Open Access
2009 Weighted least squares methods for prediction in the functional data linear model
Aurore Delaigle, Peter Hall, Tatiyana V. Apanasovich
Electron. J. Statist. 3: 865-885 (2009). DOI: 10.1214/09-EJS379

Abstract

The problem of prediction in functional linear regression is conventionally addressed by reducing dimension via the standard principal component basis. In this paper we show that weighted least-squares methods can be more effective when the experimental errors are heteroscedastic. We give a concise theoretical result which demonstrates the effectiveness of this approach, even when the model for the variance is inaccurate, and we explore the numerical properties of the method. We show too that the advantages of the suggested adaptive techniques are not found only in low-dimensional aspects of the problem; rather, they accrue almost equally among all dimensions.

Citation

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Aurore Delaigle. Peter Hall. Tatiyana V. Apanasovich. "Weighted least squares methods for prediction in the functional data linear model." Electron. J. Statist. 3 865 - 885, 2009. https://doi.org/10.1214/09-EJS379

Information

Published: 2009
First available in Project Euclid: 21 August 2009

zbMATH: 1326.62151
MathSciNet: MR2534205
Digital Object Identifier: 10.1214/09-EJS379

Subjects:
Primary: 62G05 , 62J05

Keywords: cross-validation , eigenfunction , eigenvector , Functional data analysis , Functional linear regression , mean squared error , orthogonal series , Principal Component Analysis , rate of convergence , weighted linear regression

Rights: Copyright © 2009 The Institute of Mathematical Statistics and the Bernoulli Society

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