Partial prior information on the marginal distribution of an observable random variable is considered. When this information is incorporated into the statistical analysis of an assumed parametric model, the posterior inference is typically non-robust so that no inferential conclusion is obtained. To overcome this difficulty a method based on the standard default prior associated to the model and an intrinsic procedure is proposed. Posterior robustness of the resulting inferences is analysed and some illustrative examples are provided. Copyright 2003 Board of the Foundation of the Scandinavian Journal of Statistics..
This paper considers the problem of reporting a "posterior distribution" using a parametric family o...
The testing of two-sided hypotheses in univariate and multivariate situations is considered. The goa...
This paper develops new Bayesian methods for semiparametric inference in the partial linear Normal r...
The posterior predictive distribution is the distribution of future observations, conditioned on the...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Robust Bayesian inference involves examining the performance of Bayes rules from a class of prior di...
© 2015 Elsevier B.V. All rights reserved. Bayesian estimators are developed and compared with the ma...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
In this paper we consider Bayesian inference using training data combined with prior information. Th...
This paper considers properties of half-normal distribution using informative priors under the Bayes...
This paper presents a new asymptotic approach to study the robustness of Bayesian inference to chang...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
Introduction Central in Bayesian statistics is Bayes' theorem, which can be written as follows...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
A salient feature of Bayesian inference is its ability to incorporate information from a variety of ...
This paper considers the problem of reporting a "posterior distribution" using a parametric family o...
The testing of two-sided hypotheses in univariate and multivariate situations is considered. The goa...
This paper develops new Bayesian methods for semiparametric inference in the partial linear Normal r...
The posterior predictive distribution is the distribution of future observations, conditioned on the...
In order to deal with mild deviations from the assumed parametric model, we propose a procedure for ...
Robust Bayesian inference involves examining the performance of Bayes rules from a class of prior di...
© 2015 Elsevier B.V. All rights reserved. Bayesian estimators are developed and compared with the ma...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
In this paper we consider Bayesian inference using training data combined with prior information. Th...
This paper considers properties of half-normal distribution using informative priors under the Bayes...
This paper presents a new asymptotic approach to study the robustness of Bayesian inference to chang...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
Introduction Central in Bayesian statistics is Bayes' theorem, which can be written as follows...
We address the statistical problem of evaluating R = P(X < Y ), where X and Y are two independent ra...
A salient feature of Bayesian inference is its ability to incorporate information from a variety of ...
This paper considers the problem of reporting a "posterior distribution" using a parametric family o...
The testing of two-sided hypotheses in univariate and multivariate situations is considered. The goa...
This paper develops new Bayesian methods for semiparametric inference in the partial linear Normal r...