Article ID Journal Published Year Pages File Type
415369 Computational Statistics & Data Analysis 2008 16 Pages PDF
Abstract

In regularized regression the vectors that lie in Krylov and eigen subspaces, formed in PLS and PC regressions respectively, provide useful low dimensional approximations for the LS regression coefficient vector. By preconditioning the LS normal equations we provide a framework in which to combine these methods, and so exploit both of their respective advantages. The link between the proposed method to orthogonal signal correction and to cyclic subspace regression is made. The performance of the proposed solution in reducing the dimension of the regression problem, and the shrinkage properties of the resulting coefficient vector, are both examined.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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