Measure to compare true observed labels with predicted labels in binary classification tasks.
Usage
tnr(truth, response, positive, sample_weights = NULL, na_value = NaN, ...)
specificity(
truth,
response,
positive,
sample_weights = NULL,
na_value = NaN,
...
)Arguments
- truth
(
factor())
True (observed) labels. Must have the exactly same two levels and the same length asresponse.- response
(
factor())
Predicted response labels. Must have the exactly same two levels and the same length astruth.- positive
(
character(1))
Name of the positive class.- sample_weights
(
numeric())
Vector of non-negative and finite sample weights. Must have the same length astruth. The vector gets automatically normalized to sum to one. Defaults to equal sample weights.- na_value
(
numeric(1))
Value that should be returned if the measure is not defined for the input (as described in the note). Default isNaN.- ...
(
any)
Additional arguments. Currently ignored.
Details
The True Negative Rate is defined as $$ \frac{\mathrm{TN}}{\mathrm{FP} + \mathrm{TN}}. $$ Also know as "specificity" or "selectivity".
This measure is undefined if FP + TN = 0.