I can't for the life of me figure out how to compute a confusion matrix on rpart.

Here is what I have done:

UBANK_rand <- UBank[order(runif(1000)), ]
UBank_train <- UBank_rand[1:900, ]
UBank_test  <- UBank_rand[901:1000, ]


#Build the formula for the Decision Tree
UB_tree <- Personal.Loan ~ Experience + Age+ Income +ZIP.Code + Family + CCAvg + Education

#Building the Decision Tree from Test Data
UB_rpart <- rpart(UB_tree, data=UBank_train)

Now, I would think I would do something like

table(predict(UB_rpart, UBank_test, UBank_Test$Default))

But that is not giving me a confusion matrix.


You didn't provide a reproducible example, so I'll create a synthetic dataset:

df = data.frame(outcome = as.factor(sample(c(0, 1), 100, replace=T)),
                x = rnorm(100))

The predict function for an rpart model with type="class" will return the predicted class for each observation.

mod = rpart(outcome ~ x, data=df)
pred = predict(mod, type="class")
# pred
#  0  1 
# 51 49 

Lastly, you can build the confusion matrix by running table between the prediction and true outcome:

table(pred, df$outcome)
# pred  0  1
#    0 36 15
#    1 14 35

You can try

pred <- predict(UB_rpart, UB_test) confusionMatrix(pred, UB_test$Personal.Loan)

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.