Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Using plot(hclust(dist(x))) method, I was able to draw a cluster tree map. It works. Yet I would like to get a list of all clusters, not a tree diagram, because I have huge amount of data (like 150K nodes) and the plot gets messy.

In other words, lets say if a b c is a cluster and if d e f g is a cluster then I would like to get something like this:

1 a,b,c
2 d,e,f,g

Please note that this is not exactly what I want to get as an "output". It is just an example. I just would like to be able to get a list of clusters instead of a tree plot It could be vector, matrix or just simple numbers that show which groups elements belong to.

How is this possible?

share|improve this question
This may help.… – EskimoT Feb 7 '15 at 17:31
up vote 24 down vote accepted

I will use the dataset available in R to demonstrate how to cut a tree into desired number of pieces. Result is a table.

Construct a hclust object.

hc <- hclust(dist(USArrests), "ave")

You can now cut the tree into as many branches as you want. For my next trick, I will split the tree into two groups. You set the number of cuts with the k parameter. See ?cutree and the use of paramter h which may be more useful to you (see cutree(hc, k = 2) == cutree(hc, h = 110)).

cutree(hc, k = 2)
       Alabama         Alaska        Arizona       Arkansas     California 
             1              1              1              2              1 
      Colorado    Connecticut       Delaware        Florida        Georgia 
             2              2              1              1              2 
        Hawaii          Idaho       Illinois        Indiana           Iowa 
             2              2              1              2              2 
        Kansas       Kentucky      Louisiana          Maine       Maryland 
             2              2              1              2              1 
 Massachusetts       Michigan      Minnesota    Mississippi       Missouri 
             2              1              2              1              2 
       Montana       Nebraska         Nevada  New Hampshire     New Jersey 
             2              2              1              2              2 
    New Mexico       New York North Carolina   North Dakota           Ohio 
             1              1              1              2              2 
      Oklahoma         Oregon   Pennsylvania   Rhode Island South Carolina 
             2              2              2              2              1 
  South Dakota      Tennessee          Texas           Utah        Vermont 
             2              2              2              2              2 
      Virginia     Washington  West Virginia      Wisconsin        Wyoming 
             2              2              2              2              2
share|improve this answer
excellent! thank you. This makes me think how one can possibly approximate a good value for parameter "k" so that the number of clusters in the data is what it should be instead of what I want it to be? In other words, what if if I dont know how many cuts I need to make because I dont know how many clusters there are in the data. That is indeed what I am trying to find out that is to say the number of clusters and the elements within each cluster. Sorry if I was not clear earlier. – dave Jun 29 '11 at 9:54
@dave, is it possible for you to know at which height you want to cut the tree? If yes, use the parameter h (see ?cutree). The function will return the appropriate number of groups (and allegiance of leaves). – Roman Luštrik Jun 29 '11 at 12:02
I see, maybe this is what I can do, hclust objects have components such as merge matrix, heights etc. lets say if a is a hclust object, we can access possible heights using a$height.So maybe selecting the max height from that matrix, I can possibly find out the number of possible clusters. That is what I was able to find thru my reading. – dave Jun 29 '11 at 20:19
Cannot thank you enough - made my day! – torger Oct 8 '12 at 9:58

lets say,

groups<-cutree(clust, k=3)

now you will get for each record, the cluster group. You can subset the dataset as well:

x1<- subset(x, groups==1)
x2<- subset(x, groups==2)
x3<- subset(x, groups==3)
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.