Title of article :
On evolutionary designing and learning of flexible neuro-fuzzy structures for nonlinear classification Original Research Article
Author/Authors :
Krzysztof Cpa?ka، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
In the paper, the evolutionary strategy is applied for learning flexible neuro-fuzzy systems. In the process of evolution we determine: fuzzy inference (Mamdani type or logical type—described by an SS-implication), specific fuzzy implication, if the logical type system is found in the process of evolution or specific tt-norm connecting antecedents and consequences, if the Mamdani type system is found in the process of evolution, specific tt-norm for aggregation of antecedents in each rule, specific triangular norm describing aggregation operator, shapes and parameters of fuzzy membership functions, weights describing importance of antecedents of rules, and weights describing importance of rules, parameters of adjustable triangular norms, parameters of soft triangular norms. It should be noted that the crossover and mutation operators are chosen in a self-adaptive way. The method is tested using well known classification benchmarks.
Keywords :
Evolutionary designing , Fuzzy logic , Neuro-fuzzy systems , Mamdani fuzzy model , Logical fuzzy model , Evolutionary learning
Journal title :
Nonlinear Analysis Theory, Methods & Applications
Journal title :
Nonlinear Analysis Theory, Methods & Applications