Multilayer Evolving Fuzzy Neural Networks

Xiaowei Gu, Plamen Angelov, Jungong Han, Qiang Shen

Research output: Contribution to journalArticlepeer-review

16 Citations (Scopus)
2 Downloads (Pure)

Abstract

It is widely recognized that learning systems have to go deeper to exchange for more powerful representational learning capabilities in order to precisely approximate nonlinear complex problems. However, the best-known computational intelligence approaches with such characteristics, namely, deep neural networks, are often criticized for lacking transparency. In this article, a novel multilayer evolving fuzzy neural network (MEFNN) with a transparent system structure is proposed. The proposed MEFNN is a metalevel stacking ensemble learning system composed of multiple cascading evolving neuro-fuzzy inference systems (ENFISs), processing input data layer-by-layer to automatically learn multilevel nonlinear distributed representations from data. Each ENFIS is an evolving fuzzy system capable of learning from new data sample by sample to self-organize a set of human-interpretable IF- THEN fuzzy rules that facilitate approximate reasoning. Adopting ENFIS as its ensemble component, the multilayer system structure of the MEFNN is flexible and transparent, and its internal reasoning and decision-making mechanism can be explained and interpreted to/by humans. To facilitate information exchange between different layers and attain stronger representation learning capability, the MEFNN utilizes error backpropagation to self-update the consequent parameters of the IF-THEN rules of each ensemble component based on the approximation error propagated backward. To enhance the capability of the MEFNN to handle complex problems, a nonlinear activation function is introduced to modeling the consequent parts of the IF-THEN rules of ENFISs, thereby empowering both the representation and the reflection of nonlinearity in the resulting fuzzy outputs. Numerical examples on a wide variety of challenging (benchmark and real-world) classification and regression problems demonstrate the superior practical performance of the MEFNN, revealing the effectiveness and validity of the proposed approach.

Original languageEnglish
Pages (from-to)4158-4169
Number of pages12
JournalIEEE Transactions on Fuzzy Systems
Volume31
Issue number12
Early online date16 May 2023
DOIs
Publication statusPublished - 01 Dec 2023

Keywords

  • Adaptation models
  • Cognition
  • Data models
  • Distributed databases
  • evolving fuzzy system
  • fuzzy neural network
  • Nonhomogeneous media
  • Predictive models
  • self-organised
  • Stacking
  • stacking ensemble
  • self-organized
  • Evolving fuzzy system (EFS)
  • Artificial Intelligence
  • Control and Systems Engineering
  • Computational Theory and Mathematics
  • Applied Mathematics

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