| fp | R Documentation |
Measure to compare true observed labels with predicted labels in binary classification tasks.
fp(truth, response, positive, ...)
truth |
( |
response |
( |
positive |
( |
... |
( |
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".
Performance value as numeric(1).
Type: "binary"
Range: [0, \infty)
Minimize: TRUE
Required prediction: response
https://en.wikipedia.org/wiki/Template:DiagnosticTesting_Diagram
Other Binary Classification Measures:
auc(),
bbrier(),
dor(),
fbeta(),
fdr(),
fn(),
fnr(),
fomr(),
fpr(),
gmean(),
gpr(),
npv(),
ppv(),
prauc(),
tn(),
tnr(),
tp(),
tpr()
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")
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