# Constructing the formula for randomForest classification and then using predict

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:

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?

-

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.

-
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