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I'm trying to predict the class of four Data Deficient species using the predict() function in randomForest. I've run RF on my original data and created a RF object, and I then want to use this to predict the class of the new data.

The code I am using is:

# original data set "procellminvar" 
# DD sp only "procelldd"

#run RF on original data set

    procellminvar$current.red.list<-factor(procellminvar$current.red.list)
    procell6<-procellminvar[,6:80]
    procell6.imputed<-rfImpute(current.red.list~.,procell6)
    procellminvar.rf<-randomForest(current.red.list~., procell6.imputed, votes=true, importance=TRUE, ntree=1000)
    round(importance(procellminvar.rf),2)

#run prediction using original data and new data (DD sp only)

    predict(procellminvar.rf, procelldd)

The RF runs fine, but when I try and run predict I get an error message:

predict(procellminvar.rf, procelldd)
# Error in eval(expr, envir, enclos) : object 'subpop' not found

I don't understand why. Could anybody explain to me in simple terms what I'm doing wrong here?

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R is probably telling you that procelldd has no variable called subpop. Your new data frame has to have every single variable that was used in your original rf call. (In this case, everything in procell6.imputed.) –  joran Nov 14 '13 at 19:19
    
Thanks. All the variables in the new data frame are the same, the only difference is the data. In procell6.imputed I specify variables 6:80, but obviously I haven't for the new data - this wouldn't have an impact would it? If so how would I resolve it? –  user2985501 Nov 14 '13 at 19:49
    
The variable subpop is not in procelldd. That is the problem. –  joran Nov 14 '13 at 20:01
    
Ok, so I see what's happened - all of the variables that have no data within the columns aren't there, so procelldd now has 73 rather than 80 variables. The data isn't there because they're data deficient species though. Is there a way to prevent these columns from getting dropped when the data is read in to R? Or will they have to have a value in them (I'm not sure I'd get around it if that is the case). –  user2985501 Nov 14 '13 at 20:20
    
It wouldn't matter in this case anyway. randomForest won't generate predictions if some of the variables needed are missing (i.e. NA). You either need a different model, or different data (imputed, different subset,...), or both. –  joran Nov 14 '13 at 20:31

1 Answer 1

I think the problem is that you're running the predict on the full dataset but you are not using the full dataset in the training. Nor are you using the original variables. So you need to make sure that each variable you are using in the training also is present in the test data.

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