Reinforcement Learning in the Fuzzy Classi
نویسندگان
چکیده
This report describes the fuzzy classiier system and a new payoo distribution scheme that performs true reinforcement learning. The fuzzy classiier system is a crossover between learning classiier systems and fuzzy logic controllers. By the use of fuzzy logic, the fuzzy classiier system allows for variables to take continuous values, and thus, could be applied to the identiication and control of continuous dynamic systems. The fuzzy classiier system adapt the mechanics of learning classiier system to fuzzy logic to evolve sets of coadapted fuzzy rules. The payoo distribution scheme presented here opens the way for the use of the fuzzy classiier system in control tasks. Additionally, other mechanisms that improve learning speed are presented.
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