Stay at Home to Stay Safe: Effectiveness of Stay-at-Home Orders in Containing the COVID-19 Pandemic

38 Pages Posted: 23 Apr 2020 Last revised: 11 Feb 2022

See all articles by Guihua Wang

Guihua Wang

University of Texas at Dallas - Naveen Jindal School of Management

Date Written: April 18, 2020

Abstract

Since the outbreak of the COVID-19 pandemic, the effectiveness of stay-at-home orders implemented in many states in the U.S. has been the subject of ongoing debate. Whereas proponents believe these orders help reduce person-to-person contact and therefore the spread of the pandemic, opponents argue these orders are unnecessary and ineffective. In this study, we use eight states that did not implement the orders as a control group and six neighboring states that did implement them as a treatment group to estimate the effectiveness of stay-at-home orders. We find that although residents in both groups were staying at home even before the implementation of any order, these orders reduced the number of new COVID-19 cases by 7.6%. To understand the mechanisms behind these results, we compare the mobility of residents in the control and treatment groups over time. We find stay-at-home orders significantly reduced residents' mobility at grocery stores and pharmacies, transit stations, workplaces, and retail and recreation locations. The results of this study are useful to policymakers in conducting cost-benefit analyses of back-to-work plans versus stay-at-home policies and deciding whether to implement, extend, lift, or reimplement stay-at-home orders amid a pandemic such as COVID-19. Our results are also useful to researchers because we highlight the importance of correcting for potential selection issues. As we illustrate in this study, ignoring potential selection issues would lead to the wrong conclusion that stay-at-home orders increase the number of new COVID-19 cases.

Keywords: Health care, COVID-19 pandemic, causal inference

Suggested Citation

Wang, Guihua, Stay at Home to Stay Safe: Effectiveness of Stay-at-Home Orders in Containing the COVID-19 Pandemic (April 18, 2020). Available at SSRN: https://ssrn.com/abstract=3581873 or http://dx.doi.org/10.2139/ssrn.3581873

Guihua Wang (Contact Author)

University of Texas at Dallas - Naveen Jindal School of Management ( email )

P.O. Box 830688
Richardson, TX 75083-0688
United States

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