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Given a data matrix M, pc=prcomp(M) provides pc$rotation (a matrix of eigenvectors) and pc$x, the scores of the original variables in the pca space. However, the scores I obtain don't match inner products computed "by hand."

For instance, if I have matrix


pctest=prcomp(m1) returns the following for pctest$x, pctest$rotation, respectively:

          PC1        PC2        PC3
    [1,] -0.3751603  0.3133237 -0.5240612
    [2,] -0.5810952 -0.4802203  0.5681371
    [3,] -0.3471051 -0.5836868 -0.6211215
    [4,] -0.6333255  0.5749142  0.1295694

           PC1       PC2           PC3
     [1,]  5.11167 -1.326545 -1.110223e-16
     [2,] -4.05543 -2.728072 -1.942890e-15
     [3,] -1.05624  4.054616  2.831069e-15

Now, the score of variable 1 on PCA axis 2 (for instance) should just be the inner product of m1[1,] on pctest$rotation[,2], which is

        [1,] -0.09852071

Rather than pctest$x[1,2], which is -1.3265

Is this just a matter of scaling, or is $x returning something other than the projections of the original variables onto the PCA axes?

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+1 for a clear and concise question with reproducible code. –  Paul Hiemstra Mar 14 '13 at 22:40

1 Answer 1

up vote 2 down vote accepted

Reading the documentation for ?prcomp answers your question: The calculation is done by a singular value decomposition of the (centered and possibly scaled) data matrix...

You would need to center and scale m1[1,] before you can multiply it with the corresponding PCA vector. This can be readily observed by setting the center and scale arguments to FALSE after which:

all.equal(m1 %*% pctest$rotation, pctest$x)
[1] TRUE
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If you make this into answer, a more to-the-point answer would be more appropriate. A more vague hint like this works best as a comment, as you already did. –  Paul Hiemstra Mar 14 '13 at 22:23
That doesn't really answer my question. The score for each variable should still be its projection onto the PCA vectors. When I take the inner product of the variables in m (say, m1[1,]) and the corresponding PCA vector (regardless of whether it's an eigenvector or computed from SVA decomposition), I do not obtain the scores in pca$x. –  user1815498 Mar 14 '13 at 22:24
@user1815498: the point is that the calculation is done on the centered and possibly scaled data matrix. You have to center and scale m1[1,] before you can multiply it with the corresponding PCA vector. –  Joshua Ulrich Mar 14 '13 at 22:29
I approve of @PaulHiemstra's answer, especially the FASLE. :) –  Joshua Ulrich Mar 14 '13 at 22:37
@JoshuaUlrich can we share the rep? I would deserve at least 23.1% for editing in my things :). And what better than to use FASLE for FALSE, like using vault for fault. –  Paul Hiemstra Mar 14 '13 at 22:38

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