The help page for `randomforest::randomforest()`

says:

"classwt - Priors of the classes. Need not add up to one. Ignored for regression."

Could setting the `classwt`

parameter help when you have heavy unbalanced data, ie. priors of classes differs strongly ?

How should I set `classwt`

when training a model on a dataset with 3 classes with a vector of priors equal to (p1,p2,p3), and in test set priors are (q1,q2,q3)?

`classwt`

I believe is used when sampling from your data, such that each sample for each tree is drawn from your classes with those probabilities (after normalization). – joran Apr 11 '12 at 22:45