recall_score#
- sklearn.metrics.recall_score(y_true, y_pred, *, labels=None, pos_label=1, average='binary', sample_weight=None, zero_division='warn')[source]#
- Compute the recall. - The recall is the ratio - tp / (tp + fn)where- tpis the number of true positives and- fnthe number of false negatives. The recall is intuitively the ability of the classifier to find all the positive samples.- The best value is 1 and the worst value is 0. - Support beyond term: - binarytargets is achieved by treating multiclass and multilabel data as a collection of binary problems, one for each label. For the binary case, setting- average='binary'will return recall for- pos_label. If- averageis not- 'binary',- pos_labelis ignored and recall for both classes are computed then averaged or both returned (when- average=None). Similarly, for multiclass and multilabel targets, recall for all- labelsare either returned or averaged depending on the- averageparameter. Use- labelsspecify the set of labels to calculate recall for.- Read more in the User Guide. - Parameters:
- y_true1d array-like, or label indicator array / sparse matrix
- Ground truth (correct) target values. 
- y_pred1d array-like, or label indicator array / sparse matrix
- Estimated targets as returned by a classifier. 
- labelsarray-like, default=None
- The set of labels to include when - average != 'binary', and their order if- average is None. Labels present in the data can be excluded, for example in multiclass classification to exclude a “negative class”. Labels not present in the data can be included and will be “assigned” 0 samples. For multilabel targets, labels are column indices. By default, all labels in- y_trueand- y_predare used in sorted order.- Changed in version 0.17: Parameter - labelsimproved for multiclass problem.
- pos_labelint, float, bool or str, default=1
- The class to report if - average='binary'and the data is binary, otherwise this parameter is ignored. For multiclass or multilabel targets, set- labels=[pos_label]and- average != 'binary'to report metrics for one label only.
- average{‘micro’, ‘macro’, ‘samples’, ‘weighted’, ‘binary’} or None, default=’binary’
- This parameter is required for multiclass/multilabel targets. If - None, the metrics for each class are returned. Otherwise, this determines the type of averaging performed on the data:- 'binary':
- Only report results for the class specified by - pos_label. This is applicable only if targets (- y_{true,pred}) are binary.
- 'micro':
- Calculate metrics globally by counting the total true positives, false negatives and false positives. 
- 'macro':
- Calculate metrics for each label, and find their unweighted mean. This does not take label imbalance into account. 
- 'weighted':
- Calculate metrics for each label, and find their average weighted by support (the number of true instances for each label). This alters ‘macro’ to account for label imbalance; it can result in an F-score that is not between precision and recall. Weighted recall is equal to accuracy. 
- 'samples':
- Calculate metrics for each instance, and find their average (only meaningful for multilabel classification where this differs from - accuracy_score).
 
- sample_weightarray-like of shape (n_samples,), default=None
- Sample weights. 
- zero_division{“warn”, 0.0, 1.0, np.nan}, default=”warn”
- Sets the value to return when there is a zero division. - Notes: - If set to “warn”, this acts like 0, but a warning is also raised. 
- If set to - np.nan, such values will be excluded from the average.
 - Added in version 1.3: - np.nanoption was added.
 
- Returns:
- recallfloat (if average is not None) or array of float of shape (n_unique_labels,)
- Recall of the positive class in binary classification or weighted average of the recall of each class for the multiclass task. 
 
 - See also - precision_recall_fscore_support
- Compute precision, recall, F-measure and support for each class. 
- precision_score
- Compute the ratio - tp / (tp + fp)where- tpis the number of true positives and- fpthe number of false positives.
- balanced_accuracy_score
- Compute balanced accuracy to deal with imbalanced datasets. 
- multilabel_confusion_matrix
- Compute a confusion matrix for each class or sample. 
- PrecisionRecallDisplay.from_estimator
- Plot precision-recall curve given an estimator and some data. 
- PrecisionRecallDisplay.from_predictions
- Plot precision-recall curve given binary class predictions. 
 - Notes - When - true positive + false negative == 0, recall returns 0 and raises- UndefinedMetricWarning. This behavior can be modified with- zero_division.- Examples - >>> import numpy as np >>> from sklearn.metrics import recall_score >>> y_true = [0, 1, 2, 0, 1, 2] >>> y_pred = [0, 2, 1, 0, 0, 1] >>> recall_score(y_true, y_pred, average='macro') 0.33 >>> recall_score(y_true, y_pred, average='micro') 0.33 >>> recall_score(y_true, y_pred, average='weighted') 0.33 >>> recall_score(y_true, y_pred, average=None) array([1., 0., 0.]) >>> y_true = [0, 0, 0, 0, 0, 0] >>> recall_score(y_true, y_pred, average=None) array([0.5, 0. , 0. ]) >>> recall_score(y_true, y_pred, average=None, zero_division=1) array([0.5, 1. , 1. ]) >>> recall_score(y_true, y_pred, average=None, zero_division=np.nan) array([0.5, nan, nan]) - >>> # multilabel classification >>> y_true = [[0, 0, 0], [1, 1, 1], [0, 1, 1]] >>> y_pred = [[0, 0, 0], [1, 1, 1], [1, 1, 0]] >>> recall_score(y_true, y_pred, average=None) array([1. , 1. , 0.5]) 
Gallery examples#
 
Post-tuning the decision threshold for cost-sensitive learning
 
     
