Identifying Economic Shocks in a Rare Disaster Environment
CEIS Research paper No 517, Vol.19, Issue 5
75 Pages Posted: 20 Oct 2021 Last revised: 23 Nov 2021
Date Written: October 15, 2021
Abstract
We propose a new approach to efficiently estimate and analyze DSGE models subject to large shocks. The methodology is applied to study the macroeconomic effect of these unusual shocks in a new Two-Sector model with heterogenous exposure to the COVID-19 pandemic across sectors. We solve the model nonlinearly and propose a new nonlinear, non-Gaussian filter designed to handle large shocks and identify their source and time location. Monte Carlo experiments show that the estimation and identification of large shocks is feasible with a massively reduced running time. Empirical results indicate that the pandemic-induced economic downturn can be reconciled with a combination of large demand and supply shocks. Finally, we present a set of counterfactual experiments to filter out potential demand and supply shock complementarities, and perform a robustness exercise to check the sensitivity of the model parameters to large shocks.
Keywords: C11, C51, E30 COVID-19, DSGE, Large shocks, Nonlinear, Non-Gaussian
JEL Classification: C11, C51, E30
Suggested Citation: Suggested Citation
CEIS Research paper No 517, Vol.19, Issue 5
, Available at SSRN: https://ssrn.com/abstract=3943569 or http://dx.doi.org/10.2139/ssrn.3943569