Mlr

From Eigenvector Research Documentation Wiki
Revision as of 11:53, 28 July 2017 by imported>Benjamin
Jump to navigation Jump to search

Purpose

Multiple Linear Regression for multivariate Y.

Synopsis

model = mlr(x,y,options)
pred = mlr(x,model,options)
valid = mlr(x,y,model,options)
mlr  % Launches analysis window with MLR as the selected method.

Description

MLR identifies models of the form Xb = y + e.

Inputs

  • y = X-block: predictor block (2-way array or DataSet Object)
  • y = Y-block: predictor block (2-way array or DataSet Object)

Outputs

  • model = scalar, estimate of filtered data.
  • pred = structure array with predictions
  • valid = structure array with predictions

Options

options = a structure array with the following fields.

  • display: [ {'off'} | 'on'] Governs screen display to command line.
  • plots: [ 'none' | {'final'} ] governs level of plotting.
  • ridge: [ 0 ] ridge parameter to use in regularizing the inverse.
  • preprocessing: { [] [] } preprocessing structure (see PREPROCESS).
  • blockdetails: [ 'compact' | {'standard'} | 'all' ] level of detail (predictions, raw residuals, and calibration data) included in the model.
  • ‘Standard’ = the predictions and raw residuals for the X-block as well as the X-block itself are not stored in the model to reduce its size in memory. Specifically, these fields in the model object are left empty: 'model.pred{1}', 'model.detail.res{1}', 'model.detail.data{1}'.
  • ‘Compact’ = for this function, 'compact' is identical to 'standard'.
  • 'All' = keep predictions, raw residuals for both X- & Y-blocks as well as the X- & Y-blocks themselves.

See Also

analysis, crossval, ils_esterror, modelstruct, pcr, pls, preprocess, ridge, testrobustness