Do Different Socio-economic-demographic Factors Matter in COVID-19 Related Stay-at-home-tendencies Across the US States?

Author:

Ongan Serdar1,Gocer Ismet2

Affiliation:

1. Department of Economics, College of Arts & Sciences, University of South Florida, Tampa, FL, USA

2. Department of Economics, The University of Strathclyde, Glasgow, UK

Abstract

This study investigates the potential impacts of different socio-economic-demographic (henceforth, SED) factors in COVID-19-related stay-at-home-tendencies (henceforth, COVID-19-SAHTs) in the US. This requires a state-level investigation rather than a country-level since the US states exhibit large SED differences from one another. To this aim, the K-Means Cluster analysis and the panel autoregressive distributed lag models are applied. The main empirical finding indicates that different SED factors in different US states matter in COVID-19-SAHTs. Additionally, people in the states which have more equal income distribution, higher rate of basic literacy, and less population density stay at their homes more during the COVID-19 pandemic. These findings may provide some vital pre-information to the state policymakers about how much the people from different SED statuses will tend to comply with future COVID-19 state restrictions such as stay-at-home orders and others. Until the scientists create a proven vaccine for the coronavirus, states will most likely continue to issue some COVID-19 restrictions to reduce the spread of this pandemic.

Publisher

SAGE Publications

Subject

Health Policy

Reference20 articles.

1. The effect of state-level stay-at-home orders on COVID-19 infection rates

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3. Data Planet (2020). Sage data. Sage Publishing Source. https://www.data-planet.com/data-planet-statistical-datasets/

4. FED (Federal Reserve Bank of St. Louis). (2020). FRED Economic Data. https://fred.stlouisfed.org/

5. The Effect of Stay-at-Home Orders on COVID-19 Cases and Fatalities in the United States

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