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I would like to perform a Principal Component Analysis on a dataset composed of approximately 40 000 samples, each sample displaying about 10 000 features.

Using Matlab princomp function takes ages ... What would be the fastest algorithm ? How long would it take on a i7 dual core / 4GB Ram ?

Thanks for your support

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polymerase chain activity? putrid child adenoids? There's too many TLAs these days... – Marc B Sep 5 '12 at 18:44
What have you tried beyond Matlab princomp? – Anony-Mousse Sep 6 '12 at 6:28
I have tried python scikit-learn PCA function and this algorithm… – mellow Sep 6 '12 at 14:34
What is the domain of the problem? Can you avoid PCA in the first place? – Neil McGuigan Sep 7 '12 at 18:03
The domain is supervised learning. I don't like to feed my neural net or else with such a large number of features... but I may be wrong – mellow Sep 7 '12 at 18:24

crosspost of this:

There has been some good research on this recently. The new approaches use "randomized algorithms" which only require a few reads of your matrix to get good accuracy on the largest eigenvalues. This is in contrast to power iterations which require several matrix-vector multiplications to reach high accuracy.

You can read more about the new research here:

This code will do it for you:

If your language of choice isn't in there you can roll your own randomized SVD pretty easily; it only requires a matrix vector multiplication followed by a call to an off-the-shelf SVD.

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