sklearn.metrics.log_loss(y_true, y_pred, eps=1e-15, normalize=True, sample_weight=None, labels=None)
[source]
Log loss, aka logistic loss or cross-entropy loss.
This is the loss function used in (multinomial) logistic regression and extensions of it such as neural networks, defined as the negative log-likelihood of the true labels given a probabilistic classifier’s predictions. The log loss is only defined for two or more labels. For a single sample with true label yt in {0,1} and estimated probability yp that yt = 1, the log loss is
-log P(yt|yp) = -(yt log(yp) + (1 - yt) log(1 - yp))Read more in the User Guide.
Parameters: |
y_true : array-like or label indicator matrix Ground truth (correct) labels for n_samples samples. y_pred : array-like of float, shape = (n_samples, n_classes) or (n_samples,) Predicted probabilities, as returned by a classifier’s predict_proba method. If eps : float Log loss is undefined for p=0 or p=1, so probabilities are clipped to max(eps, min(1 - eps, p)). normalize : bool, optional (default=True) If true, return the mean loss per sample. Otherwise, return the sum of the per-sample losses. sample_weight : array-like of shape = [n_samples], optional Sample weights. labels : array-like, optional (default=None) If not provided, labels will be inferred from y_true. If |
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Returns: |
loss : float |
The logarithm used is the natural logarithm (base-e).
C.M. Bishop (2006). Pattern Recognition and Machine Learning. Springer, p. 209.
>>> log_loss(["spam", "ham", "ham", "spam"], ... [[.1, .9], [.9, .1], [.8, .2], [.35, .65]]) 0.21616...
sklearn.metrics.log_loss
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http://scikit-learn.org/stable/modules/generated/sklearn.metrics.log_loss.html