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Gradient-based Fuzzy System Optimisation via Automatic Differentiation – FuzzyR as a Use Case

Chen, Chao; Wagner, Christian; Garibaldi, Jonathan M.

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Authors

CHAO CHEN Chao.Chen@nottingham.ac.uk
Assistant Professor



Abstract

Since their introduction, fuzzy sets and systems have become an important area of research known for its versatility in modelling, knowledge representation and reasoning, and increasingly its potential within the context explainable AI. While the applications of fuzzy systems are diverse, there has been comparatively little advancement in their design from a machine learning perspective. In other words, while representations such as neural networks have benefited from a boom in learning capability driven by an increase in computational performance in combination with advances in their training mechanisms and available tool, in particular gradient descent, the impact on fuzzy system design has been limited. In this paper, we discuss gradient-descent-based optimisation of fuzzy systems, focussing in particular on automatic differentiation -- crucial to neural network learning -- with a view to free fuzzy system designers from intricate derivative computations, allowing for more focus on the functional and explainability aspects of their design. As a starting point, we present a use case in FuzzyR which demonstrates how current fuzzy inference system implementations can be adjusted to leverage powerful features of automatic differentiation tools sets, discussing its potential for the future of fuzzy system design.

Citation

Chen, C., Wagner, C., & Garibaldi, J. M. (2024). Gradient-based Fuzzy System Optimisation via Automatic Differentiation – FuzzyR as a Use Case

Working Paper Type Preprint
Publication Date Mar 18, 2024
Deposit Date Nov 19, 2024
Publicly Available Date Nov 21, 2024
DOI https://doi.org/10.48550/arXiv.2403.12308
Public URL https://nottingham-repository.worktribe.com/output/42197841
Publisher URL https://arxiv.org/abs/2403.12308
Additional Information Preprint deposited in arXiv

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