I'm trying to compute the PCA scores, and, part of the algorithm says: `subtract the mean of the matrix, divided by the standard deviation`

I have the following 2x2 matrix given by: `A = [1 3; 2 4]`

let's say in Matlab, I do the following:

`mean(A)`

-> This gives me back a vector of 2 values (column based) so.. 1.5 and 3.5. Which to me in this instance this would be correct.

In R however, when computing the mean `mean(A)`

the mean is just one value. This is the same for the standard deviation.

So my question is, which is right? For the purposes of this function (in the algorithm):

`function(x) {(x - mean(x))/sd(x)`

(http://strata.uga.edu/software/pdf/pcaTutorial.pdf)

Should I be subtracting the mean based on two values by Matlab or 1 value by R?

Thanks

`colMeans`

function in R. There is no`colSDs`

(though you could define one easily), but you can use`apply`

for calculating colwise SDs. – Roland Jun 19 '14 at 15:47`mean(A(:))`

– Daniel Jun 19 '14 at 15:48