Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I am having a hard time understanding how to build a ROC curve and now I came to the conclusion that maybe I don't create the model correctly. I am running a randomforest model in the dataset where the class attribute "y_n" is 0 or 1. I have divided the datasets as bank_training and bank_testing for the prediction purpose. Here are the steps i do:

bankrf<-randomForest(y_n~., data=bank_training, mtry=4, ntree=2, keep.forest=TRUE,     
bankrf.pred<-predict(bankrf,bank_testing,type='response', predict.all=TRUE,  

Is it correct what I do till now? The bankrf.pred object that is created is a list object with 2 classes named: aggregate and individuals. I dont understand where did this 2 class names came out? Moreover when I run:

           Length Class  Mode     
aggregate  22606  factor numeric  
individual 45212  -none- character

What does this summary mean? The datasets (training & testing) are 22605 and 22606 long each. If someone can explain me what is happening I would be very grateful. I think there is something wrong in all this.

When I try to design the ROC curve with ROCR I use the following code:

pred<-prediction(bank_testing$y_n, bankrf.pred$c(0,1))

Error in is.data.frame(labels) : attempt to apply non-function

Is just a mistake in the way i try to create the ROC curve or is it from the beginning with randomForest?

Thank you in advance,

share|improve this question
The structure of banrf.pred is completely explained in the documentation in ?predict.randomForest. – joran Jul 16 '12 at 16:16
I've checked it and according to it, it should be ok like this, but I still am not able to plot a roc curve with ROCR and I think that there should be some problem with the model. – spektra Jul 16 '12 at 16:25
Well, your question contains no information about how you've tried to create a ROC curve or how exactly it hasn't worked, so it will be difficult for anyone to help with that piece. – joran Jul 16 '12 at 16:34
I added that part as well – spektra Jul 16 '12 at 17:23

The documentation for the function you are attempting to use includes this description of its two main arguments:

predictions A vector, matrix, list, or data frame containing the predictions.

labels A vector, matrix, list, or data frame containing the true class labels. Must have the same dimensions as 'predictions'.

You are currently passing the variable y_n to the predictions argument, and what looks to me like nonsense to the labels argument.

The predictions will be stored in the output of the random forest model. As documented at ?predict.randomForest, it will be a list with two components. aggregate will contain the predicted values for the entire forest, while individual will contain the predicted values for each individual tree.

So you probably want to do something like this:

predictions(bankrf.pred$aggregate, bank_testing$y_n)

See how that works? The predicted values are passed to the predictions argument, while the "labels" or true values, are passed to the labels argument.

share|improve this answer
Nope...it didn't work again. The error now is: Prediction format is invalid. Thanks for your answer though! – spektra Jul 17 '12 at 8:37
@spektra Well, the answers you get will only be as good as the reproducibility of your question. Otherwise we're just guessing. – joran Jul 17 '12 at 15:15
A factor is not a vector. You must convert each factor (predictions or labels) using as.numeric() first. – C S Dec 6 '13 at 19:15
@CS Looks like the predictions can't be a factor, but the labels can (if you look at the code, the case of a factor is explicitly handled for the labels). – joran Dec 6 '13 at 19:24
Ok. Thanks for checking the code :) I had the same mistake as the OP just now (I think) and fixed it with as.numeric(). – C S Dec 6 '13 at 19:35

You should erase the predict.all=TRUE argument from predict if you simply want to get the predicted classes. By using predict.all=TRUE you are telling the function to keep the predictions of all trees rather than the prediction from the forest.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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