Is there a way to perform stratified cross validation when using the train function to fit a model to a large imbalanced data set? I know straight forward k fold cross validation is possible but my categories are highly unbalanced. I've seen discussion about this topic but no real definitive answer.

Thanks in advance.

  • I'm also looking for the answer... By default, function createFolds() creates stratified folds. But I'm not sure about the train function when using method = "cv" in trainControl.
    – jbrettas
    Apr 21, 2016 at 20:38

1 Answer 1


There is a parameter called 'index' which can let user specified the index to do cross validation.

folds <- 4
cvIndex <- createFolds(factor(training$Y), folds, returnTrain = T)
tc <- trainControl(index = cvIndex,
               method = 'cv', 
               number = folds)

rfFit <- train(Y ~ ., data = training, 
            method = "rf", 
            trControl = tc,
            maximize = TRUE,
            verbose = FALSE, ntree = 1000)
  • This is stratified by a single factor. There doesn't seem to be an option for multi-factor.
    – jiggunjer
    Jan 15, 2020 at 8:16
  • @jiggunjer Is building a multi-factor factor using paste(factor1, factor2, sep = "_") incorrect?
    – SamGG
    Apr 27 at 9:23
  • The help for createDataPartition {caret} states '...sampling is done within the levels of y when y is a factor in an attempt to balance the class distributions within the splits...', but there are caveats. May 10 at 8:17

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