CAN MACHINE LEARNING CATCH THE COVID-19 RECESSION?

IF 1.2 Q3 ECONOMICS National Institute Economic Review Pub Date : 2021-03-01 DOI:10.1017/nie.2021.10
Philippe Goulet Coulombe, Massimiliano Marcellino, D. Stevanovic
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引用次数: 22

Abstract

Based on evidence gathered from a newly built large macroeconomic dataset (MD) for the UK, labelled UK-MD and comparable to similar datasets for the United States and Canada, it seems the most promising avenue for forecasting during the pandemic is to allow for general forms of nonlinearity by using machine learning (ML) methods. But not all nonlinear ML methods are alike. For instance, some do not allow to extrapolate (like regular trees and forests) and some do (when complemented with linear dynamic components). This and other crucial aspects of ML-based forecasting in unprecedented times are studied in an extensive pseudo-out-of-sample exercise.
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机器学习能抓住新冠肺炎衰退吗?
根据从英国新建的大型宏观经济数据集(MD)收集的证据,该数据集被标记为UK-MD,与美国和加拿大的类似数据集相当,在疫情期间进行预测的最有希望的途径似乎是通过使用机器学习(ML)方法来考虑一般形式的非线性。但并不是所有的非线性ML方法都是一样的。例如,有些不允许外推(如常规树木和森林),有些则允许外推(当使用线性动态组件进行补充时)。在一项广泛的伪样本外练习中,研究了前所未有的时代基于ML的预测的这一点和其他关键方面。
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来源期刊
CiteScore
3.70
自引率
9.50%
发文量
21
期刊介绍: The National Institute Economic Review is the quarterly publication of the National Institute of Economic and Social Research, one of Britain"s oldest and most prestigious independent research organisations. The Institutes objective is to promote, through quantitative research, a deeper understanding of the interaction of economic and social forces that affect peoples" lives so that they may be improved. It has no political affiliation, and receives no core funding from government. Its research programme is organised under the headings of Economic Modelling and Analysis; Productivity; Education and Training and the International Economy.
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