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I have a large matrix of size 40K * 900K. It is a sparse, binary matrix and I would like to calculate the Jaccard distance between its rows (40K by 40K Jacard distance in total). I'm aware of built-in function pdist which calculates ths similarity for me, but due to matrix size it seems like it can't and it shows me the following error message.

 Matrix is too large to convert to linear index.

 Error in ==> pdist at 139
     elseif any(imag(X(:)))

Any suggestion on how to resolve this problem?

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The result would be a non-sparse matrix, which takes up about 12 GB of memory. Are you sure you want that? – A. Donda May 2 '14 at 3:10
I should find the Jaccard similarity between different items. Is there any other efficient way to do that ? – H.Z. May 2 '14 at 17:08
My comment was not about efficiency of implementation, but whether you will actually be able to use the result. What are you going to do with that 40k x 40k matrix once you have it? – A. Donda May 2 '14 at 17:52

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