A comparative analysis of alternative univariate time series models in forecasting Turkish inflation
This paper analyses inflation forecasting power of artificial neural networks with alternative univariate time series models for Turkey. The forecasting accuracy of the models is compared in terms of both static and dynamic forecasts for the period between 1982:1 and 2009:12. We find that at earlie...
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Vilnius Gediminas Technical University
2012-04-01
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doaj-2c4dcd67d5f44ed185bb24d91958bd102021-07-02T10:17:37ZengVilnius Gediminas Technical UniversityJournal of Business Economics and Management1611-16992029-44332012-04-0113210.3846/16111699.2011.620135A comparative analysis of alternative univariate time series models in forecasting Turkish inflationA. Nazif Çatık0Mehmet Karaçuka1Department of Economics, Ege University, 35040 Bornova / Izmir, TurkeyDepartment of Economics, Ege University, 35040 Bornova / Izmir, Turkey This paper analyses inflation forecasting power of artificial neural networks with alternative univariate time series models for Turkey. The forecasting accuracy of the models is compared in terms of both static and dynamic forecasts for the period between 1982:1 and 2009:12. We find that at earlier forecast horizons conventional models, especially ARFIMA and ARIMA, provide better one-step ahead forecasting performance. However, unobserved components model turns out to be the best performer in terms of dynamic forecasts. The superiority of the unobserved components model suggests that inflation in Turkey has time varying pattern and conventional models are not able to track underlying trend of inflation in the long run. https://journals.vgtu.lt/index.php/JBEM/article/view/4386inflation forecastingneural networksunobserved components model |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
A. Nazif Çatık Mehmet Karaçuka |
spellingShingle |
A. Nazif Çatık Mehmet Karaçuka A comparative analysis of alternative univariate time series models in forecasting Turkish inflation Journal of Business Economics and Management inflation forecasting neural networks unobserved components model |
author_facet |
A. Nazif Çatık Mehmet Karaçuka |
author_sort |
A. Nazif Çatık |
title |
A comparative analysis of alternative univariate time series models in forecasting Turkish inflation |
title_short |
A comparative analysis of alternative univariate time series models in forecasting Turkish inflation |
title_full |
A comparative analysis of alternative univariate time series models in forecasting Turkish inflation |
title_fullStr |
A comparative analysis of alternative univariate time series models in forecasting Turkish inflation |
title_full_unstemmed |
A comparative analysis of alternative univariate time series models in forecasting Turkish inflation |
title_sort |
comparative analysis of alternative univariate time series models in forecasting turkish inflation |
publisher |
Vilnius Gediminas Technical University |
series |
Journal of Business Economics and Management |
issn |
1611-1699 2029-4433 |
publishDate |
2012-04-01 |
description |
This paper analyses inflation forecasting power of artificial neural networks with alternative univariate time series models for Turkey. The forecasting accuracy of the models is compared in terms of both static and dynamic forecasts for the period between 1982:1 and 2009:12. We find that at earlier forecast horizons conventional models, especially ARFIMA and ARIMA, provide better one-step ahead forecasting performance. However, unobserved components model turns out to be the best performer in terms of dynamic forecasts. The superiority of the unobserved components model suggests that inflation in Turkey has time varying pattern and conventional models are not able to track underlying trend of inflation in the long run.
|
topic |
inflation forecasting neural networks unobserved components model |
url |
https://journals.vgtu.lt/index.php/JBEM/article/view/4386 |
work_keys_str_mv |
AT anazifcatık acomparativeanalysisofalternativeunivariatetimeseriesmodelsinforecastingturkishinflation AT mehmetkaracuka acomparativeanalysisofalternativeunivariatetimeseriesmodelsinforecastingturkishinflation AT anazifcatık comparativeanalysisofalternativeunivariatetimeseriesmodelsinforecastingturkishinflation AT mehmetkaracuka comparativeanalysisofalternativeunivariatetimeseriesmodelsinforecastingturkishinflation |
_version_ |
1721332206176043008 |