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.