Estimated Costs for Single Tuition Fee (STF) using Naïve Bayes
Method
Juhriyansyah Dalle
1a
, Dwi Hastuti
2b
, Taufik Rahman
1c
, A. Akrim
3d
, Sri Erliani
4e
,
Taufik Hidayat
5f
, Siska Devina
4g
, Agustina Lestari
6h
, B. Baharuddin
7i
, Hesti Fibriasari
8j
,
Akhmad Murjani
4k
, Erika Lismayani
9l
, Ahmad Yusuf
10 m
and Candra Kusuma Negara
6n
1
Department of Information Technology, Universitas Lambung Mangkurat, Jl. H. Hasan Basry, Banjarmasin, Indonesia
2
Department of Electrical Engineering, Universtias PGRI Adi Buana, Jl. Ngagel Dadi III No.3B/37, Surabaya, Indonesia
3
Department of Higher Education Management, Universitas Muhammadiyah Sumatera Utara, Jl. Kapten Muchtar Basri
No.3, Medan, Indonesia
4
Department of Public Health, Universitas Cahaya Bangsa, Jl. A. Yani Km. 17, Banjarmasin, Indonesia
5
Department of Management, Universitas Cahaya Bangsa, Jl. A. Yani Km. 17, Banjarmasin, Indonesia
6
Department of Nursing Sciences, Universitas Cahaya Bangsa, Jl. A. Yani Km. 17, Banjarmasin, Indonesia
7
Department of Electrical Engineering Education, Universtias Negeri Medan, Jl. Wiliem Iskandar Pasar V, Medan,
Indonesia
8
Department of French Education, Universtias Negeri Medan, Jl. Wiliem Iskandar Pasar V, Medan, Indonesia
9
Department of Law, Universitas Cahaya Bangsa, PSDKU, Jl. Pemuda, Kuala Kapuas, Indonesia
10
Department of Information Technology, Universitas Cahaya Bangsa, , Jl. A. Yani Km. 17, Banjarmasin, Indonesia
baharuddin.bah, akhmad.murjani9, erikalismayani30}@gmail.com, akrim@umsu.ac.id, hesti@unimed.ac.id,
ahmadyusuf23.ay@gmail.com, candra14780@yahoo.com
Keywords: Decision Support System, STF, Naïve Bayes.
Abstract: The difference in the amount of single tuition fee (STF) paid by students with middle and upper economic
backgrounds causes an injustice gap. This is partly due to the instability of the system used, especially in
terms of STF determination methods. Other additional shortcomings include the criteria entered the system
that is still not enough to be considered in determining STF. Therefore, this study aims to build a web based
STF payment system using the Naïve Bayes, probability, and statistical methods for students to determine the
cost of an institution's tuition fee easily. System testing is carried out by comparing the output and verification
results. This showed that the estimated determination of the cost of STF payments is suitable, with 83.3%.
a
https://orcid.org/0000-0000-5700-2766
b
https://orcid.org/0000-0001-8716-7062
c
https://orcid.org/0000-0002-5653-2298
d
https://orcid.org/0000-0002-3984-9242
e
https://orcid.org/0000-0002-0662-3175
f
https://orcid.org/0000-0001-9659-4890
g
https://orcid.org/0000-0002-0075-6911
h
https://orcid.org/0000-0003-1180-9625
i
https://orcid.org/0000-0001-8334-3030
j
https://orcid.org/0000-0002-8009-4603
k
https://orcid.org/0000-0002-1162-2660
l
https://orcid.org/0000-0002-7963-4852
m
https://orcid.org/0000-0003-2383-9944
n
https://orcid.org/0000-0002-9831-7465
280
Dalle, J., Hastuti, D., Rahman, T., Akrim, A., Erliani, S., Hidayat, T., Devina, S., Lestari, A., Baharuddin, B., Fibriasari, H., Murjani, A., Lismayani, E., Yusuf, A. and Negara, C.
Estimated Costs for Single Tuition Fee (STF) using Naïve Bayes Method.
DOI: 10.5220/0010476702800289
In Proceedings of the 23rd International Conference on Enterprise Information Systems (ICEIS 2021) - Volume 1, pages 280-289
ISBN: 978-989-758-509-8
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
1 INTRODUCTION
The tuition fee of tertiary institutions is one of the
main aspects considered by prospective students
when choosing to further their studies. According to
Gyamfi, Gyamfi, & Qi (2016), tuition fees are
compared with the product, place, process, student
quality, and graduate evidence. Ozekicioglu (2017)
stated that living costs are also considered in the
financial calculations of prospective students. In
contrast, Bates & Kaye (2014) reported that changes
in the amount of payment directly affect the number
of applicants at tertiary institutions. Generally, when
tuition fees are increased, the number of applicants
tends to decrease, and vice versa (Sulistiyo & Soegoto,
2018). However, according to a study carried out by
Burgess, Senior, & Moores (2018), the possibility of
an increase in tuition fees can be minimized by
improving the quality of service and providing a
general view of universities. Lassila (2011) stated that
providing financial assistance also enables students
from low-income families to further their studies into
tertiary institutions.
Therefore, a policy regarding the proportional
tuition fee, which does not disrupt the student's
family's financial flow, is needed (Surtiati, Siregar, &
Andati, 2017). This led to the evolution of the STF
policy, which was applied in accordance with the
Minister of Education and Culture Regulation
Number 55 of 2013. This was further amended to
Minister of Education and Culture Regulation
Number 73 of 2014, which was based on an
evaluation of the implementation of single tuition fees
for the 2013-2014 academic years at state universities.
Additional changes occurred in 2015 and 2016
when the law was amended to No. 22 of 2015 and No.
39 of 2016, which stated that the costs borne by
students need to be adjusted to the economic
capabilities of their parents, or guidance. Furthermore,
legal certainty in determining the costs borne by
students need to be arranged regarding the cost of
single tuition at state universities. In 2017 the law was
amended by the Minister of Education and Culture
Regulation to No. 39 of 2017 to regulate the costs
borne by students according to their parents'
economic capabilities or other parties that financed
their education. This aimed at arranging a single
tuition fee on state universities within the Ministry of
Research, Technology, and Higher Education
(Kemenristek-Dikti, 2017).
Dunga & Mncayi (2016) stated that improving the
payment system is an absolute thing to do in order to
assist students. However, this is not always directly
proportional to enhancing the quality of higher
education, made for the principles of accountability
(Fortunata & Toni, 2020). This law was also amended
to enable tertiary institutions to pay attention to
aspects of parents' economic ability on an ongoing
basis (Sumarno, Gimin, & Nas, 2017). This is also to
prevent any form of protest likely to occur due to the
unilateral determination by the stakeholders (Kajawo,
2019).
Implementing the STF system is to ease the
financial burden of education funding on students
(Fauzi, 2017). STF is the amount of fees that need to
be paid by students each semester. It is divided into
several groups, and each state university has 5
divisions, with some having more such as Indonesia
Educational University.
Universitas Lambung Mangkurat Banjarmasin
adopted the STF System comprising of 5 groups in
their 2013 academic year. With this system, tuition
fees are paid every semester without building fees
(Universitas Lambung Mangkurat, 2017). During this
time, the university had a system to determine the
class of STF. However, the required criteria were still
lacking and did not use methods/algorithms to make
calculations, therefore, the obtained results were
inadequate in decision making. Besides that, with the
existing system, prospective students are unable to
determine the estimated cost of payment to the
applied tertiary institution, which is very important
(Galvin, Nieuwnhuis, Phillips, Thain, & Kokkori,
2015).
Furthermore, Wardi, Abror, & Trinanda (2018),
stated that the current STF system was inadequate and
had a significant effect on students' desire to move to
tertiary institutions. Therefore, for this reason, a web-
based system for determining the cost of payment for
STF was developed. This system uses a classification
method known as the Naive Bayes, which comprises
probability and statistical methods to predict future
opportunities based on past experiences. This is also
known as the Bayes Theorem.
The use of the Naïve Bayes method evolved due
to the predetermined use of data in various fields all
over the world (Siledar & Chaudhary, 2017). Zhang
and Gao (2011) used the Naïve Byes method in text
classification based on the probability of students'
ability in class. Furthermore, Safri, Arifudin, &
Muslim (2018) used it as a fundamental method to
determine those that have the right to obtain a health
insurance card provided by the state.
The Naïve Bayes method is also currently used in
the field of economics and education. For example,
Lagman et al. (2019) used this method to predict the
speed and number of students graduating from
college. Mirza (2019), also used this method to
Estimated Costs for Single Tuition Fee (STF) using Naïve Bayes Method
281
determine the right marketing and promotion
strategies to attract new students. In economics,
Kricehene proved that this method can be used to
determine the probability of a bank's financial risk
(2017). Therefore, the Naïve Bayes method can be
used to determine the amount of single tuition for
students in tertiary institutions.
With this system, prospective students can
determine the estimated amount of Fee to be paid
before the rector for proper verification.
2 METHODOLOGY
This research was carried out in five stages, namely
planning, analysis, design, implementation, and
system.
2.1 Planning
This is the earliest stage carried out to determine the
purpose of making the system. This stage involves
data collection, study libraries, interviews, and
observations.
A literature study is carried out as a reference,
source, and theories in research. The references in this
study are journals, e-books, books, and the internet
(electronic media).
Interviews stage is carried out with the directorate
concerned on the STF that is the finance department.
The topics discussed were, related to the definition of
STF, how it is determined, and the various obstacles
at Universitas Lambung Mangkurat.
After the interview stage, this process is carried
out to determine the registration process and fees for
prospective new students. Observation results were
used to make the system, which is later used to form
the data decision support system for STF.
2.2 Analysis
The analysis phase is carried out to analyze,
understand, and provide a detailed document of the
problems, solutions, and system requirements. It
consists of a system, problem, and data analysis.
Systems analysis is an inseparable part of the
study of business (Fotache, Olaru, & Iacoban, 2015),
and software products. It is useful for an in-depth
study of the needs of a product for suitable usage
(Logunova et al., 2018). Analysis of the existing
system enables Universitas Lambung Mangkurat to
determine the class of STF. However, the criteria
entered into the system are still lacking, and
methods/algorithms are not used in making
calculations, therefore, the results are still inadequate
in making decisions.
The problem is analyzed to identify and solve the
difficulties encountered (Annamalai, Kamaruddin, &
Azid, 2013). Vizioli & Kaminski (2017) stated that
understanding the problem also means providing in-
depth descriptions. Innovative solutions are provided,
assuming problem analysis is appropriate (Kim, Choi,
Chang-Soo, & Park, 2018). Currently, prospective
new students are unable to determine the amount of
STF payment fees based on the criteria of the applied
tertiary institution. Therefore, for this reason, a web-
based STF fee payment estimation system was
developed to determine the estimated STF fee for
prospective new students. This system uses a
classification method known as the Naive Bayes,
which comprises the probability and statistical
methods to predict future opportunities based on past
experiences.
This stage is used to analyze the data needed in
this research case study, such as parents' income,
father's income, mother's income, PLN (electric
power), number of families, number of dependents,
and Indonesia Smart Card. These parameters are
shown in Appendix 1.
A total of 400 data from the university and 40
from the manual calculation examples were used in
this research (See appendix 2).
Data testing aims to determine the level of the
presentation obtained by the Naive Bayes method in
knowing how accurate the method is in solving STF
problems. It was obtained from 30 data.
2.3 Design
At this stage, the tools used for system requirements,
namely a computer/laptop and the software part is
XAMPP, notepad, and web browser were determined.
In addition, a flowchart or UML system was used to
make the system.
This study's research material includes the results
of surveys and observations carried out at Universitas
Lambung Mangkurat. The tool used to implement the
decision support system in this study is a computer,
and the software part is XAMPP, notepad, and web
browser.
The section comprises of planning or drawing a
sketch that functions for the concept of making the
system. The design can be carried out by developing
a flowchart or UML system.
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Figure 1: Activity Diagram of Prospective Students.
Figure 2: Admin Activity Diagram.
2.4 Implementation
This phase translates the design results in the previous
stage into a system with a programming language. At
this stage, a system is designed to estimate the cost of
determining STF web-based payments for
prospective new students.
2.5 System
At this stage, a system is formed, and testing is carried
out to ensure it is made according to the study's
objectives and needs. Furthermore, at this stage, a
number of tests, including the Verifier Test, were
carried out to determine the STF class accuracy.
Black box Testing is a functional test used to test
software without knowing the internal structure of the
code or program. Usability Testing is one way to
determine whether users can easily use an
application. It is also used to determine a program’s
efficiency and effectiveness and help users achieve
their goals.
3 RESULTS AND DISCUSSIONS
In the following example, it is assumed that the data
is taken from a user and entered into the system. Table
1 shows the training and prospective student data
selected based on the classification criteria of the STF
class.
Approximately 400 training data were used to
perform Naive Bayes calculations, as shown in table 1.
The Naive Bayes method, used the following
stages of calculation, namely: (1) counting the
number of classes / labels, (2) count the same number
of cases with the same class, (3) multiplying all
results of group variables 1, 2, 3, 4, and 5, (4)
comparing the high probability value. It found that the
highest probability value is 0.005, which means it is
included in group 3 (See appendix 3).
Table 1: Case Studies.
3.1 System Process
STF classification results were obtained from data
collection and manual processing using the Naive
Bayes method. This was followed by moving the
database into the system in order to classify user
entries.
The following is the process of calculating the
system, starting with entering data according to
criteria for proper classification in order to provide
results in the form of STF classes.
Admin System Database
Me nu
Sele ction
Vie w Data
Take Data
Display
SNPTN/SBMPTN
Menu
Aspects Note
1 Parents' incomes 2.000.000 – 2.500.000
2 Father's income 2.500.000
3 Mother's income 0
4 Electrical power 450 kwh
5 Number of families 5
6 Number of dependents 4
7 Indonesia smart card (kip) None
Estimated group ?
Estimated Costs for Single Tuition Fee (STF) using Naïve Bayes Method
283
Figure 3: Main Page.
3.2 Main Page
This page consists of 3 menus in the header section,
namely STF, New STF, and Login. The STF menu
functions by checking the results of the proof that has
been processed, while the new STF menu serves as
the input of STF data for prospective students of
ULM to determine their STF group
recommendations. The last is the login menu, which
enables admins to log in to the back end of the website
to manage STF data of registered prospective ULM
students.
Figure 4: STF New Filling Page.
3.3 STF New Page
On the new STF page, prospective students are asked
to fill in their data for the system to determine their
estimated class.
First, the user fills in their personal data along
with information on their "Parents' Income, Father's
Income, Mother's Income, Electricity (PLN), Number
of Families, Number of Dependents, and Smart
Indonesia Cards."
After filling out the user selects the process button
and classifies the data using the Naive Bayes
algorithm as follows:
1. Count the number of classes/Labels.
2. Count the same number of cases with the same
class.
3. Multiply all the results of Group 1, 2, 3, 4, and 5
variables.
4. Then compare and determine the highest
probability value.
5. Store in a database and the system output in the
form of STF results.
Figure 3 is a display of the results of the output
system, which has carried out the Naive Bayes
classification process.
Figure 5: Preview Results from the System.
3.4 Verification Test
Verification testing is carried out by comparing the
results issued by the system with the verifier. The
formulas used for testing system results are as
follows:
Total Correc
t
Total Data
 100% accurac
y
results
(1
)
The test results used to estimate the cost of STF
payments using the Naive Bayes method at
Universitas Lambung Mangkurat is calculated as
follows:
Accurac
y
results
25
30
 100% 83,3%
(2
)
Therefore, the percentage level of conformity on
the system’s outputs with the verified results is
83.3%.
The explanation shows that several factors
influence the calculation to determine the amount of
single tuition. The first is the family’s economic
background, which is the basis for determining the
amount of a single tuition payment cluster and
maintaining inequality to ensure the interest of going
to college is maintained (Tang, Tang, & Tang, 2004).
Previous studies have shown that cluster efficiency
helps maintain the quantity and perception of students
that register at a tertiary institution. Burer & Fethke
(2016) stated that the distribution of payments in the
cluster encourages students to pay for tuition.
ICEIS 2021 - 23rd International Conference on Enterprise Information Systems
284
Indirectly, the quantity of students’ impacts on
improving the physical quality of the campus, leads
to good maintenance and makes the instructors
serious (Wanjala & Ali, 2017). Lin (2016) reported
that the suitability of the amount of payment with
students' economic ability directly impacts their
learning abilities and their desire to achieve academic
success.
The next key factor is the use of the Naïve Bayes
method, a key factor due to its ability to classify data
in the appropriate cluster (Wibawa et al., 2019).
Kaviani & Dhotre (2017) stated that the use of
algorithms in this method overrides subjective
assumptions and makes calculations more accurate.
In addition, it has proven to be able to prevent
corporations, institutions, and industries from
financial risk due to incorrect calculation of funds
received (Jang, Lee, Lee, & Han, 2015). Not only in
the field of finance, the use of Naïve Bayes is also
able to accurately predict the number of diligent
students according to their performance (Shaziya,
Zaheer, & G.Kavitha, 2015).
The benefits provided from the use of naïve Bayes
have proven to be able to provide adequate assistance
for the main educational institutions in calculating
costs (Makhtar, Nawang, & Shamsuddin, 2017). In
addition, the implementation of the Electronic
information system facilitates students and operators
in determining STF. Due to the current digital era, the
use of information technology is a necessity in all
fields (Dalle et al., 2015). Therefore, further research
is needed on a broader study of the use of Naïve
Bayes in educational institutions due to the limited
scope of this study.
4 CONCLUSION
The following conclusions are drawn from the
research carried out by observing and testing the
various stages of the decision support systems:
1. Naive Bayes method can be applied to estimate
and determine the cost of STF payments at
Universitas Lambung Mangkurat.
2. The classification process is carried out using the
Naïve Bayes method, which works by classifying
probabilities and statistics based on previous data.
3. The results issued or recommended by the system
are suitable and in accordance with 83.3%.
ACKNOWLEDGEMENTS
We are thankful to employee of main office of
Universitas Lambung Mangkurat who facilitate us in
collecting data especially for single tuition fee. Also,
we thankful to Rector Universitas Cahaya Bangsa,
Rector Universitas Negeri Medan, Dean of Faculty of
Engineering ULM, and Head of Department of
Information Technology who gave us more space for
discussion of the paper.
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APPENDIX
Appendix 1: List of STF Parameters / Criteria.
10.000.000
3. Mother's income
500.000
1
750.000
1
1.000.000
1
1.250.000
2
1.500.000
2
2.000.000
2
2.500.000
2
3.000.000
2
4.000.000
3
5.000.000
4
6.0000.000
4
7.000.000
5
8.000.000
5
9.000.000
5
10.000.000
5
4. Electrical
p
owe
r
450kwh
1
900kwh
2
1300kwh
3
2200kwh
4
>2200kwh
5
5. Number of families
>6
1
6
2
4
3
3
4
2
4
6. Number of de
endents
>4
1
4
2
3
3
2
4
1
5
STF Parameters / Criteria STF Groups
STF Parameters / Criteria STF Groups
1. Parents' Income
0‐500.000
1
500‐1.000.000
1
1.000.0000‐1.500.000
1
1.500.000‐2.000.000
2
2.000.000‐2.500.000
2
3.000.000‐4.000.000
3
4.500.000‐5.000.000
4
5.000.000‐6.000.000
4
6.500.000‐7.000.000
5
7.500.000‐10.000.000
10.000.000‐15.000.000
5
5
2. Father's income
500.000
1
750.000
1
1.000.000
1
1.250.000
2
1.500.000
2
2.000.000
2
2.500.000
2
3.000.000
2
4.000.000
3
5.000.000
4
6.0000.000
4
7.000.000
5
8.000.000
5
9.000.000
5
10.000.000
5
3. Mother's income
500.000
1
750.000
1
1.000.000
1
1.250.000
2
1.500.000
2
2.000.000
2
2.500.000
2
3.000.000
2
4.000.000
3
5.000.000
4
6.0000.000
4
7.000.000
5
8.000.000
5
9.000.000
5
10.000.000
5
Estimated Costs for Single Tuition Fee (STF) using Naïve Bayes Method
287
Appendix 2: Data used as calculation experiments.
No Parents' Incomes
Father's
income
Mother's
income
Electrical
power
Number of
families
Number of
dependents
Indonesia
Smart Card
STF Group
1 2.500.000 - 3.000.000 - 2.000.000 1300 kwh 3 1 None Category III
2 500.00 - 1.000.000 6.000.000 - 900 kwh 5 2 None Category V
3 2.000.000 - 2.500.000 2.500.000 - 900 kwh 5 4 None Category III
4 1.500.000 - 2.000.000 2.000.000 - 900 kwh 4 3 None Category III
5 500.000 - 1.000.000 - - - - - None Category IV
6 500.000 - 1.000.000 - 1.000.000 450 kwh 5 >4 None Category II
7 500.000 - 1.000.000 500.000 - 450 kwh >6 3 None Category I
8 0 - 500.000 - 500.000 450 kwh 6 3 None Category I
9 0 - 500.000 1.000.000 - 450 kwh 4 3 None Category III
10 4.000.000 - 5.000.000 3.000.000 - 900 kwh 6 >4 None Category IV
11 7.500.000 - 10.000.000 - 500.000 900 kwh 3 2 None Category V
12 500.000 - 1.000.000 - - - - - None Category IV
13 500.000 - 1.000.000 - - - - - None Category IV
14 2.000.000 - 2.500.000 1.500.000 - 900 kwh 5 3 None Category III
15 500.000 - 1.000.000 1.000.000 - 450 kwh 3 2 None Category III
16 1.500.000 - 2.000.000 - - - - - None Category IV
17 1.000.000 - 1.500.000 - - 900 kwh >6 4 None Category IV
18 500.000 - 1.000.000 - - - - - None Category IV
19 1.000.000 - 1.500.000 - - - - - None Category IV
20 1.500.000 - 2.000.000 1.500.000 - 900 kwh 6 4 None Category III
21 1.500.000 - 2.000.000 1.500.000 - 900 kwh 3 1 None Category III
22 0 - 500.000 - 1.500.000 1300 kwh 3 2 None Category III
23 4.000.000 - 5.000.000 4.000.000 4.000.000 900 kwh 4 2 None Category V
24 1.000.000 - 1.500.000 1.500.000 - 450 kwh 4 3 None Category III
25 500.000 - 1.000.000 1.000.000 - 900 kwh 4 2 None Category III
26 2.500.000 - 3.000.000 3.000.000 - 450 kwh 4 3 None Category IV
27 1.500.000 - 2.000.000 - - - - - None Category IV
28 4.000.000 - 5.000.000 5.000.000 - 900 kwh 5 4 None Category V
29 0 - 500.000 - - - - - None Category IV
30 3.000.000 - 4.000.000 - 4.000.000 900 kwh 5 3 None Category IV
31 1.500.000 - 2.000.000 - - - - - None Category IV
32 0 - 500.000 - - - - - None Category IV
33 1.000.000 - 1.500.000 - - - - - None Category IV
34 1.500.000 - 2.000.000 - - - - - None Category IV
35 1.000.000 - 1.500.000 - - - - - None Category IV
36 500.000 - 1.000.000 - - - - - None Category IV
37 500.000 - 1.000.000 1.000.000 - 900 kwh 5 1 None Category III
38 0 - 500.000 750.000 - 450 kwh 6 2 Yes Category I
39 0 - 500.000 - - 450 kwh 3 1 Yes Category II
40 500.000 - 1.000.000 - 500.000 450 kwh 4 3 None Category I
.
.
.
.
.
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
-
400 0 - 500.000 - - 1300 kwh 4 3 None Category III
ICEIS 2021 - 23rd International Conference on Enterprise Information Systems
288
Appendix 3: Calculation Steps using Naive Bayes.
1. The first step is counting the number of classes/ labels
- P (Y = Group 1) = 4/40 "The amount of group 1 data in the
training data is divided by the total amount of data"
- P (Y = Group 2) = 2/40 "The amount of group 2 data in the
training data is divided by the total amount of data"
- P (Y = Group 3) = 12/40 "Total group 3 data in the training
data is divided by the total amount of data"
- P (Y = Group 4) = 18/40 "Amount of group 4 data in the
training data is divided into the total amount of data"
- P (Y = Group 5) = 4/40 "Amount of group 5 data in the
training data is divided into the total amount of data"
2. Second step is to count the same number of cases with the same
class
A1. P (Parents’ Income = 2,000,000-2,500,000 | Y = Group 1)
= 0/4
B1. P (Parents’ Income = 2,000,000-2,500,000 | Y = Group 2)
= 0/2
C1. P (Parents’ Income = 2,000,000-2,500,000 | Y = Group 3)
= 2/12
D1 P (Parents’ Income = 2,000,000-2,500,000 | Y = Group 4)
= 0/18
E1. P (Parents’ Income = 2,000,000-2,500,000 | Y = Group 5)
= 0/4
A2. P (father's income = 2,500,000 | Y = Group 1) = 0/4
B2. P (father's income = 2,500,000 | Y = group 2) = 0/2
C2 P (father's income = 2,500,000 | Y = group 3) = 1/12
D2 P (father's income = 2,500,000 | Y = group 4) = 0/18
E2 P (father's income = 2,500,000 | Y = group 5) = 0/4
A3. P (Mother’s income = 0 | Y = group 1) = 2/4
B3. P (Mother’s income = 0 | Y = group 2) = ½
C3. P (Mother’s income = 0 | Y = group 3) = 10/12
D3. P (Mother’s income = 0 | Y = group 4) = 16/18
E3. P (Mother’s income = 0 | Y = group 5) = 2/4
A4. P (Electrical power = 450kwh | Y = Group 1) = 4/4
B4. P (Electrical power = 450kwh | Y = Group 2) = 2/2
C4. P (Electrical power = 450kwh | Y = Group 3) = 3/12
D4. P (Electric power = 450kwh | Y = Group 4) = 1/18
E4. P (Electrical power = 450kwh | Y = Group 5) = 0/4
A5. P (Number of Families = 5 | Y = Group 1) = 0/4
B5. P (Number of Families = 5 | Y = Group 2) = ½
C5 P (Number of Families = 5 | Y = Group 3) = 3/12
D5 P (Number of Families = 5 | Y = Group 4) = 1/18
E5 P (Number of Families = 5 | Y = Group 5) = 2/4
A6. P (Number of Dependents = 4 | Y = Group 1) = 0/4
B6. P (Number of Dependents = 4 | Y = Group 1) = 0/2
C6. P (Number of Dependents = 4 | Y = Group 1) = 2/12
D6. P (Number of Dependents = 4 | Y = Group 1) = 1/18
E6. P (Number of Dependents = 4 | Y = Group 1) = ¼
A7. P (Smart Indonesia Card = None | Y = Group 1) = ¾
B7. P (Smart Indonesia Card = None | Y = Group 2) = ½
C7. P (Smart Indonesia Card = None | Y = Group 3) = 12/12
D7. P (Smart Indonesia Card = None | Y = Group 4) = 18/18
E7. P (Smart Indonesia Card = None | Y = Group 5) = 4/4
3. Thirdly, multiply all the results of Group 1, 2, 3, 4, and 5
variables
A. -A1*A2*A3*A4*A5*A6*A7=
0/4*0/4*2/4*4/4*0/4*0/4*3/4 = 0
B. -B1*B2*B3*B4*B5*B6*B7=0/2*
0/2*1/2*2/2*1/2*0/2*1/2=0
C. -C1*C2*C3*C4*C5*C6*C7=
2/12*1/12*10/12*3/12*3/12*2/12*12 =0.005
D. -D1*D2*D3*D4*D5*D6*D7=
0/18*0/18*16/18*1/18*1/18*1/18*18/18= 0
E. -E1*E2*E3*E4*E5*E6*E7=
0/4*0/4*2/4*0/4*2/4*1/4*4/4= 0
4. Then compare and identify the highest probability value with the
results seen from the C value which is 0.005. This means it can
be categorized in group 3.
Estimated Costs for Single Tuition Fee (STF) using Naïve Bayes Method
289