/*********************************************************************** This file is part of KEEL-software, the Data Mining tool for regression, classification, clustering, pattern mining and so on. Copyright (C) 2004-2010 F. Herrera (herrera@decsai.ugr.es) L. S�nchez (luciano@uniovi.es) J. Alcal�-Fdez (jalcala@decsai.ugr.es) S. Garc�a (sglopez@ujaen.es) A. Fern�ndez (alberto.fernandez@ujaen.es) J. Luengo (julianlm@decsai.ugr.es) This program 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 3 of the License, or (at your option) any later version. This program 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 this program. If not, see http://www.gnu.org/licenses/ **********************************************************************/ package keel.Algorithms.RE_SL_Postprocess.Genetic_NFRM; /** * <p>Title: Algorithm</p> * * <p>Description: It contains the implementation of the algorithm</p> * * * <p>Company: KEEL </p> * * @author Alberto Fern�ndez * @version 1.0 */ import java.io.IOException; import org.core.*; public class Fuzzy_GB_NFRM { myDataset train, val, test; String outputTr, outputTst, ficheroBD, ficheroBR, ficheroFRM; String inputBD, inputBR; BaseD baseDatos; BaseR baseReglas; int populationSize,nGenerations; double crossProb,mutProb; Individuo ind; //We may declare here the algorithm's parameters private boolean somethingWrong = false; //to check if everything is correct. /** * Default constructor */ public Fuzzy_GB_NFRM() { } /** * It reads the data from the input files (training, validation and test) and parse all the parameters * from the parameters array. * @param parameters parseParameters It contains the input files, output files and parameters */ public Fuzzy_GB_NFRM(parseParameters parameters) { train = new myDataset(); val = new myDataset(); test = new myDataset(); try { System.out.println("\nReading the training set: " + parameters.getTrainingInputFile()); train.readRegressionSet(parameters.getTrainingInputFile(), true); System.out.println("\nReading the validation set: " + parameters.getValidationInputFile()); val.readRegressionSet(parameters.getValidationInputFile(), false); System.out.println("\nReading the test set: " + parameters.getTestInputFile()); test.readRegressionSet(parameters.getTestInputFile(), false); } catch (IOException e) { System.err.println( "There was a problem while reading the input data-sets: " + e); somethingWrong = true; } //We may check if there are some numerical attributes, because our algorithm may not handle them: //somethingWrong = somethingWrong || train.hasNumericalAttributes(); somethingWrong = somethingWrong || train.hasMissingAttributes(); inputBR = parameters.getInputFile(0); inputBD = parameters.getInputFile(1); outputTr = parameters.getTrainingOutputFile(); outputTst = parameters.getTestOutputFile(); ficheroBD = parameters.getOutputFile(0); ficheroBR = parameters.getOutputFile(1); ficheroFRM = parameters.getOutputFile(2); //Now we parse the parameters long semilla = Long.parseLong(parameters.getParameter(0)); populationSize = Integer.parseInt(parameters.getParameter(1)); while ((populationSize % 2) != 0) populationSize++; nGenerations = Integer.parseInt(parameters.getParameter(2)); crossProb = Double.parseDouble(parameters.getParameter(3)); mutProb = Double.parseDouble(parameters.getParameter(4)); Randomize.setSeed(semilla); } /** * It launches the algorithm */ public void execute() { if (somethingWrong) { //We do not execute the program System.err.println("An error was found, either the data-set have numerical values or missing values."); System.err.println("Aborting the program"); //We should not use the statement: System.exit(-1); } else { //We do here the algorithm's operations //baseDatos = new BaseD(L, train.getnInputs(), train.devuelveRangos()); //baseReglas = new BaseR(baseDatos, train, tipoInferencia, tipoCombinacion, pesoRegla); baseDatos = new BaseD(inputBD,train.getnVars()); baseReglas = new BaseR(inputBR,baseDatos); Poblacion pobl = new Poblacion(this.populationSize,baseReglas, train); pobl.procesoGenetico(nGenerations,crossProb, mutProb); ind = pobl.getMejor(); baseDatos.ajusta(ind.cromosoma2); ind.print(); baseDatos.escribeFichero(this.ficheroBD); baseReglas.escribeFichero(this.ficheroBR); ind.escribeFichero(this.ficheroFRM); //Finally we should fill the training and test output files doOutput(this.val, this.outputTr); doOutput(this.test, this.outputTst); System.out.println("Algorithm Finished"); } } /** * It generates the output file from a given dataset and stores it in a file * @param dataset myDataset input dataset * @param filename String the name of the file */ private void doOutput(myDataset dataset, String filename) { String output = new String(""); output = dataset.copyHeader(); //we insert the header in the output file //We write the output for each example for (int i = 0; i < dataset.getnData(); i++) { //for regression: output += dataset.getOutputAsReal(i) + " " + this.regressionOutput(dataset.getExample(i)) + "\n"; } Fichero.escribeFichero(filename, output); } /** * It returns the algorithm classification output given an input example * @param example double[] The input example * @return String the output generated by the algorithm */ private double regressionOutput(double[] example) { return baseReglas.FRM(example,ind.cromosoma1); } }