Publication: Knowledge Discovery with Data Mining for Predicting Students’ Success Factors in Tertiary Education System in Sri Lanka
DOI
Type:
Article
Date
2017-10-31
Journal Title
Journal ISSN
Volume Title
Publisher
University of Moratuwa, Sri Lanka
Abstract
Knowledge discovery in educational data would
be so basic to determine better expectations on the
undergraduates. Distinguishing proof of the
components influence to the execution of
undergraduates in light of various attributes will be
supportive for instructors, educators and managers
viewpoints. This paper endeavors to utilize different
data mining ways to deal with find forecast manages
in undergraduates’ data to distinguish the
components influence to the scholarly
accomplishment in their tertiary education. The
approach of this exploration observed the aftereffects
of three mining algorithms with about 3800
undergraduates’ records and the calculation which
demonstrated the most elevated exactness has chosen
as the best model and the connections acquired
through that were gotten to foresee various elements
against the objective of whether they will get the
degree or not following three years of the university
life. Naïve Bayes, Decision Tree and Support Vector
Machine were used in predicting the most affecting
factors to the performance of students. According to
the prediction accuracy levels, the results of
Decision Tree were selected since it outperforms the
rest for the selected data set. Finally, the results were
evaluated using a correlation analysis to select the
most prominent factor. According to the test, the age,
past failure modules, performance of past semesters
were selected as the most influencing factors to the
success or failure of the students in tertiary
education system in Sri Lanka.
Description
Keywords
Educational Data Mining, Algorithms, Knowledge Discovery, Feature Extraction, Validation
