sensitivity_low_alert#
Sensitivity at Low Alert Rates objective.
Module Contents#
Classes Summary#
Create instance of SensitivityLowAlert. |
Contents#
- evalml.objectives.sensitivity_low_alert.logger#
- class evalml.objectives.sensitivity_low_alert.SensitivityLowAlert(alert_rate=0.01)[source]#
Create instance of SensitivityLowAlert.
- Parameters
alert_rate (float) – percentage of top scores to classify as high risk.
Attributes
expected_range
[0, 1]
greater_is_better
True
is_bounded_like_percentage
True
name
Sensitivity at Low Alert Rates
perfect_score
1.0
problem_types
[ProblemTypes.BINARY, ProblemTypes.TIME_SERIES_BINARY]
score_needs_proba
False
Methods
Calculate the percent difference between scores.
Returns a boolean determining if we can optimize the binary classification objective threshold.
Determine if an observation is high risk given an alert rate.
Returns whether or not an objective is defined for a problem type.
Calculate sensitivity across all predictions, using the top alert_rate percent of observations as the predicted positive class.
Learn a binary classification threshold which optimizes the current objective.
If True, this objective is only valid for positive data. Defaults to False.
Returns a numerical score indicating performance based on the differences between the predicted and actual values.
Validate inputs for scoring.
- classmethod calculate_percent_difference(cls, score, baseline_score)#
Calculate the percent difference between scores.
- Parameters
score (float) – A score. Output of the score method of this objective.
baseline_score (float) – A score. Output of the score method of this objective. In practice, this is the score achieved on this objective with a baseline estimator.
- Returns
- The percent difference between the scores. Note that for objectives that can be interpreted
as percentages, this will be the difference between the reference score and score. For all other objectives, the difference will be normalized by the reference score.
- Return type
float
- property can_optimize_threshold(cls)#
Returns a boolean determining if we can optimize the binary classification objective threshold.
This will be false for any objective that works directly with predicted probabilities, like log loss and AUC. Otherwise, it will be true.
- Returns
Whether or not an objective can be optimized.
- Return type
bool
- decision_function(self, ypred_proba, **kwargs)[source]#
Determine if an observation is high risk given an alert rate.
- Parameters
ypred_proba (pd.Series) – Predicted probabilities.
**kwargs – Additional abritrary parameters.
- Returns
Whether or not an observation is high risk given an alert rate.
- Return type
pd.Series
- classmethod is_defined_for_problem_type(cls, problem_type)#
Returns whether or not an objective is defined for a problem type.
- objective_function(self, y_true, y_predicted, **kwargs)[source]#
Calculate sensitivity across all predictions, using the top alert_rate percent of observations as the predicted positive class.
- Parameters
y_true (pd.Series) – True labels.
y_predicted (pd.Series) – Predicted labels based on alert_rate.
**kwargs – Additional abritrary parameters.
- Returns
sensitivity using the observations with the top scores as the predicted positive class.
- Return type
float
- optimize_threshold(self, ypred_proba, y_true, X=None)#
Learn a binary classification threshold which optimizes the current objective.
- Parameters
ypred_proba (pd.Series) – The classifier’s predicted probabilities
y_true (pd.Series) – The ground truth for the predictions.
X (pd.DataFrame, optional) – Any extra columns that are needed from training data.
- Returns
Optimal threshold for this objective.
- Raises
RuntimeError – If objective cannot be optimized.
- positive_only(cls)#
If True, this objective is only valid for positive data. Defaults to False.
- score(self, y_true, y_predicted, X=None, sample_weight=None)#
Returns a numerical score indicating performance based on the differences between the predicted and actual values.
- Parameters
y_predicted (pd.Series) – Predicted values of length [n_samples]
y_true (pd.Series) – Actual class labels of length [n_samples]
X (pd.DataFrame or np.ndarray) – Extra data of shape [n_samples, n_features] necessary to calculate score
sample_weight (pd.DataFrame or np.ndarray) – Sample weights used in computing objective value result
- Returns
score
- validate_inputs(self, y_true, y_predicted)#
Validate inputs for scoring.