Hi all,

I have tried a 5 fold cross validation using caret package with random forest 
method on iris dataset as example. Then I need ROC curve for each fold:


  > set.seed(1)
  > train_control <- trainControl(method="cv", number=5,savePredictions = 
TRUE,classProbs = TRUE) 
  > output <- train(Species~., data=iris, trControl=train_control, method="rf")
  > library(pROC)  
  > selectedIndices <- output$pred$Resample == "Fold1"
  > 
plot.roc(output$pred$obs[selectedIndices],output$pred$setosa[selectedIndices])  
> selectedIndices <- output$pred$Resample == "Fold2"  
  > 
plot.roc(output$pred$obs[selectedIndices],output$pred$setosa[selectedIndices])
  > selectedIndices <- output$pred$Resample == "Fold3"
  > 
plot.roc(output$pred$obs[selectedIndices],output$pred$setosa[selectedIndices])

and the same for Fold4 and Fold5,now how can I bring all the plots in one plot 
with labels for each fold?

Thanks for any help!
Elahe

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