custom_metric
Custom metric function
Description
Custom metric function
Usage
custom_metric(name, metric_fn)
Arguments
Arguments | Description |
---|---|
name | name used to show training progress output |
metric_fn | An R function with signature function(y_true, y_pred){} that accepts tensors. |
Details
You can provide an arbitrary R function as a custom metric. Note that the y_true
and y_pred
parameters are tensors, so computations on them should use backend tensor functions. Use the custom_metric()
function to define a custom metric. Note that a name (‘mean_pred’) is provided for the custom metric function: this name is used within training progress output. If you want to save and load a model with custom metrics, you should also specify the metric in the call the load_model_hdf5()
. For example: load_model_hdf5("my_model.h5", c('mean_pred' = metric_mean_pred))
. Alternatively, you can wrap all of your code in a call to with_custom_object_scope()
which will allow you to refer to the metric by name just like you do with built in keras metrics. Documentation on the available backend tensor functions can be found at https://keras.rstudio.com/articles/backend.html#backend-functions. Alternative ways of supplying custom metrics:
custom_metric():
Arbitrary R function.metric_mean_wrapper()
: Wrap an arbitrary R function in aMetric
instance.subclass
keras$metrics$Metric
: see?Metric
for example.
See Also
Other metrics: metric_accuracy()
, metric_auc()
, metric_binary_accuracy()
, metric_binary_crossentropy()
, metric_categorical_accuracy()
, metric_categorical_crossentropy()
, metric_categorical_hinge()
, metric_cosine_similarity()
, metric_false_negatives()
, metric_false_positives()
, metric_hinge()
, metric_kullback_leibler_divergence()
, metric_logcosh_error()
, metric_mean_absolute_error()
, metric_mean_absolute_percentage_error()
, metric_mean_iou()
, metric_mean_relative_error()
, metric_mean_squared_error()
, metric_mean_squared_logarithmic_error()
, metric_mean_tensor()
, metric_mean_wrapper()
, metric_mean()
, metric_poisson()
, metric_precision_at_recall()
, metric_precision()
, metric_recall_at_precision()
, metric_recall()
, 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()