BinaryMetric
- class dtaianomaly.evaluation.BinaryMetric[source]
A metric that takes as input binary anomaly labels.
A class to indicate that a metric is binary, i.e., it takes as input binary decision labels. This class also checks whether the given anomaly scores are actually binary.
- compute(y_true: ndarray, y_pred: ndarray, **kwargs) float[source]
Compute the performance score.
Evaluate how closely the given anomaly scores align to the ground truth anomaly scores.
- Parameters:
- y_truearray-like of shape (n_samples)
Ground-truth labels.
- y_predarray-like of shape (n_samples)
Predicted anomaly scores.
- **kwargs
Additional arguments used for computing the evaluation metric.
- Returns:
- float
The alignment score of the given ground truth and prediction, according to this score.
- Raises:
- ValueError
When inputs are not numeric “array-like”s
- ValueError
If shapes of y_true and y_pred are not of identical shape
- ValueError
If y_true is non-binary.
- ValueError
If y_pred is non-binary.