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source: branches/3106_AnalyticContinuedFractionsRegression/HeuristicLab.Tests/HeuristicLab.Scripting-3.3/Script Sources/GridSearchRFRegressionScriptSource.cs

Last change on this file was 17970, checked in by gkronber, 4 years ago

#3106 merged r17856:17969 from trunk to branch

File size: 4.5 KB
Line 
1using System;
2using System.Collections.Generic;
3using System.Linq;
4
5using HeuristicLab.Algorithms.DataAnalysis;
6using HeuristicLab.Common;
7using HeuristicLab.Problems.DataAnalysis;
8using HeuristicLab.Random;
9using HeuristicLab.Scripting;
10
11public class RFRegressionCrossValidationScript : HeuristicLab.Scripting.CSharpScriptBase {
12  /* Maximum degree of parallelism (specifies whether or not the grid search should be parallelized) */
13  const int maximumDegreeOfParallelism = 4;
14  /* Number of crossvalidation folds: */
15  const int numberOfFolds = 3;
16
17  /* The tunable Random Forest parameters:
18     - "n" (number of trees). In the random forests literature, this is referred to as the ntree parameter.
19       Larger number of trees produce more stable models and covariate importance estimates, but require more memory and a longer run time.
20       For small datasets, 50 trees may be sufficient. For larger datasets, 500 or more may be required. Please consult the random forests
21       literature for extensive discussion of this parameter (e.g. Cutler et al., 2007; Strobl et al., 2007; Strobl et al., 2008).
22
23     - "r" The ratio of the training set that will be used in the construction of individual trees (0<r<=1). Should be adjusted depending on
24       the noise level in the dataset in the range from 0.66 (low noise) to 0.05 (high noise). This parameter should be adjusted to achieve
25       good generalization error.
26
27     - "m" The ratio of features that will be used in the construction of individual trees (0<m<=1)
28  */
29  static Dictionary<string, IEnumerable<double>> randomForestParameterRanges = new Dictionary<string, IEnumerable<double>> {
30    { "N", SequenceGenerator.GenerateSteps(5m, 10, 1).Select(x => Math.Pow(2,(double)x)) },
31    { "R", SequenceGenerator.GenerateSteps(0.05m, 0.66m, 0.05m).Select(x => (double)x) },
32    { "M", SequenceGenerator.GenerateSteps(0.1m, 1, 0.1m).Select(x => (double)x) }
33  };
34
35  private static RandomForestRegressionSolution GridSearchWithCrossvalidation(IRegressionProblemData problemData, out RFParameter bestParameters, int seed = 3141519) {
36    double rmsError, outOfBagRmsError, avgRelError, outOfBagAvgRelError;
37    bestParameters = RandomForestUtil.GridSearch(problemData, numberOfFolds, randomForestParameterRanges, seed, maximumDegreeOfParallelism);
38    var model = RandomForestRegression.CreateRandomForestRegressionModel(problemData, problemData.TrainingIndices, bestParameters.N, bestParameters.R, bestParameters.M, seed,
39                                                                         out rmsError, out avgRelError, out outOfBagRmsError, out outOfBagAvgRelError);
40    return (RandomForestRegressionSolution)model.CreateRegressionSolution(problemData);
41  }
42
43  private static RandomForestRegressionSolution GridSearch(IRegressionProblemData problemData, out RFParameter bestParameters, int seed = 3141519) {
44    double rmsError, outOfBagRmsError, avgRelError, outOfBagAvgRelError;
45    var random = new MersenneTwister();
46    bestParameters = RandomForestUtil.GridSearch(problemData, randomForestParameterRanges, seed, maximumDegreeOfParallelism);
47    var model = RandomForestRegression.CreateRandomForestRegressionModel(problemData, problemData.TrainingIndices, bestParameters.N, bestParameters.R, bestParameters.M, seed,
48                                                                         out rmsError, out avgRelError, out outOfBagRmsError, out outOfBagAvgRelError);
49    return (RandomForestRegressionSolution)model.CreateRegressionSolution(problemData);
50  }
51
52  public override void Main() {
53    var variables = (Variables)vars;
54    var item = variables.SingleOrDefault(x => x.Value is IRegressionProblem || x.Value is IRegressionProblemData);
55    if (item.Equals(default(KeyValuePair<string, object>)))
56      throw new ArgumentException("Could not find a suitable problem or problem data.");
57
58    string name = item.Key;
59    IRegressionProblemData problemData;
60    if (item.Value is IRegressionProblem)
61      problemData = ((IRegressionProblem)item.Value).ProblemData;
62    else
63      problemData = (IRegressionProblemData)item.Value;
64
65    var bestParameters = new RFParameter();
66    var bestSolution = GridSearch(problemData, out bestParameters);
67    vars["bestSolution"] = bestSolution;
68    vars["bestParameters"] = bestParameters;
69
70    Console.WriteLine("R2 (training): " + bestSolution.TrainingRSquared + ", R2 (test): " + bestSolution.TestRSquared);
71    Console.WriteLine("Model parameters: n = {0}, r = {1}, m = {2}", bestParameters.N, bestParameters.R, bestParameters.M);
72  }
73}
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