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I tried to understand the 5 fold cross validation algorithm in Caret package but I could not find out how to get train set and test set for each fold and I also could not find this from the similar suggested questions. Imagine if I want to do cross validation by random forest method, I do the following:

set.seed(12)
train_control <- trainControl(method="cv", number=5,savePredictions = TRUE)
rfmodel <- train(Species~., data=iris, trControl=train_control, method="rf")
first_holdout <- subset(rfmodel$pred, Resample == "Fold1")
str(first_holdout)
'data.frame':   90 obs. of  5 variables:
$ pred    : Factor w/ 3 levels "setosa","versicolor",..: 1 1 1 1 1 1 1 1 1 1     
$ obs     : Factor w/ 3 levels "setosa","versicolor",..: 1 1 1 1 1 1 1 1 1 1 
$ rowIndex: int  2 3 9 11 25 29 35 36 41 50 ...
$ mtry    : num  2 2 2 2 2 2 2 2 2 2 ...
$ Resample: chr  "Fold1" "Fold1" "Fold1" "Fold1" ...

Are these 90 observations in Fold1 used as training set? If yes then where is the test set for this fold?

  • No need to do it manually. Check str(rfModel) You will find it there in index and indexOut having samples roow indexthat went to train and hold out. – Sowmya S. Manian Oct 22 '17 at 17:35
0
 str(rfmodel)

Model performed stores everything in the below form. control in the below stores the indexes for samples that went to Train and respective hold outs in index and indexOut.

 names(rfmodel)
 #  [1] "method"       "modelInfo"    "modelType"    "results"      "pred"        
 #  [6] "bestTune"     "call"         "dots"         "metric"       "control"     
 # [11] "finalModel"   "preProcess"   "trainingData" "resample"     "resampledCM" 
 # [16] "perfNames"    "maximize"     "yLimits"      "times"        "levels"      
 # [21] "terms"        "coefnames"    "xlevels" 

Path to indexes of Train and Hold Out samples

 # Indexes of Hold Out Sets
 rfmodel$control$indexOut

 # Indexes of Train Sets for above hold outs
 rfmodel$control$index
  • thanks for your answer, so the list of accuracy in rfmodel$resample is the accuracy of predictions in each fold done on the hold-out samples? – ch.elahe Oct 23 '17 at 10:30
  • Yes. That is True. Those woudl be the results of hold out predictions. – Sowmya S. Manian Oct 23 '17 at 11:37
  • Always do str() and names() on model you perform to see how and what it has stored and how we can access information from model created or prediction performed. So make use of these functions to help you learn. – Sowmya S. Manian Oct 23 '17 at 11:39

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