Author:
Fernández Carmen,Steel Mark F.J.
Abstract
This paper considers a Bayesian analysis of the
linear regression model under independent sampling from
general scale mixtures of normals. Using a common reference
prior, we investigate the validity of Bayesian inference
and the existence of posterior moments of the regression
and scale parameters. We find that whereas existence of
the posterior distribution does not depend on the choice
of the design matrix or the mixing distribution, both of
them can crucially intervene in the existence of posterior
moments. We identify some useful characteristics that allow
for an easy verification of the existence of a wide range
of moments. In addition, we provide full characterizations
under sampling from finite mixtures of normals, Pearson
VII, or certain modulated normal distributions. For empirical
applications, a numerical implementation based on the Gibbs
sampler is recommended.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Cited by
56 articles.
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