Business School, Zhejiang Wanli University, Ningbo, China.
Front Public Health. 2022 Jan 20;9:835500. doi: 10.3389/fpubh.2021.835500. eCollection 2021.
This study aims to evaluate the changes in the credit risk of the health care industry in China due to the COVID-19 epidemic by the modified KMV (named by Kealhofer, Mcquown, and Vasicek) model to calculate the default distances. We observe that the overall default distance mainly first decreased and then increased before and after the COVID-19 epidemic control in China; after the epidemic was controlled, the overall credit risk was reduced by 22.8%. Specifically, as shown in subdivided industries, health care equipment and health care facilities have larger credit risk fluctuations, while health care suppliers, health care distributors, and health care services have smaller fluctuations. These results can contribute to our understanding of why the COVID-19 epidemic in China could be controlled earlier, and software facilities are more important than hardware facilities in public health safety. Our methodological innovation is to use the GARCH (generalized autoregressive conditional heteroskedasticity) model and threshold regression model to modify the important parameters of the KMV model. This method has good accuracy in the Chinese environment.
本研究旨在通过修正的 KMV(以 Kealhofer、Mcquown 和 Vasicek 命名)模型计算违约距离,评估 COVID-19 疫情对中国医疗保健行业信用风险的变化。我们观察到,在 COVID-19 疫情在中国得到控制之前和之后,总体违约距离主要先下降后上升;疫情得到控制后,整体信用风险降低了 22.8%。具体而言,如图中细分行业所示,医疗设备和医疗设施的信用风险波动较大,而医疗供应商、医疗分销商和医疗服务的波动较小。这些结果有助于我们理解为什么中国的 COVID-19 疫情能够更早得到控制,以及在公共卫生安全方面软件设施比硬件设施更重要。我们的方法创新之处在于使用 GARCH(广义自回归条件异方差)模型和门限回归模型修正 KMV 模型的重要参数。这种方法在中国环境下具有很好的准确性。