The Causality between Education and Health Funds Allocation to
Poverty in Indonesia
Muhammad Nasir
1
, Muhammad Farid
1
and Chenny Seftarita
1
1
Faculty of Economics and Business, Syiah Kuala University, Darussalam, Banda Aceh – Indonesia
Keywords: Education Fund, Health Fund, Poverty, Granger Causality
Abstract: This study aims to examine the causality between education and health fund to poverty in Indonesia. The
data used is quarterly from 1998Q1 to 2017Q4. This research uses granger causality model. The results
show on lag 1, there is no causality between education, health, and poverty. Similar results are also found in
lag estimates 4. Estimates of lag 2 indicate education and poverty have bidirectional relationships.
Meanwhile health and poverty have unidirectional relationships. The peak lag 3 illustrates only one-way
education on poverty vice versa. But health found no causality. The recommendation that the allocation
should have an impact and effective in the short term and increase the allocation of health budget.
1 INTRODUCTION
Poverty has been a problem facing by developing
countries. It has been a serious problem for the
developing countries. It is also a problem for
Indonesia as the country is among developing
countries. Poverty is also viewed as a complex
problem with many dimensions includes social,
economic, culture, and other aspects. In Indonesian
case, poverty causes the difficulties for the people in
fulfilling their needs. Poor people face the lack of
access for a better life.
Indonesian Statistic Board (BPS) via
www.bps.go.id stated that in 1996, the amount of
poor people in Indonesia were 22.5 million people.
The number had increased for the year 1998 with the
amount of 49.5 million people. The sharp increase
for that period of time one was caused by the
financial crisis in South East Asian Countries
including Indonesia. The economic performance in
1998 showed that Indonesian economy had grown
by minus 4 percent which caused many economic
problems such as high unemployment and increasing
in the poverty rate. But, many years after the
economic crisis, Indonesian economy had recovered
since 2005 with the decrease in poverty.
In order to reduce the poverty, Indonesian
government has the policy on increasing human
capital via education, increasing health care via
health insurance skim (BPJS), income support, and
mandatory education requirement (12 years of
schooling), and many other programs. Education has
been the focus of government with budget allocation
as much as 20 percent of total national government
budget (APBN) and regional government budget
(APBD).
The allocation of funds for education and health
is mainly plotted from the tax. Since 2000,
Indonesian government has plotted 20 percent of
APBN for education and 5 percent of APBN for
health care. The efforts in reducing poverty
continuously have been the key for the government.
The policy is also adjusted with the economic
conditions.
Theoretically, poor people face vicious circle of
poverty. According to Chambers in Syarifuddin
(2017), poor households and neighborhood has the
link in one circle that cause poor households in
poverty trap. There are five weaknesses that owned
by poor households, those are the limitation in
assets, weak physical condition, isolation,
vulnerability, and not empowered. On the other
sides, poverty can also be caused by the limitation in
capital as the economic factors. This can be
explained by income, saving, investment, and
productivity.
In terms of government expenditure, according
to Saifuddin (2017), the government expenditure
from one period to another period is not based on
492
Nasir, M., Farid, M. and Seftarita, C.
The Causality between Education and Health Funds Allocation to Poverty in Indonesia.
DOI: 10.5220/0009503204920496
In Proceedings of the 1st Unimed International Conference on Economics Education and Social Science (UNICEES 2018), pages 492-496
ISBN: 978-989-758-432-9
Copyright
c
2020 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
national income. In the economic downfall, for
instance the income from tax decreases. But, in
order to reduce unemployment, the government
needs to release development programs. Thus, the
expenditures have to be increased.
One of the important expenditure of government
is for education. According to Atmanti (2005), there
are many factors as the reasons for the importance of
education development. First, the higher education
level expands the knowledge of the people with high
rationality in thinking. Second, education makes the
people possible in learning technical knowledge that
is needed in ruling modern firms and other activities.
Third, a better knowledge got from education
becomes the stimulus in creating new innovations in
technical, economical manner, and other aspect of
life.
Furthermore, Ehrenberg et al. (2012) viewed
education as the investment. According to him,
fulfilling education means it needs some amount of
funding. Investment in human capital has cost used
in some period of times with the expectation of high
return in the future. In case of investment in
education, one people expect a better return in form
of higher income, increase in work satisfaction and
higher social status.
Muhi (2000) explained that human capital
investment is one of important priority for majority
of people. Majority of people have the expectation to
continue and finish education in the higher level.
Human capital has direct contribution in creating
national assets.
Another Indonesian government expenditure
focus is on health care. This expenditure can
strengthen the health status of the people. Health
program also can give the welfare for the people.
With government involvement, the people can
reduce their expenditure for health.
According to Azwar (2004), health a person is
not only can be seen from physic but also mental.
The body health includes physical, mental, and
social aspects. All those aspects affect the
performance of each individual in doing their
activities such as working and leisure times.
Based on the research background and some
theoretical review, this paper is aimed in analyzing
the causality between education and health fund
allocation on the poverty in Indonesia. The rests of
this paper are designed as follow. Second part is the
methodology, third is research findings, and the last
is conclusion.
2 METHODOLOGY
The method applied in this study was the causality
of poverty in Indonesia using education and health
funds. The period of observation was between years
1998 to 2017 with the observation as much as 19
years. Due to the limitation of data, time series
analysis needs long period of data, thus the
researcher had done the interpolation from yearly
data into quarterly data. Thus, the observation period
had become from 1998Q1 to 2017Q4 with the
sample as much as 76.
The kind of data used in this study is time series
data as secondary data source from Indonesian
Statistic Board (BPS), Ministry of Finance, World
Bank, and others.
The method of analysis used in this research is
quantitative analysis with time series data. The
model of analysis used is the causality analysis
between education and health funds and education
with Granger Causality Test. The use of this is in
order to understand the causality relationship
reciprocally between the variables, where in one side
the dependent variable is affected by independent
variables, and on the other side, the independent
variables can replace the dependent variable
(Saifuddin, 2017).
So far, the formula used in the study are as follow:
1. KMS
t
=
0
+
1
ΔKMS
t-1
+
2
ΔGOVE
t........
(1)
2. ΔKMS
t
= β
0
+ β
1
ΔKMS
t-1
+ β
2
ΔGOVH
t......
(2)
3. ΔGOVE
t
= π
0
+ π
1
ΔGOVE
t-1
+ π
2
ΔKMS
t...
(3)
4. ΔGOVH
t
= μ
0
+ μ
1
ΔGOVH
t-1
+ μ
2
ΔKMS
t..
(4)
Where:
KMS = the amount of poor people
GOVE = share of the allocation of government fund
to education.
GOVH = share of the allocation of government fund
to health.
The estimation of regression model during the
period of the research uses Granger Causality.
Following Holzt-Eakin, Newey and Rosen, the
Granger Causality Test is formulated in the form of
vector autoregresive (Arfa, 2016) as follow:
Yit = a0 + Σk=1m ak Yit-k + Σ1-1n b1Xit-1
+ u1it (5)
Xit = α0 + Σk=1m αk Xit-k + Σ1-1n β1 Yit-
1 + u2it (6)
The time series procedures in the test were
applied such as Unit Root Test (Rosadi, 2012; Arfa,
2016), and the length of lag test as explained by
Gujarati (2003). According to him, in testing the lag
in Granger Causality Method, it needs the
determination of lag into some variables in order to
The Causality between Education and Health Funds Allocation to Poverty in Indonesia
493
give better estimation. The more length of lag, the
less will be the degree of freedom (df) of the model,
while the shorter lag will result in error in (Gujarati,
2003).
3 RESULT AND DISCUSSION
The Stationarity Test
Stationarity test has become necessary condition and
first step in estimation of model for some specific
time period mainly in the model of Granger
causality. This test is undertaken in order to test that
the variables in model has the stable pattern or
stationary or not. If the time series data directly
analyzed thus will give false regression analysis.
This will effect in bias conclusion and miss policy
implication. The result of test is as in Table 1.
Table 1: The Result of Stationary Test of ADP and PP
Variable
ADF PP
Level
I(0)
First-
Difference
I (1)
Level
I(0)
First-
Difference
I (1)
KMS -1.86 -3.66*** -1.97 -3.35**
GOVE -1.64 -3.88*** -1.87 -4.11***
GOVH -1.69 -2.67* -1.99 -3.59***
Source: Output Eviews, 2018. ***, **, and * show the level of significance of
1%, 5 %, and 10%.
The stationarity test in this study was using
Augmented Dickey-Fuller (ADF) and Phillips-
Perron (PP). Table 1 show that the poverty variable
(KMS), education variable (GOVE), and health
variable (GOVH) have unit root at level shown by
the insignificant value of ADF and PP or accepted
H0.
Then, the stationarity again test at first difference
and found that the variables of poverty, education,
and health do not have unit root or stationary with
ADF 1 percent and 10 percent, while PP are 5 and 1
percent.
Optimal Lag Test
The optimal lag test is important in Granger
Causality Test. The lag has the function in
explaining how long the effect of one variable on
other variable. Thus, it is needed to undertake the
optimal lag from each path. This can be done by
using Akaike Information Criterion (AIC), Schwarz
Bayesian Criterion (SC), and Hannan Quinn
Criterion (HQ). The expected value is the smaller
one.
Table 2 explained the optimal lag using lag limit
5. The result shows the same lag at 5. The result
shows the similarity for AIC at 3 lag, SC at 3 lag,
and HQ at 3 lag. Based on those three criteria, thus
in this research was used lag 3 as the optimal lag.
Table 2: Lag Information Criteria
Lag AIC SC HQ
0 11.266 11.358 11.303
1 3.112 3.482 3.620
2 -1.167 -0.518 -0.908
3
-2.320* -1.393* -1.949*
4 -2.253 -1.048 -1.772
5 -2.078 -0.594 -1.485
Sourcer: Estimation result
Granger Causality Test and the Implications
Table 3 show the causality relationship between the
variables using some lags. The estimation result
using suitable optimal lag is shown at lag 3, while
the use of lag 4 in order to verified the relationship
between variables. First, the reduction in poverty is
caused by other factors.
Table 3: The Results of Grabger Causality for Education, Health, and Poverty
Dependent
variable
Independent variable
KMS GOVE GOVH
La
g
1
KMS - 1.605 0.011
GOVE 1.509 - -
UNICEES 2018 - Unimed International Conference on Economics Education and Social Science
494
GOVH 0.437 - -
La
g
2
KMS 16.138*** 7.310***
GOVE 13.685*** - -
GOVH 1.648 - -
La
g
3
KMS - 2.892** 0.770
GOVE 2.137 -
GOVH 0.730 -
La
g
4
KMS - 1.810 0.539
GOVE 1.613 - -
GOVH 0.621 - -
Source: Estimation Result ***, **, and * show the level of significance at
1%, 5 %, and 10%.
Second, the estimation result at lag 2 give the
different result with lag 1. The value of F statistic for
education is 16.138 and for health is 7.310 which are
significant at 1 percent. This explain that the two
variables have the relationships with poverty up two
the second last period or 6 months has the significant
impact compared to first quarter. The conclusion is
that education and poverty have bidirectional
relationship or Granger causality. While health and
poverty have one direction relationship or
unidirectional.
Third, lag 3 shows that the optimal lag explain
that the variable of education has the effect on
poverty with F value is 2.892 and significant at 5
percent. In contrast to health and poverty, the
causality relationship was not happen. This means
that the allocation of education fund has the impact
on poverty at quarter 3 previously
Finally, lag 4 is the effect of education allocation
fund period -1 year on poverty. The result shows the
same estimation of causality of lag 1 where there are
no causality between education, health, and poverty.
4 CONCLUSION
Education and health are the basic need that are the
right of the people, but the problem is not all these
things are fulfilled especially for the poor people.
The estimation results dynamically show the
allocation of education fund effect poverty but it is
not immediately but needs time from 6 to 9 months.
But, the allocation of health fund has the effect on
the poverty but in 6 months. The allocation of
education and health funds by the government show
there is ineffectiveness in reducing poverty. Thus,
the government needs to increase the effectiveness
of the fund. Then, the share of health fund from
national budget (APBN) is needed to be increased
for the poor people.
ACKNOWLEDGEMENTS
The researchers would like to thank the Dean,
Lecturers, and also the student of Faculty of
Economics and Business of Syiah Kuala University
for the support of this study.
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