AbstractThe membership functions of an adaptive fuzzy inference system, during the adaptation process, may lose the meaning which was initially assigned to them. In this paper, the concept of rough sets is used to propose a constraint training algorithm. The proposed algorithm maintains the interpretation of the adaptive fuzzy inference systems during the training. The constraints on membership functions are implemented by means of hard or soft limit bounds on the updating parameters of membership functions. An example to illustrate the algorithm is included
Fuzzy models have been designed to represent approximate or imprecise relationships in complex syste...
Neuro-fuzzy systems is a popular hybridization in soft computing that abstracts a fuzzy model from g...
This article describes a way of integrating rough set theory with a fuzzy MLP using a modular evolut...
AbstractThe membership functions of an adaptive fuzzy inference system, during the adaptation proces...
Dimirovski, Georgi M. (Dogus Author)This paper explores aspects of computational complexity versus r...
This paper explores aspects of computational complexity versus rule reduction and of integrity prese...
An adaptive membership function scheme for general additive fuzzy systems is proposed in this paper....
[[abstract]]Neuro-fuzzy learning is a combination of neural networks and fuzzy systems to learn fuzz...
Among the several applications of fuzzy set theory, fuzzy-rule based systems (FRBSs) have proven to ...
A new kchniqae for adaptation of fuzzy membership functions in a fuzzy inference system is proposed....
We introduce the adaptive fuzzy logic network (AFLN) as the appropriate architecture for the realiza...
by Ong Kai Hin George.Thesis (M.Sc.)--Chinese University of Hong Kong, 1994.Includes bibliographical...
Adaptive fuzzy interpolation strengthens the potential of fuzzy interpolative reasoning. It views in...
Adaptive fuzzy interpolation strengthens the potential of fuzzy interpolative reasoning. It views in...
Adaptive fuzzy interpolation strengthens the potential of fuzzy interpolative reasoning. It views in...
Fuzzy models have been designed to represent approximate or imprecise relationships in complex syste...
Neuro-fuzzy systems is a popular hybridization in soft computing that abstracts a fuzzy model from g...
This article describes a way of integrating rough set theory with a fuzzy MLP using a modular evolut...
AbstractThe membership functions of an adaptive fuzzy inference system, during the adaptation proces...
Dimirovski, Georgi M. (Dogus Author)This paper explores aspects of computational complexity versus r...
This paper explores aspects of computational complexity versus rule reduction and of integrity prese...
An adaptive membership function scheme for general additive fuzzy systems is proposed in this paper....
[[abstract]]Neuro-fuzzy learning is a combination of neural networks and fuzzy systems to learn fuzz...
Among the several applications of fuzzy set theory, fuzzy-rule based systems (FRBSs) have proven to ...
A new kchniqae for adaptation of fuzzy membership functions in a fuzzy inference system is proposed....
We introduce the adaptive fuzzy logic network (AFLN) as the appropriate architecture for the realiza...
by Ong Kai Hin George.Thesis (M.Sc.)--Chinese University of Hong Kong, 1994.Includes bibliographical...
Adaptive fuzzy interpolation strengthens the potential of fuzzy interpolative reasoning. It views in...
Adaptive fuzzy interpolation strengthens the potential of fuzzy interpolative reasoning. It views in...
Adaptive fuzzy interpolation strengthens the potential of fuzzy interpolative reasoning. It views in...
Fuzzy models have been designed to represent approximate or imprecise relationships in complex syste...
Neuro-fuzzy systems is a popular hybridization in soft computing that abstracts a fuzzy model from g...
This article describes a way of integrating rough set theory with a fuzzy MLP using a modular evolut...