A Learning Analytics-informed Activity to Improve Student Performance in a First Year Physiology Course

Q3 Social Sciences
Mark T. Williams, L. Lluka, Prasad Chunduri
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引用次数: 1

Abstract

Learning Analytics (LA) can be employed to identify course-specific factors that hinder student course (outcome) performance, which can be subsequently rectified using targeted interventions. Supplementing interventions with predictive modelling also permits the identification of students who are at-risk of failing the course and encourages their participation. LA findings suggested that a targeted intervention for our course should focus on improving student short answer question (SAQ) performance, which we attempted to achieve by improving their understanding of features pertaining to various SAQ answer standards and how to achieve them using examples of varying scores. Every student was invited to the intervention via a course-wide announcement through the course learning management system. At-risk students identified using predictive models were given an additional invitation in the form of a personalised email. Results suggest that intervention improved student understanding of SAQ performance criteria. The intervention also enhanced student end-of-semester SAQ performance by 12% and 11% for at-risk and no-risk students respectively. Course failure rate was also lower by 26% and 9% among at-risk and no-risk intervention participants. Student perception of the intervention was also positive where an overwhelming majority of participants (96%) found the interventional activity to be useful for their learning and exam preparations.
一项以学习分析为基础的活动来提高学生在一年级生理学课程中的表现
学习分析(LA)可以用来识别阻碍学生课程(结果)表现的课程特定因素,随后可以使用有针对性的干预措施加以纠正。通过预测模型来补充干预措施,还可以识别出有挂科风险的学生,并鼓励他们参与。LA的研究结果表明,我们课程的针对性干预应侧重于提高学生的简答题(SAQ)成绩,我们试图通过提高他们对各种简答题标准特征的理解以及如何使用不同分数的示例来实现这一目标。每个学生都通过课程学习管理系统的全课程通知被邀请参加干预。通过预测模型识别出有风险的学生,并以个性化电子邮件的形式收到额外的邀请。结果表明,干预提高了学生对SAQ绩效标准的理解。干预还使有风险和无风险学生的期末SAQ成绩分别提高了12%和11%。在有风险和无风险干预的参与者中,课程失败率也分别降低了26%和9%。学生对干预的看法也是积极的,其中绝大多数参与者(96%)发现干预活动对他们的学习和考试准备有用。
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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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
19
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