/** * Copyright 2010 Neuroph Project http://neuroph.sourceforge.net * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ package org.neuroph.samples.stockmarket; import java.text.SimpleDateFormat; import java.util.Arrays; import java.util.Date; import org.neuroph.core.NeuralNetwork; import org.neuroph.core.learning.SupervisedTrainingElement; import org.neuroph.core.learning.TrainingElement; import org.neuroph.core.learning.TrainingSet; import org.neuroph.nnet.MultiLayerPerceptron; import org.neuroph.nnet.learning.LMS; /** * Main class which runs the stock market prediction sample - creates and trains neural network for stock prediction. * See http://neuroph.sourceforge.net/tutorials/StockMarketPredictionTutorial.html * @author Dr.V.Steinhauer */ public class Main { public static void main(String[] args) { System.out.println("Time stamp N1:" + new SimpleDateFormat("dd-MMM-yyyy HH:mm:ss:MM").format(new Date())); int maxIterations = 10000; NeuralNetwork neuralNet = new MultiLayerPerceptron(4, 9, 1); ((LMS) neuralNet.getLearningRule()).setMaxError(0.001);//0-1 ((LMS) neuralNet.getLearningRule()).setLearningRate(0.7);//0-1 ((LMS) neuralNet.getLearningRule()).setMaxIterations(maxIterations);//0-1 TrainingSet trainingSet = new TrainingSet(); double daxmax = 10000.0D; trainingSet.addElement(new SupervisedTrainingElement(new double[]{3710.0D / daxmax, 3690.0D / daxmax, 3890.0D / daxmax, 3695.0D / daxmax}, new double[]{3666.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3690.0D / daxmax, 3890.0D / daxmax, 3695.0D / daxmax, 3666.0D / daxmax}, new double[]{3692.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3890.0D / daxmax, 3695.0D / daxmax, 3666.0D / daxmax, 3692.0D / daxmax}, new double[]{3886.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3695.0D / daxmax, 3666.0D / daxmax, 3692.0D / daxmax, 3886.0D / daxmax}, new double[]{3914.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3666.0D / daxmax, 3692.0D / daxmax, 3886.0D / daxmax, 3914.0D / daxmax}, new double[]{3956.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3692.0D / daxmax, 3886.0D / daxmax, 3914.0D / daxmax, 3956.0D / daxmax}, new double[]{3953.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3886.0D / daxmax, 3914.0D / daxmax, 3956.0D / daxmax, 3953.0D / daxmax}, new double[]{4044.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3914.0D / daxmax, 3956.0D / daxmax, 3953.0D / daxmax, 4044.0D / daxmax}, new double[]{3987.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3956.0D / daxmax, 3953.0D / daxmax, 4044.0D / daxmax, 3987.0D / daxmax}, new double[]{3996.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3953.0D / daxmax, 4044.0D / daxmax, 3987.0D / daxmax, 3996.0D / daxmax}, new double[]{4043.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{4044.0D / daxmax, 3987.0D / daxmax, 3996.0D / daxmax, 4043.0D / daxmax}, new double[]{4068.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3987.0D / daxmax, 3996.0D / daxmax, 4043.0D / daxmax, 4068.0D / daxmax}, new double[]{4176.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{3996.0D / daxmax, 4043.0D / daxmax, 4068.0D / daxmax, 4176.0D / daxmax}, new double[]{4187.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{4043.0D / daxmax, 4068.0D / daxmax, 4176.0D / daxmax, 4187.0D / daxmax}, new double[]{4223.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{4068.0D / daxmax, 4176.0D / daxmax, 4187.0D / daxmax, 4223.0D / daxmax}, new double[]{4259.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{4176.0D / daxmax, 4187.0D / daxmax, 4223.0D / daxmax, 4259.0D / daxmax}, new double[]{4203.0D / daxmax})); trainingSet.addElement(new SupervisedTrainingElement(new double[]{4187.0D / daxmax, 4223.0D / daxmax, 4259.0D / daxmax, 4203.0D / daxmax}, new double[]{3989.0D / daxmax})); neuralNet.learnInSameThread(trainingSet); System.out.println("Time stamp N2:" + new SimpleDateFormat("dd-MMM-yyyy HH:mm:ss:MM").format(new Date())); TrainingSet testSet = new TrainingSet(); testSet.addElement(new TrainingElement(new double[]{4223.0D / daxmax, 4259.0D / daxmax, 4203.0D / daxmax, 3989.0D / daxmax})); for (TrainingElement testElement : testSet.trainingElements()) { neuralNet.setInput(testElement.getInput()); neuralNet.calculate(); double[] networkOutput = neuralNet.getOutput(); System.out.print("Input: " + Arrays.toString(testElement.getInput()) ); System.out.println(" Output: " + Arrays.toString(networkOutput) ); } //Experiments: // calculated //31;3;2009;4084,76 -> 4121 Error=0.01 Rate=0.7 Iterat=100 //31;3;2009;4084,76 -> 4096 Error=0.01 Rate=0.7 Iterat=1000 //31;3;2009;4084,76 -> 4093 Error=0.01 Rate=0.7 Iterat=10000 //31;3;2009;4084,76 -> 4108 Error=0.01 Rate=0.7 Iterat=100000 //31;3;2009;4084,76 -> 4084 Error=0.001 Rate=0.7 Iterat=10000 System.out.println("Time stamp N3:" + new SimpleDateFormat("dd-MMM-yyyy HH:mm:ss:MM").format(new Date())); System.exit(0); } }