Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques

For many years, economists have been using statistical tools to estimate parameters of macroeconomic models. Forecasting plays a major role in macroeconomic planning and it is an essential analytical tool in countries’ economic strategies. In recent years, researchers are developing new techniques...

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Main Authors: Emrah Önder, Fɪrat Bayɪr, Ali Hepșen
Format: Article in Journal/Newspaper
Language:unknown
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Online Access:http://www.scienpress.com/Upload/JAFB%2fVol%203_4_6.pdf
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spelling ftrepec:oai:RePEc:spt:apfiba:v::y:2013:i::f:3_4_6 2023-05-15T16:52:25+02:00 Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques Emrah Önder Fɪrat Bayɪr Ali Hepșen http://www.scienpress.com/Upload/JAFB%2fVol%203_4_6.pdf unknown http://www.scienpress.com/Upload/JAFB%2fVol%203_4_6.pdf article ftrepec 2020-12-04T13:34:27Z For many years, economists have been using statistical tools to estimate parameters of macroeconomic models. Forecasting plays a major role in macroeconomic planning and it is an essential analytical tool in countries’ economic strategies. In recent years, researchers are developing new techniques for estimation. Most of these alternative approaches have their origins in the computational intelligence. They have the ability to approximate nonlinear functions, parameters are updated adaptively. In particular, this research focuses on the application of neural networks in modeling and estimation of macroeconomic parameters. Neural networks have received an increasing amount of attention among macroeconomic forecasters because of the ability to approximate any linear and nonlinear relationship with a reasonable degree of accuracy. Turkey is one of the European Union candidate countries such as Iceland, Montenegro, Serbia and The Former Yugoslav Republic of Macedonia. In this study eight macroeconomic indicators including gross domestic product (volume, NGDPD), gross national savings (NGSD_NGDP), inflation (average consumer prices, PCPI), population (LP), total investment (NID_NGDP), unemployment rate (LUR), volume of exports of goods and services (TX_RPCH), volume of imports of goods and services (TM_RPCH) were used for forecasting. As analysis tools, classical time series forecasting methods such as moving averages, exponential smoothing, Brown's single parameter linear exponential smoothing, Brown’s second-order exponential smoothing, Holt's two parameter linear exponential smoothing and decomposition methods applied to macroeconomic data. The study focuses mainly on the applicability of artificial neural network model for forecasting macroeconomic parameters in long term and comparing the artificial neural network’s results with the Traditional Time Series Analysis (Smoothing & Decomposition Techniques). To facilitate the presentation, an empirical example is developed to forecast Turkey’s eight important macroeconomic parameters. Time Series statistical theory and methods are used to select an adequate technique, based on residual analysis. Turkey will celebrate the 100th anniversary of its foundation in 2023. Policies and implementations targeted for raising economic position. Article in Journal/Newspaper Iceland RePEc (Research Papers in Economics)
institution Open Polar
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description For many years, economists have been using statistical tools to estimate parameters of macroeconomic models. Forecasting plays a major role in macroeconomic planning and it is an essential analytical tool in countries’ economic strategies. In recent years, researchers are developing new techniques for estimation. Most of these alternative approaches have their origins in the computational intelligence. They have the ability to approximate nonlinear functions, parameters are updated adaptively. In particular, this research focuses on the application of neural networks in modeling and estimation of macroeconomic parameters. Neural networks have received an increasing amount of attention among macroeconomic forecasters because of the ability to approximate any linear and nonlinear relationship with a reasonable degree of accuracy. Turkey is one of the European Union candidate countries such as Iceland, Montenegro, Serbia and The Former Yugoslav Republic of Macedonia. In this study eight macroeconomic indicators including gross domestic product (volume, NGDPD), gross national savings (NGSD_NGDP), inflation (average consumer prices, PCPI), population (LP), total investment (NID_NGDP), unemployment rate (LUR), volume of exports of goods and services (TX_RPCH), volume of imports of goods and services (TM_RPCH) were used for forecasting. As analysis tools, classical time series forecasting methods such as moving averages, exponential smoothing, Brown's single parameter linear exponential smoothing, Brown’s second-order exponential smoothing, Holt's two parameter linear exponential smoothing and decomposition methods applied to macroeconomic data. The study focuses mainly on the applicability of artificial neural network model for forecasting macroeconomic parameters in long term and comparing the artificial neural network’s results with the Traditional Time Series Analysis (Smoothing & Decomposition Techniques). To facilitate the presentation, an empirical example is developed to forecast Turkey’s eight important macroeconomic parameters. Time Series statistical theory and methods are used to select an adequate technique, based on residual analysis. Turkey will celebrate the 100th anniversary of its foundation in 2023. Policies and implementations targeted for raising economic position.
format Article in Journal/Newspaper
author Emrah Önder
Fɪrat Bayɪr
Ali Hepșen
spellingShingle Emrah Önder
Fɪrat Bayɪr
Ali Hepșen
Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques
author_facet Emrah Önder
Fɪrat Bayɪr
Ali Hepșen
author_sort Emrah Önder
title Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques
title_short Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques
title_full Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques
title_fullStr Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques
title_full_unstemmed Forecasting Macroeconomic Variables using Artificial Neural Network and Traditional Smoothing Techniques
title_sort forecasting macroeconomic variables using artificial neural network and traditional smoothing techniques
url http://www.scienpress.com/Upload/JAFB%2fVol%203_4_6.pdf
genre Iceland
genre_facet Iceland
op_relation http://www.scienpress.com/Upload/JAFB%2fVol%203_4_6.pdf
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