Author/Authors :
Tanujit Dey، نويسنده , , Hemant Ishwaran and J. Sunil Rao، نويسنده ,
Abstract :
We consider the properties of the highest posterior probability model in a linear
regression setting+ Under a spike and slab hierarchy we find that although highest
posterior model selection is total risk consistent, it possesses hidden undesirable
properties+ One such property is a marked underfitting in finite samples, a phenomenon
well noted for Bayesian information criterion ~BIC! related procedures
but not often associated with highest posterior model selection+ Another concern
is the substantial effect the prior has on model selection+ We employ a rescaling
of the hierarchy and show that the resulting rescaled spike and slab models mitigate
the effects of underfitting because of a perfect cancellation of a BIC-like
penalty term+ Furthermore, by drawing upon an equivalence between the highest
posterior model and the median model, we find that the effect of the prior is less
influential on model selection, as long as the underlying true model is sparse+
Nonsparse settings are, however, problematic+ Using the posterior mean for variable
selection instead of posterior inclusion probabilities avoids these issues+