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mlr (version 2.15.0)

calculateROCMeasures: Calculate receiver operator measures.

Description

Calculate the absolute number of correct/incorrect classifications and the following evaluation measures:

  • tpr True positive rate (Sensitivity, Recall)

  • fpr False positive rate (Fall-out)

  • fnr False negative rate (Miss rate)

  • tnr True negative rate (Specificity)

  • ppv Positive predictive value (Precision)

  • for False omission rate

  • lrp Positive likelihood ratio (LR+)

  • fdr False discovery rate

  • npv Negative predictive value

  • acc Accuracy

  • lrm Negative likelihood ratio (LR-)

  • dor Diagnostic odds ratio

For details on the used measures see measures and also https://en.wikipedia.org/wiki/Receiver_operating_characteristic.

The element for the false omission rate in the resulting object is not called for but fomr since for should never be used as a variable name in an object.

Usage

calculateROCMeasures(pred)

# S3 method for ROCMeasures print(x, abbreviations = TRUE, digits = 2, ...)

Arguments

pred

(Prediction) Prediction object.

x

(ROCMeasures) Created by calculateROCMeasures.

abbreviations

(logical(1)) If TRUE a short paragraph with explanations of the used measures is printed additionally.

digits

(integer(1)) Number of digits the measures are rounded to.

...

(any) Currently not used.

Value

(ROCMeasures). A list containing two elements confusion.matrix which is the 2 times 2 confusion matrix of absolute frequencies and measures, a list of the above mentioned measures.

Methods (by generic)

  • print:

See Also

Other roc: asROCRPrediction

Other performance: ConfusionMatrix, calculateConfusionMatrix, estimateRelativeOverfitting, makeCostMeasure, makeCustomResampledMeasure, makeMeasure, measures, performance, setAggregation, setMeasurePars

Examples

Run this code
# NOT RUN {
lrn = makeLearner("classif.rpart", predict.type = "prob")
fit = train(lrn, sonar.task)
pred = predict(fit, task = sonar.task)
calculateROCMeasures(pred)
# }

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