[5617] | 1 | #region License Information
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| 2 | /* HeuristicLab
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[17181] | 3 | * Copyright (C) Heuristic and Evolutionary Algorithms Laboratory (HEAL)
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[5617] | 4 | *
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| 5 | * This file is part of HeuristicLab.
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| 6 | *
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| 7 | * HeuristicLab is free software: you can redistribute it and/or modify
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| 8 | * it under the terms of the GNU General Public License as published by
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| 9 | * the Free Software Foundation, either version 3 of the License, or
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| 10 | * (at your option) any later version.
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| 11 | *
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| 12 | * HeuristicLab is distributed in the hope that it will be useful,
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| 13 | * but WITHOUT ANY WARRANTY; without even the implied warranty of
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| 14 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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| 15 | * GNU General Public License for more details.
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| 16 | *
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| 17 | * You should have received a copy of the GNU General Public License
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| 18 | * along with HeuristicLab. If not, see <http://www.gnu.org/licenses/>.
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| 19 | */
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| 20 | #endregion
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| 21 |
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| 22 | using System;
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[5777] | 23 | using System.Collections.Generic;
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[5617] | 24 | using System.Linq;
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[15061] | 25 | using System.Threading;
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[5617] | 26 | using HeuristicLab.Common;
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| 27 | using HeuristicLab.Core;
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| 28 | using HeuristicLab.Data;
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| 29 | using HeuristicLab.Optimization;
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[17097] | 30 | using HEAL.Attic;
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[5617] | 31 | using HeuristicLab.Problems.DataAnalysis;
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| 32 | using HeuristicLab.Problems.DataAnalysis.Symbolic;
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[5624] | 33 | using HeuristicLab.Problems.DataAnalysis.Symbolic.Regression;
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[5617] | 34 |
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| 35 | namespace HeuristicLab.Algorithms.DataAnalysis {
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| 36 | /// <summary>
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| 37 | /// Linear regression data analysis algorithm.
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| 38 | /// </summary>
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[13297] | 39 | [Item("Linear Regression (LR)", "Linear regression data analysis algorithm (wrapper for ALGLIB).")]
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[12708] | 40 | [Creatable(CreatableAttribute.Categories.DataAnalysisRegression, Priority = 100)]
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[17097] | 41 | [StorableType("CF99D45E-F341-445E-9B9E-0587A8D9CBA7")]
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[5617] | 42 | public sealed class LinearRegression : FixedDataAnalysisAlgorithm<IRegressionProblem> {
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[17074] | 43 | private const string SolutionResultName = "Linear regression solution";
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| 44 | private const string ConfidenceSolutionResultName = "Solution with prediction intervals";
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[5617] | 45 |
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| 46 | [StorableConstructor]
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[17097] | 47 | private LinearRegression(StorableConstructorFlag _) : base(_) { }
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[5617] | 48 | private LinearRegression(LinearRegression original, Cloner cloner)
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| 49 | : base(original, cloner) {
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| 50 | }
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| 51 | public LinearRegression()
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| 52 | : base() {
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[5649] | 53 | Problem = new RegressionProblem();
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[5617] | 54 | }
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| 55 | [StorableHook(HookType.AfterDeserialization)]
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| 56 | private void AfterDeserialization() { }
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| 57 |
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| 58 | public override IDeepCloneable Clone(Cloner cloner) {
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| 59 | return new LinearRegression(this, cloner);
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| 60 | }
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| 61 |
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| 62 | #region linear regression
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[15061] | 63 | protected override void Run(CancellationToken cancellationToken) {
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[5617] | 64 | double rmsError, cvRmsError;
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[17074] | 65 | // produce both solutions, to allow symbolic manipulation of LR solutions as well
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| 66 | // as the calculation of prediction intervals.
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| 67 | // There is no clean way to implement the new model class for LR as a symbolic model.
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| 68 | var solution = CreateSolution(Problem.ProblemData, out rmsError, out cvRmsError);
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| 69 | #pragma warning disable 168, 3021
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| 70 | var symbolicSolution = CreateLinearRegressionSolution(Problem.ProblemData, out rmsError, out cvRmsError);
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| 71 | #pragma warning restore 168, 3021
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| 72 | Results.Add(new Result(SolutionResultName, "The linear regression solution.", symbolicSolution));
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| 73 | Results.Add(new Result(ConfidenceSolutionResultName, "Linear regression solution with parameter covariance matrix " +
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| 74 | "and calculation of prediction intervals", solution));
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[5649] | 75 | Results.Add(new Result("Root mean square error", "The root of the mean of squared errors of the linear regression solution on the training set.", new DoubleValue(rmsError)));
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| 76 | Results.Add(new Result("Estimated root mean square error (cross-validation)", "The estimated root of the mean of squared errors of the linear regression solution via cross validation.", new DoubleValue(cvRmsError)));
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[5617] | 77 | }
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| 78 |
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[17074] | 79 | [Obsolete("Use CreateSolution() instead")]
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[5624] | 80 | public static ISymbolicRegressionSolution CreateLinearRegressionSolution(IRegressionProblemData problemData, out double rmsError, out double cvRmsError) {
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[17074] | 81 | IEnumerable<string> doubleVariables;
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| 82 | IEnumerable<KeyValuePair<string, IEnumerable<string>>> factorVariables;
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| 83 | double[,] inputMatrix;
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| 84 | PrepareData(problemData, out inputMatrix, out doubleVariables, out factorVariables);
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[15131] | 85 |
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[5617] | 86 | alglib.linearmodel lm = new alglib.linearmodel();
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| 87 | alglib.lrreport ar = new alglib.lrreport();
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| 88 | int nRows = inputMatrix.GetLength(0);
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| 89 | int nFeatures = inputMatrix.GetLength(1) - 1;
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| 90 |
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| 91 | int retVal = 1;
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| 92 | alglib.lrbuild(inputMatrix, nRows, nFeatures, out retVal, out lm, out ar);
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[5649] | 93 | if (retVal != 1) throw new ArgumentException("Error in calculation of linear regression solution");
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[5617] | 94 | rmsError = ar.rmserror;
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| 95 | cvRmsError = ar.cvrmserror;
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| 96 |
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[17074] | 97 | double[] coefficients = new double[nFeatures + 1]; // last coefficient is for the constant
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[5617] | 98 | alglib.lrunpack(lm, out coefficients, out nFeatures);
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| 99 |
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[17074] | 100 | int nFactorCoeff = factorVariables.Sum(kvp => kvp.Value.Count());
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[15142] | 101 | int nVarCoeff = doubleVariables.Count();
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| 102 | var tree = LinearModelToTreeConverter.CreateTree(factorVariables, coefficients.Take(nFactorCoeff).ToArray(),
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[15788] | 103 | doubleVariables.ToArray(), coefficients.Skip(nFactorCoeff).Take(nVarCoeff).ToArray(),
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[15142] | 104 | @const: coefficients[nFeatures]);
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[15788] | 105 |
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[14795] | 106 | SymbolicRegressionSolution solution = new SymbolicRegressionSolution(new SymbolicRegressionModel(problemData.TargetVariable, tree, new SymbolicDataAnalysisExpressionTreeLinearInterpreter()), (IRegressionProblemData)problemData.Clone());
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[6555] | 107 | solution.Model.Name = "Linear Regression Model";
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[7588] | 108 | solution.Name = "Linear Regression Solution";
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[5624] | 109 | return solution;
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[5617] | 110 | }
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[17074] | 111 |
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| 112 | public static IRegressionSolution CreateSolution(IRegressionProblemData problemData, out double rmsError, out double cvRmsError) {
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| 113 | IEnumerable<string> doubleVariables;
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| 114 | IEnumerable<KeyValuePair<string, IEnumerable<string>>> factorVariables;
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| 115 | double[,] inputMatrix;
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| 116 | PrepareData(problemData, out inputMatrix, out doubleVariables, out factorVariables);
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| 117 |
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| 118 | alglib.linearmodel lm = new alglib.linearmodel();
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| 119 | alglib.lrreport ar = new alglib.lrreport();
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| 120 | int nRows = inputMatrix.GetLength(0);
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| 121 | int nFeatures = inputMatrix.GetLength(1) - 1;
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| 122 |
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| 123 | int retVal = 1;
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| 124 | alglib.lrbuild(inputMatrix, nRows, nFeatures, out retVal, out lm, out ar);
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| 125 | if (retVal != 1) throw new ArgumentException("Error in calculation of linear regression solution");
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| 126 | rmsError = ar.rmserror;
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| 127 | cvRmsError = ar.cvrmserror;
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| 128 |
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| 129 | // get parameters of the model
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| 130 | double[] w;
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| 131 | int nVars;
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| 132 | alglib.lrunpack(lm, out w, out nVars);
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| 133 |
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| 134 | // ar.c is the covariation matrix, array[0..NVars,0..NVars].
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| 135 | // C[i, j] = Cov(A[i], A[j])
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| 136 |
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| 137 | var solution = new LinearRegressionModel(w, ar.c, cvRmsError, problemData.TargetVariable, doubleVariables, factorVariables)
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| 138 | .CreateRegressionSolution((IRegressionProblemData)problemData.Clone());
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| 139 | solution.Name = "Linear Regression Solution";
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| 140 | return solution;
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| 141 | }
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| 142 |
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| 143 | private static void PrepareData(IRegressionProblemData problemData,
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| 144 | out double[,] inputMatrix,
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| 145 | out IEnumerable<string> doubleVariables,
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| 146 | out IEnumerable<KeyValuePair<string, IEnumerable<string>>> factorVariables) {
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| 147 | var dataset = problemData.Dataset;
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| 148 | string targetVariable = problemData.TargetVariable;
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| 149 | IEnumerable<string> allowedInputVariables = problemData.AllowedInputVariables;
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| 150 | IEnumerable<int> rows = problemData.TrainingIndices;
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| 151 | doubleVariables = allowedInputVariables.Where(dataset.VariableHasType<double>);
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| 152 | var factorVariableNames = allowedInputVariables.Where(dataset.VariableHasType<string>);
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| 153 | factorVariables = dataset.GetFactorVariableValues(factorVariableNames, rows);
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| 154 | double[,] binaryMatrix = dataset.ToArray(factorVariables, rows);
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| 155 | double[,] doubleVarMatrix = dataset.ToArray(doubleVariables.Concat(new string[] { targetVariable }), rows);
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| 156 | inputMatrix = binaryMatrix.HorzCat(doubleVarMatrix);
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| 157 |
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| 158 | if (inputMatrix.ContainsNanOrInfinity())
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| 159 | throw new NotSupportedException("Linear regression does not support NaN or infinity values in the input dataset.");
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| 160 | }
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[5617] | 161 | #endregion
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| 162 | }
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| 163 | }
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