597 research outputs found
Matching prior pairs connecting Maximum A Posteriori estimation and posterior expectation
Bayesian statistics has two common measures of central tendency of a
posterior distribution: posterior means and Maximum A Posteriori (MAP)
estimates. In this paper, we discuss a connection between MAP estimates and
posterior means. We derive an asymptotic condition for a pair of prior
densities under which the posterior mean based on one prior coincides with the
MAP estimate based on the other prior. A sufficient condition for the existence
of this prior pair relates to -flatness of the statistical model in
information geometry. We also construct a matching prior pair using
-parallel priors. Our result elucidates an interesting connection
between regularization in generalized linear regression models and posterior
expectation
Posterior Covariance Information Criterion
We introduce an information criterion, PCIC, for predictive evaluation based
on quasi-posterior distributions. It is regarded as a natural generalisation of
the widely applicable information criterion (WAIC) and can be computed via a
single Markov chain Monte Carlo run. PCIC is useful in a variety of predictive
settings that are not well dealt with in WAIC, including weighted likelihood
inference and quasi-Bayesian predictio
Posterior Covariance Information Criterion
ISM Online Open House, 2021.6.18統計数理研究所オープンハウス(オンライン開催)、R3.6.18ポスター発
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