Polypls

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Purpose

Calculate partial least squares regression models with polynomial inner relations.

Synopsis

[p,q,w,t,u,b,ssqdif] = polypls(x,y,lv,n)

Description

POLYPLS creates a partial least squares regression model with polynomial fit for the inner relation.

Use POLYPRED to make predictions with new data.

Inputs

  • x = matrix of predictor variables (X-block),
  • y = vector or matrix of the predicted variables (Y-block),
  • lv = maximum number of latent variables to consider,
  • n = order of polynomial to use for the inner-relation.

Outputs

  • p = x-block loadings,
  • q = y-block loadings,
  • w = x-block weights,
  • t = x-block scores,
  • u = y-block scores,
  • b = matrix of polynomial coefficients for the inner-relation,
  • ssqdif = table of x- and y-block variance captured by the PLS model.

Options

options = a structure array with the following fields:

  • display: [ 'off' | {'on'} ] governs display of SSQ table

See Also

lwrxy, pls, polypred