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Evaluating ARIMA-neural network hybrid model performance in forecasting stationary timeseries

Seyedi, Seyed Navid and Rezvan, Pouyan and Akbarnatajbisheh, Saeed and Syed Hassan, Syed Ahmad Helmi (2014) Evaluating ARIMA-neural network hybrid model performance in forecasting stationary timeseries. Advanced Materials Research, 845 . pp. 510-515. ISSN 1022-6680

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Official URL: https://dx.doi.org/10.4028/www.scientific.net/AMR....

Abstract

Demand prediction is one of most sophisticated steps in planning and investments. Although many studies are conducted to find the appropriate forecasting models, dynamic nature of forecasted parameters and their effecting factors are apparent evidences for continuous researches. ARIMA, Artificial Neural Network (ANN), and ARIMA-ANN hybrid model are well-known forecasting models. Many researchers concluded that the Hybrid model is the predominant forecasting model in comparison with ARIMA and ANN individual models. Most of these researches are based on non-stationary or seasonal timeseries, whereas in this article, hybrid models forecast ability by stationary time series is studied. Some following demand time steps from a paint manufacturing company are forecasted by all previously mentioned models and ARIMA-ANN hybrid model fails to present the best forecasts.

Item Type:Article
Uncontrolled Keywords:ARIMA, artificial neural network, timeseries forec Asting, forecastin,, hybrid models
Subjects:T Technology > TJ Mechanical engineering and machinery
Divisions:Mechanical Engineering
ID Code:52746
Deposited By: Siti Nor Hashidah Zakaria
Deposited On:01 Feb 2016 03:54
Last Modified:30 Jun 2018 00:42

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