Computes the categorical hinge metric between y_true and y_pred.
Source: R/metrics.R
metric_categorical_hinge.RdFormula:
loss <- maximum(neg - pos + 1, 0)where neg=maximum((1-y_true)*y_pred) and pos=sum(y_true*y_pred)
Arguments
- y_true
The ground truth values.
y_truevalues are expected to be either{-1, +1}or{0, 1}(i.e. a one-hot-encoded tensor) with shape =[batch_size, d0, .. dN].- y_pred
The predicted values with shape =
[batch_size, d0, .. dN].- ...
For forward/backward compatability.
- name
(Optional) string name of the metric instance.
- dtype
(Optional) data type of the metric result.
Usage
Standalone usage:
m <- metric_categorical_hinge()
m$update_state(rbind(c(0, 1), c(0, 0)), rbind(c(0.6, 0.4), c(0.4, 0.6)))
m$result()See also
Other losses: Loss() loss_binary_crossentropy() loss_binary_focal_crossentropy() loss_categorical_crossentropy() loss_categorical_focal_crossentropy() loss_categorical_hinge() loss_circle() loss_cosine_similarity() loss_ctc() loss_dice() loss_hinge() loss_huber() loss_kl_divergence() loss_log_cosh() loss_mean_absolute_error() loss_mean_absolute_percentage_error() loss_mean_squared_error() loss_mean_squared_logarithmic_error() loss_poisson() loss_sparse_categorical_crossentropy() loss_squared_hinge() loss_tversky() metric_binary_crossentropy() metric_binary_focal_crossentropy() metric_categorical_crossentropy() metric_categorical_focal_crossentropy() metric_hinge() metric_huber() metric_kl_divergence() metric_log_cosh() metric_mean_absolute_error() metric_mean_absolute_percentage_error() metric_mean_squared_error() metric_mean_squared_logarithmic_error() metric_poisson() metric_sparse_categorical_crossentropy() metric_squared_hinge()
Other metrics: Metric() custom_metric() metric_auc() metric_binary_accuracy() metric_binary_crossentropy() metric_binary_focal_crossentropy() metric_binary_iou() metric_categorical_accuracy() metric_categorical_crossentropy() metric_categorical_focal_crossentropy() metric_concordance_correlation() metric_cosine_similarity() metric_f1_score() metric_false_negatives() metric_false_positives() metric_fbeta_score() metric_hinge() metric_huber() metric_iou() metric_kl_divergence() metric_log_cosh() metric_log_cosh_error() metric_mean() metric_mean_absolute_error() metric_mean_absolute_percentage_error() metric_mean_iou() metric_mean_squared_error() metric_mean_squared_logarithmic_error() metric_mean_wrapper() metric_one_hot_iou() metric_one_hot_mean_iou() metric_pearson_correlation() metric_poisson() metric_precision() metric_precision_at_recall() metric_r2_score() metric_recall() metric_recall_at_precision() metric_root_mean_squared_error() metric_sensitivity_at_specificity() metric_sparse_categorical_accuracy() metric_sparse_categorical_crossentropy() metric_sparse_top_k_categorical_accuracy() metric_specificity_at_sensitivity() metric_squared_hinge() metric_sum() metric_top_k_categorical_accuracy() metric_true_negatives() metric_true_positives()
Other hinge metrics: metric_hinge() metric_squared_hinge()