/* * RapidMiner * * Copyright (C) 2001-2008 by Rapid-I and the contributors * * Complete list of developers available at our web site: * * http://rapid-i.com * * This program is free software: you can redistribute it and/or modify * it under the terms of the GNU Affero 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 Affero General Public License for more details. * * You should have received a copy of the GNU Affero General Public License * along with this program. If not, see http://www.gnu.org/licenses/. */ package com.rapidminer.operator.validation; import java.util.ArrayList; import java.util.List; import com.rapidminer.example.ExampleSet; import com.rapidminer.example.set.SplittedExampleSet; import com.rapidminer.operator.IOContainer; import com.rapidminer.operator.IOObject; import com.rapidminer.operator.OperatorDescription; import com.rapidminer.operator.OperatorException; import com.rapidminer.operator.ValueDouble; import com.rapidminer.operator.performance.PerformanceVector; import com.rapidminer.operator.visualization.ProcessLogOperator; import com.rapidminer.parameter.ParameterType; import com.rapidminer.parameter.ParameterTypeBoolean; import com.rapidminer.parameter.ParameterTypeCategory; import com.rapidminer.parameter.ParameterTypeInt; import com.rapidminer.parameter.conditions.BooleanParameterCondition; import com.rapidminer.parameter.conditions.EqualTypeCondition; import com.rapidminer.tools.math.AverageVector; /** * <p> * <code>XValidation</code> encapsulates a cross-validation process. The * example set {@rapidminer.math S} is split up into <var> number_of_validations</var> * subsets {@rapidminer.math S_i}. The inner operators are applied * <var>number_of_validations</var> times using {@rapidminer.math S_i} as the test * set (input of the second inner operator) and {@rapidminer.math S\backslash S_i} * training set (input of the first inner operator). * </p> * * <p> * The first inner operator must accept an * {@link com.rapidminer.example.ExampleSet} while the second must accept an * {@link com.rapidminer.example.ExampleSet} and the output of the first (which * is in most cases a {@link com.rapidminer.operator.Model}) and must produce * a {@link com.rapidminer.operator.performance.PerformanceVector}. * </p> * * <p> * Like other validation schemes the RapidMiner cross validation can use several types * of sampling for building the subsets. Linear sampling simply divides the * example set into partitions without changing the order of the examples. * Shuffled sampling build random subsets from the data. Stratifed sampling * builds random subsets and ensures that the class distribution in the subsets * is the same as in the whole example set. * </p> * * <p>The cross validation operator provides several values which can be logged * by means of a {@link ProcessLogOperator}. Of course the number of the current * iteration can be logged which might be useful for ProcessLog operators wrapped * inside a cross validation. Beside that, all performance estimation operators * of RapidMiner provide access to the average values calculated during the estimation. * Since the operator cannot ensure the names of the delivered criteria, the * ProcessLog operator can access the values via the generic value names:</p> * <ul> * <li>performance: the value for the main criterion calculated by this validation operator</li> * <li>performance1: the value of the first criterion of the performance vector calculated</li> * <li>performance2: the value of the second criterion of the performance vector calculated</li> * <li>performance3: the value of the third criterion of the performance vector calculated</li> * <li>for the main criterion, also the variance and the standard deviation can be * accessed where applicable.</li> * </ul> * * @rapidminer.index cross-validation * @author Ingo Mierswa * @version $Id: XValidation.java,v 1.11 2008/08/25 08:10:35 ingomierswa Exp $ */ public class XValidation extends ValidationChain { /** The parameter name for "Number of subsets for the crossvalidation." */ public static final String PARAMETER_NUMBER_OF_VALIDATIONS = "number_of_validations"; /** The parameter name for "Set the number of validations to the number of examples. If set to true, number_of_validations is ignored" */ public static final String PARAMETER_LEAVE_ONE_OUT = "leave_one_out"; /** The parameter name for "Defines the sampling type of the cross validation (linear = consecutive subsets, shuffled = random subsets, stratified = random subsets with class distribution kept constant)" */ public static final String PARAMETER_SAMPLING_TYPE = "sampling_type"; /** The parameter name for "Indicates if only performance vectors should be averaged or all types of averagable result vectors" */ public static final String PARAMETER_AVERAGE_PERFORMANCES_ONLY = "average_performances_only"; /** The parameter name for "Use the given random seed instead of global random numbers (-1: use global)" */ public static final String PARAMETER_LOCAL_RANDOM_SEED = "local_random_seed"; private int iteration; public XValidation(OperatorDescription description) { super(description); addValue(new ValueDouble("iteration", "The number of the current iteration.") { public double getDoubleValue() { return iteration; } }); } public IOObject[] estimatePerformance(ExampleSet inputSet) throws OperatorException { int number; if (getParameterAsBoolean(PARAMETER_LEAVE_ONE_OUT)) { number = inputSet.size(); } else { number = getParameterAsInt(PARAMETER_NUMBER_OF_VALIDATIONS); } log("Starting " + number + "-fold cross validation"); // Split training / test set int samplingType = getParameterAsInt(PARAMETER_SAMPLING_TYPE); int randomSeed = getParameterAsInt(PARAMETER_LOCAL_RANDOM_SEED); SplittedExampleSet splittedES = new SplittedExampleSet(inputSet, number, samplingType, randomSeed); // start crossvalidation List<AverageVector> averageVectors = new ArrayList<AverageVector>(); for (iteration = 0; iteration < number; iteration++) { splittedES.selectAllSubsetsBut(iteration); learn(splittedES); splittedES.selectSingleSubset(iteration); IOContainer evalOutput = evaluate(splittedES); Tools.handleAverages(evalOutput, averageVectors, getParameterAsBoolean(PARAMETER_AVERAGE_PERFORMANCES_ONLY)); inApplyLoop(); } // end crossvalidation // set last result for plotting purposes. This is an average value and // actually not the last performance value! PerformanceVector averagePerformance = Tools.getPerformanceVector(averageVectors); if (averagePerformance != null) setResult(averagePerformance); AverageVector[] result = new AverageVector[averageVectors.size()]; averageVectors.toArray(result); return result; } public List<ParameterType> getParameterTypes() { List<ParameterType> types = super.getParameterTypes(); types.add(new ParameterTypeBoolean(PARAMETER_AVERAGE_PERFORMANCES_ONLY, "Indicates if only performance vectors should be averaged or all types of averagable result vectors", true)); types.add(new ParameterTypeBoolean(PARAMETER_LEAVE_ONE_OUT, "Set the number of validations to the number of examples. If set to true, number_of_validations is ignored", false)); ParameterType type = new ParameterTypeInt(PARAMETER_NUMBER_OF_VALIDATIONS, "Number of subsets for the crossvalidation.", 2, Integer.MAX_VALUE, 10); type.registerDependencyCondition(new BooleanParameterCondition(this, PARAMETER_LEAVE_ONE_OUT, false)); type.setExpert(false); types.add(type); type = new ParameterTypeCategory(PARAMETER_SAMPLING_TYPE, "Defines the sampling type of the cross validation (linear = consecutive subsets, shuffled = random subsets, stratified = random subsets with class distribution kept constant)", SplittedExampleSet.SAMPLING_NAMES, SplittedExampleSet.STRATIFIED_SAMPLING); type.registerDependencyCondition(new BooleanParameterCondition(this, PARAMETER_LEAVE_ONE_OUT, false)); types.add(type); type = new ParameterTypeInt(PARAMETER_LOCAL_RANDOM_SEED, "Use the given random seed instead of global random numbers (-1: use global)", -1, Integer.MAX_VALUE, -1); type.registerDependencyCondition(new BooleanParameterCondition(this, PARAMETER_LEAVE_ONE_OUT, false)); type.registerDependencyCondition(new EqualTypeCondition(this, PARAMETER_SAMPLING_TYPE, false, SplittedExampleSet.SHUFFLED_SAMPLING, SplittedExampleSet.STRATIFIED_SAMPLING)); types.add(type); return types; } }