COVID-19 and Lockdown Policies: A Structural Simulation Model of a Bottom-Up Recession in Four Countries

S. Robinson, S. Levy, Víctor Hernández, R. Davies, Raúl Hinojosa-Ojeda, Sherwin Gabriel, C. Arndt, D. V. Van Seventer, Marcelo Pleitez
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引用次数: 4

Abstract

This paper considers different approaches to modelling the economic impact of the COVID-19 pandemic/lockdown shocks. We review different modelling strategies and argue that, given the nature of the bottom-up recession caused by the pandemic/lockdowns, simulation models of the shocks should be based on a social accounting matrix (SAM) that includes both disaggregated sectoral data and the national accounts in a unified framework. SAM-based models have been widely used to analyze the impact of natural disasters, which are comparable to pandemic/lockdown shocks.

The pandemic/lockdown shocks occurred rapidly, in weeks or months, not gradually over a year or more. In such a short period, adjustments through smooth changes in wages, prices and production methods are not plausible. Rather, initial adjustments occur through changes in quantities, altering demand and supply of commodities and employment in affected sectors. In this environment, we use a linear SAM-multiplier model that specifies a fixed-coefficient production technology, linear demand system, fixed savings rates, and fixed prices.

There are three different kinds of sectoral shocks that are included in the model: (1) changes in demand due to household lockdown, (2) changes in supply due to industry lockdown, and (3) changes in demand due to induced macro shocks. At the detailed industry level, data are provided for all three shocks and the model imposes the largest of the three.

We applied the model on a monthly time step for the period March to June 2020 for four countries: US, UK, Mexico, and South Africa. The models closely replicate observed macro results (GDP and employment) for the period. The results provide detailed structural information on the evolution of the different economies month-by-month and provide a framework for forward-looking scenario analysis.

We also use the SAM-multiplier model to estimate the macro stimulus impacts of policies to support affected households. The model focuses attention on the structural features of the economy that define the multiplier process (who gets the additional income and what do they do with it) and provides a more nuanced analysis of the stimulus impact of income support programs than can be done with aggregated macro models.
COVID-19和封锁政策:四个国家自下而上经济衰退的结构模拟模型
本文考虑了不同的方法来模拟COVID-19大流行/封锁冲击的经济影响。我们回顾了不同的建模策略,并认为,鉴于大流行/封锁造成的自下而上衰退的性质,冲击的模拟模型应基于社会核算矩阵(SAM),该矩阵将分类部门数据和统一框架中的国民账户都包括在内。基于sam的模型已被广泛用于分析与大流行/封锁冲击相当的自然灾害的影响。大流行/封锁冲击在几周或几个月内迅速发生,而不是在一年或更长时间内逐渐发生。在如此短的时间内,通过工资、价格和生产方式的平稳变化进行调整是不可能的。相反,最初的调整是通过数量的变化,改变受影响部门的商品供求和就业情况而发生的。在这种环境中,我们使用一个线性sam乘数模型,该模型指定了固定系数的生产技术、线性需求系统、固定储蓄率和固定价格。该模型包含三种不同类型的部门冲击:(1)由于家庭封锁导致的需求变化,(2)由于行业封锁导致的供应变化,以及(3)由于诱发宏观冲击导致的需求变化。在详细的行业层面,提供了所有三种冲击的数据,该模型施加了三种冲击中最大的影响。我们将该模型应用于2020年3月至6月期间四个国家(美国、英国、墨西哥和南非)的月度时间步长。这些模型密切地复制了这一时期观察到的宏观结果(GDP和就业)。研究结果提供了不同经济体逐月演变的详细结构性信息,并为前瞻性情景分析提供了框架。我们还使用sam乘数模型来估计支持受影响家庭的政策的宏观刺激影响。该模型将注意力集中在定义乘数过程的经济结构特征上(谁获得了额外收入,他们如何使用这些收入),并对收入支持计划的刺激影响提供了比汇总宏观模型更细致的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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