Cross Entropy Optimization for Induction of Fuzzy Rule System*
نویسندگان
چکیده
Fuzzy technology became a very important controlling method in complex systems where traditional methods are unsuccessful. It was proved in [19] that fuzzy rule systems can be used as general approximators of any complex continuous systems. The key element of the approximation process is the construction of the corresponding fuzzy rule system that encapsulates the knowledge on the problem domain. A fuzzy rule base is defined as a set of deduction rules of the form
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