Academic Performance Prediction Model for Teacher's Training Colleges Using Machine learning Approach
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Date
2020-08-19
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Hawassa University
Abstract
Data mining is the process of extracting novel or previously unknown information from a
large amount of data. The purpose of this study is to develop an academic performance
prediction model and identifying the factors that affect academic performance of college
student using data mining techniques. The data used for this study are 1023 active students
from HCTE in 2018/19 academic year. For the consumption of this research, both primary
and secondary data was used. Primary data such as age, gender, previous high school,
department, library usage, study hours, sport interest, mother education, father education,
time spent in social media, family support and economic status of family is collected by
means of questionnaire. Secondary data was obtained from the HCTE registrar office.
The prediction model was developed using multilayer perceptron (MLP) classification
algorithm, Naive Bayes and J48 and correlation based feature selection (CFS) is applied to
identify the predictive attributes of academic performance. Finally, Multilayer perceptron,
Naive Bayes and J48 is compared using the same dataset. According to the result of the
experiments, Multilayer perceptron using all attributes with test method of 10-fold cross
validation and accuracy 60.6% gives better result compared to Naive Bayes, J48 and MLP
after applying attribute selection. The study findings also showed that sex of the student, total
courses credit hours taken by the students, study hours, assignment performance and library
usage of the students are identified as a significant factor affecting academic performance.
WEKA 3.8.1 tool was used for data mining process.
