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# Get ordered kmeans cluster labels

Say I have a data set x and do the following kmeans cluster:

``````fit <- kmeans(x,2)
``````

My question is in regards to the output of fit\$cluster: I know that it will give me a vector of integers (from 1:k) indicating the cluster to which each point is allocated. Instead, is there a way to have the clusters be labeled 1,2, etc... in order of decreasing numerical value of their center?

For example: If `x=c(1.5,1.4,1.45,.2,.3,.3)` , then fit\$cluster should result in `(1,1,1,2,2,2)` but not result in `(2,2,2,1,1,1)`

Similarly, if `x=c(1.5,.2,1.45,1.4,.3,.3)` then fit\$cluster should return `(1,2,1,1,2,2)`, instead of `(2,1,2,2,1,1)`

Right now, fit\$cluster seems to label the cluster numbers randomly. I've looked into documentation but haven't been able to find anything. Please let me know if you can help!

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I don't think the cluster-computing tag means what you think it does – Jake Burkhead Jul 16 '13 at 19:35

## 1 Answer

K-means is a randomized algorithm. It is actually correct when the labels are not consistent across runs, or ordered in "ascending" order. But you can of course remap the labels as you like, you know...

You seem to be using 1-dimensional data. Then k-means is actually not the best choice for you.

In contrast to 2- and higher-dimensional data, 1-dimensional data can efficiently be sorted. If your data is 1-dimensional, use an algorithm that exploits this for efficiency. There are much better algorithms for 1-dimensional data than for multivariate data.

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Thanks for your input. I have a few followup questions: 1) How do I remap the labels if I continue to use K-means? 2) Could you point me in the direction of clustering algorithms that sort 1-D data that you mentioned? Thanks again! – user1846406 Jul 22 '13 at 15:23
1) I don't use R, so I can't help you there. 2) it's not going by the name "clustering". Look for "kernel density estimation" and "natural breaks", for example. "Clustering" is commonly used for multivariate data. – Anony-Mousse Jul 22 '13 at 19:33