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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

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Have a look at the 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
    
From where did you get "subtract the mean of the matrix, divided by the standard deviation"? The context should explain if the mean (single value) or the mean among a dimension is intended. I assume it's a single value, because otherwise the algorithm would have to specify the dimension. To do this in matlab, use mean(A(:)) –  Daniel Jun 19 '14 at 15:48
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@Daniel Centering for PCA is done for each variable (i.e., column of the data matrix). –  Roland Jun 19 '14 at 15:50
    
@Daniel Please see here: strata.uga.edu/software/pdf/pcaTutorial.pdf page 5.. I'm calculating the long way as I'm trying create an algorithm for calculating the means and this seems the only useful resource out there –  Phorce Jun 19 '14 at 15:50

1 Answer 1

The R command that will do this in one swoop for matrices or dataframes is scale()

> A = matrix(c(1, 3, 2, 4), 2)
> scale(A)
           [,1]       [,2]
[1,] -0.7071068 -0.7071068
[2,]  0.7071068  0.7071068
attr(,"scaled:center")
[1] 2 3
attr(,"scaled:scale")
[1] 1.414214 1.414214

It's done by column. When you used 'mean' you got the mean for all four numbers rather than by column. That is not what you would want if you are doing PCA calculations.

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@BoundedDust - So when you carry out PCA calculations, you take the mean of all four numbers and NOT the columns, what I was originally doing? –  Phorce Jun 19 '14 at 18:22
    
No, just the opposite. When doing PCA you scale each variable. The naive way would be apply(A, 2, mean) –  BondedDust Jun 19 '14 at 18:24
    
Let me just get this right... Let's say you have a matrix: $A = [1, 2; 3, 4]` You would calculate the mean: 2 3 and SD: 1.4142 1.4142 and then you would do the following: 1 - 2/sd, 2-3, 3-2, 4-3 so this is correct? Sorry I think I'm understanding what you mean now.. Thanks, but I might be wrong so can you confirm? –  Phorce Jun 19 '14 at 18:32
    
You are talking to a non-Matlab user. Assuming that Matlab handles its matrices in column-major order (which is how R defines its matrices) then the means would be 1.5 and 3.5. If Matlab handles its matrices in row major order then you would need to add a byrow=TRUE to the matrix call above that defines A in order to be at the same starting point for this discussion. –  BondedDust Jun 19 '14 at 18:55

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