4.7 Article

Piecewise-linear approximation of non-linear models based on probabilistically/possibilistically interpreted intervals' numbers (INs)

Journal

INFORMATION SCIENCES
Volume 180, Issue 24, Pages 5060-5076

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2010.03.023

Keywords

Fuzzy inference systems (FIS); Genetic optimization; Granular data; Intervals number (IN); Lattice theory; Linear approximation; Rules; Self-organizing map (SOM); Similarity measure; Structure identification; TSK model

Funding

  1. Archimedes-III

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Linear models are preferable due to simplicity. Nevertheless, non-linear models often emerge in practice. A popular approach for modeling nonlinearities is by piecewise-linear approximation. Inspired from fuzzy inference systems (FISs) of Tagaki-Sugeno-Kang (TSK) type as well as from Kohonen's self-organizing map (KSOM) this work introduces a genetically optimized synergy based on intervals' numbers, or INs for short. The latter (INS) are interpreted here either probabilistically or possibilistically. The employment of mathematical lattice theory is instrumental. Advantages include accommodation of granular data, introduction of tunable nonlinearities, and induction of descriptive decision-making knowledge (rules) from the data. Both efficiency and effectiveness are demonstrated in three benchmark problems. The proposed computational method demonstrates invariably a better capacity for generalization; moreover, it learns orders-of-magnitude faster than alternative methods inducing clearly fewer rules. (C) 2010 Elsevier Inc. All rights reserved.

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