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Lasso in infinite dimension: application to variable selection in functional multivariate linear regression

Roche, Angelina (2023), Lasso in infinite dimension: application to variable selection in functional multivariate linear regression. https://basepub.dauphine.psl.eu/handle/123456789/24889

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lassov8.pdf (790.3Kb)
Type
Document de travail / Working paper
External document link
https://hal.science/hal-01725351
Date
2023
Series title
Cahier de recherche CEREMADE, Université Paris Dauphine-PSL
Published in
Paris
Pages
43
Metadata
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Author(s)
Roche, Angelina
CEntre de REcherches en MAthématiques de la DEcision [CEREMADE]
Abstract (EN)
It is more and more frequently the case in applications that the data we observe come from one or more random variables taking values in an infinite dimensional space, e.g. curves. The need to have tools adapted to the nature of these data explains the growing interest in the field of functional data analysis. The model we study in this paper assumes a linear dependence between a quantity of interest and several covariates, at least one of which has an infinite dimension. To select the relevant covariates in this context, we investigate adaptations of the Lasso method. Two estimation methods are defined. The first one consists in the minimization of a Group-Lasso criterion on the multivariate functional space H. The second one minimizes the same criterion but on a finite dimensional subspaces of H whose dimension is chosen by a penalized least squares method. We prove oracle inequalities of sparsity in the case where the design is fixed or random. To compute the solutions of both criteria in practice, we propose a coordinate descent algorithm. A numerical study on simulated and real data illustrates the behavior of the estimators.

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