Feature Space Mapping: a neurofuzzy network for system identification
نویسندگان
چکیده
Our original motivation for the development of the Feature Space Mapping (FSM) system came from cognitive modelling. Mind arises from complex dynamics of the brain. Approximations to this dynamics lead to a set of concepts [1] helpful in description of the mind, such as the “inner space” concept, called also the “conceptual space” or the “mind space”. Among many other aspects mind models should be capable of recognition, classification and reasoning. Cognitive modelling is not always faithful to neurobiology, but a natural implementation of such models has a neural network form.
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