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Measure to compare true observed labels with predicted labels in binary classification tasks.
dor(truth, response, positive, na_value = NaN, ...)
Performance value as numeric(1).
numeric(1)
(factor()) True (observed) labels. Must have the exactly same two levels and the same length as response.
factor()
response
(factor()) Predicted response labels. Must have the exactly same two levels and the same length as truth.
truth
(character(1)) Name of the positive class.
character(1))
(numeric(1)) Value that should be returned if the measure is not defined for the input (as described in the note). Default is NaN.
NaN
(any) Additional arguments. Currently ignored.
any
Type: "binary"
"binary"
Range: \([0, \infty)\)
Minimize: FALSE
FALSE
Required prediction: response
The Diagnostic Odds Ratio is defined as $$ \frac{\mathrm{TP}/\mathrm{FP}}{\mathrm{FN}/\mathrm{TN}}. $$
This measure is undefined if FP = 0 or FN = 0.
https://en.wikipedia.org/wiki/Template:DiagnosticTesting_Diagram
Other Binary Classification Measures: auc(), bbrier(), fbeta(), fdr(), fn(), fnr(), fomr(), fp(), fpr(), gmean(), gpr(), npv(), ppv(), prauc(), tn(), tnr(), tp(), tpr()
auc()
bbrier()
fbeta()
fdr()
fn()
fnr()
fomr()
fp()
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) dor(truth, response, positive = "a")
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