New aspects on extraction of fuzzy rules using neural networks.
Benítez, José Manuel ; Blanco, Armando ; Delgado, Miguel ; Requena, Ignacio
Mathware and Soft Computing, Tome 5 (1998), p. 333-343 / Harvested from Biblioteca Digital de Matemáticas

In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe the behaviour of a system. We have used Artificial Neural Netorks (ANN) with the Backpropagation algorithm, and a set of examples of the system. In this work, some modifications which allow to improve the results, by means of an adaptation or refinement of the variable labels in each rule, or the extraction of local rules using distributed ANN, are showed. An interesting application on the assignement of semantic to the classes obtained in a classification without previous classes process is also included.

Publié le : 1998-01-01
DMLE-ID : 1905
@article{urn:eudml:doc:39157,
     title = {New aspects on extraction of fuzzy rules using neural networks.},
     journal = {Mathware and Soft Computing},
     volume = {5},
     year = {1998},
     pages = {333-343},
     zbl = {0969.68676},
     language = {en},
     url = {http://dml.mathdoc.fr/item/urn:eudml:doc:39157}
}
Benítez, José Manuel; Blanco, Armando; Delgado, Miguel; Requena, Ignacio. New aspects on extraction of fuzzy rules using neural networks.. Mathware and Soft Computing, Tome 5 (1998) pp. 333-343. http://gdmltest.u-ga.fr/item/urn:eudml:doc:39157/