Two quantitative forecasting methods for macroeconomic indicators in Czech Republic

Authors

  • Mihaela BRATU (SIMIONESCU) Assistant lecturer PhD student Faculty of Cybernetics, Statistics and Economic Informatics

Keywords:

accuracy, econometric models, forecasts, forecasting methods, smoothing exponential techniques

Abstract

Econometric modelling and exponential smoothing techniques are two quantitative forecasting methods with good results in practice, but the objective of the research was to find out which of the two techniques are better for short run predictions. Therefore, for inflation, unemployment and interest rate in Czech Republic some accuracy indicators were calculated for the predictions based on these methods. Short run forecasts on a horizon of 3 months were made for December 2011-February 2012, the econometric models being updated. For Czech Republic, the exponential smoothing techniques provided more accurate forecasts than the econometric models (VAR(2) models, ARMA procedure and models with lagged variables). One explication for the better performance of smoothing techniques would be that in the chosen countries the short run predictions more influenced by the recent evolution of the indicators.  

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Published

2012-03-30

How to Cite

BRATU (SIMIONESCU), M. (2012). Two quantitative forecasting methods for macroeconomic indicators in Czech Republic. Annals of Spiru Haret University. Economic Series, 12(1), 69–85. Retrieved from https://anale.spiruharet.ro/economics/article/view/1216

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Section

ACADEMIA PAPERS