LGAIApr 19, 2024

Zadeh's Type-2 Fuzzy Logic Systems: Precision and High-Quality Prediction Intervals

arXiv:2404.12800v12 citationsh-index: 23FUZZ-IEEE
Originality Incremental advance
AI Analysis

This work addresses uncertainty quantification for high-risk decision-making tasks, presenting an incremental improvement in fuzzy logic systems.

The paper tackles the challenge of achieving both high precision and reliable high-quality prediction intervals in uncertainty quantification by proposing Zadeh's General Type-2 Fuzzy Logic Systems, which show improved performance over existing fuzzy counterparts with fewer parameters.

General Type-2 (GT2) Fuzzy Logic Systems (FLSs) are perfect candidates to quantify uncertainty, which is crucial for informed decisions in high-risk tasks, as they are powerful tools in representing uncertainty. In this paper, we travel back in time to provide a new look at GT2-FLSs by adopting Zadeh's (Z) GT2 Fuzzy Set (FS) definition, intending to learn GT2-FLSs that are capable of achieving reliable High-Quality Prediction Intervals (HQ-PI) alongside precision. By integrating Z-GT2-FS with the \(α\)-plane representation, we show that the design flexibility of GT2-FLS is increased as it takes away the dependency of the secondary membership function from the primary membership function. After detailing the construction of Z-GT2-FLSs, we provide solutions to challenges while learning from high-dimensional data: the curse of dimensionality, and integrating Deep Learning (DL) optimizers. We develop a DL framework for learning dual-focused Z-GT2-FLSs with high performances. Our study includes statistical analyses, highlighting that the Z-GT2-FLS not only exhibits high-precision performance but also produces HQ-PIs in comparison to its GT2 and IT2 fuzzy counterparts which have more learnable parameters. The results show that the Z-GT2-FLS has a huge potential in uncertainty quantification.

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