Forecasting Turkish real GDP growth in a data-rich environment

被引:0
|
作者
Bahar Şen Doğan
Murat Midiliç
机构
[1] Middle East Technical University,Economics Department
[2] Ghent University,Department of Financial Economics
来源
Empirical Economics | 2019年 / 56卷
关键词
Real GDP growth; Forecasting; MIDAS; C22; C53; G10;
D O I
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中图分类号
学科分类号
摘要
This study generates nowcasts and forecasts for the growth rate of the gross domestic product in Turkey using 204 daily financial series with mixed data sampling (MIDAS) framework. The daily financial series include commodity prices, equity indices, exchange rates, and global and domestic corporate risk series. Forecasting exercises are also carried out with the daily factors extracted from separate financial data classes and from the whole dataset. The findings of the study suggest that MIDAS regression models and forecast combinations provide advantage in exploiting information from daily financial data compared to the models using simple aggregation schemes. In addition, incorporating daily financial data into the analysis improves the forecasts substantially. These results indicate that both the information content of the financial data and the flexible data-driven weighting scheme of MIDAS regressions play an essential role in forecasting the future state of the Turkish economy.
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页码:367 / 395
页数:28
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