Applying Predictive Analytics in Elective Course Recommender System While Preserving Student Course Preferences
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Abstract
In higher education scenarios, elective courses sought to provide a deeper insight of
the trending advancements in the field of specialization for undergraduate students.
Choice of elective subjects during the pre-final or final year of the undergraduates
play a crucial role as they help in shaping their career or area of specialization for
future research. However, there exist numerous gaps and concerns that arise due to
mismatch of the elective course pre-requisites and the student’s possessed skills-set
which result in degraded student academic performance as well as quality of
education. This research study focuses on filling in these gaps by efficiently
predicting the marks in different elective subjects for the current cohort of students,
beforehand, as well as side by side preserving their explicit subject preferences.
