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Neurofuzzy Systems

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Abstract

The neurofuzzy system is inspired by the biological-cognitive synergism in human intelligence. It is the synergism between the neuronal transduction/processing of sensory signals, and the corresponding cognitive, perceptual, and linguistic functions of the brain.

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Du, KL., Swamy, M.N.S. (2014). Neurofuzzy Systems. In: Neural Networks and Statistical Learning. Springer, London. https://doi.org/10.1007/978-1-4471-5571-3_22

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