Politics-Finance Nexus Under Pandemic Shock Based on DID Model:
From the Modern Slavery Perspective
Xiangdong Chen
1, *, #
and Jincheng Zuo
2, #
1
School of Humanities and Social Sciences, Xi’an Jiaotong-Liverpool University, China
2
International Business School Suzhou, Xi’an Jiaotong-Liverpool University, China
# These authors contributed equally to this work.
Keywords: Empirical Data Analysis, DID model, Politics-Finance Nexus, Public Management.
Abstract: The COVID-19 pandemic has created uncertainty in financial conditions around the world and generated risk-
based vulnerabilities for households and societies. Workers in severely affected areas may face worse work
conditions and imbalances due to the pandemic. Possible potential labour exploitation in those regions is a
product and manifestation of this status quo. The existing research is still on the macro impact of the pan-
demic. This article attempts to analyze the latent unfair treatment that employees may receive by constructing
modern slavery as a theoretical guide for analysis. There are 1760 sample observations of seven areas, running
from 2016 through 2020. We used Shanghai as the treatment group it was hit hard by COVID-19 in 2020.
The other six provinces, as the control group, each had less than 200 confirmed cases by comparison. Since
the emergence of the pandemic is an exogenous shock, we are interested in the alterations in modern slavery
before and after the experiment, the DID Model is applied for measuring the impact effect of the experimental
group in this study. The parallel trend test was used to evaluate the validity of the DID model, and regression
was utilized to determine the influence of pandemic shock.
1 INTRODUCTION
COVID-19 has spread globally and is considered the
most serious health crisis in the 21st century (Yu,
2020). In reaction to the pandemic, all governments
have implemented lockdowns and isolation, causing
local and international cooperation problems. The
pandemic and lockdown are new financial catastro-
phes that will raise worldwide poverty. According to
World Bank data, during these blockades, the manu-
facturing industry was closed and the global supply
chain was disturbed (Vidya, 2020). There are signifi-
cant and instant influences caused by lockdowns on
economic activities in China (Chen, 2020).
China has been studied by management and pub-
lic health researchers, but not from a micro-political
economics standpoint. While the pandemic damaged
the domestic economy and finance, worldwide trade
and collaboration, many individuals lost their jobs
temporarily or permanently, which leads to increasing
inequality (Shibata, 2020). During the pandemic,
many unequal treatments faced by labour have been
reported. However, existing theories struggle to ex-
plain how economic shifts affect workers during
COVID-19. Facing uninterrupted scattering of out-
breaks, remote work and home office are usually al-
ternatives to clocking in, so the exploitation and threat
of unemployment are more likely to occur. This study
explores the political economy of Shanghai employ-
ees in 2020 when the pandemic broke out by adopting
a novel yet emerging method, modern slavery, and
the Difference-in-Difference (DID) model to support
our findings.
This article will firstly construct modern slavery
through a critical analysis of current debates and em-
pirical evidence from the Marxist perspective, and ex-
plore the impact of the pandemic on modern slavery.
Second, this paper employee DID model to quantita-
tively analyse whether modern slavery occurs during
severe pandemic shock. The paper uses data from
CSMAR. 2016-2020 is the sample's span. 1080
Shang-hai observations and 680 from the other six
provinces total 1760. Since the pandemic is an exog-
enous shock, we are interested in "modern slavery"
before and after the experiment; consequently, the
DID Model is ideal for analyzing the experimental
group's impact effect in this study. This research em-
ployed the parallel trend test to evaluate the DID
Chen, X. and Zuo, J.
Politics-Finance Nexus Under Pandemic Shock Based on DID Model: From the Modern Slavery Perspective.
DOI: 10.5220/0011737100003607
In Proceedings of the 1st International Conference on Public Management, Digital Economy and Internet Technology (ICPDI 2022), pages 367-372
ISBN: 978-989-758-620-0
Copyright
c
2023 by SCITEPRESS Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)
367
model's validity and regression to determine the im-
pact of the pandemic shock.
2 THEORIZING MODERN
SLAVERY
Although the global living conditions have improved
due to economic, trade, and political globalization,
and the poverty rate has fallen sharply, many negative
effects have been brought (Chen, 2010). These influ-
ences are mainly on workers, including poor working
conditions and unsafe working environments
(Selwyn, 2019). With the importance of human rights
and the critical attitude of global supply chains, more
scholars are focusing on the term modern slavery to
help vulnerable groups affected by imbalance and in-
equality through laws, social supervision, and other
measures. Modern slavery has been explored more
frequently in political economy, history, society, and
law, owing to the International Labour Organization
(ILO) and the Walk Free Foundation (Benstead,
2020). It has become a vague concept of extreme ex-
ploitation of labour, by taking advantages of the vul-
nerabilities and weaknesses of employees, including
not only threats and violent behaviour, but also ma-
nipulating victims to claim that they are voluntary
(Machura, 2019).
As the definition of modern slavery is not clear,
scholars tried to analyze and define this term from a
historical perspective, and offer an understanding be-
tween ‘new’ and ‘old’ (Manzo, 2005). Manzo first
agreed on the Marxist theory of slavery as a special
form of exploitation of unpaid labour, and claimed the
fact that workers have lost their freedom and right to
choose due to violence, then conclude slavery as un-
paid forced labour (Manzo, 2005). At the same time,
by examining the international laws related to human
rights and slavery, he defined the new modern slavery
as control without considering autonomy, and con-
sisting of the use of violence and threats, making la-
bour their personal freedom and rights of choice, and
the forced unpaid work (Manzo, 2005). Manzo's def-
inition and theory have largely helped construct the
concept of modern slavery. The origins of modern
slavery are explained by political economy: the pro-
duction and trade of commodities involve the consid-
eration of labour costs in the global value chain,
which makes employers more inclined to choose
modern slavery; at the same time, the expansion of
global capitalism promotes unequal conditions of ex-
change, and it ultimately leads to the widespread ex-
istence of modern slavery (Manzo, 2005).
In forced labour, however, meagre salaries are
possible, but they should not be viewed as a normal
and liberal relationship between employers and em-
ployees. His study offers a restricted definition of
modern slavery. From a post-colonial perspective,
this definition is European-centric, focused solely on
human trafficking and child labour. His method
doesn't applicable to sweatshops and Marxist con-
cepts of surplus value, where individuals make a
modest wage and are exploited and poor. Therefore,
wages in the relationship between employers and em-
ployees should be emphasized.
Wages help distinguish between contract labour
and slavery in the 19th and 20th centuries (Jones,
2019). Symbolic wages that can't meet basic demands
and commoditized labour are indications of modern
slavery in transnational labour (Jones, 2019). Histor-
ically, workers after signing a labour contract work
according to the employer's guidelines within a cer-
tain contract duration, and the labour contract is
merely a tool to legalize exploitation, especially when
employees are not supported by their own country's
laws since they work overseas (Jones, 2019). Free-
dom and non-freedom, or slavery and non-slavery,
cannot be totally separated in history (Jones, 2019).
This is a continuum where employees have been en-
slaved.
Overall, modern slavery can be narrowly under-
stood as the exploitation of people whose personal
freedom is deprived within the supply chain from the
extraction of raw materials to the final customer to
provide services or products, or those who are forced
to work without payment (Stefan, 2015); it could also
be broadly understood as the process where people
are forced to work or whose human rights have been
violated (Lucas, 2020). However, current discussions
are usually limited to research on global supply
chains, such as human trafficking, differences in
working environment and wages caused by imbal-
ance and inequality between suppliers and transna-
tional companies, and sweatshops, while domestic
situations are ignored. In fact, modern slavery within
the countries is also common, especially in develop-
ing countries, such as the 996 working system of
high-tech companies in China, which is an inhumane
working system (12 hours a day, 6 days a week) and
affects many people’s health including sudden death
and cancer (Wang, 2020).
Due to the pandemic's increased demand, modern
slavery audits have been neglected (Trautrims, 2020).
Medical supply pressure, including masks and gloves,
placed the slavery audit on hold (Feinmann, 2020).
Moreover, cooperation partners and business institu-
tions in developed economies often choose to infringe
ICPDI 2022 - International Conference on Public Management, Digital Economy and Internet Technology
368
on the interests of vulnerable labourers (Trautrims,
2020). Pandemic implications of modern slavery in-
clude labour displacement, changes in migratory
worker rules, and an increase in homeless trafficking
(Lucas, 2020). In addition to the perspective of eco-
nomic politics, the difficulties posed by modern slav-
ery have been selectively or intentionally filtered out
relevant, and institutions and companies cannot re-
ceive any information (Lucas, 2020). These vulnera-
ble groups are hit most by the pandemic.
This paper argues that a broader modern slavery
system should be defined, which can be linked to the
global poverty chain, that is, any employer restricts
employees’ normal life activities, and employees’
wages are not proportional to the working content and
intensity of the work, and exploitation in an unhealthy
working environment. Under this alternative defini-
tion, the content of modern slavery can not only in-
clude the dark side brought about by the global value
chain, but also exposes the domestic problems of cap-
italist globalization. Based on this alternative under-
standing of modern slavery, a DID model has been
formulated to support our arguments.
3 HYPOTHESIS, EMPIRICAL
MODEL AND DATA
DESCRIPTION
Through the exploration of modern slavery, the indi-
cators related to wages are expected to provide a basis
for further quantitative analysis of the impact of the
pandemic on modern slavery. Thus, this paper pro-
poses the following two hypotheses:
Hypothesis 1: COVID-19 increases the gap be-
tween "directors, supervisors, executives" pay and
employee pay.
Hypothesis 2: COVID-19 has an adverse impact
on average employee salaries.
This paper uses the Difference-in-Difference ap-
proach to test the hypotheses above and examine the
impact of the COVID-19 outbreak as a quasi-natural
experiment on the extent of 'modern slavery' among
employees in selected areas of China. We use inter-
provincial data for selected areas of China and distin-
guish between areas severely affected by the outbreak
(treatment group) and areas not severely affected
(control group) based on the cumulative number of
confirmed cases.
According to Yang and Wang (Yang, 2021),
COVID-19 started in China on 20 January 2020, so
we used Shanghai as the treatment group because its
cumulative confirmed cases reached 1,500 by the end
of 2020. The control group included Guizhou, Jilin,
Gansu, Qinghai, Ningxia, and Hainan provinces as
they each had less than 200 cumulative confirmed
cases in 2020. The model specification is shown as
follows:
𝑴𝑺
𝒊𝒕
= 𝜶 + 𝜷𝑹𝒆𝒈𝒊𝒐𝒏
𝒕
× 𝑪𝒐𝒗𝒊𝒅
𝒊𝒕
+ 𝜸𝑹𝒆𝒈𝒊𝒐𝒏
𝒕
+𝜹𝑪𝒐𝒗𝒊𝒅
𝒊𝒕
+ 𝜽𝑪𝒐𝒏𝒕𝒓𝒐𝒍
𝒊𝒕
+ 𝝁
𝒊
+ 𝜺
𝒊𝒕
1
Equation (1) is a DID estimation model that takes into
account individual fixed effects. 𝑀𝑆

is a measure of
the degree of 'modern slavery', which consists of two
indicators: a) ratio of the compensation of directors,
supervisors and executives to the salaries of employ-
ees (abbreviated as S/E); b) average employee salary
(AvPay). 𝑅𝑒𝑔𝑖𝑜𝑛
× 𝐶𝑜𝑣𝑖𝑑

is an interaction term.
𝑅𝑒𝑔𝑖𝑜𝑛
is a dummy variable for the treatment group,
corresponding to a value of 1 for Shanghai and 0 for
other regions. 𝐶𝑜𝑣𝑖𝑑

is a dummy variable for the
treatment effect period, as COVID-19 broke out in
early 2020, and it takes the value of 1 after 2020 and
0 before. 𝐶𝑜𝑛𝑡𝑟𝑜𝑙

indicates control variables, in-
cluding a) Ownership, with state-owned enterprises
taking a value of 1 and private enterprises taking a
value of 0. Foreign enterprises and joint ventures are
not considered; b) Firm size, expressed as the natural
logarithm of the firm's total assets (LnAssets). 𝜇
is
an individual fixed effect and 𝜀

is a random error
term.
The data used in this paper are obtained from the
CSMAR database. The duration of the sample spans
from 2016 to 2020. There are 1080 sample observa-
tions of Shanghai and 680 observations for the other
six provinces, giving a total of 1760 observations. In
order to eliminate the dimensional relationship be-
tween variables and enhance comparability, the data
used in this paper have been standardized. To mitigate
the influence of outliers, variables are winsorized at
the 1% and 99% levels.
4 EMPIRICAL RESULTS
4.1 Descriptive Statistics
The objective of descriptive statistical analysis is to
reduce a set of complicated data to a few descriptive
values. It is a general description of the existing data
set that facilitates an understanding of the data's cen-
tral and dispersed patterns.
Politics-Finance Nexus Under Pandemic Shock Based on DID Model: From the Modern Slavery Perspective
369
Table 1: Descriptive Statistics.
(1) (2) (3) (4) (5)
VARIABLES N mean s
d
min max
Yea
r
1,760 2,018 1.349 2,016 2,020
SE 1,760 52.90 26.67 0 94.51
AvPa
y
1,760 69.75 25.61 9.573 100
Regions 1,760 1.614 0.487 1 2
LnAssets 1,760 22.42 1.584 18.29 29.92
Owne
r
1,760 0.433 0.496 0 1
Figure 1: Parallel Trend for S/E and AvPay before and after 2020.
Table 1 shows the descriptive statistical analysis
results of the sample, including sample size, variable
mean, standard deviation and maximum value. This
study is most concerned with the explained variables,
namely the ratio of executive and employee salaries
(SE) and the average employee salary (AvPay). All
the data have been standardized. It is not difficult to
find that both SE and AvPay have great range differ-
ences. Therefore, to avoid the possibility of outliers
affecting the analysis results, this study adopts winso-
rization. In terms of the degree of data dispersion,
both of the two key variables have large standard de-
viations, which to a certain extent reflects that the in-
dicators related to employee wages ("modern slav-
ery" proxies) have fluctuated greatly between re-
gions, and before and after the pandemic. In addition,
the specific cause behind this is analyzed in the fol-
lowing sections with the DID model to show implica-
tions.
4.2 Parallel Trend Test
A prerequisite assumption for DID is that the trend of
change in the treatment and control groups should be
(almost) the same prior to the event. To do this, we
further examined changes in trends for the 4 years be-
fore the COVID-19 outbreak in 2020 up to the final
year of the sample. The analysis results are reported
in Figure 1. It appears that the trends in the treatment
and control groups before the outbreak were almost
identical and not significantly different. After 2020,
the 'modern slavery' indicator for the treatment group
increased/decreased significantly compared to the
control group. The sample, therefore, passes the par-
allel trend test required for double difference estima-
tion.
4.3 Baseline Regression
This section examines the pandemic’s impact on
"modern slavery" in China. Table 2 presents the re-
sults of examining the pandemic shock using equation
(1) including firm-level control variables.
The pandemic shock (Region×Covid) has a positive
effect on the ratio of directors', supervisors', and ex-
ecutives' pay to employee salaries (S/E) at the 90%
confidence level, meaning it widens the gap between
directors’ and executives' pay and employee pay in
pandemic-affected regions (Shanghai in this study),
although the effect is marginal. Moreover, the pan-
demic reduces the average income of employees in
badly afflicted areas compared to those that survived
the big blow on the 95% confidence level.
ICPDI 2022 - International Conference on Public Management, Digital Economy and Internet Technology
370
Table 2: Baseline Regression Results.
(1) (2)
VARIABLES S/E AvPa
y
Re
g
ion×Covi
d
5.253* -5.730**
(3.106) (2.838)
Re
g
ion 4.822*** 23.61***
(1.400) (1.197)
Covi
d
-2.032 0.238
(2.543) (2.261)
Ownershi
p
14.16*** 7.762***
1.337
1.083
LnAssets -2.946*** 3.871***
0.487
0.293
Constant 109.9*** -34.10***
10.61
6.391
Observations 1,726 1,743
R-square
d
0.079 0.306
Robust standard errors in parentheses
*** p<0.01, ** p<0.05, * p<0.1
5 DISCUSSION AND
REMEDIATING MODERN
SLAVERY
This paper corroborates two assumptions using data
from limited regions, leading to two credible results:
first, at the 90% confidence level, the pandemic shock
(RegionCovid) has a positive effect on the ratio of di-
rectors', supervisors', and executives' pay to employee
salaries (S/E), implying that it widens the discrepancy
between the senior executives' pay and employee pay
in pandemic-affected regions (Shanghai in this
study), though the effect is marginal; second, on a
95% confidence level, the pandemic decreases the av-
erage salary of employees in seriously affected areas
compared to those who survived the big hit. These
findings account for business size and property rights.
This is consistent with the results of our preliminary
parallel trend test. This result supports our previous
statement that modern slavery may have increased
during the pandemic, with employees struggling to
meet some of their material and health needs, and that
there may have been an increase in the price of some
necessities in hard-hit areas, further reducing employ-
ees' disposable income and adding to the evidence of
modern slavery. Possible factors include the difficulty
of auditing and examining enterprise employment
systems during the outbreak and the economic impact
of the pandemic forcing enterprises to decrease em-
ployment costs. The execution of policies to address
the pandemic has been cautious in boosting wage in-
come growth, and there is insufficient autonomy in
wage distribution at the grassroots level (Chang,
2021), which confirms the conclusions of this work.
This study shows the negative consequences of global
value chains and globalization of capital on disadvan-
taged employees through the lens of wages, making
modern slavery visible in modern society in the con-
text of the pandemic crackdown and drawing atten-
tion to it. Our experiment has the benefit of having
adequate sample data. However, because COVID-19
has spread throughout the country and even around
the world, it is difficult to pinpoint locations that are
"not substantially afflicted by the pandemic." Be-
cause of the effective management of China's central
and local governments, several places (six provinces
in this study) were not severely impacted during the
outbreak's early stages, and they were chosen as the
control group. Future research should focus on more
provinces or even country comparisons and, if acces-
sible, evaluate home working conditions and em-
ployee mental health.
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