Abstract
When two nested models are compared, using a Bayes factor,
from an objective standpoint, two seemingly conflicting issues emerge at the
time of choosing parameter priors under the two models. On the one hand,
for moderate sample sizes, the evidence in favor of the smaller model can
be inflated by diffuseness of the prior under the larger model. On the other
hand, asymptotically, the evidence in favor of the smaller model typically accumulates
at a slower rate.With reference to finitely discrete data models, we
show that these two issues can be dealt with jointly, by combining intrinsic
priors and nonlocal priors in a new unified class of priors. We illustrate our
ideas in a running Bernoulli example, then we apply them to test the equality
of two proportions, and finally we deal with the more general case of logistic
regression models.
Lingua originale | English |
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pagine (da-a) | 398-423 |
Numero di pagine | 26 |
Rivista | Statistical Science |
Volume | 28 |
DOI | |
Stato di pubblicazione | Pubblicato - 2013 |
Keywords
- Bayes factor
- Bayesian model choice
- Non-local pior