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I have a transaction dataset with 250000 transactions (rows) and 2183 items (columns). I wanna transform it to a sparse matrix and then do hierarchical cluster on it. I tried package 'sparcl', but it seems it doesn't work on sparse matrix. Any suggestion about how to solve this problem? Or any other package I can use to do cluster analysis on sparse matrix? Thanks!

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3 Answers 3

sparcl (Witten et al) is supposed to work on dataset where p>>n (p=number of features, n=number of observations).

I have a problem similar to this question, where, I have a MxN matrix and number of non zero entries (n) is small, i.e. n << M*N. Matlab has a way of taking a sparse matrix as an input (http://www.mathworks.com/help/matlab/ref/spconvert.html).
But after taking the input as a sparse matrix, which is a (4K)x(11K) matrix with 100K entries, matlab crashed on my machine (i5, 4gb ram, ubuntu oneiric) while i tried to calculate pdist (a method for calculating the distance matrix for hierarchical clustering).
I was wondering if R has a way of taking a sparse matrix input from a file and calculate dist function.

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Would affinity propagation work with your data? It appears to handle sparse matrices.

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Affinity propagation, as implemented in the apcluster package, currently does not support sparse matrices, but this will be included in one of the future releases. In the meantime, you can make use of leveraged affinity propagation (function apclusterL()).

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