1 | #region License Information
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2 | /* HeuristicLab
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3 | * Copyright (C) 2002-2015 Heuristic and Evolutionary Algorithms Laboratory (HEAL)
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4 | *
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5 | * This file is part of HeuristicLab.
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6 | *
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7 | * HeuristicLab is free software: you can redistribute it and/or modify
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8 | * it under the terms of the GNU General Public License as published by
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9 | * the Free Software Foundation, either version 3 of the License, or
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10 | * (at your option) any later version.
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11 | *
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12 | * HeuristicLab is distributed in the hope that it will be useful,
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13 | * but WITHOUT ANY WARRANTY; without even the implied warranty of
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14 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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15 | * GNU General Public License for more details.
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16 | *
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17 | * You should have received a copy of the GNU General Public License
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18 | * along with HeuristicLab. If not, see <http://www.gnu.org/licenses/>.
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19 | */
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20 | #endregion
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21 |
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22 | using System;
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23 | using System.Collections.Generic;
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24 | using System.Linq;
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25 | using HeuristicLab.Common;
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26 | using HeuristicLab.Core;
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27 | using HeuristicLab.Persistence.Default.CompositeSerializers.Storable;
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28 | using HeuristicLab.Problems.DataAnalysis;
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29 |
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30 | namespace HeuristicLab.Algorithms.DataAnalysis {
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31 | /// <summary>
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32 | /// Represents a nearest neighbour model for regression and classification
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33 | /// </summary>
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34 | [StorableClass("4AA8CBF7-4CE7-487F-8E35-67AA1A104E8F")]
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35 | [Item("NearestNeighbourModel", "Represents a nearest neighbour model for regression and classification.")]
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36 | public sealed class NearestNeighbourModel : NamedItem, INearestNeighbourModel {
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37 |
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38 | private alglib.nearestneighbor.kdtree kdTree;
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39 | public alglib.nearestneighbor.kdtree KDTree {
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40 | get { return kdTree; }
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41 | set {
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42 | if (value != kdTree) {
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43 | if (value == null) throw new ArgumentNullException();
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44 | kdTree = value;
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45 | OnChanged(EventArgs.Empty);
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46 | }
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47 | }
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48 | }
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49 |
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50 | [Storable]
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51 | private string targetVariable;
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52 | [Storable]
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53 | private string[] allowedInputVariables;
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54 | [Storable]
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55 | private double[] classValues;
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56 | [Storable]
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57 | private int k;
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58 |
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59 | [StorableConstructor]
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60 | private NearestNeighbourModel(bool deserializing)
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61 | : base(deserializing) {
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62 | if (deserializing)
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63 | kdTree = new alglib.nearestneighbor.kdtree();
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64 | }
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65 | private NearestNeighbourModel(NearestNeighbourModel original, Cloner cloner)
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66 | : base(original, cloner) {
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67 | kdTree = new alglib.nearestneighbor.kdtree();
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68 | kdTree.approxf = original.kdTree.approxf;
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69 | kdTree.boxmax = (double[])original.kdTree.boxmax.Clone();
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70 | kdTree.boxmin = (double[])original.kdTree.boxmin.Clone();
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71 | kdTree.buf = (double[])original.kdTree.buf.Clone();
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72 | kdTree.curboxmax = (double[])original.kdTree.curboxmax.Clone();
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73 | kdTree.curboxmin = (double[])original.kdTree.curboxmin.Clone();
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74 | kdTree.curdist = original.kdTree.curdist;
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75 | kdTree.debugcounter = original.kdTree.debugcounter;
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76 | kdTree.idx = (int[])original.kdTree.idx.Clone();
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77 | kdTree.kcur = original.kdTree.kcur;
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78 | kdTree.kneeded = original.kdTree.kneeded;
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79 | kdTree.n = original.kdTree.n;
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80 | kdTree.nodes = (int[])original.kdTree.nodes.Clone();
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81 | kdTree.normtype = original.kdTree.normtype;
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82 | kdTree.nx = original.kdTree.nx;
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83 | kdTree.ny = original.kdTree.ny;
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84 | kdTree.r = (double[])original.kdTree.r.Clone();
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85 | kdTree.rneeded = original.kdTree.rneeded;
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86 | kdTree.selfmatch = original.kdTree.selfmatch;
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87 | kdTree.splits = (double[])original.kdTree.splits.Clone();
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88 | kdTree.tags = (int[])original.kdTree.tags.Clone();
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89 | kdTree.x = (double[])original.kdTree.x.Clone();
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90 | kdTree.xy = (double[,])original.kdTree.xy.Clone();
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91 |
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92 | k = original.k;
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93 | targetVariable = original.targetVariable;
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94 | allowedInputVariables = (string[])original.allowedInputVariables.Clone();
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95 | if (original.classValues != null)
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96 | this.classValues = (double[])original.classValues.Clone();
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97 | }
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98 | public NearestNeighbourModel(IDataset dataset, IEnumerable<int> rows, int k, string targetVariable, IEnumerable<string> allowedInputVariables, double[] classValues = null) {
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99 | Name = ItemName;
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100 | Description = ItemDescription;
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101 | this.k = k;
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102 | this.targetVariable = targetVariable;
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103 | this.allowedInputVariables = allowedInputVariables.ToArray();
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104 |
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105 | var inputMatrix = AlglibUtil.PrepareInputMatrix(dataset,
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106 | allowedInputVariables.Concat(new string[] { targetVariable }),
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107 | rows);
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108 |
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109 | if (inputMatrix.Cast<double>().Any(x => double.IsNaN(x) || double.IsInfinity(x)))
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110 | throw new NotSupportedException(
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111 | "Nearest neighbour classification does not support NaN or infinity values in the input dataset.");
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112 |
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113 | this.kdTree = new alglib.nearestneighbor.kdtree();
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114 |
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115 | var nRows = inputMatrix.GetLength(0);
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116 | var nFeatures = inputMatrix.GetLength(1) - 1;
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117 |
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118 | if (classValues != null) {
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119 | this.classValues = (double[])classValues.Clone();
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120 | int nClasses = classValues.Length;
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121 | // map original class values to values [0..nClasses-1]
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122 | var classIndices = new Dictionary<double, double>();
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123 | for (int i = 0; i < nClasses; i++)
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124 | classIndices[classValues[i]] = i;
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125 |
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126 | for (int row = 0; row < nRows; row++) {
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127 | inputMatrix[row, nFeatures] = classIndices[inputMatrix[row, nFeatures]];
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128 | }
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129 | }
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130 | alglib.nearestneighbor.kdtreebuild(inputMatrix, nRows, inputMatrix.GetLength(1) - 1, 1, 2, kdTree);
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131 | }
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132 |
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133 | public override IDeepCloneable Clone(Cloner cloner) {
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134 | return new NearestNeighbourModel(this, cloner);
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135 | }
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136 |
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137 | public IEnumerable<double> GetEstimatedValues(IDataset dataset, IEnumerable<int> rows) {
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138 | double[,] inputData = AlglibUtil.PrepareInputMatrix(dataset, allowedInputVariables, rows);
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139 |
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140 | int n = inputData.GetLength(0);
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141 | int columns = inputData.GetLength(1);
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142 | double[] x = new double[columns];
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143 | double[] y = new double[1];
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144 | double[] dists = new double[k];
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145 | double[,] neighbours = new double[k, columns + 1];
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146 |
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147 | for (int row = 0; row < n; row++) {
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148 | for (int column = 0; column < columns; column++) {
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149 | x[column] = inputData[row, column];
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150 | }
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151 | int actNeighbours = alglib.nearestneighbor.kdtreequeryknn(kdTree, x, k, false);
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152 | alglib.nearestneighbor.kdtreequeryresultsdistances(kdTree, ref dists);
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153 | alglib.nearestneighbor.kdtreequeryresultsxy(kdTree, ref neighbours);
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154 |
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155 | double distanceWeightedValue = 0.0;
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156 | double distsSum = 0.0;
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157 | for (int i = 0; i < actNeighbours; i++) {
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158 | distanceWeightedValue += neighbours[i, columns] / dists[i];
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159 | distsSum += 1.0 / dists[i];
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160 | }
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161 | yield return distanceWeightedValue / distsSum;
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162 | }
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163 | }
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164 |
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165 | public IEnumerable<double> GetEstimatedClassValues(IDataset dataset, IEnumerable<int> rows) {
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166 | if (classValues == null) throw new InvalidOperationException("No class values are defined.");
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167 | double[,] inputData = AlglibUtil.PrepareInputMatrix(dataset, allowedInputVariables, rows);
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168 |
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169 | int n = inputData.GetLength(0);
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170 | int columns = inputData.GetLength(1);
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171 | double[] x = new double[columns];
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172 | int[] y = new int[classValues.Length];
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173 | double[] dists = new double[k];
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174 | double[,] neighbours = new double[k, columns + 1];
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175 |
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176 | for (int row = 0; row < n; row++) {
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177 | for (int column = 0; column < columns; column++) {
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178 | x[column] = inputData[row, column];
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179 | }
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180 | int actNeighbours = alglib.nearestneighbor.kdtreequeryknn(kdTree, x, k, false);
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181 | alglib.nearestneighbor.kdtreequeryresultsdistances(kdTree, ref dists);
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182 | alglib.nearestneighbor.kdtreequeryresultsxy(kdTree, ref neighbours);
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183 |
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184 | Array.Clear(y, 0, y.Length);
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185 | for (int i = 0; i < actNeighbours; i++) {
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186 | int classValue = (int)Math.Round(neighbours[i, columns]);
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187 | y[classValue]++;
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188 | }
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189 |
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190 | // find class for with the largest probability value
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191 | int maxProbClassIndex = 0;
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192 | double maxProb = y[0];
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193 | for (int i = 1; i < y.Length; i++) {
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194 | if (maxProb < y[i]) {
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195 | maxProb = y[i];
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196 | maxProbClassIndex = i;
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197 | }
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198 | }
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199 | yield return classValues[maxProbClassIndex];
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200 | }
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201 | }
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202 |
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203 | public INearestNeighbourRegressionSolution CreateRegressionSolution(IRegressionProblemData problemData) {
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204 | return new NearestNeighbourRegressionSolution(new RegressionProblemData(problemData), this);
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205 | }
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206 | IRegressionSolution IRegressionModel.CreateRegressionSolution(IRegressionProblemData problemData) {
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207 | return CreateRegressionSolution(problemData);
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208 | }
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209 | public INearestNeighbourClassificationSolution CreateClassificationSolution(IClassificationProblemData problemData) {
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210 | return new NearestNeighbourClassificationSolution(new ClassificationProblemData(problemData), this);
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211 | }
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212 | IClassificationSolution IClassificationModel.CreateClassificationSolution(IClassificationProblemData problemData) {
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213 | return CreateClassificationSolution(problemData);
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214 | }
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215 |
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216 | #region events
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217 | public event EventHandler Changed;
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218 | private void OnChanged(EventArgs e) {
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219 | var handlers = Changed;
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220 | if (handlers != null)
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221 | handlers(this, e);
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222 | }
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223 | #endregion
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224 |
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225 | #region persistence
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226 | [Storable]
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227 | public double KDTreeApproxF {
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228 | get { return kdTree.approxf; }
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229 | set { kdTree.approxf = value; }
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230 | }
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231 | [Storable]
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232 | public double[] KDTreeBoxMax {
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233 | get { return kdTree.boxmax; }
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234 | set { kdTree.boxmax = value; }
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235 | }
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236 | [Storable]
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237 | public double[] KDTreeBoxMin {
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238 | get { return kdTree.boxmin; }
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239 | set { kdTree.boxmin = value; }
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240 | }
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241 | [Storable]
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242 | public double[] KDTreeBuf {
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243 | get { return kdTree.buf; }
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244 | set { kdTree.buf = value; }
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245 | }
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246 | [Storable]
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247 | public double[] KDTreeCurBoxMax {
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248 | get { return kdTree.curboxmax; }
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249 | set { kdTree.curboxmax = value; }
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250 | }
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251 | [Storable]
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252 | public double[] KDTreeCurBoxMin {
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253 | get { return kdTree.curboxmin; }
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254 | set { kdTree.curboxmin = value; }
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255 | }
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256 | [Storable]
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257 | public double KDTreeCurDist {
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258 | get { return kdTree.curdist; }
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259 | set { kdTree.curdist = value; }
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260 | }
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261 | [Storable]
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262 | public int KDTreeDebugCounter {
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263 | get { return kdTree.debugcounter; }
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264 | set { kdTree.debugcounter = value; }
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265 | }
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266 | [Storable]
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267 | public int[] KDTreeIdx {
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268 | get { return kdTree.idx; }
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269 | set { kdTree.idx = value; }
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270 | }
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271 | [Storable]
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272 | public int KDTreeKCur {
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273 | get { return kdTree.kcur; }
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274 | set { kdTree.kcur = value; }
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275 | }
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276 | [Storable]
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277 | public int KDTreeKNeeded {
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278 | get { return kdTree.kneeded; }
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279 | set { kdTree.kneeded = value; }
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280 | }
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281 | [Storable]
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282 | public int KDTreeN {
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283 | get { return kdTree.n; }
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284 | set { kdTree.n = value; }
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285 | }
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286 | [Storable]
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287 | public int[] KDTreeNodes {
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288 | get { return kdTree.nodes; }
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289 | set { kdTree.nodes = value; }
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290 | }
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291 | [Storable]
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292 | public int KDTreeNormType {
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293 | get { return kdTree.normtype; }
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294 | set { kdTree.normtype = value; }
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295 | }
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296 | [Storable]
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297 | public int KDTreeNX {
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298 | get { return kdTree.nx; }
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299 | set { kdTree.nx = value; }
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300 | }
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301 | [Storable]
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302 | public int KDTreeNY {
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303 | get { return kdTree.ny; }
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304 | set { kdTree.ny = value; }
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305 | }
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306 | [Storable]
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307 | public double[] KDTreeR {
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308 | get { return kdTree.r; }
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309 | set { kdTree.r = value; }
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310 | }
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311 | [Storable]
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312 | public double KDTreeRNeeded {
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313 | get { return kdTree.rneeded; }
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314 | set { kdTree.rneeded = value; }
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315 | }
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316 | [Storable]
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317 | public bool KDTreeSelfMatch {
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318 | get { return kdTree.selfmatch; }
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319 | set { kdTree.selfmatch = value; }
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320 | }
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321 | [Storable]
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322 | public double[] KDTreeSplits {
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323 | get { return kdTree.splits; }
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324 | set { kdTree.splits = value; }
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325 | }
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326 | [Storable]
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327 | public int[] KDTreeTags {
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328 | get { return kdTree.tags; }
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329 | set { kdTree.tags = value; }
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330 | }
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331 | [Storable]
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332 | public double[] KDTreeX {
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333 | get { return kdTree.x; }
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334 | set { kdTree.x = value; }
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335 | }
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336 | [Storable]
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337 | public double[,] KDTreeXY {
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338 | get { return kdTree.xy; }
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339 | set { kdTree.xy = value; }
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340 | }
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341 | #endregion
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342 | }
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343 | }
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