Matos Paulo, Costa Antonio, da Silva Cristiano
CAEN Graduate School of Economics, Brazil.
State University of Rio Grande do Norte, Brazil.
Res Int Bus Finance. 2021 Oct;57:101400. doi: 10.1016/j.ribaf.2021.101400. Epub 2021 Feb 10.
We assess the conditional relationship in the time-frequency domain between the return on S&P 500 and confirmed cases and deaths by COVID-19 in Hubei, China, countries with record deaths and the world, for the period from January 29 to June 30, 2020. Methodologically, we follow Aguiar-Conraria et al. (2018), by using partial coherencies, phase-difference diagrams, and gains. We also perform a parametric test for Granger-causality in quantiles developed by Troster (2018). We find that short-term cycles of deaths in Italy in the first days of March, and soon afterwards, cycles of deaths in the world are able to lead out-of-phase US stock market. We find that low frequency cycles of the US market index in the first half of April are useful to anticipate in an anti-phasic way the cycles of deaths in the US. We also explore sectoral contagion, based on dissimilarities, Granger causality and partial coherencies between S&P sector indices. Our findings, such as the strategic role of the energy sector, which first reacted to the pandemic, or the evidence about predictability of the Telecom cycles, are useful to tell the history of the pass-through of this recent health crises across the sectors of the US economy.
我们评估了2020年1月29日至6月30日期间,标准普尔500指数的回报率与中国湖北、有死亡记录的国家以及全球范围内新冠肺炎确诊病例和死亡人数在时频域中的条件关系。在方法上,我们遵循阿吉亚尔 - 孔拉里亚等人(2018年)的方法,使用偏相干性、相位差图和增益。我们还对特罗斯特(2018年)开发的分位数格兰杰因果关系进行了参数检验。我们发现,3月初意大利死亡人数的短期周期,以及随后不久全球的死亡人数周期,能够导致美国股市出现异相走势。我们发现,4月上半月美国市场指数的低频周期有助于以反相方式预测美国的死亡人数周期。我们还基于标准普尔行业指数之间的差异、格兰杰因果关系和偏相干性,探讨了行业传染情况。我们的研究结果,比如能源行业首先对疫情做出反应的战略作用,或者电信周期可预测性的证据,有助于讲述这场近期健康危机在美国经济各部门间传导的历程。