IRLGMLApr 22, 2019

Will this Course Increase or Decrease Your GPA? Towards Grade-aware Course Recommendation

arXiv:1904.11798v125 citations
Originality Incremental advance
AI Analysis

This addresses the specific problem of improving course selection for undergraduate students, but it is incremental as it builds on existing recommendation and grade prediction methods.

The paper tackles the problem of recommending courses that help undergraduate students graduate on time and achieve good grades by proposing two grade-aware recommendation approaches, showing that these methods outperform grade-unaware ones by recommending more courses where students are expected to perform well and fewer where they are not.

In order to help undergraduate students towards successfully completing their degrees, developing tools that can assist students during the course selection process is a significant task in the education domain. The optimal set of courses for each student should include courses that help him/her graduate in a timely fashion and for which he/she is well-prepared for so as to get a good grade in. To this end, we propose two different grade-aware course recommendation approaches to recommend to each student his/her optimal set of courses. The first approach ranks the courses by using an objective function that differentiates between courses that are expected to increase or decrease a student's GPA. The second approach combines the grades predicted by grade prediction methods with the rankings produced by course recommendation methods to improve the final course rankings. To obtain the course rankings in the first approach, we adapt two widely-used representation learning techniques to learn the optimal temporal ordering between courses. Our experiments on a large dataset obtained from the University of Minnesota that includes students from 23 different majors show that the grade-aware course recommendation methods can do better on recommending more courses in which the students are expected to perform well and recommending fewer courses in which they are expected not to perform well in than grade-unaware course recommendation methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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