Globalization and Income Inequality: Comparative Analysis of 83
Countries
Yiming Li
1*,
Yue Xue
2
, Kaichen Song
3
and Silu Wang
4
1
business School, Jiangnan University, Wuxi 214122, China
2
Beijing-Dublin International College, Beijing University of Technology, Beijing, 100124, China
3
Milton International School, Qingdao, 266075, China
4
Seaview High School, Adelaide, SA5047, Australia
Keywords: Globalization, Income Inequality, Multiple Linear Regression.
Abstract:
The effect of globalization on income inequality is an issue of significant academic interest. On the one hand,
globalization is considered to promote global economic growth and social progress, while on the other, it is
blamed for growing income inequality and environmental degradation, causing social degeneration and
difficulty of competition. This paper aims to examine the impact of globalization on the inequality in rich/
middle/ poor economies. This study uses the least square method to establish a multiple linear regression
model, adding dummy variables. The results show that globalization indeed has varied impacts on the current
level of inequality around the world. The growth in the current globalization level will reduce the inequality
degree in rich/middle countries but rise the inequality degree in poor countries. We also find that there exists
an uneven impact of globalization on the inequality of rich countries and middle poor countries. For
middle/poor countries, this impact is even stronger.
1 INTRODUCTION
Globalization and its adverse effects are issuing that
human are commonly concern with. The regions of
the world are increasingly becoming a whole, with
unprecedented connection and dependence. No
country that wants to develop can ignore this trend of
globalization. However, Globalization is a global
trend and a state of gradual approach among all
countries, which is accompanied by a debate over
whether globalization is at the cost of inequality. An
obvious paradox of globalization is that the growing
global economic integration caused by globalization
leads more to social disintegration than social
integration. This article studies the relationship
between globalization and inequality through the
review of current research, using mathematical
modeling and data analysis.
2 LITERATURE REVIEW
This part will provide a brief overview of the debate
between inequality and globalization, which are two
main elements of this topic, namely the definitions of
inequality and globalization, the relationship and the
reasons why globalization causes inequality.
Although current studies on this issue cover a wide
variety of opinions, this paper will focus on three
major questions. To begin with, what are definitions
of globalization and inequality? Additionally, what is
the relationship between globalization and
inequality? Eventually, why globalization creates
inequality?
2.1 Definition of Globalization and
Inequality
Globalization refers to the global organic economic
whole of global economic activities beyond borders
through foreign trade, capital flow, technology
transfer, provision of services, interdependence and
interconnection, which is a political project that
operates under the increase of spatial connectivity,
driven by technological changes in transportation,
and produces new forms of national sovereignty that
promote more flexible and rapid rescheduling in
space (Ludden, 2012). It is explained that the reason
for globalization is dynamic and progressive vision of
capitalism’s worldwide expansion (Munck, 2011).
Economic globalization is an important trend of the
Li, Y., Xue, Y., Song, K. and Wang, S.
Globalization and Income Inequality: Comparative Analysis of 83 Countries.
DOI: 10.5220/0011186400003440
In Proceedings of the International Conference on Big Data Economy and Digital Management (BDEDM 2022), pages 471-482
ISBN: 978-989-758-593-7
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
471
world economic development in the contemporary
world.
In addition, because the concept of common
human beings is based on the acceptance of inherent
equality in mankind, inequality is a violation of
human rights and prevents billions of people from
realizing the comprehensive development of human
beings (Khondker, 2017).
It is depicted three kinds of inequalities that may
stand in our way of fully functioning human Being,
which interact with each other, namely vital
inequality, existential inequality and resource
inequality, including health, autonomy, income and
many items (Firebaugh, 2003). Khondker illustrates
that innequalities are socially generated and
maintained by systematic arrangements and
processes (Khondker, 2017). There appears to be a
consensus about the trends in inequality. According
to IMF in 2007, Income disparities increased mainly
in middle-to middle-income countries, while
decreased in low-income countries. This reflects the
growing differentiation between the countries out of
globalization, instead of growing integration
(Mills,
2009).
2.2 The Relationship between
Globalization and Inequality
Globalization is increasingly linked to inequality, but
with often divergent and polarized result.
Some researchers show that globalization
accentuates inequality both within and between
countries (Firebaugh, 2013), namely globalization
could lead to the decentralization of increased
personal income around the world, while others
arguing that globalization blurs the restrictions of
national boundaries, promotes economic integration,
improves the income level of the poor population, and
converges the wealth gap and narrowing the
inequality gap (Alderson, Nielsen, 2002). By
studying in a United Nations University study that
surveyed seventy-three countries in 2001, Munck
concludes that inequality among and within countries
has increased with globalization overall
(Munck,
2011)
. More importantly, Global polarization among
countries continues.
Globalization does not mean that every country
can benefit from it, it depends on international
institutions and rules (Alderson, Nielsen, 2002).
Under the current international system, the developed
and developing countries, as two different types of
countries, have the different impact of globalization.
Western developed countries are the dominant part of
economic globalization and can have more
advantages and gain more benefits in the process of
economic globalization
(Munck, 2011). Developed
countries have mastered the world's most advanced
productivity and new science and technology and are
in a dominant position in the global division of labor
system. Multinational corporations in developed
countries are an important promoter of economic
globalization and the main carrier to realize the flow
of global production factors and the optimal
allocation of resources (Firebaugh, 2003).
The internationally accepted system is dominated
by the developed countries. The international rules
largely reflect the characteristics of its domestic rules,
and there is no serious conflict with the foreign rules.
In short, globalization contributes to economic
growth in developed countries and reduces inequality.
In comparison, in terms of developing countries,
they are in a disadvantageous position in the current
process of economic globalization. As developed
countries are the leaders and promoters of economic
globalization and hold the initiative, most of the
existing international economic rules are formulated
and dominated by the developed countries (Wei,
2000). Meanwhile, Khondker emphasizes that due to
the unstable economic foundation of developing
countries, incomplete market development, relatively
weak economic structure, lack of funds and backward
technology, it is easy to suffer from the impact of
economic globalization and produce domestic
economic fluctuations (Khondker, 2017). In addition,
it is proposed that financial globalization brings
financial risks and economic impact that cannot be
ignored, while promoting the economic growth of
developing countries (Ludden, 2012).
2.3 The Reason Why Globalization
Causes Inequality
Mills and Blossfeld define Globalization as four
interrelated structural shifts that roughly occurred
since the 1980s of internationalization of markets and
declining importance of borders for economic
transactions, tougher tax competition between
countries, rising worldwide interconnectedness
through new Information and Communication
Technologies (ICTs), and the growing relevance and
volatility of markets, which may lead to inequality
(Mills, 2009, Wei, 2000).Furthermore, Mills et al. use
a flow chart to illustrate the process where
globalization affects inequality. That is, the impact of
globalization varies on the developed and developing
countries, which is consistent with Munck findings
(Munck, 2011, Mills, 2009).
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3 EXPLORATORY DATA
ANALYSIS
3.1 Globalization
Figure 1: Globalization in 2000.
Figure 2: Change in Globalization from 2000 to 2015.
Figure 1 shows the globalization in 2000, the darker
blue in the graph illustrates that country was more
globalized that year. The average globalization index
of these countries was 0.450. There are some outliers,
such as Belgium and Ireland, with globalization of
1.949 and 1.581 respectively. There are also some
countries that were basically not globalized, such as
Bhutan and Rwanda, both are quite small countries.
As shown in figure 2, orange indicates the level of
decreasing in globalization and blue indicates
Globalization and Income Inequality: Comparative Analysis of 83 Countries
473
increasing. Over this period, 68 out of 83 countries
had rising globalization. There are several outliers,
such as Malaysia, Yemen and Ireland. Some
significant decreasing trends could be seen in their
globalization level.
3.2 Income Inequality
Figure 3: Gini Index in 2000.
To explore income inequality, Gini coefficient was
adopted to indicates the inequality level. In figure 3,
the darker red illustrates the higher Gini index. In
2000, Gini index in the southern hemisphere is
generally higher than that in the northern hemisphere,
especially in South America, every country
researched had a Gini of over 50. Brazil with Gini of
58.41 at that time, Colombia was 58.68 and so forth.
The country with highest Gini was Haiti, with Gini of
59.48.
Figure 4: Change in Gini from 2000 to 2015.
During the period of 15 years, as shown in figure 4, the shade of the color represents the level of change
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in globalization over the period from 2000 to 2015,
green represents decreasing in Gini and red represents
increasing. Overall, the average Gini decreased by
1.49 and 50 out of 83 countries had falling inequality.
It is worth mentioning that Gini of countries in South
America all decreased and there are some outliers:
Burkina Faso -14.64, Gambia -12.60, Indonesia
+10.00, Benin +9.18, Ethiopia +9.09.
Figure 5: Gini index in 2015 of countries in each continent.
Figure 5 shows countries (country code) in
different continents, with their Gini coefficient in
2015. Overall, European countries have the lowest
Gini coefficient. Some countries in southern Africa
had very high Gini coefficients, such as South Africa,
Zambia. Despite the decreasing trends, countries in
South America still had relatively high Gini
coefficients.
3.3 Effects of Globalization
To explore the effects of globalization on countries
with different levels of development. Countries
selected are divided into three groups, rich, middling
and poor, based on their Human Development Index.
3.3.1 Effects of Globalization on Average
GDP
Figure 6: Rich Countries.
Globalization and Income Inequality: Comparative Analysis of 83 Countries
475
Figure 7: Middling Countries.
Figure 8: Poor Countries.
For rich countries (figure 6), the trend line shows
a negative slope, that indicates a rise in globalization
may lead to a smaller rise in average GDP for these
rich countries. There are some outliers, for example,
globalization in Luxembourg slightly decreased, but
its average GDP increased quite a lot. This illustrates
there are many other factors affecting average GDP
that need to be considered. For middling countries
(figure 7), the trend line also shows a negative slope
with an even lower R-Squared value. For poor
countries (figure 8), the trend line shows a negative
slope as well.
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3.3.2 Effects of Globalization on Inequality
Figure 9: Rich Countries.
Figure 10: Middling Countries.
Globalization and Income Inequality: Comparative Analysis of 83 Countries
477
Figure 11: Poor Countries.
For rich countries (figure 9), the Gini coefficient
of 16 out of 26 countries increased. The trend line
shows a slightly negative slope, that indicates a rise
in globalization may lead to a fall in inequality for
these rich countries. There are some outliers, for
example, as discussed previously, globalization in
Ireland decreased a lot, but the Gini coefficient also
decreased. For middling countries (figure 10), the
Gini coefficient of 34 out of 46 countries decreased.
The trend line also shows a negative slope. For poor
countries (figure 11), the Gini coefficient of 5
countries increased and the other 6 countries
decreased. The trend line shows a positive slope, that
indicates a rise in globalization may lead to a rise in
inequality for these poor countries. It is worth
mentioning that the R-squared values in all three
cases are small, that means change in globalization is
not explaining that much in the variation of change in
Gini and this will be discussed in later part.
4 MODEL BUILDING
4.1 Data Analysis
4.1.1 Modeling and Research Methods
In order to study the impact of the degree of
globalization on the degree of inequality in different
countries, we selected 83 countries which spread
across all continents. The variable globalization is
measured by adding import and export as a
percentage of GDP. We use the Gini coefficient to
measure the variable of inequality. And we add
income and inflation as control variables in our
model. We select the data of different indicators in
2000 and 2015 and get the change value of different
indicators between 2000-2015 as variables. Table 1
gives an insight into the definitions and sources of all
variables.
In order to better study the situation of countries
with different levels of development, we divided the
83 sample countries into three categories: rich
countries, middle countries and poor countries
according to their HDI index.
So, the regression model in algebraic form is as
follows:
()
()()
()()
()()
()
01 0 0 0
00
00
00
0
*
**
**
*
INQ GL Y INF DUM RICH
DUM MIDDLE DUM RICH GL
D
UM MIDDLE GL DUM RICH Y
D
UM MIDDLE Y DUM RICH INF
DUM MIDDLE INF
ββ β β β
ββ
ββ
ββ
βε
=+Δ+Δ+Δ + =
+= + =Δ
+= Δ+ =Δ
+= Δ+ =Δ
+= Δ+
The dataset studied in this project consists of 83
observations and 9 variables as follows:
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478
Table 1. Data dictionary.
Variable Notation Measurement Data source
Income inequality INQ Gini coefficient WDI,World Bank
Globalization GL |Share of import|+Share of export www.ggdc.net/pwt
Income Y Ln(GDP per capita) www.ggdc.net/pwt
Inflation INF GDP deflator: linked series (annual %) WDI,World Bank
Three categories
Divides all countries into three categories (rich; middle; poor) depend on HDI index.
Rich countries: HDI0.826
Median countries: HDI ≥ 0.5
Poo
r
countries: HDI < 0.5
4.1.2 Result Analysis
Table 2. Estimation Results.
Model without DUM Model with DUM
All countries Rich countries Middle countries Poor countries
constant
-4.34
(4.53)
2.55
(24.07).
13.17
(19.82)**
-39.41
(17.80)*
GL
-0.36
(3.11)
-1.56
(13.39)*
-5.9162
(13.77)*
25.72
(12.66)*
Y
0.34
(0.52)
-0.25
(3.06).
-1.80
(2.74)*
4.98
(2.54).
INF
0.001
(0.03)
-0.22
(0.36)*
-0.02
(0.32).
0.52
(0.32)
R-Squared 0.006 0.18
Countries 83 26 46 11
Note: The standard error of each coefficient is in
brackets; the number above the brackets is the
coefficienof the independent variable.
Significant codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05
‘.’ 0.1 ‘ ’ 1.
By comparing the second and last three columns
of the table2, after adding dummy variable and
intersection, the significance of the variables have
been greatly improved, and our model fit better.
It is interesting to observe that the coefficient of
GL index, indicator for change in globalization, is
negative in all countries model, and in rich countries
and middle countries, but positive in poor countries.
The GL index is significant in each country. This
result shows that the impact of the degree of
globalization on the degree of inequality varies
among countries with different development levels.
The increase of globalization will cause the inequality
of poor countries to increase, but it will also cause the
inequality of rich countries and middle countries to
decrease.
Another interesting result to observe is the same
trends of the impact of change in capita GDP and
change in inflation on the change in inequality. For
poor countries, per capita GDP and inflation are in the
same direction as inequality. For rich countries and
middle countries, per capita GDP and inflation and
inequality change in the opposite direction.
4.2 Model Check
4.2.1 Regression Diagnostics
In model building we have chosen linear regression
model to estimate the relationship between change in
gini index which interprets the change in inequality (
INQ) and other variables, in the model of linear
regression, checking whether it conforms to the
GaussMarkov assumptions is the preference.
In the early stage of building the model, we use
the summary function to repeatedly filter out three
explanatory variables which are change in
Globalization and Income Inequality: Comparative Analysis of 83 Countries
479
globalization (GL), change in income (Y) and change
in inflation (INF). And we decided to add dummy
variables in order to divide rich, middle and poor
countries and interaction transformations. From
checking the standardized residual plot, Obviously,
the Residuals vs Fitted plot (Figure.12) are basically
independent of the predicted values, this shows that
the linear hypothesis is rational. For checking the
normal distribution of errors, by looking through the
Q-Q plot (Figure.13) and histogram (Figure.14), we
can easily find that, most of observations are landed
close to the straight line except #53 and #80. Even
more clear in the histogram of Distribution of Errors,
the Normal Curve is almost coincided with the
standard normality curve - Kernel Density Curve.
Therefore, the assumption of normality is proved.
Figure 12: Residuals vs Fitted plot.
Figure 13: Q-Q plot
Figure 14: Histogram of Distribution of Errors.
Because of each data point is one unique country
in the world, the assumption of independence of
errors is reasonable. From observation of Scale -
Location plot (Figure.15) in order to check the
homoscedasticity assumption, the points are not
distributed around the horizontal line smoothly
concentrated in the middle to the left, this indicates
mild heteroskedasticity.
Figure 15 Scale-Location plot.
Figure 16: Cook’s distance.
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Figure 17: Index Plot of Hat Values.
4.2.2 Outlier Analysis
And Cook’s distance plot (Figure.16) and Index Plot
of Hat Values plot (Figure.17) show #75 data
observation which is Yemen (poor countries) has the
largest cooks distance and hat values, there is a big
rise in Yemen’s inflation rate from 2000 to 2015
(22.924), it has the highest inflation rate among Arab
countries. According to common sense, inflation is
mostly caused by economic development, but
Yemen's economic development is so backward that
even food can not meet national needs. According to
the statistics, the Yemen’s government faced deficit
valued about 10 billion dollars. Since inflation will
lead to changes in income inequality to a great extent,
we may overestimate the impact of globalization on
income inequality.
From Q-Q plot (Figure.13) and the Scale-
Location plot (Figure.15), #80 which is Burkina Faso,
one of the least developed countries in the world and
a major exporter of migrant workers from
neighboring African countries. Economically, the
country is based on agriculture and animal husbandry,
accounting for nearly 80% of the country's labor
force. The country is short of resources and is located
on the edge of the desert with less arable land, we can
easily see the change of income inequality is the
highest among all the countries. Additionally, the
education in Burkina Faso is very weak, the literacy
rate is only 36%, as a result, the gap between the
skilled and unskilled labor is wide, this might be a
reason why income inequality is such serious.
Furthermore, the neonatal mortality rate is 60.9%,
and the poor with a daily income of less than US $1.9
account for 47.3% of the national population. This
may possibly cause overestimation the impact of
globalization on inequality.
However, we chose to keep the outliers. Firstly,
we are exploring the influence of globalization on
income inequality globally, each country is one
unique part in the globe. Moreover, the model after
deleting outliers, some explanatory variables are not
significant. The model with all the countries can
better reflect the objective situation.
5 DISCUSSION
5.1 Key Findings
We find out that globalization indeed has varied
impacts on the current level of inequality around the
world. But these impacts vary from different
countries: the growth in the current globalization
level will reduce the inequality degree in rich and
middle countries and rise the inequality degree in
poor countries. For poor countries, rise in per capita
GDP and inflation will causes increasing in
inequality. For rich countries and middle countries,
rise in per capita GDP and inflation will lead to
decreasing in inequality.
5.2 Theoretical and Empirical
Implications
Our research provides some useful findings for those
curious about the relationship between globalization
and inequality and allows people to make in-depth
research on this basis. It also reveals the limitations
of some indicators, such as GINI index.
And by studying the relationship between
globalization and inequality, a more powerful,
accurate and scientific basis for the government's
macro decision-making could be provided. The
government may be able to formulate policies based
on national conditions. This would be one of the
empirical implications.
5.3 Limitation
The obvious one would be the insufficient data size,
in other words, only 87 countries were selected due
to the incomplete data and limited time, but there are
totally 197 countries in the world. Another would be,
there are some missing values in data set, for
example, it’s hard to find all the type of data in all
countries such as HDI in small poor countries.
Also, Gini index shortcoming is one of the
limitations, they do not consider, for example,
whether income inequality changes because of the
rich becoming richer, the poor becoming poorer (or
Globalization and Income Inequality: Comparative Analysis of 83 Countries
481
both).
Some other limitations could be that it might be
necessary to explore non-linear relationships between
globalization and income inequality; and there could
be other measures for income inequality. As well as
we might try other ways of grouping, such as ‘divided
countries by continent’.
6 CONCLUSIONS
In conclusion, this study has evaluated how
globalization has contributed to inequality changes in
83 countries from 2000 to 2015. The results show that
globalization indeed has varied impacts on the current
level of inequality around the world. The growth in
the current globalization level will reduce the
inequality degree in rich/middle countries but rise the
inequality degree in poor countries. We also find that
there exists uneven impact of globalization on the
inequality of rich countries and middle/poor
countries. For middle/poor countries, this impact is
even stronger.
REFERENCES
Alderson, A. S. & F. Nielsen. Globalization and the great
U-turn: income inequality in 16 OECD
countries[J/OL].
https://www.jstor.org/stable/10.1086/341329, 2002.
Firebaugh, G. The New Geography of Global Income
Inequality[M]. Cambridge: Harvard University Press,
2003.
Khondker, H. H. Globalization and inequality[J/OL].
https://journals-sagepub-
com.ucd.idm.oclc.org/doi/10.1177/026858091668745
8, 2017.
Ludden, D. Imperial Modernity: history and global inequity
in rising Asia[J/OL]. https://www.jstor.org/stable/
41507191, 2012.
Mills, M. Globalization and Inequality. [J/OL].
https://www.jstor.org/stable/25548302, 2009.
Munck, R. Globalization and social exclusion: A
transformationalist perspective[M]. Bloomfield:
Kumarian Press, 2011.
Wei, Y. D. Regional development in China: states,
globalization and inequality [DB/OL]. https://www-
taylorfrancis-
com.ucd.idm.oclc.org/books/mono/10.4324/97802031
84660/regional-development-china-yehua-dennis-wei,
2000.
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