Krylov subspace;
least squares;
partial least squares;
principal components;
rank deficient;
shrinkage estimators;
subspace distance;
D O I:
10.1111/1467-9469.00201
中图分类号:
O21 [概率论与数理统计];
C8 [统计学];
学科分类号:
020208 ;
070103 ;
0714 ;
摘要:
Partial least squares regression (PLS) is one method to estimate parameters in a linear model when predictor variables are nearly collinear. One way to characterize PLS is in terms of the scaling (shrinkage or expansion) along each eigenvector of the predictor correlation matrix. This characterization is useful in providing a link between PLS and other shrinkage estimators, such as principal components regression (PCR) and ridge regression (RR), thus facilitating a direct comparison of PLS with these methods. This paper gives a detailed analysis of the shrinkage structure of PLS, and several new results are presented regarding the nature and extent of shrinkage.
机构:
Queensland Univ Technol, ARC Ctr Excellence Math & Stat Frontiers, Brisbane, Qld, AustraliaQueensland Univ Technol, ARC Ctr Excellence Math & Stat Frontiers, Brisbane, Qld, Australia
Sutton, Matthew
论文数: 引用数:
h-index:
机构:
Thiebaut, Rodolphe
Liquet, Benoit
论文数: 0引用数: 0
h-index: 0
机构:
Queensland Univ Technol, ARC Ctr Excellence Math & Stat Frontiers, Brisbane, Qld, Australia
Univ Pau & Pays Adour, Lab Math & Leurs Applicat, UMR CNRS 5142, Pau, FranceQueensland Univ Technol, ARC Ctr Excellence Math & Stat Frontiers, Brisbane, Qld, Australia