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📄 onlinemomentumbackpropagation.java

📁 利用Java实现的神经网络工具箱
💻 JAVA
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/* * $RCSfile: OnLineMomentumBackPropagation.java,v $ * $Revision: 1.4 $ * $Date: 2005/05/08 02:16:28 $ * * NeuralNetworkToolkit * Copyright (C) 2004 Universidade de Bras铆lia * * This file is part of NeuralNetworkToolkit. * * NeuralNetworkToolkit is free software; you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation; either version 2 of the License, or * (at your option) any later version. * * NeuralNetworkToolkit 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 General Public License for more details. * * You should have received a copy of the GNU General Public License * along with NeuralNetworkToolkit; if not, write to the Free Software * Foundation, Inc., 59 Temple Place, Suite 330, Boston, MA - 02111-1307 - USA. */package neuralnetworktoolkit.methods.gradientbased.backpropagation;import neuralnetworktoolkit.math.NeuralMath;import neuralnetworktoolkit.methods.*;import neuralnetworktoolkit.neuralnetwork.*;import neuralnetworktoolkit.*;/** *  *  * @version $Revision: 1.4 $ - $Date: 2005/05/08 02:16:28 $ *  * @author <a href="mailto:hugoiver@yahoo.com.br">Hugo Iver V. Gon莽alves</a> * @author <a href="mailto:rodbra@pop.com.br">Rodrigo C. M. Coimbra</a> */public class OnLineMomentumBackPropagation extends ModifiedBackPropagation {	/**	 * 	 *	 */	public OnLineMomentumBackPropagation() {		super();			}		/**	 * Trains a neural network with backpropagation method.	 * 	 * @param neuralNetwork	 *            Neural network to be trained.	 * @param learningRate	 *            Learning rate.	 * @param error	 *            Quadratic error wished for network.	 * @param instanceSet	 *            Training instances set.	 * @param outputs	 *            Network expected outputs.	 * @param parameters	 *            Other parameters array.	 * 	 * @return Statistical information about network learning.	 */	public StatisticalResults train(INeuralNetwork neuralNetwork,			TrainingParameters parameters) {		// TODO Erase instrumentation code.		BackPropagationParameters param;		param = (BackPropagationParameters) parameters;		learningRate = param.getLearningRate();		param = (BackPropagationParameters) parameters;		numberOfSynapses = neuralNetwork.numberOfSynapses();		errorGoal = param.getError();		maximumNumberOfEpochs = param.getMaxEpochs();		alpha = param.getAlpha();				inicio = System.currentTimeMillis();				do {			for (int i = 0; i < param.getInputs().length; i++) {				neuralNetwork.inputLayerSetup(param.getInputs()[i]);				neuralNetwork.propagateInput();				calculateNeuronDeltas(neuralNetwork, param.getOutputs()[i]);				derivativesVector = calculateDerivativesVector(neuralNetwork);								deltaW = NeuralMath.constantTimesMatrix(-learningRate, derivativesVector);								if (!firstIteration) {					deltaW = NeuralMath.matrixSum(deltaW, NeuralMath.constantTimesMatrix(alpha, previousDeltaW));									} else {					firstIteration = false;														}								previousDeltaW = (double[][]) deltaW.clone();				neuralNetwork.updateWeights(deltaW);			}			totalErrorEnergy = calculateTotalError(neuralNetwork, param					.getInputs(), param.getOutputs());			numberOfEpochs++;			if ((numberOfEpochs) % 1/* (maximumNumberOfEpochs/100) */== 0) {				System.out.println("N閙ero de 蓀ocas: " + numberOfEpochs);				System.out.println("Erro atual: " + totalErrorEnergy);			}		} while (((totalErrorEnergy / param.getInputs().length) > errorGoal)				&& (numberOfEpochs < maximumNumberOfEpochs) && (goAhead = true));				fim = System.currentTimeMillis();				neuralNetwork.setError(totalErrorEnergy / param.getInputs().length);				results.setError(totalErrorEnergy / param.getInputs().length);		results.setNumberOfEpochs(numberOfEpochs);		numberOfEpochs = 0;		results.setTrainingTime((fim - inicio) / 1000);				return results;			} //train()} //OnLineMomentumBackPropagation

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