I have carefully read the CARET documentation at: http://caret.r-forge.r-project.org/training.html, the vignettes, and everything is quite clear (the examples on the website help a lot!), but I am still a confused about the relationship between two arguments to
and the interplay between
trainControl and the data splitting functions in caret (e.g.
To better frame my questions, let me use the following example from the documentation:
data(BloodBrain) set.seed(1) tmp <- createDataPartition(logBBB,p = .8, times = 100) trControl = trainControl(method = "LGOCV", index = tmp) ctreeFit <- train(bbbDescr, logBBB, "ctree",trControl=trControl)
My questions are:
If I use
createDataPartition(which I assume that does stratified bootstrapping), as in the above example, and I pass the result as
trainControldo I need to use
LGOCVas the method in my call
trainControl? If I use another one (e.g.
cv) What difference would it make? In my head, once you fix
index, you are essentially choosing the type of cross-validation, so I am not sure what role
methodplays if you use
What is the difference between
createResample? Is it that
createDataPartitiondoes stratified bootstrapping, while
3) How can I do stratified k-fold (e.g. 10 fold) cross validation using caret? Would the following do it?
tmp <- createFolds(logBBB, k=10, list=TRUE, times = 100) trControl = trainControl(method = "cv", index = tmp) ctreeFit <- train(bbbDescr, logBBB, "ctree",trControl=trControl)