Nowcasting can play a key role in giving policymakers timelier insight to data published with a significant time lag, such as final GDP figures. Currently, there are a plethora of methodologies and approaches for practitioners to choose from. However, there lacks a comprehensive comparison of these disparate approaches in terms of predictive performance and characteristics. This paper addresses that deficiency by examining the performance of 12 different methodologies in nowcasting US quarterly GDP growth, including all the methods most commonly employed in nowcasting, as well as some of the most popular traditional machine learning approaches. Performance was assessed on three different tumultuous periods in US economic history: the early 1980s recession, the 2008 financial crisis, and the COVID crisis. The two best performing methodologies in the analysis were long short-term memory artificial neural networks (LSTM) and Bayesian vector autoregression (BVAR). To facilitate further application and testing of each of the examined methodologies, an open-source repository containing boilerplate code that can be applied to different datasets is published alongside the paper, available at: github.com/dhopp1/nowcasting_benchmark.
翻译:最新播报可以发挥关键作用,让决策者更及时地洞察到在相当长的时滞下公布的数据,例如最终的国内生产总值数字。目前,实践者可以选择大量的方法和办法。然而,在预测性能和特征方面,缺乏对这些不同方法的全面比较。本文通过审查12种不同方法在现在预测美国季度国内生产总值增长方面的表现,包括现在预测中最常用的所有方法,以及一些最受欢迎的传统机器学习方法,来解决这一缺陷。美国经济史上的三个动荡时期:1980年代初衰退、2008年金融危机和COVID危机,对业绩进行了评估。分析中的两种最佳方法是长期记忆人工神经网络(LSTM)和Bayesian矢量自动反射(BVAR),为进一步应用和测试所审查的每一种方法提供便利,一个包含可应用于不同数据集的锅炉码的开放源存储库,在以下报纸上发表:Githhub.com/dhopp1/stasting_chestmark。