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PLS classification of functional data
Authors:Cristian Preda  Gilbert Saporta  Caroline Lévéder
Institution:(1) CERIM - Département de Statistique, Faculté de Médecine, Université de Lille 2, 1, Place de Verdun, 59045 Lille, France;(2) Chaire de Statistique Appliquée, CEDRIC, CNAM, 292, Rue Saint Martin, 75141 Paris Cedex 03, France;(3) Danone Vitapole, 128 Route Départementale, 91767 Palaiseau Cedex, France
Abstract:Partial least squares (PLS) approach is proposed for linear discriminant analysis (LDA) when predictors are data of functional type (curves). Based on the equivalence between LDA and the multiple linear regression (binary response) and LDA and the canonical correlation analysis (more than two groups), the PLS regression on functional data is used to estimate the discriminant coefficient functions. A simulation study as well as an application to kneading data compare the PLS model results with those given by other methods.
Keywords:PLS regression  Functional data  Linear discriminant analysis
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