info:eu-repo/semantics/article
Envelopes: A new chapter in partial least squares regression
Fecha
2020-10Registro en:
Cook, R. Dennis; Forzani, Liliana Maria; Envelopes: A new chapter in partial least squares regression; John Wiley & Sons Ltd; Journal of Chemometrics; 34; 10; 10-2020
0886-9383
CONICET Digital
CONICET
Autor
Cook, R. Dennis
Forzani, Liliana Maria
Resumen
Partial least squares (PLS) regression has been a very popular method for prediction. The method can in a natural way be connected to a statistical model, which now has been extended and further developed in terms of an envelope model. Concentrating on the univariate case, several estimators of the regression vector in this model are defined, including the ordinary PLS estimator, the maximum likelihood envelope estimator, and a recently proposed Bayes PLS estimator. These are compared with respect to prediction error by systematic simulations. The simulations indicate that Bayes PLS performs well compared with the other methods. The model for partial least squares is presented in 5 ways. Three estimators in the model are introduced and compared through simulations. The ordinary partial least‐squares estimator does well, but the newly introduced Bayes estimator does better in many respects.