ROC curve from training data in caret

Here, I'm modifying the plot of @thei1e which others may find helpful.

Train model and make predictions

library(caret)
library(ggplot2)
library(mlbench)
library(plotROC)

data(Sonar)

ctrl <- trainControl(method="cv", summaryFunction=twoClassSummary, classProbs=T,
                     savePredictions = T)

rfFit <- train(Class ~ ., data=Sonar, method="rf", preProc=c("center", "scale"), 
               trControl=ctrl)

# Select a parameter setting
selectedIndices <- rfFit$pred$mtry == 2

Updated ROC curve plot

g <- ggplot(rfFit$pred[selectedIndices, ], aes(m=M, d=factor(obs, levels = c("R", "M")))) + 
  geom_roc(n.cuts=0) + 
  coord_equal() +
  style_roc()

g + annotate("text", x=0.75, y=0.25, label=paste("AUC =", round((calc_auc(g))$AUC, 4)))

enter image description here


Updated 2019. This is the easiest way https://cran.r-project.org/web/packages/MLeval/index.html. Gets the optimal parameters from the Caret object and the probabilities then calculates a number of metrics and plots including: ROC curves, PR curves, PRG curves, and calibration curves. You can put multiple objects from different models into it to compare the results.

library(MLeval)
library(caret)

data(Sonar)
ctrl <- trainControl(method="cv", 
  summaryFunction=twoClassSummary, 
  classProbs=T)
rfFit <- train(Class ~ ., data=Sonar, 
  method="rf", preProc=c("center", "scale"), 
  trControl=ctrl)

## run MLeval

res <- evalm(rfFit)

## get ROC

res$roc

## get calibration curve

res$cc

## get precision recall gain curve

res$prg

enter image description here

enter image description here

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There is just the savePredictions = TRUE argument missing from ctrl (this also works for other resampling methods):

library(caret)
library(mlbench)
data(Sonar)
ctrl <- trainControl(method="cv", 
                     summaryFunction=twoClassSummary, 
                     classProbs=T,
                     savePredictions = T)
rfFit <- train(Class ~ ., data=Sonar, 
               method="rf", preProc=c("center", "scale"), 
               trControl=ctrl)
library(pROC)
# Select a parameter setting
selectedIndices <- rfFit$pred$mtry == 2
# Plot:
plot.roc(rfFit$pred$obs[selectedIndices],
         rfFit$pred$M[selectedIndices])

ROC

Maybe I am missing something, but a small concern is that train always estimates slightly different AUC values than plot.roc and pROC::auc (absolute difference < 0.005), although twoClassSummary uses pROC::auc to estimate the AUC. Edit: I assume this occurs because the ROC from train is the average of the AUC using the separate CV-Sets and here we are calculating the AUC over all resamples simultaneously to obtain the overall AUC.

Update Since this is getting a bit of attention, here's a solution using plotROC::geom_roc() for ggplot2:

library(ggplot2)
library(plotROC)
ggplot(rfFit$pred[selectedIndices, ], 
       aes(m = M, d = factor(obs, levels = c("R", "M")))) + 
    geom_roc(hjust = -0.4, vjust = 1.5) + coord_equal()

ggplot_roc

Tags:

R

Roc

R Caret