods for Bayesian inference. ...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Ca...
The computation of marginal posterior density in Bayesian analysis is essential in that it can provi...
We consider exact and approximate Bayesian computation in the presence of latent variables or missin...
This chapter surveys computational methods for posterior inference with intractable likelihoods, tha...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...