Varcapy: Difference between revisions

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===Purpose===
===Purpose===


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VARCAPY Calculate percent y-block variance captured by a PLS regression model. Given a PLS regression model, VARCAPY calculates the percent of y-block variance captured by each latent variable of the model for each column of the y-block.
VARCAPY Calculate percent y-block variance captured by a PLS regression model. Given a PLS regression model, VARCAPY calculates the percent of y-block variance captured by each latent variable of the model for each column of the y-block.


Input is a standard PLS model structure. Outupt is a matrix containing the variance captured by each latent variable (rows) for each column of y (columns).
Input is a standard PLS model structure, <tt>model</tt> and an optional options structure (see options below). Outupt, <tt>vc</tt>, is a matrix containing the variance captured by each latent variable (rows) for each column of y (columns).


===Options===
===Options===

Latest revision as of 10:00, 10 October 2008

Purpose

Calculate percent y-block variance captured by a PLS regression model.

Synopsis

vc = varcapy(model,options)

Description

VARCAPY Calculate percent y-block variance captured by a PLS regression model. Given a PLS regression model, VARCAPY calculates the percent of y-block variance captured by each latent variable of the model for each column of the y-block.

Input is a standard PLS model structure, model and an optional options structure (see options below). Outupt, vc, is a matrix containing the variance captured by each latent variable (rows) for each column of y (columns).

Options

  • plots : [ 'none' |{'final'}] Governs plotting of results.

See Also

analysis, pca