# Sort a vector based upon the unique value frequency

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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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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