Neuro-fuzzy system with hierarchical partition of input domain

Krzysztof Simiński

Abstract


The paper presents the method of hierarchical domain partition in fuzzy inference system with parameterized consequences. The novelty of the solution is the partition based on fuzzy clustering. The experimental results on the synthetic and real life data set are also presented.

Keywords


fuzzy inference system; hierarchical domain partition

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References


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DOI: http://dx.doi.org/10.21936/si2008_v29.n4A.519