data(BloodBrain)
set.seed(1)
## tmp <- createDataPartition(logBBB,
## p = .8,
## times = 100)
## rpartFit <- train(bbbDescr, logBBB,
## "rpart",
## tuneLength = 16,
## trControl = trainControl(
## method = "LGOCV", index = tmp))
## ctreeFit <- train(bbbDescr, logBBB,
## "ctree",
## trControl = trainControl(
## method = "LGOCV", index = tmp))
## earthFit <- train(bbbDescr, logBBB,
## "earth",
## tuneLength = 20,
## trControl = trainControl(
## method = "LGOCV", index = tmp))
## or load pre-calculated results using:
## load(url("http://caret.r-forge.r-project.org/exampleModels.RData"))
## resamps <- resamples(list(CART = rpartFit,
## CondInfTree = ctreeFit,
## MARS = earthFit))
## resamps
## summary(resamps)
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