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I have several training/test partitions. In one partition one variable has only two levels and it is higly imbalanced. The problem is, in the test set there is only one level for all of the rows, and it gives problems

As I understand, and works for other datasets, i should do this

  dummyfier = dummyVars(~ ., train_char)
  train_char = predict(dummyfier, train_char) %>% data.frame()
  test_char = predict(dummyfier, test_char) %>% data.frame()

The problem is that i get the following error

Error in `contrasts<-`(`*tmp*`, value = contr.funs[1 + isOF[nn]]) : 
  contrasts can be applied only to factors with 2 or more levels

I leave an example

   train_char <- data.frame(da_b45 = c("N", "N", "S", "N"))
   test_char <- data.frame(da_b45 = c("N", "N", "N"))
   dummyfier = dummyVars(~ ., train_char)
   train_char = predict(dummyfier, train_char) %>% data.frame()
   test_char = predict(dummyfier, test_char) %>% data.frame()

As i understand, the training set need to have the values of the possible variables, and the test set should only check which variable is. I really don't understand this behavior

  • Your code works for me with dummy variable output as expected. Maybe I am misunderstanding the question? – John Colby May 15 at 23:36
  • If your test data is small, then you may get a partition of train and test where the number of levels of a particular variable are not the same (as your example illustrates). – 42- May 16 at 0:05

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