Neural methods for obtaining fuzzy rules

  1. Benítez, José M.
  2. Blanco Ferro, Antonio
  3. Delgado Calvo-Flores, Miguel
  4. Requena Ramos, Ignacio
Journal:
Mathware & soft computing: The Magazine of the European Society for Fuzzy Logic and Technology

ISSN: 1134-5632

Year of publication: 1996

Volume: 3

Issue: 3

Pages: 371-382

Type: Article

More publications in: Mathware & soft computing: The Magazine of the European Society for Fuzzy Logic and Technology

Abstract

In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fuzzy rules which allow a system to be described, using a set of examples with the corresponding inputs and outputs. Now that the previous results have been completed, we present another procedure for obtaining fuzzy rules, also based on Neural Networks with Backpropagation, with no need to establish beforehand the labels or values of the variables that govern the system.