Smoothing parameter selection for a class of semiparametric linear models |
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Authors: | Philip T. Reiss R. Todd Ogden |
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Affiliation: | New York University, and Nathan S. Kline Institute for Psychiatric Research, Orangeburg, USA; Columbia University, New York, USA |
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Abstract: | Summary. Spline-based approaches to non-parametric and semiparametric regression, as well as to regression of scalar outcomes on functional predictors, entail choosing a parameter controlling the extent to which roughness of the fitted function is penalized. We demonstrate that the equations determining two popular methods for smoothing parameter selection, generalized cross-validation and restricted maximum likelihood, share a similar form that allows us to prove several results which are common to both, and to derive a condition under which they yield identical values. These ideas are illustrated by application of functional principal component regression, a method for regressing scalars on functions, to two chemometric data sets. |
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Keywords: | B-splines Functional linear model Functional principal component regression Generalized cross-validation Linear mixed model Roughness penalty |
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