基于大因子模型空间的临近预测GDP

Sercan Eraslan, Maximilian Schröder
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引用次数: 1

摘要

提出了一种新的时变参数混合频率动态因子模型,并将其集成到宏观经济近预报的动态模型平均框架中。该模型能有效地处理实时数据流的性质以及参数的不确定性和时变波动性。此外,我们还开发了一种快速估计算法。这使我们能够基于大的因子模型空间生成临近预测。我们将建议的框架应用于临近预测德国GDP。我们的递归样本外预测评估结果表明,我们的框架能够生成优于从原始的和更具竞争力的基准模型获得的预测。这些预测收益似乎尤其出现在不稳定时期,如大衰退时期,但在更平静的时期也会出现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nowcasting GDP With a Large Factor Model Space
We propose a novel time-varying parameters mixed-frequency dynamic factor model which is integrated into a dynamic model averaging framework for macroeconomic nowcasting. Our suggested model can efficiently deal with the nature of the real-time data flow as well as parameter uncertainty and time-varying volatility. In addition, we develop a fast estimation algorithm. This enables us to generate nowcasts based on a large factor model space. We apply the suggested framework to nowcast German GDP. Our recursive out-of-sample forecast evaluation results reveal that our framework is able to generate forecasts superior to those obtained from a naive and more competitive benchmark models. These forecast gains seem to emerge especially during unstable periods, such as the Great Recession, but also remain over more tranquil periods.
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