Exponentially Weighted l_2 Regularization Strategy in Constructing Reinforced Second-order Fuzzy Rule-based Model
Congcong Zhang, Sung-Kwun Oh, Witold Pedrycz, Zunwei Fu, Shanzhen, Lu

TL;DR
This paper introduces an exponential weighted l2 regularization strategy for second-order fuzzy models, improving their approximation ability while preventing overfitting and enhancing generalization.
Contribution
It develops a novel exponential weighted l2 regularization method for quadratic polynomial consequents in fuzzy models, addressing overfitting and prediction deterioration issues.
Findings
The proposed method effectively reduces overfitting.
It enhances the prediction accuracy of fuzzy models.
The approach improves the generalization ability of the model.
Abstract
In the conventional Takagi-Sugeno-Kang (TSK)-type fuzzy models, constant or linear functions are usually utilized as the consequent parts of the fuzzy rules, but they cannot effectively describe the behavior within local regions defined by the antecedent parts. In this article, a theoretical and practical design methodology is developed to address this problem. First, the information granulation (Fuzzy C-Means) method is applied to capture the structure in the data and split the input space into subspaces, as well as form the antecedent parts. Second, the quadratic polynomials (QPs) are employed as the consequent parts. Compared with constant and linear functions, QPs can describe the input-output behavior within the local regions (subspaces) by refining the relationship between input and output variables. However, although QP can improve the approximation ability of the model, it could…
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Taxonomy
TopicsFuzzy Logic and Control Systems · Neural Networks and Applications · Advanced Computational Techniques in Science and Engineering
