Title :
Learning Analytics Solution for Reducing Learners´ Course Failure Rate
Author :
Kannan Govindarajan;Vivekanandan Suresh Kumar;David Boulanger; Kinshuk
Author_Institution :
Athabasca Univ., Edmonton, AB, Canada
Abstract :
In recent years, learning analytics solutions have highly appealed to the higher education community who mainly focuses on improving the learning process, self-regulated learning skills, and learners´ success rate. Learning analytics has to deal with continuous data, however, conventional data mining algorithms are not readily applicable to handle the continuous incoming of learners´ data. In order to cope with these scenarios, the proposed learning analytics aimed to manage the continuous data, perform the clustering process using the optimization approach, detect the ´at-risk´ learners´ who are in a course failure situation, and generate signals to learners and teachers. Based on the predicted outcome, the proposed system identifies and adapts the learning activities and learning contents to help learners find their way out of their learning difficulties and course failure situation. The experiments were conducted to analyze the performance of the proposed work using the simulated learners´ data. The experimental results provide empirical evidence that the proposed work reduces the course failure rate and improves learners´ success rate.
Keywords :
"Clustering algorithms","Particle swarm optimization","Collaboration","Filtering","Data mining","Algorithm design and analysis","Prediction algorithms"
Conference_Titel :
Technology for Education (T4E), 2015 IEEE Seventh International Conference on
DOI :
10.1109/T4E.2015.14