I have 30 factor levels of a predictor in my training data. I again have 30 factor levels of the same predictor in my test data but some levels are different. And randomForest does not predict unless the levels are same exactly. It shows error. Says, Error in predict.randomForest(model,test) New factor levels not present in the training data
One workaround I've found is to first convert the factor variables in your train and test sets into characters
test$factor <- as.character(test$factor)
Then add a column to each with a flag for test/train, i.e.
test$isTest <- rep(1,nrow(test)) train$isTest <- rep(0,nrow(train))
Then rbind them
fullSet <- rbind(test,train)
Then convert back to a factor
fullSet$factor <- as.factor(fullSet$factor)
This will ensure that both the test and train sets have the same levels. Then you can split back off:
test.new <- fullSet[fullSet$isTest==1,] train.new <- fullSet[fullSet$isTest==0,]
and you can drop/NULL out the
isTest column from each. Then you'll have sets with identical levels you can train and test on. There might be a more elegant solution, but this has worked for me in the past and you can write it into a little function if you need to repeat it often.
Use this to make the levels match (here test and train refer to columns in the testing and training datasets)
simple solution to this would be rbind your test data with training data ,do prediction and subset the rbind data from predictions .Tested method
This is the issue that occurs when the level of your test data doesn't match with the level of the training data.
Simple fix you can do for this is that
- load test data with character column as factors
- then rbind() test data with train data
- Now extract the test data rows from step 2 and go for the prediction