sklearn.metrics.precision_recall_fscore_support(y_true, y_pred, beta=1.0, labels=None, pos_label=1, average=None, warn_for=('precision', 'recall', 'f-score'), sample_weight=None)
[source]
Compute precision, recall, F-measure and support for each class
The precision is the ratio tp / (tp + fp)
where tp
is the number of true positives and fp
the number of false positives. The precision is intuitively the ability of the classifier not to label as positive a sample that is negative.
The recall is the ratio tp / (tp + fn)
where tp
is the number of true positives and fn
the number of false negatives. The recall is intuitively the ability of the classifier to find all the positive samples.
The F-beta score can be interpreted as a weighted harmonic mean of the precision and recall, where an F-beta score reaches its best value at 1 and worst score at 0.
The F-beta score weights recall more than precision by a factor of beta
. beta == 1.0
means recall and precision are equally important.
The support is the number of occurrences of each class in y_true
.
If pos_label is None
and in binary classification, this function returns the average precision, recall and F-measure if average
is one of 'micro'
, 'macro'
, 'weighted'
or 'samples'
.
Read more in the User Guide.
Parameters: |
y_true : 1d array-like, or label indicator array / sparse matrix Ground truth (correct) target values. y_pred : 1d array-like, or label indicator array / sparse matrix Estimated targets as returned by a classifier. beta : float, 1.0 by default The strength of recall versus precision in the F-score. labels : list, optional The set of labels to include when pos_label : str or int, 1 by default The class to report if average : string, [None (default), ‘binary’, ‘micro’, ‘macro’, ‘samples’, ‘weighted’] If
warn_for : tuple or set, for internal use This determines which warnings will be made in the case that this function is being used to return only one of its metrics. sample_weight : array-like of shape = [n_samples], optional Sample weights. |
---|---|
Returns: |
precision: float (if average is not None) or array of float, shape = [n_unique_labels] : recall: float (if average is not None) or array of float, , shape = [n_unique_labels] : fbeta_score: float (if average is not None) or array of float, shape = [n_unique_labels] : support: int (if average is not None) or array of int, shape = [n_unique_labels] : The number of occurrences of each label in |
[R220] | Wikipedia entry for the Precision and recall |
[R221] | Wikipedia entry for the F1-score |
[R222] | Discriminative Methods for Multi-labeled Classification Advances in Knowledge Discovery and Data Mining (2004), pp. 22-30 by Shantanu Godbole, Sunita Sarawagi <http://www.godbole.net/shantanu/pubs/multilabelsvm-pakdd04.pdf> |
>>> from sklearn.metrics import precision_recall_fscore_support >>> y_true = np.array(['cat', 'dog', 'pig', 'cat', 'dog', 'pig']) >>> y_pred = np.array(['cat', 'pig', 'dog', 'cat', 'cat', 'dog']) >>> precision_recall_fscore_support(y_true, y_pred, average='macro') ... (0.22..., 0.33..., 0.26..., None) >>> precision_recall_fscore_support(y_true, y_pred, average='micro') ... (0.33..., 0.33..., 0.33..., None) >>> precision_recall_fscore_support(y_true, y_pred, average='weighted') ... (0.22..., 0.33..., 0.26..., None)
It is possible to compute per-label precisions, recalls, F1-scores and supports instead of averaging: >>> precision_recall_fscore_support(y_true, y_pred, average=None, ... labels=[‘pig’, ‘dog’, ‘cat’]) ... # doctest: +ELLIPSIS,+NORMALIZE_WHITESPACE (array([ 0. , 0. , 0.66...]),
array([ 0., 0., 1.]), array([ 0. , 0. , 0.8]), array([2, 2, 2]))
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Licensed under the 3-clause BSD License.
http://scikit-learn.org/stable/modules/generated/sklearn.metrics.precision_recall_fscore_support.html