| simpls {plsdepot} | R Documentation | 
SIMPLS: Alternative Approach to PLS Regression
Description
The function simpls performs the SIMPLS Algorithm
as described in Michel Tenenhaus book La Regression
PLS, chapter 5.
Usage
  simpls(X, Y, comps = 2)
Arguments
X | 
 Numeric matrix or data frame with two or more columns (X-block).  | 
Y | 
 Numeric matrix or data frame with two or more columns (Y-block).  | 
comps | 
 Number of components to be extracted.
(  | 
Details
No missing data are allowed.
Value
An object of class "simpls", basically a list with
the following elements:
x.scores | 
 scores of the X-block (also known as T components)  | 
x.wgs | 
 weights of the X-block  | 
y.wgs | 
 weights of the Y-block  | 
cor.xt | 
 correlations between X and T  | 
cor.yt | 
 correlations between Y and T  | 
R2X | 
 explained variance of X by T  | 
R2Y | 
 explained variance of Y by T  | 
Author(s)
Gaston Sanchez
References
Tenenhaus, M. (1998) La Regression PLS. Theorie et Pratique. Paris: Editions TECHNIP.
de Jong, S. (1993) SIMPLS: An alternative approach to partial least squares regression. Chemometrics and Intelligent Laboratory Systems, 18: 251-263.
See Also
Examples
## Not run: 
 # load data linnerud
 data(linnerud)
 # apply inter-battery method
 my_simpls = simpls(linnerud[,1:3], linnerud[,4:6])
 # plot variables
 plot(my_simpls, what="variables")
 
## End(Not run)