Evaluating GDP Forecasting Models for Korea

L. Zeng
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引用次数: 4

Abstract

This paper develops a new forecasting framework for GDP growth in Korea to complement and further enhance existing forecasting approaches. First, a range of forecast models, including indicator- and pure time-series models, are evaluated for their forecasting performance. Based on the evaluation results, a new forecasting framework is developed for GDP projections. The framework also generates a data-driven reference band for the projections, and is therefore convenient to update. The framework is applied to the current World Economic Outlook (WEO) forecast period and the Great Recession to compare its performance to past projections. Results show that the performance of the new framework often improves the forecasts, especially at quarterly frequency, and the forecasting exercise will be better informed by cross-checking with the new data-driven framework projections.
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评价韩国国内生产总值预测模型
本文开发了一个新的韩国GDP增长预测框架,以补充和进一步加强现有的预测方法。首先,对一系列预测模型(包括指标时间序列模型和纯时间序列模型)的预测性能进行了评价。在评价结果的基础上,提出了一种新的GDP预测框架。该框架还为预测生成数据驱动的参考带,因此便于更新。该框架应用于当前的《世界经济展望》预测期和大衰退,将其表现与过去的预测进行比较。结果表明,新框架的性能通常会改进预测,特别是在季度频率上,并且通过与新数据驱动的框架预测进行交叉检查,预测工作将得到更好的信息。
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