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I want to use Random forests for attribute reduction. One problem I have in my data is that I don't have discrete class - only continuous, which indicates how example differs from 'normal'. This class attribute is a kind of distance from zero to infinity. Is there any way to use Random forest for such data?

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up vote 6 down vote accepted

That should be no problem -- RF will just switch to regression mode. Use randomForest function from the randomForest package.
To get object similarity with proximity=TRUE argument, like:


To get node-purity (Gini-index like) attribute importance:


To get mean MSE increase (accuracy-decrease like) attribute importance:

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Variable importance would work better for me than proximity. Maybe description of my classification attribute was a bit misleading, but I know what should I explore. – pixel Jul 7 '10 at 21:07
Aw, you meant variable==attribute... – mbq Jul 7 '10 at 21:12
I have extended the answer to cover that. – mbq Jul 7 '10 at 21:20
Ok, I've also changed the question to use 'data-mining' vocabulary. Shouldn't you use importance=TRUE also in the second statement? – pixel Jul 7 '10 at 21:35
No, because node-purity is calculated along with forest creation, so randomForest creates this element always, while MSE increase needs shuffling and classifying OOB objects. – mbq Jul 7 '10 at 21:47

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