Description Usage Arguments Details Value Author(s) Examples
Calculate the Cohen's kappa statistic for a given logit model.
1 | kappaCohen(actuals, predictedScores, threshold = 0.5)
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actuals |
The actual binary flags for the response variable. It can take a numeric vector containing values of either 1 or 0, where 1 represents the 'Good' or 'Events' while 0 represents 'Bad' or 'Non-Events'. |
predictedScores |
The prediction probability scores for each observation. If your classification model gives the 1/0 predcitions, convert it to a numeric vector of 1's and 0's. |
threshold |
If predicted value is above the threshold, it will be considered as an event (1), else it will be a non-event (0). Defaults to 0.5. |
For a given actuals and predicted probability scores, Cohen's kappa is calculated. Cohen's kappa is calculated as (probabiliity of agreement - probability of expected) / (1-(probability of expected)))
The Cohen's kappa of the given actuals and predicted probability scores
Selva Prabhakaran selva86@gmail.com
1 2 | data('ActualsAndScores')
kappaCohen(actuals=ActualsAndScores$Actuals, predictedScores=ActualsAndScores$PredictedScores)
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