Drivers of Economy
Gross
Domestic Product (GDP) is an important indicator to measure the wealth of a
country.
The year
over year percentage change of a country’s GDP helps in understanding several
critical social and financial aspects such as unemployment levels.
GDP
in simple terms can be defined as the sum of all the income generated in a year
or what everyone has spent.
This
paper will try to analyse the relationships and interdependencies among several
variables, which drive the economy, keeping GDP as the dependent variable.
- Historical GDP figures (GDP vs Growth Rate)
To start with its important to see the state of the current global economy, by looking at the historical GDP figures.
By plotting the GDP figures from 1990 to 2015 for the top 25 biggest
economies on an area chart, it is evident how Unites States dwarfs other countries in terms
of the sheer size of the economy. Other visible high peaks knowingly include
Japan, China, United Kingdom and Germany.
But the measure of the compounded annual growth rate (CAGR) between 2000
and 2015 brings forth an interesting picture. CAGR marked by the bar chart on
the second axis showcases the fastest developing major economies. The BRIC
nations along with Indonesia, Saudi Arabia and Nigeria are on the top half of
the fastest growing economies in the last fifteen years. If these countries can
sustain these enviable figures for the next few decades, a change in the world
order is definitely on the cards, especially with the current trend of lower
GDP growth rates seen within the developed nations.
The above world map showcases the GDP growth between 2013 & 2014 and
without any surprises China and India come under the dark green shade – fastest
growing major economies. One can also see the devastating effect of the Libyan
civil war on the country’s economy with GDP contracting manifolds during the
same period.
2 Labor – Independent variable
Availability of labor force is important for any country to grow and
sustain the economy. For the purpose of evaluating total labor force - who meet
the International Labour Organization definition of the economically active
population have been taken into consideration. As expected China, India and USA
feature in the top 5 of this group.
3. Human Capital (Education
spending) – Independent variable
As skills, knowledge and ideas can drive innovation, productivity and in
turn economic growth, government expenditure on education, expressed as a
percentage of GDP becomes an important variable to study.
4. Life expectancy –
Independent variable
The changing trend of the average age human beings are expected to live
can indicate the effort and investment put into the health care system by the government.
The assumption here being increased life expectancy will positively affect the
economy.
(Chart
details – Average life expectancy vs average log labor. Color showcase average of education spending %. Size showcase average GDP figures. All
figures are between 1990 & 2014)
Putting
the above three independent variables on a bubble chart, visually represents their effects on the GDP. It
can be seen how some of the most developed economies of the world also possess
high average life expectancy figures, with Japan having the best figures-above
80 years.
Intuitively one would expect the developed economies to spend more on
education, which exactly is the case here with all the developed economies
shown in the color blue and developing economies in color red, meaning more
effort is required from the up and coming economies in this direction.
Statistical Modelling
To
see the relationships among all the independent variables and their effects on
the GDP, statistical modelling-regression & multivariate analyses are
carrier out.
GDP
and labor figures are changed into logarithmic values to better fit on the
chart.
As
positive correlation, can be seen between Labor, Life expectancy and GDP, as a
subsequent step regression analyses is carried out.
Regression Statistics
Actual by Predicted Plot
Summary of Fit
RSquare
|
0.873785
|
RSquare
Adj
|
0.871504
|
Root
Mean Square Error
|
0.334779
|
Mean
of Response
|
10.45144
|
Observations
(or Sum Wgts)
|
170
|
Analysis of Variance
Source
|
DF
|
Sum of Squares
|
Mean Square
|
F Ratio
|
Model
|
3
|
128.80141
|
42.9338
|
383.0732
|
Error
|
166
|
18.60483
|
0.1121
|
Prob > F
|
C.
Total
|
169
|
147.40624
|
<.0001*
|
Parameter Estimates
Term
|
Estimate
|
Std Error
|
t Ratio
|
Prob>|t|
|
Intercept
|
0.1652146
|
0.314512
|
0.53
|
0.6001
|
Life
Exp
|
0.0565166
|
0.002803
|
20.16
|
<.0001*
|
Log
Labor
|
0.9721186
|
0.034714
|
28.00
|
<.0001*
|
Education
spending % 2
|
0.0146473
|
0.015146
|
0.97
|
0.3349
|
Effect Tests
Source
|
Nparm
|
DF
|
Sum of Squares
|
F Ratio
|
Prob > F
|
Life
Exp
|
1
|
1
|
45.572311
|
406.6151
|
<.0001*
|
Log
Labor
|
1
|
1
|
87.893706
|
784.2242
|
<.0001*
|
Education
spending % 2
|
1
|
1
|
0.104821
|
0.9353
|
0.3349
|
A
high R square indicates that 87.3% of the variability of GDP (Log GDP) can be
explained by the variability of life expectancy and labor. Education spending %
is oddly not coming out as a significant predicting variable with a high
Probability value of 0.33, perhaps more specific and direct data is required,
but for the purpose of this analyses education spending can be removed.
The
equation after performing the analyses again without education spending:
Log
GDP = 0.24 + 0.96(Log Labor) + 0.06(Life Expectancy)
For further research, other important driver variables
explaining areas such as ease of doing business, innovation, technology level etc.
can be taken into consideration to optimize this regression model and enhance
its explanatory power.
Though trained labor force has been a
critical aspect of the economy and overall growth, which is also highlighted by
the above equation, the rise in effectiveness of artificial intelligence and
robots could very well change this trend with machines substituting for human
capital in the near future becoming a more realistic scenario.
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