无限维因子空间的动态因子模型:预测

Dynamic factor model with infinite‐dimensional factor space: Forecasting

Journal of Applied Econometrics · 2018
被引 42
人大 AABS 3

中文导读

比较三种动态因子模型对美国工业生产和通胀的伪实时预测表现,发现2015年提出的新模型在“大缓和”时期显著优于传统模型,但对工业生产的全样本预测不如其他模型。

Abstract

Summary The paper compares the pseudo real‐time forecasting performance of three dynamic factor models: (i) the standard principal component model introduced by Stock and Watson in 2002; (ii) the model based on generalized principal components, introduced by Forni, Hallin, Lippi, and Reichlin in 2005; (iii) the model recently proposed by Forni, Hallin, Lippi, and Zaffaroni in 2015. We employ a large monthly dataset of macroeconomic and financial time series for the US economy, which includes the Great Moderation, the Great Recession and the subsequent recovery (an update of the so‐called Stock and Watson dataset). Using a rolling window for estimation and prediction, we find that model (iii) significantly outperforms models (i) and (ii) in the Great Moderation period for both industrial production and inflation, and that model (iii) is also the best method for inflation over the full sample. However, model (iii) is outperformed by models (ii) and (i) over the full sample for industrial production.

动态因子模型无限维因子空间预测主成分分析