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My problem is that it is difficult to get the optimal cluster number by using k-means, so I thought of using a hierarchical algorithm to find the optimal cluster number. After defining my ideal classification I want to use this classification to find the centroids with k-means, without iteration.

data= rand(300,5);
D = pdist(data);
Z = linkage(D,'ward');
T = cluster(Z,'maxclust',6);

Now I want to use the clusters defined in vector T and the positions in to k-means algorithm without iterations. Can anyone give a tip how to do?

Thank you.

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What have you tried? –  Anony-Mousse Feb 28 '13 at 12:21

1 Answer 1

If you are looking for the centroids given that you already clustered them in T, then you only need to compute the mean of data grouped according to T.

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