The problem of variable selection in neural network regression models with dependent data is considered. In this framework, a test procedure based on the introduction of a measure for the variable relevance to the model is discussed. The main difficulty in using this procedure is related to the asymptotic distribution of the test statistic which is not one of the familiar tabulated distributions. Moreover, it depends on matrices which are very difficult to estimate because of their complex structure. To overcome these analytical issues and to get a consistent approximation for the sampling distribution of the statistic involved, a subsampling scheme is proposed. The procedure, which takes explicitly into account the dependence structure of ...
textabstractLikelihoods and posteriors of instrumental variable regression models with strong endoge...
We investigate structured sparsity methods for variable selection in regression problems where the t...
In recent times, thanks to the availability of a large quantity of data coming from the industrial p...
The problem of variable selection in neural network regression models with dependent data is conside...
The aim of the paper is to develop hypothesis testing procedures both for variable selection and mod...
In this paper a method for the analysis of the influence input variables have on the output of a fit...
This paper considers two related issues regarding feedforward Neural Networks (NNs). The first invol...
In the last few years, increasing attention has been devoted to the problem of the stability of mult...
The selection of relevant variables in the model is one of the important problems in regression anal...
In this paper we propose an approach to variable selection that uses a neural-network model as the t...
Neural networks have shown considerable success when used to model financial data series. However a ...
The selection of an appropriate subset of variables from a set of measured potential input variables...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
We herein introduce a general variable selection procedure, which can be applied to severa...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
textabstractLikelihoods and posteriors of instrumental variable regression models with strong endoge...
We investigate structured sparsity methods for variable selection in regression problems where the t...
In recent times, thanks to the availability of a large quantity of data coming from the industrial p...
The problem of variable selection in neural network regression models with dependent data is conside...
The aim of the paper is to develop hypothesis testing procedures both for variable selection and mod...
In this paper a method for the analysis of the influence input variables have on the output of a fit...
This paper considers two related issues regarding feedforward Neural Networks (NNs). The first invol...
In the last few years, increasing attention has been devoted to the problem of the stability of mult...
The selection of relevant variables in the model is one of the important problems in regression anal...
In this paper we propose an approach to variable selection that uses a neural-network model as the t...
Neural networks have shown considerable success when used to model financial data series. However a ...
The selection of an appropriate subset of variables from a set of measured potential input variables...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
We herein introduce a general variable selection procedure, which can be applied to severa...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
textabstractLikelihoods and posteriors of instrumental variable regression models with strong endoge...
We investigate structured sparsity methods for variable selection in regression problems where the t...
In recent times, thanks to the availability of a large quantity of data coming from the industrial p...