Abstract

Attaining high retention rates among engineering institutions is a predominant is-sue. A significant portion of engineering students face challenges of retention. Academic advising was implemented to resolve the issue. Decision support sys-tems were developed to support the endeavor. Machine learning have been inte-grated among such systems in predicting student performance accurately. Most works, however, rely on a black box model approach. Rule induction generates simpler if-then rules, exhibiting clearer understanding. As most research works considered attributes for positive academic performance, there is the need to con-sider ‘negative’ attributes. ‘Negative’ attributes are critical indicators to possibility of failure. This work applied rule induction techniques for course grade predic-tion using ‘negative’ attributes. The dataset is the academic performance of 48 mechanical engineering students taking a machine design course. Students’ at-tributes on workload, course repetition, and incurred absences are the predictors. This work implemented two rule induction techniques, rough set theory (RST) and adaptive neuro fuzzy inference system (FIS). Both models attained a classifi-cation accuracy of 70.83% with better performance for course grades of ‘Pass’ and ‘High’. RST generated 16 crisp rules while ANFIS generated 27 fuzzy rules, yielding significant insights. Results of this study can be used for comparative analysis of student traits between institutions. The illustrated framework can be used in formulating linguistic rules of other institutions.

Highlights

  • Student retention is an indicator of an educational institution’s performance

  • adaptive neuro-fuzzy inference system (ANFIS) was used in the work of [23]

  • The function is represented by eq (1) where Oi1 indicates the output of ith node in the first layer

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Summary

Introduction

Student retention is an indicator of an educational institution’s performance. many engineering educational institutions experience problems of low student retention. These approaches are constrained if the students fail to recognize their personal academic problem This constraint needs intrusive advising to have a central role. Intrusive advising is a direct approach to decreasing student attrition and late graduations It is focused on identifying ‘at-risk’ students and taking action before encountering any serious academic problem [12]. ANFIS was used in the work of [23] They developed a student classification tool in predicting student performance highlighting the student’s interest, talent, and motivation as key attributes. As ‘negative’ attributes are required in identifying ‘at-risk’ students, understanding its relationship to academic performance is necessary. This work focuses on rule induction techniques of engineering student performance using ‘negative’ attributes as predictors.

Decision Support System Framework
Adaptive Neuro Fuzzy Inference System
Rough Set Theory
Results
Discussion
Conclusion
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