Nonparametric regression for functional data: Automatic smoothing parameter selection |
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Authors: | M. Rachdi P. Vieu |
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Affiliation: | 1. Université de Grenoble, UFR SHS, B.P. 47, F38040 Grenoble Cedex 09, France;2. Université Paul Sabatier, LSP UMR CNRS 5583, 118, Route de Narbonne, 31062 Toulouse Cedex, France |
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Abstract: | ![]() We study regression estimation when the explanatory variable is functional. Nonparametric estimates of the regression operator have been recently introduced. They depend on a smoothing factor which controls its behavior, and the aim of our work is to construct some data-driven criterion for choosing this smoothing parameter. The criterion can be formulated in terms of a functional version of cross-validation ideas. Under mild assumptions on the unknown regression operator, it is seen that this rule is asymptotically optimal. As by-products of this result, we state some asymptotic equivalences for several measures of accuracy for nonparametric estimate of the regression operator. We also present general inequalities for bounding moments of random sums involving functional variables. Finally, a short simulation study is carried out to illustrate the behavior of our method for finite samples. |
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Keywords: | Regression Functional data Cross-validation Equivalence of quadratic loss Inequality for sums of random variables |
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