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Abstract

A hybrid intelligent system involves combining two intelligent technologies; e.g., a combination of a neural network with a fuzzy system to produce a hybrid neuro-fuzzy system. Generally combining probabilistic reasoning, fuzzy logic, evolutionary computation together with neural networks produces hybrid systems which form the core of soft computing.

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Hajian, A., Styles, P. (2018). Neuro-fuzzy Systems. In: Application of Soft Computing and Intelligent Methods in Geophysics. Springer Geophysics. Springer, Cham. https://doi.org/10.1007/978-3-319-66532-0_5

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