Date
Publisher
arXiv
Learning analytics (LA) is data collection, analysis, and representation of
data about learners in order to improve their learning and performance.
Furthermore, LA opens the door to opportunities for self-regulated learning in
higher education, a circular process in which learners activate and sustain
behaviours that are oriented toward their personal learning goals. The
potentials of LA and self-regulated learning are huge; however, they are not
yet widely applied in higher education institutions. Slovenian higher education
institutions have lagged behind other European countries in LA adoption. Our
research aims to fill this gap by using a qualitatively and quantitatively led
workflow for building a requirement-oriented LA solution, consisting of
empirically gathering the students' expectations of LA and presenting a
dashboard solution. Translated Student Expectations of Learning Analytics
Questionnaire and focus groups were used to gather expectations from learners.
Based on them, a user interface utilizing LA and grade prediction with an AI
model was implemented for a selected course. The interface includes early grade
prediction, peer comparison, and historical data overview. Grade prediction is
based on a machine learning model built on users' interaction in the virtual
learning environment, demographic data and lab grades. First, classification is
used to determine students at risk of failing - its precision reaches 98% after
the first month of the course. Second, the exact grade is predicted with the
Decision Tree Regressor, reaching a mean absolute error of 11.2grade points (on
a 100 points scale) after the first month. The proposed system's main benefit
is the support for self-regulation of the learning process during the semester,
possibly motivating students to adjust their learning strategies to prevent
failing the course. Initial student evaluation showed positive results.
What is the application?
Who is the user?
Who age?
Why use AI?
