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# ROC curve for classification from randomForest

I am using `randomForest` package in R platform for classification task.

``````rf_object<-randomForest(data_matrix, label_factor, cutoff=c(k,1-k))
``````

where k ranges from 0.1 to 0.9.

``````pred <- predict(rf_object,test_data_matrix)
``````

I have the output from the random forest classifier and I compared it with the labels. So, I have the performance measures like accuracy, MCC, sensitivity, specificity, etc for 9 cutoff points.

Now, I want to plot the ROC curve and obtain the area under the ROC curve to see how good the performance is. Most of the packages in R (like ROCR, pROC) require prediction and labels but I have sensitivity (TPR) and specificity (1-FPR).

Can any one suggest me if the cutoff method is correct or reliable to produce ROC curve? Do you know any way to obtain ROC curve and area under the curve using TPR and FPR?

I also tried to use the following command to train random forest. This way the predictions were continuous and were acceptable to `ROCR` and `pROC` packages in R. But, I am not sure if this is correct way to do. Can any one suggest me about this method?

``````rf_object <- randomForest(data_matrix, label_vector)
pred <- predict(rf_object, test_data_matrix)
``````

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Why don't you output class probabilities ? This way, you have a ranking of your predictions and you can directly input that to any ROC package.

``````m = randomForest(data_matrix, labels)
predict(m,newdata_matrix,type='prob')
``````

Note that, to use randomForest as a classification tool, `labels` must be a vector of factor.

Regards

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Thank you jey1401. I figured it out and did it. – Abhishek Nov 7 '12 at 8:02

The first point that we need to keep in mind is that package ROCR works with probabilities and not class labels. The workflow is to create the prediction object then to measure the performance based upon some predefined criteria like true positive false positive and then plot the curve.

``````# train the random forest model
keep.forest=TRUE, importance=TRUE,test=data\$val)

# generate probabilities instead of class labels type="prob" ensures that

#randomForest generates probabilities for both the class labels,

#we are selecting one of the value [2] at the end does that

#prediction is ROCR function

#performance in terms of true and false positive rates

#plot the curve
abline(a=0,b=1,lwd=2,lty=2,col="gray")

#compute area under curve

auc <- unlist(slot(auc, "y.values"))

minauc<-min(round(auc, digits = 2))
maxauc<-max(round(auc, digits = 2))
minauct <- paste(c("min(AUC) = "),minauc,sep="")
maxauct <- paste(c("max(AUC) = "),maxauc,sep="")
``````
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