[R] how to tell if its better to standardize your data matrix first when you do principal
masterinex
xevilgang79 at hotmail.com
Sun Nov 22 02:21:05 CET 2009
Hi guys ,
Im trying to do principal component analysis in R . There is 2 ways of doing
it , I believe.
One is doing principal component analysis right away the other way is
standardizing the matrix first using s = scale(m)and then apply principal
component analysis.
How do I tell what result is better ? What values in particular should i
look at . I already managed to find the eigenvalues and eigenvectors , the
proportion of variance for each eigenvector using both methods.
I noticed that the proportion of the variance for the first pca without
standardizing had a larger value . Is there a meaning to it ? Isnt this
always the case?
At last , if I am supposed to predict a variable ie weight should I drop
the variable ie weight from my data matrix when I do principal component
analysis ?
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