AffiliationPrecision

class dtaianomaly.evaluation.AffiliationPrecision[source]

Compute the affiliation-based precision score [17].

The affiliation-metrics will first divide the time domain into a number of so-called affiliations: subsequences that are closest to the ground truth anomaly events. These affiliations do not have a fixed size. Then, the precision is computed within each affiliation as the distance from the predicted anomalous events to the ground truth event. The final precision then equals the average precision across all the affiliations.

See also

AffiliationRecall

Compute the affiliation-based Recall score.

AffiliationFBeta

Compute the affiliation-based \(F_\beta\) score.

Examples

>>> from dtaianomaly.evaluation import AffiliationPrecision
>>> metric = AffiliationPrecision()
>>> y_true = [0, 0, 0, 1, 1, 0, 0, 0]
>>> y_pred = [1, 0, 0, 1, 1, 1, 0, 0]
>>> metric.compute(y_true, y_pred)
0.6875
compute(y_true: ndarray, y_pred: ndarray, **kwargs) float

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.