Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.
rf.model <- randomForest(WIN ~ ., data = learn)

I would like to fit a random forest model, but I get this error:

Error in na.fail.default(list(WIN = c(2L, 1L, 1L, 2L, 1L, 2L, 2L, 1L,  : 
missing values in object

I have data frame learn with 16 numeric atributes and WIN is a factor with levels 0 1.

share|improve this question

closed as not a real question by Robert Harvey Dec 4 '11 at 6:10

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

In it's current state, this question will be very difficult to answer. Can you update your question with some sample data? –  Chase Dec 3 '11 at 23:05
Amusing to note that something that is "not a real question" has close to 10,000 views as of March 2014 –  Matt O'Brien Mar 21 at 19:30
add comment

1 Answer

up vote 30 down vote accepted

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:

  1. Use a different tool (rpart handles missing values nicely.)
  2. 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.

share|improve this answer
do you happen to know what WIN ~ . in the first argument on the OP means? This is certainly not the best place to ask the question, but was wondering if you would know. Thanks. –  user815423426 Feb 11 '13 at 1:43
@user273158 That's the model formula, as documented under ?randomForest with the formula argument. It tells R to use WIN as the response variable, and . is shorthand that means "all other variables in the data frame". So it's telling R to use WIN as the response variable and all other available variables are predictors. See ?formula for more details. –  joran Feb 11 '13 at 2:23
add comment

Not the answer you're looking for? Browse other questions tagged or ask your own question.