Article ID Journal Published Year Pages File Type
495148 Applied Soft Computing 2015 14 Pages PDF
Abstract

•This paper attempts to achieve a compact, recent, and interpretable fuzzy rule bases.•It proposes a novel rule pruning method that is simple and computationally efficient.•It proposes a merging approach to improve the interpretability of the knowledge base.•GSETSK adopts an online data-driven incremental-learning-based approach.•GSETSK derives an up-to-date and interpretable rule base with high level of accuracy.

Takagi–Sugeno–Kang (TSK) fuzzy systems have been widely applied for solving function approximation and regression-centric problems. Existing dynamic TSK models proposed in the literature can be broadly classified into two classes. Class I TSK models are essentially fuzzy systems that are limited to time-invariant environments. Class II TSK models are generally evolving systems that can learn in time-variant environments. This paper attempts to address the issues of achieving compact, up-to-date fuzzy rule bases and interpretable knowledge bases in TSK models. It proposes a novel rule pruning method which is simple, computationally efficient and biologically plausible. This rule pruning algorithm applies a gradual forgetting approach and adopts the Hebbian learning mechanism behind the long-term potentiation phenomenon in the brain. It also proposes a merging approach which is used to improve the interpretability of the knowledge bases. This approach can prevent derived fuzzy sets from expanding too many times to protect their semantic meanings. These two approaches are incorporated into a generic self-evolving Takagi–Sugeno–Kang fuzzy framework (GSETSK) which adopts an online data-driven incremental-learning-based approach.Extensive experiments were conducted to evaluate the performance of the proposed GSETSK against other established evolving TSK systems. GSETSK has also been tested on real world dataset using the high-way traffic flow density and Dow Jones index time series. The results are encouraging. GSETSK demonstrates its fast learning ability in time-variant environments. In addition, GSETSK derives an up-to-date and better interpretable fuzzy rule base while maintaining a high level of modeling accuracy at the same time.

Graphical abstractThe evolution of the fuzzy rules in GSETSK as it learns the DOW JONES index Figure optionsDownload full-size imageDownload as PowerPoint slide

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Physical Sciences and Engineering Computer Science Computer Science Applications
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