# Clustering data after linkage algorithm

I am not an expert in statistics and data analysis, hence I can't understand if the behavior which I obtain is correct or not. I am here looking for your help.

Assume I have these samples which I would like to cluster (10 points in the plane - reduced version of the problem):

`````` [X Y] =

266   450
266   400
258   168
290   442
295   438
273   432
294   158
318   161
250   423
253   413
``````

To cluster them I can use a cluster tree

``````Z = linkage([ X Y ],'complete');
``````

which is (by `dendrogram(Z,10)`)

Now I would like to extract clusters on the basis of the distance attached to the nodes of the tree.

Say that my distance is `150`, I would expect that the call

`````` T = cluster(Z,'Cutoff',150);
``````

returns me `2` clusters. But it gives me just one (I suppose), i.e.

``````T =

1
1
1
1
1
1
1
1
1
1
``````

What am I missing?

-

Use `inconsistent(Z,150)` and look at the values in column 4. Increasing the cutoff from a small positive number steps you along the tree.

E.g.

``````cluster(Z,'cutoff',0.7)
``````

does not give you what you want (I think)

but

``````cluster(Z,'cutoff',0.8)
``````

does.

-

The criterion for `cluster` is inconsistency (`'inconsistent'`) by default.

Since the height in `dendrogram` is distance, you can change the criterion to `'distance'`, i.e:

``````T = cluster(Z, 'Cutoff', 150, 'criterion', 'distance');
``````
-