When used for function approximation purposes, neural networks belong to a class of models whose parameters can be separated into linear and nonlinear, according to their influence in the model output. In this work we extend this concept to the case where the training problem is formulated as the minimization of the integral of the squared error, along the input domain. With this approach, the gradient-based non-linear optimization algorithms require the computation of terms that are either dependent only on the model and the input domain, and terms which are the projection of the target function on the basis functions and on their derivatives with respect to the nonlinear parameters. These latter terms can be numerically computed with th...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
Artificial Neural Networks (ANNs) are complex modelling techniques that can be used to find the rela...
When used for function approximation purposes, neural networks belong to a class of models whose par...
When used for function approximation purposes, neural networks and neuro-fuzzy systems belong to a c...
When used for function approximation purposes, neural networks belong to a class of models whose par...
When used for function approximation purposes, neural networks belong to a class of models whose par...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Minimisation methods for training feed-forward networks with back-propagation are compared. Feed-for...
The codebase of the master thesis 'Training of Nonsmooth Neural Networks as an Inverse Problem - Dif...
Neural and neuro-fuzzy models are powerful nonlinear modelling tools. Different structures, with dif...
We have proposed an analytical method for limiting the complexity of neural-fuzzy models that provid...
Minimization methods for training feed-forward networks with Backpropagation are compared. Feedforwa...
International audienceTwo problems occur in the design of feedforward neural networks: the choice of...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
Artificial Neural Networks (ANNs) are complex modelling techniques that can be used to find the rela...
When used for function approximation purposes, neural networks belong to a class of models whose par...
When used for function approximation purposes, neural networks and neuro-fuzzy systems belong to a c...
When used for function approximation purposes, neural networks belong to a class of models whose par...
When used for function approximation purposes, neural networks belong to a class of models whose par...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Minimisation methods for training feed-forward networks with back-propagation are compared. Feed-for...
The codebase of the master thesis 'Training of Nonsmooth Neural Networks as an Inverse Problem - Dif...
Neural and neuro-fuzzy models are powerful nonlinear modelling tools. Different structures, with dif...
We have proposed an analytical method for limiting the complexity of neural-fuzzy models that provid...
Minimization methods for training feed-forward networks with Backpropagation are compared. Feedforwa...
International audienceTwo problems occur in the design of feedforward neural networks: the choice of...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
We propose a neuro--fuzzy architecture for function approximation based on supervised learning. The ...
Artificial Neural Networks (ANNs) are complex modelling techniques that can be used to find the rela...