Title of article :
Bayesian predictive densities based on latent information priors
Author/Authors :
Komaki، نويسنده , , Fumiyasu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
11
From page :
3705
To page :
3715
Abstract :
Construction methods for prior densities are investigated from a predictive viewpoint. Predictive densities for future observables are constructed by using observed data. The simultaneous distribution of future observables and observed data is assumed to belong to a parametric submodel of a multinomial model. Future observables and data are possibly dependent. The discrepancy of a predictive density to the true conditional density of future observables given observed data is evaluated by the Kullback–Leibler divergence. It is proved that limits of Bayesian predictive densities form an essentially complete class. Latent information priors are defined as priors maximizing the conditional mutual information between the parameter and the future observables given the observed data. Minimax predictive densities are constructed as limits of Bayesian predictive densities based on prior sequences converging to the latent information priors.
Keywords :
Jeffreys prior , Minimaxity , Reference prior , Essentially complete class , Kullback–Leibler divergence , Multinomial model
Journal title :
Journal of Statistical Planning and Inference
Serial Year :
2011
Journal title :
Journal of Statistical Planning and Inference
Record number :
2221654
Link To Document :
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