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« リソース型 SVM » PHP Manual SVM 例 例 The basic process is to define parameters, supply training data to generate a model on, then make predictions based on the model. There are a default set of parameters that should get some results with most any input, so we'll start by looking at t ...
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はじめに 0
« FANN インストール/設定 » PHP Manual FANN はじめに はじめに PHP binding for FANN (Fast Artificial Neural Network) Library which implements multilayer artificial neural networks with support for both fully connected and sparsely connected networks. It includes a framework for easy handli ...
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Returns the mu factor 0
« fann_get_quickprop_decay fann_get_rprop_decrease_factor » PHP Manual Fann 関数 Returns the mu factor fann_get_quickprop_mu (PECL fann >= 1.0.0) fann_get_quickprop_mu — Returns the mu factor 説明 fann_get_quickprop_mu ( resource $ann ): float The mu factor is used to increase and decrea ...
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Sets the quickprop decay factor 0
« fann_set_output_scaling_params fann_set_quickprop_mu » PHP Manual Fann 関数 Sets the quickprop decay factor fann_set_quickprop_decay (PECL fann >= 1.0.0) fann_set_quickprop_decay — Sets the quickprop decay factor 説明 fann_set_quickprop_decay ( resource $ann , float $quickprop_decay ): ...
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Set connections in the network 0
« fann_set_training_algorithm fann_set_weight » PHP Manual Fann 関数 Set connections in the network fann_set_weight_array (PECL fann >= 1.0.0) fann_set_weight_array — Set connections in the network 説明 fann_set_weight_array ( resource $ann , array $connections ): bool Set connections in ...
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Predict a value for previously unseen data 0
« SVMModel::predict_probability SVMModel::save » PHP Manual SVMModel Predict a value for previously unseen data SVMModel::predict (PECL svm >= 0.1.0) SVMModel::predict — Predict a value for previously unseen data 説明 public SVMModel::predict ( array $data ): float This function accepts ...
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Descale input and output data based on previously calculated parameters 0
« fann_descale_output fann_destroy_train » PHP Manual Fann 関数 Descale input and output data based on previously calculated parameters fann_descale_train (PECL fann >= 1.0.0) fann_descale_train — Descale input and output data based on previously calculated parameters 説明 fann_descale_t ...
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Returns the number of candidate groups 0
« fann_get_cascade_min_out_epochs fann_get_cascade_num_candidates » PHP Manual Fann 関数 Returns the number of candidate groups fann_get_cascade_num_candidate_groups (PECL fann >= 1.0.0) fann_get_cascade_num_candidate_groups — Returns the number of candidate groups 説明 fann_get_cascade_ ...
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Returns the weight multiplier 0
« fann_get_cascade_output_stagnation_epochs fann_get_connection_array » PHP Manual Fann 関数 Returns the weight multiplier fann_get_cascade_weight_multiplier (PECL fann >= 1.0.0) fann_get_cascade_weight_multiplier — Returns the weight multiplier 説明 fann_get_cascade_weight_multiplier ( ...
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Resets the mean square error from the network 0
« fann_reset_errstr fann_run » PHP Manual Fann 関数 Resets the mean square error from the network fann_reset_MSE (PECL fann >= 1.0.0) fann_reset_MSE — Resets the mean square error from the network 説明 fann_reset_MSE ( string $ann ): bool Resets the mean square error from the network. Th ...
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