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=1→m ak Yit-k + Σ1-1→n b1Xit-1
+ u1it (5)
Xit = α0 + Σk=1→m αk Xit-k + Σ1-1→n 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