Title of article :
Assessing Student’s At-Risk of Non-Completion in an Open and Distance Learning Course
Author/Authors :
Fan, Rocky Y.K. The Open University of Hong Kong - School of Science and Technology, China
From page :
91
To page :
111
Abstract :
Student attrition is a well-documented problem concerning open and distance learning (ODL) institutions. Evidence shows that the non-completion rate on an ODL course can be reduced if the at- risk students are followed up at an early stage. There is a problem in identifying such at-risk students as they may not be obvious at the beginning of their studies. Moreover, it would be difficult to collect at-risk evidence from students during the course presentation for personal assessment. This paper presents a Logistic Regression Model for assessing student s at-risk levels in an ODL course. The model is defined based on the findings in a previous study that ODL experience, academic background and assignment performance are three major variables relating to student attrition. Research results have shown that the model can successfully classify about 80% of students into completion or non-completion after the first assignment score is available. The simple choice of predictors and high classification rate make the model a practical instrument for an early identification of at-risk students.
Journal title :
Malaysian Journal of Distance Education
Journal title :
Malaysian Journal of Distance Education
Record number :
2676792
Link To Document :
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