Java Code Examples for org.neuroph.nnet.MultiLayerPerceptron#learn()
The following examples show how to use
org.neuroph.nnet.MultiLayerPerceptron#learn() .
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Example 1
Source File: TestTimeSeries.java From NeurophFramework with Apache License 2.0 | 6 votes |
public void train() { // get the path to file with data String inputFileName = "C:\\timeseries\\BSW15"; // create MultiLayerPerceptron neural network neuralNet = new MultiLayerPerceptron(TransferFunctionType.TANH, 5, 10, 1); MomentumBackpropagation learningRule = (MomentumBackpropagation)neuralNet.getLearningRule(); learningRule.setLearningRate(0.2); learningRule.setMomentum(0.5); // learningRule.addObserver(this); learningRule.addListener(this); // create training set from file trainingSet = DataSet.createFromFile(inputFileName, 5, 1, "\t", false); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Done training."); }
Example 2
Source File: PredictingPerformanceOfCPUSample.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void run() { System.out.println("Creating training set..."); String dataSetFile = "data_sets/cpu_data.txt"; int inputsCount = 7; int outputsCount = 1; // create training set from file DataSet dataSet = DataSets.readFromCsv(dataSetFile, inputsCount, outputsCount); // normalize dataset DataSets.normalizeMax(dataSet); System.out.println("Creating neural network..."); // create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 16, outputsCount); // attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); // set learning rate and max error learningRule.setLearningRate(0.2); learningRule.setMaxError(0.01); System.out.println("Training network..."); // train the network with training set neuralNet.learn(dataSet); System.out.println("Training completed."); System.out.println("Testing network..."); testNeuralNetwork(neuralNet, dataSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("MyNeuralNetCPU.nnet"); System.out.println("Done."); }
Example 3
Source File: DiabetesSample.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void run() { String dataSetFile = "data_sets/diabetes.txt"; int inputsCount = 8; int outputsCount = 1; // Create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, ","); // Creatinig training set (70%) and test set (30%) DataSet[] trainTestSplit = dataSet.split(0.7, 0.3); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; // Normalizing training and test set Normalizer normalizer = new MaxNormalizer(trainingSet); normalizer.normalize(trainingSet); normalizer.normalize(testSet); System.out.println("Creating neural network..."); //Create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 20, 10, outputsCount); //attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); learningRule.setLearningRate(0.6); learningRule.setMaxError(0.07); learningRule.setMaxIterations(100000); System.out.println("Training network..."); //train the network with training set neuralNet.learn(trainingSet); System.out.println("Testing network..."); testNeuralNetwork(neuralNet, testSet); }
Example 4
Source File: TestBinaryClass.java From NeurophFramework with Apache License 2.0 | 5 votes |
public static void main(String[] args) { DataSet trainingSet = new DataSet(2, 1); trainingSet.add(new DataSetRow(new double[]{0, 0}, new double[]{0})); trainingSet.add(new DataSetRow(new double[]{0, 1}, new double[]{1})); trainingSet.add(new DataSetRow(new double[]{1, 0}, new double[]{1})); trainingSet.add(new DataSetRow(new double[]{1, 1}, new double[]{0})); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(TransferFunctionType.TANH, 2, 3, 1); neuralNet.learn(trainingSet); Evaluation.runFullEvaluation(neuralNet, trainingSet); }
Example 5
Source File: PredictingTheReligionSample.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void run() { System.out.println("Creating training set..."); // get path to training set String dataSetFile = "data_sets/religion_data.txt"; int inputsCount = 54; int outputsCount = 5; // create training set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, "\t", false); System.out.println("Creating neural network..."); // create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 22, outputsCount); // attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); // set learning rate and max error learningRule.setLearningRate(0.2); learningRule.setMaxError(0.01); System.out.println("Training network..."); // train the network with training set neuralNet.learn(dataSet); System.out.println("Training completed."); System.out.println("Testing network..."); testNeuralNetwork(neuralNet, dataSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("MyNeuralNetReligion.nnet"); System.out.println("Done."); }
Example 6
Source File: BreastCancerSample.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void run() { System.out.println("Creating training and test set from file..."); String dataSetFile = "data_sets/breast_cancer.txt"; int numInputs = 30; int numOutputs = 1; //Create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, numInputs, numOutputs, ","); //Creatinig training set (70%) and test set (30%) DataSet[] trainTestSplit = dataSet.split(0.7, 0.3); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; //Normalizing data set Normalizer normalizer = new MaxNormalizer(trainingSet); normalizer.normalize(trainingSet); normalizer.normalize(testSet); //Create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(numInputs, 16, numOutputs); //attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); learningRule.setLearningRate(0.3); learningRule.setMaxError(0.01); learningRule.setMaxIterations(500); System.out.println("Training network..."); //train the network with training set neuralNet.learn(trainingSet); System.out.println("Testing network..."); testNeuralNetwork(neuralNet, testSet); }
Example 7
Source File: MomentumBackPropagationTest.java From NeurophFramework with Apache License 2.0 | 5 votes |
@Test public void testXorMaxError() { MultiLayerPerceptron myMlPerceptron = new MultiLayerPerceptron(TransferFunctionType.SIGMOID, 2, 3, 1); myMlPerceptron.randomizeWeights(new WeightsRandomizer(new Random(123))); myMlPerceptron.setLearningRule(instance); myMlPerceptron.learn(xorDataSet); assertTrue(instance.getTotalNetworkError() < maxError); }
Example 8
Source File: TrainNetwork.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void train() { System.out.println("Training neural network... "); MultiLayerPerceptron neuralNet = (MultiLayerPerceptron) NeuralNetwork.createFromFile(config.getTrainedNetworkFileName()); DataSet dataSet = DataSet.load(config.getNormalizedBalancedFileName()); neuralNet.getLearningRule().addListener(this); neuralNet.learn(dataSet); System.out.println("Saving trained neural network to file... "); neuralNet.save(config.getTrainedNetworkFileName()); System.out.println("Neural network successfully saved!"); }
Example 9
Source File: CarEvaluationSample.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void run() { System.out.println("Creating training set..."); String dataSetFile = "data_sets/car_evaluation_data.txt"; int inputsCount = 21; int outputsCount = 4; // create training set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, "\t", false); System.out.println("Creating neural network..."); // create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 22, outputsCount); // attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); // set learning rate and max error learningRule.setLearningRate(0.2); learningRule.setMaxError(0.01); System.out.println("Training network..."); // train the network with training set neuralNet.learn(dataSet); System.out.println("Training completed."); System.out.println("Testing network..."); testNeuralNetwork(neuralNet, dataSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("MyNeuralNetCarEvaluation.nnet"); System.out.println("Done."); }
Example 10
Source File: BalanceScaleSample.java From NeurophFramework with Apache License 2.0 | 5 votes |
public void run() { System.out.println("Creating training set..."); String dataSetFile = "data_sets/balance_scale_data.txt"; int inputsCount = 20; int outputsCount = 3; // create training set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, "\t", false); System.out.println("Creating neural network..."); // create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 22, outputsCount); // attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); // set learning rate and max error learningRule.setLearningRate(0.2); learningRule.setMaxError(0.01); System.out.println("Training network..."); // train the network with training set neuralNet.learn(dataSet); System.out.println("Training completed."); System.out.println("Testing network..."); testNeuralNetwork(neuralNet, dataSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("MyNeuralNetBalanceScale.nnet"); System.out.println("Done."); }
Example 11
Source File: PimaIndiansDiabetes.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating data set..."); String dataSetFile = "data_sets/ml10standard/pimadata.txt"; int inputsCount = 8; int outputsCount = 1; // create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, "\t", false); // split data into training and test set DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; // normalize training and test set Normalizer norm = new MaxNormalizer(trainingSet); norm.normalize(trainingSet); norm.normalize(testSet); System.out.println("Creating neural network..."); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(TransferFunctionType.TANH, inputsCount, 15, 5, outputsCount); neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener((event) -> { MomentumBackpropagation bp = (MomentumBackpropagation) event.getSource(); System.out.println(bp.getCurrentIteration() + ". iteration | Total network error: " + bp.getTotalNetworkError()); }); // set learning rate and max error learningRule.setLearningRate(0.1); learningRule.setMaxError(0.03); System.out.println("Training network..."); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Training completed."); System.out.println("Testing network..."); System.out.println("Network performance on the test set"); evaluate(neuralNet, testSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); }
Example 12
Source File: Sonar.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { String dataSetFile = "data_sets/ml10standard/sonardata.txt"; int numInputs = 60; int numOutputs = 1; // create data set from csv file DataSet dataSet = DataSet.createFromFile(dataSetFile, numInputs, numOutputs, ","); // split data into train and test set DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; // create neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(TransferFunctionType.TANH, numInputs, 35, 15, numOutputs); // set learning rule and add listener neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener((event) -> { MomentumBackpropagation bp = (MomentumBackpropagation) event.getSource(); System.out.println(bp.getCurrentIteration() + ". iteration | Total network error: " + bp.getTotalNetworkError()); }); // set learning rate and max error learningRule.setLearningRate(0.01); learningRule.setMaxError(0.01); // train the network with training set neuralNet.learn(trainingSet); // evaluate network performance on test set evaluate(neuralNet, testSet); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); //testNeuralNetwork(neuralNet, testSet); }
Example 13
Source File: IonosphereSample.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating training and test set from file..."); String dataSetFile = "data_sets/ionosphere.csv"; int inputsCount = 34; int outputsCount = 1; //Create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, ","); dataSet.shuffle(); //Normalizing data set Normalizer normalizer = new MaxNormalizer(dataSet); normalizer.normalize(dataSet); //Creatinig training set (70%) and test set (30%) DataSet[] trainingAndTestSet = dataSet.createTrainingAndTestSubsets(70, 30); DataSet trainingSet = trainingAndTestSet[0]; DataSet testSet = trainingAndTestSet[1]; // for (int i = 0; i < 21; i++) { System.out.println("Creating neural network..."); //Create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 16, 8, outputsCount); // System.out.println("HIDDEN COUNT: " + i); //attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); learningRule.setLearningRate(0.2); learningRule.setMaxError(0.01); learningRule.setMaxIterations(10000); System.out.println("Training network..."); //train the network with training set neuralNet.learn(trainingSet); System.out.println("Testing network...\n\n"); testNeuralNetwork(neuralNet, testSet); System.out.println("Done."); System.out.println("**************************************************"); // } }
Example 14
Source File: WheatSeeds.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating training set..."); // get path to training set String trainingSetFileName = "data_sets/seeds.txt"; int inputsCount = 7; int outputsCount = 3; // create training set from file DataSet dataSet = DataSet.createFromFile(trainingSetFileName, inputsCount, outputsCount, "\t"); // split data into train and test set DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; System.out.println("Creating neural network..."); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 15, 2, outputsCount); neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); // set learning rate and max error learningRule.setLearningRate(0.1); learningRule.setMaxError(0.01); learningRule.setMaxIterations(5000); System.out.println("Training network..."); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Training completed."); System.out.println("Testing network..."); System.out.println("Network performance on the test set"); evaluate(neuralNet, testSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); System.out.println(); System.out.println("Network outputs for test set"); testNeuralNetwork(neuralNet, testSet); }
Example 15
Source File: BrestCancerSample.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating training and test set from file..."); String dataSetFile = "data_sets/breast cancer.txt"; int inputsCount = 30; int outputsCount = 2; // use onlz one output - binarz classification, transform dat aset //Create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, ","); //Creatinig training set (70%) and test set (30%) DataSet[] trainTestSplit = dataSet.split(0.7, 0.3); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; //Normalizing data set Normalizer normalizer = new MaxNormalizer(trainingSet); normalizer.normalize(trainingSet); normalizer.normalize(testSet); System.out.println("Creating neural network..."); //Create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 16, outputsCount); //attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); learningRule.setLearningRate(0.3); learningRule.setMaxError(0.001); learningRule.setMaxIterations(5000); System.out.println("Training network..."); //train the network with training set neuralNet.learn(trainingSet); System.out.println("Testing network...\n\n"); testNeuralNetwork(neuralNet, testSet); System.out.println("Done."); System.out.println("**************************************************"); }
Example 16
Source File: Ionosphere.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating data set..."); String dataSetFile = "data_sets/ml10standard/ionospheredata.txt"; int inputsCount = 34; int outputsCount = 1; // create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, ",", false); // split data into training and test set DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; // normalize data Normalizer norm = new MaxNormalizer(trainingSet); norm.normalize(trainingSet); norm.normalize(testSet); System.out.println("Creating neural network..."); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 30, 25, outputsCount); neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener((event) -> { MomentumBackpropagation bp = (MomentumBackpropagation) event.getSource(); System.out.println(bp.getCurrentIteration() + ". iteration | Total network error: " + bp.getTotalNetworkError()); }); // set learning rate and max error learningRule.setLearningRate(0.1); learningRule.setMaxError(0.01); System.out.println("Training network..."); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Training completed."); System.out.println("Testing network..."); System.out.println("Network performance on the test set"); evaluate(neuralNet, testSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); }
Example 17
Source File: GermanCreditDataSample.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating training and test set from file..."); String dataSetFile = "data_sets/german credit data.txt"; int inputsCount = 24; int outputsCount = 2; //Create data set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, " "); dataSet.shuffle(); //Normalizing data set Normalizer normalizer = new MaxNormalizer(dataSet); normalizer.normalize(dataSet); //Creatinig training set (70%) and test set (30%) DataSet[] trainingAndTestSet = dataSet.createTrainingAndTestSubsets(70, 30); DataSet trainingSet = trainingAndTestSet[0]; DataSet testSet = trainingAndTestSet[1]; System.out.println("Creating neural network..."); //Create MultiLayerPerceptron neural network MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 12, 6, outputsCount); //attach listener to learning rule MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); learningRule.setLearningRate(0.01); learningRule.setMaxError(0.001); learningRule.setMaxIterations(10000); System.out.println("Training network..."); //train the network with training set neuralNet.learn(trainingSet); System.out.println("Testing network...\n\n"); testNeuralNetwork(neuralNet, testSet); System.out.println("Done."); System.out.println("**************************************************"); }
Example 18
Source File: Banknote.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating data set..."); String dataSetFile = "data_sets/ml10standard/databanknote.txt"; int inputsCount = 4; int outputsCount = 1; // create training set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, ",", false); DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; Normalizer norm = new MaxNormalizer(trainingSet); norm.normalize(trainingSet); norm.normalize(testSet); System.out.println("Creating neural network..."); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(TransferFunctionType.TANH, inputsCount, 1, outputsCount); neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener((event) -> { MomentumBackpropagation bp = (MomentumBackpropagation) event.getSource(); System.out.println(bp.getCurrentIteration() + ". iteration | Total network error: " + bp.getTotalNetworkError()); }); // set learning rate and max error learningRule.setLearningRate(0.1); learningRule.setMaxError(0.01); System.out.println("Training network..."); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Training completed."); System.out.println("Testing network..."); System.out.println("Network performance on the test set"); evaluate(neuralNet, testSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); }
Example 19
Source File: WheatSeeds.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating data set..."); String dataSetFile = "data_sets/ml10standard/seeds.txt"; int inputsCount = 7; int outputsCount = 3; // create training set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, "\t"); // split data into train and test set DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; System.out.println("Creating neural network..."); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 15, 2, outputsCount); neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener((event)->{ MomentumBackpropagation bp = (MomentumBackpropagation) event.getSource(); System.out.println(bp.getCurrentIteration() + ". iteration | Total network error: " + bp.getTotalNetworkError()); }); // set learning rate and max error learningRule.setLearningRate(0.1); learningRule.setMaxError(0.01); learningRule.setMaxIterations(5000); System.out.println("Training network..."); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Training completed."); System.out.println("Testing network..."); System.out.println("Network performance on the test set"); evaluate(neuralNet, testSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); System.out.println(); System.out.println("Network outputs for test set"); testNeuralNetwork(neuralNet, testSet); }
Example 20
Source File: WineQualityClassification.java From NeurophFramework with Apache License 2.0 | 4 votes |
public void run() { System.out.println("Creating training set..."); // get path to training set String dataSetFile = "data_sets/wine.txt"; int inputsCount = 11; int outputsCount = 10; // create training set from file DataSet dataSet = DataSet.createFromFile(dataSetFile, inputsCount, outputsCount, "\t", true); // split data into train and test set DataSet[] trainTestSplit = dataSet.split(0.6, 0.4); DataSet trainingSet = trainTestSplit[0]; DataSet testSet = trainTestSplit[1]; Normalizer norm = new MaxNormalizer(trainingSet); norm.normalize(trainingSet); norm.normalize(testSet); System.out.println("Creating neural network..."); MultiLayerPerceptron neuralNet = new MultiLayerPerceptron(inputsCount, 20, 15, outputsCount); neuralNet.setLearningRule(new MomentumBackpropagation()); MomentumBackpropagation learningRule = (MomentumBackpropagation) neuralNet.getLearningRule(); learningRule.addListener(this); // set learning rate and max error learningRule.setLearningRate(0.1); learningRule.setMaxIterations(5000); System.out.println("Training network..."); // train the network with training set neuralNet.learn(trainingSet); System.out.println("Training completed."); System.out.println("Testing network..."); System.out.println("Network performance on the test set"); evaluate(neuralNet, testSet); System.out.println("Saving network"); // save neural network to file neuralNet.save("nn1.nnet"); System.out.println("Done."); System.out.println(); System.out.println("Network outputs for test set"); testNeuralNetwork(neuralNet, testSet); }