Forecasting and Nowcasting Emerging Market GDP Growth Rates: The Role of Latent Global Economic Policy Uncertainty and Macroeconomic Data Surprise Factors

Oğuzhan Çepni, I. Guney, Norman R. Swanson
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引用次数: 29

Abstract

In this paper, we assess the predictive content of latent economic policy uncertainty and data surprises factors for forecasting and nowcasting GDP using factor-type econometric models. Our analysis focuses on five emerging market economies, including Brazil, Indonesia, Mexico, South Africa, and Turkey; and we carry out a forecasting horse-race in which predictions from various different models are compared. These models may (or may not) contain latent uncertainty and surprise factors constructed using both local and global economic datasets. The set of models that we examine in our experiments includes both simple benchmark linear econometric models as well as dynamic factor models (DFMs) that are estimated using a variety of frequentist and Bayesian data shrinkage methods based on the least absolute shrinkage operator (LASSO). We find that the inclusion of our new uncertainty and surprise factors leads to superior predictions of GDP growth, particularly when these latent factors are constructed using Bayesian variants of the LASSO. Overall, our findings point to the importance of spillover effects from global uncertainty and data surprises, when predicting GDP growth in emerging market economies.
预测和预测新兴市场GDP增长率:潜在的全球经济政策不确定性和宏观经济数据意外因素的作用
本文利用因子型计量经济模型,评估了潜在经济政策不确定性和数据意外因素对GDP预测和临近预测的预测内容。我们的分析重点关注五个新兴市场经济体,包括巴西、印度尼西亚、墨西哥、南非和土耳其;我们进行了一场预测竞赛,比较了各种不同模型的预测结果。这些模型可能(也可能不)包含潜在的不确定性和使用本地和全球经济数据集构建的意外因素。我们在实验中检查的模型集包括简单的基准线性计量经济模型以及使用基于最小绝对收缩算子(LASSO)的各种频率主义者和贝叶斯数据收缩方法估计的动态因子模型(dfm)。我们发现,包含新的不确定性和意外因素会导致对GDP增长的更好预测,特别是当这些潜在因素使用LASSO的贝叶斯变体构建时。总体而言,我们的研究结果表明,在预测新兴市场经济体的GDP增长时,全球不确定性和数据意外带来的溢出效应非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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