gdp -网络CoVaR:评估风险增长的工具

IF 0.8 Q3 ECONOMICS Economic Notes Pub Date : 2020-12-11 DOI:10.1111/ecno.12181
Emanuele De Meo, Giacomo Tizzanini
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引用次数: 0

摘要

我们提出了一个预测经济增长风险和国际商业周期溢出的工具:国内生产总值(GDP)-网络条件风险价值(CoVaR)。我们评估风险增长的方法由两个组成部分组成。在第一步中,我们应用机器学习方法,即Barigozzi和Brownlees基于网络的net,来确定两个国家之间的重要联系。第二步,运用Adrian和Brunnermeier的CoVaR方法,利用贸易流量和gdp的国际统计数据,我们得出了经济增长尾部事件不同分位数在双边、国家和全球层面上的溢出风险的整体分布。我们发现经济增长溢出的概率分布是时变的、左偏的,在某些情况下是双甚至多模态的。其次,我们证明了我们的两步方法在预测经济增长风险方面优于其他一步分位数回归模型。最后,我们表明,随着时间的推移,全球对经济增长尾部事件的敞口正在减少。
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GDP-network CoVaR: A tool for assessing growth-at-risk

We propose a tool to predict risks to economic growth and international business cycles spillovers: the gross domestic product (GDP)-Network conditional value at risk (CoVaR). Our methodology to assess Growth-at-Risk is composed of two building blocks. In the first step, we apply a machine learning methodology, namely the network-based NETS by Barigozzi and Brownlees, to identify significant linkages between pair of countries. In the second step, applying the CoVaR methodology by Adrian and Brunnermeier, and exploiting international statistics on trade flows and GDPs, we derive the entire distribution of Economic Growth spillover exposures at the bilateral, country and global level for different quantiles of tail events on economic growth. We find that Economic Growth Spillover probability distribution is time-varying, left-skewed and in some cases bi- or even multi-modal. Second, we prove that our two-step approach outperforms alternative one-step quantile regression models in predicting risks to economic growth. Finally, we show that Global exposure to economic growth tail events is decreasing over time.

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来源期刊
Economic Notes
Economic Notes ECONOMICS-
CiteScore
3.30
自引率
6.70%
发文量
11
期刊介绍: With articles that deal with the latest issues in banking, finance and monetary economics internationally, Economic Notes is an essential resource for anyone in the industry, helping you keep abreast of the latest developments in the field. Articles are written by top economists and executives working in financial institutions, firms and the public sector.
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