Measure to compare true observed labels with predicted
labels
in binary classification tasks.
Usage
fn(truth, response, positive, ...)
Value
Performance value as numeric(1).
Arguments
truth
(factor())
True (observed) labels.
Must have the exactly same two levels and the same length as response.
response
(factor())
Predicted response labels.
Must have the exactly same two levels and the same length as truth.
positive
(character(1))
Name of the positive class.
...
(any)
Additional arguments. Currently ignored.
Meta Information
Type: "binary"
Range: \([0, \infty)\)
Minimize: TRUE
Required prediction: response
Details
This measure counts the false negatives (type 2 error), i.e. the number of
predictions indicating a negative class label while in fact it is positive.
This is sometimes also called a "miss" or an "underestimation".