fp: False Positives

View source: R/binary_fp.R

fpR Documentation

False Positives

Description

Measure to compare true observed labels with predicted labels in binary classification tasks.

Usage

fp(truth, response, positive, ...)

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.

Details

This measure counts the false positives (type 1 error), i.e. the number of predictions indicating a positive class label while in fact it is negative. This is sometimes also called a "false alarm".

Value

Performance value as numeric(1).

Meta Information

  • Type: "binary"

  • Range: [0, \infty)

  • Minimize: TRUE

  • Required prediction: response

References

https://en.wikipedia.org/wiki/Template:DiagnosticTesting_Diagram

See Also

Other Binary Classification Measures: auc(), bbrier(), dor(), fbeta(), fdr(), fn(), fnr(), fomr(), fpr(), gmean(), gpr(), npv(), ppv(), prauc(), tn(), tnr(), tp(), tpr()

Examples

set.seed(1)
lvls = c("a", "b")
truth = factor(sample(lvls, 10, replace = TRUE), levels = lvls)
response = factor(sample(lvls, 10, replace = TRUE), levels = lvls)
fp(truth, response, positive = "a")

mlr3measures documentation built on Sept. 12, 2024, 7:20 a.m.