Local linear regression for functional predictor and scalar response

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Abstract

The aim of this work is to introduce a new nonparametric regression technique in the context of functional covariate and scalar response. We propose a local linear regression estimator and study its asymptotic behaviour. Its finite-sample performance is compared with a Nadayara–Watson type kernel regression estimator and with the linear regression estimator via a Monte Carlo study and the analysis of two real data sets. In all the scenarios considered, the local linear regression estimator performs better than the kernel one, in the sense that the mean squared prediction error is lower.

AMS 2000 subject classifications

62G08
62G30

Keywords

Functional data
Nonparametric smoothing
Local linear regression
Kernel regression
Fourier expansion
Cross-validation

Cited by (0)

Research partially supported by the IV PRICIT program titled Modelización Matemática y Simulación Numérica en Ciencia y Tecnología (SIMUMAT) and by Spanish grants MTM2004-00098, SEJ2007-64500 and MTM2006-09920 (Ministry of Education and Science-FEDER).