Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I have a data set that I use the model.matrix() function on to convert factor variables to dummy variables. My data has 10 columns like this each with 3 levels (2,3,4) and I've been creating dummy variables for each of them separately.

xFormData <- function(dataset){
    mm0 <- model.matrix(~ factor(dataset$type) , data=dataset)
    mm1 <- model.matrix(~ factor(dataset$type_last1), data = dataset)
    mm2 <- model.matrix(~ factor(dataset$type_last2), data = dataset)
    mm3 <- model.matrix(~ factor(dataset$type_last3), data = dataset)
    mm4 <- model.matrix(~ factor(dataset$type_last4), data = dataset)
    mm5 <- model.matrix(~ factor(dataset$type_last5), data = dataset)
    mm6 <- model.matrix(~ factor(dataset$type_last6), data = dataset)
    mm7 <- model.matrix(~ factor(dataset$type_last7), data = dataset)
    mm8 <- model.matrix(~ factor(dataset$type_last8), data = dataset)
    mm9 <- model.matrix(~ factor(dataset$type_last9), data = dataset)
    mm10 <- model.matrix(~ factor(dataset$type_last10), data = dataset)

    dataset <- cbind(dataset, mm0, mm1, mm2, mm3, mm4, mm5, mm6, mm7, mm8, mm9, mm10)

dataset
}

I'm wondering if this is the wrong procedure as after running a randomForest on the data, and plotting the variable importance, it was showing different dummy variable columns individually. So say columns 61-63 were the 3 dummy variables for column 10, the randomForest is seeing column 62 by itself as an important predictor.

I have 2 questions:

1) Is this ok?

2) If not, how can I group the dummy variables so that the rf knows they are together?

share|improve this question
2  
You do not need to create dummy variables: making sure that they are factors (rather than numbers) should suffice. –  Vincent Zoonekynd Feb 12 '12 at 23:06
    
@VincentZoonekynd This is actually a follow-up to stackoverflow.com/questions/9145874/… , where the OP found that his machine learning workflow does not work with factor-coded features. –  John Colby Feb 13 '12 at 19:27

1 Answer 1

up vote 3 down vote accepted

This is OK, and is what happens behind the scenes anyway if you left the factors as factors. Different levels of a factor are different features for most machine learning purposes. Think of a random example like test outcome ~ school: Maybe going to school A is very predictive of whether you pass or fail the test, but not school B or school C. Then, the school A feature would be useful, but not the others.

This is covered in one of the caret vignette documents: http://cran.r-project.org/web/packages/caret/vignettes/caretMisc.pdf

Also, the cars data set included with caret should be a useful example. It contains 2 factors - "manufacturer" and "car type" - that have been dummy-coded into a series of numeric features for machine learning purposes.

data(cars, package='caret')
head(cars)
share|improve this answer
    
Thanks. As a follow up I think if you go about it this way you can't use n-1 levels, but must explicitly code each level which is described in this question: stackoverflow.com/questions/4560459/… –  screechOwl Feb 15 '12 at 19:44

Your Answer

 
discard

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.