| 1 | // Copyright 2015 Georg-August-Universität Göttingen, Germany
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| 2 | //
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| 3 | // Licensed under the Apache License, Version 2.0 (the "License");
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| 4 | // you may not use this file except in compliance with the License.
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| 5 | // You may obtain a copy of the License at
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| 6 | //
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| 7 | // http://www.apache.org/licenses/LICENSE-2.0
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| 8 | //
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| 9 | // Unless required by applicable law or agreed to in writing, software
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| 10 | // distributed under the License is distributed on an "AS IS" BASIS,
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| 11 | // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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| 12 | // See the License for the specific language governing permissions and
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| 13 | // limitations under the License.
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| 14 |
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| 15 | package de.ugoe.cs.cpdp.dataprocessing;
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| 16 |
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| 17 | import java.util.Iterator;
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| 18 | import java.util.SortedSet;
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| 19 | import java.util.TreeSet;
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| 20 | import java.util.logging.Level;
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| 21 |
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| 22 | import org.apache.commons.math3.stat.descriptive.rank.Median;
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| 23 |
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| 24 | import de.ugoe.cs.util.console.Console;
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| 25 | import weka.core.Instance;
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| 26 | import weka.core.Instances;
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| 27 |
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| 28 | /**
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| 29 | * <p>
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| 30 | * This processor implements the CLAMI strategy from the CLAMI paper at ASE 2014 be Nam et al. With
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| 31 | * CLAMI, the original classification of the data is removed and instead a new classification is
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| 32 | * created based on metric values that are higher than the median of the metric. Afterwards, a
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| 33 | * subset of the metrics is selected, where the violations of this median threshold is minimal.
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| 34 | * Finally, all instances where the metric violations are not correct are dropped, leaving
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| 35 | * noise-free data regarding the median threshold classification.
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| 36 | * </p>
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| 37 | * <p>
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| 38 | * This can also be done for the test data (i.e., TestAsTraining data selection), as the original
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| 39 | * classification is completely ignored. Hence, CLAMI is an approach for unsupervised learning.
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| 40 | * </p>
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| 41 | *
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| 42 | * @author Steffen Herbold
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| 43 | */
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| 44 | public class CLAMIProcessor implements IProcessesingStrategy {
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| 45 |
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| 46 | /*
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| 47 | * (non-Javadoc)
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| 48 | *
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| 49 | * @see de.ugoe.cs.cpdp.IParameterizable#setParameter(java.lang.String)
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| 50 | */
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| 51 | @Override
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| 52 | public void setParameter(String parameters) {
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| 53 | // TODO Auto-generated method stub
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| 54 |
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| 55 | }
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| 56 |
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| 57 | /*
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| 58 | * (non-Javadoc)
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| 59 | *
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| 60 | * @see de.ugoe.cs.cpdp.dataprocessing.IProcessesingStrategy#apply(weka.core.Instances,
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| 61 | * weka.core.Instances)
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| 62 | */
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| 63 | @Override
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| 64 | public void apply(Instances testdata, Instances traindata) {
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| 65 | applyCLAMI(testdata, traindata);
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| 66 | }
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| 67 |
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| 68 | /**
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| 69 | * <p>
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| 70 | * Applies the CLAMI processor to the data. The test data is also required, in order to
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| 71 | * guarantee a consistent metric set.
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| 72 | * </p>
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| 73 | *
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| 74 | * @param testdata
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| 75 | * test data; the data is not modified, only metrics are dropped
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| 76 | * @param data
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| 77 | * data to which the CLAMI processor is applied
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| 78 | */
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| 79 | public void applyCLAMI(Instances testdata, Instances data) {
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| 80 |
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| 81 | // first determine medians
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| 82 | double[] medians = new double[data.numAttributes()];
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| 83 | // get medians
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| 84 | for (int j = 0; j < data.numAttributes(); j++) {
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| 85 | if (j != data.classIndex()) {
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| 86 | medians[j] = data.kthSmallestValue(j, (data.numInstances() + 1) >> 1);
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| 87 | }
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| 88 | }
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| 89 | // now determine cluster number for each instance
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| 90 | double[] clusterNumber = new double[data.numInstances()];
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| 91 | for (int i = 0; i < data.numInstances(); i++) {
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| 92 | int countHighValues = 0;
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| 93 | Instance currentInstance = data.get(i);
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| 94 | for (int j = 0; j < data.numAttributes(); j++) {
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| 95 | if (j != data.classIndex()) {
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| 96 | if (currentInstance.value(j) > medians[j]) {
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| 97 | countHighValues++;
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| 98 | }
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| 99 | }
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| 100 | }
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| 101 | clusterNumber[i] = countHighValues;
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| 102 | }
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| 103 |
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| 104 | // determine median of cluster number
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| 105 | Median m = new Median();
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| 106 | double medianClusterNumber = m.evaluate(clusterNumber);
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| 107 |
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| 108 | // now we filter the metrics
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| 109 | int[] numMetricViolations = new int[data.numAttributes()];
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| 110 | for (int j = 0; j < data.numAttributes(); j++) {
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| 111 | int currentViolations = 0;
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| 112 | for (int i = 0; i < data.numInstances(); i++) {
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| 113 | Instance currentInstance = data.get(i);
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| 114 | if (j != data.classIndex()) {
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| 115 | if (clusterNumber[i] > medianClusterNumber) {
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| 116 | // "buggy"
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| 117 | if (currentInstance.value(j) <= medians[j]) {
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| 118 | currentViolations++;
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| 119 | }
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| 120 | }
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| 121 | else {
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| 122 | // "not buggy"
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| 123 | if (currentInstance.value(j) > medians[j]) {
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| 124 | currentViolations++;
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| 125 | }
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| 126 | }
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| 127 | }
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| 128 | }
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| 129 | numMetricViolations[j] = currentViolations;
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| 130 | }
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| 131 |
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| 132 | SortedSet<Integer> distinctViolationCounts = new TreeSet<>();
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| 133 | for (int currentViolations : numMetricViolations) {
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| 134 | distinctViolationCounts.add(currentViolations);
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| 135 | }
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| 136 | Iterator<Integer> violationCountInterator = distinctViolationCounts.iterator();
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| 137 |
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| 138 | int violationCutoff = violationCountInterator.next();
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| 139 | // now we filter the data;
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| 140 | // this is first tried with the metrics with fewest violations. if no buggy/bugfree
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| 141 | // instances remain, this is repeated with the next metrics with second fewest violations,
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| 142 | // and so on.
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| 143 | // this part is a bit unclear from the description in the paper, but I confirmed with the
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| 144 | // author that this is how they implemented it
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| 145 | boolean[] cleanInstances = new boolean[data.numInstances()];
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| 146 | int numCleanBuggyInstances = 0;
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| 147 | int numCleanBugfreeInstances = 0;
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| 148 | do {
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| 149 | violationCutoff = violationCountInterator.next();
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| 150 | cleanInstances = new boolean[data.numInstances()];
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| 151 | numCleanBuggyInstances = 0;
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| 152 | numCleanBugfreeInstances = 0;
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| 153 | for (int i = 0; i < data.numInstances(); i++) {
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| 154 | int currentViolations = 0;
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| 155 | Instance currentInstance = data.get(i);
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| 156 | for (int j = 0; j < data.numAttributes(); j++) {
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| 157 | if (j != data.classIndex() && numMetricViolations[j] == violationCutoff) {
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| 158 | if (clusterNumber[i] > medianClusterNumber) {
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| 159 | // "buggy"
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| 160 | if (currentInstance.value(j) <= medians[j]) {
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| 161 | currentViolations++;
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| 162 | }
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| 163 | }
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| 164 | else {
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| 165 | // "not buggy"
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| 166 | if (currentInstance.value(j) > medians[j]) {
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| 167 | currentViolations++;
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| 168 | }
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| 169 | }
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| 170 | }
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| 171 | }
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| 172 | if (currentViolations == 0) {
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| 173 | cleanInstances[i] = true;
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| 174 | if (clusterNumber[i] > medianClusterNumber) {
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| 175 | numCleanBuggyInstances++;
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| 176 | }
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| 177 | else {
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| 178 | numCleanBugfreeInstances++;
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| 179 | }
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| 180 | }
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| 181 | else {
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| 182 | cleanInstances[i] = false;
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| 183 | }
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| 184 | }
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| 185 | }
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| 186 | while (numCleanBuggyInstances == 0 || numCleanBugfreeInstances == 0);
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| 187 |
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| 188 | // output some interesting information to provide insights into the CLAMI model
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| 189 | Console.traceln(Level.FINE, "Selected Metrics and Median-threshold: ");
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| 190 | for (int j = 0; j < data.numAttributes(); j++) {
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| 191 | if (j != data.classIndex() && numMetricViolations[j] == violationCutoff) {
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| 192 | Console.traceln(Level.FINE, "\t" + data.attribute(j).name() + ": " + medians[j]);
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| 193 | }
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| 194 | }
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| 195 |
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| 196 | // finally modify the instances
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| 197 | // drop the metrics (also from the testdata)
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| 198 | for (int j = data.numAttributes() - 1; j >= 0; j--) {
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| 199 | if (j != data.classIndex() && numMetricViolations[j] != violationCutoff) {
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| 200 | data.deleteAttributeAt(j);
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| 201 | testdata.deleteAttributeAt(j);
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| 202 | }
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| 203 | }
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| 204 | // drop the unclean instances
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| 205 | for (int i = data.numInstances() - 1; i >= 0; i--) {
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| 206 | if (!cleanInstances[i]) {
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| 207 | data.delete(i);
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| 208 | }
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| 209 | else {
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| 210 | // set the classification
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| 211 | if (clusterNumber[i] > medianClusterNumber) {
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| 212 | data.get(i).setClassValue(1.0d);
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| 213 | }
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| 214 | else {
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| 215 | data.get(i).setClassValue(0.0d);
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| 216 | }
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| 217 | }
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| 218 | }
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| 219 | }
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| 220 |
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| 221 | }
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