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?

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    Random forest is a classification algo falling in the category of supervised learning. You are looking for unsupervised learning, where "clustering" comes to mind. – flodel Jul 5 '13 at 0:40
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    Honestly, I'm not! I'm trying to achieve exactly what the guy is in the tutorial, grow the random forest on a training set and then predict on a test set. However, for obvious reasons, I don't have a column of predicted values already in place for my test set. I can grow the forest fine, I just can't work out how to make predictions. – user2468261 Jul 5 '13 at 1:02
  • Ah... Sorry I misunderstood. – flodel Jul 5 '13 at 1:16
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    We won't be able to help unless you can provide a reproducible example that illustrates the problem you're having. The predict function will not complain about missing the response variable. So you're doing something else wrong, but how could we know what that is? – joran Jul 5 '13 at 1:18
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    In real life when using a test set this one sometimes doesn't have yet the response column. This is common in Kaggle competition for example for obvious reason such as overfitting or data snooping. Therefore, you need to work with your "training" set and split it or use resampling techniques such as crossvalidation and co to find the right parameters. I'll suggest you to read a little about machine learning – dickoa Jul 5 '13 at 1:18

Although the tutorial you quote has the Species column in the test set, it is not needed by the predict function as you guessed:

test  <- iris[ c(1:10, 51:60, 101:110), -5]  # removed the Species column here.
train <- iris[ c(11:50, 61:100, 111:150), ]
r <- randomForest(Species ~., data=train, importance=TRUE, do.trace=100)
predict(r, test)
  • I must have had a typo floating around somewhere. I was on this for hours yesterday and now with your code it's fine. Can't see the difference! Thanx for going through it. – user2468261 Jul 5 '13 at 11:41

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