Connectionist systems such as Radial Basis Function Neural Networks and similar architectures are commonly applied to solve problems of learning relations from available examples. To overcome their limits in clarity of representation, they are often interfaced with symbolic rule-based systems, provided that the information they have memorized can be interpreted. In this paper, an implementation of a RBF-like system is presented using only gradual fuzzy rules learned directly from data. It is then shown how it can learn second-order, fuzzy relations.
D. Sottara, P. Mello (2008). Modelling Radial Basis Functions with Rational Logic Rules.. BERLIN : Springer Verlag.
Modelling Radial Basis Functions with Rational Logic Rules.
SOTTARA, DAVIDE;MELLO, PAOLA
2008
Abstract
Connectionist systems such as Radial Basis Function Neural Networks and similar architectures are commonly applied to solve problems of learning relations from available examples. To overcome their limits in clarity of representation, they are often interfaced with symbolic rule-based systems, provided that the information they have memorized can be interpreted. In this paper, an implementation of a RBF-like system is presented using only gradual fuzzy rules learned directly from data. It is then shown how it can learn second-order, fuzzy relations.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.