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Efficient low-rank appoximation in MATLAB

I am trying to do SVD for a matrix of size 7468 x 1193 in matlab. Surprisingly enough, it takes a very long time -- I would think that this is a relatively small matrix for Matlab / SVD. Is there a better implementation for SVD in matlab which can tackle this size of matrices? I don't really need all singular vectors from U and V, but relatively a small number of them (say 50 or so).

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marked as duplicate by casperOne Jan 12 '12 at 16:33

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i have matrix 5383x6236 and i am using Math.Extreme code thorowing outofMemoryException can i do this in matlab? –  GPU.. Jun 18 at 6:13

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up vote 6 down vote accepted

Yes it is possible in matlab, using svds (with a s at the end):

k=50;
[U,S,V]=svds(A,k);
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i have matrix 5383x6236 and i am using Math.Extreme code thorowing outofMemoryException can i do this in matlab? –  GPU.. Jun 18 at 6:14
    
What is "Math.Extreme" ? Anyway, if it throws outofMemoryException, I guess you should buy more RAM or use smaller matrices. –  Oli Jun 19 at 2:41
    
Math.Extreme is .net libruary –  GPU.. Jun 19 at 4:08
    
This question is about the matlab language not .net –  Oli Jun 22 at 4:35

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