roc#
- EstimatorReport.metrics.roc(*, data_source='test')[source]#
Plot the ROC curve.
- Parameters:
- data_source{“test”, “train”, “both”}, default=”test”
The data source to use.
“test” : use the test set provided when creating the report.
“train” : use the train set provided when creating the report.
“both” : use both the train and test sets to compute the metrics and present them side-by-side.
- Returns:
RocCurveDisplayThe ROC curve display.
Examples
>>> from sklearn.datasets import load_breast_cancer >>> from sklearn.linear_model import LogisticRegression >>> from skore import train_test_split >>> from skore import EstimatorReport >>> X, y = load_breast_cancer(return_X_y=True) >>> split_data = train_test_split(X=X, y=y, random_state=0, as_dict=True) >>> classifier = LogisticRegression(max_iter=10_000) >>> report = EstimatorReport(classifier, **split_data) >>> display = report.metrics.roc() >>> display.set_style(relplot_kwargs={"color": "tab:red"}) >>> display.plot()