fbeta_score computes a weighted harmonic mean of Precision and Recall.
The beta parameter controls the weighting.
Usage
fbeta_score(actual, predicted, beta = 1)
Arguments
actual
The ground truth binary numeric vector containing 1 for the positive
class and 0 for the negative class.
predicted
The predicted binary numeric vector containing 1 for the positive
class and 0 for the negative class. Each element represents the
prediction for the corresponding element in actual.
beta
A non-negative real number controlling how close the F-beta score is to
either Precision or Recall. When beta is at the default of 1,
the F-beta Score is exactly an equally weighted harmonic mean.
The F-beta score will weight toward Precision when beta is less
than one. The F-beta score will weight toward Recall when beta is
greater than one.