ROC curve - how automatically find the most suitable threshold?
19 views (last 30 days)
Show older comments
I have a ROC curve for my data. I would like to find the most suitable threshold for data classification. The threshold should be located in place where False Positive Rate and True Positive Rate are balanced each other. From the interpretation of the ROC curve I know that should choice some threshold which is close to the left upper corner. Is there a way to find this threshold automatically?
0 Comments
Answers (4)
Luke Hubbard
on 27 Apr 2021
Edited: Luke Hubbard
on 27 Apr 2021
Follow the example for plotting the ROC curve.
[X,Y,T,AUC,OPTROCPT] = perfcurve(labels,scores,posclass);
ThresholdForOptROCpt = T((X==OPTROCPT(1))&(Y==OPTROCPT(2)))
0 Comments
the cyclist
on 19 Dec 2015
To find the best threshold, you first need to define what you mean by "best". Specifically, you need a function that determines the cost of each type of error. In some applications, a false positive is much more costly than a false negative. In other applications, the opposite is true.
After you figure that "cost function" out, then you minimize the cost along your ROC curve.
the cyclist
on 19 Dec 2015
When you say you have the curve, I assume you have the (X,Y) coordinates of the curve, for example as output by the perfcurve function.
X = false positive rate, and 1-Y = false negative rate.
So, you can do
[minErrDiff,minIdx] = min(X,1-Y)
to find which value is closest to being balanced.
0 Comments
Dario Walter
on 16 Jun 2020
There is an output available in the perfcurve functions that returns the value you are looking for:
[X,Y,T,~,OPTROCPT,suby,subnames] = perfcurve(...)
OPTROCPT provides the required value.
0 Comments
See Also
Categories
Find more on Detection in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!