All the examples I can find of making predictions using random forests already have the actual answers (i.e. the test-set has labels). What do you do when you don't have that column?
For example, this tutorial uses the iris data: http://mkseo.pe.kr/stats/?p=220
If we were doing this for real, the test dataset would have columns [1,4] and not column 5. If you try to run this without column 5 it kicks up an error that the dataframes are not the same size, which, obviously they're not.
How do you make predictions when you don't already have a column of answers?
Edit Clarification using excerpt from above link:
Prepare training and test set.
test = iris[ c(1:10, 51:60, 101:110), ] train = iris[ c(11:50, 61:100, 111:150), ]
The test data frame has a complete species column. I'm trying to predict the species based on the forest I grow from the training set. So the position I am in is after running:
test <- test[-5]
I'm now in the position I'd be in if I'd gone out and collected a bunch of plant measurements and wanted to know the species based on the tree model I've grown from my training data. So, how can I predict the Species column I've just deleted based on the remaining data in the test dataframe and the forest grown using the training dataframe?