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 ?

  • i think it depends on what you mean by 'better', and i'm not being sarcastic or dismissive, just pointing out, i dont know if there's a easy answer until its clear what the question under consideration is (as hadley eludes to) – justin cress Dec 1 '10 at 16:52

Are your variables measured on a common scale? If yes, then don't scale. If no, then it's probably a good idea to scale.

If you are trying to predict the value of another variable, PCA is probably not the correct tool. Maybe you should look at a regression model instead.

  • but how do I find out if my variables are measured on a common scale ? – justR Nov 22 '09 at 18:01

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