# plotting ROC in R with ROCR vs pROC

I am plotting ROCs and measuring partial AUC as a metric of ecological niche model quality. As I am working in R, I am using the ROCR and the pROC packages. I'll settle on one to use, but for now, I just wanted to see how they performed, and if one met my needs better.

One thing that confuses me is that, when plotting a ROC, the axes are as follows:

ROCR

``````x axis: 'true positive rate' 0 -> 1
y axis: 'false positive rate', 0 -> 1
``````

pROC

``````x axis: 'sensitivity' 0 -> 1
y axis: 'specificity' 1 -> 0.
``````

But if I plot the ROC using both methods, they look identical. So I just want to confirm that:

``````true positive rate = sensitivity

false positive rate = 1 - specificity.
``````

Here is a reproducible example:

``````obs<-rep(0:1, each=50)
pred<-c(runif(50,min=0,max=0.8),runif(50,min=0.3,max=0.6))
plot(roc(obs,pred))

ROCRpred<-prediction(pred,obs)
plot(performance(ROCRpred,'tpr','fpr'))
``````
• Read in detail about these performance measures of classifiers: learnerworld.tumblr.com/search/performance+measure Plus you can always use legacy.axis = TRUE to reverse the scale of axes (from increasing to decreasing or vice versa) May 29, 2021 at 5:09

To confirm, you are right in that true positive rate = sensitivity and false positive rate = 1 - specificity. In your example, the order in which you plot components of the ROCR performance object from the `ROCR` package is key. In the last line, the first performance measure, true positive rate, 'tpr' gets plotted on the y-axis `measure = 'tpr'` and the second performance measure, false positive rate, is plotted on the x-axis `x.measure = 'fpr'`

``````plot(performance(ROCRpred, measure = 'tpr', x.measure = 'fpr'))
``````

Just to say, for the `pROC` package if you include the following in your plot code:

``````plot(roc(obs,pred), legacy.axes = TRUE)
``````

then you end up with a reversed x-axis.

As far as I know:

``````TPR = sensitivity = TP/(TP/FN) -> y axis: [0, 1]

FPR = 1 - specificity = 1 - (TN/(FP+TN)) -> x axis: [0, 1]
``````

But, when the graph shows specificity (true negative rate) in the x-axis then the range is [1, 0].

In both cases, the graph is the same.