Journal of Regulatory Economics
https://doi.org/10.1007/s11149-022-09452-9
ORIGINAL ARTICLE
Differences in NPI strategies against COVID-19
Margarete Redlin1
Accepted: 17 July 2022
© The Author(s) 2022
Abstract
Non-pharmaceutical interventions are an effective strategy to prevent and control
COVID-19 transmission in the community. However, the timing and stringency to
which these measures have been implemented varied between countries and regions.
The differences in stringency can only to a limited extent be explained by the number
of infections and the prevailing vaccination strategies. Our study aims to shed more
light on the lockdown strategies and to identify the determinants underlying the differences between countries on regional, economic, institutional, and political level. Based
on daily panel data for 173 countries and the period from January 2020 to October
2021 we find significant regional differences in lockdown strategies. Further, more
prosperous countries implemented milder restrictions but responded more quickly,
while poorer countries introduced more stringent measures but had a longer response
time. Finally, democratic regimes and stronger manifested institutions alleviated and
slowed down the introduction of lockdown measures.
Keywords Pandemics · COVID-19 · Non-pharmaceutical interventions · Lockdown ·
Economics
JEL classification I18 · C23
1 Introduction
With the outbreak of the COVID-19 pandemic, many countries began implementing
contact restrictions to reduce contacts and thus counteract the spread of the virus.
Non-pharmaceutical interventions (NPIs) have been and continue to be used as an
important tool against Corona. However, the lockdown strategies pursued are not
homogeneous across countries. While some countries attempted to counteract the
virus with very strict lockdown strategies and measures such as travel bans, school
B
1
Margarete Redlin
[email protected]
Department of Economics, Paderborn University, Warburger Str. 100, 33098 Paderborn, Germany
123
M. Redlin
closures, and curfew restrictions even at quite low incidences, other countries largely
refrained from imposing mandatory restrictions and merely issued recommendations
for action.
Countries in Southeast Asia as well as Australia tried to pursue a zero covid strategy
with early border closures, entry barriers, and isolation by imposing a strict lockdown
in entire regions even at low incidence levels and trying to eliminate the virus through
extensive testing and tracking. Western European countries also show relatively high
restrictions. For example, countries such as Germany, France, Italy, and Greece have
made vaccination compulsory in certain professions or age levels, and Austria has made
it compulsory for the entire adult population. In France, for example, participation in
public life is only possible with a health passport, in Austria introduced a lockdown
for the unvaccinated, and Germany has been in lockdown several times and the 2G or
2G plus rule applies to participation in public life (2G only vaccinated or recovered,
2G plus with additional test). Sweden, on the other hand-unlike most of its European
neighbors-relied more on voluntarism. And so there were, and still are, primarily only
recommendations on how to behave, rather than regulations whose disregard would
entail consequences or penalties. And the U.S. version was accompanied by regionally
different and in part very strict restrictions. However, these were relaxed early on so as
not to harm the economy in the long-term. Thus, it is evident that lockdown strategies
across countries were not defined by infection incidence alone. Regional, economic,
and institutional factors also appear to be important and thus are the focus of this study.
Our empirical investigation examines the determinants that played a role in setting
the lockdown course and analyze country characteristics associated with strict and
less strict lockdown strategies. Based on daily panel data for 173 countries and the
period from January 1, 2020 to October 23, 2021, we identify the factors that were
driving the stringency of the lockdowns. Using GMM and IV techniques to account
for a potential endogeneity between the stringency level of NPIs and the spread of the
virus and taking into account the actual development of infection and the respective
vaccination coverage, our results show that less developed countries and countries with
less established institutions and autocratic regimes have adopted harsher lockdown
measures. We also identify significant regional differences in the adoption of NPIs.
All in all, our findings offer a fruitful contribution to the debate on determinants of
NPIs.
The remainder of this paper is organized as follows. Section 2 provides an overview
of recent studies and forms the hypotheses for the empirical examination. Section 3
presents the empirical model, the data and our result, and Sect. 4 concludes.
2 Literature
The COVID-19 pandemic has resulted in extraordinary burdens for all countries
worldwide. To slow the spread of infection, many countries have implemented nonpharmacological interventions. These lockdown measures were primarily aimed at
containing the spread of the virus by reducing contacts in the population. Containment was intended to keep the virus and mortality in check and to protect the respective
care and health systems from being overburdened.
123
Differences in NPI strategies against COVID-19
In this regard, empirical studies provide evidence that lockdown with decreasing
mobility in the population is an effective tool for pandemic control. The relationship
between decreasing mobility in the population and the incidence of infection during
the pandemic has been clearly demonstrated empirically. A reduction in mobility has
been shown to lower the reproductive numbers (Nouvellet et al., 2021). There is also
empirical evidence conforming that the overall set of nonpharmacological interventions had the desired effect on the incidence of infection and thus on the mortality
rates (Hsiang et al., 2020). Cross country studies show that lockdown is effective in
reducing the number of new cases in the countries that implement it compared with
those countries that do not (Bo et al., 2021, Alfano & Ercolano, 2020, Banholzer et al.,
2020, Hartl 2020). Flaxman et al. (2020) model how many infections and deaths were
prevented by the non-pharmacological interventions and lockdowns in 11 European
countries by May 2020, with the result that more than 3 million lives were saved.
And Askitas et al. (2021) analyses worldwide effects of non-pharmaceutical interventions on COVID-19 incidence and population mobility patterns using a multiple-event
study confirming that lockdown had significant effects on reducing COVID-19
infections.
However, a lockdown has not only desirable effects, but also negative effects and
high psychological, social, and economic costs (Bonaccorsi et al., 2020). Thus, the
negative side effects and benefits must be weighed when introducing it (Layard et al.,
2020). Thus, some countries implemented strict measures only intermittently and
only when viral incidence was high, and strategies were not always consistent when
infection histories were similar.
In general, we would expect the extent of contact restrictions to be higher the more
severely the country is affected by the pandemic event, and the measures to be relaxed
as incidences decline. This would be reflected in a positive correlation between lockdown and infection rates. Researchers at Oxford University developed the Government
Stringency Index (GSI) during the COVID-19 pandemic, which quantifies the severity
of lockdowns in states worldwide. It captures all Corona restrictions in place, such
as school closures, closed workplaces, travel restrictions, or contact restrictions in
a country, and combines them into one index. The correlation coefficient based on
data from 173 countries from January 2020 to October 2021 between the GSI and
reported new COVID-19 cases is 0.1465. The correlation is relatively low, indicating
that only a small proportion of the variance in the Stringency Index can be explained
by the prevailing incidence of infection. Figure 1 shows the development of the global
averages in daily reported COVID-19 cases, the COVID-19 reproduction rate R0, the
Government Stringency Index and the vaccination rate in the population. While the
global outbreak at the beginning of 2020 led to a dramatic increase in stringency, no
joint movement of COVID-19 cases and the Government Stringency Index is visible
in the wider context. The development of the reproduction rate also shows no clear
correlation with the policy measures. Thus, lockdown strategies cannot be explained
by infection rates alone, but other factors also seem to play an important role in governments’ decisions.
The determinants of lockdown policies have been considered only sparsely in the
literature (Aksoy et al., 2020; De Simone & Mourao, 2021; Ferraresi et al., 2020;
123
0
100
200
300
400
M. Redlin
01jan2020
01oct2021
time
GSI
R0
Vaccinations
New_cases
Fig. 1 Worldwide averages in new COVID-19 cases (per million), COVID-19 reproduction rate (*100) R0,
GSI and vaccination rate (%)
Frey et al., 2020). De Simone and Mourao (2021) analyze the relationship between
country characteristics and lockdown timing and find that urban population and political stability are conducive to a prompt activation of a government’s lockdown policy
after initial cases while a country’s wealth and the rule of law may produce an opposite effect and be an obstacle to an immediate policy activation. Aksoy et al. (2020)
show that countries with high levels of public attention to COVID-19 are more likely
to implement non-pharmaceutical interventions. Analyzing political determinants of
lockdown differences in 110 Frey et al. (2020) find that autocratic regimes imposed
more stringent lockdowns. They show that in authoritarian countries, a doubling of
cases is associated with an increase in stringency 17% higher than in democracies.
Ferraresi et al. (2020) provide an event-study design which analyses the determinants
of differences in timing and intensity of stringency measures undertaken. By analyzing dummies for economics, political and institutional characteristics, they show
the different trajectories of lockdown measures depending on the dummies and find
that, for the same number of cases identified countries characterized by low political
stability low level of development, low level of digitalization and a high degree of
decentralization have adopted less stringent measures. Further, openness and being in
an electoral year is associated with a more stringent lockdown policy.
Our paper extends these analyses by offering a precise and differentiated review of
the factors associated with the implementation of NPIs for reducing COVID-19. To
examine the determinants differences in lockdown strategies, a holistic view across
countries and over time is needed, including not only infection incidence but also
regional and country-specific aspect in terms of development status as well as institutional characteristics. In addition, the inclusion of vaccination coverage is relevant,
as it is expected that with higher vaccination coverage, lockdown measures can be
relaxed. This study, therefore, uses panel regression analysis with daily observations
of the Government Stringency Index, reported new COVID-19 cases, proportion of the
123
Differences in NPI strategies against COVID-19
population vaccinated and regional, economic, political, and institutional determinants
to analyze which factors have an impact on national lockdown strategies.
3 Empirical evidence
3.1 Estimating model
In general, implementation of NPIs can be expected to be related to COVID-19 development. If incidence increases, it can be expected that the government will, on average,
introduce harsher restrictions to limit contacts in the population. This effect may be
mitigated if a large portion of the population is already vaccinated. Vaccinated individuals generally have high protection against the disease and tend to show mild disease
courses even when vaccine breakthroughs occur. Following this reasoning our starting
point is a model of the form
G S I i,t α + β1 cases i,t + β2 vaccinations i,t−1 + β3 xi,t + μi + ǫi,t
where G S I i,t represents the composite Government Stringency Index in country i at
day t, cases i,t is the number of new COVID-19 cases per million people in country i at
day t, and vaccinations i,t , is the percent of people fully vaccinated against COVID-19
in country i at day t, and the disturbance term is composed of the individual effect μi
and the stochastic disturbance ǫi,t . We account for regional, economic, political, and
institutional differences characteristics by including additional specific explanatory
variables that capture these characteristics in xi,t .
3.2 Data
Our analysis is based on unbalanced panel dataset of daily data covering 173 countries
from the period January 1, 2020 to October 23, 2021.
3.3 Dependent variable
Our dependent variable GSI is the COVID-19 Government Stringency Index. It is
a composite measure calculated by The Oxford Coronavirus Government Response
Tracker (OxCGRT) project based on nine government response indicators.1 The nine
metrics used to calculate the Stringency Index are: school closures; workplace closures;
cancellation of public events; restrictions on public gatherings; closures of public
transport; stay-at-home requirements; public information campaigns; restrictions on
internal movements; and international travel controls. The index on any given day is
calculated as the mean score of the nine metrics, each taking a value between 0 and
100. A higher score indicates a stricter response (i.e., 100 strictest response).
1 https://www.bsg.ox.ac.uk/research/research-projects/covid-19-government-response-tracker.
123
M. Redlin
3.4 Baseline explanatory variables
First, we include the 7-day rolling average of new daily confirmed cases per million
people. The data comes from the COVID-19 Data Repository by the Center for Systems
Science and Engineering (CSSE) at Johns Hopkins University (JHU).2
Additionally, to the level of the infection, we control for the dynamics of COVID-19
by including estimates of the reproduction rate R0 (Arroyo-Marioli et al., 2021). The
reproduction rate represents the average number of new infections caused by a single
infected individual. Thus, if the rate is greater than 1, the infection is able to spread,
while the number of cases will gradually decrease, if the rate is below 1.
Further we account for the effect of vaccinations. This variable is defined as the
total number of people who received all doses prescribed by the vaccination protocol
per 100 people in the total population. The data is provided by the COVID-19 Our
World in Data project and is based on public official sources.
3.5 Regional characteristics
We control for regional differences by including dummies for continents in the
regression on the one hand and running the regressions separately for the individual
continents on the other. The dummies represent Africa, Asia, Europe, North America,
Oceania, and South America.
3.6 Development
First, we investigate the effect of development on the stringency by including
G D P per capita. We use gross domestic product at purchasing power parity (constant 2011 international dollars) from the World Bank World Development Indicators.
Second, we include extreme poverty measured as the share of the population living
in extreme poverty from the World Bank World Development Indicators.3
Finally, we use the Human Development Index provided by the United Nations
Development Programme (UNDP) to account for the effect of development. The HDI
is a composite index measuring average achievement in three basic dimensions of
human development-a long and healthy life, knowledge, and a decent standard of
living.
3.7 Institutional and political characteristics
We use the Worldbank’s Worldwide Governance Indicators which measure six broad
dimensions of governance to investigate the effect of institutions.4 The six dimensions
include:
2 https://coronavirus.jhu.edu/map.html.
3 https://datatopics.worldbank.org/world-development-indicators/.
4 https://info.worldbank.org/governance/wgi/.
123
Differences in NPI strategies against COVID-19
Table 1 Descriptive statistics
Variable
Obs
Mean
Std. dev
Min
Max
GSI
104,655
56.734
20.635
0
100
New cases (per million)
117,314
84.885
165.706
− 272.971
3385.473
Reproduction rate R0
100,726
1,002
0.344
− 0.030
5.960
Vaccinations (per hundred)
25,445
21.870
22.792
0
118.12
GDP per capita
111,498
19,244.6
20,057.16
661.24
116,935.6
Extreme poverty
74,606
13.499
19.991
0.1
77.6
HDI
111,185
0.726
0.150
0.394
0.957
Voice and accountability
111,738
− 0.041
0.987
− 2.159
1.725
Political stability
112,281
− 0.079
0.977
− 2.731
1.913
Government effectiveness
110,885
− 0.002
1.004
− 2.344
2.335
Regulatory quality
110,885
− 0.003
0.993
− 2.340
2.206
Rule of law
110,885
− 0.025
0.995
− 2.346
2.079
Control of corruption
110,885
− 0.012
1.013
− 1.905
2.270
Voice and Accountability, which captures perceptions of the extent to which a
country’s citizens are able to participate in selecting their government, as well as
freedom of expression, freedom of association, and a free media.
Political Stability and Absence of Violence/Terrorism, a measure of perceptions of
the likelihood of political instability and/or politically motivated violence, including
terrorism.
Government Effectiveness, which captures perceptions of the quality of public services, the quality of the civil service and the degree of its independence from political
pressures, the quality of policy formulation and implementation, and the credibility
of the government’s commitment to such policies.
Regulatory Quality, a measure of perceptions of the ability of the government to
formulate and implement sound policies and regulations that permit and promote
private sector development.
Rule of Law, accounting for the extent to which agents have confidence in and abide
by the rules of society, and in particular the quality of contract enforcement, property
rights, the police, and the courts, as well as the likelihood of crime and violence.
And Control of Corruption, which captures perceptions of the extent to which public
power is exercised for private gain, including both petty and grand forms of corruption,
as well as "capture" of the state by elites and private interests. The six indicators are
reported in their standard normal units, ranging from approximately -2.5 to 2.5.
Table 1 shows the descriptive statistics of all variable.
3.8 Regression results
Table 2 presents the results of our baseline specification. The results from ordinary
least squares (OLS) estimation and fixed effect (FE) estimation are provided in column
123
M. Redlin
Table 2 Baseline regression
(1)
(2)
(3)
(4)
(5)
OLS
FE
GMM
Lewbel IV
Panel event
New cases (per
million)
0.0150***
0.0139***
0.0132***
0.0143***
0.0117***
(0.003)
(0.003)
(0.003)
(0.003)
(0.003)
Vaccinations (per
hundred)
− 0.2306***
− 0.3301***
− 0.3624***
− 0.3326***
−
0.2682***
(0.034)
(0.035)
(0.051)
(0.036)
(0.054)
R2
0.1396
0.3485
–
0.3485
0.3751
Hansen j
–
–
144.11
0.889
3.66
0.160
–
AR2
–
–
−1.22
0.223
–
–
Instruments
–
–
169
2
–
Countries
173
173
173
173
173
Obs
20,258
20,258
20,258
20,189
20,258
Estimates based on (1) OLS, (2) fixed effects, (3) two-step system GMM, (4) Lewbel instrumental variables
regressions and Clarke and Tapia-Schythe (2021) panel event study estimation. R2 denotes the coefficient
of determination. Hansen j denotes the Hansen test statistic for overidentifying restrictions. AR2 denotes the
Arellano and Bond second order serial correlation test. Dependent variable is the Government Stringency
Index. Clustered standard errors in parentheses; for GMM Windmeijer (2005) standard errors
*p < 0.10, **p < 0.05, ***p < 0.01
(1) and (2). Both coefficients show the expected results. The coefficient for new cases
is positive and highly significant. It is thus evident that, on average, the increase in
COVID-19 cases is associated with the introduction of harsher NPIs to reduce the
contacts and counteract the spread of the virus. The coefficient for the vaccination
rate, on the other hand, is negatively significant. This indicates that the lockdown
measures could be relaxed as the vaccination rate increased–holding all other factors
constant. This result is consistent with Patel et al. (2021) modeling that NPIs and
vaccination coverage are both levers that can be used to control spread and showing
that with increasing vaccination rate, the restrictions on NPIs can be relaxed.
In a second step we provide robustness checks regarding potential endogeneity and
the event character of the data. Technically, endogeneity occurs when explanatory
variables in a regression model are correlated with the error term. This can occur
(1) when important variables are omitted from the model and (2) in case of reverse
causality. In our model, the Stringency Index is not only an outcome of the corona cases
but can also help to explain the further course of the cases as a predictor. The policy
measures serve to reduce the contacts, which in turn have an impact on the spread of
the virus. The issue of endogeneity can be addressed by using instrumental variables.
This potential endogeneity could bias our OLS and FE results. Therefore, we use
the system generalized method of moment (GMM) estimator developed by Blundell
and Bond (1998), which relies on a set of “internal” instruments contained within
the panel itself. Further we use the instrumental variable (IV) approach developed by
123
Differences in NPI strategies against COVID-19
01jan2020
01oct2021
time
Africa
Europe
Oceania
Asia
North_America
South_America
Fig. 2 Regional differences in the GSI
Lewbel (2012). The estimator exploits model heteroscedasticity to construct internal
instruments using the available regressors. In addition, external instruments can be
added to improve the efficiency. Finally, we apply a panel event study based on the
approach of Clarke and Tapia-Schythe (2021). We define the event as the COVID-19
outbreak in a given country to control for the fact that the virus did not break out at
the same time in the individual countries. The virus outbreak is defined as the time
when more than ten people in the country were infected for the first time. The three
estimators confirm our previous OLS and FE findings.
When looking at the coefficient of determination, it is apparent that only about
one third of the variance in the NPIs can be explained by differences in infection and
vaccination rates. Thus, there seem to be other important factors responsible for the
lockdown policy and implementation. In the following, we will take a closer look at
regional, economic and institutional factors.5
Figure 2 shows the development of the GSI for the individual regions. It is evident
that strict measures were introduced worldwide with the outbreak of the virus in
order to keep the spread within limits. However, the further courses show regional
differences. While the GSI is at a relatively high level in South and North America
and Asia, Africa and Oceania show on average lower values. In Europe, there are
greater fluctuations in the GSI.
While the illustration shows regional differences without taking other factors into
account, we will further examine the differences taking into account the prevailing
incidences and vaccination rates. We take a closer look at regional differences in the
introduction of NPIs by (a) including regional dummies, (b) running the baseline
regression separately for individual regions, and (c) presenting regional differences
5 In the further course, additional country characteristics are included in the model. Since these variables
do not change over the daily observations for the individual countries, they would be dropped from the
model by the FE or the Lewbel estimator. For this reason, the following regressions are based on the GMM
estimator.
123
M. Redlin
for the margins for different vaccination rates and incidences. The regression results
are presented in Table 3.
It should be taken into account that the observations are lower for less developed
countries due to the limited availability for the vaccination variable. While the observations in Europe and North America are largely available, there are large gaps for
Africa, Asia and Oceania. This selection bias can lead to coefficient bias and low significance and should be taken into account in the further analysis. While the figure shows
regional differences, the regressions additionally control for incidence and vaccination coverage. The coefficients of regional dummies show that regional characteristics
have significant effects on the introduction of NPIs.
Controlling for the number of cases and for vaccination coverage, Oceania shows
the harshest measures. The results mirror the stringent policy in countries such as Australia, New Zealand, and many small Pacific Island nations where governments placed
the countries in a nationwide lockdown and closed their international borders with
already low case numbers. Asian countries also show comparatively high restrictions.
Compared to South America, which is taken as the reference region, the lockdown
indicator for Asian countries is on average eight points higher (on a scale from 0
to 100). This reflects the fact that Oceania and Asia have been pursuing zero-covid
strategies for a long time and have relied on very stringent measures to prevent the
spread. European countries, however, show on average less harsh lockdown measures,
when controlling for cases and vaccination rates. The score is five points below the
control region.
Looking at the development as a function of case numbers and the introduction of
vaccination, the following specifications show that the responses to increasing case
numbers and to increasing vaccination coverage were different in different regions.
African countries show the strongest response with respect to lockdown measures
when case numbers increase, followed by Asian and North American countries. In
Europe, lockdowns appear to be influenced by case numbers to a smaller extent, and in
South America and Oceania, lockdowns appear to respond more to global events than to
the situation in the country itself, as case numbers do not show significant effects here.
Vaccination rates are associated with the largest effects on NPIs in Europe followed
by Africa and South America, implying that this is where the highest relaxations of
lockdowns measures were seen as vaccination rates increased. Asia and North America
show substantially lower effects here. Regional differences in the implementation of
NPIs may also reflect differences in population density, rural-urban dimensions, and
population age structure. As shown by Kashnitsky and Aburto (2020) differences in
the population structure have significant effects to the magnitude of the pandemic,
thus, they could also have effects on policy measures.
To examine the reaction time from stimulus to response, we analyze the effects of
the time-lagged explanatory variables. Figures 3 and 4 show how the effects behave
for a lag of 1–12 weeks. In general, we see that the effect for new COVID-19 cases first
increases and then decreases with time. For the entire panel, the peak is observed after
three weeks. This means that it takes some time to implement the measures. Looking
at the subpanels, it is evident that the response time is faster in richer countries and
123
(1)
New cases (per million)
Vaccinations (per hundred)
Africa
Asia
Europe
North America
Oceania
Hansen j
AR2
Instruments
(2)
(3)
(4)
(5)
(6)
(7)
Africa
Asia
Europe
North America
Oceania
South America
0.0080***
0.0164***
0.0151***
0.0129***
0.0149***
− 0.0088
− 0.0000
(0.000)
(0.002)
(0.001)
(0.000)
(0.001)
(0.010)
(0.001)
− 0.3777***
− 0.3924***
− 0.2191***
− 0.4335***
− 0.1160***
0.8732
− 0.3477***
(0.002)
(0.029)
(0.009)
(0.004)
(0.009)
(0.054)
(0.013)
5.7658***
–
–
–
–
–
–
(0.275)
–
–
–
–
–
–
7.952***
–
–
–
–
–
–
(0.347)
–
–
–
–
–
–
− 5.065***
–
–
–
–
–
–
(0.291)
–
–
–
–
–
–
6.145***
–
–
–
–
–
–
(0.346)
–
–
–
–
–
–
44.071***
–
–
–
–
–
–
(0.752)
–
–
–
–
–
–
142.68
34.38
37.29
41.71
− 0.70
0.63
6.49
0.847
0.875
0.678
0.396
0.481
0.960
0.690
− 1.37
0.70
− 1.33
− 0.75
14.24
1.00
− 1.04
0.171
0.486
0.184
0.452
0.507
0.316
0.299
169
48
45
43
18
7
12
Differences in NPI strategies against COVID-19
Table 3 Regional differences in the government stringency index
123
123
Table 3 (continued)
(1)
(2)
(3)
(4)
(5)
(6)
(7)
Africa
Asia
Europe
North America
Oceania
South America
Countries
173
48
45
43
18
7
12
Obs
20,258
1794
5212
8482
2193
435
2142
Estimates based on two-step system GMM regressions. Hansen j denotes the Hansen test statistic for overidentifying restrictions. AR2 denotes the Arellano and Bond second
order serial correlation test. Dependent variable is the Government Stringency Index. Robust Windmeijer (2005) standard errors in parentheses
*p < 0.10, **p < 0.05, ***p < 0.01
M. Redlin
Differences in NPI strategies against COVID-19
Fig. 3 Effect of new COVID-19 cases lagged by 1 to 12 weeks
regional differences are also apparent.6 From a lag of 10 weeks, the significance of
the effects drops sharply, which means that the case numbers from 10 weeks ago and
before no longer show significant effects on today’s measures.
For vaccinations, the effect behaves relatively constant.7 This may be due to the
fact that the development of the vaccination rate shows no jumps and little variation
within these short periods.
In the next step, additionally to just account for case numbers and vaccination rate,
we include different controls for COVID-19 development, economic development
and institutions to account for these factors. First, additionally to the level of the
infection, we control for the dynamics of COVID-19 by including estimates of the
reproduction rate R0 (Arroyo-Marioli et al., 2021). The results with the reproduction
rate in exchange for the number of cases and supplementary to the number of cases
are presented in specifications (1) and (2) in Table 4.
There is no significant correlation between the reproduction rate and the lockdown
measure. This may be due to the fact that the reproduction rate measures the development but not the level of the pandemic. Thus, our results suggest that policy measures
are responding to the current level of the pandemic rather than the short-term trend.
In the following we examine development related differences. Development is measure by four different indicators-a dummy for high income countries, GDP per capita,
the share of people living in extreme poverty, and the HDI. The results are presented
6 It should be noted that the effects for South America and Oceania are not significant.
7 The effect for Oceania is not significant.
123
M. Redlin
Fig. 4 Effect of the vaccination rate lagged by 1 to 12 weeks
in Table 4 in specification (3) to (6) and show that developed countries-measured by
GDP per capita and HDI adopted less stringent measures, while the reactions of poorer
countries are more stringent. High income countries show an GSI index value that is
on average three percentage points higher. Our result is in line with De Simone and
Mourao (2021) who show that richer countries tended to take longer to establish a
“lockdown”. Our results suggest that economic lockdown costs are much higher in
developed countries, thus many industrialized countries may hesitate to interrupt their
economic activities and establish lockdowns due to their related economic costs or
were eager to ease back the NPIs relatively quickly after a brief lockdown. However,
Ferraresi et al. (2020) find contradictory findings and argue that in the initial phase
of the pandemic developed countries adopted more stringent measures as compared
to developing ones. This result, though, is only significant in the initial phase of the
pandemic.
To shed more light on the effects of institutions and state characteristics we estimate
the effects of the Worldbank’s Worldwide Governance Indicators on the Government
Stringency Index. Specification (7) in Table 4 presents the results where all governance indicators are summarized in one “good governance” dummy. The dummy
is one if the country’s institutional quality is above average (> 0).8 Countries with a
well-functioning institutional apparatus had lockdown values that were on average 3.5
points lower. In line with previous findings (De Simone & Mourao, 2021) our results
8 In addition, we also test for the effects of the individual indices of the governance indicator. All sub-indices
confirm our findings and show highly significant negative correlations with the GSI.
123
New cases (per million)
Vaccinations (per hundred)
Reproduction rate R0
High income country
ln GDP pc
Extreme poverty
HDI
Good governance
(1)
(2)
(3)
(4)
(5)
(6)
(7)
(8)
(9)
0.0139***
–
0.0129***
0.0003***
0.0061***
0.0004***
0.0133***
0.0131***
0.0128***
(0.005)
–
(0.002)
(0.000)
(0.000)
(0.000)
(0.000)
(0.000)
(0.000)
− 0.3386***
− 0.3649***
− 0.3635***
− 0.5082***
− 0.4467***
− 0.5001***
− 0.3575***
− 0.3582***
− 0.3581***
(0.043)
(0.052)
(0.000)
(0.002)
(0.002)
(0.002)
(0.002)
(0.002)
(0.002)
9.7230
10.6117
–
–
–
–
–
–
–
(7.000)
(7.023)
–
–
–
–
–
–
–
–
–
− 2.8428***
–
–
–
–
− 1.8100***
0.5167
–
–
(0.134)
–
–
–
–
(0.164)
(0.346)
–
–
–
− 16.3301***
–
–
–
–
–
–
–
–
(0.170)
–
–
–
–
–
–
–
–
–
0.5506***
–
–
–
–
–
–
–
–
(0.035)
–
–
–
–
–
–
–
–
–
− 149.5101***
–
–
–
–
–
–
–
–
(2.305)
–
–
–
–
–
–
–
–
–
− 3.5108***
− 2.5101***
− 0.6822**
–
–
–
–
–
–
(0.182)
(0.132)
(0.285)
Differences in NPI strategies against COVID-19
Table 4 Institutional and Political Effects in the Government Stringency Index
123
123
Table 4 (continued)
High income * Good governance
Hansen j
(1)
(2)
(3)
(4)
(5)
(6)
(7)
(8)
(9)
–
–
–
–
–
–
–
–
− 3.4041***
–
–
–
–
–
–
–
–
(0.237)
159.31
163.21
146.25
140.35
99.87
138.21
− 1.22
143.61
142.20
0.523
0.459
0.791
0.878
0.787
0.921
0.222
0.819
0.826
− 0.09
− 0.07
− 1.23
− 1.17
− 0.72
− 1.18
144.83
− 1.23
− 1.24
0.931
0.944
0.218
0.241
0.470
0.236
0.815
0.217
0.213
Instruments
165
165
165
165
116
167
165
165
165
Countries
169
169
173
166
116
168
173
173
173
Obs
19,944
19,944
20,258
19,690
14,311
19,988
20,258
20,258
20,258
AR2
Estimates based on two-step system GMM regressions. Hansen j denotes the Hansen test statistic for overidentifying restrictions. AR2 denotes the Arellano and Bond second order serial correlation
test. Dependent variable is the Government Stringency Index. Robust Windmeijer (2005) standard errors in parentheses
*p < 0.10, **p < 0.05, 0***p < 0.01
M. Redlin
Differences in NPI strategies against COVID-19
show that high quality of institutions can have a detrimental effect on the implementation of strict measures and on response time. Sophisticated institutional processes
can slow down implementation, for example through a bloated legal system and high
bureaucratic burdens and thus hinder effective execution. Furthermore, government
authorities may need to limit certain human rights in these national emergencies when
combating the spread of the virus. This is more difficult the more these rights are
enshrined in national jurisprudence and laws. Therefore, democratic regimes may find
more obstacles to imposing mandatory and harsh measures while autocratic countries
face fewer administrative hurdles and can enforce measures more quickly and with
less resistance (De Simone & Mourao, 2021; Frey et al., 2020).
Since it is often the richer countries that are also institutionally better off, we go on
to test the joint effect of the two to see whether it is income, the institutional framework,
or the combination of the two that makes more of a difference. Therefore, we introduce
models in which we estimate the two dummy variables for good governance and high
income together and additionally together with their interaction. While the estimates
with both variables still show significant negative coefficients, the results change with
the inclusion of the interaction. Looking at the interaction, we see that countries that
have both high income and are institutionally well-positioned had lower constraints
on average. Good governance by itself still shows a negative effect, but the effect
size and significance are now smaller. It is evident that when considering income and
institutions jointly, income alone does not have a significant effect on policy measures.
Thus, it is more the institutional framework, especially in combination with higher
income, that matters.
Overall, our results show that differences in lockdown strategies can be explained
only to a limited extent by differences in infection numbers and vaccination rates.
Rather, we show that regional differences co-determine lockdown strategies. This is
in line with Petherick et al. (2020) who show that the development of the number
of cases and the response of the state is not parallel. Rather the stringency of policy
response has varied substantially, with many coutries experiencing a rise in cases in the
summer and fall even as levels of stringency remained approximately constant or fell.
Similar results were also found for the US, where Hallas et al (2021) find significant
variation in both the measures that states adopt and when they adopt them. Their
results shows that after initial peaks in stringency, policy variation by state, region,
and political affiliation continued into the fall, with Northeastern and Democrat-led
states experiencing more stringent responses overall.
In order to better compare the results and their quantitative significance, we present
the effects in relation to the standard deviations in Table 5. In addition to the coefficients
and standard deviations of the explanatory and dependent variable, the standardized
coefficients are presented. The coefficients for COVID-19 cases shows that the change
by one standard deviation increases the Government Stringecy Index by 22 units, i.e.,
about 17% of its standard deviation. In contrast, a one standard deviation change in
the vaccination rate has an effect that is three times as large, at 50%. The effects on
income and government quality are relatively small. However, the combination of both
leads to a 10% change in the standard deviation of stringency.
In summary, we show that economic, institutional, and political factors of the country play a significant role in the implementation and harshness of interventions. In
123
M. Redlin
Table 5 Standardized estimates
(1)
(2)
(3)
(4)
(6)
(7)
Coef
Std dev
X
Std dev
Y
x-stand.
coefficient
y-stand.
coefficient
Fully stand.
coefficient
New cases
(per
million)
0.0128***
205.009
15.7197
22.0180
1,228.1016
0.1669
(0.000)
–
–
–
–
–
Vaccinations
(per
hundred)
- 0.3581***
22.1125
15.7197
− 7.9185
− 43.8975
− 0.5038
(0.002)
–
–
–
–
–
High income
country
0.5167
0.3630
15.7197
0.1876
30.4233
0.0119
(0.346)
–
–
–
–
–
Good
governance
− 0.6822**
0.1979
15.7197
− 0.1350
− 23.0427
− 0.0086
–
(0.285)
–
–
–
–
High income
* Good
governance
- 3.4041***
0.4959
15.7197
− 1.6881
− 4.6179
− 0.1074
(0.237)
–
–
–
–
–
Obs
20,258
–
–
–
–
–
*p < 0.10, **p < 0.05, ***p < 0.01
the future, governments at all levels would benefit from adopting an evidence-based
approach to the actions they take.
4 Concluding remarks
NPIs are an effective strategy in combating the COVID-19 pandemic. Recent studies
show that a suitable combination of NPIs is necessary to curb the spread of the virus
(Haug et al., 2020) and that vaccination alone is insufficient to contain the outbreak
(Moore et al., 2021). However, the timing and stringency to which these measures
have been implemented varied between the countries and regions. The differences in
stringency can only be explained to a limited extent by the number of infections and
the prevailing vaccination strategies. Our study aims to shed more light on the lockdown strategies and to identify the determinants underlying the differences between
countries on regional, economic, institutional, and political level. Based on daily panel
data for 173 countries and the period from January 2020 to October 2021, we analyze
the factors that were driving the stringency of the lockdowns. We identify significant
regional differences. It is evident that some regions and countries were more responsive to global developments of the pandemic, while others adjusted their NPI measures
more on country specific virological development. Asian countries introduced relatively strict measures, which were not directly related to domestic infection rates. In
North America and Europe, on the other hand, the stringency of the lockdown was
comparatively small. An investigation of the relationship between economic development and NPIs shows that the associated high economic lockdown costs in high
123
Differences in NPI strategies against COVID-19
developed countries led to a weakened lockdown reaction, while poorer countriesin terms of GDP per capita, poverty level and HDI-have introduced more stringent
measures. On the other hand, wealthier countries showed a quicker response, while
in poorer countries the response time was longer. Further, democratic regimes and
stronger manifested institutions alleviated and slowed down the introduction of lockdown measures. In most political systems and administrative organizations, there was
maximum uncertainty about pandemic response and the introduction of NPIs. Our
results indicate, that for the future a more structured pandemic policy is needed that
provides quick and clear guidelines and recommendations for action. Better conceptual, personnel and material recourses are important prerequisites for fast and effective
pandemic response. Rapid and consistent implementation and targeted adaptation of
NPIs can both save lives and reduce lockdown duration. Preventive measures, such
as the installation of air filters in workplaces and schools and comprehensive testing
strategies, may also reduce the need for NPIs and the associated economic and social
costs.
Overall, our analysis makes a valuable contribution to the discussion of lockdown
determinants. However, our estimation is limited by the type of data utilized. Although
we control for temporal effects, it should be noted that we do not explicitly control for
the prevailing virus variants, since this kind of data is not available in the panel format.
It is also important to note, that the study does not take into account the Omicron wave,
as only the time period until October 2021 is considered.
Funding Open Access funding enabled and organized by Projekt DEAL.
Declarations
Conflict of interest There is no conflict of interests for this paper.
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License,
which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long
as you give appropriate credit to the original author(s) and the source, provide a link to the Creative
Commons licence, and indicate if changes were made. The images or other third party material in this
article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line
to the material. If material is not included in the article’s Creative Commons licence and your intended use
is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission
directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/
by/4.0/.
Appendix: 1 Table A1 Mean values for specific groups
123
123
Variable
Overall
Africa
Asia
Europe
Oceania
South
America
High
income
(yes)
High
income
(no)
Good governance
(yes)
Good
governance
(no)
GSI
56.734
52.694
60.028
60.645
46.900
68.583
58.055
55.325
55.976
57.353
New cases
(per
million)
84.885
26.580
74.692
162.56
86.939
15.839
120.054
124.203
39.594
122.914
50.193
Vaccinations
(per
hundred)
21.870
6.533
21.983
26.22
25.363
18.705
19.701
25.448
10.420
26.028
23.770
GDP per
capita
Extreme
poverty
HDI
19244.6
13.499
5488.3
33.836
23862.9
5.667
54.071
North
America
33478,5
0.901
19231.3
5.599
14170.3
8.359
13885.9
2.845
33206.6
1.268
5179.0
22.363
31393.9
5.397
9046.9
19.143
0.726
0.562
0.742
0.880
0.757
0.731
0.764
0.840
0.610
0.832
0.642
Voice and
accountability
− 0.041
− 0.615
− 0.667
0.828
0.413
0.799
0.230
0.298
− 0.415
0.763
− 0.677
Political
stability
− 0.079
− 0.691
− 0.391
0.549
0.455
0.768
− 0.190
0.301
− 0.500
0.730
− 0.726
Government
effectiveness
− 0.002
− 0.772
0.073
0.868
0.101
0.152
− 0.272
0.551
− 0.603
0.874
− 0.684
Regulatory
quality
− 0.003
− 0.770
0.006
0.940
0.147
0.078
− 0.317
0.517
− 0.566
0.853
− 0.668
− 0.025
− 0.699
− 0.102
0.855
0.076
0.491
− 0.390
0.485
− 0.579
0.874
− 0.725
− 0.012
− 0.635
− 0.164
0.808
0.127
0.590
− 0.238
0.484
− 0.550
0.907
− 0.727
M. Redlin
Rule of law
Control of
corruption
Overall
Africa
Asia
Europe
North
America
Oceania
South
America
High
income
(yes)
High
income
(no)
Good governance
(yes)
Good
governance
(no)
Polity2
4.291
2.889
0.188
8.750
7.177
3.237
6.969
4.975
3.615
7.825
2.068
Military exp
(in GDP)
1.982
1.791
3.070
1.678
1.067
1.464
1.718
2.253
1.710
1.860
2.068
Differences in NPI strategies against COVID-19
Variable
123
M. Redlin
References
Aksoy, C. G., Ganslmeier, M., & Poutvaara, P. (2020). Public attention and policy responses to COVID-19
pandemic. CESifo Working Paper No. 8409, Available at SSRN 3638340.
Alfano, V., & Ercolano, S. (2020). The efficacy of lockdown against COVID-19: A cross-country panel
analysis. Applied Health Economics and Health Policy, 18, 509–517.
Arroyo-Marioli, F., Bullano, F., Kucinskas, S., & Rondón-Moreno, C. (2021). Tracking R of COVID-19:
A new real-time estimation using the Kalman filter. PloS one, 16(1), e244474.
Askitas, N., Tatsiramos, K., & Verheyden, B. (2021). Estimating worldwide effects of non-pharmaceutical
interventions on COVID-19 incidence and population mobility patterns using a multiple-event study.
Scientific Reports, 11(1), 1–13.
Banholzer, N., van Weenen, E., Kratzwald, B., Seeliger, A., Tschernutter, D., Bottrighi, P., & Feuerriegel,
S. (2020). Impact of non-pharmaceutical interventions on documented cases of COVID-19. MedRxiv.
Blundell, R., & Bond, S. (1998). Initial conditions and moment restrictions in dynamic panel data models.
Journal of Econometrics, 87(1), 115–143.
Bo, Y., Guo, C., Lin, C., Zeng, Y., Li, H. B., Zhang, Y., & Lao, X. Q. (2021). Effectiveness of nonpharmaceutical interventions on COVID-19 transmission in 190 countries from 23 January to 13
April 2020. International Journal of Infectious Diseases, 102, 247–253.
Bonaccorsi, G., Pierri, F., Cinelli, M., Flori, A., Galeazzi, A., Porcelli, F., & Pammolli, F. (2020). Economic
and social consequences of human mobility restrictions under COVID-19. Proceedings of the National
Academy of Sciences, 117(27), 15530–15535.
Clarke, D., & Tapia-Schythe, K. (2021). Implementing the panel event study. The Stata Journal, 21(4),
853–884.
De Simone, E., & Mourao, P. R. (2021). What determines governments’ response time to COVID-19? A
cross-country inquiry on the measure restricting internal movements. Open Economics, 4(1), 106–117.
Ferraresi, M., Kotsogiannis, C., Rizzo, L., & Secomandi, R. (2020). The ‘Great Lockdown’ and its determinants. Economics Letters, 197, 109628.
Flaxman, S., Mishra, S., Gandy, A., Unwin, H. J. T., Mellan, T. A., Coupland, H., & Bhatt, S. (2020). Estimating the effects of non-pharmaceutical interventions on COVID-19 in Europe. Nature, 584(7820),
257–261.
Frey, C. B., Chen, C., & Presidente, G. (2020). Democracy, culture, and contagion: Political regimes and
countries responsiveness to Covid-19. Covid Economics, 18, 1–20.
Hallas, L., Hatibie, A., Majumdar, S., Pyarali, M., & Hale, T. (2021). Variation in US States’ Responses to
COVID-19. Blavatnik Centre for Government Working Paper 2020/034, University of Oxford.
Hartl, T., Wälde, K., & Weber, E. (2020). Measuring the impact of the German public shutdown on the
spread of Covid-19. Covid Economics, 1, 25–32.
Haug, N., Geyrhofer, L., Londei, A., Dervic, E., Desvars-Larrive, A., Loreto, V., & Klimek, P. (2020). Ranking the effectiveness of worldwide COVID-19 government interventions. Nature Human Behaviour,
4(12), 1303–1312.
Hsiang, S., Allen, D., Annan-Phan, S., Bell, K., Bolliger, I., Chong, T., & Wu, T. (2020). The effect of
large-scale anti-contagion policies on the COVID-19 pandemic. Nature, 584(7820), 262–267.
Karabulut, G., Zimmermann, K. F., Bilgin, M. H., & Doker, A. C. (2021). Democracy and COVID-19
outcomes. Economics Letters, 203, 109–840.
Kashnitsky, I., & Aburto, J. M. (2020). COVID-19 in unequally ageing European regions. World Development, 136, 105–170.
Layard, R., Clark, A., De Neve, J. E., Krekel, C., Fancourt, D., Hey, N., & O’Donnell, G. (2020). When
to release the lockdown? A wellbeing framework for analysing costs and benefits. SSRN Electronic
Journal.
Lewbel, A. (2012). Using heteroscedasticity to identify and estimate mismeasured and endogenous regressor
models. Journal of Business & Economic Statistics, 30(1), 67–80.
Moore, S., Hill, E. M., Tildesley, M. J., Dyson, L., & Keeling, M. J. (2021). Vaccination and nonpharmaceutical interventions for COVID-19: A mathematical modelling study. The Lancet Infectious
Diseases, 21(6), 793–802.
Nouvellet, P., Bhatia, S., Cori, A., Ainslie, K. E., Baguelin, M., Bhatt, S., & Donnelly, C. A. (2021).
Reduction in mobility and COVID-19 transmission. Nature Communications, 12(1), 1–9.
123
Differences in NPI strategies against COVID-19
Patel, M. D., Rosenstrom, E., Ivy, J. S., Mayorga, M. E., Keskinocak, P., Boyce, R. M. & Swann, J.
L. (2021). The Joint Impact of COVID-19 Vaccination and Non-Pharmaceutical Interventions on
Infections, Hospitalizations, and Mortality: An Agent-Based Simulation. MedRXiv.
Petherick, A., Kira, B., Hale, T., Phillips, T., Webster, S., Cameron-Blake, E. & Angrist, N. (2020). Variation
in government responses to COVID-19. Blavatnik Centre for Government Working Paper 2020/032,
University of Oxford.
Windmeijer, F. (2005). A finite sample correction for the variance of linear efficient two-step GMM estimators. Journal of Econometrics, 126(1), 25–51.
Publisher’s Note Springer Nature remains neutral with regard to jurisdictional claims in published maps
and institutional affiliations.
123