Predicting Student Performance Using Advanced Learning Analytics
Published in In the proceedings of Proceedings of the 26th International Conference on World Wide Web Companion, 2017
Recommended citation: Ali Daud, Naif Aljohani, Rabeeh Abbasi, Miltiadis Lytras, Farhat Abbas, Jalal Alowibdi, "Predicting Student Performance Using Advanced Learning Analytics." In the proceedings of Proceedings of the 26th International Conference on World Wide Web Companion, 2017. https://doi.org/10.1145/3041021.3054164
Educational Data Mining (EDM) and Learning Analytics (LA) research have emerged as interesting areas of research, which are unfolding useful knowledge from educational databases for many purposes such as predicting students' success. The ability to predict a student's performance can be beneficial for actions in modern educational systems. Existing methods have used features which are mostly related to academic performance, family income and family assets; while features belonging to family expenditures and students' personal information are usually ignored. In this paper, an effort is made to investigate aforementioned feature sets by collecting the scholarship holding students' data from different universities of Pakistan. Learning analytics, discriminative and generative classification models are applied to predict whether a student will be able to complete his degree or not. Experimental results show that proposed method significantly outperforms existing methods due to exploitation of family expenditures and students' personal information feature sets. Outcomes of this EDM/LA research can serve as policy improvement method in higher education.