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Curriculum Analytics of Course Choices: Links with Academic Performance

Authors :
Namrata Srivastava
Sadia Nawaz
Yi-Shan Tsai
Dragan Gaševic
Source :
Journal of Learning Analytics. 2024 11(1):116-131.
Publication Year :
2024

Abstract

In a higher education context, students are expected to take charge of their learning by deciding "what" to learn and "how" to learn. While the learning analytics (LA) community has seen increasing research on the "how" to learn part (i.e., researching methods for supporting students in their learning journey), the "what" to learn part is still underinvestigated. We present a case study of curriculum analytics and its application to a dataset of 243 students of the bachelor's program in the broad discipline of health sciences to explore the effects of course choices on students' academic performance. Using curriculum metrics such as grading stringency, course temporal position, and duration, we investigated how course choices differed between high- and low-performing students using both temporal and sequential analysis methods. We found that high-performing students were likely to pick an elective course of low difficulty. It appeared that these students were more strategic in terms of their course choices than their low-performing peers. Generally, low-performing students seemed to have made suboptimal choices when selecting elective courses; e.g., when they picked an elective course of high difficulty, they were less likely to pick a following course of low difficulty. The findings of this study have design implications for researchers, program directors, and coordinators, because they can use the results to (i) update the course sequencing, (ii) guide students about course choices based on their current GPA (such as through course recommendation dashboards), (iii) identify bottleneck courses, and (iv) assist higher education institutions in planning a more balanced course roadmap to help students manage their workload effectively.

Details

Language :
English
ISSN :
1929-7750
Volume :
11
Issue :
1
Database :
ERIC
Journal :
Journal of Learning Analytics
Publication Type :
Academic Journal
Accession number :
EJ1423443
Document Type :
Journal Articles<br />Reports - Research