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I want to do a multilabel classification with R randomForest. I have ten classes A..J,

I found examples how to predict a single class, like:

r = randomForest(J ~., data=train, importance=TRUE, do.trace=100)

But I want to predict more classes, for instance H,I,J. (i.e. say that only A..G are given attributes). How can I do it?

I have an idea of preserving A..G and only one of the predicted classes (H/I/J) and run randomForest 3 times, but maybe there is a better way? To do it in one run?

Many thanks in advance.

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Your question could be a lot clearer. Are you saying you want to be able to predict classes that don't exist in your training data? Because that will be....difficult. –  joran Nov 7 '12 at 1:29
    
No, I mean I want to treat 7 columns as given and predict values of other 3 columns. –  user1804773 Nov 7 '12 at 11:58
    
I'm not aware of a multivariate RF package (could be wrong though...). Easy thing would be to fit three models. –  joran Nov 7 '12 at 15:01

1 Answer 1

Let's say that all attributes H, I and J are binary. Then you can just predict a new attribute K with 2^3 possible values and then decode the result back into 3 attributes:

  • 1 -> 0,0,0
  • 2 -> 0,0,1
  • 3 -> 0,1,0
  • 4 -> 0,1,1
  • 5 -> 1,0,0
  • 6 -> 1,0,1
  • 7 -> 1,1,0
  • 8 -> 1,1,1
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