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?