# Decision tree completely different between rpart and party package

I want to compare CART and CHAID algorithm, I choose rpart (cart algorithm) and party (chaid algorithm) to see the difference between them. My data is about blood pressure : The party function returns me :

``````library(party)
# par <- ctree_control(minsplit=20, minbucket=10)
arbre <- ctree(bpress_level ~ ., data = df)
arbre
plot(arbre)
`````` The rpart package returns me :

``````library(rpart)
fit <- rpart(bpress_level ~ .,
method="class", data=df)

printcp(fit) # display the results
plotcp(fit)

plot(fit, uniform=TRUE,
main="Classification Tree for pressure level")
text(fit, use.n=TRUE, all=TRUE, cex=.8)
`````` I don't inderstand why the tree decisin are so different, is it normal ? Why for party package the algorithm ignores like smoke, stress, gender .... Thank you in advance.

• Probably because `ctree` uses significance tests in order to avoid overfitting while in `rpart` that will require additional step. There is some discussion regarding these two here – David Arenburg Jul 9 '15 at 10:02
• Thank you very useful link – Dimitri Petrenko Jul 9 '15 at 10:46
• Note also that up to a depth of two, the two trees are identical. So it is very likely that after some additional pruning of the rpart tree (as suggested by @David Arenburg), the differences are small. – Achim Zeileis Jul 9 '15 at 18:43
• Additional remark: While CTree is very similar to CHAID in many aspects, there are also many differences and refinements etc. So I wouldn't say that CTree provides a CHAID implementation. – Achim Zeileis Jul 9 '15 at 18:48

## 1 Answer

First of all ctree ([party]) doesn't uses CHAID algorithm. It is very much similar to CHAID but not CHAID. CHAID can only be applied when data is categorical in nature.

Of course, there are numerous other recursive partitioning algorithms that are more or less similar to CHAID which can deal with mixed data types. For example, the CTree algorithm (conditional inference trees) is also based on significance tests and is available in ctree() in package partykit.