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Time series forecasting using cascade correlation networks

Acceso Abierto

Abstract:

Artificial neural networks, especially multilayer perceptrons, have been recognised as being a powerful technique for forecasting nonlinear time series; however, cascade-correlation architecture is a strong competitor in this task due to it incorporating several advantages related to the statistical identification of multilayer perceptrons. This paper compares the accuracy of a cascade-correlation neural network to the linear approach, multilayer perceptrons and dynamic architecture for artificial neural networks (DAN2) to determine whether the cascade-correlation network was able to forecast the time series being studied with more accuracy. It was concluded that cascade-correlation was able to forecast time series with more accuracy than other approaches.

Tópico:

Neural Networks and Applications

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Citations: 1
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Información de la Fuente:

SCImago Journal & Country Rank
FuenteIngeniería e Investigación
Cuartil año de publicaciónNo disponible
Volumen30
Issue1
Páginas157 - 162
pISSN0120-5609
ISSNNo disponible

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