2018
DOI: 10.5815/ijisa.2018.05.01
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Simplified Real-, Complex-, and Quaternion-Valued Neuro-Fuzzy Learning Algorithms

Abstract: Abstract-The conventional real-valued neuro-fuzzy method (RNF) is based on classic fuzzy systems with antecedent membership functions and consequent singletons. Rules in RNF are made by all the combinations of membership functions; thus, the number of rules as well as total parameters increase rapidly with the number of inputs. Although network parameters are relatively less in the recently developed complex-valued neuro-fuzzy (CVNF) and quaternion neuro-fuzzy (QNF), parameters increase with number of inputs. … Show more

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Cited by 12 publications
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