[13646] | 1 | #region License Information
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| 2 | /* HeuristicLab
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[17180] | 3 | * Copyright (C) Heuristic and Evolutionary Algorithms Laboratory (HEAL)
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[13646] | 4 | * and the BEACON Center for the Study of Evolution in Action.
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| 5 | *
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| 6 | * This file is part of HeuristicLab.
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| 7 | *
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| 8 | * HeuristicLab is free software: you can redistribute it and/or modify
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| 9 | * it under the terms of the GNU General Public License as published by
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| 10 | * the Free Software Foundation, either version 3 of the License, or
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| 11 | * (at your option) any later version.
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| 12 | *
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| 13 | * HeuristicLab is distributed in the hope that it will be useful,
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| 14 | * but WITHOUT ANY WARRANTY; without even the implied warranty of
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| 15 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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| 16 | * GNU General Public License for more details.
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| 17 | *
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| 18 | * You should have received a copy of the GNU General Public License
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| 19 | * along with HeuristicLab. If not, see <http://www.gnu.org/licenses/>.
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| 20 | */
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| 21 | #endregion
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| 22 |
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| 23 | using System;
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| 24 | using System.Collections.Generic;
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| 25 | using System.Linq;
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| 26 | using System.Threading;
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| 27 | using HeuristicLab.Analysis;
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| 28 | using HeuristicLab.Common;
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| 29 | using HeuristicLab.Core;
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| 30 | using HeuristicLab.Data;
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| 31 | using HeuristicLab.Encodings.SymbolicExpressionTreeEncoding;
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| 32 | using HeuristicLab.Optimization;
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| 33 | using HeuristicLab.Parameters;
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[16565] | 34 | using HEAL.Attic;
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[13646] | 35 | using HeuristicLab.Problems.DataAnalysis;
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| 36 | using HeuristicLab.Problems.DataAnalysis.Symbolic;
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| 37 | using HeuristicLab.Problems.DataAnalysis.Symbolic.Regression;
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| 38 | using HeuristicLab.Random;
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[13653] | 39 | using HeuristicLab.Selection;
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[13646] | 40 |
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| 41 | namespace HeuristicLab.Algorithms.DataAnalysis.MctsSymbolicRegression {
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| 42 | [Item("Gradient Boosting Machine Regression (GBM)",
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| 43 | "Gradient boosting for any regression base learner (e.g. MCTS symbolic regression)")]
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[16565] | 44 | [StorableType("98B340D7-DB23-40F9-A9CC-C3E652E92671")]
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[13646] | 45 | [Creatable(CreatableAttribute.Categories.DataAnalysisRegression, Priority = 350)]
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[14523] | 46 | public class GradientBoostingRegressionAlgorithm : FixedDataAnalysisAlgorithm<IRegressionProblem> {
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[13646] | 47 |
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| 48 | #region ParameterNames
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| 49 |
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| 50 | private const string IterationsParameterName = "Iterations";
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| 51 | private const string NuParameterName = "Nu";
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| 52 | private const string MParameterName = "M";
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| 53 | private const string RParameterName = "R";
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| 54 | private const string RegressionAlgorithmParameterName = "RegressionAlgorithm";
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| 55 | private const string SeedParameterName = "Seed";
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| 56 | private const string SetSeedRandomlyParameterName = "SetSeedRandomly";
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| 57 | private const string CreateSolutionParameterName = "CreateSolution";
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[13889] | 58 | private const string StoreRunsParameterName = "StoreRuns";
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[13646] | 59 | private const string RegressionAlgorithmSolutionResultParameterName = "RegressionAlgorithmResult";
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| 60 |
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| 61 | #endregion
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| 62 |
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| 63 | #region ParameterProperties
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| 64 |
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| 65 | public IFixedValueParameter<IntValue> IterationsParameter {
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| 66 | get { return (IFixedValueParameter<IntValue>)Parameters[IterationsParameterName]; }
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| 67 | }
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| 68 |
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| 69 | public IFixedValueParameter<DoubleValue> NuParameter {
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| 70 | get { return (IFixedValueParameter<DoubleValue>)Parameters[NuParameterName]; }
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| 71 | }
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| 72 |
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| 73 | public IFixedValueParameter<DoubleValue> RParameter {
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| 74 | get { return (IFixedValueParameter<DoubleValue>)Parameters[RParameterName]; }
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| 75 | }
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| 76 |
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| 77 | public IFixedValueParameter<DoubleValue> MParameter {
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| 78 | get { return (IFixedValueParameter<DoubleValue>)Parameters[MParameterName]; }
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| 79 | }
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| 80 |
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| 81 | // regression algorithms are currently: DataAnalysisAlgorithms, BasicAlgorithms and engine algorithms with no common interface
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| 82 | public IConstrainedValueParameter<IAlgorithm> RegressionAlgorithmParameter {
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| 83 | get { return (IConstrainedValueParameter<IAlgorithm>)Parameters[RegressionAlgorithmParameterName]; }
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| 84 | }
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| 85 |
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| 86 | public IFixedValueParameter<StringValue> RegressionAlgorithmSolutionResultParameter {
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| 87 | get { return (IFixedValueParameter<StringValue>)Parameters[RegressionAlgorithmSolutionResultParameterName]; }
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| 88 | }
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| 89 |
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| 90 | public IFixedValueParameter<IntValue> SeedParameter {
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| 91 | get { return (IFixedValueParameter<IntValue>)Parameters[SeedParameterName]; }
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| 92 | }
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| 93 |
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| 94 | public FixedValueParameter<BoolValue> SetSeedRandomlyParameter {
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| 95 | get { return (FixedValueParameter<BoolValue>)Parameters[SetSeedRandomlyParameterName]; }
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| 96 | }
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| 97 |
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| 98 | public IFixedValueParameter<BoolValue> CreateSolutionParameter {
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| 99 | get { return (IFixedValueParameter<BoolValue>)Parameters[CreateSolutionParameterName]; }
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| 100 | }
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[13889] | 101 | public IFixedValueParameter<BoolValue> StoreRunsParameter {
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| 102 | get { return (IFixedValueParameter<BoolValue>)Parameters[StoreRunsParameterName]; }
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| 103 | }
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[13646] | 104 |
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| 105 | #endregion
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| 106 |
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| 107 | #region Properties
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| 108 |
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| 109 | public int Iterations {
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| 110 | get { return IterationsParameter.Value.Value; }
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| 111 | set { IterationsParameter.Value.Value = value; }
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| 112 | }
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| 113 |
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| 114 | public int Seed {
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| 115 | get { return SeedParameter.Value.Value; }
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| 116 | set { SeedParameter.Value.Value = value; }
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| 117 | }
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| 118 |
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| 119 | public bool SetSeedRandomly {
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| 120 | get { return SetSeedRandomlyParameter.Value.Value; }
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| 121 | set { SetSeedRandomlyParameter.Value.Value = value; }
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| 122 | }
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| 123 |
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| 124 | public double Nu {
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| 125 | get { return NuParameter.Value.Value; }
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| 126 | set { NuParameter.Value.Value = value; }
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| 127 | }
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| 128 |
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| 129 | public double R {
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| 130 | get { return RParameter.Value.Value; }
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| 131 | set { RParameter.Value.Value = value; }
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| 132 | }
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| 133 |
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| 134 | public double M {
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| 135 | get { return MParameter.Value.Value; }
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| 136 | set { MParameter.Value.Value = value; }
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| 137 | }
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| 138 |
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| 139 | public bool CreateSolution {
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| 140 | get { return CreateSolutionParameter.Value.Value; }
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| 141 | set { CreateSolutionParameter.Value.Value = value; }
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| 142 | }
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| 143 |
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[13889] | 144 | public bool StoreRuns {
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| 145 | get { return StoreRunsParameter.Value.Value; }
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| 146 | set { StoreRunsParameter.Value.Value = value; }
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| 147 | }
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| 148 |
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[13646] | 149 | public IAlgorithm RegressionAlgorithm {
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| 150 | get { return RegressionAlgorithmParameter.Value; }
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| 151 | }
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| 152 |
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| 153 | public string RegressionAlgorithmResult {
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| 154 | get { return RegressionAlgorithmSolutionResultParameter.Value.Value; }
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| 155 | set { RegressionAlgorithmSolutionResultParameter.Value.Value = value; }
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| 156 | }
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| 157 |
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| 158 | #endregion
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| 159 |
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| 160 | [StorableConstructor]
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[16565] | 161 | protected GradientBoostingRegressionAlgorithm(StorableConstructorFlag _) : base(_) {
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[13646] | 162 | }
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| 163 |
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| 164 | protected GradientBoostingRegressionAlgorithm(GradientBoostingRegressionAlgorithm original, Cloner cloner)
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| 165 | : base(original, cloner) {
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| 166 | }
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| 167 |
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| 168 | public override IDeepCloneable Clone(Cloner cloner) {
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| 169 | return new GradientBoostingRegressionAlgorithm(this, cloner);
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| 170 | }
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| 171 |
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| 172 | public GradientBoostingRegressionAlgorithm() {
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| 173 | Problem = new RegressionProblem(); // default problem
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[13978] | 174 | var osgp = CreateOSGP();
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[13646] | 175 | var regressionAlgs = new ItemSet<IAlgorithm>(new IAlgorithm[] {
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[13653] | 176 | new RandomForestRegression(),
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[13978] | 177 | osgp,
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[13646] | 178 | });
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| 179 | foreach (var alg in regressionAlgs) alg.Prepare();
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| 180 |
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| 181 |
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| 182 | Parameters.Add(new FixedValueParameter<IntValue>(IterationsParameterName,
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| 183 | "Number of iterations", new IntValue(100)));
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| 184 | Parameters.Add(new FixedValueParameter<IntValue>(SeedParameterName,
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| 185 | "The random seed used to initialize the new pseudo random number generator.", new IntValue(0)));
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| 186 | Parameters.Add(new FixedValueParameter<BoolValue>(SetSeedRandomlyParameterName,
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| 187 | "True if the random seed should be set to a random value, otherwise false.", new BoolValue(true)));
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| 188 | Parameters.Add(new FixedValueParameter<DoubleValue>(NuParameterName,
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| 189 | "The learning rate nu when updating predictions in GBM (0 < nu <= 1)", new DoubleValue(0.5)));
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| 190 | Parameters.Add(new FixedValueParameter<DoubleValue>(RParameterName,
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| 191 | "The fraction of rows that are sampled randomly for the base learner in each iteration (0 < r <= 1)",
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| 192 | new DoubleValue(1)));
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| 193 | Parameters.Add(new FixedValueParameter<DoubleValue>(MParameterName,
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| 194 | "The fraction of variables that are sampled randomly for the base learner in each iteration (0 < m <= 1)",
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| 195 | new DoubleValue(0.5)));
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| 196 | Parameters.Add(new ConstrainedValueParameter<IAlgorithm>(RegressionAlgorithmParameterName,
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[13978] | 197 | "The regression algorithm to use as a base learner", regressionAlgs, osgp));
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[13646] | 198 | Parameters.Add(new FixedValueParameter<StringValue>(RegressionAlgorithmSolutionResultParameterName,
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| 199 | "The name of the solution produced by the regression algorithm", new StringValue("Solution")));
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| 200 | Parameters[RegressionAlgorithmSolutionResultParameterName].Hidden = true;
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| 201 | Parameters.Add(new FixedValueParameter<BoolValue>(CreateSolutionParameterName,
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| 202 | "Flag that indicates if a solution should be produced at the end of the run", new BoolValue(true)));
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| 203 | Parameters[CreateSolutionParameterName].Hidden = true;
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[13889] | 204 | Parameters.Add(new FixedValueParameter<BoolValue>(StoreRunsParameterName,
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| 205 | "Flag that indicates if the results of the individual runs should be stored for detailed analysis", new BoolValue(false)));
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| 206 | Parameters[StoreRunsParameterName].Hidden = true;
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[13646] | 207 | }
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| 208 |
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| 209 | protected override void Run(CancellationToken cancellationToken) {
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| 210 | // Set up the algorithm
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[16071] | 211 | if (SetSeedRandomly) Seed = RandomSeedGenerator.GetSeed();
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[13646] | 212 | var rand = new MersenneTwister((uint)Seed);
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| 213 |
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| 214 | // Set up the results display
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| 215 | var iterations = new IntValue(0);
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| 216 | Results.Add(new Result("Iterations", iterations));
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| 217 |
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| 218 | var table = new DataTable("Qualities");
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[13889] | 219 | table.Rows.Add(new DataRow("R² (train)"));
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| 220 | table.Rows.Add(new DataRow("R² (test)"));
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[13646] | 221 | Results.Add(new Result("Qualities", table));
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| 222 | var curLoss = new DoubleValue();
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| 223 | var curTestLoss = new DoubleValue();
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[13889] | 224 | Results.Add(new Result("R² (train)", curLoss));
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| 225 | Results.Add(new Result("R² (test)", curTestLoss));
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[13646] | 226 | var runCollection = new RunCollection();
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[13889] | 227 | if (StoreRuns)
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| 228 | Results.Add(new Result("Runs", runCollection));
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[13646] | 229 |
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| 230 | // init
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| 231 | var problemData = Problem.ProblemData;
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[13889] | 232 | var targetVarName = problemData.TargetVariable;
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[13707] | 233 | var activeVariables = problemData.AllowedInputVariables.Concat(new string[] { problemData.TargetVariable });
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[13646] | 234 | var modifiableDataset = new ModifiableDataset(
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[13707] | 235 | activeVariables,
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| 236 | activeVariables.Select(v => problemData.Dataset.GetDoubleValues(v).ToList()));
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[13646] | 237 |
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| 238 | var trainingRows = problemData.TrainingIndices;
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| 239 | var testRows = problemData.TestIndices;
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| 240 | var yPred = new double[trainingRows.Count()];
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| 241 | var yPredTest = new double[testRows.Count()];
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| 242 | var y = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, problemData.TrainingIndices).ToArray();
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| 243 | var curY = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, problemData.TrainingIndices).ToArray();
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| 244 |
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| 245 | var yTest = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, problemData.TestIndices).ToArray();
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| 246 | var curYTest = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, problemData.TestIndices).ToArray();
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| 247 | var nu = Nu;
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| 248 | var mVars = (int)Math.Ceiling(M * problemData.AllowedInputVariables.Count());
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| 249 | var rRows = (int)Math.Ceiling(R * problemData.TrainingIndices.Count());
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| 250 | var alg = RegressionAlgorithm;
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| 251 | List<IRegressionModel> models = new List<IRegressionModel>();
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| 252 | try {
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| 253 |
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| 254 | // Loop until iteration limit reached or canceled.
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| 255 | for (int i = 0; i < Iterations; i++) {
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| 256 | cancellationToken.ThrowIfCancellationRequested();
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| 257 |
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| 258 | modifiableDataset.RemoveVariable(targetVarName);
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[15769] | 259 | modifiableDataset.AddVariable(targetVarName, curY.Concat(curYTest).ToList());
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[13646] | 260 |
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| 261 | SampleTrainingData(rand, modifiableDataset, rRows, problemData.Dataset, curY, problemData.TargetVariable, problemData.TrainingIndices); // all training indices from the original problem data are allowed
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| 262 | var modifiableProblemData = new RegressionProblemData(modifiableDataset,
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| 263 | problemData.AllowedInputVariables.SampleRandomWithoutRepetition(rand, mVars),
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| 264 | problemData.TargetVariable);
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| 265 | modifiableProblemData.TrainingPartition.Start = 0;
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| 266 | modifiableProblemData.TrainingPartition.End = rRows;
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| 267 | modifiableProblemData.TestPartition.Start = problemData.TestPartition.Start;
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| 268 | modifiableProblemData.TestPartition.End = problemData.TestPartition.End;
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| 269 |
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| 270 | if (!TrySetProblemData(alg, modifiableProblemData))
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| 271 | throw new NotSupportedException("The algorithm cannot be used with GBM.");
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| 272 |
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| 273 | IRegressionModel model;
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| 274 | IRun run;
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[13898] | 275 |
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[13646] | 276 | // try to find a model. The algorithm might fail to produce a model. In this case we just retry until the iterations are exhausted
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[13898] | 277 | if (TryExecute(alg, rand.Next(), RegressionAlgorithmResult, out model, out run)) {
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[13646] | 278 | int row = 0;
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| 279 | // update predictions for training and test
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| 280 | // update new targets (in the case of squared error loss we simply use negative residuals)
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| 281 | foreach (var pred in model.GetEstimatedValues(problemData.Dataset, trainingRows)) {
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| 282 | yPred[row] = yPred[row] + nu * pred;
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| 283 | curY[row] = y[row] - yPred[row];
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| 284 | row++;
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| 285 | }
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| 286 | row = 0;
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| 287 | foreach (var pred in model.GetEstimatedValues(problemData.Dataset, testRows)) {
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| 288 | yPredTest[row] = yPredTest[row] + nu * pred;
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| 289 | curYTest[row] = yTest[row] - yPredTest[row];
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| 290 | row++;
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| 291 | }
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| 292 | // determine quality
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| 293 | OnlineCalculatorError error;
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| 294 | var trainR = OnlinePearsonsRCalculator.Calculate(yPred, y, out error);
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| 295 | var testR = OnlinePearsonsRCalculator.Calculate(yPredTest, yTest, out error);
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| 296 |
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| 297 | // iteration results
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| 298 | curLoss.Value = error == OnlineCalculatorError.None ? trainR * trainR : 0.0;
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| 299 | curTestLoss.Value = error == OnlineCalculatorError.None ? testR * testR : 0.0;
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| 300 |
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| 301 | models.Add(model);
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| 302 |
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| 303 |
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| 304 | }
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| 305 |
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[13889] | 306 | if (StoreRuns)
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| 307 | runCollection.Add(run);
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| 308 | table.Rows["R² (train)"].Values.Add(curLoss.Value);
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| 309 | table.Rows["R² (test)"].Values.Add(curTestLoss.Value);
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[13646] | 310 | iterations.Value = i + 1;
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| 311 | }
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| 312 |
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| 313 | // produce solution
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| 314 | if (CreateSolution) {
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| 315 | // when all our models are symbolic models we can easily combine them to a single model
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| 316 | if (models.All(m => m is ISymbolicRegressionModel)) {
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| 317 | Results.Add(new Result("Solution", CreateSymbolicSolution(models, Nu, (IRegressionProblemData)problemData.Clone())));
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| 318 | }
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| 319 | // just produce an ensemble solution for now (TODO: correct scaling or linear regression for ensemble model weights)
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[13699] | 320 |
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[13917] | 321 | var ensembleSolution = CreateEnsembleSolution(models, (IRegressionProblemData)problemData.Clone());
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[13699] | 322 | Results.Add(new Result("EnsembleSolution", ensembleSolution));
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[13646] | 323 | }
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[13699] | 324 | }
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| 325 | finally {
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[13646] | 326 | // reset everything
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| 327 | alg.Prepare(true);
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| 328 | }
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| 329 | }
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| 330 |
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[13917] | 331 | private static IRegressionEnsembleSolution CreateEnsembleSolution(List<IRegressionModel> models,
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| 332 | IRegressionProblemData problemData) {
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| 333 | var rows = problemData.TrainingPartition.Size;
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| 334 | var features = models.Count;
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| 335 | double[,] inputMatrix = new double[rows, features + 1];
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| 336 | //add model estimates
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| 337 | for (int m = 0; m < models.Count; m++) {
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| 338 | var model = models[m];
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| 339 | var estimates = model.GetEstimatedValues(problemData.Dataset, problemData.TrainingIndices);
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| 340 | int estimatesCounter = 0;
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| 341 | foreach (var estimate in estimates) {
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| 342 | inputMatrix[estimatesCounter, m] = estimate;
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| 343 | estimatesCounter++;
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| 344 | }
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| 345 | }
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[13653] | 346 |
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[13917] | 347 | //add target
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| 348 | var targets = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, problemData.TrainingIndices);
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| 349 | int targetCounter = 0;
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| 350 | foreach (var target in targets) {
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| 351 | inputMatrix[targetCounter, models.Count] = target;
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| 352 | targetCounter++;
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| 353 | }
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| 354 |
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| 355 | alglib.linearmodel lm = new alglib.linearmodel();
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| 356 | alglib.lrreport ar = new alglib.lrreport();
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| 357 | double[] coefficients;
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| 358 | int retVal = 1;
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| 359 | alglib.lrbuildz(inputMatrix, rows, features, out retVal, out lm, out ar);
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| 360 | if (retVal != 1) throw new ArgumentException("Error in calculation of linear regression solution");
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| 361 |
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| 362 | alglib.lrunpack(lm, out coefficients, out features);
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| 363 |
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| 364 | var ensembleModel = new RegressionEnsembleModel(models, coefficients.Take(models.Count)) { AverageModelEstimates = false };
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[13941] | 365 | var ensembleSolution = (IRegressionEnsembleSolution)ensembleModel.CreateRegressionSolution(problemData);
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[13917] | 366 | return ensembleSolution;
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| 367 | }
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| 368 |
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| 369 |
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[13653] | 370 | private IAlgorithm CreateOSGP() {
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| 371 | // configure strict osgp
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| 372 | var alg = new OffspringSelectionGeneticAlgorithm.OffspringSelectionGeneticAlgorithm();
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| 373 | var prob = new SymbolicRegressionSingleObjectiveProblem();
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| 374 | prob.MaximumSymbolicExpressionTreeDepth.Value = 7;
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| 375 | prob.MaximumSymbolicExpressionTreeLength.Value = 15;
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| 376 | alg.Problem = prob;
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| 377 | alg.SuccessRatio.Value = 1.0;
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| 378 | alg.ComparisonFactorLowerBound.Value = 1.0;
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| 379 | alg.ComparisonFactorUpperBound.Value = 1.0;
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| 380 | alg.MutationProbability.Value = 0.15;
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| 381 | alg.PopulationSize.Value = 200;
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| 382 | alg.MaximumSelectionPressure.Value = 100;
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| 383 | alg.MaximumEvaluatedSolutions.Value = 20000;
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| 384 | alg.SelectorParameter.Value = alg.SelectorParameter.ValidValues.OfType<GenderSpecificSelector>().First();
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| 385 | alg.MutatorParameter.Value = alg.MutatorParameter.ValidValues.OfType<MultiSymbolicExpressionTreeManipulator>().First();
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| 386 | alg.StoreAlgorithmInEachRun = false;
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| 387 | return alg;
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| 388 | }
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| 389 |
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[13646] | 390 | private void SampleTrainingData(MersenneTwister rand, ModifiableDataset ds, int rRows,
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| 391 | IDataset sourceDs, double[] curTarget, string targetVarName, IEnumerable<int> trainingIndices) {
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| 392 | var selectedRows = trainingIndices.SampleRandomWithoutRepetition(rand, rRows).ToArray();
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| 393 | int t = 0;
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| 394 | object[] srcRow = new object[ds.Columns];
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| 395 | var varNames = ds.DoubleVariables.ToArray();
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| 396 | foreach (var r in selectedRows) {
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| 397 | // take all values from the original dataset
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| 398 | for (int c = 0; c < srcRow.Length; c++) {
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| 399 | var col = sourceDs.GetReadOnlyDoubleValues(varNames[c]);
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| 400 | srcRow[c] = col[r];
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| 401 | }
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| 402 | ds.ReplaceRow(t, srcRow);
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| 403 | // but use the updated target values
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| 404 | ds.SetVariableValue(curTarget[r], targetVarName, t);
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| 405 | t++;
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| 406 | }
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| 407 | }
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| 408 |
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| 409 | private static ISymbolicRegressionSolution CreateSymbolicSolution(List<IRegressionModel> models, double nu, IRegressionProblemData problemData) {
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| 410 | var symbModels = models.OfType<ISymbolicRegressionModel>();
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| 411 | var lowerLimit = symbModels.Min(m => m.LowerEstimationLimit);
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| 412 | var upperLimit = symbModels.Max(m => m.UpperEstimationLimit);
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| 413 | var interpreter = new SymbolicDataAnalysisExpressionTreeLinearInterpreter();
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| 414 | var progRootNode = new ProgramRootSymbol().CreateTreeNode();
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| 415 | var startNode = new StartSymbol().CreateTreeNode();
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| 416 |
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| 417 | var addNode = new Addition().CreateTreeNode();
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| 418 | var mulNode = new Multiplication().CreateTreeNode();
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| 419 | var scaleNode = (ConstantTreeNode)new Constant().CreateTreeNode(); // all models are scaled using the same nu
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| 420 | scaleNode.Value = nu;
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| 421 |
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| 422 | foreach (var m in symbModels) {
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| 423 | var relevantPart = m.SymbolicExpressionTree.Root.GetSubtree(0).GetSubtree(0); // skip root and start
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| 424 | addNode.AddSubtree((ISymbolicExpressionTreeNode)relevantPart.Clone());
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| 425 | }
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| 426 |
|
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| 427 | mulNode.AddSubtree(addNode);
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| 428 | mulNode.AddSubtree(scaleNode);
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| 429 | startNode.AddSubtree(mulNode);
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| 430 | progRootNode.AddSubtree(startNode);
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| 431 | var t = new SymbolicExpressionTree(progRootNode);
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[13941] | 432 | var combinedModel = new SymbolicRegressionModel(problemData.TargetVariable, t, interpreter, lowerLimit, upperLimit);
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[13646] | 433 | var sol = new SymbolicRegressionSolution(combinedModel, problemData);
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| 434 | return sol;
|
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| 435 | }
|
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| 436 |
|
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| 437 | private static bool TrySetProblemData(IAlgorithm alg, IRegressionProblemData problemData) {
|
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| 438 | var prob = alg.Problem as IRegressionProblem;
|
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| 439 | // there is already a problem and it is compatible -> just set problem data
|
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| 440 | if (prob != null) {
|
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| 441 | prob.ProblemDataParameter.Value = problemData;
|
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| 442 | return true;
|
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[13653] | 443 | } else return false;
|
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[13646] | 444 | }
|
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| 445 |
|
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[13898] | 446 | private static bool TryExecute(IAlgorithm alg, int seed, string regressionAlgorithmResultName, out IRegressionModel model, out IRun run) {
|
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[13646] | 447 | model = null;
|
---|
[13898] | 448 | SetSeed(alg, seed);
|
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[13646] | 449 | using (var wh = new AutoResetEvent(false)) {
|
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[13889] | 450 | Exception ex = null;
|
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| 451 | EventHandler<EventArgs<Exception>> handler = (sender, args) => {
|
---|
| 452 | ex = args.Value;
|
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| 453 | wh.Set();
|
---|
| 454 | };
|
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[13646] | 455 | EventHandler handler2 = (sender, args) => wh.Set();
|
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| 456 | alg.ExceptionOccurred += handler;
|
---|
| 457 | alg.Stopped += handler2;
|
---|
| 458 | try {
|
---|
| 459 | alg.Prepare();
|
---|
| 460 | alg.Start();
|
---|
| 461 | wh.WaitOne();
|
---|
| 462 |
|
---|
[13889] | 463 | if (ex != null) throw new AggregateException(ex);
|
---|
[13646] | 464 | run = alg.Runs.Last();
|
---|
[13889] | 465 | alg.Runs.Clear();
|
---|
[13646] | 466 | var sols = alg.Results.Select(r => r.Value).OfType<IRegressionSolution>();
|
---|
| 467 | if (!sols.Any()) return false;
|
---|
| 468 | var sol = sols.First();
|
---|
| 469 | if (sols.Skip(1).Any()) {
|
---|
| 470 | // more than one solution => use regressionAlgorithmResult
|
---|
| 471 | if (alg.Results.ContainsKey(regressionAlgorithmResultName)) {
|
---|
| 472 | sol = (IRegressionSolution)alg.Results[regressionAlgorithmResultName].Value;
|
---|
| 473 | }
|
---|
| 474 | }
|
---|
| 475 | var symbRegSol = sol as SymbolicRegressionSolution;
|
---|
| 476 | // only accept symb reg solutions that do not hit the estimation limits
|
---|
| 477 | // NaN evaluations would not be critical but are problematic if we want to combine all symbolic models into a single symbolic model
|
---|
| 478 | if (symbRegSol == null ||
|
---|
| 479 | (symbRegSol.TrainingLowerEstimationLimitHits == 0 && symbRegSol.TrainingUpperEstimationLimitHits == 0 &&
|
---|
| 480 | symbRegSol.TestLowerEstimationLimitHits == 0 && symbRegSol.TestUpperEstimationLimitHits == 0) &&
|
---|
| 481 | symbRegSol.TrainingNaNEvaluations == 0 && symbRegSol.TestNaNEvaluations == 0) {
|
---|
| 482 | model = sol.Model;
|
---|
| 483 | }
|
---|
[13699] | 484 | }
|
---|
| 485 | finally {
|
---|
[13646] | 486 | alg.ExceptionOccurred -= handler;
|
---|
| 487 | alg.Stopped -= handler2;
|
---|
| 488 | }
|
---|
| 489 | }
|
---|
| 490 | return model != null;
|
---|
| 491 | }
|
---|
[13898] | 492 |
|
---|
| 493 | private static void SetSeed(IAlgorithm alg, int seed) {
|
---|
| 494 | // no common interface for algs that use a PRNG -> use naming convention to set seed
|
---|
| 495 | var paramItem = alg as IParameterizedItem;
|
---|
| 496 |
|
---|
| 497 | if (paramItem.Parameters.ContainsKey("SetSeedRandomly")) {
|
---|
| 498 | ((BoolValue)paramItem.Parameters["SetSeedRandomly"].ActualValue).Value = false;
|
---|
| 499 | ((IntValue)paramItem.Parameters["Seed"].ActualValue).Value = seed;
|
---|
| 500 | } else {
|
---|
| 501 | throw new ArgumentException("Base learner does not have a seed parameter (algorithm {0})", alg.Name);
|
---|
| 502 | }
|
---|
| 503 |
|
---|
| 504 | }
|
---|
[13646] | 505 | }
|
---|
| 506 | }
|
---|