Cluster-Weighted Modeling as a basis for Fuzzy Modeling
نویسندگان
چکیده
The Cluster-Weighted Modeling (CWM) is emerging as a versatile tool for modeling dynamical systems. It is a mixture density estimator around local models. To be specific, the input regions together with output regions are treated to be Gaussian serving as local models. These models are linked by a linear or non-linear function involving the mixture of densities of local models. The present work shows a connection between the CWM and Generalized Fuzzy Model (GFM) thus paving the way for utilizing the concepts of probability theory in fuzzy domain that has already emerged as a versatile tool for solving problems in uncertain dynamic systems.
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