Estimating the smoothing parameter in generalized spline-based regression: II. Empirical and fully Bayesian approaches. Experiences with Gibbs sampling in simulated results (Q1861589)

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scientific article; zbMATH DE number 1878600
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Estimating the smoothing parameter in generalized spline-based regression: II. Empirical and fully Bayesian approaches. Experiences with Gibbs sampling in simulated results
scientific article; zbMATH DE number 1878600

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    Estimating the smoothing parameter in generalized spline-based regression: II. Empirical and fully Bayesian approaches. Experiences with Gibbs sampling in simulated results (English)
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    9 March 2003
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    [For part I of this paper see the preceding entry, Zbl 1007.62036] A nonparametric regression model is considered with binary or Gaussian responses where the expectation of the data is a smooth function of the covariates. A spline technique is used for estimation of this function. The author interprets the standard cross-validation approach for choice of the smoothing parameter as an empirical Bayes one and develops a fully Bayesian approach based on an improper prior \(p(h/\gamma^2)\propto\exp(-\gamma^{-2}J(h))\) on the space of possible regression functions \(h\), where \(J\) is a roughness penalty and the smoothing parameter \(\gamma^{-2}\) is considered as a hyperparameter. In the examples the distribution of \(\gamma^{-2}\) is taken as Gamma or Pareto. Results of simulations are presented for quadratic and quadratic \(+\) sinusoidal functions \(h\).
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    Markov chain Monte Carlo
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    spline smoothing
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    empirical Bayes
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