Useful connections between radial basis function (RBF) nets and kernel regression estimators (KRE) are established. By using existing theoretical results obtained for KRE as tools, we obtain a number of interesting theoretical results for RBF nets. Upper bounds are presented for convergence rates of the approximation error with respect to the number of hidden units. The existence of a consistent estimator for RBF nets is proven constructively. Upper bounds are also provided for the pointwise and L2 convergence rates of the best consistent estimator for RBF nets as the numbers of both the samples and the hidden units tend to infinity. Moreover, the problem of selecting the appropriate size of the receptive field of the radial basis function ...
An analytic investigation of the average case learning and generalization properties of Radial Basis...
The present study employs an idea of mapping data into a high dimensional feature space which is kno...
In this work we study and develop learning algorithms for networks based on regularization theory. I...
The radial basis function (RBF) network has been used intensively. Besides its applications, several...
Abstract: Regularization with radial basis functions is an eective method in many machine learning a...
The Radial Basis Function (RBF) neural networks are nonparametric regression tools similar in formul...
Feedforward networks together with their training algorithms are a class of regression techniques th...
This study explores the learning problem from two broad perspectives, consisting of statistical regr...
After the introduction to neural network technology as multivariable function approximation, radial ...
The goal of function approximation is to construct a model which learns an input-output mapping from...
Abstract — Function approximation has been found in many applications. The radial basis function (RB...
In this paper a new, one step strategy for learning Radial Basis Functions network parameters is pro...
In this paper different methods for training radial basis function (RBF) networks for regression pro...
Abstract:- Even though radial basis function networks are known to have good prediction accuracy in ...
Radial basis function networks (RBFNs) have gained widespread appeal amongst researchers and have sh...
An analytic investigation of the average case learning and generalization properties of Radial Basis...
The present study employs an idea of mapping data into a high dimensional feature space which is kno...
In this work we study and develop learning algorithms for networks based on regularization theory. I...
The radial basis function (RBF) network has been used intensively. Besides its applications, several...
Abstract: Regularization with radial basis functions is an eective method in many machine learning a...
The Radial Basis Function (RBF) neural networks are nonparametric regression tools similar in formul...
Feedforward networks together with their training algorithms are a class of regression techniques th...
This study explores the learning problem from two broad perspectives, consisting of statistical regr...
After the introduction to neural network technology as multivariable function approximation, radial ...
The goal of function approximation is to construct a model which learns an input-output mapping from...
Abstract — Function approximation has been found in many applications. The radial basis function (RB...
In this paper a new, one step strategy for learning Radial Basis Functions network parameters is pro...
In this paper different methods for training radial basis function (RBF) networks for regression pro...
Abstract:- Even though radial basis function networks are known to have good prediction accuracy in ...
Radial basis function networks (RBFNs) have gained widespread appeal amongst researchers and have sh...
An analytic investigation of the average case learning and generalization properties of Radial Basis...
The present study employs an idea of mapping data into a high dimensional feature space which is kno...
In this work we study and develop learning algorithms for networks based on regularization theory. I...