Trying to learn r-Caret and caretList. I am trying to follow the tutorial caretEnsemble Classification example
I have encountered a few errors and searched how to fix some of the basic set up. However, I am getting the error:
Warning messages:
1: In train.default(x, y, weights = w, ...) :
The metric "Accuracy" was not in the result set. ROC will be used instead.
2: In train.default(x, y, weights = w, ...) :
The metric "Accuracy" was not in the result set. ROC will be used instead.
My setup is:
#Libraries
library(caret)
library(devtools)
library(caretEnsemble)
#Data
library(mlbench)
dat <- mlbench.xor(500, 2)
X <- data.frame(dat$x)
Y <- factor(ifelse(dat$classes=='1', 'Yes', 'No'))
#Split train/test
train <- runif(nrow(X)) <= .66
#Setup CV Folds
#returnData=FALSE saves some space
folds=5
repeats=1
myControl <- trainControl(method='cv',
number=folds,
repeats=repeats,
returnResamp='none',
classProbs=TRUE,
returnData=FALSE,
savePredictions=TRUE,
verboseIter=TRUE,
allowParallel=TRUE,
summaryFunction=twoClassSummary,
index=createMultiFolds(Y[train],
k=folds,
times=repeats)
)
#Make list of all models
all.models<-caretList(Y~., data=X, trControl=myControl, methodList=c("blackboost", "parRF"))
I edited the section of "train all models" using caretList so that it will work with caretEnsemble and caretStack further down the code (link provided above).
How do I get the accuracies so that I can use them in caretEnsemble and caretStack?