#region License Information /* HeuristicLab * Copyright (C) 2002-2012 Heuristic and Evolutionary Algorithms Laboratory (HEAL) * * This file is part of HeuristicLab. * * HeuristicLab is free software: you can redistribute it and/or modify * it under the terms of the GNU General Public License as published by * the Free Software Foundation, either version 3 of the License, or * (at your option) any later version. * * HeuristicLab is distributed in the hope that it will be useful, * but WITHOUT ANY WARRANTY; without even the implied warranty of * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the * GNU General Public License for more details. * * You should have received a copy of the GNU General Public License * along with HeuristicLab. If not, see . */ #endregion using System; using System.Collections.Generic; using System.Linq; using HeuristicLab.Common; using HeuristicLab.Core; using HeuristicLab.Encodings.SymbolicExpressionTreeEncoding; using HeuristicLab.Persistence.Default.CompositeSerializers.Storable; namespace HeuristicLab.Problems.DataAnalysis.Symbolic.Classification { /// /// Represents a symbolic classification model /// [StorableClass] [Item(Name = "SymbolicDiscriminantFunctionClassificationModel", Description = "Represents a symbolic classification model unsing a discriminant function.")] public class SymbolicDiscriminantFunctionClassificationModel : SymbolicDataAnalysisModel, ISymbolicDiscriminantFunctionClassificationModel { [Storable] private double[] thresholds; public IEnumerable Thresholds { get { return (IEnumerable)thresholds.Clone(); } private set { thresholds = value.ToArray(); } } [Storable] private double[] classValues; public IEnumerable ClassValues { get { return (IEnumerable)classValues.Clone(); } private set { classValues = value.ToArray(); } } [Storable] private double lowerEstimationLimit; public double LowerEstimationLimit { get { return lowerEstimationLimit; } } [Storable] private double upperEstimationLimit; public double UpperEstimationLimit { get { return upperEstimationLimit; } } [StorableConstructor] protected SymbolicDiscriminantFunctionClassificationModel(bool deserializing) : base(deserializing) { } protected SymbolicDiscriminantFunctionClassificationModel(SymbolicDiscriminantFunctionClassificationModel original, Cloner cloner) : base(original, cloner) { classValues = (double[])original.classValues.Clone(); thresholds = (double[])original.thresholds.Clone(); lowerEstimationLimit = original.lowerEstimationLimit; upperEstimationLimit = original.upperEstimationLimit; } public SymbolicDiscriminantFunctionClassificationModel(ISymbolicExpressionTree tree, ISymbolicDataAnalysisExpressionTreeInterpreter interpreter, double lowerEstimationLimit = double.MinValue, double upperEstimationLimit = double.MaxValue) : base(tree, interpreter) { thresholds = new double[] { double.NegativeInfinity }; classValues = new double[] { 0.0 }; this.lowerEstimationLimit = lowerEstimationLimit; this.upperEstimationLimit = upperEstimationLimit; } public override IDeepCloneable Clone(Cloner cloner) { return new SymbolicDiscriminantFunctionClassificationModel(this, cloner); } public void SetThresholdsAndClassValues(IEnumerable thresholds, IEnumerable classValues) { var classValuesArr = classValues.ToArray(); var thresholdsArr = thresholds.ToArray(); if (thresholdsArr.Length != classValuesArr.Length) throw new ArgumentException(); this.classValues = classValuesArr; this.thresholds = thresholdsArr; OnThresholdsChanged(EventArgs.Empty); } public IEnumerable GetEstimatedValues(Dataset dataset, IEnumerable rows) { return Interpreter.GetSymbolicExpressionTreeValues(SymbolicExpressionTree, dataset, rows) .LimitToRange(lowerEstimationLimit, upperEstimationLimit); } public IEnumerable GetEstimatedClassValues(Dataset dataset, IEnumerable rows) { foreach (var x in GetEstimatedValues(dataset, rows)) { int classIndex = 0; // find first threshold value which is larger than x => class index = threshold index + 1 for (int i = 0; i < thresholds.Length; i++) { if (x > thresholds[i]) classIndex++; else break; } yield return classValues.ElementAt(classIndex - 1); } } public SymbolicDiscriminantFunctionClassificationSolution CreateClassificationSolution(IClassificationProblemData problemData) { return new SymbolicDiscriminantFunctionClassificationSolution(this, new ClassificationProblemData(problemData)); } IClassificationSolution IClassificationModel.CreateClassificationSolution(IClassificationProblemData problemData) { return CreateClassificationSolution(problemData); } IDiscriminantFunctionClassificationSolution IDiscriminantFunctionClassificationModel.CreateDiscriminantFunctionClassificationSolution(IClassificationProblemData problemData) { return CreateClassificationSolution(problemData); } #region events public event EventHandler ThresholdsChanged; protected virtual void OnThresholdsChanged(EventArgs e) { var listener = ThresholdsChanged; if (listener != null) listener(this, e); } #endregion public static void Scale(SymbolicDiscriminantFunctionClassificationModel model, IClassificationProblemData problemData) { var dataset = problemData.Dataset; var targetVariable = problemData.TargetVariable; var rows = problemData.TrainingIndices; var estimatedValues = model.Interpreter.GetSymbolicExpressionTreeValues(model.SymbolicExpressionTree, dataset, rows); var targetValues = dataset.GetDoubleValues(targetVariable, rows); double alpha; double beta; OnlineCalculatorError errorState; OnlineLinearScalingParameterCalculator.Calculate(estimatedValues, targetValues, out alpha, out beta, out errorState); if (errorState != OnlineCalculatorError.None) return; ConstantTreeNode alphaTreeNode = null; ConstantTreeNode betaTreeNode = null; // check if model has been scaled previously by analyzing the structure of the tree var startNode = model.SymbolicExpressionTree.Root.GetSubtree(0); if (startNode.GetSubtree(0).Symbol is Addition) { var addNode = startNode.GetSubtree(0); if (addNode.SubtreeCount == 2 && addNode.GetSubtree(0).Symbol is Multiplication && addNode.GetSubtree(1).Symbol is Constant) { alphaTreeNode = addNode.GetSubtree(1) as ConstantTreeNode; var mulNode = addNode.GetSubtree(0); if (mulNode.SubtreeCount == 2 && mulNode.GetSubtree(1).Symbol is Constant) { betaTreeNode = mulNode.GetSubtree(1) as ConstantTreeNode; } } } // if tree structure matches the structure necessary for linear scaling then reuse the existing tree nodes if (alphaTreeNode != null && betaTreeNode != null) { betaTreeNode.Value *= beta; alphaTreeNode.Value *= beta; alphaTreeNode.Value += alpha; } else { var mainBranch = startNode.GetSubtree(0); startNode.RemoveSubtree(0); var scaledMainBranch = MakeSum(MakeProduct(mainBranch, beta), alpha); startNode.AddSubtree(scaledMainBranch); } } private static ISymbolicExpressionTreeNode MakeSum(ISymbolicExpressionTreeNode treeNode, double alpha) { if (alpha.IsAlmost(0.0)) { return treeNode; } else { var addition = new Addition(); var node = addition.CreateTreeNode(); var alphaConst = MakeConstant(alpha); node.AddSubtree(treeNode); node.AddSubtree(alphaConst); return node; } } private static ISymbolicExpressionTreeNode MakeProduct(ISymbolicExpressionTreeNode treeNode, double beta) { if (beta.IsAlmost(1.0)) { return treeNode; } else { var multipliciation = new Multiplication(); var node = multipliciation.CreateTreeNode(); var betaConst = MakeConstant(beta); node.AddSubtree(treeNode); node.AddSubtree(betaConst); return node; } } private static ISymbolicExpressionTreeNode MakeConstant(double c) { var node = (ConstantTreeNode)(new Constant()).CreateTreeNode(); node.Value = c; return node; } } }