On the Validity of the Bootstrap in Non‐Parametric Functional Regression |
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Authors: | FRÉDÉRIC FERRATY INGRID VAN KEILEGOM PHILIPPE VIEU |
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Affiliation: | 1. Institut de Mathématiques de Toulouse, Université Paul Sabatier;2. Institute of Statistics, Université catholique de Louvain |
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Abstract: | Abstract. We consider the functional non‐parametric regression model Y= r( χ )+?, where the response Y is univariate, χ is a functional covariate (i.e. valued in some infinite‐dimensional space), and the error ? satisfies E(? | χ ) = 0. For this model, the pointwise asymptotic normality of a kernel estimator of r (·) has been proved in the literature. To use this result for building pointwise confidence intervals for r (·), the asymptotic variance and bias of need to be estimated. However, the functional covariate setting makes this task very hard. To circumvent the estimation of these quantities, we propose to use a bootstrap procedure to approximate the distribution of . Both a naive and a wild bootstrap procedure are studied, and their asymptotic validity is proved. The obtained consistency results are discussed from a practical point of view via a simulation study. Finally, the wild bootstrap procedure is applied to a food industry quality problem to compute pointwise confidence intervals. |
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Keywords: | asymptotic normality confidence intervals functional data kernel estimator naive bootstrap non‐parametric regression wild bootstrap |
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