Title of article :
COMBINING NEURAL NETWORKS DURING TRAINING FOR REAL TIME SERIES MODELING AND FORECASTING
Author/Authors :
ASHOUR, Z. H. Cairo University - Department of Engineering Mathematics Physics, Egypt , HASHEM, S. R. Cairo University - Department of Engineering Mathematics Physics, Egypt , FAYED, H. A. Cairo University - Department of Engineering Mathematics Physics, Egypt
From page :
457
To page :
471
Abstract :
Neural Networks NN s have been widely used as nonlinear models for time series. Recently, many researchers have performed a combination of several NN s in order to attain a better accuracy model. In this paper a number of combination models are developed during the training of the neural networks .The best performer amongst those networks when tested on a validation data set is selected as the eventual combination model. One step ahead forecasting of real life data sets using the combined model is performed. Comparisons are made between the two techniques in combining an ensemble of neural networks .The new proposed technique in combining the neural networks during training CDT resulted in smaller forecasting errors for the real life time series under consideration, hence showing a better fit and understanding to the nature of the data.
Keywords :
Time series forecasting , neural networks , ARIMA models , ensemble combination , linear regression
Journal title :
Journal of Engineering and Applied Science
Journal title :
Journal of Engineering and Applied Science
Record number :
2587996
Link To Document :
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