#region License Information
/* HeuristicLab
* Copyright (C) 2002-2014 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 HeuristicLab.Common;
using HeuristicLab.Core;
using HeuristicLab.Data;
using HeuristicLab.Operators;
using HeuristicLab.Optimization.Operators;
using HeuristicLab.Parameters;
using HeuristicLab.Persistence.Default.CompositeSerializers.Storable;
namespace HeuristicLab.Algorithms.VOffspringSelectionGeneticAlgorithm {
///
/// An operator which represents the main loop of an offspring selection genetic algorithm.
///
[Item("VOffspringSelectionGeneticAlgorithmMainLoop", "An operator which represents the main loop of an offspring selection genetic algorithm.")]
[StorableClass]
public sealed class VOffspringSelectionGeneticAlgorithmMainLoop : AlgorithmOperator {
#region Parameter properties
public ValueLookupParameter RandomParameter {
get { return (ValueLookupParameter)Parameters["Random"]; }
}
public ValueLookupParameter MaximizationParameter {
get { return (ValueLookupParameter)Parameters["Maximization"]; }
}
public ScopeTreeLookupParameter QualityParameter {
get { return (ScopeTreeLookupParameter)Parameters["Quality"]; }
}
public ValueLookupParameter SelectorParameter {
get { return (ValueLookupParameter)Parameters["Selector"]; }
}
public ValueLookupParameter CrossoverParameter {
get { return (ValueLookupParameter)Parameters["Crossover"]; }
}
public ValueLookupParameter MutationProbabilityParameter {
get { return (ValueLookupParameter)Parameters["MutationProbability"]; }
}
public ValueLookupParameter MutatorParameter {
get { return (ValueLookupParameter)Parameters["Mutator"]; }
}
public ValueLookupParameter EvaluatorParameter {
get { return (ValueLookupParameter)Parameters["Evaluator"]; }
}
public ValueLookupParameter ElitesParameter {
get { return (ValueLookupParameter)Parameters["Elites"]; }
}
public IValueLookupParameter ReevaluateElitesParameter {
get { return (IValueLookupParameter)Parameters["ReevaluateElites"]; }
}
public ValueLookupParameter MaximumGenerationsParameter {
get { return (ValueLookupParameter)Parameters["MaximumGenerations"]; }
}
public ValueLookupParameter ResultsParameter {
get { return (ValueLookupParameter)Parameters["Results"]; }
}
public ValueLookupParameter AnalyzerParameter {
get { return (ValueLookupParameter)Parameters["Analyzer"]; }
}
public ValueLookupParameter SuccessRatioParameter {
get { return (ValueLookupParameter)Parameters["SuccessRatio"]; }
}
public LookupParameter ComparisonFactorParameter {
get { return (LookupParameter)Parameters["ComparisonFactor"]; }
}
public ValueLookupParameter ComparisonFactorStartParameter {
get { return (ValueLookupParameter)Parameters["ComparisonFactorStart"]; }
}
public ValueLookupParameter ComparisonFactorModifierParameter {
get { return (ValueLookupParameter)Parameters["ComparisonFactorModifier"]; }
}
public ValueLookupParameter MaximumSelectionPressureParameter {
get { return (ValueLookupParameter)Parameters["MaximumSelectionPressure"]; }
}
public ValueLookupParameter OffspringSelectionBeforeMutationParameter {
get { return (ValueLookupParameter)Parameters["OffspringSelectionBeforeMutation"]; }
}
public LookupParameter EvaluatedSolutionsParameter {
get { return (LookupParameter)Parameters["EvaluatedSolutions"]; }
}
public IValueLookupParameter FillPopulationWithParentsParameter {
get { return (IValueLookupParameter)Parameters["FillPopulationWithParents"]; }
}
#endregion
[StorableConstructor]
private VOffspringSelectionGeneticAlgorithmMainLoop(bool deserializing) : base(deserializing) { }
private VOffspringSelectionGeneticAlgorithmMainLoop(VOffspringSelectionGeneticAlgorithmMainLoop original, Cloner cloner)
: base(original, cloner) {
}
public override IDeepCloneable Clone(Cloner cloner) {
return new VOffspringSelectionGeneticAlgorithmMainLoop(this, cloner);
}
public VOffspringSelectionGeneticAlgorithmMainLoop()
: base() {
Initialize();
}
[StorableHook(HookType.AfterDeserialization)]
private void AfterDeserialization() {
// BackwardsCompatibility3.3
#region Backwards compatible code, remove with 3.4
if (!Parameters.ContainsKey("ReevaluateElites")) {
Parameters.Add(new ValueLookupParameter("ReevaluateElites", "Flag to determine if elite individuals should be reevaluated (i.e., if stochastic fitness functions are used.)"));
}
if (!Parameters.ContainsKey("FillPopulationWithParents"))
Parameters.Add(new ValueLookupParameter("FillPopulationWithParents", "True if the population should be filled with parent individual or false if worse children should be used when the maximum selection pressure is exceeded."));
#endregion
}
private void Initialize() {
#region Create parameters
Parameters.Add(new ValueLookupParameter("Random", "A pseudo random number generator."));
Parameters.Add(new ValueLookupParameter("Maximization", "True if the problem is a maximization problem, otherwise false."));
Parameters.Add(new ScopeTreeLookupParameter("Quality", "The value which represents the quality of a solution."));
Parameters.Add(new ValueLookupParameter("BestKnownQuality", "The best known quality value found so far."));
Parameters.Add(new ValueLookupParameter("Selector", "The operator used to select solutions for reproduction."));
Parameters.Add(new ValueLookupParameter("Crossover", "The operator used to cross solutions."));
Parameters.Add(new ValueLookupParameter("MutationProbability", "The probability that the mutation operator is applied on a solution."));
Parameters.Add(new ValueLookupParameter("Mutator", "The operator used to mutate solutions."));
Parameters.Add(new ValueLookupParameter("Evaluator", "The operator used to evaluate solutions. This operator is executed in parallel, if an engine is used which supports parallelization."));
Parameters.Add(new ValueLookupParameter("Elites", "The numer of elite solutions which are kept in each generation."));
Parameters.Add(new ValueLookupParameter("ReevaluateElites", "Flag to determine if elite individuals should be reevaluated (i.e., if stochastic fitness functions are used.)"));
Parameters.Add(new ValueLookupParameter("MaximumGenerations", "The maximum number of generations which should be processed."));
Parameters.Add(new ValueLookupParameter("Results", "The variable collection where results should be stored."));
Parameters.Add(new ValueLookupParameter("Analyzer", "The operator used to analyze each generation."));
Parameters.Add(new ValueLookupParameter("SuccessRatio", "The ratio of successful to total children that should be achieved."));
Parameters.Add(new LookupParameter("ComparisonFactor", "The comparison factor is used to determine whether the offspring should be compared to the better parent, the worse parent or a quality value linearly interpolated between them. It is in the range [0;1]."));
Parameters.Add(new ValueLookupParameter("ComparisonFactorStart", "The initial value for the comparison factor."));
Parameters.Add(new ValueLookupParameter("ComparisonFactorModifier", "The operator used to modify the comparison factor."));
Parameters.Add(new ValueLookupParameter("MaximumSelectionPressure", "The maximum selection pressure that terminates the algorithm."));
Parameters.Add(new ValueLookupParameter("OffspringSelectionBeforeMutation", "True if the offspring selection step should be applied before mutation, false if it should be applied after mutation."));
Parameters.Add(new LookupParameter("EvaluatedSolutions", "The number of times solutions have been evaluated."));
Parameters.Add(new ValueLookupParameter("FillPopulationWithParents", "True if the population should be filled with parent individual or false if worse children should be used when the maximum selection pressure is exceeded."));
#endregion
#region Create operators
VariableCreator variableCreator = new VariableCreator();
Assigner comparisonFactorInitializer = new Assigner();
Placeholder analyzer1 = new Placeholder();
ResultsCollector resultsCollector1 = new ResultsCollector();
VOffspringSelectionGeneticAlgorithmMainOperator mainOperator = new VOffspringSelectionGeneticAlgorithmMainOperator();
IntCounter generationsCounter = new IntCounter();
Comparator maxGenerationsComparator = new Comparator();
Comparator maxSelectionPressureComparator = new Comparator();
Comparator maxEvaluatedSolutionsComparator = new Comparator();
Placeholder comparisonFactorModifier = new Placeholder();
Placeholder analyzer2 = new Placeholder();
ConditionalBranch conditionalBranch1 = new ConditionalBranch();
ConditionalBranch conditionalBranch2 = new ConditionalBranch();
ConditionalBranch conditionalBranch3 = new ConditionalBranch();
variableCreator.CollectedValues.Add(new ValueParameter("Generations", new IntValue(0))); // Class OffspringSelectionGeneticAlgorithm expects this to be called Generations
variableCreator.CollectedValues.Add(new ValueParameter("SelectionPressure", new DoubleValue(0)));
variableCreator.CollectedValues.Add(new ValueParameter("CurrentSuccessRatio", new DoubleValue(0)));
comparisonFactorInitializer.Name = "Initialize ComparisonFactor (placeholder)";
comparisonFactorInitializer.LeftSideParameter.ActualName = ComparisonFactorParameter.Name;
comparisonFactorInitializer.RightSideParameter.ActualName = ComparisonFactorStartParameter.Name;
analyzer1.Name = "Analyzer (placeholder)";
analyzer1.OperatorParameter.ActualName = AnalyzerParameter.Name;
resultsCollector1.CopyValue = new BoolValue(false);
resultsCollector1.CollectedValues.Add(new LookupParameter("Generations"));
resultsCollector1.CollectedValues.Add(new LookupParameter("Current Comparison Factor", null, ComparisonFactorParameter.Name));
resultsCollector1.CollectedValues.Add(new LookupParameter("Current Selection Pressure", "Displays the rising selection pressure during a generation.", "SelectionPressure"));
resultsCollector1.CollectedValues.Add(new LookupParameter("Current Success Ratio", "Indicates how many successful children were already found during a generation (relative to the population size).", "CurrentSuccessRatio"));
resultsCollector1.ResultsParameter.ActualName = ResultsParameter.Name;
mainOperator.ComparisonFactorParameter.ActualName = ComparisonFactorParameter.Name;
mainOperator.CrossoverParameter.ActualName = CrossoverParameter.Name;
mainOperator.CurrentSuccessRatioParameter.ActualName = "CurrentSuccessRatio";
mainOperator.ElitesParameter.ActualName = ElitesParameter.Name;
mainOperator.ReevaluateElitesParameter.ActualName = ReevaluateElitesParameter.Name;
mainOperator.EvaluatedSolutionsParameter.ActualName = EvaluatedSolutionsParameter.Name;
mainOperator.EvaluatorParameter.ActualName = EvaluatorParameter.Name;
mainOperator.MaximizationParameter.ActualName = MaximizationParameter.Name;
mainOperator.MaximumSelectionPressureParameter.ActualName = MaximumSelectionPressureParameter.Name;
mainOperator.MutationProbabilityParameter.ActualName = MutationProbabilityParameter.Name;
mainOperator.MutatorParameter.ActualName = MutatorParameter.Name;
mainOperator.OffspringSelectionBeforeMutationParameter.ActualName = OffspringSelectionBeforeMutationParameter.Name;
mainOperator.QualityParameter.ActualName = QualityParameter.Name;
mainOperator.RandomParameter.ActualName = RandomParameter.Name;
mainOperator.SelectionPressureParameter.ActualName = "SelectionPressure";
mainOperator.SelectorParameter.ActualName = SelectorParameter.Name;
mainOperator.SuccessRatioParameter.ActualName = SuccessRatioParameter.Name;
mainOperator.FillPopulationWithParentsParameter.ActualName = FillPopulationWithParentsParameter.Name;
generationsCounter.Increment = new IntValue(1);
generationsCounter.ValueParameter.ActualName = "Generations";
maxGenerationsComparator.Comparison = new Comparison(ComparisonType.GreaterOrEqual);
maxGenerationsComparator.LeftSideParameter.ActualName = "Generations";
maxGenerationsComparator.ResultParameter.ActualName = "TerminateMaximumGenerations";
maxGenerationsComparator.RightSideParameter.ActualName = MaximumGenerationsParameter.Name;
maxSelectionPressureComparator.Comparison = new Comparison(ComparisonType.GreaterOrEqual);
maxSelectionPressureComparator.LeftSideParameter.ActualName = "SelectionPressure";
maxSelectionPressureComparator.ResultParameter.ActualName = "TerminateSelectionPressure";
maxSelectionPressureComparator.RightSideParameter.ActualName = MaximumSelectionPressureParameter.Name;
maxEvaluatedSolutionsComparator.Comparison = new Comparison(ComparisonType.GreaterOrEqual);
maxEvaluatedSolutionsComparator.LeftSideParameter.ActualName = EvaluatedSolutionsParameter.Name;
maxEvaluatedSolutionsComparator.ResultParameter.ActualName = "TerminateEvaluatedSolutions";
maxEvaluatedSolutionsComparator.RightSideParameter.ActualName = "MaximumEvaluatedSolutions";
comparisonFactorModifier.Name = "Update ComparisonFactor (placeholder)";
comparisonFactorModifier.OperatorParameter.ActualName = ComparisonFactorModifierParameter.Name;
analyzer2.Name = "Analyzer (placeholder)";
analyzer2.OperatorParameter.ActualName = AnalyzerParameter.Name;
conditionalBranch1.Name = "MaximumSelectionPressure reached?";
conditionalBranch1.ConditionParameter.ActualName = "TerminateSelectionPressure";
conditionalBranch2.Name = "MaximumGenerations reached?";
conditionalBranch2.ConditionParameter.ActualName = "TerminateMaximumGenerations";
conditionalBranch3.Name = "MaximumEvaluatedSolutions reached?";
conditionalBranch3.ConditionParameter.ActualName = "TerminateEvaluatedSolutions";
#endregion
#region Create operator graph
OperatorGraph.InitialOperator = variableCreator;
variableCreator.Successor = comparisonFactorInitializer;
comparisonFactorInitializer.Successor = analyzer1;
analyzer1.Successor = resultsCollector1;
resultsCollector1.Successor = mainOperator;
mainOperator.Successor = generationsCounter;
generationsCounter.Successor = maxGenerationsComparator;
maxGenerationsComparator.Successor = maxSelectionPressureComparator;
maxSelectionPressureComparator.Successor = maxEvaluatedSolutionsComparator;
maxEvaluatedSolutionsComparator.Successor = comparisonFactorModifier;
comparisonFactorModifier.Successor = analyzer2;
analyzer2.Successor = conditionalBranch1;
conditionalBranch1.FalseBranch = conditionalBranch2;
conditionalBranch1.TrueBranch = null;
conditionalBranch1.Successor = null;
conditionalBranch2.FalseBranch = conditionalBranch3;
conditionalBranch2.TrueBranch = null;
conditionalBranch2.Successor = null;
conditionalBranch3.FalseBranch = mainOperator;
conditionalBranch3.TrueBranch = null;
conditionalBranch3.Successor = null;
#endregion
}
}
}