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I've been using the hclust algorithm, here is the code :

hc = hclust(dist(mydata))
## tweeking some parameters for plotting a dendrogram
# set background color
op = par(bg="#DDE3CA")
# plot dendrogram
plot(hc, col="#487AA1", col.main="#45ADA8", col.lab="#7C8071",
     col.axis="#F38630", lwd=3, lty=3, sub='', hang=-1, axes=FALSE)
# add axis
axis(side=2, at=seq(0, 400, 100), col="#F38630",
     labels=FALSE, lwd=2)
# add text in margin
mtext(seq(0, 400, 100), side=2, at=seq(0, 400, 100),
      line=1, col="#A38630", las=2)
par(op)

What variation of clustering is hclust using as I want to implement it programmatically ? Is it same as implementation on wikipedia : http://en.wikipedia.org/wiki/Hierarchical_clustering ?

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3  
Can you be more specific about what you don't understand from the documentation ?hclust and/or the source code? Otherwise it just seems like you're asking others to do the work for you. –  Joshua Ulrich Nov 23 '13 at 18:05
    
@Joshua Ulrich ill implelment the algorithm myself but I want to use same one as provided by R so results of my implementation will match results of R. I just want documentation of how hclust is implemented in R. If the R documentation for hclust is the best to provide this then thats fine. –  blue-sky Nov 23 '13 at 18:09
4  
Well, the documentation is an obvious place to start, and it lists the different agglomeration methods hclust can use. What more do you want? –  Joshua Ulrich Nov 23 '13 at 18:22

2 Answers 2

up vote 2 down vote accepted

The hclust implementation is based on the Fortran code by Fionn Murtagh. It is deposited in the statlib: http://lib.stat.cmu.edu/S/multiv. All the methods are described in his manuscript "Multivariate Data Analysis with Fortan, C and Java Code", you can find it here. Also his resource website http://www.classification-society.org/csna/mda-sw/ is a good starting point. Hope this helps.

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Note however that the code has been tweaked (i.e. improved!) in R several times; the algorithms in R are now both more versatile and, in one place, considerably more efficient than the original Statlib code mentioned above. Just do follow Joshua Ulrich's advice: After reading the help documentation, rather read R's source code, than the original in statlib. As R uses http based svn, you can see all R source code via your browser. This one is http://svn.r-project.org/R/trunk/src/library/stats/src/hclust.f

One further note: The agnes() in package cluster provides even more versatile agglomerative clustering methods; notably one whole class more in the next release of cluster. All of these are also svn repositing and available similarly, for agnes in http://svn.r-project.org/R-packages/trunk/cluster/src/twins.c (also translated from old Fortran, but now a bit more readable).

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