Hypothesis testing is a model selection problem for which the solution proposed by the two main statistical streams of thought, frequentists and Bayesians, substantially differ. One may think that this fact might be due to the prior chosen in the Bayesian analysis and that a convenient prior selection may reconcile both approaches. However, the Bayesian robustness viewpoint has shown that, in general, this is not so and hence a profound disagreement between both approaches exists. In this paper we briefly revise the basic aspects of hypothesis testing for both the frequentist and Bayesian procedures and discuss the variable selection problem in normal linear regression for which the discrepancies are more apparent. Illustrations on simulate...
Conventional methods for statistical hypothesis testing has historically been categorized as frequen...
on the topic of this paper. We also thank the Editor the Associate Editor and a Referee for their th...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Hypothesis testing is a model selection problem for which the solution proposed by the two main stat...
Hypothesis testing is a model selection problem for which the solution proposed by the two main stat...
In modern statistical and machine learning applications, there is an increasing need for developing ...
Modern theory for statistical hypothesis testing can broadly be classified as Bayesian or frequenti...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
In hypothesis testing, the conclusions from Bayesian and Frequentist approaches can differ markedly,...
Abstract: The use of Bayesian analysis and debates involving Bayesian analysis are increasing for co...
This article considers one side hypothesis testing on the unknown value of the explanatory variable ...
This article considers one side hypothesis testing on the unknown value of the explanatory variable ...
Conventional methods for statistical hypothesis testing has historically been categorized as frequen...
on the topic of this paper. We also thank the Editor the Associate Editor and a Referee for their th...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...
Hypothesis testing is a model selection problem for which the solution proposed by the two main stat...
Hypothesis testing is a model selection problem for which the solution proposed by the two main stat...
In modern statistical and machine learning applications, there is an increasing need for developing ...
Modern theory for statistical hypothesis testing can broadly be classified as Bayesian or frequenti...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
While the Bayesian parameter estimation has gained a wider acknowledgement among political scientist...
Hypothesis testing is a special form of model selection. Once a pair of competing models is fully de...
This chapter focuses on Bayesian methods and illustrates both the intrinsic unity of Bayesian thinki...
In hypothesis testing, the conclusions from Bayesian and Frequentist approaches can differ markedly,...
Abstract: The use of Bayesian analysis and debates involving Bayesian analysis are increasing for co...
This article considers one side hypothesis testing on the unknown value of the explanatory variable ...
This article considers one side hypothesis testing on the unknown value of the explanatory variable ...
Conventional methods for statistical hypothesis testing has historically been categorized as frequen...
on the topic of this paper. We also thank the Editor the Associate Editor and a Referee for their th...
This dissertation consists of five chapters with three distinct but related research projects. In Ch...