My initial reaction to this question was that it didn't show much research effort, since "everyone" knows that random forests don't handle missing values in predictors. But upon checking
?randomForest I must confess that it could be much more explicit about this.
(Although, Breiman's PDF linked to in the documentation does explicitly say that missing values are simply not handled at all.)
The only obvious clue in the official documentation that I could see was that the default value for the
na.action parameter is
na.fail, which might be too cryptic for new users.
In any case, if your predictors have missing values, you have (basically) two choices:
- Use a different tool (
rpart handles missing values nicely.)
- Impute the missing values
Not surprisingly, the
randomForest package has a function for doing just this,
rfImpute. The documentation at
?rfImpute runs through a basic example of its use.
If only a small number of cases have missing values, you might also try setting
na.action = na.omit to simply drop those cases.
And of course, this answer is a bit of a guess that your problem really is simply having missing values.