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In R you can use all sorts of metrics to build a distance matrix prior to clustering, e.g. binary distance, Manhattan distance, etc... However, when it comes to choosing a linkage method (complete, average, single, etc...), these linkage all use euclidean distance. This does not seem particularly appropriate if you rely on a difference metric to build the distance matrix.

Is there a way (or a library...) to apply other distances to linkage methods when building a clustering tree?

Thanks!

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  • Do I understand you correctly: You compute the distance matrix with a non-standard distance (I frequently do that e.g. with $\frac{1}{2}(1 - COR (X)$). During the hierarchical clustering new distances are computed: the distance of the fused objects (cluster) to all other objects/clusters. The question is: how to make hclust use the non-standard distance also for these calculations? Aug 30, 2012 at 18:41
  • That would mean that there are (at least) 2 questions in here: a) the programming question. b) the statistics part: is it necessary/good/does it make sense/what is the meaning of using the non-standard distance inside hclust given that it operates on the distance matrix rather than on the data matrix? Aug 30, 2012 at 18:43
  • Indeed, this was exactly my question: how to use a non-standard metric in the iterative clustering, i.e. in the linkage method.
    – Carlito
    Aug 30, 2012 at 19:19
  • I think here on stackoverflow the programming part of the question can be answered. As I'm more interested in the statistics/maths part of the question, I just posted that part on crossvalidated: stats.stackexchange.com/questions/35395/… Aug 30, 2012 at 20:58

3 Answers 3

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I don't really get your question. For example, suppose I have the following data:

x <- matrix(rnorm(100), nrow=5)

then I can build a distance matrix using dist

##Changing the distance measure
d_e = dist(x, method="euclidean")
d_m = dist(x, method="maximum")

I can then cluster in however I want:

##Changing the clustering method
hclust(d_m, method="median")
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  • OK, I guess my question was related to the relation between the metric used to construct the distance matrix and the linkage method selected: is any combination possible, or are certain linkage methods more adapted to certain metrics ? The hclust man page states that "[...] Dissimilarities between clusters can be efficiently computed (i.e., without ‘hclust’ itself) only for a limited number of distance/linkage combinations, the simplest one being squared Euclidean distance and centroid linkage."
    – Carlito
    Aug 30, 2012 at 14:49
  • If that's your true question (which is a good question!), it's more statistics than computing. Perhaps close (or accept an answer) for this and try in stats.sx Aug 30, 2012 at 14:52
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If you have constructed a matrix that already represents the pairwise distances, use e.g.

hclust(as.dist(mx), method="single")
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You might want to try using agnes, rather than hclust, and hand it a distance matrix. There's a nice tutorial on this here: http://strata.uga.edu/software/pdf/clusterTutorial.pdf

From the tutorial, here's how you would generate and use a distance matrix for clustering:

> library(vegan)
# load library for distance functions
> mydata.bray <- vegdist(mydata, method="bray")
# calculates bray (=Sørenson) distances among samples
> mydata.bray.agnes <- agnes(mydata.bray)
# run the cluster analysis

I myself use Prof. Daniel Müllner's fastcluster library, which has exactly the same API as agnes but is orders of magnitude faster for large data sets.

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  • Thanks, but I don't quite see the difference here with the hclust function: hclust also takes as input a distance matrix computed e.g. using the dist or Dist function, and the user can specify a particular linkage method.
    – Carlito
    Aug 30, 2012 at 14:55
  • Can you clarify your original question? I'm confused about what you are asking. Anyway, you can also specify the metric for agnes and it will compute the distance matrix for you, although its limited to manhatten and euclidean distances. In general, I recommend that you just use Prof. Müllner's code, which doesn't have any optimizations for any particular metrics but should outperform both hclust and agnes anyway.
    – Matt W-D
    Aug 30, 2012 at 16:16

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