/* * 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.learner.tree; import java.util.LinkedList; import java.util.List; import com.rapidminer.example.ExampleSet; import com.rapidminer.operator.OperatorDescription; import com.rapidminer.operator.OperatorException; import com.rapidminer.operator.learner.LearnerCapability; import com.rapidminer.parameter.ParameterType; import com.rapidminer.parameter.ParameterTypeBoolean; import com.rapidminer.parameter.ParameterTypeDouble; import com.rapidminer.parameter.ParameterTypeInt; /** * <p>This operator learns decision trees from both nominal and numerical data. * Decision trees are powerful classification methods which often can also * easily be understood. This decision tree learner works similar to Quinlan's * C4.5 or CART.</p> * * <p>The actual type of the tree is determined by the criterion, e.g. using * gain_ratio or Gini for CART / C4.5.</p> * * @rapidminer.index C4.5 * @rapidminer.index CART * * @author Sebastian Land, Ingo Mierswa * @version $Id: DecisionTreeLearner.java,v 1.14 2008/05/09 19:22:53 ingomierswa Exp $ */ public class DecisionTreeLearner extends AbstractTreeLearner { /** The parameter name for the maximum tree depth. */ public static final String PARAMETER_MAXIMAL_DEPTH = "maximal_depth"; /** The parameter name for "The confidence level used for pruning." */ public static final String PARAMETER_CONFIDENCE = "confidence"; /** The parameter name for "Disables the pruning and delivers an unpruned tree." */ public static final String PARAMETER_NO_PRUNING = "no_pruning"; public DecisionTreeLearner(OperatorDescription description) { super(description); } public Pruner getPruner() throws OperatorException { if (!getParameterAsBoolean(PARAMETER_NO_PRUNING)) { return new PessimisticPruner(getParameterAsDouble(PARAMETER_CONFIDENCE), new DecisionTreeLeafCreator()); } else { return null; } } public List<Terminator> getTerminationCriteria(ExampleSet exampleSet) throws OperatorException { List<Terminator> result = new LinkedList<Terminator>(); result.add(new SingleLabelTermination()); result.add(new NoAttributeLeftTermination()); result.add(new EmptyTermination()); int maxDepth = getParameterAsInt(PARAMETER_MAXIMAL_DEPTH); if (maxDepth <= 0) { maxDepth = exampleSet.size(); } result.add(new MaxDepthTermination(maxDepth)); return result; } public boolean supportsCapability(LearnerCapability capability) { if (capability == com.rapidminer.operator.learner.LearnerCapability.BINOMINAL_ATTRIBUTES) return true; if (capability == com.rapidminer.operator.learner.LearnerCapability.POLYNOMINAL_ATTRIBUTES) return true; if (capability == com.rapidminer.operator.learner.LearnerCapability.NUMERICAL_ATTRIBUTES) return true; if (capability == com.rapidminer.operator.learner.LearnerCapability.POLYNOMINAL_CLASS) return true; if (capability == com.rapidminer.operator.learner.LearnerCapability.BINOMINAL_CLASS) return true; if (capability == com.rapidminer.operator.learner.LearnerCapability.WEIGHTED_EXAMPLES) return true; return false; } public List<ParameterType> getParameterTypes() { List<ParameterType> types = super.getParameterTypes(); ParameterType type = new ParameterTypeInt(PARAMETER_MAXIMAL_DEPTH, "The maximum tree depth (-1: no bound)", -1, Integer.MAX_VALUE, 10); type.setExpert(false); types.add(type); type = new ParameterTypeDouble(PARAMETER_CONFIDENCE, "The confidence level used for the pessimistic error calculation of pruning.", 0.0000001, 0.5, 0.25); type.setExpert(false); types.add(type); types.add(new ParameterTypeBoolean(PARAMETER_NO_PRUNING, "Disables the pruning and delivers an unpruned tree.", false)); return types; } }