[12590] | 1 | #region License Information
|
---|
| 2 | /* HeuristicLab
|
---|
[15584] | 3 | * Copyright (C) 2002-2018 Heuristic and Evolutionary Algorithms Laboratory (HEAL)
|
---|
[12590] | 4 | * and the BEACON Center for the Study of Evolution in Action.
|
---|
| 5 | *
|
---|
| 6 | * This file is part of HeuristicLab.
|
---|
| 7 | *
|
---|
| 8 | * HeuristicLab is free software: you can redistribute it and/or modify
|
---|
| 9 | * it under the terms of the GNU General Public License as published by
|
---|
| 10 | * the Free Software Foundation, either version 3 of the License, or
|
---|
| 11 | * (at your option) any later version.
|
---|
| 12 | *
|
---|
| 13 | * HeuristicLab is distributed in the hope that it will be useful,
|
---|
| 14 | * but WITHOUT ANY WARRANTY; without even the implied warranty of
|
---|
| 15 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
|
---|
| 16 | * GNU General Public License for more details.
|
---|
| 17 | *
|
---|
| 18 | * You should have received a copy of the GNU General Public License
|
---|
| 19 | * along with HeuristicLab. If not, see <http://www.gnu.org/licenses/>.
|
---|
| 20 | */
|
---|
| 21 | #endregion
|
---|
| 22 |
|
---|
[12658] | 23 | using System;
|
---|
[12372] | 24 | using System.Collections.Generic;
|
---|
[13185] | 25 | using System.Collections.ObjectModel;
|
---|
[12658] | 26 | using System.Globalization;
|
---|
[12332] | 27 | using System.Linq;
|
---|
| 28 | using HeuristicLab.Common;
|
---|
| 29 | using HeuristicLab.Core;
|
---|
[15127] | 30 | using HeuristicLab.Encodings.SymbolicExpressionTreeEncoding;
|
---|
[12332] | 31 | using HeuristicLab.Persistence.Default.CompositeSerializers.Storable;
|
---|
| 32 | using HeuristicLab.Problems.DataAnalysis;
|
---|
[15127] | 33 | using HeuristicLab.Problems.DataAnalysis.Symbolic;
|
---|
| 34 | using HeuristicLab.Problems.DataAnalysis.Symbolic.Regression;
|
---|
[12332] | 35 |
|
---|
[12590] | 36 | namespace HeuristicLab.Algorithms.DataAnalysis {
|
---|
[12332] | 37 | [StorableClass]
|
---|
| 38 | [Item("RegressionTreeModel", "Represents a decision tree for regression.")]
|
---|
[14027] | 39 | public sealed class RegressionTreeModel : RegressionModel {
|
---|
| 40 | public override IEnumerable<string> VariablesUsedForPrediction {
|
---|
| 41 | get { return tree.Select(t => t.VarName).Where(v => v != TreeNode.NO_VARIABLE); }
|
---|
| 42 | }
|
---|
[12332] | 43 |
|
---|
[12699] | 44 | // trees are represented as a flat array
|
---|
[12658] | 45 | internal struct TreeNode {
|
---|
[12699] | 46 | public readonly static string NO_VARIABLE = null;
|
---|
[12332] | 47 |
|
---|
[14023] | 48 | public TreeNode(string varName, double val, int leftIdx = -1, int rightIdx = -1, double weightLeft = -1.0)
|
---|
[12658] | 49 | : this() {
|
---|
| 50 | VarName = varName;
|
---|
| 51 | Val = val;
|
---|
| 52 | LeftIdx = leftIdx;
|
---|
| 53 | RightIdx = rightIdx;
|
---|
[14023] | 54 | WeightLeft = weightLeft;
|
---|
[12658] | 55 | }
|
---|
| 56 |
|
---|
[14023] | 57 | public string VarName { get; internal set; } // name of the variable for splitting or NO_VARIABLE if terminal node
|
---|
| 58 | public double Val { get; internal set; } // threshold
|
---|
| 59 | public int LeftIdx { get; internal set; }
|
---|
| 60 | public int RightIdx { get; internal set; }
|
---|
| 61 | public double WeightLeft { get; internal set; } // for partial dependence plots (value in range [0..1] describes the fraction of training samples for the left sub-tree
|
---|
[12658] | 62 |
|
---|
[14023] | 63 |
|
---|
[12658] | 64 | // necessary because the default implementation of GetHashCode for structs in .NET would only return the hashcode of val here
|
---|
[12590] | 65 | public override int GetHashCode() {
|
---|
[12632] | 66 | return LeftIdx ^ RightIdx ^ Val.GetHashCode();
|
---|
[12372] | 67 | }
|
---|
[12658] | 68 | // necessary because of GetHashCode override
|
---|
| 69 | public override bool Equals(object obj) {
|
---|
| 70 | if (obj is TreeNode) {
|
---|
| 71 | var other = (TreeNode)obj;
|
---|
| 72 | return Val.Equals(other.Val) &&
|
---|
| 73 | LeftIdx.Equals(other.LeftIdx) &&
|
---|
[12663] | 74 | RightIdx.Equals(other.RightIdx) &&
|
---|
[14023] | 75 | WeightLeft.Equals(other.WeightLeft) &&
|
---|
[12663] | 76 | EqualStrings(VarName, other.VarName);
|
---|
[12658] | 77 | } else {
|
---|
| 78 | return false;
|
---|
| 79 | }
|
---|
| 80 | }
|
---|
[12663] | 81 |
|
---|
| 82 | private bool EqualStrings(string a, string b) {
|
---|
| 83 | return (a == null && b == null) ||
|
---|
| 84 | (a != null && b != null && a.Equals(b));
|
---|
| 85 | }
|
---|
[12332] | 86 | }
|
---|
| 87 |
|
---|
[12699] | 88 | // not storable!
|
---|
| 89 | private TreeNode[] tree;
|
---|
| 90 |
|
---|
[14027] | 91 | #region old storable format
|
---|
[14023] | 92 | // remove with HL 3.4
|
---|
| 93 | [Storable(AllowOneWay = true)]
|
---|
[12699] | 94 | // to prevent storing the references to data caches in nodes
|
---|
[14023] | 95 | // seemingly, it is bad (performance-wise) to persist tuples (tuples are used as keys in a dictionary)
|
---|
[12699] | 96 | private Tuple<string, double, int, int>[] SerializedTree {
|
---|
[14023] | 97 | // get { return tree.Select(t => Tuple.Create(t.VarName, t.Val, t.LeftIdx, t.RightIdx)).ToArray(); }
|
---|
| 98 | set { this.tree = value.Select(t => new TreeNode(t.Item1, t.Item2, t.Item3, t.Item4, -1.0)).ToArray(); } // use a weight of -1.0 to indicate that partial dependence cannot be calculated for old models
|
---|
[12699] | 99 | }
|
---|
[14023] | 100 | #endregion
|
---|
| 101 | #region new storable format
|
---|
| 102 | [Storable]
|
---|
| 103 | private string[] SerializedTreeVarNames {
|
---|
| 104 | get { return tree.Select(t => t.VarName).ToArray(); }
|
---|
| 105 | set {
|
---|
| 106 | if (tree == null) tree = new TreeNode[value.Length];
|
---|
| 107 | for (int i = 0; i < value.Length; i++) {
|
---|
| 108 | tree[i].VarName = value[i];
|
---|
| 109 | }
|
---|
| 110 | }
|
---|
| 111 | }
|
---|
| 112 | [Storable]
|
---|
| 113 | private double[] SerializedTreeValues {
|
---|
| 114 | get { return tree.Select(t => t.Val).ToArray(); }
|
---|
| 115 | set {
|
---|
| 116 | if (tree == null) tree = new TreeNode[value.Length];
|
---|
| 117 | for (int i = 0; i < value.Length; i++) {
|
---|
| 118 | tree[i].Val = value[i];
|
---|
| 119 | }
|
---|
| 120 | }
|
---|
| 121 | }
|
---|
| 122 | [Storable]
|
---|
| 123 | private int[] SerializedTreeLeftIdx {
|
---|
| 124 | get { return tree.Select(t => t.LeftIdx).ToArray(); }
|
---|
| 125 | set {
|
---|
| 126 | if (tree == null) tree = new TreeNode[value.Length];
|
---|
| 127 | for (int i = 0; i < value.Length; i++) {
|
---|
| 128 | tree[i].LeftIdx = value[i];
|
---|
| 129 | }
|
---|
| 130 | }
|
---|
| 131 | }
|
---|
| 132 | [Storable]
|
---|
| 133 | private int[] SerializedTreeRightIdx {
|
---|
| 134 | get { return tree.Select(t => t.RightIdx).ToArray(); }
|
---|
| 135 | set {
|
---|
| 136 | if (tree == null) tree = new TreeNode[value.Length];
|
---|
| 137 | for (int i = 0; i < value.Length; i++) {
|
---|
| 138 | tree[i].RightIdx = value[i];
|
---|
| 139 | }
|
---|
| 140 | }
|
---|
| 141 | }
|
---|
| 142 | [Storable]
|
---|
| 143 | private double[] SerializedTreeWeightLeft {
|
---|
| 144 | get { return tree.Select(t => t.WeightLeft).ToArray(); }
|
---|
| 145 | set {
|
---|
| 146 | if (tree == null) tree = new TreeNode[value.Length];
|
---|
| 147 | for (int i = 0; i < value.Length; i++) {
|
---|
| 148 | tree[i].WeightLeft = value[i];
|
---|
| 149 | }
|
---|
| 150 | }
|
---|
| 151 | }
|
---|
| 152 | #endregion
|
---|
[12332] | 153 |
|
---|
| 154 | [StorableConstructor]
|
---|
| 155 | private RegressionTreeModel(bool serializing) : base(serializing) { }
|
---|
| 156 | // cloning ctor
|
---|
[12658] | 157 | private RegressionTreeModel(RegressionTreeModel original, Cloner cloner)
|
---|
[12332] | 158 | : base(original, cloner) {
|
---|
[12699] | 159 | if (original.tree != null) {
|
---|
| 160 | this.tree = new TreeNode[original.tree.Length];
|
---|
| 161 | Array.Copy(original.tree, this.tree, this.tree.Length);
|
---|
| 162 | }
|
---|
[12332] | 163 | }
|
---|
| 164 |
|
---|
[14027] | 165 | internal RegressionTreeModel(TreeNode[] tree, string targetVariable)
|
---|
| 166 | : base(targetVariable, "RegressionTreeModel", "Represents a decision tree for regression.") {
|
---|
[12332] | 167 | this.tree = tree;
|
---|
| 168 | }
|
---|
| 169 |
|
---|
[13185] | 170 | private static double GetPredictionForRow(TreeNode[] t, ReadOnlyCollection<double>[] columnCache, int nodeIdx, int row) {
|
---|
[12699] | 171 | while (nodeIdx != -1) {
|
---|
| 172 | var node = t[nodeIdx];
|
---|
| 173 | if (node.VarName == TreeNode.NO_VARIABLE)
|
---|
| 174 | return node.Val;
|
---|
[14023] | 175 | if (columnCache[nodeIdx] == null || double.IsNaN(columnCache[nodeIdx][row])) {
|
---|
| 176 | if (node.WeightLeft.IsAlmost(-1.0)) throw new InvalidOperationException("Cannot calculate partial dependence for trees loaded from older versions of HeuristicLab.");
|
---|
| 177 | // weighted average for partial dependence plot (recursive here because we need to calculate both sub-trees)
|
---|
| 178 | return node.WeightLeft * GetPredictionForRow(t, columnCache, node.LeftIdx, row) +
|
---|
| 179 | (1.0 - node.WeightLeft) * GetPredictionForRow(t, columnCache, node.RightIdx, row);
|
---|
| 180 | } else if (columnCache[nodeIdx][row] <= node.Val)
|
---|
[12699] | 181 | nodeIdx = node.LeftIdx;
|
---|
| 182 | else
|
---|
| 183 | nodeIdx = node.RightIdx;
|
---|
| 184 | }
|
---|
| 185 | throw new InvalidOperationException("Invalid tree in RegressionTreeModel");
|
---|
[12332] | 186 | }
|
---|
| 187 |
|
---|
| 188 | public override IDeepCloneable Clone(Cloner cloner) {
|
---|
| 189 | return new RegressionTreeModel(this, cloner);
|
---|
| 190 | }
|
---|
| 191 |
|
---|
[14027] | 192 | public override IEnumerable<double> GetEstimatedValues(IDataset ds, IEnumerable<int> rows) {
|
---|
[12699] | 193 | // lookup columns for variableNames in one pass over the tree to speed up evaluation later on
|
---|
[13185] | 194 | ReadOnlyCollection<double>[] columnCache = new ReadOnlyCollection<double>[tree.Length];
|
---|
| 195 |
|
---|
[12699] | 196 | for (int i = 0; i < tree.Length; i++) {
|
---|
| 197 | if (tree[i].VarName != TreeNode.NO_VARIABLE) {
|
---|
[14023] | 198 | // tree models also support calculating estimations if not all variables used for training are available in the dataset
|
---|
| 199 | if (ds.ColumnNames.Contains(tree[i].VarName))
|
---|
| 200 | columnCache[i] = ds.GetReadOnlyDoubleValues(tree[i].VarName);
|
---|
[12699] | 201 | }
|
---|
| 202 | }
|
---|
[13185] | 203 | return rows.Select(r => GetPredictionForRow(tree, columnCache, 0, r));
|
---|
[12332] | 204 | }
|
---|
| 205 |
|
---|
[14027] | 206 | public override IRegressionSolution CreateRegressionSolution(IRegressionProblemData problemData) {
|
---|
[12332] | 207 | return new RegressionSolution(this, new RegressionProblemData(problemData));
|
---|
| 208 | }
|
---|
[12658] | 209 |
|
---|
| 210 | // mainly for debugging
|
---|
| 211 | public override string ToString() {
|
---|
| 212 | return TreeToString(0, "");
|
---|
| 213 | }
|
---|
| 214 |
|
---|
[15127] | 215 | /// <summary>
|
---|
| 216 | /// Transforms the tree model to a symbolic regression solution
|
---|
| 217 | /// </summary>
|
---|
| 218 | /// <param name="problemData"></param>
|
---|
| 219 | /// <returns>A new symbolic regression solution which matches the tree model</returns>
|
---|
| 220 | public ISymbolicRegressionSolution CreateSymbolicRegressionSolution(IRegressionProblemData problemData) {
|
---|
[15134] | 221 | return CreateSymbolicRegressionModel().CreateRegressionSolution(problemData);
|
---|
| 222 | }
|
---|
| 223 |
|
---|
| 224 | /// <summary>
|
---|
| 225 | /// Transforms the tree model to a symbolic regression model
|
---|
| 226 | /// </summary>
|
---|
| 227 | /// <returns>A new symbolic regression model which matches the tree model</returns>
|
---|
| 228 | public SymbolicRegressionModel CreateSymbolicRegressionModel() {
|
---|
[15127] | 229 | var rootSy = new ProgramRootSymbol();
|
---|
| 230 | var startSy = new StartSymbol();
|
---|
| 231 | var varCondSy = new VariableCondition() { IgnoreSlope = true };
|
---|
| 232 | var constSy = new Constant();
|
---|
| 233 |
|
---|
| 234 | var startNode = startSy.CreateTreeNode();
|
---|
| 235 | startNode.AddSubtree(CreateSymbolicRegressionTreeRecursive(tree, 0, varCondSy, constSy));
|
---|
| 236 | var rootNode = rootSy.CreateTreeNode();
|
---|
| 237 | rootNode.AddSubtree(startNode);
|
---|
[15134] | 238 | return new SymbolicRegressionModel(TargetVariable, new SymbolicExpressionTree(rootNode), new SymbolicDataAnalysisExpressionTreeLinearInterpreter());
|
---|
[15127] | 239 | }
|
---|
| 240 |
|
---|
| 241 | private ISymbolicExpressionTreeNode CreateSymbolicRegressionTreeRecursive(TreeNode[] treeNodes, int nodeIdx, VariableCondition varCondSy, Constant constSy) {
|
---|
| 242 | var curNode = treeNodes[nodeIdx];
|
---|
| 243 | if (curNode.VarName == TreeNode.NO_VARIABLE) {
|
---|
| 244 | var node = (ConstantTreeNode)constSy.CreateTreeNode();
|
---|
| 245 | node.Value = curNode.Val;
|
---|
| 246 | return node;
|
---|
| 247 | } else {
|
---|
| 248 | var node = (VariableConditionTreeNode)varCondSy.CreateTreeNode();
|
---|
| 249 | node.VariableName = curNode.VarName;
|
---|
| 250 | node.Threshold = curNode.Val;
|
---|
| 251 |
|
---|
| 252 | var left = CreateSymbolicRegressionTreeRecursive(treeNodes, curNode.LeftIdx, varCondSy, constSy);
|
---|
| 253 | var right = CreateSymbolicRegressionTreeRecursive(treeNodes, curNode.RightIdx, varCondSy, constSy);
|
---|
| 254 | node.AddSubtree(left);
|
---|
| 255 | node.AddSubtree(right);
|
---|
| 256 | return node;
|
---|
| 257 | }
|
---|
| 258 | }
|
---|
| 259 |
|
---|
| 260 |
|
---|
[12658] | 261 | private string TreeToString(int idx, string part) {
|
---|
| 262 | var n = tree[idx];
|
---|
| 263 | if (n.VarName == TreeNode.NO_VARIABLE) {
|
---|
| 264 | return string.Format(CultureInfo.InvariantCulture, "{0} -> {1:F}{2}", part, n.Val, Environment.NewLine);
|
---|
| 265 | } else {
|
---|
| 266 | return
|
---|
[14023] | 267 | TreeToString(n.LeftIdx, string.Format(CultureInfo.InvariantCulture, "{0}{1}{2} <= {3:F} ({4:N3})", part, string.IsNullOrEmpty(part) ? "" : " and ", n.VarName, n.Val, n.WeightLeft))
|
---|
| 268 | + TreeToString(n.RightIdx, string.Format(CultureInfo.InvariantCulture, "{0}{1}{2} > {3:F} ({4:N3}))", part, string.IsNullOrEmpty(part) ? "" : " and ", n.VarName, n.Val, 1.0 - n.WeightLeft));
|
---|
[12658] | 269 | }
|
---|
| 270 | }
|
---|
[14027] | 271 |
|
---|
[12332] | 272 | }
|
---|
| 273 | }
|
---|