[12620] | 1 | using System;
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[13895] | 2 | using System.Collections;
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| 3 | using System.IO;
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[12620] | 4 | using System.Linq;
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[12632] | 5 | using HeuristicLab.Data;
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[12620] | 6 | using HeuristicLab.Problems.DataAnalysis;
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| 7 | using Microsoft.VisualStudio.TestTools.UnitTesting;
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| 8 |
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[12658] | 9 | namespace HeuristicLab.Algorithms.DataAnalysis {
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[12620] | 10 | [TestClass()]
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[12710] | 11 | public class GradientBoostingTest {
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[12620] | 12 | [TestMethod]
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| 13 | [TestCategory("Algorithms.DataAnalysis")]
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| 14 | [TestProperty("Time", "short")]
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| 15 | public void DecisionTreeTest() {
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| 16 | {
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| 17 | var xy = new double[,]
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| 18 | {
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[12658] | 19 | {-1, 20, 0},
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| 20 | {-1, 20, 0},
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| 21 | { 1, 10, 0},
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| 22 | { 1, 10, 0},
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[12620] | 23 | };
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| 24 | var allVariables = new string[] { "y", "x1", "x2" };
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| 25 |
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[12658] | 26 | // x1 <= 15 -> 1
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| 27 | // x1 > 15 -> -1
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[12620] | 28 | BuildTree(xy, allVariables, 10);
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| 29 | }
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| 30 |
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| 31 |
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| 32 | {
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| 33 | var xy = new double[,]
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| 34 | {
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[12658] | 35 | {-1, 20, 1},
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| 36 | {-1, 20, -1},
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| 37 | { 1, 10, -1},
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| 38 | { 1, 10, 1},
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[12620] | 39 | };
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| 40 | var allVariables = new string[] { "y", "x1", "x2" };
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| 41 |
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| 42 | // ignore irrelevant variables
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[12658] | 43 | // x1 <= 15 -> 1
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| 44 | // x1 > 15 -> -1
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[12620] | 45 | BuildTree(xy, allVariables, 10);
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| 46 | }
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| 47 |
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| 48 | {
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| 49 | // split must be by x1 first
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| 50 | var xy = new double[,]
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| 51 | {
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[12658] | 52 | {-2, 20, 1},
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| 53 | {-1, 20, -1},
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| 54 | { 1, 10, -1},
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| 55 | { 2, 10, 1},
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[12620] | 56 | };
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| 57 |
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| 58 | var allVariables = new string[] { "y", "x1", "x2" };
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| 59 |
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[12658] | 60 | // x1 <= 15 AND x2 <= 0 -> 1
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| 61 | // x1 <= 15 AND x2 > 0 -> 2
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| 62 | // x1 > 15 AND x2 <= 0 -> -1
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| 63 | // x1 > 15 AND x2 > 0 -> -2
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[12620] | 64 | BuildTree(xy, allVariables, 10);
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| 65 | }
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| 66 |
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| 67 | {
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| 68 | // averaging ys
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| 69 | var xy = new double[,]
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| 70 | {
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[12658] | 71 | {-2.5, 20, 1},
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| 72 | {-1.5, 20, 1},
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| 73 | {-1.5, 20, -1},
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[12661] | 74 | {-0.5, 20, -1},
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[12658] | 75 | {0.5, 10, -1},
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| 76 | {1.5, 10, -1},
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| 77 | {1.5, 10, 1},
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| 78 | {2.5, 10, 1},
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[12620] | 79 | };
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| 80 |
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| 81 | var allVariables = new string[] { "y", "x1", "x2" };
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| 82 |
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[12658] | 83 | // x1 <= 15 AND x2 <= 0 -> 1
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| 84 | // x1 <= 15 AND x2 > 0 -> 2
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| 85 | // x1 > 15 AND x2 <= 0 -> -1
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| 86 | // x1 > 15 AND x2 > 0 -> -2
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[12620] | 87 | BuildTree(xy, allVariables, 10);
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| 88 | }
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| 89 |
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| 90 |
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| 91 | {
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| 92 | // diagonal split (no split possible)
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| 93 | var xy = new double[,]
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| 94 | {
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[12658] | 95 | { 1, 1, 1},
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| 96 | {-1, 1, 2},
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| 97 | {-1, 2, 1},
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| 98 | { 1, 2, 2},
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[12620] | 99 | };
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| 100 |
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| 101 | var allVariables = new string[] { "y", "x1", "x2" };
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| 102 |
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| 103 | // split cannot be found
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[12658] | 104 | // -> 0.0
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[12620] | 105 | BuildTree(xy, allVariables, 3);
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| 106 | }
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| 107 | {
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| 108 | // almost diagonal split
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| 109 | var xy = new double[,]
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| 110 | {
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[12658] | 111 | { 1, 1, 1},
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| 112 | {-1, 1, 2},
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| 113 | {-1, 2, 1},
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| 114 | { 1.0001, 2, 2},
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[12620] | 115 | };
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| 116 |
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| 117 | var allVariables = new string[] { "y", "x1", "x2" };
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[12632] | 118 | // (two possible solutions)
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[12658] | 119 | // x2 <= 1.5 -> 0
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| 120 | // x2 > 1.5 -> 0 (not quite)
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[12632] | 121 | BuildTree(xy, allVariables, 3);
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| 122 |
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[12658] | 123 | // x1 <= 1.5 AND x2 <= 1.5 -> 1
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| 124 | // x1 <= 1.5 AND x2 > 1.5 -> -1
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| 125 | // x1 > 1.5 AND x2 <= 1.5 -> -1
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| 126 | // x1 > 1.5 AND x2 > 1.5 -> 1 (not quite)
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[12632] | 127 | BuildTree(xy, allVariables, 7);
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[12620] | 128 | }
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| 129 | {
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| 130 | // unbalanced split
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| 131 | var xy = new double[,]
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| 132 | {
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| 133 | {-1, 1, 1},
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| 134 | {-1, 1, 2},
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| 135 | {0.9, 2, 1},
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| 136 | {1.1, 2, 2},
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| 137 | };
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| 138 |
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| 139 | var allVariables = new string[] { "y", "x1", "x2" };
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| 140 | // x1 <= 1.5 -> -1.0
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| 141 | // x1 > 1.5 AND x2 <= 1.5 -> 0.9
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| 142 | // x1 > 1.5 AND x2 > 1.5 -> 1.1
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[12632] | 143 | BuildTree(xy, allVariables, 10);
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[12620] | 144 | }
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| 145 |
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[12632] | 146 | {
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| 147 | // unbalanced split
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| 148 | var xy = new double[,]
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| 149 | {
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| 150 | {-1, 1, 1},
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| 151 | {-1, 1, 2},
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| 152 | {-1, 2, 1},
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[12658] | 153 | { 3, 2, 2},
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[12632] | 154 | };
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| 155 |
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| 156 | var allVariables = new string[] { "y", "x1", "x2" };
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| 157 | // (two possible solutions)
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| 158 | // x2 <= 1.5 -> -1.0
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| 159 | // x2 > 1.5 AND x1 <= 1.5 -> -1.0
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[12658] | 160 | // x2 > 1.5 AND x1 > 1.5 -> 3.0
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[12632] | 161 | BuildTree(xy, allVariables, 10);
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| 162 | }
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[12620] | 163 | }
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| 164 |
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[12632] | 165 | [TestMethod]
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| 166 | [TestCategory("Algorithms.DataAnalysis")]
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[13895] | 167 | [TestProperty("Time", "short")]
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| 168 | public void TestDecisionTreePartialDependence() {
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| 169 | var provider = new HeuristicLab.Problems.Instances.DataAnalysis.RegressionRealWorldInstanceProvider();
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| 170 | var instance = provider.GetDataDescriptors().Single(x => x.Name.Contains("Tower"));
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| 171 | var regProblem = new RegressionProblem();
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| 172 | regProblem.Load(provider.LoadData(instance));
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| 173 | var problemData = regProblem.ProblemData;
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| 174 | var state = GradientBoostedTreesAlgorithmStatic.CreateGbmState(problemData, new SquaredErrorLoss(), randSeed: 31415, maxSize: 10, r: 0.5, m: 1, nu: 0.02);
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| 175 | for (int i = 0; i < 1000; i++)
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| 176 | GradientBoostedTreesAlgorithmStatic.MakeStep(state);
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| 177 |
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| 178 |
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| 179 | var mostImportantVar = state.GetVariableRelevance().OrderByDescending(kvp => kvp.Value).First();
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| 180 | Console.WriteLine("var: {0} relevance: {1}", mostImportantVar.Key, mostImportantVar.Value);
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| 181 | var model = ((IGradientBoostedTreesModel)state.GetModel());
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| 182 | var treeM = model.Models.Skip(1).First();
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| 183 | Console.WriteLine(treeM.ToString());
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| 184 | Console.WriteLine();
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| 185 |
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| 186 | var mostImportantVarValues = problemData.Dataset.GetDoubleValues(mostImportantVar.Key).OrderBy(x => x).ToArray();
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| 187 | var ds = new ModifiableDataset(new string[] { mostImportantVar.Key },
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| 188 | new IList[] { mostImportantVarValues.ToList<double>() });
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| 189 |
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| 190 | var estValues = model.GetEstimatedValues(ds, Enumerable.Range(0, mostImportantVarValues.Length)).ToArray();
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| 191 |
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| 192 | for (int i = 0; i < mostImportantVarValues.Length; i += 10) {
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| 193 | Console.WriteLine("{0,-5:N3} {1,-5:N3}", mostImportantVarValues[i], estValues[i]);
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| 194 | }
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| 195 | }
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| 196 |
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| 197 | [TestMethod]
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| 198 | [TestCategory("Algorithms.DataAnalysis")]
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| 199 | [TestProperty("Time", "short")]
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| 200 | public void TestDecisionTreePersistence() {
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| 201 | var provider = new HeuristicLab.Problems.Instances.DataAnalysis.RegressionRealWorldInstanceProvider();
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| 202 | var instance = provider.GetDataDescriptors().Single(x => x.Name.Contains("Tower"));
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| 203 | var regProblem = new RegressionProblem();
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| 204 | regProblem.Load(provider.LoadData(instance));
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| 205 | var problemData = regProblem.ProblemData;
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| 206 | var state = GradientBoostedTreesAlgorithmStatic.CreateGbmState(problemData, new SquaredErrorLoss(), randSeed: 31415, maxSize: 100, r: 0.5, m: 1, nu: 1);
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| 207 | GradientBoostedTreesAlgorithmStatic.MakeStep(state);
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| 208 |
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| 209 | var model = ((IGradientBoostedTreesModel)state.GetModel());
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| 210 | var treeM = model.Models.Skip(1).First();
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| 211 | var origStr = treeM.ToString();
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| 212 | using (var memStream = new MemoryStream()) {
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| 213 | Persistence.Default.Xml.XmlGenerator.Serialize(treeM, memStream);
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| 214 | var buf = memStream.GetBuffer();
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| 215 | using (var restoreStream = new MemoryStream(buf)) {
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| 216 | var restoredTree = Persistence.Default.Xml.XmlParser.Deserialize(restoreStream);
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| 217 | var restoredStr = restoredTree.ToString();
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| 218 | Assert.AreEqual(origStr, restoredStr);
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| 219 | }
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| 220 | }
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| 221 | }
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| 222 |
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| 223 | [TestMethod]
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| 224 | [TestCategory("Algorithms.DataAnalysis")]
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[12632] | 225 | [TestProperty("Time", "long")]
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| 226 | public void GradientBoostingTestTowerSquaredError() {
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| 227 | var gbt = new GradientBoostedTreesAlgorithm();
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| 228 | var provider = new HeuristicLab.Problems.Instances.DataAnalysis.RegressionRealWorldInstanceProvider();
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| 229 | var instance = provider.GetDataDescriptors().Single(x => x.Name.Contains("Tower"));
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| 230 | var regProblem = new RegressionProblem();
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| 231 | regProblem.Load(provider.LoadData(instance));
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| 232 |
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| 233 | #region Algorithm Configuration
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| 234 | gbt.Problem = regProblem;
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| 235 | gbt.Seed = 0;
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| 236 | gbt.SetSeedRandomly = false;
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| 237 | gbt.Iterations = 5000;
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| 238 | gbt.MaxSize = 20;
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[12699] | 239 | gbt.CreateSolution = false;
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[12632] | 240 | #endregion
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| 241 |
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[15287] | 242 | gbt.Start();
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[12632] | 243 |
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[12699] | 244 | Console.WriteLine(gbt.ExecutionTime);
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[12632] | 245 | Assert.AreEqual(267.68704241153921, ((DoubleValue)gbt.Results["Loss (train)"].Value).Value, 1E-6);
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| 246 | Assert.AreEqual(393.84704062205469, ((DoubleValue)gbt.Results["Loss (test)"].Value).Value, 1E-6);
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| 247 | }
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| 248 |
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| 249 | [TestMethod]
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| 250 | [TestCategory("Algorithms.DataAnalysis")]
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| 251 | [TestProperty("Time", "long")]
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| 252 | public void GradientBoostingTestTowerAbsoluteError() {
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| 253 | var gbt = new GradientBoostedTreesAlgorithm();
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| 254 | var provider = new HeuristicLab.Problems.Instances.DataAnalysis.RegressionRealWorldInstanceProvider();
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| 255 | var instance = provider.GetDataDescriptors().Single(x => x.Name.Contains("Tower"));
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| 256 | var regProblem = new RegressionProblem();
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| 257 | regProblem.Load(provider.LoadData(instance));
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| 258 |
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| 259 | #region Algorithm Configuration
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| 260 | gbt.Problem = regProblem;
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| 261 | gbt.Seed = 0;
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| 262 | gbt.SetSeedRandomly = false;
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| 263 | gbt.Iterations = 1000;
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| 264 | gbt.MaxSize = 20;
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| 265 | gbt.Nu = 0.02;
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| 266 | gbt.LossFunctionParameter.Value = gbt.LossFunctionParameter.ValidValues.First(l => l.ToString().Contains("Absolute"));
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[12699] | 267 | gbt.CreateSolution = false;
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[12632] | 268 | #endregion
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| 269 |
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[15287] | 270 | gbt.Start();
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[12632] | 271 |
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[12699] | 272 | Console.WriteLine(gbt.ExecutionTime);
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[12632] | 273 | Assert.AreEqual(10.551385044666661, ((DoubleValue)gbt.Results["Loss (train)"].Value).Value, 1E-6);
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| 274 | Assert.AreEqual(12.918001745581172, ((DoubleValue)gbt.Results["Loss (test)"].Value).Value, 1E-6);
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| 275 | }
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| 276 |
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| 277 | [TestMethod]
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| 278 | [TestCategory("Algorithms.DataAnalysis")]
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| 279 | [TestProperty("Time", "long")]
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| 280 | public void GradientBoostingTestTowerRelativeError() {
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| 281 | var gbt = new GradientBoostedTreesAlgorithm();
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| 282 | var provider = new HeuristicLab.Problems.Instances.DataAnalysis.RegressionRealWorldInstanceProvider();
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| 283 | var instance = provider.GetDataDescriptors().Single(x => x.Name.Contains("Tower"));
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| 284 | var regProblem = new RegressionProblem();
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| 285 | regProblem.Load(provider.LoadData(instance));
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| 286 |
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| 287 | #region Algorithm Configuration
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| 288 | gbt.Problem = regProblem;
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| 289 | gbt.Seed = 0;
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| 290 | gbt.SetSeedRandomly = false;
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| 291 | gbt.Iterations = 3000;
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| 292 | gbt.MaxSize = 20;
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| 293 | gbt.Nu = 0.005;
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| 294 | gbt.LossFunctionParameter.Value = gbt.LossFunctionParameter.ValidValues.First(l => l.ToString().Contains("Relative"));
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[12699] | 295 | gbt.CreateSolution = false;
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[12632] | 296 | #endregion
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| 297 |
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[15287] | 298 | gbt.Start();
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[12632] | 299 |
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[12699] | 300 | Console.WriteLine(gbt.ExecutionTime);
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[12632] | 301 | Assert.AreEqual(0.061954221604374943, ((DoubleValue)gbt.Results["Loss (train)"].Value).Value, 1E-6);
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| 302 | Assert.AreEqual(0.06316303473499961, ((DoubleValue)gbt.Results["Loss (test)"].Value).Value, 1E-6);
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| 303 | }
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| 304 |
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| 305 | #region helper
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[12661] | 306 | private void BuildTree(double[,] xy, string[] allVariables, int maxSize) {
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[12620] | 307 | int nRows = xy.GetLength(0);
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| 308 | var allowedInputs = allVariables.Skip(1);
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| 309 | var dataset = new Dataset(allVariables, xy);
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| 310 | var problemData = new RegressionProblemData(dataset, allowedInputs, allVariables.First());
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| 311 | problemData.TrainingPartition.Start = 0;
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| 312 | problemData.TrainingPartition.End = nRows;
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| 313 | problemData.TestPartition.Start = nRows;
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| 314 | problemData.TestPartition.End = nRows;
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[12661] | 315 | var solution = GradientBoostedTreesAlgorithmStatic.TrainGbm(problemData, new SquaredErrorLoss(), maxSize, nu: 1, r: 1, m: 1, maxIterations: 1, randSeed: 31415);
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[13157] | 316 | var model = solution.Model;
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[12620] | 317 | var treeM = model.Models.Skip(1).First() as RegressionTreeModel;
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[12658] | 318 |
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| 319 | Console.WriteLine(treeM.ToString());
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[12620] | 320 | Console.WriteLine();
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| 321 | }
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[12632] | 322 | #endregion
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[12620] | 323 | }
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| 324 | }
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