We address the dimensionality problem in the training of basis function networks of various types. Some results which establish the functional equivalence of basis function networks and fuzzy inference systems are discussed, and this equivalence is exploited in the development of a generalised form of basis function network which has in general a lower dimension than the standard form of network. The functional equivalence result allows the employment of training algorithms from both the fields of neural networks and fuzzy systems. We summarise examples of such algorithms and point to their possible use in fuzzy control systems. 1. Summary In this section we summarise the main technical points of the paper. The standard basis function netw...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
Many researchers do not appreciate the problems in building high-dimensional fuzzy models or control...
When used for function approximation purposes, neural networks and neuro-fuzzy systems belong to a c...
We establish the functional equivalence of a generalized class of Gaussian radial basis function (RB...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Email fzhang ilkhacva knollgtechfakunibielefeldde Abstract We point out that Bspline basis funct...
The theory developed in Poggio and Girosi (1989) shows the equivalence between regularization and ...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
We establish the functional equivalence of a generalized class of Gaussian radial basis function (RB...
The conditions under which spline-based networks are functionally equivalent to the Takagi-Sugeno mo...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
Many researchers do not appreciate the problems in building high-dimensional fuzzy models or control...
When used for function approximation purposes, neural networks and neuro-fuzzy systems belong to a c...
We establish the functional equivalence of a generalized class of Gaussian radial basis function (RB...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Approximation theory based on fuzzy sets provides a tool for modeling complex systems for which only...
Email fzhang ilkhacva knollgtechfakunibielefeldde Abstract We point out that Bspline basis funct...
The theory developed in Poggio and Girosi (1989) shows the equivalence between regularization and ...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
We establish the functional equivalence of a generalized class of Gaussian radial basis function (RB...
The conditions under which spline-based networks are functionally equivalent to the Takagi-Sugeno mo...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
Many researchers do not appreciate the problems in building high-dimensional fuzzy models or control...
When used for function approximation purposes, neural networks and neuro-fuzzy systems belong to a c...