2000
DOI: 10.1109/72.846746
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Neuro-fuzzy rule generation: survey in soft computing framework

Abstract: The present article is a novel attempt in providing an exhaustive survey of neuro-fuzzy rule generation algorithms. Rule generation from artificial neural networks is gaining in popularity in recent times due to its capability of providing some insight to the user about the symbolic knowledge embedded within the network. Fuzzy sets are an aid in providing this information in a more human comprehensible or natural form, and can handle uncertainties at various levels. The neuro-fuzzy approach, symbiotically comb… Show more

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Cited by 628 publications
(255 citation statements)
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References 131 publications
(199 reference statements)
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“…The second problem is addressed by data-driven techniques for identification of fuzzy systems from numerical examples [16], such as the algorithm by Wang and Mendel (W&M) [50,51] and the fuzzy identification algorithm based on clustering by Chiu [12,36], two well established methods among the many alternatives proposed throughout the years [23,19,43,34,2,26,44].…”
Section: Introductionmentioning
confidence: 99%
“…The second problem is addressed by data-driven techniques for identification of fuzzy systems from numerical examples [16], such as the algorithm by Wang and Mendel (W&M) [50,51] and the fuzzy identification algorithm based on clustering by Chiu [12,36], two well established methods among the many alternatives proposed throughout the years [23,19,43,34,2,26,44].…”
Section: Introductionmentioning
confidence: 99%
“…Another interesting approach in this area is the one proposed by del Jesus et al (2004), which applies the idea of boosting (Kearns, 1988) to the evolutionary learning of rule-based classifiers. Neuro-fuzzy methods (Mitra and Hayashi, 2000;Nauck et al, 1997) encode a fuzzy system as a neural network and apply corresponding learning methods (like backpropagation). Fuzzy rules are then extracted from a trained network.…”
Section: Related Workmentioning
confidence: 99%
“…Recently, there has been a growing interest in combining both approaches, and as a result, neurofuzzy computing techniques have been evolved [1,13,14]. ANFIS model combines the neural network adaptive capabilities and the fuzzy logic qualitative nature, which we use as a classifier in the proposed method.…”
Section: Introductionmentioning
confidence: 99%