GDP GROWTH ON MORTALITY RATE IN 2000 AND 2014
ACROSS THE WORLD
Yuxuan Tang
Jianing Wang
EC204 Empirical Economics II, Fall 2021
ABSTRACT
Journal of Population of Economics stated “For the period 1800–2000, an increase in
GDP by 1% decreased mortality by 0.7%. This overall relationship is due to a strong
counter-cyclical relationship in the nineteenth century, which disappeared in the twentieth
century” (Svensson, M., Krüger, 2010). Based on the WorldBankData2years panel data in the
year of 2000 and 2014, this research mainly focused on the effects of GDP growth on mortality
rate, with different variables involved. The results showed a statistically insignificant relationship
between GDP growth and mortality rate. And 43.39% of the variation of the mortality rate can be
explained by GDP growth within the country when holding country level and time fixed effect.
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I. INTRODUCTION
This research aims to discover if GDP per capita affects mortality rate. Past research
shows that GDP per capita is inversely related to mortality rate during 1901-2000 in the United
States (M Harvey Brenner, 2005). In this article, Thomas McKeown demonstrated that
economic development is of fundamental importance to the decline of classic infectious and
childhood disease. With rapid economic growth in the 20th century, more people tend to have
vaccinations and are less vulnerable to infectious and childhood disease, which leads to a
decline in mortality rate. As a result, an inverse relationship between GDP per capita and
mortality rate worldwide was expected at the beginning.
After the hypothesis was conducted, we described and utilized a panel data across the
world in 2000 and 2014, and regressed GDP per capita and mortality rate with some variables
including improved sanitation facilities of po, co2 emissions metric tons per capita, improved
water, urban population growth annual spurb, prevalence of hiv total of population,
immunization measles of children age and others are tested with GDP per capita to find out how
it affects mortality rate. Then, we compiled our findings and found there is a statistically
insignificant relationship between the two main variables. Therefore, we use interactive variables
to test if the effects of GDP growth per capita on mortality rate depends on other variables listed
above. Then we created a graph that involves a linear regression and scatter plot were used to
make further comparison of fitness. Also, with the quadratic model being graphed, the turning
point is at 0.164310932, and after this turning point, the relationship between GDP growth and
mortality rate becomes positive contrary to our expectations.
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2. Literature Review
Many researchers had done studies relative to the effects of GDP growth on mortality rate
for years, and the reasons could be complicated. Mikael Svensson and Niclas A. Kruger used
wavelet methods to analyze the relationship between mortality rate and economic growth from
1800 to 2000 in Sweden. (Mikael Svensson and Niclas A. Krüger, 2012) According to the article,
it was found that in the early period of the 19th century, people were more vulnerable to disease
and health problems when the economy went downward. As a result, the mortality rate was
higher when the economy was poor. However, when we entered the 20th century, the augment
changed. People were more likely to stress out due to reasons including work stress, family
pressure due to unemployment, which leads to higher death rate. Furthermore, the research found
out some more specific factors that associate mortality rate with GDP growth, including stroke,
accident, suicide, cancer, and infection.
More findings were found by M Harvey Brenner. Using the time series model, with
variables of “ long-term effects of economic growth over 0–11 years,” “long-term effects of
unemployment over 0–11 years,” and “interactive effect of unemployment and GDP per capita
over 0–11 years”, it was found out that for a short period, increased mortality rate was due to
higher GDP growth, because of better technology with longer working period and speed.
However, for a longer period, GDP growth leads to the decline of mortality rate.(M Harvey
Brenner, 2005) More evidence was found by Brenner and Haines to prove this theory. According
to the article written by Haines in 2003, it was found that the United States experienced a rapid
economic growth but rising mortality rate between 1830 and 1860 due to deterioration of the
biological standard of living (Hanis 2003). During this period, the fast urban growth, mass
migration from abroad, changes in transportation infrastructure, rapid commercialization,
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worsened the mortality environment which caused the mortality rate to rise. For a longer period,
Varvarigos constructed a model of a growing economy with pollution and testified that economic
growth and mortality rates are negatively related due to the difference of environment-related
structural parameters, such as lower p (units of pollution per output generating), which improves
the environmental conditions and reduces mortality rate (Varvarigos, 2013).
3. Data Description
Table 1
This research used panel data at country level worldwidely in the year of 2000 and 2014
from world bank data to analyze the relationship between GDP growth and mortality rate. A total
of 369 observations are collected from world bank data with 6 variables, including sanitation
facilities of po, co2 emissions metric tons per capita, improved water, urban population growth
annual spurb, prevalence of hiv total of population, and immunization measles of children age.
These 6 variables, together the two main variables are tested to find out the relationship between
GDP growth and mortality rate. The six variables are chosen because we realized that the higher
GDP a country has, the more conscious people have of their health. And as a result, more people
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are getting vaccinated and actions or policies are taken for the sake of citizens’ health, which
leads to the decline of mortality rate.
The data of this research all come from world bank data, and two tables were created by
different years to describe the mean and standard deviation of the variables. Out of all the
variables, improved water has the highest mean value of 83.2% and 89.0 % in 2000 and 2014,
whereas urban population growth annual spurb have the lowest mean values around 2% in both
years.
Table 2
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4. Model:
After we collected the data, we constructed a model of mortality rate as a function of GDP
growth at the country level of time fixed effect.
Within this fixed effect model, by holding year t and country i at constant level, mortrate
represents mortality rate, the continuous dependent variable in this equation, in year t and
country i. The main independent variable of this equation is gdpgrowth, which is continuous in
country i and year t, and is predicted to have a positive relationship with the main variable
mortality rate. The model is predicted as a linear regression as shown in the scatterplot graph. As
we used a time fixed effect model, the 6 other variables with i are absorbed into the ai variable
which change based on different countries. According to graphs shown below, most countries
with different mortality rates are scattered between 0% to 20% growth of GDP in both 2000 and
2014.
Also, in this model, the panel data at country level analyzes data from both year of 2000
and year of 2014 by using the dummy variable d00t and u is the error term. Graph1 represents
the worldwide GDP growth rate and mortality rate in 2000, and graph 2 displays GDP growth
rate and mortality rate in both the years of 2000 and 2014. However, by looking at the two
graphs below, we can see there is no inverse relationship between the GDP growth rate and
mortality rate, but instead a positive relationship. However, we cannot conclude that there is a
definitely positive relationship between GDP growth rate and mortality rate, as the dots mostly
concentrated in the middle of the graph rather than displaying a linear relationship. And there are
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countries including Liberia, Equatorial Guinea , and Timor-Leste which are more than 3 standard
deviations away from the mean fall into the category of becoming outliers of the group.
Therefore, we used some interactive variables to test if there is a non linear relationship between
the two main variables. (shown in table-3)
Graph1: Scatterplot of Worldwide GDP Growth Rate and Mortality Rate in 2000.
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Graph 2: Two-way Scatterplot of Worldwide GDP Growth and Mortality rate in 2000
and 2014.
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5.RESULTS
Table 3: Regression Results
Looking at table 3, the coefficient of GDP growth rate has a statistically insignificant
relationship with mortality rate, and we can not conclude that GDP growth rate has a linear
relationship with mortality rate. Therefore, we added 6 more variables as shown in Table 3 that
are relative to mortality rate to test their relationships. The results in Model 2 show that the
coefficient of improved sanitation facility sanitation and CO2 emissions are statistically
insignificant with mortality rate. And the coefficient of Immunization measles of children's age,
prevalence of HIV total of population, and improved water are statistically significant at 1%
level with mortality rate, with P-value equals to 0. Urban population growth annual spurb is
statistically significant at 5% level on the country level, with P-value equals to 0.047. Therefore,
we removed these two insignificant variables and ran the regression (Model 3). Since it’s a panel
data, in order to make sure different countries have the same coefficient effect, we uses country
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level fixed effects, as we can see in Model 4, the coefficient of GDP growth rate still has a
statistically insignificant relationship with mortality rate, even after we controlling for the effects
of time (Model 5).
Furthermore with the data, we decided to add interactive variables of immunization and
GDP growth rate in Model 6, within in a country and after controlling for the effects of year,
with variable we testified significance before , the data shows that the coefficient of GDP growth
rate still has a statistically significant relationship with mortality rate at 1% level because the
effect of GDP growth on mortality rate depends on the percentage of Kids Immunization (12-13
months), and 77.5% of the variable of data in mortality rate explained by GDP growth rate
within country when the effects of time controlled.
In Model 7, we tested if the relationship of GDP growth rate to mortality rate depends on
other 3 significance variables. The results showed that the other 3 coefficients of interactive
variables are statistically insignificant which does not affect the relationship of GDP growth rate
to mortality rate. The results shown are not as consistent with our hypothesis, as immunization is
the factor that would affect the relationship between the two main variables.
6. Conclusions
Based on our findings on the model, GDP growth does not have a statistically significant
relationship with the mortality rate. However, when holding countries and time fixed, and we
added the interactive variable immunization, the results showed a statistically significant
relationship between GDP growth rate and mortality rate. As a result, we can conclude that GDP
growth rate and mortality rate depends on a third variable of immunization measles of children's
age. And our findings do not completely support the hypothesis that there is a linear relationship
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between GDP growth rate and mortality rate. As shown in graph 1 and graph 2, the countries are
scattered altogether in a group instead of displaying a linear relationship. While the independent
variable being statistically insignificant, the causes can be complicated due to many other
factors.
7. Limitations and future results
For further research in the future, we would apply more different variables which could
contribute to the change of the dependent variable, including import and export on the country
level. Also, besides testing the interactive variables, maybe we would use the log and square of
the independent variable after we collected the data. And more research will be done not only on
a country level, but within a country as well. There are some limitations in this research,
including not enough variables that are relative to the dependent variable. More variables will be
applied in the future research.
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REFERENCES CITED
● Svensson, M., Krüger, N.A. Mortality and economic fluctuations. J Popul Econ 25,
1215–1235 (2012). https://doi.org/10.1007/s00148-010-0342-8
● M Harvey Brenner, “Commentary: Economic growth is the basis of mortality rate decline
in the 20th century—experience of the United States 1901–2000”, International Journal
of Epidemiology, Volume 34, Issue 6, December 2005, Pages 1214–1221. Retrieved
from https://doi.org/10.1093/ije/dyi146
● Svensson, Mikael, and Niclas A. Krüger. “Mortality and Economic Fluctuations:
Evidence from Wavelet Analysis for Sweden 1800—2000.” Journal of Population
Economics, vol. 25, no. 4, Springer, 2012, pp. 1215–35,
http://www.jstor.org/stable/23354789.
● M Harvey Brenner, Commentary: Economic growth is the basis of mortality rate decline
in the 20th century—experience of the United States 1901–2000, International Journal of
Epidemiology, Volume 34, Issue 6, December 2005, Pages 1214–1221,
https://doi-org.ezproxy.bu.edu/10.1093/ije/dyi146
● Varvarigos. (2013). ENVIRONMENTAL DYNAMICS AND THE LINKS BETWEEN
GROWTH, VOLATILITY AND MORTALITY. Bulletin of Economic Research, 65(4),
314–331. https://doi.org/10.1111/j.1467-8586.2011.00410.x
● Haines, Craig, L. A., & Weiss, T. (2003). The Short and the Dead: Nutrition, Mortality,
and the “Antebellum Puzzle” in the United States. The Journal of Economic History,
63(2), 382–413. https://doi.org/10.1017/S0022050703001839
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APPENDIX A
DO FILE
clear all
set more off
capture log close
cd/Users/sarah
use "/Users/sarah/Downloads/WorldBankData2years (7).dta"
sum mortrate gdpgrowth immunizationmeaslesofchildrenage prevalenceofhivtotalofpopulation
improvedsanitationfacilitiesofpo co2emissionsmetrictonspercapitae
urbanpopulationgrowthannualspurb improvedwater
*Graph 2
bysort year: eststo: estpost sum mortrate gdpgrowth immunizationmeaslesofchildrenage
prevalenceofhivtotalofpopulation improvedsanitationfacilitiesofpo
co2emissionsmetrictonspercapitae urbanpopulationgrowthannualspurb improvedwater
esttab using summary_stats_table.rtf, cells((mean(fmt(%10.2f)) sd(fmt(%10.2f)))) label
title(Summary Statistics) nonumber nomtitle replace
label var mortrate "Mortality Rate"
label var gdpgrowth "GDP Growth"
label var immunizationmeaslesofchildrenage "% of Kids Immunization (12-13 months)"
label var prevalenceofhivtotalofpopulation "HIV population"
label var improvedsanitationfacilitiesofpo "improved sanitation facility"
label var co2emissionsmetrictonspercapitae "CO2 emissions"
label var urbanpopulationgrowthannualspurb "Urban Population Growth"
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label var improvedwater "Imporve Water"
#delimit ;
esttab using SummaryStats1.doc, main(mean) aux(sd)
nonotes rtf replace label varwidth(30) modelwidth(9) b(%9.2f) nonumbers
mtitle("2000" "2014")
title("Table 1: Summary Statistics by Year")
addnotes("NOTE: Table reports the mean and standard deviation in 2000 and 2014. 'The
mean' is above 'standard deviation' for each variable")
;
#delimit cr
*Graphing in 2000 and 2014
twoway (lfitci mortrate gdpgrowth )(scatter mortrate gdpgrowth), ytitle(Mortality Rate)
*title(Two-way Scatterplot of GDP Growth Rate and Mortality Rate)
*graph save "Graph" "/Users/sarah/Desktop/Two-way Scatterplot 2000 and 2014.gph"
*Graphing in 2000
twoway (scatter mortrate gdpgrowth if year == 2000, mlabel(countryname)) (lfit mortrate
gdpgrowth)
*ytitle(Mortality Rate) xtitle(GDP Growth)
*title(Two-way Scatterplot of GDP Growth and Mortality Rate)
*graph save "Graph" "/Users/sarah/Desktop/Scatterplot 2000.gph"
*Graph 3
*regress X and Y
reg mortrate gdpgrowth, r
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outreg2 using ResearchRegression.doc, replace label title ("Regression Results") adjr2 addtext
(Country FE, NO, YEAR FE, NO)
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, NO, YEAR FE, No)
*regression on full model
reg mortrate gdpgrowth immunizationmeaslesofchildrenage prevalenceofhivtotalofpopulation
improvedsanitationfacilitiesofpo co2emissionsmetrictonspercapitae
urbanpopulationgrowthannualspurb improvedwater,r
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, NO, YEAR FE, No)
*running an F test on the insignificant variables improvedsanitationfacilitiesofpo
co2emissionsmetrictonspercapitae
test gdpgrowth improvedsanitationfacilitiesofpo co2emissionsmetrictonspercapitae
*The F test shows these variables are jointly insignificance, so we kick these variable out
*To see if gdpgrowth is jointly significance with other variable, let's pick
immunizationmeaslesofchildrenage
test gdpgrowth immunizationmeaslesofchildrenage
*regression on full model
reg mortrate gdpgrowth immunizationmeaslesofchildrenage prevalenceofhivtotalofpopulation
urbanpopulationgrowthannualspurb improvedwater,r
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, NO, YEAR FE, No)
*Regression on Fixed Effect
xtset countrynum year
xtreg mortrate gdpgrowth, r fe
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, YES, YEAR FE, No)
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xtreg mortrate i.year gdpgrowth, r fe
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, YES, YEAR FE, YES)
xtreg mortrate i.year c.gdpgrowth##c.immunizationmeaslesofchildrenage
prevalenceofhivtotalofpopulation urbanpopulationgrowthannualspurb improvedwater,r fe
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, YES, YEAR FE, YES)
xtreg mortrate i.year immunizationmeaslesofchildrenage
c.gdpgrowth##c.prevalenceofhivtotalofpopulation urbanpopulationgrowthannualspurb
improvedwater,r fe
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, YES, YEAR FE, YES)
xtreg mortrate i.year immunizationmeaslesofchildrenage prevalenceofhivtotalofpopulation
c.gdpgrowth##c.urbanpopulationgrowthannualspurb improvedwater,r fe
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, YES, YEAR FE, YES)
xtreg mortrate i.year immunizationmeaslesofchildrenage prevalenceofhivtotalofpopulation
urbanpopulationgrowthannualspurb c.gdpgrowth##c.improvedwater,r fe
outreg2 using ResearchRegressionTable.doc, adjr2 addtext (Country FE, YES, YEAR FE, YES)
log close
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