An evolving neuro-fuzzy system for online fuzzy clustering

An evolving neuro-fuzzy system and its online learning procedure are proposed in this paper. The system is based on nodes of a special type. A quality estimation process is defined by finding an optimal value of the used cluster validity index.

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