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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).

The whole thing does not fit into memory, so I converted it into a sparse ARFF file. But R obviously can't read the sparse ARFF file format. I also have the data as a plain CSV file.

Is there any package available in R for loading such sparse matrices efficiently? I'd then use the regular k-means algorithm from the cluster package to proceed.

Many thanks

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Thanks for the answer! I got another question though :-) I am trying to run bigkmeans with a cluster number of about 2000 e.g "clust <- bigkmeans(mymatrix, centers=2000)" However, I get the following error: Error in 1:(10 + 2^k) : result would be too long a vector Can someone maybe give me a hint what I am doing wrong here? Thanks! – movingabout Jun 18 '10 at 7:49
Original at… – Andrew Dalke Dec 20 '11 at 20:04

The bigmemory package (or now family of packages -- see their website) used k-means as running example of extended analytics on large data. See in particular the sub-package biganalytics which contains the k-means function.

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+1 for big memory, i had no idea that they had so many packages. – richiemorrisroe Jun 3 '11 at 20:34
Yes and the function from bigmemory package supports 1 atomic data type. – Scott Davis Jun 13 '14 at 16:21

Please check:



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sparkcl performs sparse hierarchical clustering and sparse k-means clustering This should be good for R-suitable (so - fitting into memory) matrices.


For really big matrices, I would try a solution with Apache Spark sparse matrices, and MLlib - still, do not know how experimental it is now:$

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There's a special SparseM package for R that can hold it efficiently. If that doesn't work, I would try going to a higher performance language, like C.

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