# Calculating Covariance Matrix in Matlab

I am implementing a PCA algorithm in Matlab. I see two different approaches to calculating the covariance matrix:

``````C = sampleMat.' * sampleMat ./ nSamples;
``````

and

``````C = cov(data);
``````

What is the difference between these two methods?

PS 1: When I use cov(data) is that unnecessary:

``````meanSample = mean(data,1);
data = data - repmat(data, nSamples, 1);
``````

PS 2:

At first approach should I use nSamples or nSamples -1 ?

-

In short: `cov` mainly just adds convenience to the bare formula.

If you type

``````edit cov
``````

You'll see a lot of stuff, with these lines all the way at the bottom:

``````xc = bsxfun(@minus,x,sum(x,1)/m);  % Remove mean
if flag
xy = (xc' * xc) / m;
else
xy = (xc' * xc) / (m-1);  % DEFAULT
end
``````

which is essentially the same as your first line, save for the subtraction of the column-means.

Read the wiki on sample covariances to see why there is a minus-one in the default path.

Note however that your first line uses normal transpose (`.'`), whereas the `cov`-version uses conjugate-transpose (`'`). This will make the output of `cov` different in the context of complex-valued data.

Also note that `cov` is a function call to a non-built in function. That means that there will be a (possibly severe) performance penalty when using `cov` in a loop; Matlab's JIT compiler cannot accelerate non-built in functions.

-
With the caveat that complex numbers are handled differently from the code in the question. –  Ben Voigt Dec 4 '12 at 12:41
@BenVoigt: true, the transpose is different, thanks. Editing... –  Rody Oldenhuis Dec 4 '12 at 12:42
According to your edit 2, does it better to use first line? and which one is the correct one or are they same to use conjugate-transpose and transpose to calculate covariance? –  kamaci Dec 4 '12 at 12:51
@kamaci: it depends. If you need to calculate only 1 covariance matrix per run, it's just easier to use `cov`. If you need to do it hundreds of times in a loop, with different data sets, etc., using the bare formula will be much faster and is overall the better trade-off. As mentioned above: the output of `cov` will only be different from your first attempt, if your `data` is complex-valued. If it only contains real values, the outputs will be identical. –  Rody Oldenhuis Dec 4 '12 at 12:55
I will run it only once however my data is too big, so still using cov is OK? –  kamaci Dec 4 '12 at 12:57