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arxiv: 1511.01214 · v13 · pith:YN4PKZEQnew · submitted 2015-11-04 · 📊 stat.ML · cs.IT· math.IT· stat.AP· stat.ME

Quantification of observed prior and likelihood information in parametric Bayesian modeling

classification 📊 stat.ML cs.ITmath.ITstat.APstat.ME
keywords informationbayesianlikelihoodmetricsparametricprioranalysisberger
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Two data-dependent information metrics are developed to quantify the information of the prior and likelihood functions within a parametric Bayesian model, one of which is closely related to the reference priors from Berger, Bernardo, and Sun, and information measure introduced by Lindley. A combination of theoretical, empirical, and computational support provides evidence that these information-theoretic metrics may be useful diagnostic tools when performing a Bayesian analysis.

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