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I'm clustering the rows of an NxM matrix using kmeans.

clustIdx = kmeans(data, N_CLUST, 'EmptyAction', 'drop');

I then re-arrange the rows of my matrix to such that adjacent rows are in the same cluster

dataClustered = data(clustIdx,:);

However every time I run the cluster analysis I get more or less the same clusters but with different identities. Thus the structure in dataClustered looks the same after each iteration but the groups are in different orders.

I'd like to re-arrange my cluster identities such that the the lower cluster identities represent dense clusters and the higher numbers are the sparse clusters.

Is there a easy and/or intuitive way to do this?

ie. Convert

clustIdx = [1 2 3 2 3 2 4 4 4 4];

to

clustIdx = [4 2 3 2 3 2 1 1 1 1]

The identities themselves are arbitrary the information is contained in the grouping.

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2 Answers 2

up vote 3 down vote accepted

If I understand correctly, you want to assign cluster label 1 to the cluster with most points, cluster label 2 to the cluster with the second most points, etc.

Assume you have a cluster label array called idx

>> idx = [1 1 2 2 2 2 3 3 3]';

Now you can relabel idx like this:

%# count the number of occurrences
cts = hist(idx,1:max(idx));

%# sort the counts - now we know that 1 should be last
[~,sortIdx] = sort(cts,'descend')
sortIdx =
     2     3     1

%# create a mapping vector (thanks @angainor)
map(sortIdx) = 1:length(sortIdx);
map =
     3     1     2

%# and remap indices
map(idx)
ans =
     3     3     1     1     1     1     2     2     2
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+1 Just have one suggestion. You could substitute the second sort by map(sortIdx) = 1:numel(sortIdx); - could be a bit faster. This is essentially an inverse permutation. –  angainor Dec 10 '12 at 17:18
    
@angainor: thanks! That is much more elegant. –  Jonas Dec 10 '12 at 18:19

It may not be efficient, but the easy way would be to first determine for each cluster how dense it is.

Then you can make a nx2 matrix that contains the Density and ClusterIdx

Afterwards a simple sort will give you the ClusterIdx in the right order

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