IT2CFNN: An Interval Type-2 Correlation-Aware Fuzzy Neural Network to Construct Non-Separable Fuzzy Rules with Uncertain and Adaptive Shapes for Nonlinear Function Approximation
Armin Salimi-Badr

TL;DR
This paper introduces a novel interval type-2 fuzzy neural network that constructs adaptive, non-separable fuzzy rules with uncertain shapes for improved nonlinear function approximation, effectively handling uncertainty and variable interactions.
Contribution
The paper proposes a new interval type-2 fuzzy neural network with adaptive fuzzy set shapes and non-separable rules, enhancing nonlinear approximation and uncertainty modeling.
Findings
Outperforms existing methods on various datasets.
Effectively models uncertainty with adaptive fuzzy set shapes.
Successfully applied to real-world time-series and nonlinear systems.
Abstract
In this paper, a new interval type-2 fuzzy neural network able to construct non-separable fuzzy rules with adaptive shapes is introduced. To reflect the uncertainty, the shape of fuzzy sets considered to be uncertain. Therefore, a new form of interval type-2 fuzzy sets based on a general Gaussian model able to construct different shapes (including triangular, bell-shaped, trapezoidal) is proposed. To consider the interactions among input variables, input vectors are transformed to new feature spaces with uncorrelated variables proper for defining each fuzzy rule. Next, the new features are fed to a fuzzification layer using proposed interval type-2 fuzzy sets with adaptive shape. Consequently, interval type-2 non-separable fuzzy rules with proper shapes, considering the local interactions of variables and the uncertainty are formed. For type reduction the contribution of the upper and…
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