Forecasting international financial stress: The role of climate risks

IF 5.4 2区 经济学 Q1 BUSINESS, FINANCE
Santino Del Fava , Rangan Gupta , Christian Pierdzioch , Lavinia Rognone
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引用次数: 0

Abstract

We study the predictive value of climate risks for subsequent financial stress in a sample of daily data running from October 2006 to December 2022 of thirteen countries, which include China, ten European Union (EU) countries, the United Kingdom (UK), and the United States (US). The climate risk indicators are the result of a text-based approach which combines the term frequency-inverse document frequency and the cosine-similarity techniques. Given the persistence of financial stress as well as the importance of spillover effects of financial stress from other countries, we use random forests, a machine-learning technique tailored to handle many predictors, to estimate our forecasting models. Our findings show that climate risks tend to have a moderate impact, albeit in several cases statistically significant, on predictive accuracy, which tends to be stronger, in our cross-section of countries, on a daily than at a weekly or monthly forecast horizon of financial stress. Furthermore, the predictive value of climate risks for financial stress is heterogeneous across the countries in our sample, implying that a univariate forecasting model appears to be better suited than a corresponding multivariate one. Finally, the predictive value of climate risks for financial stress appears to be stronger in several countries at the lower conditional quantiles of financial stress.

预测国际金融压力:气候风险的作用
我们以 2006 年 10 月至 2022 年 12 月 13 个国家(包括中国、10 个欧盟国家、英国和美国)的每日数据为样本,研究了气候风险对后续金融压力的预测价值。气候风险指标是基于文本的方法的结果,该方法结合了词频-反向文档频率和余弦相似度技术。鉴于金融压力的持续性以及其他国家金融压力溢出效应的重要性,我们使用随机森林(一种专门用于处理众多预测因子的机器学习技术)来估计我们的预测模型。我们的研究结果表明,气候风险往往对预测准确性产生适度影响,尽管在某些情况下具有显著的统计学意义,但在我们的国家横截面中,气候风险对每日金融压力的预测准确性往往强于每周或每月的预测准确性。此外,气候风险对金融压力的预测价值在样本国家之间存在差异,这意味着单变量预测模型似乎比相应的多变量预测模型更适合。最后,在一些国家,气候风险对金融压力的预测价值似乎在金融压力的较低条件量级上更强。
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来源期刊
CiteScore
6.60
自引率
10.00%
发文量
142
期刊介绍: International trade, financing and investments, and the related cash and credit transactions, have grown at an extremely rapid pace in recent years. The international monetary system has continued to evolve to accommodate the need for foreign-currency denominated transactions and in the process has provided opportunities for its ongoing observation and study. The purpose of the Journal of International Financial Markets, Institutions & Money is to publish rigorous, original articles dealing with the international aspects of financial markets, institutions and money. Theoretical/conceptual and empirical papers providing meaningful insights into the subject areas will be considered. The following topic areas, although not exhaustive, are representative of the coverage in this Journal. • International financial markets • International securities markets • Foreign exchange markets • Eurocurrency markets • International syndications • Term structures of Eurocurrency rates • Determination of exchange rates • Information, speculation and parity • Forward rates and swaps • International payment mechanisms • International commercial banking; • International investment banking • Central bank intervention • International monetary systems • Balance of payments.
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