Using the R package caret, how can I generate a ROC curve based on the cross-validation results of the train() function?
Say, I do the following:
data(Sonar) ctrl <- trainControl(method="cv", summaryFunction=twoClassSummary, classProbs=T) rfFit <- train(Class ~ ., data=Sonar, method="rf", preProc=c("center", "scale"), trControl=ctrl)
The training function goes over a range of mtry parameter and calculates the ROC AUC. I would like to see the associated ROC curve -- how do I do that?
Note: if the method used for sampling is LOOCV, then
rfFit will contain a non-null data frame in the
rfFit$pred slot, which seems to be exactly what I need. However, I need that for the "cv" method (k-fold validation) rather than LOO.
roc function that used to be included in former versions of caret is not an answer -- this is a low level function, you can't use it if you don't have the prediction probabilities for each cross-validated sample.