The work shows the role of hidden neurons in the multilayer feed-forward neural networks. The numeric expression of hidden neurons is usually determined in each case empirically. The methodology for determining the number of hidden neurons are described. The neural network based approach is analyzed using a multilayer feed-forward network with backpropagation learning algorithm. We have presented neural network implementation possibility in bankruptcy prediction (the experiments have been performed in the Matlab environment). On the base of bankruptcy data analysis the effect of hidden neurons to specific neural network training quality is shown. The conformity of theoretical hidden neurons to practical solutions was carried out
The architecture of an artificial neural network has a great impact on the generalization power. M...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
Classification is one of the most hourly encountered problems in real world. Neural networks have e...
The work shows the role of hidden neurons in the multilayer feed-forward neural networks. The numeri...
The performance of an Artificial Neural Network (ANN) strongly depends on its hidden layer architect...
Optimizing the number of hidden layer neurons for an FNN (feedforward neural network) to solve a pra...
The architectures of Artificial Neural Networks (ANN) are based on the problem domain and it is appl...
A critical question in the neural network research today concerns how many hidden neurons to use. Th...
Abstract — We have recently proposed a novel neural network structure called an “Affordable Neural N...
The Hidden Layer Learning Vector Quantization (HLVQ), a recent algorithm for training neural network...
Most application work within neural computing continues to employ multi-layer perceptrons (MLP). Tho...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...
The number of required hidden units is statistically estimated for feedforward neural networks that ...
Numerous advancements, which have been made in the development of intelligent system, are inspired b...
It is widely believed that end-to-end training with the backpropagation algorithm is essential for l...
The architecture of an artificial neural network has a great impact on the generalization power. M...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
Classification is one of the most hourly encountered problems in real world. Neural networks have e...
The work shows the role of hidden neurons in the multilayer feed-forward neural networks. The numeri...
The performance of an Artificial Neural Network (ANN) strongly depends on its hidden layer architect...
Optimizing the number of hidden layer neurons for an FNN (feedforward neural network) to solve a pra...
The architectures of Artificial Neural Networks (ANN) are based on the problem domain and it is appl...
A critical question in the neural network research today concerns how many hidden neurons to use. Th...
Abstract — We have recently proposed a novel neural network structure called an “Affordable Neural N...
The Hidden Layer Learning Vector Quantization (HLVQ), a recent algorithm for training neural network...
Most application work within neural computing continues to employ multi-layer perceptrons (MLP). Tho...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...
The number of required hidden units is statistically estimated for feedforward neural networks that ...
Numerous advancements, which have been made in the development of intelligent system, are inspired b...
It is widely believed that end-to-end training with the backpropagation algorithm is essential for l...
The architecture of an artificial neural network has a great impact on the generalization power. M...
Stock market forecasting plays a key role in investment practice and theory, especially given the pr...
Classification is one of the most hourly encountered problems in real world. Neural networks have e...