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In python I would use sklearn's kMean to calculate the clusters, then I get the distance of each point within a cluster to the cluster center by using transform().
I would like to do the same in R, but R's kMeans in the stats package would only give me the cluster prediction for each point, or only the distance of each feature to cluster center.

(for clearance clusterpoints are documents in my case and features are words/terms, so my input matrix is a TfIdf-matrix)

So is there any other kMeans library that i could use, or is there a fine matrix operation that I can apply to resulting prediction/feature-distance/input-matrix to get what I want?

I would be grateful for any help or hints

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I'm not aware of any package/function, but that's probably because this is rather trivial to write yourself. Won't be more than 5-6 lines. – joran Sep 27 '13 at 16:41
    
Ypu should post the output of dput for a representative Tfldf object. – 42- Sep 27 '13 at 17:23
up vote 1 down vote accepted

It was indeed very trivial ... rdist computes the euclidean distance for 2 matrixes. So I simply could use rdist(tfidfM, km$centers)

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