The aim of the paper is to develop hypothesis testing procedures both for variable selection and model adequacy to facilitate a model selection strategy for neaural networks. The approach, based on statistical inference tools, uses the subsampling to overcome the analytical and probabilistic difficulties related to the estimation of the sampling distribution of the test statistics involved. Some illustrative examples are also discussed
The selection of an appropriate subset of variables from a set of measured potential input variables...
This thesis investigates the generalization problem in artificial neural networks, attacking it from...
We develop, in the context of discriminant analysis, a general approach to the design of neural arch...
The aim of the paper is to develop hypothesis testing procedures both for variable selection and mod...
The problem of variable selection in neural network regression models with dependent data is conside...
Neural networks have shown considerable success when used to model financial data series. However a ...
This paper considers two related issues regarding feedforward Neural Networks (NNs). The first invol...
A la suite de la conférence ESANN 2000.International audienceBootstrap techniques (also called resam...
In this article we examine how model selection in neural networks can be guided by statistical proce...
Abstract- A procedure for the selection of neural models of dynamical processes is presented. It use...
This paper is concerned with modelling time series by single hidden-layer feedforward neural network...
This paper describes a method by which a neural network learns to fit a distribution to sample data....
42 pagesThis project studies methods of using data subsampling to perform model selection. Most comm...
When studying real world complex networks, one rarely has full access to all their components. As an...
Intelligent modeling techniques have evolved from the application field, where prior knowledge and c...
The selection of an appropriate subset of variables from a set of measured potential input variables...
This thesis investigates the generalization problem in artificial neural networks, attacking it from...
We develop, in the context of discriminant analysis, a general approach to the design of neural arch...
The aim of the paper is to develop hypothesis testing procedures both for variable selection and mod...
The problem of variable selection in neural network regression models with dependent data is conside...
Neural networks have shown considerable success when used to model financial data series. However a ...
This paper considers two related issues regarding feedforward Neural Networks (NNs). The first invol...
A la suite de la conférence ESANN 2000.International audienceBootstrap techniques (also called resam...
In this article we examine how model selection in neural networks can be guided by statistical proce...
Abstract- A procedure for the selection of neural models of dynamical processes is presented. It use...
This paper is concerned with modelling time series by single hidden-layer feedforward neural network...
This paper describes a method by which a neural network learns to fit a distribution to sample data....
42 pagesThis project studies methods of using data subsampling to perform model selection. Most comm...
When studying real world complex networks, one rarely has full access to all their components. As an...
Intelligent modeling techniques have evolved from the application field, where prior knowledge and c...
The selection of an appropriate subset of variables from a set of measured potential input variables...
This thesis investigates the generalization problem in artificial neural networks, attacking it from...
We develop, in the context of discriminant analysis, a general approach to the design of neural arch...