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February 2008

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"Classification, clustering, and phylogeny estimation" <[log in to unmask]>
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Mon, 4 Feb 2008 07:00:26 -0800
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"Classification, clustering, and phylogeny estimation" <[log in to unmask]>
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William Shannon <[log in to unmask]>
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Hi
   
  There aree many approaches and hopefulyl you will hear from several people describing their favorite.
   
  I would suggest you look at recursive partitioning, also called tree models or CART. If you are familair with the R statistical software (freeware that can be downloaded from http://www.r-project.org/) there is an addon llibrary called rpart that can be used.
   
  Good luck
  Bill Shannon
  Washington University in St. Louis
  

Arnaud Trollé <[log in to unmask]> wrote:
  Hello,

I'd like to cluster categorical data (3 categories) by means of a partitioning 
method; I'm quite a beginner in that field and I would need to be enlightened.
From a bibliographic review I carried out about that topic, it appeared to me 
that a method is often used :the k-modes method. From her/his experience, 
could anyone confirm or deny that it is the case ? If denied, which method 
could be more "powerful" ?

Thanks in advance.

Best Regards.
Arnaud.
PhD Student in Acoustics.
Lyon, France.

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