AbstractWe examine the use of sensitivity analysis with a particular focus on calculating the bounds of imprecise previsions in Bayesian statistics. We explain the use of importance sampling in approximating the range of these imprecise previsions and we develop an approximation function for the imprecise posterior prevision based on generating a finite number of random variables. We develop a convergence theorem that shows that this approximation converges almost surely to the posterior prevision as we generate more and more random variables. We also develop a useful accuracy bound for the approximation for a large finite number of generated random variables. We test the efficiency of this approximation using a simple example involving the...
In models with nuisance parameters, Bayesian procedures based on Markov Chain Monte Carlo (MCMC) met...
Abstract I present a simple variation of importance sampling that explicitly search-es for important...
Since its introduction in the early 1990s, the idea of using importance sampling (IS) with Markov ch...
AbstractWe examine the use of sensitivity analysis with a particular focus on calculating the bounds...
This brief paper is an exploratory investigation of how we can apply sensitivity analysis over impor...
Bayesian inference under a set of priors, called robust Bayesian analysis, allows for estimation of ...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
Abstract The parametric bootstrap can be used for the efficient computation of Bayes posterior distr...
Methods for the systematic application of Monte Carlo integration with importance sampling to Bayesi...
The practical implementation of Bayesian inference requires numerical approximation when closed-form...
International audienceThis paper surveys some well-established approaches on the approximation of Ba...
Bayesian networks (BNs) offer a compact, intuitive, and efficient graphical representation of uncert...
International audienceThis paper surveys some well-established approaches on the approximation of Ba...
In models with nuisance parameters, Bayesian procedures based on Markov Chain Monte Carlo (MCMC) met...
Since its introduction in the early 90's, the idea of using importance sampling (IS) with Markov cha...
In models with nuisance parameters, Bayesian procedures based on Markov Chain Monte Carlo (MCMC) met...
Abstract I present a simple variation of importance sampling that explicitly search-es for important...
Since its introduction in the early 1990s, the idea of using importance sampling (IS) with Markov ch...
AbstractWe examine the use of sensitivity analysis with a particular focus on calculating the bounds...
This brief paper is an exploratory investigation of how we can apply sensitivity analysis over impor...
Bayesian inference under a set of priors, called robust Bayesian analysis, allows for estimation of ...
We consider Bayesian inference by importance sampling when the likelihood is analytically intractabl...
Abstract The parametric bootstrap can be used for the efficient computation of Bayes posterior distr...
Methods for the systematic application of Monte Carlo integration with importance sampling to Bayesi...
The practical implementation of Bayesian inference requires numerical approximation when closed-form...
International audienceThis paper surveys some well-established approaches on the approximation of Ba...
Bayesian networks (BNs) offer a compact, intuitive, and efficient graphical representation of uncert...
International audienceThis paper surveys some well-established approaches on the approximation of Ba...
In models with nuisance parameters, Bayesian procedures based on Markov Chain Monte Carlo (MCMC) met...
Since its introduction in the early 90's, the idea of using importance sampling (IS) with Markov cha...
In models with nuisance parameters, Bayesian procedures based on Markov Chain Monte Carlo (MCMC) met...
Abstract I present a simple variation of importance sampling that explicitly search-es for important...
Since its introduction in the early 1990s, the idea of using importance sampling (IS) with Markov ch...