A Comparison Between Time Series, Exponential Smoothing, and Neural Network Methods To Forecast GDPof Iran
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- Oller, Lars-Erik & Tallbom, Christer, 1996. "Smooth and timely business cycle indicators for noisy Swedish data," International Journal of Forecasting, Elsevier, vol. 12(3), pages 389-402, September.
- Koskinen, Lasse & Öller, Lars-Erik, 1998. "A Hidden Markov Model as a Dynamic Bayesian Classifier, With an Application to Forecasting Business-Cycle Turning Points," Working Papers 59, National Institute of Economic Research.
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Keywords
Gross Domestic Product; Time Series Method; Exponential Smoothing; Neural Network; Statistical analysis.;All these keywords.
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