fann_train
(PECL fann >= 1.0.0)
fann_train — Train one iteration with a set of inputs, and a set of desired outputs
Description
$ann
, array $input
, array $desired_output
) : boolTrain one iteration with a set of inputs, and a set of desired outputs. This training is always incremental training, since only one pattern is presented.
Parameters
-
ann
-
Neural network resource.
-
input
-
An array of inputs. This array must be exactly fann_get_num_input() long.
-
desired_output
-
An array of desired outputs. This array must be exactly fann_get_num_output() long.
See Also
- fann_train_on_data() - Trains on an entire dataset for a period of time
- fann_train_epoch() - Train one epoch with a set of training data
- fann_get_num_input() - Get the number of input neurons
- fann_get_num_output() - Get the number of output neurons
English translation
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Document created the 30/01/2003, last modified the 26/10/2018
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