• Title of article

    Adaptively preconditioned Krylov spaces to identify irrelevant predictors

  • Author/Authors

    Kondylis، نويسنده , , Athanassios and Whittaker، نويسنده , , Joe، نويسنده ,

  • Issue Information
    دوفصلنامه با شماره پیاپی سال 2010
  • Pages
    9
  • From page
    205
  • To page
    213
  • Abstract
    Linear regression methods have problems in estimation when the predictor variables are highly correlated and when their number exceeds the number of available observations. PLS is one well known method for handling such ill-conditioned regression problems. It does so by approximating the regression solution in a low dimensional subspace. While it copes with collinearity and singularity problems, PLS does not have a variable selection procedure intrinsic to the method. However, it is often the case that one needs to decide which predictors, among the numerous and correlated ones, are the more relevant. The PLS coefficient is a good starting point for the identification of relevant variables in ill-conditioned regression settings. We propose to adaptively precondition the space generated by PLS in order to determine the most relevant predictors. The relevant subset is determined by a multiple testing procedure, and preconditioning stops when this set no longer changes. The principal objective is to do regression modelling and to recover solutions that are easy to interpret in the high dimensional regression setting. We use dimension reduction in a PLS fashion, using information on the response to guide the variable selection procedure. A variety of examples is studied with good results.
  • Keywords
    Krylov subspaces , Conjugate gradients , Relative importance factor , Relevant subset , PLS regression
  • Journal title
    Chemometrics and Intelligent Laboratory Systems
  • Serial Year
    2010
  • Journal title
    Chemometrics and Intelligent Laboratory Systems
  • Record number

    1489898