论文标题
COVID-19和全球经济增长:具有大流行新古典增长模型的政策模拟
COVID-19 and Global Economic Growth: Policy Simulations with a Pandemic-Enabled Neoclassical Growth Model
论文作者
论文摘要
在2019/2020的Covid-19大流行期间,当局使用临时的临时政策措施(例如锁定和大众隔离)来减慢其传播。但是,对这些前所未有的措施的广泛使用的后果知之甚少。因此,为了理解这种政策措施的经济和人类后果,我们在大流行的影响下构建了经济的数学模型,选择参数值以在Covid-19的影响下代表全球经济,并通过模拟大量可能的政策响应来执行数值实验。通过在模拟场景中改变政策干预的开始日期,我们发现最有效的政策干预发生在主动感染的数量以最高速度增长的时候发生 - 也就是说,结果表明,只有在疾病充分传播时才能实施最严重的措施。由于我们在生产不足和降低感染率之间存在密切的凹陷关系,因此干预的强度(高于一定阈值)似乎对我们的模拟结果没有很大影响。我们的实验进一步表明,干预措施应持续到降低感染率建立的峰值之后,这意味着更严格的策略应持续更长的时间。该模型及其实施以及我们政策实验的一般见解,可以帮助决策者在面对严重的大流行时设计有效的紧急政策反应,并有助于我们理解经济增长与传染病的传播之间的关系。
During the COVID-19 pandemic of 2019/2020, authorities have used temporary ad-hoc policy measures, such as lockdowns and mass quarantines, to slow its transmission. However, the consequences of widespread use of these unprecedented measures are poorly understood. To contribute to the understanding of the economic and human consequences of such policy measures, we therefore construct a mathematical model of an economy under the impact of a pandemic, select parameter values to represent the global economy under the impact of COVID-19, and perform numerical experiments by simulating a large number of possible policy responses. By varying the starting date of the policy intervention in the simulated scenarios, we find that the most effective policy intervention occurs around the time when the number of active infections is growing at its highest rate -- that is, the results suggest that the most severe measures should only be implemented when the disease is sufficiently spread. The intensity of the intervention, above a certain threshold, does not appear to have a great impact on the outcomes in our simulations, due to the strongly concave relationship that we identify between production shortfall and infection rate reductions. Our experiments further suggest that the intervention should last until after the peak established by the reduced infection rate, which implies that stricter policies should last longer. The model and its implementation, along with the general insights from our policy experiments, may help policymakers design effective emergency policy responses in the face of a serious pandemic, and contribute to our understanding of the relationship between the economic growth and the spread of infectious diseases.