The likelihood function is often used for parameter estimation. Its use, however, may cause difficulties in specific situations. In order to circumvent these difficulties, we propose a parameter estimation method based on the replacement of the likelihood in the formula of the Bayesian posterior distribution by a function which depends on a contrast measuring the discrepancy between observed data and a parametric model. The properties of the contrast-based (CB) posterior distribution are studied to understand what the consequences of incorporating a contrast in the Bayes formula are. We show that the CB-posterior distribution can be used to make frequentist inference and to assess the asymptotic variance matrix of the estimator with limited...
a<p>: Bayesian confidence intervals.</p>b<p>: Based on the decay parameter , the range parameter (i...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...
International audienceThe likelihood function is often used for parameter estimation. Its use, howev...
Consider Bayesian inference on statistical models in which contrasts among parameters are of interes...
In this paper the problems of specification and nonnested model comparison in spatial and network ec...
In this paper we propose fast approximate methods for computing posterior marginals in spatial gener...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Given a set of spatial data, often the desire is to estimate its covariance structure. For prac-tica...
In this paper we explore the use of the Integrated Laplace Approximation (INLA) for Bayesian inferen...
THESIS 7967A Markov chain Monte Carlo (MCMC) algorithm is proposed for the evaluation of a posterior...
grantor: University of TorontoRegularity conditions are presented and a rigorous proof is ...
In the Bayes paradigm and for a given loss function, we propose the construction of a new type of po...
The inverse problem of estimating the spatial distributions of elastic material properties from nois...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
a<p>: Bayesian confidence intervals.</p>b<p>: Based on the decay parameter , the range parameter (i...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...
International audienceThe likelihood function is often used for parameter estimation. Its use, howev...
Consider Bayesian inference on statistical models in which contrasts among parameters are of interes...
In this paper the problems of specification and nonnested model comparison in spatial and network ec...
In this paper we propose fast approximate methods for computing posterior marginals in spatial gener...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Given a set of spatial data, often the desire is to estimate its covariance structure. For prac-tica...
In this paper we explore the use of the Integrated Laplace Approximation (INLA) for Bayesian inferen...
THESIS 7967A Markov chain Monte Carlo (MCMC) algorithm is proposed for the evaluation of a posterior...
grantor: University of TorontoRegularity conditions are presented and a rigorous proof is ...
In the Bayes paradigm and for a given loss function, we propose the construction of a new type of po...
The inverse problem of estimating the spatial distributions of elastic material properties from nois...
The limitations of the maximum likelihood method for estimating spatial covariance parameters are: t...
a<p>: Bayesian confidence intervals.</p>b<p>: Based on the decay parameter , the range parameter (i...
The popularity of Bayesian disease mapping is increasing, as is the variety of available models. The...
Computing marginal probabilities is an important and fundamental issue in Bayesian inference. We pre...