PRINCIPAL COMPONENT REGRESSION, RIDGE-REGRESSION AND RIDGE PRINCIPAL COMPONENT REGRESSION IN SPECTROSCOPY CALIBRATION

Citation
E. Vigneau et al., PRINCIPAL COMPONENT REGRESSION, RIDGE-REGRESSION AND RIDGE PRINCIPAL COMPONENT REGRESSION IN SPECTROSCOPY CALIBRATION, Journal of chemometrics, 11(3), 1997, pp. 239-249
Citations number
16
Categorie Soggetti
Chemistry Analytical","Statistic & Probability
Journal title
ISSN journal
08869383
Volume
11
Issue
3
Year of publication
1997
Pages
239 - 249
Database
ISI
SICI code
0886-9383(1997)11:3<239:PCRRAR>2.0.ZU;2-K
Abstract
Ridge regression (RR) and principal component regression (PCR) are two popular methods intended to overcome the problem of multicollinearity which arises with spectral data The present study compares the perfor mances of RR and PCR in addition to ordinary least squares (OLS) and p artial least squares (PLS) on the basis of two data sets. An alternati ve procedure that combines both PCR and RR is also introduced and is s hown to perform well. Furthermore, the performance of the combination of RR and PCR is stable in so far as sufficient information is taken i nto account. This result suggests discarding those components that are unquestionably identified as noise, when the ridge constant tackles t he degeneracy caused by components with small variances. (C) 1997 by J ohn Wiley & Sons, Ltd.