Abstract
In this study, Bayesian approaches, such as Zellner, Occam's Window
and Gibbs sampling, have been compared in terms of selecting the correct
subset for the variable selection in a linear regression model. The aim of
this comparison is to analyze Bayesian variable selection and the behavior
of classical criteria by taking into consideration the different values of $\beta$ and
$\sigma$ and prior expected levels.