Towards a multi classifier machine learning based approach for course cancelation problem avoidance

Other Title(s)

نحو طريقة متعتمدة على تعلم الآلة و متعددة المصنفات لتجنب مشكلة شطب الشعب

Author

al-Habshinah, Ubadah Yusuf Abd Allah

Source

Mu'tah Journal for Research and Studies : Natural and Applied Sciences Series

Issue

Vol. 37, Issue 2 (30 Jun. 2022), pp.71-92, 22 p.

Publisher

Mutah University Deanship of Academic Research

Publication Date

2022-06-30

Country of Publication

Jordan

No. of Pages

22

Main Subjects

Business Administration

Abstract EN

The Course section cancelation problem (MCP)is one of the main problems of the university timetabling process as a significant number of course sections are canceled every semester throughout the academic year.

The problem usually occurs when the academic registry at the university must cancel a course section for violating the "minimum number" hard constraint which refers to the minimum number of students enrolled in the course (the threshold).

This problem is common within the universities in which the timetable is created before the enrollment process.

This paper discusses the development of a multi-classifier machine learning-based approach for course section cancellation risk estimation.

The approach analyzes the enrollment historical data of the university to identify the common features of the canceled sections.

Such features include the course, section-time slot, the number of students who are eligible to take it, and the lecturer.

These features are then associated with section cancellation status.

The resulted data set is fed into a multi-classifier component to predict the risk level of the section cancellation.

The proposed approach aims to assist the academic departments in preparing the timetable of the upcoming academic term to avoid including the courses or section with the high risk in the timetable which in turn is expected to minimize the number of the canceled section.

Results have shown that the proposed approach has achieved a classifying accuracy of 85% in identifying the cancelation risk level of sections before including them in the timetable.

The classifying accuracy is expected to improve with the growth of the data volume.

Also, using different gives the approach the dynamicity to use the most accurate classier to achieve the highest accuracy based on the provided case.

American Psychological Association (APA)

al-Habshinah, Ubadah Yusuf Abd Allah. 2022. Towards a multi classifier machine learning based approach for course cancelation problem avoidance. Mu'tah Journal for Research and Studies : Natural and Applied Sciences Series،Vol. 37, no. 2, pp.71-92.
https://search.emarefa.net/detail/BIM-1414715

Modern Language Association (MLA)

al-Habshinah, Ubadah Yusuf Abd Allah. Towards a multi classifier machine learning based approach for course cancelation problem avoidance. Mu'tah Journal for Research and Studies : Natural and Applied Sciences Series Vol. 37, no. 2 (2022), pp.71-92.
https://search.emarefa.net/detail/BIM-1414715

American Medical Association (AMA)

al-Habshinah, Ubadah Yusuf Abd Allah. Towards a multi classifier machine learning based approach for course cancelation problem avoidance. Mu'tah Journal for Research and Studies : Natural and Applied Sciences Series. 2022. Vol. 37, no. 2, pp.71-92.
https://search.emarefa.net/detail/BIM-1414715

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references : p. 88-92

Record ID

BIM-1414715