Abstract. Radial Basis Neural (RBN) network has the power of the universal approximation function and the convergence of those networks is very fast compared to multilayer feedforward neural networks. However, how to determine the architecture of the RBN networks to solve a given problem is not straightforward. In addition, the number of hidden units allocated in an RBN network seems to be a critical factor in the performance of these networks. In this work, the design of RBN network is based on the cooperation of n + m agents: n RBN agents and m manager agents. The n + m agents are organized in a Multi-agent System. The training process is distributed among the n RBN agents, each one with a different number of neurons. Each agent executes ...
The problem of unsupervised and supervised learning is discussed within the context of multi-objecti...
The paper considers a number of strategies for training radial basis function (RBF) classifiers. A b...
Abstract—Radial basis function (RBF) networks have advan-tages of easy design, good generalization, ...
Radial Basis Neural (RBN) network has the power of the universal approximation function and the conv...
Abstract. Radial Basis Neural (RBN) network has the power of the universal approximation function an...
Abstract:- Radial Basis Neural (RBN) network has the power of the universal approximation function a...
In this paper a learning algorithm for creating a Growing Radial Basis Function Network (RBFN) Model...
This thesis presents a new sequential learning algorithm for realizing a minimal Radial Basis Funct...
The most important factor in configuring an optimum radial basis function (RBF) network is the train...
This book presents in detail the newly developed sequential learning algorithm for radial basis func...
In this article we define globally convergent decomposition algorithms for supervised training of ge...
In this paper we discuss the learning problem of Radial Basis Function (RBF) Neural Networks. We pro...
This article presents a new learning algorithm for the construction and training of a RBFneural netw...
Radial Basis Function (RBF) is a type of feed forward neural network .This function can be applied t...
In this paper a new, one step strategy for learning Radial Basis Functions network parameters is pro...
The problem of unsupervised and supervised learning is discussed within the context of multi-objecti...
The paper considers a number of strategies for training radial basis function (RBF) classifiers. A b...
Abstract—Radial basis function (RBF) networks have advan-tages of easy design, good generalization, ...
Radial Basis Neural (RBN) network has the power of the universal approximation function and the conv...
Abstract. Radial Basis Neural (RBN) network has the power of the universal approximation function an...
Abstract:- Radial Basis Neural (RBN) network has the power of the universal approximation function a...
In this paper a learning algorithm for creating a Growing Radial Basis Function Network (RBFN) Model...
This thesis presents a new sequential learning algorithm for realizing a minimal Radial Basis Funct...
The most important factor in configuring an optimum radial basis function (RBF) network is the train...
This book presents in detail the newly developed sequential learning algorithm for radial basis func...
In this article we define globally convergent decomposition algorithms for supervised training of ge...
In this paper we discuss the learning problem of Radial Basis Function (RBF) Neural Networks. We pro...
This article presents a new learning algorithm for the construction and training of a RBFneural netw...
Radial Basis Function (RBF) is a type of feed forward neural network .This function can be applied t...
In this paper a new, one step strategy for learning Radial Basis Functions network parameters is pro...
The problem of unsupervised and supervised learning is discussed within the context of multi-objecti...
The paper considers a number of strategies for training radial basis function (RBF) classifiers. A b...
Abstract—Radial basis function (RBF) networks have advan-tages of easy design, good generalization, ...