1720 lines
65 KiB
Python
1720 lines
65 KiB
Python
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"""Metrics to assess performance on classification task given scores.
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Functions named as ``*_score`` return a scalar value to maximize: the higher
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the better.
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Function named as ``*_error`` or ``*_loss`` return a scalar value to minimize:
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the lower the better.
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"""
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# Authors: Alexandre Gramfort <alexandre.gramfort@inria.fr>
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# Mathieu Blondel <mathieu@mblondel.org>
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# Olivier Grisel <olivier.grisel@ensta.org>
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# Arnaud Joly <a.joly@ulg.ac.be>
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# Jochen Wersdorfer <jochen@wersdoerfer.de>
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# Lars Buitinck
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# Joel Nothman <joel.nothman@gmail.com>
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# Noel Dawe <noel@dawe.me>
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# License: BSD 3 clause
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import warnings
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from functools import partial
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import numpy as np
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from scipy.sparse import csr_matrix
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from scipy.stats import rankdata
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from ..utils import assert_all_finite
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from ..utils import check_consistent_length
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from ..utils import column_or_1d, check_array
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from ..utils.multiclass import type_of_target
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from ..utils.extmath import stable_cumsum
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from ..utils.sparsefuncs import count_nonzero
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from ..utils.validation import _deprecate_positional_args
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from ..exceptions import UndefinedMetricWarning
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from ..preprocessing import label_binarize
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from ..utils._encode import _encode, _unique
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from ._base import (
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_average_binary_score,
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_average_multiclass_ovo_score,
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_check_pos_label_consistency,
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)
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def auc(x, y):
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"""Compute Area Under the Curve (AUC) using the trapezoidal rule.
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This is a general function, given points on a curve. For computing the
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area under the ROC-curve, see :func:`roc_auc_score`. For an alternative
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way to summarize a precision-recall curve, see
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:func:`average_precision_score`.
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Parameters
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----------
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x : ndarray of shape (n,)
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x coordinates. These must be either monotonic increasing or monotonic
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decreasing.
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y : ndarray of shape, (n,)
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y coordinates.
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Returns
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-------
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auc : float
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See Also
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--------
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roc_auc_score : Compute the area under the ROC curve.
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average_precision_score : Compute average precision from prediction scores.
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precision_recall_curve : Compute precision-recall pairs for different
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probability thresholds.
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Examples
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--------
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>>> import numpy as np
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>>> from sklearn import metrics
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>>> y = np.array([1, 1, 2, 2])
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>>> pred = np.array([0.1, 0.4, 0.35, 0.8])
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>>> fpr, tpr, thresholds = metrics.roc_curve(y, pred, pos_label=2)
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>>> metrics.auc(fpr, tpr)
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0.75
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"""
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check_consistent_length(x, y)
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x = column_or_1d(x)
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y = column_or_1d(y)
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if x.shape[0] < 2:
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raise ValueError('At least 2 points are needed to compute'
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' area under curve, but x.shape = %s' % x.shape)
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direction = 1
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dx = np.diff(x)
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if np.any(dx < 0):
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if np.all(dx <= 0):
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direction = -1
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else:
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raise ValueError("x is neither increasing nor decreasing "
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": {}.".format(x))
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area = direction * np.trapz(y, x)
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if isinstance(area, np.memmap):
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# Reductions such as .sum used internally in np.trapz do not return a
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# scalar by default for numpy.memmap instances contrary to
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# regular numpy.ndarray instances.
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area = area.dtype.type(area)
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return area
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@_deprecate_positional_args
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def average_precision_score(y_true, y_score, *, average="macro", pos_label=1,
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sample_weight=None):
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"""Compute average precision (AP) from prediction scores.
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AP summarizes a precision-recall curve as the weighted mean of precisions
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achieved at each threshold, with the increase in recall from the previous
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threshold used as the weight:
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.. math::
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\\text{AP} = \\sum_n (R_n - R_{n-1}) P_n
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where :math:`P_n` and :math:`R_n` are the precision and recall at the nth
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threshold [1]_. This implementation is not interpolated and is different
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from computing the area under the precision-recall curve with the
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trapezoidal rule, which uses linear interpolation and can be too
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optimistic.
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Note: this implementation is restricted to the binary classification task
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or multilabel classification task.
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Read more in the :ref:`User Guide <precision_recall_f_measure_metrics>`.
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Parameters
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----------
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y_true : ndarray of shape (n_samples,) or (n_samples, n_classes)
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True binary labels or binary label indicators.
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y_score : ndarray of shape (n_samples,) or (n_samples, n_classes)
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Target scores, can either be probability estimates of the positive
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class, confidence values, or non-thresholded measure of decisions
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(as returned by :term:`decision_function` on some classifiers).
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average : {'micro', 'samples', 'weighted', 'macro'} or None, \
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default='macro'
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If ``None``, the scores for each class are returned. Otherwise,
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this determines the type of averaging performed on the data:
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``'micro'``:
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Calculate metrics globally by considering each element of the label
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indicator matrix as a label.
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``'macro'``:
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Calculate metrics for each label, and find their unweighted
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mean. This does not take label imbalance into account.
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``'weighted'``:
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Calculate metrics for each label, and find their average, weighted
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by support (the number of true instances for each label).
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``'samples'``:
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Calculate metrics for each instance, and find their average.
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Will be ignored when ``y_true`` is binary.
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pos_label : int or str, default=1
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The label of the positive class. Only applied to binary ``y_true``.
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For multilabel-indicator ``y_true``, ``pos_label`` is fixed to 1.
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sample_weight : array-like of shape (n_samples,), default=None
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Sample weights.
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Returns
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-------
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average_precision : float
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See Also
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--------
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roc_auc_score : Compute the area under the ROC curve.
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precision_recall_curve : Compute precision-recall pairs for different
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probability thresholds.
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Notes
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-----
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.. versionchanged:: 0.19
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Instead of linearly interpolating between operating points, precisions
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are weighted by the change in recall since the last operating point.
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References
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----------
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.. [1] `Wikipedia entry for the Average precision
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<https://en.wikipedia.org/w/index.php?title=Information_retrieval&
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oldid=793358396#Average_precision>`_
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Examples
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--------
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>>> import numpy as np
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>>> from sklearn.metrics import average_precision_score
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>>> y_true = np.array([0, 0, 1, 1])
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>>> y_scores = np.array([0.1, 0.4, 0.35, 0.8])
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>>> average_precision_score(y_true, y_scores)
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0.83...
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"""
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def _binary_uninterpolated_average_precision(
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y_true, y_score, pos_label=1, sample_weight=None):
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precision, recall, _ = precision_recall_curve(
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y_true, y_score, pos_label=pos_label, sample_weight=sample_weight)
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# Return the step function integral
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# The following works because the last entry of precision is
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# guaranteed to be 1, as returned by precision_recall_curve
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return -np.sum(np.diff(recall) * np.array(precision)[:-1])
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y_type = type_of_target(y_true)
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if y_type == "multilabel-indicator" and pos_label != 1:
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raise ValueError("Parameter pos_label is fixed to 1 for "
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"multilabel-indicator y_true. Do not set "
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"pos_label or set pos_label to 1.")
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elif y_type == "binary":
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# Convert to Python primitive type to avoid NumPy type / Python str
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# comparison. See https://github.com/numpy/numpy/issues/6784
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present_labels = np.unique(y_true).tolist()
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if len(present_labels) == 2 and pos_label not in present_labels:
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raise ValueError(
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f"pos_label={pos_label} is not a valid label. It should be "
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f"one of {present_labels}"
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)
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average_precision = partial(_binary_uninterpolated_average_precision,
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pos_label=pos_label)
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return _average_binary_score(average_precision, y_true, y_score,
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average, sample_weight=sample_weight)
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def det_curve(y_true, y_score, pos_label=None, sample_weight=None):
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"""Compute error rates for different probability thresholds.
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.. note::
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This metric is used for evaluation of ranking and error tradeoffs of
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a binary classification task.
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Read more in the :ref:`User Guide <det_curve>`.
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.. versionadded:: 0.24
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Parameters
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----------
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y_true : ndarray of shape (n_samples,)
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True binary labels. If labels are not either {-1, 1} or {0, 1}, then
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pos_label should be explicitly given.
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y_score : ndarray of shape of (n_samples,)
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Target scores, can either be probability estimates of the positive
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class, confidence values, or non-thresholded measure of decisions
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(as returned by "decision_function" on some classifiers).
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pos_label : int or str, default=None
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The label of the positive class.
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When ``pos_label=None``, if `y_true` is in {-1, 1} or {0, 1},
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``pos_label`` is set to 1, otherwise an error will be raised.
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sample_weight : array-like of shape (n_samples,), default=None
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Sample weights.
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Returns
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-------
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fpr : ndarray of shape (n_thresholds,)
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False positive rate (FPR) such that element i is the false positive
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rate of predictions with score >= thresholds[i]. This is occasionally
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referred to as false acceptance propability or fall-out.
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fnr : ndarray of shape (n_thresholds,)
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False negative rate (FNR) such that element i is the false negative
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rate of predictions with score >= thresholds[i]. This is occasionally
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referred to as false rejection or miss rate.
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thresholds : ndarray of shape (n_thresholds,)
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Decreasing score values.
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See Also
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--------
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plot_det_curve : Plot detection error tradeoff (DET) curve.
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DetCurveDisplay : DET curve visualization.
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roc_curve : Compute Receiver operating characteristic (ROC) curve.
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precision_recall_curve : Compute precision-recall curve.
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Examples
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--------
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>>> import numpy as np
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>>> from sklearn.metrics import det_curve
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>>> y_true = np.array([0, 0, 1, 1])
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>>> y_scores = np.array([0.1, 0.4, 0.35, 0.8])
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>>> fpr, fnr, thresholds = det_curve(y_true, y_scores)
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>>> fpr
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array([0.5, 0.5, 0. ])
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>>> fnr
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array([0. , 0.5, 0.5])
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>>> thresholds
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array([0.35, 0.4 , 0.8 ])
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"""
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if len(np.unique(y_true)) != 2:
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raise ValueError("Only one class present in y_true. Detection error "
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"tradeoff curve is not defined in that case.")
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fps, tps, thresholds = _binary_clf_curve(
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y_true, y_score, pos_label=pos_label, sample_weight=sample_weight
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)
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fns = tps[-1] - tps
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p_count = tps[-1]
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n_count = fps[-1]
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# start with false positives zero
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first_ind = (
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fps.searchsorted(fps[0], side='right') - 1
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if fps.searchsorted(fps[0], side='right') > 0
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else None
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)
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# stop with false negatives zero
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last_ind = tps.searchsorted(tps[-1]) + 1
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sl = slice(first_ind, last_ind)
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# reverse the output such that list of false positives is decreasing
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return (
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fps[sl][::-1] / n_count,
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fns[sl][::-1] / p_count,
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thresholds[sl][::-1]
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)
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def _binary_roc_auc_score(y_true, y_score, sample_weight=None, max_fpr=None):
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"""Binary roc auc score."""
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if len(np.unique(y_true)) != 2:
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raise ValueError("Only one class present in y_true. ROC AUC score "
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"is not defined in that case.")
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fpr, tpr, _ = roc_curve(y_true, y_score,
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sample_weight=sample_weight)
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if max_fpr is None or max_fpr == 1:
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return auc(fpr, tpr)
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if max_fpr <= 0 or max_fpr > 1:
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raise ValueError("Expected max_fpr in range (0, 1], got: %r" % max_fpr)
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# Add a single point at max_fpr by linear interpolation
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stop = np.searchsorted(fpr, max_fpr, 'right')
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x_interp = [fpr[stop - 1], fpr[stop]]
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y_interp = [tpr[stop - 1], tpr[stop]]
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tpr = np.append(tpr[:stop], np.interp(max_fpr, x_interp, y_interp))
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fpr = np.append(fpr[:stop], max_fpr)
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partial_auc = auc(fpr, tpr)
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# McClish correction: standardize result to be 0.5 if non-discriminant
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# and 1 if maximal
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min_area = 0.5 * max_fpr**2
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max_area = max_fpr
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return 0.5 * (1 + (partial_auc - min_area) / (max_area - min_area))
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@_deprecate_positional_args
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def roc_auc_score(y_true, y_score, *, average="macro", sample_weight=None,
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max_fpr=None, multi_class="raise", labels=None):
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"""Compute Area Under the Receiver Operating Characteristic Curve (ROC AUC)
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from prediction scores.
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Note: this implementation can be used with binary, multiclass and
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multilabel classification, but some restrictions apply (see Parameters).
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Read more in the :ref:`User Guide <roc_metrics>`.
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Parameters
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----------
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y_true : array-like of shape (n_samples,) or (n_samples, n_classes)
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True labels or binary label indicators. The binary and multiclass cases
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expect labels with shape (n_samples,) while the multilabel case expects
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binary label indicators with shape (n_samples, n_classes).
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y_score : array-like of shape (n_samples,) or (n_samples, n_classes)
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Target scores.
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* In the binary case, it corresponds to an array of shape
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`(n_samples,)`. Both probability estimates and non-thresholded
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decision values can be provided. The probability estimates correspond
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to the **probability of the class with the greater label**,
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i.e. `estimator.classes_[1]` and thus
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`estimator.predict_proba(X, y)[:, 1]`. The decision values
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corresponds to the output of `estimator.decision_function(X, y)`.
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See more information in the :ref:`User guide <roc_auc_binary>`;
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* In the multiclass case, it corresponds to an array of shape
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`(n_samples, n_classes)` of probability estimates provided by the
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`predict_proba` method. The probability estimates **must**
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sum to 1 across the possible classes. In addition, the order of the
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class scores must correspond to the order of ``labels``,
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if provided, or else to the numerical or lexicographical order of
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the labels in ``y_true``. See more information in the
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:ref:`User guide <roc_auc_multiclass>`;
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* In the multilabel case, it corresponds to an array of shape
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`(n_samples, n_classes)`. Probability estimates are provided by the
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`predict_proba` method and the non-thresholded decision values by
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the `decision_function` method. The probability estimates correspond
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to the **probability of the class with the greater label for each
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output** of the classifier. See more information in the
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:ref:`User guide <roc_auc_multilabel>`.
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average : {'micro', 'macro', 'samples', 'weighted'} or None, \
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default='macro'
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If ``None``, the scores for each class are returned. Otherwise,
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this determines the type of averaging performed on the data:
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Note: multiclass ROC AUC currently only handles the 'macro' and
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'weighted' averages.
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``'micro'``:
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Calculate metrics globally by considering each element of the label
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indicator matrix as a label.
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``'macro'``:
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||
|
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).
|
||
|
``'samples'``:
|
||
|
Calculate metrics for each instance, and find their average.
|
||
|
|
||
|
Will be ignored when ``y_true`` is binary.
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
max_fpr : float > 0 and <= 1, default=None
|
||
|
If not ``None``, the standardized partial AUC [2]_ over the range
|
||
|
[0, max_fpr] is returned. For the multiclass case, ``max_fpr``,
|
||
|
should be either equal to ``None`` or ``1.0`` as AUC ROC partial
|
||
|
computation currently is not supported for multiclass.
|
||
|
|
||
|
multi_class : {'raise', 'ovr', 'ovo'}, default='raise'
|
||
|
Only used for multiclass targets. Determines the type of configuration
|
||
|
to use. The default value raises an error, so either
|
||
|
``'ovr'`` or ``'ovo'`` must be passed explicitly.
|
||
|
|
||
|
``'ovr'``:
|
||
|
Stands for One-vs-rest. Computes the AUC of each class
|
||
|
against the rest [3]_ [4]_. This
|
||
|
treats the multiclass case in the same way as the multilabel case.
|
||
|
Sensitive to class imbalance even when ``average == 'macro'``,
|
||
|
because class imbalance affects the composition of each of the
|
||
|
'rest' groupings.
|
||
|
``'ovo'``:
|
||
|
Stands for One-vs-one. Computes the average AUC of all
|
||
|
possible pairwise combinations of classes [5]_.
|
||
|
Insensitive to class imbalance when
|
||
|
``average == 'macro'``.
|
||
|
|
||
|
labels : array-like of shape (n_classes,), default=None
|
||
|
Only used for multiclass targets. List of labels that index the
|
||
|
classes in ``y_score``. If ``None``, the numerical or lexicographical
|
||
|
order of the labels in ``y_true`` is used.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
auc : float
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
.. [1] `Wikipedia entry for the Receiver operating characteristic
|
||
|
<https://en.wikipedia.org/wiki/Receiver_operating_characteristic>`_
|
||
|
|
||
|
.. [2] `Analyzing a portion of the ROC curve. McClish, 1989
|
||
|
<https://www.ncbi.nlm.nih.gov/pubmed/2668680>`_
|
||
|
|
||
|
.. [3] Provost, F., Domingos, P. (2000). Well-trained PETs: Improving
|
||
|
probability estimation trees (Section 6.2), CeDER Working Paper
|
||
|
#IS-00-04, Stern School of Business, New York University.
|
||
|
|
||
|
.. [4] `Fawcett, T. (2006). An introduction to ROC analysis. Pattern
|
||
|
Recognition Letters, 27(8), 861-874.
|
||
|
<https://www.sciencedirect.com/science/article/pii/S016786550500303X>`_
|
||
|
|
||
|
.. [5] `Hand, D.J., Till, R.J. (2001). A Simple Generalisation of the Area
|
||
|
Under the ROC Curve for Multiple Class Classification Problems.
|
||
|
Machine Learning, 45(2), 171-186.
|
||
|
<http://link.springer.com/article/10.1023/A:1010920819831>`_
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
average_precision_score : Area under the precision-recall curve.
|
||
|
roc_curve : Compute Receiver operating characteristic (ROC) curve.
|
||
|
plot_roc_curve : Plot Receiver operating characteristic (ROC) curve.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
Binary case:
|
||
|
|
||
|
>>> from sklearn.datasets import load_breast_cancer
|
||
|
>>> from sklearn.linear_model import LogisticRegression
|
||
|
>>> from sklearn.metrics import roc_auc_score
|
||
|
>>> X, y = load_breast_cancer(return_X_y=True)
|
||
|
>>> clf = LogisticRegression(solver="liblinear", random_state=0).fit(X, y)
|
||
|
>>> roc_auc_score(y, clf.predict_proba(X)[:, 1])
|
||
|
0.99...
|
||
|
>>> roc_auc_score(y, clf.decision_function(X))
|
||
|
0.99...
|
||
|
|
||
|
Multiclass case:
|
||
|
|
||
|
>>> from sklearn.datasets import load_iris
|
||
|
>>> X, y = load_iris(return_X_y=True)
|
||
|
>>> clf = LogisticRegression(solver="liblinear").fit(X, y)
|
||
|
>>> roc_auc_score(y, clf.predict_proba(X), multi_class='ovr')
|
||
|
0.99...
|
||
|
|
||
|
Multilabel case:
|
||
|
|
||
|
>>> from sklearn.datasets import make_multilabel_classification
|
||
|
>>> from sklearn.multioutput import MultiOutputClassifier
|
||
|
>>> X, y = make_multilabel_classification(random_state=0)
|
||
|
>>> clf = MultiOutputClassifier(clf).fit(X, y)
|
||
|
>>> # get a list of n_output containing probability arrays of shape
|
||
|
>>> # (n_samples, n_classes)
|
||
|
>>> y_pred = clf.predict_proba(X)
|
||
|
>>> # extract the positive columns for each output
|
||
|
>>> y_pred = np.transpose([pred[:, 1] for pred in y_pred])
|
||
|
>>> roc_auc_score(y, y_pred, average=None)
|
||
|
array([0.82..., 0.86..., 0.94..., 0.85... , 0.94...])
|
||
|
>>> from sklearn.linear_model import RidgeClassifierCV
|
||
|
>>> clf = RidgeClassifierCV().fit(X, y)
|
||
|
>>> roc_auc_score(y, clf.decision_function(X), average=None)
|
||
|
array([0.81..., 0.84... , 0.93..., 0.87..., 0.94...])
|
||
|
"""
|
||
|
|
||
|
y_type = type_of_target(y_true)
|
||
|
y_true = check_array(y_true, ensure_2d=False, dtype=None)
|
||
|
y_score = check_array(y_score, ensure_2d=False)
|
||
|
|
||
|
if y_type == "multiclass" or (y_type == "binary" and
|
||
|
y_score.ndim == 2 and
|
||
|
y_score.shape[1] > 2):
|
||
|
# do not support partial ROC computation for multiclass
|
||
|
if max_fpr is not None and max_fpr != 1.:
|
||
|
raise ValueError("Partial AUC computation not available in "
|
||
|
"multiclass setting, 'max_fpr' must be"
|
||
|
" set to `None`, received `max_fpr={0}` "
|
||
|
"instead".format(max_fpr))
|
||
|
if multi_class == 'raise':
|
||
|
raise ValueError("multi_class must be in ('ovo', 'ovr')")
|
||
|
return _multiclass_roc_auc_score(y_true, y_score, labels,
|
||
|
multi_class, average, sample_weight)
|
||
|
elif y_type == "binary":
|
||
|
labels = np.unique(y_true)
|
||
|
y_true = label_binarize(y_true, classes=labels)[:, 0]
|
||
|
return _average_binary_score(partial(_binary_roc_auc_score,
|
||
|
max_fpr=max_fpr),
|
||
|
y_true, y_score, average,
|
||
|
sample_weight=sample_weight)
|
||
|
else: # multilabel-indicator
|
||
|
return _average_binary_score(partial(_binary_roc_auc_score,
|
||
|
max_fpr=max_fpr),
|
||
|
y_true, y_score, average,
|
||
|
sample_weight=sample_weight)
|
||
|
|
||
|
|
||
|
def _multiclass_roc_auc_score(y_true, y_score, labels,
|
||
|
multi_class, average, sample_weight):
|
||
|
"""Multiclass roc auc score.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : array-like of shape (n_samples,)
|
||
|
True multiclass labels.
|
||
|
|
||
|
y_score : array-like of shape (n_samples, n_classes)
|
||
|
Target scores corresponding to probability estimates of a sample
|
||
|
belonging to a particular class
|
||
|
|
||
|
labels : array-like of shape (n_classes,) or None
|
||
|
List of labels to index ``y_score`` used for multiclass. If ``None``,
|
||
|
the lexical order of ``y_true`` is used to index ``y_score``.
|
||
|
|
||
|
multi_class : {'ovr', 'ovo'}
|
||
|
Determines the type of multiclass configuration to use.
|
||
|
``'ovr'``:
|
||
|
Calculate metrics for the multiclass case using the one-vs-rest
|
||
|
approach.
|
||
|
``'ovo'``:
|
||
|
Calculate metrics for the multiclass case using the one-vs-one
|
||
|
approach.
|
||
|
|
||
|
average : {'macro', 'weighted'}
|
||
|
Determines the type of averaging performed on the pairwise binary
|
||
|
metric scores
|
||
|
``'macro'``:
|
||
|
Calculate metrics for each label, and find their unweighted
|
||
|
mean. This does not take label imbalance into account. Classes
|
||
|
are assumed to be uniformly distributed.
|
||
|
``'weighted'``:
|
||
|
Calculate metrics for each label, taking into account the
|
||
|
prevalence of the classes.
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,) or None
|
||
|
Sample weights.
|
||
|
|
||
|
"""
|
||
|
# validation of the input y_score
|
||
|
if not np.allclose(1, y_score.sum(axis=1)):
|
||
|
raise ValueError(
|
||
|
"Target scores need to be probabilities for multiclass "
|
||
|
"roc_auc, i.e. they should sum up to 1.0 over classes")
|
||
|
|
||
|
# validation for multiclass parameter specifications
|
||
|
average_options = ("macro", "weighted")
|
||
|
if average not in average_options:
|
||
|
raise ValueError("average must be one of {0} for "
|
||
|
"multiclass problems".format(average_options))
|
||
|
|
||
|
multiclass_options = ("ovo", "ovr")
|
||
|
if multi_class not in multiclass_options:
|
||
|
raise ValueError("multi_class='{0}' is not supported "
|
||
|
"for multiclass ROC AUC, multi_class must be "
|
||
|
"in {1}".format(
|
||
|
multi_class, multiclass_options))
|
||
|
|
||
|
if labels is not None:
|
||
|
labels = column_or_1d(labels)
|
||
|
classes = _unique(labels)
|
||
|
if len(classes) != len(labels):
|
||
|
raise ValueError("Parameter 'labels' must be unique")
|
||
|
if not np.array_equal(classes, labels):
|
||
|
raise ValueError("Parameter 'labels' must be ordered")
|
||
|
if len(classes) != y_score.shape[1]:
|
||
|
raise ValueError(
|
||
|
"Number of given labels, {0}, not equal to the number "
|
||
|
"of columns in 'y_score', {1}".format(
|
||
|
len(classes), y_score.shape[1]))
|
||
|
if len(np.setdiff1d(y_true, classes)):
|
||
|
raise ValueError(
|
||
|
"'y_true' contains labels not in parameter 'labels'")
|
||
|
else:
|
||
|
classes = _unique(y_true)
|
||
|
if len(classes) != y_score.shape[1]:
|
||
|
raise ValueError(
|
||
|
"Number of classes in y_true not equal to the number of "
|
||
|
"columns in 'y_score'")
|
||
|
|
||
|
if multi_class == "ovo":
|
||
|
if sample_weight is not None:
|
||
|
raise ValueError("sample_weight is not supported "
|
||
|
"for multiclass one-vs-one ROC AUC, "
|
||
|
"'sample_weight' must be None in this case.")
|
||
|
y_true_encoded = _encode(y_true, uniques=classes)
|
||
|
# Hand & Till (2001) implementation (ovo)
|
||
|
return _average_multiclass_ovo_score(_binary_roc_auc_score,
|
||
|
y_true_encoded,
|
||
|
y_score, average=average)
|
||
|
else:
|
||
|
# ovr is same as multi-label
|
||
|
y_true_multilabel = label_binarize(y_true, classes=classes)
|
||
|
return _average_binary_score(_binary_roc_auc_score, y_true_multilabel,
|
||
|
y_score, average,
|
||
|
sample_weight=sample_weight)
|
||
|
|
||
|
|
||
|
def _binary_clf_curve(y_true, y_score, pos_label=None, sample_weight=None):
|
||
|
"""Calculate true and false positives per binary classification threshold.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples,)
|
||
|
True targets of binary classification.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples,)
|
||
|
Estimated probabilities or output of a decision function.
|
||
|
|
||
|
pos_label : int or str, default=None
|
||
|
The label of the positive class.
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
fps : ndarray of shape (n_thresholds,)
|
||
|
A count of false positives, at index i being the number of negative
|
||
|
samples assigned a score >= thresholds[i]. The total number of
|
||
|
negative samples is equal to fps[-1] (thus true negatives are given by
|
||
|
fps[-1] - fps).
|
||
|
|
||
|
tps : ndarray of shape (n_thresholds,)
|
||
|
An increasing count of true positives, at index i being the number
|
||
|
of positive samples assigned a score >= thresholds[i]. The total
|
||
|
number of positive samples is equal to tps[-1] (thus false negatives
|
||
|
are given by tps[-1] - tps).
|
||
|
|
||
|
thresholds : ndarray of shape (n_thresholds,)
|
||
|
Decreasing score values.
|
||
|
"""
|
||
|
# Check to make sure y_true is valid
|
||
|
y_type = type_of_target(y_true)
|
||
|
if not (y_type == "binary" or
|
||
|
(y_type == "multiclass" and pos_label is not None)):
|
||
|
raise ValueError("{0} format is not supported".format(y_type))
|
||
|
|
||
|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
y_true = column_or_1d(y_true)
|
||
|
y_score = column_or_1d(y_score)
|
||
|
assert_all_finite(y_true)
|
||
|
assert_all_finite(y_score)
|
||
|
|
||
|
if sample_weight is not None:
|
||
|
sample_weight = column_or_1d(sample_weight)
|
||
|
|
||
|
pos_label = _check_pos_label_consistency(pos_label, y_true)
|
||
|
|
||
|
# make y_true a boolean vector
|
||
|
y_true = (y_true == pos_label)
|
||
|
|
||
|
# sort scores and corresponding truth values
|
||
|
desc_score_indices = np.argsort(y_score, kind="mergesort")[::-1]
|
||
|
y_score = y_score[desc_score_indices]
|
||
|
y_true = y_true[desc_score_indices]
|
||
|
if sample_weight is not None:
|
||
|
weight = sample_weight[desc_score_indices]
|
||
|
else:
|
||
|
weight = 1.
|
||
|
|
||
|
# y_score typically has many tied values. Here we extract
|
||
|
# the indices associated with the distinct values. We also
|
||
|
# concatenate a value for the end of the curve.
|
||
|
distinct_value_indices = np.where(np.diff(y_score))[0]
|
||
|
threshold_idxs = np.r_[distinct_value_indices, y_true.size - 1]
|
||
|
|
||
|
# accumulate the true positives with decreasing threshold
|
||
|
tps = stable_cumsum(y_true * weight)[threshold_idxs]
|
||
|
if sample_weight is not None:
|
||
|
# express fps as a cumsum to ensure fps is increasing even in
|
||
|
# the presence of floating point errors
|
||
|
fps = stable_cumsum((1 - y_true) * weight)[threshold_idxs]
|
||
|
else:
|
||
|
fps = 1 + threshold_idxs - tps
|
||
|
return fps, tps, y_score[threshold_idxs]
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def precision_recall_curve(y_true, probas_pred, *, pos_label=None,
|
||
|
sample_weight=None):
|
||
|
"""Compute precision-recall pairs for different probability thresholds.
|
||
|
|
||
|
Note: this implementation is restricted to the binary classification task.
|
||
|
|
||
|
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 last precision and recall values are 1. and 0. respectively and do not
|
||
|
have a corresponding threshold. This ensures that the graph starts on the
|
||
|
y axis.
|
||
|
|
||
|
Read more in the :ref:`User Guide <precision_recall_f_measure_metrics>`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples,)
|
||
|
True binary labels. If labels are not either {-1, 1} or {0, 1}, then
|
||
|
pos_label should be explicitly given.
|
||
|
|
||
|
probas_pred : ndarray of shape (n_samples,)
|
||
|
Estimated probabilities or output of a decision function.
|
||
|
|
||
|
pos_label : int or str, default=None
|
||
|
The label of the positive class.
|
||
|
When ``pos_label=None``, if y_true is in {-1, 1} or {0, 1},
|
||
|
``pos_label`` is set to 1, otherwise an error will be raised.
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
precision : ndarray of shape (n_thresholds + 1,)
|
||
|
Precision values such that element i is the precision of
|
||
|
predictions with score >= thresholds[i] and the last element is 1.
|
||
|
|
||
|
recall : ndarray of shape (n_thresholds + 1,)
|
||
|
Decreasing recall values such that element i is the recall of
|
||
|
predictions with score >= thresholds[i] and the last element is 0.
|
||
|
|
||
|
thresholds : ndarray of shape (n_thresholds,)
|
||
|
Increasing thresholds on the decision function used to compute
|
||
|
precision and recall. n_thresholds <= len(np.unique(probas_pred)).
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
plot_precision_recall_curve : Plot Precision Recall Curve for binary
|
||
|
classifiers.
|
||
|
PrecisionRecallDisplay : Precision Recall visualization.
|
||
|
average_precision_score : Compute average precision from prediction scores.
|
||
|
det_curve: Compute error rates for different probability thresholds.
|
||
|
roc_curve : Compute Receiver operating characteristic (ROC) curve.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> import numpy as np
|
||
|
>>> from sklearn.metrics import precision_recall_curve
|
||
|
>>> y_true = np.array([0, 0, 1, 1])
|
||
|
>>> y_scores = np.array([0.1, 0.4, 0.35, 0.8])
|
||
|
>>> precision, recall, thresholds = precision_recall_curve(
|
||
|
... y_true, y_scores)
|
||
|
>>> precision
|
||
|
array([0.66666667, 0.5 , 1. , 1. ])
|
||
|
>>> recall
|
||
|
array([1. , 0.5, 0.5, 0. ])
|
||
|
>>> thresholds
|
||
|
array([0.35, 0.4 , 0.8 ])
|
||
|
|
||
|
"""
|
||
|
fps, tps, thresholds = _binary_clf_curve(y_true, probas_pred,
|
||
|
pos_label=pos_label,
|
||
|
sample_weight=sample_weight)
|
||
|
|
||
|
precision = tps / (tps + fps)
|
||
|
precision[np.isnan(precision)] = 0
|
||
|
recall = tps / tps[-1]
|
||
|
|
||
|
# stop when full recall attained
|
||
|
# and reverse the outputs so recall is decreasing
|
||
|
last_ind = tps.searchsorted(tps[-1])
|
||
|
sl = slice(last_ind, None, -1)
|
||
|
return np.r_[precision[sl], 1], np.r_[recall[sl], 0], thresholds[sl]
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def roc_curve(y_true, y_score, *, pos_label=None, sample_weight=None,
|
||
|
drop_intermediate=True):
|
||
|
"""Compute Receiver operating characteristic (ROC).
|
||
|
|
||
|
Note: this implementation is restricted to the binary classification task.
|
||
|
|
||
|
Read more in the :ref:`User Guide <roc_metrics>`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples,)
|
||
|
True binary labels. If labels are not either {-1, 1} or {0, 1}, then
|
||
|
pos_label should be explicitly given.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples,)
|
||
|
Target scores, can either be probability estimates of the positive
|
||
|
class, confidence values, or non-thresholded measure of decisions
|
||
|
(as returned by "decision_function" on some classifiers).
|
||
|
|
||
|
pos_label : int or str, default=None
|
||
|
The label of the positive class.
|
||
|
When ``pos_label=None``, if `y_true` is in {-1, 1} or {0, 1},
|
||
|
``pos_label`` is set to 1, otherwise an error will be raised.
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
drop_intermediate : bool, default=True
|
||
|
Whether to drop some suboptimal thresholds which would not appear
|
||
|
on a plotted ROC curve. This is useful in order to create lighter
|
||
|
ROC curves.
|
||
|
|
||
|
.. versionadded:: 0.17
|
||
|
parameter *drop_intermediate*.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
fpr : ndarray of shape (>2,)
|
||
|
Increasing false positive rates such that element i is the false
|
||
|
positive rate of predictions with score >= `thresholds[i]`.
|
||
|
|
||
|
tpr : ndarray of shape (>2,)
|
||
|
Increasing true positive rates such that element `i` is the true
|
||
|
positive rate of predictions with score >= `thresholds[i]`.
|
||
|
|
||
|
thresholds : ndarray of shape = (n_thresholds,)
|
||
|
Decreasing thresholds on the decision function used to compute
|
||
|
fpr and tpr. `thresholds[0]` represents no instances being predicted
|
||
|
and is arbitrarily set to `max(y_score) + 1`.
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
plot_roc_curve : Plot Receiver operating characteristic (ROC) curve.
|
||
|
RocCurveDisplay : ROC Curve visualization.
|
||
|
det_curve: Compute error rates for different probability thresholds.
|
||
|
roc_auc_score : Compute the area under the ROC curve.
|
||
|
|
||
|
Notes
|
||
|
-----
|
||
|
Since the thresholds are sorted from low to high values, they
|
||
|
are reversed upon returning them to ensure they correspond to both ``fpr``
|
||
|
and ``tpr``, which are sorted in reversed order during their calculation.
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
.. [1] `Wikipedia entry for the Receiver operating characteristic
|
||
|
<https://en.wikipedia.org/wiki/Receiver_operating_characteristic>`_
|
||
|
|
||
|
.. [2] Fawcett T. An introduction to ROC analysis[J]. Pattern Recognition
|
||
|
Letters, 2006, 27(8):861-874.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> import numpy as np
|
||
|
>>> from sklearn import metrics
|
||
|
>>> y = np.array([1, 1, 2, 2])
|
||
|
>>> scores = np.array([0.1, 0.4, 0.35, 0.8])
|
||
|
>>> fpr, tpr, thresholds = metrics.roc_curve(y, scores, pos_label=2)
|
||
|
>>> fpr
|
||
|
array([0. , 0. , 0.5, 0.5, 1. ])
|
||
|
>>> tpr
|
||
|
array([0. , 0.5, 0.5, 1. , 1. ])
|
||
|
>>> thresholds
|
||
|
array([1.8 , 0.8 , 0.4 , 0.35, 0.1 ])
|
||
|
|
||
|
"""
|
||
|
fps, tps, thresholds = _binary_clf_curve(
|
||
|
y_true, y_score, pos_label=pos_label, sample_weight=sample_weight)
|
||
|
|
||
|
# Attempt to drop thresholds corresponding to points in between and
|
||
|
# collinear with other points. These are always suboptimal and do not
|
||
|
# appear on a plotted ROC curve (and thus do not affect the AUC).
|
||
|
# Here np.diff(_, 2) is used as a "second derivative" to tell if there
|
||
|
# is a corner at the point. Both fps and tps must be tested to handle
|
||
|
# thresholds with multiple data points (which are combined in
|
||
|
# _binary_clf_curve). This keeps all cases where the point should be kept,
|
||
|
# but does not drop more complicated cases like fps = [1, 3, 7],
|
||
|
# tps = [1, 2, 4]; there is no harm in keeping too many thresholds.
|
||
|
if drop_intermediate and len(fps) > 2:
|
||
|
optimal_idxs = np.where(np.r_[True,
|
||
|
np.logical_or(np.diff(fps, 2),
|
||
|
np.diff(tps, 2)),
|
||
|
True])[0]
|
||
|
fps = fps[optimal_idxs]
|
||
|
tps = tps[optimal_idxs]
|
||
|
thresholds = thresholds[optimal_idxs]
|
||
|
|
||
|
# Add an extra threshold position
|
||
|
# to make sure that the curve starts at (0, 0)
|
||
|
tps = np.r_[0, tps]
|
||
|
fps = np.r_[0, fps]
|
||
|
thresholds = np.r_[thresholds[0] + 1, thresholds]
|
||
|
|
||
|
if fps[-1] <= 0:
|
||
|
warnings.warn("No negative samples in y_true, "
|
||
|
"false positive value should be meaningless",
|
||
|
UndefinedMetricWarning)
|
||
|
fpr = np.repeat(np.nan, fps.shape)
|
||
|
else:
|
||
|
fpr = fps / fps[-1]
|
||
|
|
||
|
if tps[-1] <= 0:
|
||
|
warnings.warn("No positive samples in y_true, "
|
||
|
"true positive value should be meaningless",
|
||
|
UndefinedMetricWarning)
|
||
|
tpr = np.repeat(np.nan, tps.shape)
|
||
|
else:
|
||
|
tpr = tps / tps[-1]
|
||
|
|
||
|
return fpr, tpr, thresholds
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def label_ranking_average_precision_score(y_true, y_score, *,
|
||
|
sample_weight=None):
|
||
|
"""Compute ranking-based average precision.
|
||
|
|
||
|
Label ranking average precision (LRAP) is the average over each ground
|
||
|
truth label assigned to each sample, of the ratio of true vs. total
|
||
|
labels with lower score.
|
||
|
|
||
|
This metric is used in multilabel ranking problem, where the goal
|
||
|
is to give better rank to the labels associated to each sample.
|
||
|
|
||
|
The obtained score is always strictly greater than 0 and
|
||
|
the best value is 1.
|
||
|
|
||
|
Read more in the :ref:`User Guide <label_ranking_average_precision>`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : {ndarray, sparse matrix} of shape (n_samples, n_labels)
|
||
|
True binary labels in binary indicator format.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates of the positive
|
||
|
class, confidence values, or non-thresholded measure of decisions
|
||
|
(as returned by "decision_function" on some classifiers).
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
score : float
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> import numpy as np
|
||
|
>>> from sklearn.metrics import label_ranking_average_precision_score
|
||
|
>>> y_true = np.array([[1, 0, 0], [0, 0, 1]])
|
||
|
>>> y_score = np.array([[0.75, 0.5, 1], [1, 0.2, 0.1]])
|
||
|
>>> label_ranking_average_precision_score(y_true, y_score)
|
||
|
0.416...
|
||
|
|
||
|
"""
|
||
|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
y_true = check_array(y_true, ensure_2d=False)
|
||
|
y_score = check_array(y_score, ensure_2d=False)
|
||
|
|
||
|
if y_true.shape != y_score.shape:
|
||
|
raise ValueError("y_true and y_score have different shape")
|
||
|
|
||
|
# Handle badly formatted array and the degenerate case with one label
|
||
|
y_type = type_of_target(y_true)
|
||
|
if (y_type != "multilabel-indicator" and
|
||
|
not (y_type == "binary" and y_true.ndim == 2)):
|
||
|
raise ValueError("{0} format is not supported".format(y_type))
|
||
|
|
||
|
y_true = csr_matrix(y_true)
|
||
|
y_score = -y_score
|
||
|
|
||
|
n_samples, n_labels = y_true.shape
|
||
|
|
||
|
out = 0.
|
||
|
for i, (start, stop) in enumerate(zip(y_true.indptr, y_true.indptr[1:])):
|
||
|
relevant = y_true.indices[start:stop]
|
||
|
|
||
|
if (relevant.size == 0 or relevant.size == n_labels):
|
||
|
# If all labels are relevant or unrelevant, the score is also
|
||
|
# equal to 1. The label ranking has no meaning.
|
||
|
aux = 1.
|
||
|
else:
|
||
|
scores_i = y_score[i]
|
||
|
rank = rankdata(scores_i, 'max')[relevant]
|
||
|
L = rankdata(scores_i[relevant], 'max')
|
||
|
aux = (L / rank).mean()
|
||
|
|
||
|
if sample_weight is not None:
|
||
|
aux = aux * sample_weight[i]
|
||
|
out += aux
|
||
|
|
||
|
if sample_weight is None:
|
||
|
out /= n_samples
|
||
|
else:
|
||
|
out /= np.sum(sample_weight)
|
||
|
|
||
|
return out
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def coverage_error(y_true, y_score, *, sample_weight=None):
|
||
|
"""Coverage error measure.
|
||
|
|
||
|
Compute how far we need to go through the ranked scores to cover all
|
||
|
true labels. The best value is equal to the average number
|
||
|
of labels in ``y_true`` per sample.
|
||
|
|
||
|
Ties in ``y_scores`` are broken by giving maximal rank that would have
|
||
|
been assigned to all tied values.
|
||
|
|
||
|
Note: Our implementation's score is 1 greater than the one given in
|
||
|
Tsoumakas et al., 2010. This extends it to handle the degenerate case
|
||
|
in which an instance has 0 true labels.
|
||
|
|
||
|
Read more in the :ref:`User Guide <coverage_error>`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples, n_labels)
|
||
|
True binary labels in binary indicator format.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates of the positive
|
||
|
class, confidence values, or non-thresholded measure of decisions
|
||
|
(as returned by "decision_function" on some classifiers).
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
coverage_error : float
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
.. [1] Tsoumakas, G., Katakis, I., & Vlahavas, I. (2010).
|
||
|
Mining multi-label data. In Data mining and knowledge discovery
|
||
|
handbook (pp. 667-685). Springer US.
|
||
|
|
||
|
"""
|
||
|
y_true = check_array(y_true, ensure_2d=False)
|
||
|
y_score = check_array(y_score, ensure_2d=False)
|
||
|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
|
||
|
y_type = type_of_target(y_true)
|
||
|
if y_type != "multilabel-indicator":
|
||
|
raise ValueError("{0} format is not supported".format(y_type))
|
||
|
|
||
|
if y_true.shape != y_score.shape:
|
||
|
raise ValueError("y_true and y_score have different shape")
|
||
|
|
||
|
y_score_mask = np.ma.masked_array(y_score, mask=np.logical_not(y_true))
|
||
|
y_min_relevant = y_score_mask.min(axis=1).reshape((-1, 1))
|
||
|
coverage = (y_score >= y_min_relevant).sum(axis=1)
|
||
|
coverage = coverage.filled(0)
|
||
|
|
||
|
return np.average(coverage, weights=sample_weight)
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def label_ranking_loss(y_true, y_score, *, sample_weight=None):
|
||
|
"""Compute Ranking loss measure.
|
||
|
|
||
|
Compute the average number of label pairs that are incorrectly ordered
|
||
|
given y_score weighted by the size of the label set and the number of
|
||
|
labels not in the label set.
|
||
|
|
||
|
This is similar to the error set size, but weighted by the number of
|
||
|
relevant and irrelevant labels. The best performance is achieved with
|
||
|
a ranking loss of zero.
|
||
|
|
||
|
Read more in the :ref:`User Guide <label_ranking_loss>`.
|
||
|
|
||
|
.. versionadded:: 0.17
|
||
|
A function *label_ranking_loss*
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : {ndarray, sparse matrix} of shape (n_samples, n_labels)
|
||
|
True binary labels in binary indicator format.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates of the positive
|
||
|
class, confidence values, or non-thresholded measure of decisions
|
||
|
(as returned by "decision_function" on some classifiers).
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
loss : float
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
.. [1] Tsoumakas, G., Katakis, I., & Vlahavas, I. (2010).
|
||
|
Mining multi-label data. In Data mining and knowledge discovery
|
||
|
handbook (pp. 667-685). Springer US.
|
||
|
"""
|
||
|
y_true = check_array(y_true, ensure_2d=False, accept_sparse='csr')
|
||
|
y_score = check_array(y_score, ensure_2d=False)
|
||
|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
|
||
|
y_type = type_of_target(y_true)
|
||
|
if y_type not in ("multilabel-indicator",):
|
||
|
raise ValueError("{0} format is not supported".format(y_type))
|
||
|
|
||
|
if y_true.shape != y_score.shape:
|
||
|
raise ValueError("y_true and y_score have different shape")
|
||
|
|
||
|
n_samples, n_labels = y_true.shape
|
||
|
|
||
|
y_true = csr_matrix(y_true)
|
||
|
|
||
|
loss = np.zeros(n_samples)
|
||
|
for i, (start, stop) in enumerate(zip(y_true.indptr, y_true.indptr[1:])):
|
||
|
# Sort and bin the label scores
|
||
|
unique_scores, unique_inverse = np.unique(y_score[i],
|
||
|
return_inverse=True)
|
||
|
true_at_reversed_rank = np.bincount(
|
||
|
unique_inverse[y_true.indices[start:stop]],
|
||
|
minlength=len(unique_scores))
|
||
|
all_at_reversed_rank = np.bincount(unique_inverse,
|
||
|
minlength=len(unique_scores))
|
||
|
false_at_reversed_rank = all_at_reversed_rank - true_at_reversed_rank
|
||
|
|
||
|
# if the scores are ordered, it's possible to count the number of
|
||
|
# incorrectly ordered paires in linear time by cumulatively counting
|
||
|
# how many false labels of a given score have a score higher than the
|
||
|
# accumulated true labels with lower score.
|
||
|
loss[i] = np.dot(true_at_reversed_rank.cumsum(),
|
||
|
false_at_reversed_rank)
|
||
|
|
||
|
n_positives = count_nonzero(y_true, axis=1)
|
||
|
with np.errstate(divide="ignore", invalid="ignore"):
|
||
|
loss /= ((n_labels - n_positives) * n_positives)
|
||
|
|
||
|
# When there is no positive or no negative labels, those values should
|
||
|
# be consider as correct, i.e. the ranking doesn't matter.
|
||
|
loss[np.logical_or(n_positives == 0, n_positives == n_labels)] = 0.
|
||
|
|
||
|
return np.average(loss, weights=sample_weight)
|
||
|
|
||
|
|
||
|
def _dcg_sample_scores(y_true, y_score, k=None,
|
||
|
log_base=2, ignore_ties=False):
|
||
|
"""Compute Discounted Cumulative Gain.
|
||
|
|
||
|
Sum the true scores ranked in the order induced by the predicted scores,
|
||
|
after applying a logarithmic discount.
|
||
|
|
||
|
This ranking metric yields a high value if true labels are ranked high by
|
||
|
``y_score``.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples, n_labels)
|
||
|
True targets of multilabel classification, or true scores of entities
|
||
|
to be ranked.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates, confidence values,
|
||
|
or non-thresholded measure of decisions (as returned by
|
||
|
"decision_function" on some classifiers).
|
||
|
|
||
|
k : int, default=None
|
||
|
Only consider the highest k scores in the ranking. If None, use all
|
||
|
outputs.
|
||
|
|
||
|
log_base : float, default=2
|
||
|
Base of the logarithm used for the discount. A low value means a
|
||
|
sharper discount (top results are more important).
|
||
|
|
||
|
ignore_ties : bool, default=False
|
||
|
Assume that there are no ties in y_score (which is likely to be the
|
||
|
case if y_score is continuous) for efficiency gains.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
discounted_cumulative_gain : ndarray of shape (n_samples,)
|
||
|
The DCG score for each sample.
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
ndcg_score : The Discounted Cumulative Gain divided by the Ideal Discounted
|
||
|
Cumulative Gain (the DCG obtained for a perfect ranking), in order to
|
||
|
have a score between 0 and 1.
|
||
|
"""
|
||
|
discount = 1 / (np.log(np.arange(y_true.shape[1]) + 2) / np.log(log_base))
|
||
|
if k is not None:
|
||
|
discount[k:] = 0
|
||
|
if ignore_ties:
|
||
|
ranking = np.argsort(y_score)[:, ::-1]
|
||
|
ranked = y_true[np.arange(ranking.shape[0])[:, np.newaxis], ranking]
|
||
|
cumulative_gains = discount.dot(ranked.T)
|
||
|
else:
|
||
|
discount_cumsum = np.cumsum(discount)
|
||
|
cumulative_gains = [_tie_averaged_dcg(y_t, y_s, discount_cumsum)
|
||
|
for y_t, y_s in zip(y_true, y_score)]
|
||
|
cumulative_gains = np.asarray(cumulative_gains)
|
||
|
return cumulative_gains
|
||
|
|
||
|
|
||
|
def _tie_averaged_dcg(y_true, y_score, discount_cumsum):
|
||
|
"""
|
||
|
Compute DCG by averaging over possible permutations of ties.
|
||
|
|
||
|
The gain (`y_true`) of an index falling inside a tied group (in the order
|
||
|
induced by `y_score`) is replaced by the average gain within this group.
|
||
|
The discounted gain for a tied group is then the average `y_true` within
|
||
|
this group times the sum of discounts of the corresponding ranks.
|
||
|
|
||
|
This amounts to averaging scores for all possible orderings of the tied
|
||
|
groups.
|
||
|
|
||
|
(note in the case of dcg@k the discount is 0 after index k)
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray
|
||
|
The true relevance scores.
|
||
|
|
||
|
y_score : ndarray
|
||
|
Predicted scores.
|
||
|
|
||
|
discount_cumsum : ndarray
|
||
|
Precomputed cumulative sum of the discounts.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
discounted_cumulative_gain : float
|
||
|
The discounted cumulative gain.
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
McSherry, F., & Najork, M. (2008, March). Computing information retrieval
|
||
|
performance measures efficiently in the presence of tied scores. In
|
||
|
European conference on information retrieval (pp. 414-421). Springer,
|
||
|
Berlin, Heidelberg.
|
||
|
"""
|
||
|
_, inv, counts = np.unique(
|
||
|
- y_score, return_inverse=True, return_counts=True)
|
||
|
ranked = np.zeros(len(counts))
|
||
|
np.add.at(ranked, inv, y_true)
|
||
|
ranked /= counts
|
||
|
groups = np.cumsum(counts) - 1
|
||
|
discount_sums = np.empty(len(counts))
|
||
|
discount_sums[0] = discount_cumsum[groups[0]]
|
||
|
discount_sums[1:] = np.diff(discount_cumsum[groups])
|
||
|
return (ranked * discount_sums).sum()
|
||
|
|
||
|
|
||
|
def _check_dcg_target_type(y_true):
|
||
|
y_type = type_of_target(y_true)
|
||
|
supported_fmt = ("multilabel-indicator", "continuous-multioutput",
|
||
|
"multiclass-multioutput")
|
||
|
if y_type not in supported_fmt:
|
||
|
raise ValueError(
|
||
|
"Only {} formats are supported. Got {} instead".format(
|
||
|
supported_fmt, y_type))
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def dcg_score(y_true, y_score, *, k=None,
|
||
|
log_base=2, sample_weight=None, ignore_ties=False):
|
||
|
"""Compute Discounted Cumulative Gain.
|
||
|
|
||
|
Sum the true scores ranked in the order induced by the predicted scores,
|
||
|
after applying a logarithmic discount.
|
||
|
|
||
|
This ranking metric yields a high value if true labels are ranked high by
|
||
|
``y_score``.
|
||
|
|
||
|
Usually the Normalized Discounted Cumulative Gain (NDCG, computed by
|
||
|
ndcg_score) is preferred.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples, n_labels)
|
||
|
True targets of multilabel classification, or true scores of entities
|
||
|
to be ranked.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates, confidence values,
|
||
|
or non-thresholded measure of decisions (as returned by
|
||
|
"decision_function" on some classifiers).
|
||
|
|
||
|
k : int, default=None
|
||
|
Only consider the highest k scores in the ranking. If None, use all
|
||
|
outputs.
|
||
|
|
||
|
log_base : float, default=2
|
||
|
Base of the logarithm used for the discount. A low value means a
|
||
|
sharper discount (top results are more important).
|
||
|
|
||
|
sample_weight : ndarray of shape (n_samples,), default=None
|
||
|
Sample weights. If None, all samples are given the same weight.
|
||
|
|
||
|
ignore_ties : bool, default=False
|
||
|
Assume that there are no ties in y_score (which is likely to be the
|
||
|
case if y_score is continuous) for efficiency gains.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
discounted_cumulative_gain : float
|
||
|
The averaged sample DCG scores.
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
ndcg_score : The Discounted Cumulative Gain divided by the Ideal Discounted
|
||
|
Cumulative Gain (the DCG obtained for a perfect ranking), in order to
|
||
|
have a score between 0 and 1.
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
`Wikipedia entry for Discounted Cumulative Gain
|
||
|
<https://en.wikipedia.org/wiki/Discounted_cumulative_gain>`_.
|
||
|
|
||
|
Jarvelin, K., & Kekalainen, J. (2002).
|
||
|
Cumulated gain-based evaluation of IR techniques. ACM Transactions on
|
||
|
Information Systems (TOIS), 20(4), 422-446.
|
||
|
|
||
|
Wang, Y., Wang, L., Li, Y., He, D., Chen, W., & Liu, T. Y. (2013, May).
|
||
|
A theoretical analysis of NDCG ranking measures. In Proceedings of the 26th
|
||
|
Annual Conference on Learning Theory (COLT 2013).
|
||
|
|
||
|
McSherry, F., & Najork, M. (2008, March). Computing information retrieval
|
||
|
performance measures efficiently in the presence of tied scores. In
|
||
|
European conference on information retrieval (pp. 414-421). Springer,
|
||
|
Berlin, Heidelberg.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> from sklearn.metrics import dcg_score
|
||
|
>>> # we have groud-truth relevance of some answers to a query:
|
||
|
>>> true_relevance = np.asarray([[10, 0, 0, 1, 5]])
|
||
|
>>> # we predict scores for the answers
|
||
|
>>> scores = np.asarray([[.1, .2, .3, 4, 70]])
|
||
|
>>> dcg_score(true_relevance, scores)
|
||
|
9.49...
|
||
|
>>> # we can set k to truncate the sum; only top k answers contribute
|
||
|
>>> dcg_score(true_relevance, scores, k=2)
|
||
|
5.63...
|
||
|
>>> # now we have some ties in our prediction
|
||
|
>>> scores = np.asarray([[1, 0, 0, 0, 1]])
|
||
|
>>> # by default ties are averaged, so here we get the average true
|
||
|
>>> # relevance of our top predictions: (10 + 5) / 2 = 7.5
|
||
|
>>> dcg_score(true_relevance, scores, k=1)
|
||
|
7.5
|
||
|
>>> # we can choose to ignore ties for faster results, but only
|
||
|
>>> # if we know there aren't ties in our scores, otherwise we get
|
||
|
>>> # wrong results:
|
||
|
>>> dcg_score(true_relevance,
|
||
|
... scores, k=1, ignore_ties=True)
|
||
|
5.0
|
||
|
|
||
|
"""
|
||
|
y_true = check_array(y_true, ensure_2d=False)
|
||
|
y_score = check_array(y_score, ensure_2d=False)
|
||
|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
_check_dcg_target_type(y_true)
|
||
|
return np.average(
|
||
|
_dcg_sample_scores(
|
||
|
y_true, y_score, k=k, log_base=log_base,
|
||
|
ignore_ties=ignore_ties),
|
||
|
weights=sample_weight)
|
||
|
|
||
|
|
||
|
def _ndcg_sample_scores(y_true, y_score, k=None, ignore_ties=False):
|
||
|
"""Compute Normalized Discounted Cumulative Gain.
|
||
|
|
||
|
Sum the true scores ranked in the order induced by the predicted scores,
|
||
|
after applying a logarithmic discount. Then divide by the best possible
|
||
|
score (Ideal DCG, obtained for a perfect ranking) to obtain a score between
|
||
|
0 and 1.
|
||
|
|
||
|
This ranking metric yields a high value if true labels are ranked high by
|
||
|
``y_score``.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples, n_labels)
|
||
|
True targets of multilabel classification, or true scores of entities
|
||
|
to be ranked.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates, confidence values,
|
||
|
or non-thresholded measure of decisions (as returned by
|
||
|
"decision_function" on some classifiers).
|
||
|
|
||
|
k : int, default=None
|
||
|
Only consider the highest k scores in the ranking. If None, use all
|
||
|
outputs.
|
||
|
|
||
|
ignore_ties : bool, default=False
|
||
|
Assume that there are no ties in y_score (which is likely to be the
|
||
|
case if y_score is continuous) for efficiency gains.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
normalized_discounted_cumulative_gain : ndarray of shape (n_samples,)
|
||
|
The NDCG score for each sample (float in [0., 1.]).
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
dcg_score : Discounted Cumulative Gain (not normalized).
|
||
|
|
||
|
"""
|
||
|
gain = _dcg_sample_scores(y_true, y_score, k, ignore_ties=ignore_ties)
|
||
|
# Here we use the order induced by y_true so we can ignore ties since
|
||
|
# the gain associated to tied indices is the same (permuting ties doesn't
|
||
|
# change the value of the re-ordered y_true)
|
||
|
normalizing_gain = _dcg_sample_scores(y_true, y_true, k, ignore_ties=True)
|
||
|
all_irrelevant = normalizing_gain == 0
|
||
|
gain[all_irrelevant] = 0
|
||
|
gain[~all_irrelevant] /= normalizing_gain[~all_irrelevant]
|
||
|
return gain
|
||
|
|
||
|
|
||
|
@_deprecate_positional_args
|
||
|
def ndcg_score(y_true, y_score, *, k=None, sample_weight=None,
|
||
|
ignore_ties=False):
|
||
|
"""Compute Normalized Discounted Cumulative Gain.
|
||
|
|
||
|
Sum the true scores ranked in the order induced by the predicted scores,
|
||
|
after applying a logarithmic discount. Then divide by the best possible
|
||
|
score (Ideal DCG, obtained for a perfect ranking) to obtain a score between
|
||
|
0 and 1.
|
||
|
|
||
|
This ranking metric yields a high value if true labels are ranked high by
|
||
|
``y_score``.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : ndarray of shape (n_samples, n_labels)
|
||
|
True targets of multilabel classification, or true scores of entities
|
||
|
to be ranked.
|
||
|
|
||
|
y_score : ndarray of shape (n_samples, n_labels)
|
||
|
Target scores, can either be probability estimates, confidence values,
|
||
|
or non-thresholded measure of decisions (as returned by
|
||
|
"decision_function" on some classifiers).
|
||
|
|
||
|
k : int, default=None
|
||
|
Only consider the highest k scores in the ranking. If None, use all
|
||
|
outputs.
|
||
|
|
||
|
sample_weight : ndarray of shape (n_samples,), default=None
|
||
|
Sample weights. If None, all samples are given the same weight.
|
||
|
|
||
|
ignore_ties : bool, default=False
|
||
|
Assume that there are no ties in y_score (which is likely to be the
|
||
|
case if y_score is continuous) for efficiency gains.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
normalized_discounted_cumulative_gain : float in [0., 1.]
|
||
|
The averaged NDCG scores for all samples.
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
dcg_score : Discounted Cumulative Gain (not normalized).
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
`Wikipedia entry for Discounted Cumulative Gain
|
||
|
<https://en.wikipedia.org/wiki/Discounted_cumulative_gain>`_
|
||
|
|
||
|
Jarvelin, K., & Kekalainen, J. (2002).
|
||
|
Cumulated gain-based evaluation of IR techniques. ACM Transactions on
|
||
|
Information Systems (TOIS), 20(4), 422-446.
|
||
|
|
||
|
Wang, Y., Wang, L., Li, Y., He, D., Chen, W., & Liu, T. Y. (2013, May).
|
||
|
A theoretical analysis of NDCG ranking measures. In Proceedings of the 26th
|
||
|
Annual Conference on Learning Theory (COLT 2013)
|
||
|
|
||
|
McSherry, F., & Najork, M. (2008, March). Computing information retrieval
|
||
|
performance measures efficiently in the presence of tied scores. In
|
||
|
European conference on information retrieval (pp. 414-421). Springer,
|
||
|
Berlin, Heidelberg.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> from sklearn.metrics import ndcg_score
|
||
|
>>> # we have groud-truth relevance of some answers to a query:
|
||
|
>>> true_relevance = np.asarray([[10, 0, 0, 1, 5]])
|
||
|
>>> # we predict some scores (relevance) for the answers
|
||
|
>>> scores = np.asarray([[.1, .2, .3, 4, 70]])
|
||
|
>>> ndcg_score(true_relevance, scores)
|
||
|
0.69...
|
||
|
>>> scores = np.asarray([[.05, 1.1, 1., .5, .0]])
|
||
|
>>> ndcg_score(true_relevance, scores)
|
||
|
0.49...
|
||
|
>>> # we can set k to truncate the sum; only top k answers contribute.
|
||
|
>>> ndcg_score(true_relevance, scores, k=4)
|
||
|
0.35...
|
||
|
>>> # the normalization takes k into account so a perfect answer
|
||
|
>>> # would still get 1.0
|
||
|
>>> ndcg_score(true_relevance, true_relevance, k=4)
|
||
|
1.0
|
||
|
>>> # now we have some ties in our prediction
|
||
|
>>> scores = np.asarray([[1, 0, 0, 0, 1]])
|
||
|
>>> # by default ties are averaged, so here we get the average (normalized)
|
||
|
>>> # true relevance of our top predictions: (10 / 10 + 5 / 10) / 2 = .75
|
||
|
>>> ndcg_score(true_relevance, scores, k=1)
|
||
|
0.75
|
||
|
>>> # we can choose to ignore ties for faster results, but only
|
||
|
>>> # if we know there aren't ties in our scores, otherwise we get
|
||
|
>>> # wrong results:
|
||
|
>>> ndcg_score(true_relevance,
|
||
|
... scores, k=1, ignore_ties=True)
|
||
|
0.5
|
||
|
|
||
|
"""
|
||
|
y_true = check_array(y_true, ensure_2d=False)
|
||
|
y_score = check_array(y_score, ensure_2d=False)
|
||
|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
_check_dcg_target_type(y_true)
|
||
|
gain = _ndcg_sample_scores(y_true, y_score, k=k, ignore_ties=ignore_ties)
|
||
|
return np.average(gain, weights=sample_weight)
|
||
|
|
||
|
|
||
|
def top_k_accuracy_score(y_true, y_score, *, k=2, normalize=True,
|
||
|
sample_weight=None, labels=None):
|
||
|
"""Top-k Accuracy classification score.
|
||
|
|
||
|
This metric computes the number of times where the correct label is among
|
||
|
the top `k` labels predicted (ranked by predicted scores). Note that the
|
||
|
multilabel case isn't covered here.
|
||
|
|
||
|
Read more in the :ref:`User Guide <top_k_accuracy_score>`
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
y_true : array-like of shape (n_samples,)
|
||
|
True labels.
|
||
|
|
||
|
y_score : array-like of shape (n_samples,) or (n_samples, n_classes)
|
||
|
Target scores. These can be either probability estimates or
|
||
|
non-thresholded decision values (as returned by
|
||
|
:term:`decision_function` on some classifiers). The binary case expects
|
||
|
scores with shape (n_samples,) while the multiclass case expects scores
|
||
|
with shape (n_samples, n_classes). In the multiclass case, the order of
|
||
|
the class scores must correspond to the order of ``labels``, if
|
||
|
provided, or else to the numerical or lexicographical order of the
|
||
|
labels in ``y_true``.
|
||
|
|
||
|
k : int, default=2
|
||
|
Number of most likely outcomes considered to find the correct label.
|
||
|
|
||
|
normalize : bool, default=True
|
||
|
If `True`, return the fraction of correctly classified samples.
|
||
|
Otherwise, return the number of correctly classified samples.
|
||
|
|
||
|
sample_weight : array-like of shape (n_samples,), default=None
|
||
|
Sample weights. If `None`, all samples are given the same weight.
|
||
|
|
||
|
labels : array-like of shape (n_classes,), default=None
|
||
|
Multiclass only. List of labels that index the classes in ``y_score``.
|
||
|
If ``None``, the numerical or lexicographical order of the labels in
|
||
|
``y_true`` is used.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
score : float
|
||
|
The top-k accuracy score. The best performance is 1 with
|
||
|
`normalize == True` and the number of samples with
|
||
|
`normalize == False`.
|
||
|
|
||
|
See also
|
||
|
--------
|
||
|
accuracy_score
|
||
|
|
||
|
Notes
|
||
|
-----
|
||
|
In cases where two or more labels are assigned equal predicted scores,
|
||
|
the labels with the highest indices will be chosen first. This might
|
||
|
impact the result if the correct label falls after the threshold because
|
||
|
of that.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> import numpy as np
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>>> from sklearn.metrics import top_k_accuracy_score
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|
>>> y_true = np.array([0, 1, 2, 2])
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|
>>> y_score = np.array([[0.5, 0.2, 0.2], # 0 is in top 2
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|
... [0.3, 0.4, 0.2], # 1 is in top 2
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|
... [0.2, 0.4, 0.3], # 2 is in top 2
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|
... [0.7, 0.2, 0.1]]) # 2 isn't in top 2
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|
>>> top_k_accuracy_score(y_true, y_score, k=2)
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|
0.75
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|
>>> # Not normalizing gives the number of "correctly" classified samples
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|
>>> top_k_accuracy_score(y_true, y_score, k=2, normalize=False)
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|
3
|
||
|
|
||
|
"""
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|
y_true = check_array(y_true, ensure_2d=False, dtype=None)
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|
y_true = column_or_1d(y_true)
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|
y_type = type_of_target(y_true)
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|
if y_type == "binary" and labels is not None and len(labels) > 2:
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|
y_type = "multiclass"
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|
y_score = check_array(y_score, ensure_2d=False)
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|
y_score = column_or_1d(y_score) if y_type == 'binary' else y_score
|
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|
check_consistent_length(y_true, y_score, sample_weight)
|
||
|
|
||
|
if y_type not in {'binary', 'multiclass'}:
|
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|
raise ValueError(
|
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|
f"y type must be 'binary' or 'multiclass', got '{y_type}' instead."
|
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|
)
|
||
|
|
||
|
y_score_n_classes = y_score.shape[1] if y_score.ndim == 2 else 2
|
||
|
|
||
|
if labels is None:
|
||
|
classes = _unique(y_true)
|
||
|
n_classes = len(classes)
|
||
|
|
||
|
if n_classes != y_score_n_classes:
|
||
|
raise ValueError(
|
||
|
f"Number of classes in 'y_true' ({n_classes}) not equal "
|
||
|
f"to the number of classes in 'y_score' ({y_score_n_classes})."
|
||
|
)
|
||
|
else:
|
||
|
labels = column_or_1d(labels)
|
||
|
classes = _unique(labels)
|
||
|
n_labels = len(labels)
|
||
|
n_classes = len(classes)
|
||
|
|
||
|
if n_classes != n_labels:
|
||
|
raise ValueError("Parameter 'labels' must be unique.")
|
||
|
|
||
|
if not np.array_equal(classes, labels):
|
||
|
raise ValueError("Parameter 'labels' must be ordered.")
|
||
|
|
||
|
if n_classes != y_score_n_classes:
|
||
|
raise ValueError(
|
||
|
f"Number of given labels ({n_classes}) not equal to the "
|
||
|
f"number of classes in 'y_score' ({y_score_n_classes})."
|
||
|
)
|
||
|
|
||
|
if len(np.setdiff1d(y_true, classes)):
|
||
|
raise ValueError(
|
||
|
"'y_true' contains labels not in parameter 'labels'."
|
||
|
)
|
||
|
|
||
|
if k >= n_classes:
|
||
|
warnings.warn(
|
||
|
f"'k' ({k}) greater than or equal to 'n_classes' ({n_classes}) "
|
||
|
"will result in a perfect score and is therefore meaningless.",
|
||
|
UndefinedMetricWarning
|
||
|
)
|
||
|
|
||
|
y_true_encoded = _encode(y_true, uniques=classes)
|
||
|
|
||
|
if y_type == 'binary':
|
||
|
if k == 1:
|
||
|
threshold = .5 if y_score.min() >= 0 and y_score.max() <= 1 else 0
|
||
|
y_pred = (y_score > threshold).astype(np.int64)
|
||
|
hits = y_pred == y_true_encoded
|
||
|
else:
|
||
|
hits = np.ones_like(y_score, dtype=np.bool_)
|
||
|
elif y_type == 'multiclass':
|
||
|
sorted_pred = np.argsort(y_score, axis=1, kind='mergesort')[:, ::-1]
|
||
|
hits = (y_true_encoded == sorted_pred[:, :k].T).any(axis=0)
|
||
|
|
||
|
if normalize:
|
||
|
return np.average(hits, weights=sample_weight)
|
||
|
elif sample_weight is None:
|
||
|
return np.sum(hits)
|
||
|
else:
|
||
|
return np.dot(hits, sample_weight)
|