pls (version 1.0-1)

svdpc.fit: Principal Components Regression

Description

Fits a PCR model using the singular value decomposition.

Usage

svdpc.fit(X, Y, ncomp, stripped = FALSE, ...)

Arguments

Value

  • A list containing the following components is returned:
  • coefficientsan array of regression coefficients for 1, ..., ncomp components. The dimensions of coefficients are c(nvar, npred, ncomp) with nvar the number of X variables and npred the number of variables to be predicted in Y.
  • scoresa matrix of scores.
  • loadingsa matrix of loadings.
  • projectionthe projection matrix used to convert X to scores.
  • Xmeansa vector of means of the X variables.
  • Ymeansa vector of means of the Y variables.
  • fitted.valuesan array of fitted values. The dimensions of fitted.values are c(nobj, npred, ncomp) with nobj the number samples and npred the number of Y variables.
  • residualsan array of regression residuals. It has the same dimensions as fitted.values.
  • Xvara vector with the amount of X-variance explained by each number of components.
  • XtotvarTotal variance in X.
  • If stripped is TRUE, only the components coefficients, Xmeans and Ymeans are returned.

Details

This function should not be called directly, but through the generic functions pcr or mvr with the argument method="svdpc". The singular value decomposition is used to calculate the principal components.

See Also

mvr pcr plsr