Who Runs the World: Data
Abstract
Since
the term “personalized learning” became popular, smart features have
begun to be integrated into the e-learning environment. Data mining and
machine learning algorithms are used to analyze big data stored in an
e-learning system to make predictions to improve course quality or
learners’ performance. From the learners’ perspective, it might now be
considered possible for everybody to benefit from e-learning by
considering their personal interests or their own specific development
plan as long as the course contents are available in the system. In
addition, in an e-learning environment, there is no limitation on the
time and place where a course can be attended and a program completed.
However, it is just not that simple. Today not the only, but by far the
most important, the requirement is still the readiness of the learners
to study in an e-learning system. The aim of this chapter is to predict
the e-learning readiness of learners using data mining techniques. This
chapter aims to provide feedback for institute managers and admin staff
of e-learning systems which are intended to be used in an institution.
Moreover, this section of the book contains one of the applications of
big data analysis in education. Therefore, the main topic of this study
is examined in terms of both classification and clustering techniques in
order to provide a wider perspective to readers while using the sample
application.According to the results of this study, the highest
accuracy value (0.831) is obtained with C4.5 Decision Tree Algorithm.
While students, who agree and strongly agree with the statement “My
studying/research area is appropriate for e-learning” are classified as
ready to attend an e-learning course, students who disagree with the
same statement are classified as not ready to attend an e-learning
course. Students who strongly disagree with the statements “My
studying/research area is appropriate for e-learning” and “E-learning is
better than face to face learning”, are also classified as not ready to
attend an e-learning course. Furthermore, the statement “My studying/
research area is appropriate for e-learning” is at the top of the
obtained decision tree which indicates that it is an effective and
directly related attribute which expresses student opinions about
attending an e-learning course.
URI
http://hdl.handle.net/20.500.12627/42706https://iupress.istanbul.edu.tr/en/book/who-runs-the-world-data/chapter/big-data-in-education-a-case-study-on-predicting-e-learning-readiness-of-learners-with-data-mining-techniques
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