An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)

The present study is intended to analyse the relationship of imports and economic growth in Iran using systematic and unsystematic cointegration methods and neural networks and to compare them with each other. The data used in this study are the real gross domestic product (GDP) and the total import...

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Main Author: Nasser Ebrahimi
Format: Article
Language:English
Published: EconJournals 2017-06-01
Series:International Journal of Economics and Financial Issues
Subjects:
Online Access:https://dergipark.org.tr/tr/pub/ijefi/issue/32035/354491?publisher=http-www-cag-edu-tr-ilhan-ozturk
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spelling doaj-d3a707e9fb12468fa5e906a5f8171ab42020-11-25T01:13:56ZengEconJournalsInternational Journal of Economics and Financial Issues2146-41382017-06-01723383471032An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)Nasser EbrahimiThe present study is intended to analyse the relationship of imports and economic growth in Iran using systematic and unsystematic cointegration methods and neural networks and to compare them with each other. The data used in this study are the real gross domestic product (GDP) and the total imports of Islamic Republic of Iran during the years 1961 to 2010. In this study, the concerned time series were tested by unit root testing. Then the data were examined and the results were analysed using an autoregressive distributed lag modelling (ARDL), error correction model (ECM), and maximum likelihood method of Johansen-Julius. The statistical and estimated processes of the present study were carried out using Microfit and EViews 7 software.The artificial neural networks were also modelled by MATLAB software. The findings show that no cointegration relationship is supported between GDP and imports when the real GDP is a dependent variable and total import is an independent variable. However, the existence of cointegration relationship between total import and real GDP is supported when the total import is a dependent variable and the GDP is an independent variable. The use of neural network for modelling of the relationship of two variables shows a reliable result.https://dergipark.org.tr/tr/pub/ijefi/issue/32035/354491?publisher=http-www-cag-edu-tr-ilhan-ozturkeconomic growth total import autoregressive distributed lab modelling (ardl) error correction model (ecm) artificial neural networks
collection DOAJ
language English
format Article
sources DOAJ
author Nasser Ebrahimi
spellingShingle Nasser Ebrahimi
An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)
International Journal of Economics and Financial Issues
economic growth
total import
autoregressive distributed lab modelling (ardl)
error correction model (ecm)
artificial neural networks
author_facet Nasser Ebrahimi
author_sort Nasser Ebrahimi
title An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)
title_short An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)
title_full An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)
title_fullStr An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)
title_full_unstemmed An Analysis of the Relationship of Imports and Economic Growth in Iran (Comparison of Systematic and Unsystematic Cointegration Methods with Neural Network)
title_sort analysis of the relationship of imports and economic growth in iran (comparison of systematic and unsystematic cointegration methods with neural network)
publisher EconJournals
series International Journal of Economics and Financial Issues
issn 2146-4138
publishDate 2017-06-01
description The present study is intended to analyse the relationship of imports and economic growth in Iran using systematic and unsystematic cointegration methods and neural networks and to compare them with each other. The data used in this study are the real gross domestic product (GDP) and the total imports of Islamic Republic of Iran during the years 1961 to 2010. In this study, the concerned time series were tested by unit root testing. Then the data were examined and the results were analysed using an autoregressive distributed lag modelling (ARDL), error correction model (ECM), and maximum likelihood method of Johansen-Julius. The statistical and estimated processes of the present study were carried out using Microfit and EViews 7 software.The artificial neural networks were also modelled by MATLAB software. The findings show that no cointegration relationship is supported between GDP and imports when the real GDP is a dependent variable and total import is an independent variable. However, the existence of cointegration relationship between total import and real GDP is supported when the total import is a dependent variable and the GDP is an independent variable. The use of neural network for modelling of the relationship of two variables shows a reliable result.
topic economic growth
total import
autoregressive distributed lab modelling (ardl)
error correction model (ecm)
artificial neural networks
url https://dergipark.org.tr/tr/pub/ijefi/issue/32035/354491?publisher=http-www-cag-edu-tr-ilhan-ozturk
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