Bayesian hierarchical linear mixed models for additive smoothing splines |
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Authors: | Dongchu Sun Paul L. Speckman |
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Affiliation: | (1) Department of Statistics, University of Missouri-Columbia, Columbia, MO 65211, USA |
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Abstract: | Bayesian hierarchical models have been used for smoothing splines, thin-plate splines, and L-splines. In analyzing high dimensional data sets, additive models and backfitting methods are often used. A full Bayesian analysis for such models may include a large number of random effects, many of which are not intuitive, so researchers typically use noninformative improper or nearly improper priors. We investigate propriety of the posterior for these cases. Our findings extend known results for normal linear mixed models to certain cases with Bayesian additive smoothing spline models. Supported by National Science Foundation grant SES-0351523 and by National Institutes of Health grants R01-CA100760 and R01-MH071418. |
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Keywords: | Generalized linear mixed models Gibbs sampling Linear mixed models Markov chain Monte Carlo Multivariate normal Variance components |
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