The concentration function, extending the classical notion of Lorenz curve, is well suited for comparing probability measures. Such a feature can be useful in different issues in Bayesian robustness, when a probability measure is deemed a baseline to be compared with other measures by means of their functional forms. Neighbourhood classes Γ of probability measures, including well-known ones, can be defined through the concentration function and both prior and posterior expectations of given functions of the unknown parameter are studied. The ranges of such expectations over Γ can be found, restricting the search among the extremal measures in Γ. The concentration function can be also used as a criterion to assess posterior robustness, when ...
<p><b>A.</b> The parameters that define the logistic function are illustrated: λ<sub>A</sub>, lapse ...
Bayesian predictive methods have a number of advantages over traditional statistical methods. For o...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...
In robust bayesian analysis, ranges of quantities of interest (e. g. posterior means) are usually co...
We present applications of the concentration function in both global and local sensitivity analysis ...
In Chapter 2, the robustness of Bayes analysis with reference to conjugate prior classes is discusse...
We consider a factor analysis model that arises as some distribution form known up to first and sec...
We introduce a topology on the class of probability measurs based on the concentration function
Robustness has always been an important element of the foundation of Statistics. However, it has onl...
We consider a factor analysis model that arises as some distribution form known up to first and seco...
This paper deals with measuring the Bayesian robustness of classes of contaminated priors. Two diffe...
The problems of robustness in Bayesian forecasting are considered under distortions of the hypothet...
peer reviewedIn the Bayes paradigm and for a given loss function, we propose the construction of a n...
This paper presents a new asymptotic approach to study the robustness of Bayesian inference to chang...
This paper considers a new class \Gamma specified under uncertainty on the relative weights of some ...
<p><b>A.</b> The parameters that define the logistic function are illustrated: λ<sub>A</sub>, lapse ...
Bayesian predictive methods have a number of advantages over traditional statistical methods. For o...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...
In robust bayesian analysis, ranges of quantities of interest (e. g. posterior means) are usually co...
We present applications of the concentration function in both global and local sensitivity analysis ...
In Chapter 2, the robustness of Bayes analysis with reference to conjugate prior classes is discusse...
We consider a factor analysis model that arises as some distribution form known up to first and sec...
We introduce a topology on the class of probability measurs based on the concentration function
Robustness has always been an important element of the foundation of Statistics. However, it has onl...
We consider a factor analysis model that arises as some distribution form known up to first and seco...
This paper deals with measuring the Bayesian robustness of classes of contaminated priors. Two diffe...
The problems of robustness in Bayesian forecasting are considered under distortions of the hypothet...
peer reviewedIn the Bayes paradigm and for a given loss function, we propose the construction of a n...
This paper presents a new asymptotic approach to study the robustness of Bayesian inference to chang...
This paper considers a new class \Gamma specified under uncertainty on the relative weights of some ...
<p><b>A.</b> The parameters that define the logistic function are illustrated: λ<sub>A</sub>, lapse ...
Bayesian predictive methods have a number of advantages over traditional statistical methods. For o...
The first part of the thesis concerns itself with Bayesian nonparametrics. We consider the problem o...