Publication | Closed Access
Reducing Human Fatigue in Interactive Evolutionary Computation Through Fuzzy Systems and Machine Learning Systems
31
Citations
15
References
2006
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningMachine Learning ToolPredictor FunctionEvolving Intelligent SystemIntelligent SystemsInteractive Evolutionary ComputationData ScienceData MiningPattern RecognitionSystems EngineeringInteractive EvolutionEvolution-based MethodFuzzy LogicDesignComputer ScienceEvolutionary ProgrammingEvolutionary Data MiningHuman FatigueAutomationEvolutionary DesignMachine Learning SystemsLearning Classifier System
We describe two approaches to reducing human fatigue in interactive evolutionary computation (IEC). A predictor function is used to estimate the human user's score, thus reducing the amount of effort required by the human user during the evolution process. The fuzzy system and four machine learning classifier algorithms are presented. Their performance in a real-world application, the IEC-based design of a micromachine resonating mass, is evaluated. The fuzzy system was composed of four simple rules, but was able to accurately predict the user's score 77% of the time on average. This is equivalent to a 51 % reduction of human effort compared to using IEC without the predictor. The four machine learning approaches tested were k-nearest neighbors, decision tree, AdaBoosted decision tree, and support vector machines. These approaches achieved good accuracy on validation tests, but because of the great diversity in user scoring behavior, were unable to achieve equivalent results on the user test data.
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