Statistical models, likelihood, penalized likelihood and hierarchical likelihood
classification
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stat.TH
keywords
likelihoodpenalizedhierarchicalmodelsstatisticalapproachbayesianchoosing
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We give an overview of statistical models and likelihood, together with two of its variants: penalized and hierarchical likelihood. The Kullback-Leibler divergence is referred to repeatedly, for defining the misspecification risk of a model, for grounding the likelihood and the likelihood crossvalidation which can be used for choosing weights in penalized likelihood. Families of penalized likelihood and sieves estimators are shown to be equivalent. The similarity of these likelihood with a posteriori distributions in a Bayesian approach is considered.
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