Computes the area under the Precision-Recall curve (PRC).
The PRC can be interpreted as the relationship between precision and recall (sensitivity),
and is considered to be a more appropriate measure for unbalanced datasets than the ROC curve.
The PRC is computed by integration of the piecewise function.
Usage
prauc(truth, prob, positive, na_value = NaN, ...)
Arguments
truth
:: factor()
True (observed) labels.
Must have the exactly same two levels and the same length as response.
prob
:: numeric()
Predicted probability for positive class.
Must have exactly same length as truth.
positive
:: character(1)
Name of the positive class.
na_value
:: numeric(1)
Value that should be returned if the measure is not defined for the input
(as described in the note). Default is NaN.
...
:: any
Additional arguments. Currently ignored.
Value
Performance value as numeric(1).
Meta Information
Type: "binary"
Range: \([0, 1]\)
Minimize: FALSE
Required prediction: prob
References
Davis J, Goadrich M (2006).
“The relationship between precision-recall and ROC curves.”
In Proceedings of the 23rd International Conference on Machine Learning.
ISBN 9781595933836.