This paper studies the multiplicity-correction effect of standard Bayesian variable-selection priors in linear regression. Our first goal is to clarify when, and how, multiplicity correction happens automatically in Bayesian analysis, and to distinguish this correction from the Bayesian Ockham's-razor effect. Our second goal is to contrast empirical-Bayes and fully Bayesian approaches to variable selection through examples, theoretical results and simulations. Considerable differences between the two approaches are found. In particular, we prove a theorem that characterizes a surprising aymptotic discrepancy between fully Bayes and empirical Bayes. This discrepancy arises from a different source than the failure to account for hyperparamete...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
The selection of variables in regression problems has occupied the minds of many statisticians. Seve...
This paper studies the multiplicity-correction effect of standard Bayesian variable-selection priors...
<p>This thesis is about Bayesian approaches for handling multiplicity. It considers three main kind...
For the problem of variable selection for the normal linear model, fixed penalty selection criteria...
For the problem of variable selection for the normal linear model, fixed penalty selection criteria ...
We review the empirical Bayes approach to large-scale inference. In the context of the problem of in...
It has long been known that for the comparison of pairwise nested models, a decision based on the Ba...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Multiple tests arise frequently in epidemiologic research. However, the issue of multiplicity adjust...
We empirically show that Bayesian inference can be inconsistent under misspecification in simple li...
This dissertation consists of three distinct but related research projects. First of all, we study t...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
The selection of variables in regression problems has occupied the minds of many statisticians. Seve...
This paper studies the multiplicity-correction effect of standard Bayesian variable-selection priors...
<p>This thesis is about Bayesian approaches for handling multiplicity. It considers three main kind...
For the problem of variable selection for the normal linear model, fixed penalty selection criteria...
For the problem of variable selection for the normal linear model, fixed penalty selection criteria ...
We review the empirical Bayes approach to large-scale inference. In the context of the problem of in...
It has long been known that for the comparison of pairwise nested models, a decision based on the Ba...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Multiple tests arise frequently in epidemiologic research. However, the issue of multiplicity adjust...
We empirically show that Bayesian inference can be inconsistent under misspecification in simple li...
This dissertation consists of three distinct but related research projects. First of all, we study t...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
In this article, we present a Bayes factor solution for inference in multiple regression. Bayes fact...
The selection of variables in regression problems has occupied the minds of many statisticians. Seve...