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I get stuck when trying to build a model. I want to class the dataset freeny into 10 subsets by year.

data(freeny)

options(digits=2)
 year<-as.integer(rownames(freeny))
 freeny<-cbind(freeny,year)
 freeny = freeny[sample(1:nrow(freeny),length(1:nrow(freeny))),1:ncol(freeny)]
 freenyValues= freeny[,1:5]
 freenyTargets=decodeClassLabels(freeny[,6])
 freeny = splitForTrainingAndTest(freenyValues,freenyTargets,ratio=0.15)
 km<-kmeans(freeny$inputsTrain,10,iter.max = 100, nstart = 5)
 kclust=km$cluster
 library(tree)
 kclust=as.factor(kclust)
 mdp=cbind(freeny$inputsTrain,kclust)
 mdp<-data.frame(mdp)
 mdp.tr=tree(kclust~.,mdp)

but the result is that the tree only has 5 terminal nodes.It should be 10 terminal nodes because I divide into 10 clusters by kmeans. What's wrong?

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Thanks for your answer. I delete the argument nstart but still only the regression tree only has several terminal nodes not all. –  Will Wang Jul 10 '13 at 8:52

1 Answer 1

No. It shouldn't. tree is an algorithm that tries to fit a tree given predictor and response, and stops if

the terminal nodes are too small or too few to be split.

(manual page). Try adjusting the minsize parameter (see ?tree.control).

minsize: The smallest allowed node size: a weighted quantity. The default is 10.

I think the following will do what is intended:

mdp.tr=tree(kclust~.,mdp, minsize= 1)
share|improve this answer
    
Thanks for your answer. And I was just watching the manual page. I've tried your advice, but still not all the terminal nodes but few more than mdp.tr=tree(kclust~.,mdp) –  Will Wang Jul 10 '13 at 9:05
    
Well, kmeans is agglomerative and does not produce a tree, so a tree is not an inherent property of this type of clustering. Thus, you don't have the guarantee of finding a perfectly fitting tree. –  January Jul 10 '13 at 9:07
    
Then how can I make predictions by cluster analysis using R? –  Will Wang Jul 10 '13 at 9:54
    
After I have finished cluster analysis, then how do I what principle do the result follows?Then, I input some new data to knew which cluster the new data belong to. –  Will Wang Jul 10 '13 at 9:57
    
You can always calculate the distance of the new vector to cluster centers given in kmeans$centers. If v is the new vector, you can do which.min( sapply( 1:10, function( x ) sum( ( v - km$centers[x,])^2 ) ) ) to find out in which cluster this point is. As for the principle, read how kmeans algorithm work. –  January Jul 10 '13 at 10:12

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