Economic Growth, Social Expenditure, Unemployment, and
Inflation: The Impact on Poverty in South Sumatera
Harunurrasyid, Syaipan Djambak, Mardalena, and Putri Adelia
Faculty of Economics, Universitas Sriwijaya, Palembang, Indonesia
Keywords: Regencies/Cities in South Sumatera, Poverty, Model Common Effects
Abstract: This study examines factors that influence and how to accelerate the decline in the number of poor people in
South Sumatera Province from 2009 to 2017. The research used panel data regression, with the Common
Effects Autoregressive (1) as the selected model. The results showed that the level of poverty in South
Sumatra Province experienced an annual average decrease of 1.87 percent, while atsame period, several
regencies/cities in South Sumatera experienced an increase, namely: Ogan Komering Ulu, Palembang, East
OKU, Pagaralam and Prabumulih. The difference in changes in the number of poor people is a result of the
occuring structural inequality, because the transition of dominant economic sectors in GDRP is not followed
by the optimal labors absorption in the field. The structural imbalance contributes to the economic
inequality, poverty, open unemployment and natural resources exploitation in South Sumatera. The test
results show an increase in GDRP growth and social expenditure, and a decrease in the open unemployment
rate and inflation affect the growth of poor people number in South Sumatera.
1 INTRODUCTION
Economic development still leaves a number of
issues that should receive serious attention. One of
the main problems that arises as a result of the
implementation of inconsistent and impartiality
national development programs is the widening
inequality and chronic poverty (Sugema, Irawan,
Adipurwanto, Holis, & Bakhtiar, 2010).
Poverty is one of fundamental problems which
become major concern of Indonesia Government
(Budiantara, Diana, & Darmesto, 2011). Poverty
illustrates the living condition of many developing
countries in the world, which consist of not less than
one billion of the world's population. The reality
shows that most development efforts in poverty
alleviation programs have not been sufficiently able
to suppress the increase the number of poor people
in many countries. The condition was compounded
by demographic bonus events in many developing
countries over the past few decades. This increase in
demographic bonus later increases the number of
poor people, even though the increase in population
does not supposed to increase the number of poor
people.
Badan Pusat Statistik (BPS) publication stated
that the percentage of Indonesia's poor population as
of March 2018 was only 9.82 percent, which, if it
was estimated as many as 25.95 million people, the
fewer of the poor population in September 2017
which were 26.58 million people. The statement is
in line with World Bank publication data in 2017,
where the percentage of poor people in Indonesia is
10.6 percent, with 7.7 percent of poverty comes
from the urban areas and 13.9 percent from rural
areas (World Bank, 2018).
In addition, according to data from the
publication of the Human Development Report
(HDR), Indonesia ranked 116th out of 189 countries
with HDI values of 0.694 percent, along with a
Gross National Product Percapita PPP$ value of $
10,846 in year basic 2011(UNDP, 2018).
Indonesia poverty rate is only 9.82 percent as of
March 2018, as reported by BPS, using Purchasing
Power Parity (PPP) methodology as it base. PPP is
the value of purchasing power of people determined
based on the standards of each country, ignoring the
prevailing international exchange rate (World Bank,
2018).
Poverty of Indonesia is calculated using the
urban poverty line (Rp. 400,995/ capita/ month) and
rural poverty line (Rp. 370,910/ capita/ month). In
626
Harunurrasyid, ., Djambak, S., Mardalena, . and Adelia, P.
Economic Growth, Social Expenditure, Unemployment, and Inflation: The Impact on Poverty in South Sumatera.
DOI: 10.5220/0008443306260636
In Proceedings of the 4th Sriwijaya Economics, Accounting, and Business Conference (SEABC 2018), pages 626-636
ISBN: 978-989-758-387-2
Copyright
c
2019 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
other words, every Indonesian citizen is considered
not poor if the income per capita per day of them is
Rp. 13,366 for urban-dweller and Rp. 12,363 for
rural areas-dweller (BPS, 2018). The national
average poverty line determined by BPS is higher
than the World Bank Purchasing Power Parity
standard (Novalia, 2018).
The calculation of poverty using the World
Bank’s PPP standard of US$ 1.9 per day is measured
using 2011 as its base year. The estimated
conversion of 1 US dollar in 2011 is
Rp11,157/capita/day, which then shifted to
Rp13,162/capita/day in 2018 (International
Monetary Fund, 2018).
Even Enny Sri Hartati, the Director of the
Institute for Development of Economics and Finance
(INDEF) stated: The poverty rate of Indonesia
number could be doubled to 70 million people if the
USD 1.9/capita/day standard is used (Suryowati
06/03/2018, https://www.jawapos.com/jpg-
today/06/03/2018/).
The statement comes from the result of
calculation using the applicable international
exchange rate. Using the international exchange rate
as of March 2018 (Rp. 13,761), the monthly poverty
standard is Rp. 784,377/capita/month, equivalent to
(Rp. 26,146/ capita/ day). It doubles the standard of
Purchasing Power Parity (PPP) used by BPS for
both urban and rural poverty standards (Suryowati,
Tuesday (6/3) JawaPos.com,
https://www.jawapos.com/jpg-today/06/03/2018/).
South Sumatera Province ranked the third in the
largest poor residents number in Sumatera, and
ranked the seventh in all Indonesia (BPS, 2018). The
number of poor people in South Sumatra Province is
beyond the percentage of the average number of
poor people in Indonesia. BPS reported in Semester
1 of 2018, the percentage of the poor population of
South Sumatra Province was 12.80 percent, or
exceed the average number of poor people in
Indonesia (9.82 percent). The condition has been
continuously occuring for the past four years, where
the percentage target of the number of poor people
in South Sumatra Province is always above the
national average of 7.5 percent. Therefore, further
research is needed in determining the factors
affecting the level of poverty in the regencies/cities
in South Sumatera Province. The results are
expected to provide as a reference in determining the
direction of poverty alleviating policies.
Research on the factors determining the number
of poor people has been widely carried out, both in
national and provincial scale. (Fajriyah & Rahayu,
2016) has conducted a modeling analysis of the
factors that influence poverty in the regencies/cities
in East Java Province with panel data regression,
which then revealed that the significant predictor
variables included literacy, labor force participation,
number of population working in the agricultural
sector, as well as GDRP per capita. Meanwhile,
predictor variables with no effect on the response
variable are residents without health access.
Furthermore, research related to poverty modeling is
carried out by (Zuhdiyati & Kaluge, 2015) with the
results showing that the HDI has a significant
negative effect on poverty and the open
unemployment rate has no significant effect.
However, previous research conducted by Yacoub
(2012) shows that the open unemployment rate has a
significant effect on poverty.
2 LITERATURE REVIEW
2.1 Poverty Definition
Poverty can be illustrated as a situation where
there is a lack of common things related with the life
quality, such as food, clothing, shelter and clean
water. Economically, poverty can be indicated by
the level of lack of resources in fulfilling the needs
of life and improve the welfare of a group of people.
According to (Suryawati, 2005) poverty can be
divided into four forms : 1) absolute poverty, where
the income is below the poverty line or not enough
to fulfill the standard needs of food, clothing, health,
shelter and education needed to maintain live and
gain job; 2) relative poverty, which caused by the
failure of development policies in reaching all the
layer of communities, causing inequality in income
among residents; 3) cultural poverty, refers to the
attitude matter of a person or community caused by
cultural factors, such as the reluctancy to improve
the level of life, wasteful, and not creative; and 4)
structural poverty, a poverty caused by minimum
access to resources that occur in socio-cultural and
political systems that do not support poverty
alleviation.
2.2 Measurement of Poverty
According to BPS, in 2018, the level of poverty
is based on the amount of rupiah consumption spent
for food, precisely 2.100 calories per person per day
(from 52 types of commodities representing the
consumption patterns of residents of lower-class),
and non-food consumption of 45 types foods
commodities in accordance with national agreements
Economic Growth, Social Expenditure, Unemployment, and Inflation: The Impact on Poverty in South Sumatera
627
and are not differentiated between rural and urban
areas). The adequacy of 2.100 calories applies to all
ages, genders, level of physical activeness, body
weight, and estimated physiological status of
population size, this measure is often referred to as
the poverty line.
Otherwise, the human development model from
UNDP is also used to measure the poverty in
Indonesia. Periodically every three years since 1991,
UNDP has been publishing the Human Development
Report (HDR). The human development approach is
different from conventional approaches such as
economic growth, human resource development and
community welfare development. The economic
growth approach only pursues an increase in Gross
National Product (GNP) rather than improving the
quality of human life. The human resource
development approach makes humans an input
factor in the production process, making humans are
seen more as tools than as goals. While in the
concept of human development, growth is not seen
as a goal but as an instrument to reacht the goal.
Table 1: Types of Poverty Indexes and Indicators
INDEX
INDICATOR
HDI
Living expectancy level
Adult literacy
Average education length
Purchasing power rate per capita
HPI
Number of births unable to live until
40
Adult illiteracy
Percentage of the residents without
access to clean water
Percentage of residents without
access to healthcare
Percentage of underfed children
GDI
Life expectancy of men and women
Literacy of men and women
Average education length of men and
women
Estimated income level of men and
women
GEM
Percentage of number of DPR
members from men and women
Percentage of senior level employees,
managers, professionals and technical
positions of men and women
Estimated income levels of men and
women
Source : (Cahyat, 2004)
The HDR contains an explanation of three
indexes: Human Development Index (HDI), the
Gender Development Index (GDI), Gender
Empowerment Measure (GEM) and the Human
Poverty Index (HPI). In Indonesia, HDR uses BPS
data, especially Susenas data, so it has the same
survey unit as BPS, namely households.
3 RESEARCH METHODOLOGY
3.1 Scope of Research
According to (Sarris, 2001) many results of the
study showed that economic growth has an
important role in reducing poverty, and governments
need more detailed information about it to make a
sufficient decisions in allocating APBN and APBD.
In this study the test was conducted twice with
different variable components. The first test was
carried out on multidimensional variable and the
second test on economic dimension variable. The
growth of Poverty rates (PM) playing the role as
dependent variable in this study, while the growth of
GDP with Constant Prices Year 2010 (GDP), the
growth of expenditure allocation for social
expenditure (BS), open unemployment rate (TPT) ,
Inflation (I), Literacy (MH), Feasibility Board (KP),
Clean Water Access (AAB), growth of Education
Participation Less than Middle School (PKS) and
Growth of Malnutrition Toddler Number (GB) are
the independent variables in this study. The data
used in this study are pooled data of 15 regencies/
cities in South Sumatra province in year 2008 to
2017, plus additional secondary data from BPS,
IDHS, and Bank Indonesia (BI).
The time-span of variables in this study started
from year 2009 to 2017.
Table 2: Operational and Dimensional Variables
Definition
Research
Variables
Operational
Definition
Dimension
Growth of
Poor People
Number
Percentage of
growth of poor
people (population
with average per
capita expenditure
per month below
the poverty line)
Economy
Growth of
Constant Price
Year 2010
GDRP
Percentage of
GDRP growth of
each regency/ city
SEABC 2018 - 4th Sriwijaya Economics, Accounting, and Business Conference
628
Growth of
Fund Allocated
for Social
Ependiture
Percentage of
growth in social
ependiture
allocation funds
(for social
expenditure and
included in the
regional
government
expenditure
budget)
Economy
Inflation
Percentage of
annual inflation
rate
Open
Unemployment
Rate
Percentage of
unemployment to
the total workforce
Literacy
Number
Percentage of
population aged 15
years and over who
can read and write
latin letters and/or
other letters
Education
Growth of
Education
Participant
Less than
Middle High
School
Percentage of
school-age
population
attending school at
the primary school
level in both
private and public
school
Household
with Clean
Water Access
Percentage of
households who
can access clean
water
Social
Household
with Board
Feasibility
Percentage of
households with
housing facilities in
the form of
permanent walls
The Growth of
Number of
Malnutritioned
Toddler
Percentage of
children under five
suffering from
malnutrition
3.2 Step of Analysis
The steps of data analyzing in this study are as
follows (Baltagi, 2005):
1. Estimating the panel data regression using a
fixed effect model.
2. Perform a Chow test
a) If accepted, then the common effect model is
used (continue step 5).
b) If rejected, then the fixed effect model is used
(continue step 4).
3. Conduct the Hausman test
a) If received, then the random effect model is
used (continue step 5).
b) If rejected, then the fixed effect model is
used (continue step 4).
4. Perform an assumptions test on selected models.
5. Perform a parameter significance test which
includes simultaneous test and partial test with
the revised regression equation
6. Dispose of some research variables that are not
in accordance with the theory.
7. Interpret the final model of panel data regression
with the selected model.
4 ANALYSIS AND DISCUSSION
4.1 Poor People and Poverty Factors in
Regencies/Cities in South Sumatera
The percentage of poor people in South Sumatra
Province over the past decade tends to decrease. It
was 17.67 percent in 2008, 14.80 percent in 2010
and 13.48 percent in 2012. However, in 2015 it
increased to 13.82 percent, followed by 13.19
percent in 2017. In other words,in 2017 there were
1,086,920 poor people out of 8.052.315 total
population in South Sumatra. The average
percentage indicates that there are about 123 poor
people living in every 1000 people in 17 regencies /
cities in South Sumatera Province.
Economic Growth, Social Expenditure, Unemployment, and Inflation: The Impact on Poverty in South Sumatera
629
Table 3: The Percentage of Average Growth of Poor People in Regencies/Cities of South Sumatera Province
Year 2009 - 2017
Average Growth
Poor
People
Social
Expenditure
Open
Unemployment
Inflation
2,33
-11,03
4,17
4,89
1,89
-11,03
4,17
4,89
0,90
0,47
6,14
4,89
0,58
-10,27
1,69
4,89
0,44
1,93
-4,73
3,57
0,11
10,19
0,32
3,57
-0,57
3,25
-6,65
3,57
-1,59
0,39
-4,99
4,89
-1,62
2,04
0,38
3,57
-1,62
2,31
8,43
4,89
-2,03
-9,23
3,02
4,89
-2,22
-2,80
-4,84
4,89
-2,68
0,00
-4,51
3,57
-3,83
10,35
-7,37
3,57
-7,18
1,14
-1,15
3,57
-1,87
-8,43
-1,31
4,27
Source: South Sumatera in the Number (reprocessed by authors)
Table 4: The Percentage of Average Contribution of Each Regencies/Cities to South Sumatera Province
REGENCIES/
CITIES
The Percentage of Average Contribution of Each Regencies/Cities to South Sumatera
Province Year 2009 2017
Poor People
GDRP of
2010
Constant
Price
Allocation of
Social
Expenditure
Funds
Open Unemployment
Rate
Inflation
Palembang
18,26%
27,35%
3,32%
13,55%
7,62%
Ogan Komering Ilir
11,14%
7,88%
23,20%
7,47%
7,62%
Musi Banyuasin
10,30%
16,53%
0,95%
5,62%
7,62%
Muara Enim
9,19%
12,95%
15,64%
6,54%
5,57%
Banyuasin
8,95%
7,65%
1,56%
5,36%
7,62%
Musi Rawas
8,23%
4,57%
15,00%
2,71%
5,57%
Kab. Lahat
6,50%
4,74%
10,75%
5,13%
5,57%
OKU Timur
6,03%
3,93%
11,01%
5,37%
7,62%
Ogan Ilir
5,22%
2,73%
1,21%
4,65%
7,62%
Ogan Komering Ulu
3,81%
3,04%
8,21%
6,13%
7,62%
OKU Selatan
3,62%
3,07%
0,71%
3,52%
7,62%
Empat Lawang
2,96%
1,27%
2,55%
5,93%
5,57%
Lubuklinggau
2,81%
1,57%
4,33%
11,15%
5,57%
Prabumulih
1,87%
1,82%
0,73%
9,53%
5,57%
Pagaralam
1,11%
0,92%
0,83%
7,33%
5,57%
South Sumatera
Province
100,00%
100,00%
100,00%
100,00%
100,00%
Source: South Sumatera in the Number (reprocessed by authors)
SEABC 2018 - 4th Sriwijaya Economics, Accounting, and Business Conference
630
The average growth of the number of poor
people in South Sumatra Province in 2009-2017
decreased by 1.87 percent. This decline did not
occur in several regencies/cities in South Sumatra
Province. OKU Regency experienced an increase in
the number of poor people on average 2.33 percent
per year. This was caused by the high average
growth of open unemployment of 4.17 percent in
OKU Regency with its contribution to open
unemployment in South Sumatra Province of 6.13
percent, and caused altogether by high inflation with
7.62 percent average annual contribution to the
province. Furthermore, the average increase in the
number of poor people in Palembang City was 1.89
percent, OKUT Regency 0.90 percent, OKI District
0.58 percent, PGA City 0.44 percent, and
Prabumulih City 0.11 percent. Conversely, there are
several other regencies/cities that experience a
decline in the average number of poor people. The
highest decline was Musi Rawas Regency at 7.18
percent, affected by the decrease in the average
annual open unemployment in Musi Rawas Regency
by 1.15 percent, and 1.14 percent increase in the
average annual allocation of social expenditure.
By its contribution to the number of poor people
in South Sumatra Province during 2009 s.d 2017,
Palembang City is the greatest conributor with 18.26
percent. The highest GDRP of Palembang City was
37.65 percent, which came from the manufacturing
industry sector, which only absorb 11.84 percent of
workers from the labor force, while the largest
labors-absorber sector in Palembang City was the
groceries, retails, restaurants and hotels sector,
which was 33.70 percent,contrary to itssmall
contribution(15.57 percent)to GDRP. This caused
the open unemployment rate in Palembang City to
become the largest contributor to the Province,
reaching 13.55 percent. The position of Palembang
City as the provincial capital also plays a role in
attracting rural communities to urbanize, causing a
massive population growth. Large urbanization
flows lead to an increase in the number of labor
force, but most of the workforce does not have the
ability desired by the market so this actually increase
the number of open unemployment. In addition, the
high inflation factor causes the allocation of social
expenditure funds uneffectivein reducing the number
of poor people in Palembang City.
The lowest contribution of the poor people to
South Sumatera comes from Pagaralam City at 1.11
percent. The condition was happeneddue to the
ability of GDRP in the agriculture, forestry, hunting
and fisheries sectors to absorb the largest workforce
of 50.25 percent, making it the largest GDRP
contributor (25,38 percent) of Pagaralam City over
the past 9 years.
Table 5: The Structure of Average Poverty Contribution of
Regencies/Cities in South Sumatera 2009 s.d 2017
Regency
/ City
Contribution
Percentage
Total
Contributio
n
to Province
Above
the
Province
Average
Palemba
ng
Ogan
Komerin
g Ilir
Musi
Banyuasi
n
Muara
Enim
Banyuasi
n
Musi
Rawas
18,26%
11,14%
10,30%
9,19%
8,95%
8,23%
40,00%
Province
Average
6,67%*
Under
Province
Average
Lahat
OKU
Timur
Ogan Ilir
Ogan
Komerin
g Ulu
OKU
Selatan
Empat
Lawang
Lubuklin
ggau
Prabumu
lih
Pagarala
m
6,50%
6,03%
5,22%
3,81%
3,62%
2,96%
2,81%
1,87%
1,11%
60,00%
Source : processed data
The average contribution of poor population in
South Sumatra Province over the last 9 years is 6.67
percent. From table 5 above there are six
regencies/cities with the level above the average
contribution of the poor population in South Sumatra
Province: Palembang City (18.26%), Ogan
Komering Ilir Regency (11.14%), Musi Banyuasin
(10.30%),Muara Enim (9.19%), Banyuasin Regency
(8.95%) and Musi Rawas Regency (8.23 percent).
At the other hand,there are 11 districts and/or cities,
covering 60 percent of the average contribution of
the poor population of South Sumatra Province,
namely: Lahat Regency (6.50%), East OKU
(6.03%), Ogan Ilir (5.22%), Ogan Komering Ulu
Economic Growth, Social Expenditure, Unemployment, and Inflation: The Impact on Poverty in South Sumatera
631
Regency (3.81%), South OKU (3.62%), Empat
Lawang Regency (2.96 %), Lubuklinggau City
(2.81%), Prabumulih City (1.87 %) and Pagaralam
City (1.11%).
Based on BPS data (2018), poverty depth index
(P1) and poverty severity (P2) of South Sumatra
Province tend to increase during the last three years.
In 2017, it sequentially reached 2.35 percent and
0.62 percent. This shows a trend towards an increase
in income inequality and an increase in public
consumption expenditure. That is, the need for
serious attention related to public consumption
patterns due to the direct impact on the difference in
prices of volatile foods, the ability of the purchasing
power of the people and the impact on the rate of
inflation. Public consumption expenditures on food
consumption are concentrated on processed foods
and beverages, grains, tobacco and betel, fish,
shrimp and shellfish, as well as vegetables.
Meanwhile, the concentration of non-food
expenditure concentrates on housing and household
facilities, various goods and services, and durable
goods.
Labor conditions in South Sumatra Province
show the number of Open Unemployment Rate in
2017 is 195,222 people, with the highest number of
Palembang City as many as 81,449 inhabitants.
Based on data from the last level of education
completed by job seekers, both in the city and
village, the highest percentage in 2017 was a
graduate at the senior high school level with a
percentage of cities of 12.84 and a percentage in the
village of 12.03. Thus, the total open unemployment
rate at the high school level in cities and villages in
2017 is 12.46 percent. In other words, in that
year,there were 10,369 unemploymentwho never
had any formal education; 20,392 elementary school
graduates; 677,008 middle high school graduates;
985,974 high school graduates; and 452,511 D/I-
III/Academy/University graduates in every
4,123,669 workforce.The final level of education
also influences job positions of each workforce, and
later affect income earned(BPS, 2016).The
relationship between poverty and education is
particularly important because of the key role played
by education in raising economic growth and
reducing poverty. The better educated have higher
incomes and thus are much less likely to be poor
(World Bank, 2005).
And also, Inflation has affects for the poor more
than the rich. This is especially true in terms of food,
energy, and housing inflation. In fact, a number of
studies on inflation and poverty in developing
countries have shown the effect of inflation on the
poor (Odekon, 2015).
4.2 Research Model Specification Test
4.2.1 Multidimensional Variables Testing
Chow Test
Chow test is the initial stage of model
specification testing to choose the common effect
model and the fixed effect model.
Table 6: Redundant Fixed Effects Tests Results
Effects Test
Statistic
Prob.
Cross-section F
0.517670
0.9185
Cross-section Chi-square
8.538564
0.8594
S.E. of
Regression
0.103188
F-statistic
3.516014
Prob(F-statistic)
0.000654
The chow test results show that:
F = 0.103188≤ F
(14;111;5%)
= 0.517670
Because the value of F ≥ F
(14;111;5%),
and Chi-
Square probability value 0.8594 > 0.05, Ho is
accepted,which means the right model is the fixed
effect model.
The correct model used in this study is the
common effect. If the estimation model chosen is the
common effect, there is no need to do a thirst test
and classical assumption test. The next step is to test
the significance of the parameters.
Parameter Significance Test
A. Simultaneous Test
Simultaneous testing is done to see the effect of
the overall independent variable on the dependent
variable. The test results show the probability value
(F-statistic) of 0.00 <0.05, so that Ho is rejected,
meaning that the independent variables
simultaneously affect the dependent variable.
Table 7: Simultaneous Test Results of Multidimensional
Variables
R-squared
0.402013
Mean dependent var
-0.011393
Adjusted R-squared
0.344558
S.D. dependent var
0.111567
S.E. of regression
0.103188
Akaike info criterion
-1.633337
Sum squared resid
1.330976
Schwarz criterion
-1.418132
Log likelihood
120.2503
Hannan-Quinn criter.
-1.545884
F-statistic
3.516014
Durbin-Watson stat
2.561604
Prob(F-statistic)
0.000654
SEABC 2018 - 4th Sriwijaya Economics, Accounting, and Business Conference
632
B. Partial Test
Partial test is conducted to see the effect of
individual independent variables on the dependent
variable, with the criteria if the probability of t value
or significance is < 0.05, there is an influence
between the independent variables on the dependent
variable partially, and vice versa.
Table 8: Multidimensional Variable Partial Test Result
Variab
le
Coeffi-
cient
t-number
Prob.
Conclusion
PDRB
-1.542969
-3.642670
0.0004
Significant
BS
-0.001383
-2.940471
0.0039
Significant
MH
0.009761
1.506454
0.1345
Not Significant
TPT
-0.003461
-0.873012
0.3843
Not Significant
GB
-0.003877
-0.970246
0.3338
Not Significant
PKS
0.002914
0.328463
0.7431
Not Significant
AAB
0.001433
2.318121
0.0221
Significant
KP
0.000583
0.17901
0.8582
Not Significant
I
0.007124
1.699702
0.0917
Not Significant
Based on the test results, it can be seen that in the
significance level of α = 5%, the growth of GDRP,
literacy, open unemployment rate, the number
malnutritioned toddler, the number of people with
education level less than middle school, house with
feasible boarding and inflation do not significantly
affect the growth of poor people number in
regencies/cities in South Sumatra Province during
2009 s.d 2017.
The panel data regression test results also show
that the independent variables of research on the
social and educational dimensions do not have a
significant influence on the dependent variable, so
that the next research step (step 6) was taken to get
the best model with selected variables. Therefore,
the the social and educational dimensions variable
were released from the model, leaving the testing
model with only economic dimension variable,
including: the growth of constant price year 2010
GDRP, the growth of fund allocation for social
expenditure, inflation, and open unemployment
level. The basic assumptions that lead to retesting
only economic dimension is caused bythe national
standard used by BPS, where the calculation is only
based on the ability of poor people infulfillingtheir
basic needs (basic needs approach) measured by the
average spending/ capita/ month according to
poverty line (BPS, 2017).
4.2.2 Economic Dimension Variable Testing
Chow Testis the basic step in model specification
testing, in order to choose common effect model and
fixed effect model.
Table 9: Redundant Fixed Effects Tests Results
Effects Test
Statistic
Prob.
Cross-section F
0.758479
0.7112
Cross-section Chi-square
11.824655
0.6204
S.E. of
Regression
0.104891
F-statistic
5.399550
Prob(F-statistic)
0.000470
The chow test results show thatthe value of
F = 0.104891≥ F (14; 116; 5%) = 0.758479.
Because the value of F F (14; 116; 5%), and Chi-
Square probability value 0.00> 0.05, then Ho is
accepted, which means the right model is a common
effects model.
As in the testing of multidimensional variables,
because the best estimation model is the common
effect model, the next step of the test is the
significance of the parameters.
Parameter Significance Test
A. Simultaneous Test
Simultaneous testing is performed to see the
effect of the overall effect independent variable has
caysed towards the dependent variable. According to
the probability value (f-statistic) significance value
of 0.00 ≤ 0.05, Ho is rejected, which means that
overall the independent variables simultaneously
affect the dependent variable.
B. Partial Test
Partial testing is performed to see the effect of
individual independent variables on the dependent
variable. If the probability of t-value or the
significance is <0.05, then there is partially an
influence between the independent variables on the
dependent variable partially, and vice versa.
Table 10: Partial Test Results of Economic Variable
Variable
Coeffi-
cient
t-
number
Prob.
Conclusion
GDRP
-1.4631
-3.5208
0.0006
Significant
I
-0.0079
1.8898
0.0610
Not
Significant
BS
-0.0011
-
2.5375
0.0123
Not
Significant
TPT
0.0027
0.7910
0.4304
Not
Significant
Economic Growth, Social Expenditure, Unemployment, and Inflation: The Impact on Poverty in South Sumatera
633
Based on the test results, it can be seen that in the
significance level of α = 5%, only the GDRP growth
and the significant growth of fund allocation for
social expenditurevariable are significant. The next
step is to improve the model with autoregressive (1)
to acquire the best model.
Table 11: Economic Variable Partial Test Results
withAutoregressive (1)
Variabl
e
Coeffi-
cient
t-number
Prob.
Conclusion
GDRP
-1.3324
-3.5208
0.0022
Significant
I
0.0084
1.8898
0.0661
Not
Significant
BS
-0.0022
-2.5375
0.0046
Significant
TPT
0.0077
0.7910
0.0232
Significant
After improving the model with Autoregressive
(1), only the inflation variable was not significant
with a significance value of only 0.06 in the
significance level α = 5 percent.
4.3 Panel Data Final Regression Model
Based on several tests that have been carried out,
the final panel data regression model for the number
of poor people in the regencies/cities of South
Sumatra Province during 2009 s.d 2017 is the
common effects model with Autoregressive (1).
Table 12: Economic Variable Panel Regression Results
Variable
Coefficient
Variabel
Connectivity
GDRP
-1.3324
Negative
I
0.0084
Positive
BS
-0.0022
Negative
TPT
0.0077
Positive
With the equation of panel data regression,
Growth of PM = -0,0379 -1,3324 GDRP
Growth-0,0022 BS Growth
+0,0077TPT +0,0084I
Where:
Growthof PM = Percentage of the poor people
number in South Sumatera
provincial regencies / cities during
2009 to 2017
GrowthofGDRP = Percentage of Constant Price
Year 2010 GDRP
BS Growth = Percentage of Fund Allocated
for Social Expenditure
TPT = Open Unemployment Rate
I = Annual Inflation
Regression models for each variable can be
interpreted as follows:
1. Decreasing total GDRP production by 1 percent
will increase the number of poor people by
1.3324 percent.
2. Reducing the allocation of funds for social
expenditure by 1 percent will increase the
number of poor people by 0.0022 percent.
Poverty alleviation programs through social
assistance allocation funds are the PKH, KIP,
KIS Program and the formation of the TP2NK.
3. Increasing inflation by 1 percent will increase the
number of poor people by 0.0084 percent.
4. Increasing the open unemployment rate by 1
percent will increase the number of poor people
by 0.0077 percent.
Based on the model equation, the coefficient of
determination is 72.14 percent, meaning the constant
GDRP growth in 2010, inflation rate, growth of fund
allocation for social expenditure and open
unemployment rate can explain the variability of the
growth of poor people in regencies/cities in South
Sumatra Province at 72.14 percent, while the
remaining 21.86 percent is explained by other
variables that have not included in the model.
Based on the significance value, it can be seen
that the Constant Price GDRP in 2010 has the least
significance value of the reference probability value
(0.05 percent), which is 0.0022. As well as from the
table of sectoral contribution to employment
absorption in South Sumatera Province, it can be
seen that the growth of GDRP variable has a high
contribution value in reducing the growth of the
number of poor people through sectoral employment
of GDRP. Thus, the connectivity between GDRP
and the number of poor people is negatively
directed.
From table 13, it is shown that the high
contribution of the mining and quarrying sector
(21.55 percent) percent is not in line with the
absorption of the workforce which only reaches 1.51
percent. It is not comparable to the magnitude of the
exploitation of natural resources carried out in the
production process.
On the other hand, the agricultural, forestry,
huntings and fisheries sector which contributed
18.78 percent turned out to be able to absorb 54.73
percent of the workforce. This indicates that there is
an imbalance in the formation of the primary sector
GDRP into the manufacturing industry sector and
public, social and private services sector.
transformation of the absorption of its workforce.
The permanent workforce is dominated by the
SEABC 2018 - 4th Sriwijaya Economics, Accounting, and Business Conference
634
agricultural, forestry, hunting and fisheries sectors
and is slowly transforming into the public, social and
private services sector as well as groceries, retails,
restaurants and hotels sector. This structural
imbalance contributes to economic inequality,
poverty, open unemployment and exploitation of
natural resources in South Sumatra Province.
Table 13: Ranks of Average Contribution of Constant
Price GDRP Year 2010 and Job Opportunity of Each
Sector in South Sumatera Province During 2009-2017
Sectoral Job
Opportunity in
South Sumatera
Province
Average
Contribution
of GDRP
Average
Contribution
of Job
Opportunity
Mining and
Quarrying
21,55%
1,31%
Agricultural,
Forestry, Hunting
and Fishery
18,78%
54,73%
Manufacturing
Industry
18,19%
5,24%
Groceries, Retails,
Restaurants and
Hotels
11,99%
15,91%
Construction
10,70%
4,08%
Public, Social and
Private Services
7,87%
12,97%
Transportation,
Warehousing and
Communication
5,32%
4,09%
Financial,
Insurance, Building
Rent, Land and
enterprises Services
5,31%
1,49%
Eelctricity, Gas and
Clean Water
0,29%
0,18%
Total
100,00%
100,00%
Source : BPS Sumsel Dalan Angka (processed data)
In connection with the sectoral contribution of
GDRP towardthe relevant employment absorption
with the results of a study conducted by (Suryahadi,
Suryadarma, & Sumarto, 2009)the declinesof
poverty in Indonesia can be done by increasing the
acceleration of the growth of the agricultural sector
in the village and at the same time increasing the
growth of the service sector in the city. In addition,
there is a need to develop a credible industrial
relations system that can represent the interests of
both formal sector and marginalized workers and
thus contribute to alleviating the sense of
voicelessness and powerlessness of the poor (Islam,
2015).
5 CONCLUSION
1. Poor people in South Sumatra Province during
2008-2017 experienced an average annual
decline of 1.87 percent. However, in the same
period, several regencies/cities experienced an
increase in the number, namely: Ogan Komering
Ulu Regency, Palembang City, East OKU
Regency, Pagaralam City, and Prabumulih City.
2. Palembang City is the highest contributor of the
poor population in South Sumatra by 18.26
percent. This is as a result of economic structural
imbalances that occur due to changes in the
dominant economic sector in GDRP fromthe
sector of Agriculture, Forestry, Huntings and
Fisheries to the Manufacturing Industry sector
and the Groceries, Retails, Restaurants and
Hotels sector, but not followed by optimization
of labor absorption. Labors remain dominant in
the sectors of Agriculture, Forestry, Huntings
and Fisheries and are slowly transforming into
the Groceries, Retails, Restaurants and Hotels
sector and the public, social and private services
sector.
3. The structural inequality between employment
absorption and GDRP production value is one of
the causes of the low decline in the average
growth of open unemployment in South
Sumatera, which is only 1.31 percent, is not
comparable with the average annual growth of
GRDP of 2.89 percent, and thus, causing a low
decline in the average growth of the poor
population at only 1.87 percent. This structural
imbalance contributes to economic inequality,
poverty, open unemployment and exploitation of
natural resources in the province of South
Sumatra.
4. The results of the specification test with the
Common Effect Autoregressive (1) model with a
variability value of 72.14 percent variables that
affect poverty in South Sumatra Province are the
GDP growth variables, the growth of social
expenditure and the open unemployment rate.
5. Some policies that can be taken to accelerate the
decline in the number of poor people are :
encouraging investment and increasing the
productivity of sectors that absorb a lot of labor
such as agriculture, forestry, huntings and
fisheries; manufacturing industry (especially
agricultural products); andpublic, social and
private services sector. In addition, the
government can utilize demography bonuses by
improving the quality of human resources
through education and community empowerment
Economic Growth, Social Expenditure, Unemployment, and Inflation: The Impact on Poverty in South Sumatera
635
in supporting the processing of industrialization
of agricultural, forestry, hunting, fishery, mining
and quarrying products, as well as developing the
tourism services sector to encourage growth
synergies in the agro-industry sector, creative
economy and other services.
REFERENCES
Badan Pusat Statistik. (2017). Provinsi Sumatera Selatan
Dalam Angka 2017, 258. Retrieved from
http://sumsel.bps.go.id/index.php/publikasi/index?Pub
likasi%7B%25%7D5BtahunJudul%7B%25%7D5D=2
016%7B&%7DPublikasi%7B%25%7D5BkataKunci
%7B%25%7D5D=%7B&%7Dyt0=Tampilkan
Baltagi, B. H. (2005). Econometric Analysis of Panel Data
- Third Edition. John Wiley & Sons, 2008.
https://doi.org/10.1017/S0266466600006150
BPS. (2016). Indikator Kesejahteraan Rakyat 2016.
Publikasi BPS. https://doi.org/10.1007/s00717-009-
0309-x
Budiantara, I. N., Diana, R., & Darmesto, S. (2011).
Relationship Pattern of Poverty and Unemployement
in Indonesia. International Journal of Basic & Applied
Sciences, 11 No 6(December), 119127.
Cahyat, A. (2004). Bagaimana kemiskinan diukur ?
Beberapa model penghitungan kemiskinan di
Indonesia. Governance Brief, 2, 18.
https://doi.org/10.17528/cifor/001641
Fajriyah, N., & Rahayu, S. P. (2016). Pemodelan Faktor-
Faktor yang Mempengaruhi Kemiskinan Kabupaten
Kota di Jawa Timur Menggunakan Regresi Data
Panel. Jurnal Sains Dan Seni ITS, Vol. 5, No(2337
3520), (2301-928XPrint)D-45.
Ghozali, I. (2009). Aplikasi Multivariate dengan Program
SPSS edisi III. Semarang: Badan Penerbit UNDIP.
https://doi.org/10.1016/j.oooo.2017.11.003
International Monetary Fund. (2018). World Economic
Update, An Upadte of The Key WEO Projections.
Retrieved from
https://www.imf.org/en/Publications/WEO%0A/Issues
/2018/07/02/world-economic-%0Aoutlook-update-
july-2018%0A
Islam, I. (2015). Poverty , Employment and Wages : An
Indonesian Perspective. In ILO - JMHLW -
Government of Indonesia Seminar on Strengthening
Employment and Labour Market Policies for Poverty
Alleviation and Economic Recovery in East and
Southeast Asia.
Novalia, T. (2018). di Balik Angka Kemiskinan BPS, 18.
Odekon, M. (2015). The SAGE Encyclopedia of World
Poverty
Inflation.https://doi.org/http://dx.doi.org/10.4135/9781
483345727.n415
Saris, Alexander H. 2001. The Role of Agricultural in
Economic Developmentand Poverty Reduction: An
Empirical and Conceptual Foundation. Paper
preparedfor the rural Development Departement of
The World Bank. University of Athens, Athens
Sugema, I., Irawan, T., Adipurwanto, D., Holis, A., &
Bakhtiar, T. (2010). The Impact of Inflation on Rural
Poverty in Indonesia : an Econometrics Approach, (58
(2010)).
Suryahadi, A., Suryadarma, D., & Sumarto, S. (2009). The
effects of location and sectoral components of
economic growth on poverty: Evidence from
Indonesia. Journal of Development Economics.
https://doi.org/10.1016/j.jdeveco.2008.08.003
Suryawati, C. (2005). MEMAHAMI KEMISKINAN
SECARA MULTIDIMENSIONAL =
UNDERSTANDING MULTIDIMENSION OF
POVERTY. Jurnal Manajemen Pelayanan Kesehatan,
JMPK, Vol.
UNDP. (2018). Human Development Data (1990-2015) |
Human Development Reports.
https://doi.org/10.1007/s00338-005-0033-1
World Bank. (2005). INTRODUCTION TO POVERTY
ANALYSIS, 90288.
World Bank. (2018). June 2018 Indonesia Economic
Quarterly: Learning more, growing faster. Retrieved
from
http://documents.worldbank.org/Curated/En/30536152
8210283009/Pdf/126891-WP-PUBLIC-On-6-5-18.Pdf
Yacoub, Y. (2012). Pengaruh Tingkat Pengangguran
terhadap Tingkat Kemiskinan Kabupaten / Kota di
Provinsi Kalimantan Barat. Jurnal Ekonomi Sosial.
Zuhdiyati, N., & Kaluge, D. (2015). KEMISKINAN DI
INDONESIA SELAMA LIMA TAHUN TERAKHIR
( Studi Kasus Pada 33 Provinsi ), (Atalay), 2731.
SEABC 2018 - 4th Sriwijaya Economics, Accounting, and Business Conference
636