A fuzzy system with ε-insensitive learning of premises and consequences of if-then rules
Łęski, Jacek ; Czogała, Tomasz
International Journal of Applied Mathematics and Computer Science, Tome 15 (2005), p. 257-273 / Harvested from The Polish Digital Mathematics Library

First, a fuzzy system based on ifFirst, a fuzzy system based on if-then rules and with parametric consequences is recalled. Then, it is shown that the globalthen rules and with parametric consequences is recalled. Then, it is shown that the global and local ε-insensitive learning of the above fuzzy system may be presented as a combination of both an ε-insensitive gradient method and solving a system of linear inequalities. Examples are given of using the introduced method to design fuzzy models of real-life data. Simulation results show an improvement in the generalization ability of a fuzzy system trained by the new method compared with the traditional and other ε-insensitive learning methods.

Publié le : 2005-01-01
EUDML-ID : urn:eudml:doc:207741
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     title = {A fuzzy system with $\epsilon$-insensitive learning of premises and consequences of if-then rules},
     journal = {International Journal of Applied Mathematics and Computer Science},
     volume = {15},
     year = {2005},
     pages = {257-273},
     zbl = {1086.93032},
     language = {en},
     url = {http://dml.mathdoc.fr/item/bwmeta1.element.bwnjournal-article-amcv15i2p257bwm}
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Łęski, Jacek; Czogała, Tomasz. A fuzzy system with ε-insensitive learning of premises and consequences of if-then rules. International Journal of Applied Mathematics and Computer Science, Tome 15 (2005) pp. 257-273. http://gdmltest.u-ga.fr/item/bwmeta1.element.bwnjournal-article-amcv15i2p257bwm/

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