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Revision 1 as of 2016-12-12 20:22:37
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Editor: JunHu
Comment:
Revision 2 as of 2016-12-12 21:09:55
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Editor: JunHu
Comment:
Deletions are marked like this. Additions are marked like this.
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package org.neuroph.samples;
import java.util.Arrays;
Line 31: Line 30:
import org.neuroph.core.learning.DataSet;
import org.neuroph.core.learning.TrainingElement;
import org.neuroph.core.learning.SupervisedTrainingElement;
import jav
a.util.Vector;
import org.neuroph.core.data.DataSet;
import org.neuroph.core.data.DataSetRow;
Line 37: Line 34:
 * This sample shows how to create, train, save and load simple Perceptron neural network   * This sample shows how to create, train, save and load simple Perceptron
 *
neural network
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  public static void main(String args[]) {  public static void main(String args[]) {
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    // create training set (logical AND function)
    DataSet trainingSet = new DataSet(2, 1);
    trainingSet.addRow(new DataSetRow(new double[] {
      0, 0
    }
    , new double[] {
      0
    }
    
));
    trainingSet.addRow(new DataSetRow(new double[] {
      0, 1
    }
    , new double[] {
      0
    }
    
));
    trainingSet.addRow(new DataSetRow(new double[] {
      1, 0
    }
    , new double[] {
      0
    }
    
));
    trainingSet.addRow(new DataSetRow(new double[] {
      1, 1
    }
    , new double[] {
      1
    }
    
));
  // create training set (logical AND function)
  DataSet trainingSet = new DataSet(2, 1);
  trainingSet.addRow(new DataSetRow(new double[] { 0, 0 }, new double[] { 0 }));
  trainingSet.addRow(new DataSetRow(new double[] { 0, 1 }, new double[] { 0 }));
  trainingSet.addRow(new DataSetRow(new double[] { 1, 0 }, new double[] { 0 }));
  trainingSet.addRow(new DataSetRow(new double[] { 1, 1 }, new double[] { 1 }));
Line 74: Line 48:
    // create perceptron neural network
    NeuralNetwork myPerceptron = new Perceptron(2, 1);
  // create perceptron neural network
  NeuralNetwork myPerceptron = new Perceptron(2, 1);
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    // learn the training set
    myPerceptron.learn(trainingSet);
  // learn the training set
  myPerceptron.learn(trainingSet);
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    // test perceptron
    System.out.println("Testing trained perceptron");
    testNeuralNetwork(myPerceptron, trainingSet);
  // test perceptron
  System.out.println("Testing trained perceptron");
  testNeuralNetwork(myPerceptron, trainingSet);
Line 84: Line 58:
    // save trained perceptron
    myPerceptron.save("mySamplePerceptron.nnet");
  // save trained perceptron
  myPerceptron.save("mySamplePerceptron.nnet");
Line 87: Line 61:
    // load saved neural network
    NeuralNetwork loadedPerceptron = NeuralNetwork.load("mySamplePerceptron.nnet");
  // load saved neural network
  NeuralNetwork loadedPerceptron = NeuralNetwork.load("mySamplePerceptron.nnet");
Line 90: Line 64:
    // test loaded neural network
    System.out.println("Testing loaded perceptron");
    testNeuralNetwork(loadedPerceptron, trainingSet);
  }
  // test loaded neural network
  System.out.println("Testing loaded perceptron");
  testNeuralNetwork(loadedPerceptron, trainingSet);
 }
Line 95: Line 69:
  public static void testNeuralNetwork(NeuralNetwork nnet, DataSet tset) {  public static void testNeuralNetwork(NeuralNetwork nnet, DataSet tset) {
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    for (DataSetRow dataRow : tset.getRows()) {   for (DataSetRow dataRow : tset.getRows()) {
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      nnet.setInput(dataRow.getInput());
      nnet.calculate();
      double[ ] networkOutput = nnet.getOutput();
      System.out.print("Input: " + Arrays.toString(dataRow.getInput()) );
      
System.out.println(" Output: " + Arrays.toString(networkOutput) );
    
}
  }
   nnet.setInput(dataRow.getInput());
   nnet.calculate();
   double[] networkOutput = nnet.getOutput();
   System.out.print("Input: " + Arrays.toString(dataRow.getInput()));
   
System.out.println(" Output: " + Arrays.toString(networkOutput));
  
}
 }

Preparation

  • Follow the instructions from the assignment Creative Programming to prepare the software environment, including Processing and Arduino. If you are not planning to use the GUI components from the ControlP5 library, you can skip the ControlP5 part.

  • Install Neuroph, a lightweight Java neural network framework.

    • Download proper neurophstudio installer for your platform. I will use Windows platform as examples here
    • In "Processing Sketchbook location"\libraries, create a sub-directory "neuroph".
    • In "Processing Sketchbook location"\libraries\neuroph, create a sub-directory "library".
    • From <neurophstudio directory>\neurophstudio\modules\ext copy neuroph-core-<version>.jar to <Processing Sketchbook location>\libraries\neuroph\library. Rename neuroph-core-<version>.jar to neuroph.jar.

  • If you are confident enough, you can also try to use Eclipse to program in Java. Then try to follow the instructions from the assignment Processing2Java. Remember you shall include the aforementioned jar files in the projects if you want to use neuroph.

References

Examples

Try the Perceptron example first with Neuroph Studio: This is the Perceptron example from http://neuroph.sourceforge.net/tutorials/Perceptron.html:

Java code

   1 import java.util.Arrays;
   2 import org.neuroph.core.NeuralNetwork;
   3 import org.neuroph.nnet.Perceptron;
   4 import org.neuroph.core.data.DataSet;
   5 import org.neuroph.core.data.DataSetRow;
   6 
   7 /**
   8  * This sample shows how to create, train, save and load simple Perceptron
   9  * neural network
  10  */
  11 public class PerceptronSample {
  12 
  13         public static void main(String args[]) {
  14 
  15                 // create training set (logical AND function)
  16                 DataSet trainingSet = new DataSet(2, 1);
  17                 trainingSet.addRow(new DataSetRow(new double[] { 0, 0 }, new double[] { 0 }));
  18                 trainingSet.addRow(new DataSetRow(new double[] { 0, 1 }, new double[] { 0 }));
  19                 trainingSet.addRow(new DataSetRow(new double[] { 1, 0 }, new double[] { 0 }));
  20                 trainingSet.addRow(new DataSetRow(new double[] { 1, 1 }, new double[] { 1 }));
  21 
  22                 // create perceptron neural network
  23                 NeuralNetwork myPerceptron = new Perceptron(2, 1);
  24 
  25                 // learn the training set
  26                 myPerceptron.learn(trainingSet);
  27 
  28                 // test perceptron
  29                 System.out.println("Testing trained perceptron");
  30                 testNeuralNetwork(myPerceptron, trainingSet);
  31 
  32                 // save trained perceptron
  33                 myPerceptron.save("mySamplePerceptron.nnet");
  34 
  35                 // load saved neural network
  36                 NeuralNetwork loadedPerceptron = NeuralNetwork.load("mySamplePerceptron.nnet");
  37 
  38                 // test loaded neural network
  39                 System.out.println("Testing loaded perceptron");
  40                 testNeuralNetwork(loadedPerceptron, trainingSet);
  41         }
  42 
  43         public static void testNeuralNetwork(NeuralNetwork nnet, DataSet tset) {
  44 
  45                 for (DataSetRow dataRow : tset.getRows()) {
  46 
  47                         nnet.setInput(dataRow.getInput());
  48                         nnet.calculate();
  49                         double[] networkOutput = nnet.getOutput();
  50                         System.out.print("Input: " + Arrays.toString(dataRow.getInput()));
  51                         System.out.println(" Output: " + Arrays.toString(networkOutput));
  52                 }
  53         }
  54 }

Processing code

   1 import org.neuroph.util.plugins.*;
   2 import org.neuroph.core.transfer.*;
   3 import org.neuroph.util.*;
   4 import org.neuroph.nnet.comp.layer.*;
   5 import org.neuroph.nnet.*;
   6 import org.neuroph.core.events.*;
   7 import org.neuroph.core.learning.error.*;
   8 import org.neuroph.core.data.sample.*;
   9 import org.neuroph.util.io.*;
  10 import org.neuroph.core.exceptions.*;
  11 import org.neuroph.core.learning.*;
  12 import org.neuroph.core.input.*;
  13 import org.neuroph.nnet.learning.*;
  14 import org.neuroph.util.benchmark.*;
  15 import org.neuroph.util.random.*;
  16 import org.neuroph.nnet.comp.*;
  17 import org.neuroph.core.learning.stop.*;
  18 import org.neuroph.core.data.*;
  19 import org.neuroph.core.*;
  20 import org.neuroph.nnet.comp.neuron.*;
  21 import org.neuroph.core.data.norm.*;
  22 
  23 import java.util.*;
  24 
  25 /**
  26  * This sample shows how to create, train, save and load simple Perceptron neural network 
  27  */
  28 void setup() {
  29 
  30   // create training set (logical AND function)
  31   DataSet trainingSet = new DataSet(2, 1);
  32   trainingSet.addRow(new DataSetRow(new double[] {
  33     0, 0
  34   }
  35   , new double[] {
  36     0
  37   }
  38   ));
  39   trainingSet.addRow(new DataSetRow(new double[] {
  40     0, 1
  41   }
  42   , new double[] {
  43     0
  44   }
  45   ));
  46   trainingSet.addRow(new DataSetRow(new double[] {
  47     1, 0
  48   }
  49   , new double[] {
  50     0
  51   }
  52   ));
  53   trainingSet.addRow(new DataSetRow(new double[] {
  54     1, 1
  55   }
  56   , new double[] {
  57     1
  58   }
  59   ));
  60 
  61   // create perceptron neural network
  62   NeuralNetwork myPerceptron = new Perceptron(2, 1);
  63 
  64   // learn the training set
  65   myPerceptron.learn(trainingSet);
  66 
  67   // test perceptron
  68   System.out.println("Testing trained perceptron");
  69   testNeuralNetwork(myPerceptron, trainingSet);
  70 
  71   // save trained perceptron
  72   myPerceptron.save("mySamplePerceptron.nnet");
  73 
  74   // load saved neural network
  75   NeuralNetwork loadedPerceptron = NeuralNetwork.load("mySamplePerceptron.nnet");
  76 
  77   // test loaded neural network
  78   System.out.println("Testing loaded perceptron");
  79   testNeuralNetwork(loadedPerceptron, trainingSet);
  80 }
  81 
  82 void testNeuralNetwork(NeuralNetwork nnet, DataSet tset) {
  83 
  84   for (DataSetRow dataRow : tset.getRows()) {
  85 
  86     nnet.setInput(dataRow.getInput());
  87     nnet.calculate();
  88     double[ ] networkOutput = nnet.getOutput();
  89     System.out.print("Input: " + Arrays.toString(dataRow.getInput()) );
  90     System.out.println(" Output: " + Arrays.toString(networkOutput) );
  91   }
  92 }

A trained XOR multilayer perceptron network

MultiLayerPerceptron.nnet

s4ph: NeurophNeuralNetwork (last edited 2016-12-12 22:46:15 by JunHu)