Default priors for Bayesian and frequentist inference

We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inference. Such a prior is a density or relative density that weights an observed likelihood function, leading to the elimination of parameters that are not of interest and then a density-type assessment...

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Veröffentlicht in:Journal of the Royal Statistical Society. Series B, Statistical methodology Statistical methodology, 2010-11, Vol.72 (5), p.631-654
Hauptverfasser: Fraser, D. A. S., Reid, N., Marras, E., Yi, G. Y.
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Sprache:eng
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Zusammenfassung:We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inference. Such a prior is a density or relative density that weights an observed likelihood function, leading to the elimination of parameters that are not of interest and then a density-type assessment for a parameter of interest. For independent responses from a continuous model, we develop a prior for the full parameter that is closely linked to the original Bayes approach and provides an extension of the right invariant measure to general contexts. We then develop a modified prior that is targeted on a component parameter of interest and by targeting avoids the marginalization paradoxes of Dawid and co-workers. This modifies Jeffreys's prior and provides extensions to the development of Welch and Peers. These two approaches are combined to explore priors for a vector parameter of interest in the presence of a vector nuisance parameter. Examples are given to illustrate the computation of the priors.
ISSN:1369-7412
1467-9868
DOI:10.1111/j.1467-9868.2010.00750.x