There are deep and important philosophical differences between Bayesian and frequentist approaches to quantifying uncertainty. However, some practitioners choose between these approaches primarily on the basis of convenience. For instance, the ability to incorporate parameter constraints is sometimes cited as a reason to use Bayesian methods. This reflects two misunderstandings: First, frequentist methods can indeed incorporate constraints on parameter values. Second, it ignores the crucial question of what the result of the analysis will mean. Bayesian and frequentist measures of uncertainty have similar sounding names but quite different meanings. For instance, Bayesian uncertainties typically involve expectations with respect to the post...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
In a Bayesian analysis the statistician must specify prior densities for the model parameters. If he...
AbstractBackgroundBarendregt proposes a method to define an input distribution for a relative risk, ...
Abstract: Many scientific problems have unknown parameters that are thought to lie in some known set...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
In this thesis, we investigate the properties of Bayesian methods. In particular, we want to give fr...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
l Statistical inference concerns unknown parameters that describe certain population characteristics...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
We marshall the arguments for preferring Bayesian hypothesis testing and confidence sets to frequent...
Learning from model diagnostics that a prior distribution must be replaced by one that conflicts les...
Bayesian statistics defines how new information, given by a likelihood, should be combinedwith previ...
When analyzing repeated measurements data, researchers often have expectations about the relations b...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Bayesian inference enables combination of observations with prior knowledge in the reasoning process...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
In a Bayesian analysis the statistician must specify prior densities for the model parameters. If he...
AbstractBackgroundBarendregt proposes a method to define an input distribution for a relative risk, ...
Abstract: Many scientific problems have unknown parameters that are thought to lie in some known set...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
In this thesis, we investigate the properties of Bayesian methods. In particular, we want to give fr...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
l Statistical inference concerns unknown parameters that describe certain population characteristics...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
We marshall the arguments for preferring Bayesian hypothesis testing and confidence sets to frequent...
Learning from model diagnostics that a prior distribution must be replaced by one that conflicts les...
Bayesian statistics defines how new information, given by a likelihood, should be combinedwith previ...
When analyzing repeated measurements data, researchers often have expectations about the relations b...
Two major approaches have developed within Bayesian statistics to address uncertainty in the prior d...
Bayesian inference enables combination of observations with prior knowledge in the reasoning process...
This book provides a multi-level introduction to Bayesian reasoning (as opposed to "conventional sta...
In a Bayesian analysis the statistician must specify prior densities for the model parameters. If he...
AbstractBackgroundBarendregt proposes a method to define an input distribution for a relative risk, ...