Determining The Drivers Of Student Performance In Online Business Courses

H. Estelami
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引用次数: 9

Abstract

An emerging question in business education is whether all students would benefit from distance learning and if student performance can be predicted prior to enrollment in an online course based on student characteristics. In this paper, the role of student characteristics on academic performance is examined in the context two different online courses. Empirical test of a selfassessment tool on 272 students across 9 course sections, using a logistic regression framework demonstrates that end-of-semester student grades can be predicted by students' own self-reports of their learning preferences at the onset of the course. However systematic differences are found between the two courses in terms of the drivers of student performance, demonstrating the importance of a customized approach to the predictive framework presented.
确定在线商务课程中学生表现的驱动因素
商科教育中出现的一个新问题是,是否所有学生都能从远程学习中受益,以及是否可以根据学生的特点在注册在线课程之前预测学生的表现。本文以两种不同的网络课程为背景,考察了学生性格对学习成绩的影响。使用逻辑回归框架对9个课程的272名学生进行自我评估工具的实证测试表明,学生在课程开始时对学习偏好的自我报告可以预测学期末学生的成绩。然而,在学生表现的驱动因素方面,两门课程之间存在系统性差异,这表明了对所提出的预测框架采用定制方法的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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