This paper considers parametric statistical decision problems conducted within a Bayesian nonparametric context. Our work was motivated by the realisation that typical parametric model selection procedures are essentially incoherent. We argue that one solution to this problem is to use a flexible enough model in the first place, a model that will not be checked no matter what data arrive. Ideally, one would use a nonparametric model to describe all the uncertainty about the density function generating the data. However, parametric models are the preferred choice for many statisticians, despite the incoherence involved in model checking, incoherence that is quite often ignored for pragmatic reasons. In this paper we show how coherent paramet...
In this thesis, we first propose a coherent inference model that is obtained by distorting the prior...
Models are the venue for much of the work of the economics profession. We use them to express, compa...
We discuss the problem of selecting among alternative parametric models within the Bayesian framewor...
A key problem in statistical modeling is model selection, how to choose a model at an appropriate le...
In this paper we argue that model selection, as commonly practised in psychometrics, violates certai...
The paper evaluates the usefulness of a nonparametric approach to Bayesian inference by presenting t...
A key problem in statistical modeling is model selection, that is, how to choose a model at an appro...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
The paper considers a Bayesian nonparametric decision theoretic approach to sample size calculations...
The problem of evaluating econometric models is here viewed as a par-ticular case of a general class...
Modelling is fundamental to many fields of science and engineering. A model can be thought of as a r...
A Bayesian model has two parts. The first part is a family of sampling distributions that could have...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
Bayesian nonparametric inference is a relatively young area of research and it has recently undergon...
In this thesis, we first propose a coherent inference model that is obtained by distorting the prior...
Models are the venue for much of the work of the economics profession. We use them to express, compa...
We discuss the problem of selecting among alternative parametric models within the Bayesian framewor...
A key problem in statistical modeling is model selection, how to choose a model at an appropriate le...
In this paper we argue that model selection, as commonly practised in psychometrics, violates certai...
The paper evaluates the usefulness of a nonparametric approach to Bayesian inference by presenting t...
A key problem in statistical modeling is model selection, that is, how to choose a model at an appro...
We consider nonparametric Bayesian estimation of a probability density p based on a random sample of...
The paper considers a Bayesian nonparametric decision theoretic approach to sample size calculations...
The problem of evaluating econometric models is here viewed as a par-ticular case of a general class...
Modelling is fundamental to many fields of science and engineering. A model can be thought of as a r...
A Bayesian model has two parts. The first part is a family of sampling distributions that could have...
Bayesian Statistics has been increasingly popular in the last five decades. Besides having decision ...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
Bayesian nonparametric inference is a relatively young area of research and it has recently undergon...
In this thesis, we first propose a coherent inference model that is obtained by distorting the prior...
Models are the venue for much of the work of the economics profession. We use them to express, compa...
We discuss the problem of selecting among alternative parametric models within the Bayesian framewor...