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I am trying to do some (k-means) clustering on a very large matrix.

The matrix is approximately 500000 rows x 4000 cols yet very sparse (only a couple of "1" values per row). I want to get around 2000 clusters.

I got two questions: - Can someone recommend an open source platform or tool for doing that (maybe using k-means, maybe with something better)? - How can I best estimate the time the algorithm will need to finish? I tried weka once, but aborted the job after a couple of days because I couldn't tell how much time it would take.


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Is this for a real time application or for your own self development? –  user373215 Aug 26 '10 at 23:01
Reasked in… . –  Andrew Dalke Dec 20 '11 at 20:04

3 Answers 3

For your case, I guess your problem is only in the size of the input.

I would suggest "cluto" as a good tool for large and sparse dataset. It is written in C. I have tried around 17 millions of rows with around 400 cols. And it works fast.

Link of the Cluto library

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You can try sparcl package in R, it implements sparse k-means and hierarchical clustering. Not so easy to understand tough

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be careful, sparcl is 'sparse' in feature selection and does not address the n^2 storage for the similarity matrix. –  Chris Dec 3 '14 at 20:47

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