Applying Data Mining Techniques in MOOC Recommender System for Generating Course Recommendations
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Abstract
With the increase in Massive Open Online Courses across different platforms and
domains, the course related information is being overloaded. It becomes a very
tedious task for the learners to search for the required courses matching their
individual goals, knowledge and interest. MOOCs recommender system plays a vital
role by easing this task and providing courses of interest within an efficient time
frame. This research work proposes an effective MOOC recommender system with
the help of various data mining techniques. It encashes upon the fact that the learners
involved in the MOOCs can be easily bifurcated into two categories of active and
passive learners based upon their activity logs. It first channelizes the learners into
these categories and then provides separate recommendations by applying different
data mining approaches. Through this technique a significant level of accuracy has
been achieved over other basic methods of course recommendations.
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Master of Technology -CSE
