[29] | 1 | /* |
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| 2 | * This program is free software; you can redistribute it and/or modify |
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| 3 | * it under the terms of the GNU General Public License as published by |
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| 4 | * the Free Software Foundation; either version 2 of the License, or |
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| 5 | * (at your option) any later version. |
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| 6 | * |
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| 7 | * This program is distributed in the hope that it will be useful, |
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| 8 | * but WITHOUT ANY WARRANTY; without even the implied warranty of |
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| 9 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the |
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| 10 | * GNU General Public License for more details. |
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| 11 | * |
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| 12 | * You should have received a copy of the GNU General Public License |
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| 13 | * along with this program; if not, write to the Free Software |
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| 14 | * Foundation, Inc., 675 Mass Ave, Cambridge, MA 02139, USA. |
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| 15 | */ |
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| 16 | |
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| 17 | /* |
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| 18 | * GainRatioAttributeEval.java |
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| 19 | * Copyright (C) 1999 University of Waikato, Hamilton, New Zealand |
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| 20 | * |
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| 21 | */ |
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| 22 | |
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| 23 | package weka.attributeSelection; |
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| 24 | |
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| 25 | import weka.core.Capabilities; |
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| 26 | import weka.core.ContingencyTables; |
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| 27 | import weka.core.Instance; |
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| 28 | import weka.core.Instances; |
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| 29 | import weka.core.Option; |
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| 30 | import weka.core.OptionHandler; |
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| 31 | import weka.core.RevisionUtils; |
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| 32 | import weka.core.Utils; |
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| 33 | import weka.core.Capabilities.Capability; |
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| 34 | import weka.filters.Filter; |
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| 35 | import weka.filters.supervised.attribute.Discretize; |
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| 36 | |
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| 37 | import java.util.Enumeration; |
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| 38 | import java.util.Vector; |
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| 39 | |
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| 40 | /** |
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| 41 | <!-- globalinfo-start --> |
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| 42 | * GainRatioAttributeEval :<br/> |
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| 43 | * <br/> |
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| 44 | * Evaluates the worth of an attribute by measuring the gain ratio with respect to the class.<br/> |
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| 45 | * <br/> |
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| 46 | * GainR(Class, Attribute) = (H(Class) - H(Class | Attribute)) / H(Attribute).<br/> |
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| 47 | * <p/> |
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| 48 | <!-- globalinfo-end --> |
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| 49 | * |
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| 50 | <!-- options-start --> |
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| 51 | * Valid options are: <p/> |
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| 52 | * |
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| 53 | * <pre> -M |
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| 54 | * treat missing values as a seperate value.</pre> |
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| 55 | * |
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| 56 | <!-- options-end --> |
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| 57 | * |
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| 58 | * @author Mark Hall (mhall@cs.waikato.ac.nz) |
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| 59 | * @version $Revision: 5447 $ |
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| 60 | * @see Discretize |
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| 61 | */ |
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| 62 | public class GainRatioAttributeEval |
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| 63 | extends ASEvaluation |
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| 64 | implements AttributeEvaluator, OptionHandler { |
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| 65 | |
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| 66 | /** for serialization */ |
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| 67 | static final long serialVersionUID = -8504656625598579926L; |
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| 68 | |
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| 69 | /** The training instances */ |
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| 70 | private Instances m_trainInstances; |
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| 71 | |
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| 72 | /** The class index */ |
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| 73 | private int m_classIndex; |
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| 74 | |
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| 75 | /** The number of attributes */ |
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| 76 | private int m_numAttribs; |
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| 77 | |
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| 78 | /** The number of instances */ |
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| 79 | private int m_numInstances; |
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| 80 | |
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| 81 | /** The number of classes */ |
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| 82 | private int m_numClasses; |
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| 83 | |
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| 84 | /** Merge missing values */ |
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| 85 | private boolean m_missing_merge; |
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| 86 | |
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| 87 | /** |
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| 88 | * Returns a string describing this attribute evaluator |
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| 89 | * @return a description of the evaluator suitable for |
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| 90 | * displaying in the explorer/experimenter gui |
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| 91 | */ |
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| 92 | public String globalInfo() { |
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| 93 | return "GainRatioAttributeEval :\n\nEvaluates the worth of an attribute " |
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| 94 | +"by measuring the gain ratio with respect to the class.\n\n" |
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| 95 | +"GainR(Class, Attribute) = (H(Class) - H(Class | Attribute)) / " |
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| 96 | +"H(Attribute).\n"; |
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| 97 | } |
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| 98 | |
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| 99 | /** |
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| 100 | * Constructor |
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| 101 | */ |
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| 102 | public GainRatioAttributeEval () { |
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| 103 | resetOptions(); |
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| 104 | } |
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| 105 | |
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| 106 | |
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| 107 | /** |
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| 108 | * Returns an enumeration describing the available options. |
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| 109 | * @return an enumeration of all the available options. |
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| 110 | **/ |
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| 111 | public Enumeration listOptions () { |
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| 112 | Vector newVector = new Vector(1); |
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| 113 | newVector.addElement(new Option("\ttreat missing values as a seperate " |
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| 114 | + "value.", "M", 0, "-M")); |
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| 115 | return newVector.elements(); |
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| 116 | } |
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| 117 | |
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| 118 | |
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| 119 | /** |
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| 120 | * Parses a given list of options. <p/> |
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| 121 | * |
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| 122 | <!-- options-start --> |
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| 123 | * Valid options are: <p/> |
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| 124 | * |
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| 125 | * <pre> -M |
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| 126 | * treat missing values as a seperate value.</pre> |
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| 127 | * |
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| 128 | <!-- options-end --> |
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| 129 | * |
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| 130 | * @param options the list of options as an array of strings |
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| 131 | * @throws Exception if an option is not supported |
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| 132 | **/ |
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| 133 | public void setOptions (String[] options) |
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| 134 | throws Exception { |
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| 135 | resetOptions(); |
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| 136 | setMissingMerge(!(Utils.getFlag('M', options))); |
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| 137 | } |
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| 138 | |
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| 139 | /** |
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| 140 | * Returns the tip text for this property |
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| 141 | * @return tip text for this property suitable for |
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| 142 | * displaying in the explorer/experimenter gui |
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| 143 | */ |
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| 144 | public String missingMergeTipText() { |
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| 145 | return "Distribute counts for missing values. Counts are distributed " |
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| 146 | +"across other values in proportion to their frequency. Otherwise, " |
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| 147 | +"missing is treated as a separate value."; |
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| 148 | } |
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| 149 | |
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| 150 | /** |
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| 151 | * distribute the counts for missing values across observed values |
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| 152 | * |
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| 153 | * @param b true=distribute missing values. |
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| 154 | */ |
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| 155 | public void setMissingMerge (boolean b) { |
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| 156 | m_missing_merge = b; |
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| 157 | } |
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| 158 | |
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| 159 | |
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| 160 | /** |
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| 161 | * get whether missing values are being distributed or not |
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| 162 | * |
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| 163 | * @return true if missing values are being distributed. |
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| 164 | */ |
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| 165 | public boolean getMissingMerge () { |
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| 166 | return m_missing_merge; |
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| 167 | } |
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| 168 | |
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| 169 | |
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| 170 | /** |
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| 171 | * Gets the current settings of WrapperSubsetEval. |
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| 172 | * @return an array of strings suitable for passing to setOptions() |
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| 173 | */ |
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| 174 | public String[] getOptions () { |
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| 175 | String[] options = new String[1]; |
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| 176 | int current = 0; |
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| 177 | |
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| 178 | if (!getMissingMerge()) { |
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| 179 | options[current++] = "-M"; |
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| 180 | } |
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| 181 | |
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| 182 | while (current < options.length) { |
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| 183 | options[current++] = ""; |
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| 184 | } |
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| 185 | |
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| 186 | return options; |
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| 187 | } |
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| 188 | |
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| 189 | /** |
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| 190 | * Returns the capabilities of this evaluator. |
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| 191 | * |
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| 192 | * @return the capabilities of this evaluator |
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| 193 | * @see Capabilities |
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| 194 | */ |
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| 195 | public Capabilities getCapabilities() { |
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| 196 | Capabilities result = super.getCapabilities(); |
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| 197 | result.disableAll(); |
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| 198 | |
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| 199 | // attributes |
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| 200 | result.enable(Capability.NOMINAL_ATTRIBUTES); |
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| 201 | result.enable(Capability.NUMERIC_ATTRIBUTES); |
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| 202 | result.enable(Capability.DATE_ATTRIBUTES); |
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| 203 | result.enable(Capability.MISSING_VALUES); |
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| 204 | |
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| 205 | // class |
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| 206 | result.enable(Capability.NOMINAL_CLASS); |
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| 207 | result.enable(Capability.MISSING_CLASS_VALUES); |
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| 208 | |
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| 209 | return result; |
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| 210 | } |
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| 211 | |
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| 212 | /** |
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| 213 | * Initializes a gain ratio attribute evaluator. |
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| 214 | * Discretizes all attributes that are numeric. |
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| 215 | * |
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| 216 | * @param data set of instances serving as training data |
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| 217 | * @throws Exception if the evaluator has not been |
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| 218 | * generated successfully |
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| 219 | */ |
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| 220 | public void buildEvaluator (Instances data) |
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| 221 | throws Exception { |
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| 222 | |
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| 223 | // can evaluator handle data? |
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| 224 | getCapabilities().testWithFail(data); |
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| 225 | |
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| 226 | m_trainInstances = data; |
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| 227 | m_classIndex = m_trainInstances.classIndex(); |
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| 228 | m_numAttribs = m_trainInstances.numAttributes(); |
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| 229 | m_numInstances = m_trainInstances.numInstances(); |
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| 230 | Discretize disTransform = new Discretize(); |
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| 231 | disTransform.setUseBetterEncoding(true); |
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| 232 | disTransform.setInputFormat(m_trainInstances); |
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| 233 | m_trainInstances = Filter.useFilter(m_trainInstances, disTransform); |
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| 234 | m_numClasses = m_trainInstances.attribute(m_classIndex).numValues(); |
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| 235 | } |
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| 236 | |
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| 237 | |
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| 238 | /** |
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| 239 | * reset options to default values |
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| 240 | */ |
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| 241 | protected void resetOptions () { |
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| 242 | m_trainInstances = null; |
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| 243 | m_missing_merge = true; |
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| 244 | } |
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| 245 | |
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| 246 | |
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| 247 | /** |
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| 248 | * evaluates an individual attribute by measuring the gain ratio |
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| 249 | * of the class given the attribute. |
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| 250 | * |
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| 251 | * @param attribute the index of the attribute to be evaluated |
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| 252 | * @return the gain ratio |
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| 253 | * @throws Exception if the attribute could not be evaluated |
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| 254 | */ |
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| 255 | public double evaluateAttribute (int attribute) |
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| 256 | throws Exception { |
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| 257 | int i, j, ii, jj; |
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| 258 | int ni, nj; |
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| 259 | double sum = 0.0; |
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| 260 | ni = m_trainInstances.attribute(attribute).numValues() + 1; |
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| 261 | nj = m_numClasses + 1; |
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| 262 | double[] sumi, sumj; |
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| 263 | Instance inst; |
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| 264 | double temp = 0.0; |
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| 265 | sumi = new double[ni]; |
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| 266 | sumj = new double[nj]; |
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| 267 | double[][] counts = new double[ni][nj]; |
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| 268 | sumi = new double[ni]; |
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| 269 | sumj = new double[nj]; |
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| 270 | |
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| 271 | for (i = 0; i < ni; i++) { |
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| 272 | sumi[i] = 0.0; |
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| 273 | |
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| 274 | for (j = 0; j < nj; j++) { |
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| 275 | sumj[j] = 0.0; |
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| 276 | counts[i][j] = 0.0; |
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| 277 | } |
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| 278 | } |
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| 279 | |
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| 280 | // Fill the contingency table |
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| 281 | for (i = 0; i < m_numInstances; i++) { |
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| 282 | inst = m_trainInstances.instance(i); |
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| 283 | |
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| 284 | if (inst.isMissing(attribute)) { |
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| 285 | ii = ni - 1; |
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| 286 | } |
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| 287 | else { |
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| 288 | ii = (int)inst.value(attribute); |
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| 289 | } |
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| 290 | |
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| 291 | if (inst.isMissing(m_classIndex)) { |
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| 292 | jj = nj - 1; |
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| 293 | } |
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| 294 | else { |
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| 295 | jj = (int)inst.value(m_classIndex); |
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| 296 | } |
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| 297 | |
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| 298 | counts[ii][jj]++; |
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| 299 | } |
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| 300 | |
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| 301 | // get the row totals |
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| 302 | for (i = 0; i < ni; i++) { |
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| 303 | sumi[i] = 0.0; |
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| 304 | |
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| 305 | for (j = 0; j < nj; j++) { |
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| 306 | sumi[i] += counts[i][j]; |
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| 307 | sum += counts[i][j]; |
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| 308 | } |
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| 309 | } |
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| 310 | |
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| 311 | // get the column totals |
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| 312 | for (j = 0; j < nj; j++) { |
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| 313 | sumj[j] = 0.0; |
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| 314 | |
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| 315 | for (i = 0; i < ni; i++) { |
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| 316 | sumj[j] += counts[i][j]; |
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| 317 | } |
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| 318 | } |
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| 319 | |
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| 320 | // distribute missing counts |
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| 321 | if (m_missing_merge && |
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| 322 | (sumi[ni-1] < m_numInstances) && |
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| 323 | (sumj[nj-1] < m_numInstances)) { |
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| 324 | double[] i_copy = new double[sumi.length]; |
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| 325 | double[] j_copy = new double[sumj.length]; |
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| 326 | double[][] counts_copy = new double[sumi.length][sumj.length]; |
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| 327 | |
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| 328 | for (i = 0; i < ni; i++) { |
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| 329 | System.arraycopy(counts[i], 0, counts_copy[i], 0, sumj.length); |
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| 330 | } |
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| 331 | |
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| 332 | System.arraycopy(sumi, 0, i_copy, 0, sumi.length); |
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| 333 | System.arraycopy(sumj, 0, j_copy, 0, sumj.length); |
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| 334 | double total_missing = (sumi[ni - 1] + sumj[nj - 1] - |
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| 335 | counts[ni - 1][nj - 1]); |
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| 336 | |
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| 337 | // do the missing i's |
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| 338 | if (sumi[ni - 1] > 0.0) { |
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| 339 | for (j = 0; j < nj - 1; j++) { |
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| 340 | if (counts[ni - 1][j] > 0.0) { |
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| 341 | for (i = 0; i < ni - 1; i++) { |
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| 342 | temp = ((i_copy[i]/(sum - i_copy[ni - 1]))*counts[ni - 1][j]); |
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| 343 | counts[i][j] += temp; |
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| 344 | sumi[i] += temp; |
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| 345 | } |
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| 346 | |
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| 347 | counts[ni - 1][j] = 0.0; |
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| 348 | } |
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| 349 | } |
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| 350 | } |
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| 351 | |
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| 352 | sumi[ni - 1] = 0.0; |
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| 353 | |
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| 354 | // do the missing j's |
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| 355 | if (sumj[nj - 1] > 0.0) { |
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| 356 | for (i = 0; i < ni - 1; i++) { |
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| 357 | if (counts[i][nj - 1] > 0.0) { |
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| 358 | for (j = 0; j < nj - 1; j++) { |
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| 359 | temp = ((j_copy[j]/(sum - j_copy[nj - 1]))*counts[i][nj - 1]); |
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| 360 | counts[i][j] += temp; |
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| 361 | sumj[j] += temp; |
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| 362 | } |
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| 363 | |
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| 364 | counts[i][nj - 1] = 0.0; |
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| 365 | } |
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| 366 | } |
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| 367 | } |
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| 368 | |
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| 369 | sumj[nj - 1] = 0.0; |
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| 370 | |
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| 371 | // do the both missing |
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| 372 | if (counts[ni - 1][nj - 1] > 0.0 && total_missing != sum) { |
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| 373 | for (i = 0; i < ni - 1; i++) { |
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| 374 | for (j = 0; j < nj - 1; j++) { |
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| 375 | temp = (counts_copy[i][j]/(sum - total_missing)) * |
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| 376 | counts_copy[ni - 1][nj - 1]; |
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| 377 | counts[i][j] += temp; |
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| 378 | sumi[i] += temp; |
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| 379 | sumj[j] += temp; |
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| 380 | } |
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| 381 | } |
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| 382 | |
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| 383 | counts[ni - 1][nj - 1] = 0.0; |
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| 384 | } |
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| 385 | } |
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| 386 | |
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| 387 | return ContingencyTables.gainRatio(counts); |
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| 388 | } |
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| 389 | |
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| 390 | |
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| 391 | /** |
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| 392 | * Return a description of the evaluator |
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| 393 | * @return description as a string |
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| 394 | */ |
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| 395 | public String toString () { |
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| 396 | StringBuffer text = new StringBuffer(); |
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| 397 | |
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| 398 | if (m_trainInstances == null) { |
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| 399 | text.append("\tGain Ratio evaluator has not been built"); |
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| 400 | } |
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| 401 | else { |
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| 402 | text.append("\tGain Ratio feature evaluator"); |
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| 403 | |
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| 404 | if (!m_missing_merge) { |
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| 405 | text.append("\n\tMissing values treated as seperate"); |
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| 406 | } |
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| 407 | } |
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| 408 | |
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| 409 | text.append("\n"); |
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| 410 | return text.toString(); |
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| 411 | } |
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| 412 | |
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| 413 | /** |
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| 414 | * Returns the revision string. |
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| 415 | * |
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| 416 | * @return the revision |
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| 417 | */ |
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| 418 | public String getRevision() { |
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| 419 | return RevisionUtils.extract("$Revision: 5447 $"); |
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| 420 | } |
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| 421 | |
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| 422 | /** |
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| 423 | * Main method. |
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| 424 | * |
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| 425 | * @param args the options |
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| 426 | * -t training file |
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| 427 | */ |
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| 428 | public static void main (String[] args) { |
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| 429 | runEvaluator(new GainRatioAttributeEval(), args); |
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| 430 | } |
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| 431 | } |
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