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source: branches/2971_named_intervals/HeuristicLab.Problems.DataAnalysis/3.4/Implementation/Classification/ClassificationSolutionVariableImpactsCalculator.cs @ 16628

Last change on this file since 16628 was 16628, checked in by gkronber, 5 years ago

#2971: made branch compile with current version of trunk

File size: 16.8 KB
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1#region License Information
2
3/* HeuristicLab
4 * Copyright (C) 2002-2018 Heuristic and Evolutionary Algorithms Laboratory (HEAL)
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
22#endregion
23
24using System;
25using System.Collections;
26using System.Collections.Generic;
27using System.Linq;
28using HeuristicLab.Common;
29using HeuristicLab.Core;
30using HeuristicLab.Data;
31using HeuristicLab.Parameters;
32using HeuristicLab.Persistence.Default.CompositeSerializers.Storable;
33using HeuristicLab.Random;
34using HEAL.Attic;
35
36namespace HeuristicLab.Problems.DataAnalysis {
37  [StorableType("6E031543-7C35-47F3-9BE2-E33D1486C3D2")]
38  [Item("ClassificationSolution Impacts Calculator", "Calculation of the impacts of input variables for any classification solution")]
39  public sealed class ClassificationSolutionVariableImpactsCalculator : ParameterizedNamedItem {
40    #region Parameters/Properties
41    public enum ReplacementMethodEnum {
42      Median,
43      Average,
44      Shuffle,
45      Noise
46    }
47    public enum FactorReplacementMethodEnum {
48      Best,
49      Mode,
50      Shuffle
51    }
52    public enum DataPartitionEnum {
53      Training,
54      Test,
55      All
56    }
57
58    private const string ReplacementParameterName = "Replacement Method";
59    private const string FactorReplacementParameterName = "Factor Replacement Method";
60    private const string DataPartitionParameterName = "DataPartition";
61
62    public IFixedValueParameter<EnumValue<ReplacementMethodEnum>> ReplacementParameter {
63      get { return (IFixedValueParameter<EnumValue<ReplacementMethodEnum>>)Parameters[ReplacementParameterName]; }
64    }
65    public IFixedValueParameter<EnumValue<FactorReplacementMethodEnum>> FactorReplacementParameter {
66      get { return (IFixedValueParameter<EnumValue<FactorReplacementMethodEnum>>)Parameters[FactorReplacementParameterName]; }
67    }
68    public IFixedValueParameter<EnumValue<DataPartitionEnum>> DataPartitionParameter {
69      get { return (IFixedValueParameter<EnumValue<DataPartitionEnum>>)Parameters[DataPartitionParameterName]; }
70    }
71
72    public ReplacementMethodEnum ReplacementMethod {
73      get { return ReplacementParameter.Value.Value; }
74      set { ReplacementParameter.Value.Value = value; }
75    }
76    public FactorReplacementMethodEnum FactorReplacementMethod {
77      get { return FactorReplacementParameter.Value.Value; }
78      set { FactorReplacementParameter.Value.Value = value; }
79    }
80    public DataPartitionEnum DataPartition {
81      get { return DataPartitionParameter.Value.Value; }
82      set { DataPartitionParameter.Value.Value = value; }
83    }
84    #endregion
85
86    #region Ctor/Cloner
87    [StorableConstructor]
88    private ClassificationSolutionVariableImpactsCalculator(StorableConstructorFlag _) : base(_) { }
89    private ClassificationSolutionVariableImpactsCalculator(ClassificationSolutionVariableImpactsCalculator original, Cloner cloner)
90      : base(original, cloner) { }
91    public ClassificationSolutionVariableImpactsCalculator()
92      : base() {
93      Parameters.Add(new FixedValueParameter<EnumValue<ReplacementMethodEnum>>(ReplacementParameterName, "The replacement method for variables during impact calculation.", new EnumValue<ReplacementMethodEnum>(ReplacementMethodEnum.Shuffle)));
94      Parameters.Add(new FixedValueParameter<EnumValue<FactorReplacementMethodEnum>>(FactorReplacementParameterName, "The replacement method for factor variables during impact calculation.", new EnumValue<FactorReplacementMethodEnum>(FactorReplacementMethodEnum.Best)));
95      Parameters.Add(new FixedValueParameter<EnumValue<DataPartitionEnum>>(DataPartitionParameterName, "The data partition on which the impacts are calculated.", new EnumValue<DataPartitionEnum>(DataPartitionEnum.Training)));
96    }
97
98    public override IDeepCloneable Clone(Cloner cloner) {
99      return new ClassificationSolutionVariableImpactsCalculator(this, cloner);
100    }
101    #endregion
102
103    //mkommend: annoying name clash with static method, open to better naming suggestions
104    public IEnumerable<Tuple<string, double>> Calculate(IClassificationSolution solution) {
105      return CalculateImpacts(solution, ReplacementMethod, FactorReplacementMethod, DataPartition);
106    }
107
108    public static IEnumerable<Tuple<string, double>> CalculateImpacts(
109      IClassificationSolution solution,
110      ReplacementMethodEnum replacementMethod = ReplacementMethodEnum.Shuffle,
111      FactorReplacementMethodEnum factorReplacementMethod = FactorReplacementMethodEnum.Best,
112      DataPartitionEnum dataPartition = DataPartitionEnum.Training) {
113
114      IEnumerable<int> rows = GetPartitionRows(dataPartition, solution.ProblemData);
115      IEnumerable<double> estimatedClassValues = solution.GetEstimatedClassValues(rows);
116      var model = (IClassificationModel)solution.Model.Clone(); //mkommend: clone of model is necessary, because the thresholds for IDiscriminantClassificationModels are updated
117
118      return CalculateImpacts(model, solution.ProblemData, estimatedClassValues, rows, replacementMethod, factorReplacementMethod);
119    }
120
121    public static IEnumerable<Tuple<string, double>> CalculateImpacts(
122     IClassificationModel model,
123     IClassificationProblemData problemData,
124     IEnumerable<double> estimatedClassValues,
125     IEnumerable<int> rows,
126     ReplacementMethodEnum replacementMethod = ReplacementMethodEnum.Shuffle,
127     FactorReplacementMethodEnum factorReplacementMethod = FactorReplacementMethodEnum.Best) {
128
129      //fholzing: try and catch in case a different dataset is loaded, otherwise statement is neglectable
130      var missingVariables = model.VariablesUsedForPrediction.Except(problemData.Dataset.VariableNames);
131      if (missingVariables.Any()) {
132        throw new InvalidOperationException(string.Format("Can not calculate variable impacts, because the model uses inputs missing in the dataset ({0})", string.Join(", ", missingVariables)));
133      }
134      IEnumerable<double> targetValues = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, rows);
135      var originalQuality = CalculateQuality(targetValues, estimatedClassValues);
136
137      var impacts = new Dictionary<string, double>();
138      var inputvariables = new HashSet<string>(problemData.AllowedInputVariables.Union(model.VariablesUsedForPrediction));
139      var modifiableDataset = ((Dataset)(problemData.Dataset).Clone()).ToModifiable();
140
141      foreach (var inputVariable in inputvariables) {
142        impacts[inputVariable] = CalculateImpact(inputVariable, model, problemData, modifiableDataset, rows, replacementMethod, factorReplacementMethod, targetValues, originalQuality);
143      }
144
145      return impacts.Select(i => Tuple.Create(i.Key, i.Value));
146    }
147
148    public static double CalculateImpact(string variableName,
149      IClassificationModel model,
150      IClassificationProblemData problemData,
151      ModifiableDataset modifiableDataset,
152      IEnumerable<int> rows,
153      ReplacementMethodEnum replacementMethod = ReplacementMethodEnum.Shuffle,
154      FactorReplacementMethodEnum factorReplacementMethod = FactorReplacementMethodEnum.Best,
155      IEnumerable<double> targetValues = null,
156      double quality = double.NaN) {
157
158      if (!model.VariablesUsedForPrediction.Contains(variableName)) { return 0.0; }
159      if (!problemData.Dataset.VariableNames.Contains(variableName)) {
160        throw new InvalidOperationException(string.Format("Can not calculate variable impact, because the model uses inputs missing in the dataset ({0})", variableName));
161      }
162
163      if (targetValues == null) {
164        targetValues = problemData.Dataset.GetDoubleValues(problemData.TargetVariable, rows);
165      }
166      if (quality == double.NaN) {
167        quality = CalculateQuality(model.GetEstimatedClassValues(modifiableDataset, rows), targetValues);
168      }
169
170      IList originalValues = null;
171      IList replacementValues = GetReplacementValues(modifiableDataset, variableName, model, rows, targetValues, out originalValues, replacementMethod, factorReplacementMethod);
172
173      double newValue = CalculateQualityForReplacement(model, modifiableDataset, variableName, originalValues, rows, replacementValues, targetValues);
174      double impact = quality - newValue;
175
176      return impact;
177    }
178
179    private static IList GetReplacementValues(ModifiableDataset modifiableDataset,
180      string variableName,
181      IClassificationModel model,
182      IEnumerable<int> rows,
183      IEnumerable<double> targetValues,
184      out IList originalValues,
185      ReplacementMethodEnum replacementMethod = ReplacementMethodEnum.Shuffle,
186      FactorReplacementMethodEnum factorReplacementMethod = FactorReplacementMethodEnum.Best) {
187
188      IList replacementValues = null;
189      if (modifiableDataset.VariableHasType<double>(variableName)) {
190        originalValues = modifiableDataset.GetReadOnlyDoubleValues(variableName).ToList();
191        replacementValues = GetReplacementValuesForDouble(modifiableDataset, rows, (List<double>)originalValues, replacementMethod);
192      } else if (modifiableDataset.VariableHasType<string>(variableName)) {
193        originalValues = modifiableDataset.GetReadOnlyStringValues(variableName).ToList();
194        replacementValues = GetReplacementValuesForString(model, modifiableDataset, variableName, rows, (List<string>)originalValues, targetValues, factorReplacementMethod);
195      } else {
196        throw new NotSupportedException("Variable not supported");
197      }
198
199      return replacementValues;
200    }
201
202    private static IList GetReplacementValuesForDouble(ModifiableDataset modifiableDataset,
203      IEnumerable<int> rows,
204      List<double> originalValues,
205      ReplacementMethodEnum replacementMethod = ReplacementMethodEnum.Shuffle) {
206
207      IRandom random = new FastRandom(31415);
208      List<double> replacementValues;
209      double replacementValue;
210
211      switch (replacementMethod) {
212        case ReplacementMethodEnum.Median:
213          replacementValue = rows.Select(r => originalValues[r]).Median();
214          replacementValues = Enumerable.Repeat(replacementValue, modifiableDataset.Rows).ToList();
215          break;
216        case ReplacementMethodEnum.Average:
217          replacementValue = rows.Select(r => originalValues[r]).Average();
218          replacementValues = Enumerable.Repeat(replacementValue, modifiableDataset.Rows).ToList();
219          break;
220        case ReplacementMethodEnum.Shuffle:
221          // new var has same empirical distribution but the relation to y is broken
222          // prepare a complete column for the dataset
223          replacementValues = Enumerable.Repeat(double.NaN, modifiableDataset.Rows).ToList();
224          // shuffle only the selected rows
225          var shuffledValues = rows.Select(r => originalValues[r]).Shuffle(random).ToList();
226          int i = 0;
227          // update column values
228          foreach (var r in rows) {
229            replacementValues[r] = shuffledValues[i++];
230          }
231          break;
232        case ReplacementMethodEnum.Noise:
233          var avg = rows.Select(r => originalValues[r]).Average();
234          var stdDev = rows.Select(r => originalValues[r]).StandardDeviation();
235          // prepare a complete column for the dataset
236          replacementValues = Enumerable.Repeat(double.NaN, modifiableDataset.Rows).ToList();
237          // update column values
238          foreach (var r in rows) {
239            replacementValues[r] = NormalDistributedRandom.NextDouble(random, avg, stdDev);
240          }
241          break;
242
243        default:
244          throw new ArgumentException(string.Format("ReplacementMethod {0} cannot be handled.", replacementMethod));
245      }
246
247      return replacementValues;
248    }
249
250    private static IList GetReplacementValuesForString(IClassificationModel model,
251      ModifiableDataset modifiableDataset,
252      string variableName,
253      IEnumerable<int> rows,
254      List<string> originalValues,
255      IEnumerable<double> targetValues,
256      FactorReplacementMethodEnum factorReplacementMethod = FactorReplacementMethodEnum.Shuffle) {
257
258      List<string> replacementValues = null;
259      IRandom random = new FastRandom(31415);
260
261      switch (factorReplacementMethod) {
262        case FactorReplacementMethodEnum.Best:
263          // try replacing with all possible values and find the best replacement value
264          var bestQuality = double.NegativeInfinity;
265          foreach (var repl in modifiableDataset.GetStringValues(variableName, rows).Distinct()) {
266            List<string> curReplacementValues = Enumerable.Repeat(repl, modifiableDataset.Rows).ToList();
267            //fholzing: this result could be used later on (theoretically), but is neglected for better readability/method consistency
268            var newValue = CalculateQualityForReplacement(model, modifiableDataset, variableName, originalValues, rows, curReplacementValues, targetValues);
269            var curQuality = newValue;
270
271            if (curQuality > bestQuality) {
272              bestQuality = curQuality;
273              replacementValues = curReplacementValues;
274            }
275          }
276          break;
277        case FactorReplacementMethodEnum.Mode:
278          var mostCommonValue = rows.Select(r => originalValues[r])
279            .GroupBy(v => v)
280            .OrderByDescending(g => g.Count())
281            .First().Key;
282          replacementValues = Enumerable.Repeat(mostCommonValue, modifiableDataset.Rows).ToList();
283          break;
284        case FactorReplacementMethodEnum.Shuffle:
285          // new var has same empirical distribution but the relation to y is broken
286          // prepare a complete column for the dataset
287          replacementValues = Enumerable.Repeat(string.Empty, modifiableDataset.Rows).ToList();
288          // shuffle only the selected rows
289          var shuffledValues = rows.Select(r => originalValues[r]).Shuffle(random).ToList();
290          int i = 0;
291          // update column values
292          foreach (var r in rows) {
293            replacementValues[r] = shuffledValues[i++];
294          }
295          break;
296        default:
297          throw new ArgumentException(string.Format("FactorReplacementMethod {0} cannot be handled.", factorReplacementMethod));
298      }
299
300      return replacementValues;
301    }
302
303    private static double CalculateQualityForReplacement(
304      IClassificationModel model,
305      ModifiableDataset modifiableDataset,
306      string variableName,
307      IList originalValues,
308      IEnumerable<int> rows,
309      IList replacementValues,
310      IEnumerable<double> targetValues) {
311
312      modifiableDataset.ReplaceVariable(variableName, replacementValues);
313      var discModel = model as IDiscriminantFunctionClassificationModel;
314      if (discModel != null) {
315        var problemData = new ClassificationProblemData(modifiableDataset, modifiableDataset.VariableNames, model.TargetVariable);
316        discModel.RecalculateModelParameters(problemData, rows);
317      }
318
319      //mkommend: ToList is used on purpose to avoid lazy evaluation that could result in wrong estimates due to variable replacements
320      var estimates = model.GetEstimatedClassValues(modifiableDataset, rows).ToList();
321      var ret = CalculateQuality(targetValues, estimates);
322      modifiableDataset.ReplaceVariable(variableName, originalValues);
323
324      return ret;
325    }
326
327    public static double CalculateQuality(IEnumerable<double> targetValues, IEnumerable<double> estimatedClassValues) {
328      OnlineCalculatorError errorState;
329      var ret = OnlineAccuracyCalculator.Calculate(targetValues, estimatedClassValues, out errorState);
330      if (errorState != OnlineCalculatorError.None) { throw new InvalidOperationException("Error during calculation with replaced inputs."); }
331      return ret;
332    }
333
334    public static IEnumerable<int> GetPartitionRows(DataPartitionEnum dataPartition, IClassificationProblemData problemData) {
335      IEnumerable<int> rows;
336
337      switch (dataPartition) {
338        case DataPartitionEnum.All:
339          rows = problemData.AllIndices;
340          break;
341        case DataPartitionEnum.Test:
342          rows = problemData.TestIndices;
343          break;
344        case DataPartitionEnum.Training:
345          rows = problemData.TrainingIndices;
346          break;
347        default:
348          throw new NotSupportedException("DataPartition not supported");
349      }
350
351      return rows;
352    }
353  }
354}
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