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arxiv: 1108.3520 · v2 · pith:WU3DIGINnew · submitted 2011-08-17 · 📊 stat.ME

Mixtures of g-Priors for Generalised Additive Model Selection with Penalised Splines

classification 📊 stat.ME
keywords modeladditiveapproachdefaultg-priorsgeneralisedmixturesmodels
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We propose an objective Bayesian approach to the selection of covariates and their penalised splines transformations in generalised additive models. Specification of a reasonable default prior for the model parameters and combination with a multiplicity-correction prior for the models themselves is crucial for this task. Here we use well-studied and well-behaved continuous mixtures of g-priors as default priors. We introduce the methodology in the normal model and extend it to non-normal exponential families. A simulation study and an application from the literature illustrate the proposed approach. An efficient implementation is available in the R-package "hypergsplines".

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