/* Fast Artificial Neural Network Library (fann) Copyright (C) 2003-2012 Steffen Nissen (sn@leenissen.dk) This library is free software; you can redistribute it and/or modify it under the terms of the GNU Lesser General Public License as published by the Free Software Foundation; either version 2.1 of the License, or (at your option) any later version. This library is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License for more details. You should have received a copy of the GNU Lesser General Public License along with this library; if not, write to the Free Software Foundation, Inc., 59 Temple Place, Suite 330, Boston, MA 02111-1307 USA */ #ifndef __fann_train_h__ #define __fann_train_h__ /* Section: FANN Training There are many different ways of training neural networks and the FANN library supports a number of different approaches. Two fundementally different approaches are the most commonly used: Fixed topology training - The size and topology of the ANN is determined in advance and the training alters the weights in order to minimize the difference between the desired output values and the actual output values. This kind of training is supported by . Evolving topology training - The training start out with an empty ANN, only consisting of input and output neurons. Hidden neurons and connections is the added during training, in order to reach the same goal as for fixed topology training. This kind of training is supported by . */ /* Struct: struct fann_train_data Structure used to store data, for use with training. The data inside this structure should never be manipulated directly, but should use some of the supplied functions in . The training data structure is very usefull for storing data during training and testing of a neural network. See also: , , */ struct fann_train_data { enum fann_errno_enum errno_f; FILE *error_log; char *errstr; unsigned int num_data; unsigned int num_input; unsigned int num_output; fann_type **input; fann_type **output; }; /* Section: FANN Training */ /* Group: Training */ #ifndef FIXEDFANN /* Function: fann_train Train one iteration with a set of inputs, and a set of desired outputs. This training is always incremental training (see ), since only one pattern is presented. Parameters: ann - The neural network structure input - an array of inputs. This array must be exactly long. desired_output - an array of desired outputs. This array must be exactly long. See also: , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_train(struct fann *ann, fann_type * input, fann_type * desired_output); #endif /* NOT FIXEDFANN */ /* Function: fann_test Test with a set of inputs, and a set of desired outputs. This operation updates the mean square error, but does not change the network in any way. See also: , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL fann_type * FANN_API fann_test(struct fann *ann, fann_type * input, fann_type * desired_output); /* Function: fann_get_MSE Reads the mean square error from the network. Reads the mean square error from the network. This value is calculated during training or testing, and can therefore sometimes be a bit off if the weights have been changed since the last calculation of the value. See also: This function appears in FANN >= 1.1.0. */ FANN_EXTERNAL float FANN_API fann_get_MSE(struct fann *ann); /* Function: fann_get_bit_fail The number of fail bits; means the number of output neurons which differ more than the bit fail limit (see , ). The bits are counted in all of the training data, so this number can be higher than the number of training data. This value is reset by and updated by all the same functions which also updates the MSE value (e.g. , ) See also: , This function appears in FANN >= 2.0.0 */ FANN_EXTERNAL unsigned int FANN_API fann_get_bit_fail(struct fann *ann); /* Function: fann_reset_MSE Resets the mean square error from the network. This function also resets the number of bits that fail. See also: , This function appears in FANN >= 1.1.0 */ FANN_EXTERNAL void FANN_API fann_reset_MSE(struct fann *ann); /* Group: Training Data Training */ #ifndef FIXEDFANN /* Function: fann_train_on_data Trains on an entire dataset, for a period of time. This training uses the training algorithm chosen by , and the parameters set for these training algorithms. Parameters: ann - The neural network data - The data, which should be used during training max_epochs - The maximum number of epochs the training should continue epochs_between_reports - The number of epochs between printing a status report to stdout. A value of zero means no reports should be printed. desired_error - The desired or , depending on which stop function is chosen by . Instead of printing out reports every epochs_between_reports, a callback function can be called (see ). See also: , , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_train_on_data(struct fann *ann, struct fann_train_data *data, unsigned int max_epochs, unsigned int epochs_between_reports, float desired_error); /* Function: fann_train_on_file Does the same as , but reads the training data directly from a file. See also: This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_train_on_file(struct fann *ann, const char *filename, unsigned int max_epochs, unsigned int epochs_between_reports, float desired_error); /* Function: fann_train_epoch Train one epoch with a set of training data. Train one epoch with the training data stored in data. One epoch is where all of the training data is considered exactly once. This function returns the MSE error as it is calculated either before or during the actual training. This is not the actual MSE after the training epoch, but since calculating this will require to go through the entire training set once more, it is more than adequate to use this value during training. The training algorithm used by this function is chosen by the function. See also: , This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_train_epoch(struct fann *ann, struct fann_train_data *data); #endif /* NOT FIXEDFANN */ /* Function: fann_test_data Test a set of training data and calculates the MSE for the training data. This function updates the MSE and the bit fail values. See also: , , This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_test_data(struct fann *ann, struct fann_train_data *data); /* Group: Training Data Manipulation */ /* Function: fann_read_train_from_file Reads a file that stores training data. The file must be formatted like: >num_train_data num_input num_output >inputdata seperated by space >outputdata seperated by space > >. >. >. > >inputdata seperated by space >outputdata seperated by space See also: , , This function appears in FANN >= 1.0.0 */ FANN_EXTERNAL struct fann_train_data *FANN_API fann_read_train_from_file(const char *filename); /* Function: fann_create_train Creates an empty training data struct. See also: , , , This function appears in FANN >= 2.2.0 */ FANN_EXTERNAL struct fann_train_data * FANN_API fann_create_train(unsigned int num_data, unsigned int num_input, unsigned int num_output); /* Function: fann_create_train_from_callback Creates the training data struct from a user supplied function. As the training data are numerable (data 1, data 2...), the user must write a function that receives the number of the training data set (input,output) and returns the set. Parameters: num_data - The number of training data num_input - The number of inputs per training data num_output - The number of ouputs per training data user_function - The user suplied function Parameters for the user function: num - The number of the training data set num_input - The number of inputs per training data num_output - The number of ouputs per training data input - The set of inputs output - The set of desired outputs See also: , , , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL struct fann_train_data * FANN_API fann_create_train_from_callback(unsigned int num_data, unsigned int num_input, unsigned int num_output, void (FANN_API *user_function)( unsigned int, unsigned int, unsigned int, fann_type * , fann_type * )); /* Function: fann_destroy_train Destructs the training data and properly deallocates all of the associated data. Be sure to call this function after finished using the training data. This function appears in FANN >= 1.0.0 */ FANN_EXTERNAL void FANN_API fann_destroy_train(struct fann_train_data *train_data); /* Function: fann_shuffle_train_data Shuffles training data, randomizing the order. This is recommended for incremental training, while it have no influence during batch training. This function appears in FANN >= 1.1.0. */ FANN_EXTERNAL void FANN_API fann_shuffle_train_data(struct fann_train_data *train_data); #ifndef FIXEDFANN /* Function: fann_scale_train Scale input and output data based on previously calculated parameters. Parameters: ann - ann for which were calculated trained parameters before data - training data that needs to be scaled See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL void FANN_API fann_scale_train( struct fann *ann, struct fann_train_data *data ); /* Function: fann_descale_train Descale input and output data based on previously calculated parameters. Parameters: ann - ann for which were calculated trained parameters before data - training data that needs to be descaled See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL void FANN_API fann_descale_train( struct fann *ann, struct fann_train_data *data ); /* Function: fann_set_input_scaling_params Calculate input scaling parameters for future use based on training data. Parameters: ann - ann for wgich parameters needs to be calculated data - training data that will be used to calculate scaling parameters new_input_min - desired lower bound in input data after scaling (not strictly followed) new_input_max - desired upper bound in input data after scaling (not strictly followed) See also: This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL int FANN_API fann_set_input_scaling_params( struct fann *ann, const struct fann_train_data *data, float new_input_min, float new_input_max); /* Function: fann_set_output_scaling_params Calculate output scaling parameters for future use based on training data. Parameters: ann - ann for wgich parameters needs to be calculated data - training data that will be used to calculate scaling parameters new_output_min - desired lower bound in input data after scaling (not strictly followed) new_output_max - desired upper bound in input data after scaling (not strictly followed) See also: This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL int FANN_API fann_set_output_scaling_params( struct fann *ann, const struct fann_train_data *data, float new_output_min, float new_output_max); /* Function: fann_set_scaling_params Calculate input and output scaling parameters for future use based on training data. Parameters: ann - ann for wgich parameters needs to be calculated data - training data that will be used to calculate scaling parameters new_input_min - desired lower bound in input data after scaling (not strictly followed) new_input_max - desired upper bound in input data after scaling (not strictly followed) new_output_min - desired lower bound in input data after scaling (not strictly followed) new_output_max - desired upper bound in input data after scaling (not strictly followed) See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL int FANN_API fann_set_scaling_params( struct fann *ann, const struct fann_train_data *data, float new_input_min, float new_input_max, float new_output_min, float new_output_max); /* Function: fann_clear_scaling_params Clears scaling parameters. Parameters: ann - ann for which to clear scaling parameters This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL int FANN_API fann_clear_scaling_params(struct fann *ann); /* Function: fann_scale_input Scale data in input vector before feed it to ann based on previously calculated parameters. Parameters: ann - for which scaling parameters were calculated input_vector - input vector that will be scaled See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL void FANN_API fann_scale_input( struct fann *ann, fann_type *input_vector ); /* Function: fann_scale_output Scale data in output vector before feed it to ann based on previously calculated parameters. Parameters: ann - for which scaling parameters were calculated output_vector - output vector that will be scaled See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL void FANN_API fann_scale_output( struct fann *ann, fann_type *output_vector ); /* Function: fann_descale_input Scale data in input vector after get it from ann based on previously calculated parameters. Parameters: ann - for which scaling parameters were calculated input_vector - input vector that will be descaled See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL void FANN_API fann_descale_input( struct fann *ann, fann_type *input_vector ); /* Function: fann_descale_output Scale data in output vector after get it from ann based on previously calculated parameters. Parameters: ann - for which scaling parameters were calculated output_vector - output vector that will be descaled See also: , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL void FANN_API fann_descale_output( struct fann *ann, fann_type *output_vector ); #endif /* Function: fann_scale_input_train_data Scales the inputs in the training data to the specified range. See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_scale_input_train_data(struct fann_train_data *train_data, fann_type new_min, fann_type new_max); /* Function: fann_scale_output_train_data Scales the outputs in the training data to the specified range. See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_scale_output_train_data(struct fann_train_data *train_data, fann_type new_min, fann_type new_max); /* Function: fann_scale_train_data Scales the inputs and outputs in the training data to the specified range. See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_scale_train_data(struct fann_train_data *train_data, fann_type new_min, fann_type new_max); /* Function: fann_merge_train_data Merges the data from *data1* and *data2* into a new . This function appears in FANN >= 1.1.0. */ FANN_EXTERNAL struct fann_train_data *FANN_API fann_merge_train_data(struct fann_train_data *data1, struct fann_train_data *data2); /* Function: fann_duplicate_train_data Returns an exact copy of a . This function appears in FANN >= 1.1.0. */ FANN_EXTERNAL struct fann_train_data *FANN_API fann_duplicate_train_data(struct fann_train_data *data); /* Function: fann_subset_train_data Returns an copy of a subset of the , starting at position *pos* and *length* elements forward. >fann_subset_train_data(train_data, 0, fann_length_train_data(train_data)) Will do the same as . See also: This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL struct fann_train_data *FANN_API fann_subset_train_data(struct fann_train_data *data, unsigned int pos, unsigned int length); /* Function: fann_length_train_data Returns the number of training patterns in the . This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL unsigned int FANN_API fann_length_train_data(struct fann_train_data *data); /* Function: fann_num_input_train_data Returns the number of inputs in each of the training patterns in the . See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL unsigned int FANN_API fann_num_input_train_data(struct fann_train_data *data); /* Function: fann_num_output_train_data Returns the number of outputs in each of the training patterns in the . See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL unsigned int FANN_API fann_num_output_train_data(struct fann_train_data *data); /* Function: fann_save_train Save the training structure to a file, with the format as specified in Return: The function returns 0 on success and -1 on failure. See also: , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL int FANN_API fann_save_train(struct fann_train_data *data, const char *filename); /* Function: fann_save_train_to_fixed Saves the training structure to a fixed point data file. This function is very usefull for testing the quality of a fixed point network. Return: The function returns 0 on success and -1 on failure. See also: This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL int FANN_API fann_save_train_to_fixed(struct fann_train_data *data, const char *filename, unsigned int decimal_point); /* Group: Parameters */ /* Function: fann_get_training_algorithm Return the training algorithm as described by . This training algorithm is used by and associated functions. Note that this algorithm is also used during , although only FANN_TRAIN_RPROP and FANN_TRAIN_QUICKPROP is allowed during cascade training. The default training algorithm is FANN_TRAIN_RPROP. See also: , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL enum fann_train_enum FANN_API fann_get_training_algorithm(struct fann *ann); /* Function: fann_set_training_algorithm Set the training algorithm. More info available in This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_set_training_algorithm(struct fann *ann, enum fann_train_enum training_algorithm); /* Function: fann_get_learning_rate Return the learning rate. The learning rate is used to determine how aggressive training should be for some of the training algorithms (FANN_TRAIN_INCREMENTAL, FANN_TRAIN_BATCH, FANN_TRAIN_QUICKPROP). Do however note that it is not used in FANN_TRAIN_RPROP. The default learning rate is 0.7. See also: , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL float FANN_API fann_get_learning_rate(struct fann *ann); /* Function: fann_set_learning_rate Set the learning rate. More info available in This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_set_learning_rate(struct fann *ann, float learning_rate); /* Function: fann_get_learning_momentum Get the learning momentum. The learning momentum can be used to speed up FANN_TRAIN_INCREMENTAL training. A too high momentum will however not benefit training. Setting momentum to 0 will be the same as not using the momentum parameter. The recommended value of this parameter is between 0.0 and 1.0. The default momentum is 0. See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL float FANN_API fann_get_learning_momentum(struct fann *ann); /* Function: fann_set_learning_momentum Set the learning momentum. More info available in This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_learning_momentum(struct fann *ann, float learning_momentum); /* Function: fann_get_activation_function Get the activation function for neuron number *neuron* in layer number *layer*, counting the input layer as layer 0. It is not possible to get activation functions for the neurons in the input layer. Information about the individual activation functions is available at . Returns: The activation function for the neuron or -1 if the neuron is not defined in the neural network. See also: , , , , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL enum fann_activationfunc_enum FANN_API fann_get_activation_function(struct fann *ann, int layer, int neuron); /* Function: fann_set_activation_function Set the activation function for neuron number *neuron* in layer number *layer*, counting the input layer as layer 0. It is not possible to set activation functions for the neurons in the input layer. When choosing an activation function it is important to note that the activation functions have different range. FANN_SIGMOID is e.g. in the 0 - 1 range while FANN_SIGMOID_SYMMETRIC is in the -1 - 1 range and FANN_LINEAR is unbound. Information about the individual activation functions is available at . The default activation function is FANN_SIGMOID_STEPWISE. See also: , , , , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_function(struct fann *ann, enum fann_activationfunc_enum activation_function, int layer, int neuron); /* Function: fann_set_activation_function_layer Set the activation function for all the neurons in the layer number *layer*, counting the input layer as layer 0. It is not possible to set activation functions for the neurons in the input layer. See also: , , , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_function_layer(struct fann *ann, enum fann_activationfunc_enum activation_function, int layer); /* Function: fann_set_activation_function_hidden Set the activation function for all of the hidden layers. See also: , , , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_function_hidden(struct fann *ann, enum fann_activationfunc_enum activation_function); /* Function: fann_set_activation_function_output Set the activation function for the output layer. See also: , , , This function appears in FANN >= 1.0.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_function_output(struct fann *ann, enum fann_activationfunc_enum activation_function); /* Function: fann_get_activation_steepness Get the activation steepness for neuron number *neuron* in layer number *layer*, counting the input layer as layer 0. It is not possible to get activation steepness for the neurons in the input layer. The steepness of an activation function says something about how fast the activation function goes from the minimum to the maximum. A high value for the activation function will also give a more agressive training. When training neural networks where the output values should be at the extremes (usually 0 and 1, depending on the activation function), a steep activation function can be used (e.g. 1.0). The default activation steepness is 0.5. Returns: The activation steepness for the neuron or -1 if the neuron is not defined in the neural network. See also: , , , , This function appears in FANN >= 2.1.0 */ FANN_EXTERNAL fann_type FANN_API fann_get_activation_steepness(struct fann *ann, int layer, int neuron); /* Function: fann_set_activation_steepness Set the activation steepness for neuron number *neuron* in layer number *layer*, counting the input layer as layer 0. It is not possible to set activation steepness for the neurons in the input layer. The steepness of an activation function says something about how fast the activation function goes from the minimum to the maximum. A high value for the activation function will also give a more agressive training. When training neural networks where the output values should be at the extremes (usually 0 and 1, depending on the activation function), a steep activation function can be used (e.g. 1.0). The default activation steepness is 0.5. See also: , , , , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_steepness(struct fann *ann, fann_type steepness, int layer, int neuron); /* Function: fann_set_activation_steepness_layer Set the activation steepness all of the neurons in layer number *layer*, counting the input layer as layer 0. It is not possible to set activation steepness for the neurons in the input layer. See also: , , , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_steepness_layer(struct fann *ann, fann_type steepness, int layer); /* Function: fann_set_activation_steepness_hidden Set the steepness of the activation steepness in all of the hidden layers. See also: , , , This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_steepness_hidden(struct fann *ann, fann_type steepness); /* Function: fann_set_activation_steepness_output Set the steepness of the activation steepness in the output layer. See also: , , , This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_activation_steepness_output(struct fann *ann, fann_type steepness); /* Function: fann_get_train_error_function Returns the error function used during training. The error functions is described further in The default error function is FANN_ERRORFUNC_TANH See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL enum fann_errorfunc_enum FANN_API fann_get_train_error_function(struct fann *ann); /* Function: fann_set_train_error_function Set the error function used during training. The error functions is described further in See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_train_error_function(struct fann *ann, enum fann_errorfunc_enum train_error_function); /* Function: fann_get_train_stop_function Returns the the stop function used during training. The stop function is described further in The default stop function is FANN_STOPFUNC_MSE See also: , This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL enum fann_stopfunc_enum FANN_API fann_get_train_stop_function(struct fann *ann); /* Function: fann_set_train_stop_function Set the stop function used during training. Returns the the stop function used during training. The stop function is described further in See also: This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_train_stop_function(struct fann *ann, enum fann_stopfunc_enum train_stop_function); /* Function: fann_get_bit_fail_limit Returns the bit fail limit used during training. The bit fail limit is used during training where the is set to FANN_STOPFUNC_BIT. The limit is the maximum accepted difference between the desired output and the actual output during training. Each output that diverges more than this limit is counted as an error bit. This difference is divided by two when dealing with symmetric activation functions, so that symmetric and not symmetric activation functions can use the same limit. The default bit fail limit is 0.35. See also: This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL fann_type FANN_API fann_get_bit_fail_limit(struct fann *ann); /* Function: fann_set_bit_fail_limit Set the bit fail limit used during training. See also: This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_bit_fail_limit(struct fann *ann, fann_type bit_fail_limit); /* Function: fann_set_callback Sets the callback function for use during training. See for more information about the callback function. The default callback function simply prints out some status information. This function appears in FANN >= 2.0.0. */ FANN_EXTERNAL void FANN_API fann_set_callback(struct fann *ann, fann_callback_type callback); /* Function: fann_get_quickprop_decay The decay is a small negative valued number which is the factor that the weights should become smaller in each iteration during quickprop training. This is used to make sure that the weights do not become too high during training. The default decay is -0.0001. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_get_quickprop_decay(struct fann *ann); /* Function: fann_set_quickprop_decay Sets the quickprop decay factor. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_quickprop_decay(struct fann *ann, float quickprop_decay); /* Function: fann_get_quickprop_mu The mu factor is used to increase and decrease the step-size during quickprop training. The mu factor should always be above 1, since it would otherwise decrease the step-size when it was suppose to increase it. The default mu factor is 1.75. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_get_quickprop_mu(struct fann *ann); /* Function: fann_set_quickprop_mu Sets the quickprop mu factor. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_quickprop_mu(struct fann *ann, float quickprop_mu); /* Function: fann_get_rprop_increase_factor The increase factor is a value larger than 1, which is used to increase the step-size during RPROP training. The default increase factor is 1.2. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_get_rprop_increase_factor(struct fann *ann); /* Function: fann_set_rprop_increase_factor The increase factor used during RPROP training. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_rprop_increase_factor(struct fann *ann, float rprop_increase_factor); /* Function: fann_get_rprop_decrease_factor The decrease factor is a value smaller than 1, which is used to decrease the step-size during RPROP training. The default decrease factor is 0.5. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_get_rprop_decrease_factor(struct fann *ann); /* Function: fann_set_rprop_decrease_factor The decrease factor is a value smaller than 1, which is used to decrease the step-size during RPROP training. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_rprop_decrease_factor(struct fann *ann, float rprop_decrease_factor); /* Function: fann_get_rprop_delta_min The minimum step-size is a small positive number determining how small the minimum step-size may be. The default value delta min is 0.0. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_get_rprop_delta_min(struct fann *ann); /* Function: fann_set_rprop_delta_min The minimum step-size is a small positive number determining how small the minimum step-size may be. See also: This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_rprop_delta_min(struct fann *ann, float rprop_delta_min); /* Function: fann_get_rprop_delta_max The maximum step-size is a positive number determining how large the maximum step-size may be. The default delta max is 50.0. See also: , This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL float FANN_API fann_get_rprop_delta_max(struct fann *ann); /* Function: fann_set_rprop_delta_max The maximum step-size is a positive number determining how large the maximum step-size may be. See also: , This function appears in FANN >= 1.2.0. */ FANN_EXTERNAL void FANN_API fann_set_rprop_delta_max(struct fann *ann, float rprop_delta_max); /* Function: fann_get_rprop_delta_zero The initial step-size is a positive number determining the initial step size. The default delta zero is 0.1. See also: , , This function appears in FANN >= 2.1.0. */ FANN_EXTERNAL float FANN_API fann_get_rprop_delta_zero(struct fann *ann); /* Function: fann_set_rprop_delta_zero The initial step-size is a positive number determining the initial step size. See also: , This function appears in FANN >= 2.1.0. */ FANN_EXTERNAL void FANN_API fann_set_rprop_delta_zero(struct fann *ann, float rprop_delta_max); /* Method: fann_get_sarprop_weight_decay_shift The sarprop weight decay shift. The default delta max is -6.644. See also: This function appears in FANN >= 2.1.0. */ FANN_EXTERNAL float FANN_API fann_get_sarprop_weight_decay_shift(struct fann *ann); /* Method: fann_set_sarprop_weight_decay_shift Set the sarprop weight decay shift. This function appears in FANN >= 2.1.0. See also: */ FANN_EXTERNAL void FANN_API fann_set_sarprop_weight_decay_shift(struct fann *ann, float sarprop_weight_decay_shift); /* Method: fann_get_sarprop_step_error_threshold_factor The sarprop step error threshold factor. The default delta max is 0.1. See also: This function appears in FANN >= 2.1.0. */ FANN_EXTERNAL float FANN_API fann_get_sarprop_step_error_threshold_factor(struct fann *ann); /* Method: fann_set_sarprop_step_error_threshold_factor Set the sarprop step error threshold factor. This function appears in FANN >= 2.1.0. See also: */ FANN_EXTERNAL void FANN_API fann_set_sarprop_step_error_threshold_factor(struct fann *ann, float sarprop_step_error_threshold_factor); /* Method: fann_get_sarprop_step_error_shift The get sarprop step error shift. The default delta max is 1.385. See also: This function appears in FANN >= 2.1.0. */ FANN_EXTERNAL float FANN_API fann_get_sarprop_step_error_shift(struct fann *ann); /* Method: fann_set_sarprop_step_error_shift Set the sarprop step error shift. This function appears in FANN >= 2.1.0. See also: */ FANN_EXTERNAL void FANN_API fann_set_sarprop_step_error_shift(struct fann *ann, float sarprop_step_error_shift); /* Method: fann_get_sarprop_temperature The sarprop weight decay shift. The default delta max is 0.015. See also: This function appears in FANN >= 2.1.0. */ FANN_EXTERNAL float FANN_API fann_get_sarprop_temperature(struct fann *ann); /* Method: fann_set_sarprop_temperature Set the sarprop_temperature. This function appears in FANN >= 2.1.0. See also: */ FANN_EXTERNAL void FANN_API fann_set_sarprop_temperature(struct fann *ann, float sarprop_temperature); #endif