peer reviewedA key question in Bayesian analysis is the effect of the prior on the posterior, and how we can measure this effect. Will the posterior distributions derived with distinct priors become very similar if more and more data are gathered? It has been proved formally that, under certain regularity conditions, the impact of the prior is waning as the sample size increases. From a practical viewpoint it is more important to know what happens at finite sample size n. In this chapter, we shall explain how we tackle this crucial question from an innovative approach. To this end, we shall review some notions from probability theory such as the Wasserstein distance and the popular Stein’s method, and explain how we use these a priori unrel...
Bartlett’s paradox has been taken to imply that using improper priors results in Bayes factors that ...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
A key question in Bayesian analysis is the effect of the prior on the posterior, and how we can meas...
peer reviewedWe compare two distinct non-uniform choices of prior distributions by quantifying the W...
peer reviewedIn this paper, we propose tight upper and lower bounds for the Wasserstein distance bet...
We introduce a prior for the parameters of univariate continuous distributions, based on the Wassers...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
Application of Bayesian statistics requires eliciting prior distributions, an important first step ...
A major problem associated with Bayesian estimation is selecting the prior distribution. The more re...
In a typical inferential problem, the conclusion reached by a Bayesian statistician depends on three...
My dissertation examines two kinds of statistical tools for taking prior information into account, a...
textabstractBartlett's paradox has been taken to imply that using improper priors results in Bayes f...
This paper is concerned with the construction of prior probability measures for parametric families ...
The application of Bayesian network based methods is increasingly popular in several research fields...
Bartlett’s paradox has been taken to imply that using improper priors results in Bayes factors that ...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
A key question in Bayesian analysis is the effect of the prior on the posterior, and how we can meas...
peer reviewedWe compare two distinct non-uniform choices of prior distributions by quantifying the W...
peer reviewedIn this paper, we propose tight upper and lower bounds for the Wasserstein distance bet...
We introduce a prior for the parameters of univariate continuous distributions, based on the Wassers...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
Application of Bayesian statistics requires eliciting prior distributions, an important first step ...
A major problem associated with Bayesian estimation is selecting the prior distribution. The more re...
In a typical inferential problem, the conclusion reached by a Bayesian statistician depends on three...
My dissertation examines two kinds of statistical tools for taking prior information into account, a...
textabstractBartlett's paradox has been taken to imply that using improper priors results in Bayes f...
This paper is concerned with the construction of prior probability measures for parametric families ...
The application of Bayesian network based methods is increasingly popular in several research fields...
Bartlett’s paradox has been taken to imply that using improper priors results in Bayes factors that ...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
Research makes the greatest progress when it makes use of the results and insights of others. This d...