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.

I have the following code:

RFmodel = randomForest(as.factor(trainset[,55]) ~ . , trainset, ntree = ntree.array[i], mtry = mtry.array[j], maxnodes = maxnodes.array[k])
RFyhat = predict(RFmodel , testset[,-55])
RFyhat = as.numeric(levels(RFyhat)[RFyhat])
Testerr.randomforest[i,j,k] = sum(RFyhat != testset[,55])/length(testset[,55])

This code throws an error in the second line, namely, it says:

Error in eval(expr, envir, enclos) : object 'V55' not found

However, strangely enough, the error disappears when I do one of two things, 1) change trainset[,55] in the first line to trainset$V55, 2) change testset[,-55] to testset. However, the error rates are slightly different (I imagine because in the latter, I'm using testset[,55] as an independent variable, but that's just me guessing). Could anyone explain to me what the difference between using trainset[,55] and trainset$V55 is, and what the proper usage in this scenario would be?

share|improve this question

1 Answer 1

up vote 4 down vote accepted

It's because you're misusing R's formula interface. The formula:

as.factor(trainset[,55]) ~ .

evaluated within the data set trainset will include the left hand side as the response and all the variables in trainset as predictors. That's because you haven't given a name of a variable in the left hand side, so the . is interpretted as everything "else", but everything "else" in this case is everything, since R can't find something called "as.factor(trainset[,55])" in trainset.

You probably wanted to do something more like:

trainset$V55 <- as.factor(trainset$V55)
RFmodel = randomForest(V55 ~ . , trainset, ...)

One consequence of this mistake is that you're including V55 both as the response and as a predictor. I'm surprised that you aren't simply getting a 0% error rate, which is what happens when you do something equivalent in this example:

rf <- randomForest(as.factor(iris[,5]) ~ ., data=iris)

which uses Species as a response, but also includes it as a predictor. You can verify that by looking at either the $call or $terms attribute of the resulting random forest object.

share|improve this answer
Thank you! That helped immensely. A couple small follow-ups: Since this is a classification problem, I need a factor in the formula, hence as.factor(trainset[,55]). Would as.factor(trainset$V55) in the formula work as desired, or do I need to actually convert it to a factor and then run the model? Second, when I utilize the predict() function, do I need to restrict the dataset I input to precisely the columns I require, or will it only predict using the independent variables defined in the model formula? Thanks so much! –  Justin Apr 25 '12 at 15:43
@Justin (a) as.factor(trainset$V55) should be sufficient. (b) you just need to make sure that everything used in the model (as a predictor) is in the test set; extra variables should be ignored. –  joran Apr 25 '12 at 15:46

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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