Reference Posterior Distributions for Bayesian Inference
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Reference Posterior Distributions for Bayesian Inference
A procedure is proposed to derive reference posterior distributions which approxi- mately describe the inferential content of the data without incorporating any .... However, for the sake of simplicity, we shall be using the deï¬nition in density ...