/** * 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.nnet; import org.neuroph.core.Layer; import org.neuroph.core.NeuralNetwork; import org.neuroph.nnet.comp.InputOutputNeuron; import org.neuroph.nnet.learning.BinaryHebbianLearning; import org.neuroph.util.ConnectionFactory; import org.neuroph.util.LayerFactory; import org.neuroph.util.NeuralNetworkFactory; import org.neuroph.util.NeuralNetworkType; import org.neuroph.util.NeuronProperties; import org.neuroph.util.TransferFunctionType; /** * Bidirectional Associative Memory * @author Zoran Sevarac <sevarac@gmail.com> */ public class BAM extends NeuralNetwork { private static final long serialVersionUID = 1L; /** * Creates an instance of BAM network with specified number of neurons * in input and output layers. * * @param inputNeuronsCount * number of neurons in input layer * @param outputNeuronsCount * number of neurons in output layer */ public BAM(int inputNeuronsCount, int outputNeuronsCount) { // init neuron settings for BAM network NeuronProperties neuronProperties = new NeuronProperties(); neuronProperties.setProperty("neuronType", InputOutputNeuron.class); neuronProperties.setProperty("bias", new Double(0)); neuronProperties.setProperty("transferFunction", TransferFunctionType.STEP); neuronProperties.setProperty("transferFunction.yHigh", new Double(1)); neuronProperties.setProperty("transferFunction.yLow", new Double(0)); this.createNetwork(inputNeuronsCount, outputNeuronsCount, neuronProperties); } /** * Creates BAM network architecture * * @param inputNeuronsCount * number of neurons in input layer * @param outputNeuronsCount * number of neurons in output layer * @param neuronProperties * neuron properties */ private void createNetwork(int inputNeuronsCount, int outputNeuronsCount, NeuronProperties neuronProperties) { // set network type this.setNetworkType(NeuralNetworkType.BAM); // create input layer Layer inputLayer = LayerFactory.createLayer(inputNeuronsCount, neuronProperties); // add input layer to network this.addLayer(inputLayer); // create output layer Layer outputLayer = LayerFactory.createLayer(outputNeuronsCount, neuronProperties); // add output layer to network this.addLayer(outputLayer); // create full connectivity from in to out layer ConnectionFactory.fullConnect(inputLayer, outputLayer); // create full connectivity from out to in layer ConnectionFactory.fullConnect(outputLayer, inputLayer); // set input and output cells for this network NeuralNetworkFactory.setDefaultIO(this); // set Hebbian learning rule for this network this.setLearningRule(new BinaryHebbianLearning()); } }