Fuzzy Classifier Systems (FCS) implement a mapping from real numbers to real numbers, through fuzzy interpretation of input and output. Reinforcement Learning (RL) algorithms can be successfully applied to develop learning FCS analogously to what can be done with Learning Classifier Systems (LCS). We motivate this approach and r we present a methodology to extend straightforwardly reinforcement distribution algorithms originally designed for crisp input and output to fully exploit the features of FCS.
Reinforcement distribution for fuzzy classifiers: A methodology to extend crisp algorithms
BONARINI, ANDREA
1998-01-01
Abstract
Fuzzy Classifier Systems (FCS) implement a mapping from real numbers to real numbers, through fuzzy interpretation of input and output. Reinforcement Learning (RL) algorithms can be successfully applied to develop learning FCS analogously to what can be done with Learning Classifier Systems (LCS). We motivate this approach and r we present a methodology to extend straightforwardly reinforcement distribution algorithms originally designed for crisp input and output to fully exploit the features of FCS.File in questo prodotto:
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