SMFSOP: A semantic-based modelling framework for student outcome prediction

Yomna M.I. Hassan1,2, Abeer Elkorany2, Khaled Wassif2
1Faculty of Mathematics and Computer Sciences, Universities of Canada, New Capital, Cairo, Egypt
2Faculty of Computers and Artificial Intelligence, Cairo University, Dokki, Cairo, Egypt

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