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EvaluationMeasures (version 1.1.0)

EvaluationMeasures.Sensitivity: EvaluationMeasures.Sensitivity

Description

Sensitivity of prediction

Usage

EvaluationMeasures.Sensitivity(Real = NULL, Predicted = NULL, Positive = 1, TP = NULL, TN = NULL, FP = NULL, FN = NULL)

Arguments

Real
Real binary values of the class
Predicted
Predicted binary values of the class
Positive
Consider 1 label as Positive Class unless changing this parameter to 0
TP
Number of True Positives. Number of 1 in real which is 1 in predicted.
TN
Number of True Negatives. Number of 0 in real which is 0 in predicted.
FP
Number of False Positives. Number of 0 in real which is 1 in predicted.
FN
Number of False Negatives. Number of 1 in real which is 0 in predicted.

Value

Sensitivity

Details

Sensitivity is Proportional of positives that are correctly identified

By getting the predicted and real values or number of TP,TN,FP,FN return the Sensitivity or Recall or True Positive Rate of model

Examples

Run this code
EvaluationMeasures.Sensitivity(c(1,0,1,0,1,0,1,0),c(1,1,1,1,1,1,0,0))

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