Publication | Closed Access
A MULTI-OBJECTIVE GENETIC ALGORITHM FOR TUNING AND RULE SELECTION TO OBTAIN ACCURATE AND COMPACT LINGUISTIC FUZZY RULE-BASED SYSTEMS
124
Citations
41
References
2007
Year
Fuzzy Multi-criteria Decision-makingHigh AccuracyFuzzy LogicFuzzy SystemsEngineeringFuzzy ComputingPareto ZoneFuzzy ModelingFuzzy MathematicsFuzzy Expert SystemSystems EngineeringFuzzy OptimizationIntelligent SystemsLinguistic Fuzzy
This work proposes the application of Multi-Objective Genetic Algorithms to obtain Fuzzy Rule-Based Systems with a better trade-off between interpretability and accuracy in linguistic fuzzy modelling problems. To do that, we present a new post-processing method that by considering selection of rules together with tuning of membership functions gets solutions only in the Pareto zone with the highest accuracy, i.e., containing solutions with the least number of possible rules but still presenting high accuracy. This method is based on the well-known SPEA2 algorithm, applying appropriate genetic operators and including some modifications to concentrate the search in the desired Pareto zone.
| Year | Citations | |
|---|---|---|
Page 1
Page 1