memory pca vs pcacov
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Dear all,
I'm running a pca on a large matrix (33*500,000) and with pcacov I get a memory error, but pca gives me no trouble. Could anyone explain this to me? Is the matrix somehow being reduced before computing the covariance matrix in pca?
Thanks!
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Hans
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Hiro Yoshino
on 2 Nov 2020
In PCA, your matrix (p x q) will be once converted into the variance-covariance matrix (q x q).
This would reqiure huge memory comsumption. Meanwhile, pcacov accepts a variance-covariance matrix as an input and, therefore the argument (input) should be a square matrix though.
As for big data anaysis, you may want to use tall array - this can be a solution.
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Hans van der Horn
on 2 Nov 2020
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Hiro Yoshino
on 2 Nov 2020
I do not believe pcacov works with your matrix in the first place since the shape of your matrix is unacceptable. I do not know what the error will be like.
Hans van der Horn
on 2 Nov 2020
2 Comments
Hiro Yoshino
on 2 Nov 2020
I got your point now!!
OK, actually to avoid memory problem, pca normally takes a different approach to calculate eigen vectors - SVD. This is not a direct method and produces some by-product. This is a well-known fact - you may find the this in your text book too, I'm sure.
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