concordance_indexes | R Documentation |
Concordance derived indexes allow calculation and explanation of area under ROC curve in a specific region. They use a dual perspective since they consider both TPR and FPR ranges which enclose the region of interest.
cp_auc()
applies concordan partial area under curve (CpAUC), while
ncp_auc()
applies its normalized version by dividing by the total area.
cp_auc(
data = NULL,
response,
predictor,
lower_threshold,
upper_threshold,
ratio,
.condition = NULL
)
ncp_auc(
data = NULL,
response,
predictor,
lower_threshold,
upper_threshold,
ratio,
.condition = NULL
)
data |
A data.frame or extension (e.g. a tibble) containing values for predictors and response variables. |
response |
A data variable which must be a factor, integer or character vector representing the prediction outcome on each observation (Gold Standard). If the variable presents more than two possible outcomes, classes or categories:
New combined category represents the "absence" of the condition to predict.
See |
predictor |
A data variable which must be numeric, representing values of a classifier or predictor for each observation. |
lower_threshold , upper_threshold |
Two numbers between 0 and 1, inclusive. These numbers represent lower and upper bounds of the region where to apply calculations. |
ratio |
Ratio or axis where to apply calculations.
|
.condition |
A value from response that represents class, category or condition of interest which wants to be predicted. If Once the class of interest is selected, rest of them will be collapsed in a common category, representing the "absence" of the condition to be predicted. See |
A numeric value representing index score for the partial area under ROC curve.
Carrington, André M., et al. A new concordant partial AUC and partial c statistic for imbalanced data in the evaluation of machine learning algorithms. BMC medical informatics and decision making 20 (2020): 1-12.
# Calculate cp_auc of Sepal.Width as a classifier of setosa especies in
# FPR = (0, 0.1)
cp_auc(
iris,
response = Species,
predictor = Sepal.Width,
lower_threshold = 0,
upper_threshold = 0.1,
ratio = "fpr"
)
# Calculate ncp_auc of Sepal.Width as a classifier of setosa especies in
# FPR = (0, 0.1)
ncp_auc(
iris,
response = Species,
predictor = Sepal.Width,
lower_threshold = 0,
upper_threshold = 0.1,
ratio = "fpr"
)
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