This paper describes a method by which a neural network learns to fit a distribution to sample data. The neural network may be used to replace the input distributions required in a simulation or mathematical model and it allows random variates to be generated for subsequent use in the model. Results are given for several data sets which indicate the method is robust and can represent different families of continuous distributions. The neural network is a three-layer feed-forward network of size (1-3-3-1). This paper suggests that the method is an alternative approach to the problem of selection of suitable continuous distributions and random variate generation techniques for use in simulation and mathematical models
Artificial neural networks (ANNs) are widely used as "black-box" models of complex processes and sys...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be ap-plied to the optim...
The curse of dimensionality is severe when modeling high-dimensional discrete data: the number of po...
[[abstract]]© 2006 Taylor & Francis - The statistical probability distribution of data should be kno...
. The need to simulate complex systems in a Monte Carlo manner necessitates efficient methods for ge...
An algorithm developed based on a multi-layer neural network with learning is proposed for discrimin...
Predicting conditional probability densities with neural networks requires complex (at least two-hid...
Minimization of a sum-of-squares or cross-entropy error function leads to network out-puts which app...
We propose nonparametric methods to obtain the Probability Density Function (PDF) to assess the prop...
Ab8tract-Neuralnetworks have often been used to approximate the conditional mean of a random variabl...
Abstract—Neural networks for estimating conditional distribu-tions and their associated quantiles ar...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be applied to the optimi...
We present an approach for the estimation of probability density functions (pdf) given a set of obse...
We will show an application of neural networks to extract informations on the structure of hadrons. ...
textabstractLikelihoods and posteriors of econometric models with strong endogeneity and weak instru...
Artificial neural networks (ANNs) are widely used as "black-box" models of complex processes and sys...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be ap-plied to the optim...
The curse of dimensionality is severe when modeling high-dimensional discrete data: the number of po...
[[abstract]]© 2006 Taylor & Francis - The statistical probability distribution of data should be kno...
. The need to simulate complex systems in a Monte Carlo manner necessitates efficient methods for ge...
An algorithm developed based on a multi-layer neural network with learning is proposed for discrimin...
Predicting conditional probability densities with neural networks requires complex (at least two-hid...
Minimization of a sum-of-squares or cross-entropy error function leads to network out-puts which app...
We propose nonparametric methods to obtain the Probability Density Function (PDF) to assess the prop...
Ab8tract-Neuralnetworks have often been used to approximate the conditional mean of a random variabl...
Abstract—Neural networks for estimating conditional distribu-tions and their associated quantiles ar...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be applied to the optimi...
We present an approach for the estimation of probability density functions (pdf) given a set of obse...
We will show an application of neural networks to extract informations on the structure of hadrons. ...
textabstractLikelihoods and posteriors of econometric models with strong endogeneity and weak instru...
Artificial neural networks (ANNs) are widely used as "black-box" models of complex processes and sys...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be ap-plied to the optim...
The curse of dimensionality is severe when modeling high-dimensional discrete data: the number of po...