#region License Information /* HeuristicLab * Copyright (C) 2002-2016 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.Concurrent; using System.Collections.Generic; using System.Linq; using System.Threading; using System.Threading.Tasks; using HeuristicLab.Common; using HeuristicLab.Core; using HeuristicLab.Data; using HeuristicLab.Encodings.SymbolicExpressionTreeEncoding; using HeuristicLab.Optimization; using HeuristicLab.Parameters; using HeuristicLab.Persistence.Default.CompositeSerializers.Storable; using HeuristicLab.Problems.DataAnalysis; using HeuristicLab.Problems.DataAnalysis.Symbolic; using HeuristicLab.Problems.DataAnalysis.Symbolic.Regression; namespace HeuristicLab.Algorithms.DataAnalysis.Experimental { /// /// Linear regression data analysis algorithm. /// [Item("Linear Regression Combinations (LR)", "Calculates all possible LR solutions.")] [Creatable(CreatableAttribute.Categories.DataAnalysisRegression, Priority = 102)] [StorableClass] public sealed class LinearRegressionCombinations : FixedDataAnalysisAlgorithm { public IFixedValueParameter MaximumInputsParameter { get { return (IFixedValueParameter)Parameters["Maximum Inputs"]; } } public int MaximumInputs { get { return MaximumInputsParameter.Value.Value; } set { MaximumInputsParameter.Value.Value = value; } } public IFixedValueParameter CreateSolutionParameter { get { return (IFixedValueParameter)Parameters["Create Solution"]; } } public bool CreateSolution { get { return CreateSolutionParameter.Value.Value; } set { CreateSolutionParameter.Value.Value = value; } } public IFixedValueParameter MaximumSolutionsParameter { get { return (IFixedValueParameter)Parameters["Maximum Solutions stored"]; } } public int MaximumSolutions { get { return MaximumSolutionsParameter.Value.Value; } set { MaximumSolutionsParameter.Value.Value = value; } } private IntValue CalculatedModelsResults { get { if (!Results.ContainsKey("Calculated Models")) Results.Add(new Result("Calculated Models", "The number of calculated linear models ", new IntValue(0))); return (IntValue)Results["Calculated Models"].Value; } } public int CalculatedModels { get { return CalculatedModelsResults.Value; } set { CalculatedModelsResults.Value = value; } } private IntValue TotalModelsResult { get { if (!Results.ContainsKey("Total Models")) Results.Add(new Result("Total Models", "The total number of linear models to calculate", new IntValue(0))); return (IntValue)Results["Total Models"].Value; } } public int TotalModels { get { return TotalModelsResult.Value; } set { TotalModelsResult.Value = value; } } private IntValue CalculatedInputResults { get { if (!Results.ContainsKey("Calculated Inputs")) Results.Add(new Result("Calculated Inputs", "The maximum of already calculated input combinations.", new IntValue(0))); return (IntValue)Results["Calculated Inputs"].Value; } } public int CalculatedInputs { get { return CalculatedInputResults.Value; } set { CalculatedInputResults.Value = value; } } [StorableConstructor] private LinearRegressionCombinations(bool deserializing) : base(deserializing) { } [StorableHook(HookType.AfterDeserialization)] private void AfterDeserialization() { RegisterEventHandlers(); } private LinearRegressionCombinations(LinearRegressionCombinations original, Cloner cloner) : base(original, cloner) { RegisterEventHandlers(); } public override IDeepCloneable Clone(Cloner cloner) { return new LinearRegressionCombinations(this, cloner); } public LinearRegressionCombinations() : base() { Parameters.Add(new FixedValueParameter("Maximum Inputs", "The maximum number of input variables used in the linear models.", new IntValue(1))); Parameters.Add(new FixedValueParameter("Maximum Solutions stored", "The maximum number of solutions that are stored per number of inputs.", new IntValue(1000))); Parameters.Add(new FixedValueParameter("Create Solution", "Flag that indicates if a solution should be produced at the end of the run", new BoolValue(false))); Problem = new RegressionProblem(); RegisterEventHandlers(); } private void RegisterEventHandlers() { Problem.ProblemDataChanged += (o, e) => { MaximumInputs = Problem.ProblemData.InputVariables.CheckedItems.Count(); }; } protected override void OnProblemChanged() { base.OnProblemChanged(); MaximumInputs = Problem.ProblemData.InputVariables.CheckedItems.Count(); } private static long CalculateCombinations(int maximumInputs, int totalVariables) { long combinations = 0; for (int i = 1; i <= maximumInputs; i++) combinations += Common.EnumerableExtensions.BinomialCoefficient(totalVariables, i); return combinations; } protected override void Run(CancellationToken cancellationToken) { double[,] inputMatrix = Problem.ProblemData.Dataset.ToArray(Problem.ProblemData.AllowedInputVariables.Concat(new string[] { Problem.ProblemData.TargetVariable }), Problem.ProblemData.TrainingIndices); if (inputMatrix.Cast().Any(x => double.IsNaN(x) || double.IsInfinity(x))) throw new NotSupportedException("Linear regression does not support NaN or infinity values in the input dataset."); var templateProblemData = (IRegressionProblemData)Problem.ProblemData.Clone(); foreach (var variable in templateProblemData.InputVariables) templateProblemData.InputVariables.SetItemCheckedState(variable, false); var inputVariableNames = Problem.ProblemData.InputVariables.CheckedItems.Select(i => i.Value.Value).ToList(); var createSolution = CreateSolution; var maximumInputs = MaximumInputs; var maximumSolutions = MaximumSolutions; var storedRuns = new List[maximumInputs]; var runs = new ConcurrentBag(); TotalModels = (int)CalculateCombinations(MaximumInputs, inputVariableNames.Count); CalculatedModels = 0; CalculatedInputs = 0; for (int inputs = 1; inputs <= MaximumInputs; inputs++) { Parallel.ForEach(inputVariableNames.Combinations(inputs).ToList(), inputCombination => { var problemData = new RegressionProblemData(templateProblemData.Dataset, inputCombination, templateProblemData.TargetVariable); problemData.TrainingPartition.Start = templateProblemData.TrainingPartition.Start; problemData.TrainingPartition.End = templateProblemData.TrainingPartition.End; problemData.TestPartition.Start = templateProblemData.TestPartition.Start; problemData.TestPartition.End = templateProblemData.TestPartition.End; double trainRmsError, testRmsError; var solution = CreateLinearRegressionSolution(problemData, createSolution, out trainRmsError, out testRmsError); var run = new Run(); run.Name = string.Format("Run - Inputs {0}/{1}", inputCombination.Count(), MaximumInputs); if (solution != null) run.Results.Add("Solution", solution); run.Results.Add("RMSE train", new DoubleValue(trainRmsError)); run.Results.Add("RMSE test", new DoubleValue(testRmsError)); run.Results.Add("Inputs", new IntValue(inputCombination.Count())); run.Results.Add("Input names", new StringValue(string.Join(" ", inputCombination))); runs.Add(run); }); CalculatedModels += runs.Count; CalculatedInputs = inputs; storedRuns[inputs - 1] = runs.OrderBy(r => ((DoubleValue)r.Results["RMSE test"]).Value).Take(maximumSolutions).ToList(); runs = new ConcurrentBag(); if (cancellationToken.IsCancellationRequested) { Results.Add(new Result("Runs", new RunCollection(storedRuns.SelectMany(r => r)))); cancellationToken.ThrowIfCancellationRequested(); } } Results.Add(new Result("Runs", new RunCollection(storedRuns.SelectMany(r => r)))); } public static ISymbolicRegressionSolution CreateLinearRegressionSolution(IRegressionProblemData problemData, bool buildSolution, out double trainRmsError, out double testRmsError) { var dataset = problemData.Dataset; string targetVariable = problemData.TargetVariable; IEnumerable allowedInputVariables = problemData.AllowedInputVariables; double[,] inputMatrix = dataset.ToArray(allowedInputVariables.Concat(new string[] { targetVariable }), problemData.TrainingIndices); double[,] testMatrix = dataset.ToArray(allowedInputVariables.Concat(new string[] { targetVariable }), problemData.TestIndices); alglib.linearmodel lm = new alglib.linearmodel(); alglib.lrreport ar = new alglib.lrreport(); int nRows = inputMatrix.GetLength(0); int nFeatures = inputMatrix.GetLength(1) - 1; double[] coefficients = new double[nFeatures + 1]; // last coefficient is for the constant int retVal = 1; alglib.lrbuild(inputMatrix, nRows, nFeatures, out retVal, out lm, out ar); if (retVal != 1) throw new ArgumentException("Error in calculation of linear regression solution"); trainRmsError = ar.rmserror; alglib.lrunpack(lm, out coefficients, out nFeatures); testRmsError = alglib.lrrmserror(lm, testMatrix, testMatrix.GetLength(0)); if (!buildSolution) return null; ISymbolicExpressionTree tree = new SymbolicExpressionTree(new ProgramRootSymbol().CreateTreeNode()); ISymbolicExpressionTreeNode startNode = new StartSymbol().CreateTreeNode(); tree.Root.AddSubtree(startNode); ISymbolicExpressionTreeNode addition = new Addition().CreateTreeNode(); startNode.AddSubtree(addition); int col = 0; foreach (string column in allowedInputVariables) { VariableTreeNode vNode = (VariableTreeNode)new HeuristicLab.Problems.DataAnalysis.Symbolic.Variable().CreateTreeNode(); vNode.VariableName = column; vNode.Weight = coefficients[col]; addition.AddSubtree(vNode); col++; } ConstantTreeNode cNode = (ConstantTreeNode)new Constant().CreateTreeNode(); cNode.Value = coefficients[coefficients.Length - 1]; addition.AddSubtree(cNode); SymbolicRegressionSolution solution = new SymbolicRegressionSolution(new SymbolicRegressionModel(problemData.TargetVariable, tree, new SymbolicDataAnalysisExpressionTreeInterpreter()), problemData); solution.Model.Name = "Linear Regression Model"; solution.Name = "Linear Regression Solution"; return solution; } } }