School of Business, Shaoxing University, Shaoxing, China.
Front Public Health. 2022 May 18;10:810102. doi: 10.3389/fpubh.2022.810102. eCollection 2022.
In this study, we empirically investigate the impact of the COVID-19 pandemic on China's stock price volatility during and after its initial outbreak, using time-series daily data covering the period from July to October, 2020 and 2021, respectively.
DESIGN/METHODOLOGY/APPROACH: In the estimation, the ARDL bounds test approach was employed to examine the existence of co-integration and the relationship of long-run and short-run between the new infection rates and stock price volatility, as stable and unstable variables are mixed. The inner-day and inter-day volatility, based on the Shanghai (securities) composite index, are estimated in separate empirical models. In addition, the Inter-bank overnight lending rate (IBOLR) is controlled in order to consider the effect of liquidity and investment cost.
We find that in the initial year (2020) of the epidemic, the new infection rate is negatively correlated to stock prices in the short-term, whereas no significant evidence existed in the long-term, regardless of model specifications. However, after the epidemic's outbreak (2021), the result depicts that new infections increased stock prices in the long-term, and depressed its inner-day volatility in the short-term, which is inconsistent with most investigations. This phenomenon may be due to the fact that investors were more concerned about the withdrawal of monetary easing and fiscal stimulus, which were introduced to fight against the epidemic's impact on economy, than the epidemic itself. This study complements the limitations of most existing studies, which just focus on the period of the epidemic's outbreak, and provides insight into macroeconomic policy making in the era of the post COVID-19 epidemic such as the structural and ordered exit of the stimulating policies, intervention in IBOLR and balance social and economic sustainability.
在本研究中,我们使用 2020 年 7 月至 10 月和 2021 年分别涵盖的时间序列每日数据,实证研究了 COVID-19 大流行对中国股票价格波动的影响。
设计/方法/方法:在估计中,采用 ARDL 边界检验方法来检验新感染率与股票价格波动之间在长期和短期的共同整合关系,因为稳定和不稳定的变量是混合的。以上海(证券)综合指数为基础,分别在单独的实证模型中估计日内和日间波动。此外,控制银行间隔夜拆借利率(IBOLR),以考虑流动性和投资成本的影响。
我们发现,在疫情的初始年份(2020 年),新感染率与短期股票价格呈负相关,而在长期内无论模型规格如何,都没有显著证据。然而,在疫情爆发后(2021 年),结果表明新的感染增加了股票价格的长期走势,并在短期内压低了其日内波动,这与大多数调查结果不一致。这种现象可能是由于投资者更关注货币宽松和财政刺激政策的退出,这些政策是为了应对疫情对经济的影响而推出的,而不是疫情本身。本研究弥补了大多数现有研究的局限性,这些研究只关注疫情爆发期间,为后 COVID-19 疫情时代的宏观经济政策制定提供了启示,如刺激政策的结构性和有序退出、对 IBOLR 的干预以及平衡社会和经济的可持续性。