Using Adaptive Learning Platform Data in a Flipped Classroom for Early Detection and Tutoring of Low-Performing Students

IF 2 3区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Autar Kaw, Ali Yalcin, Renee Clark
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引用次数: 0

Abstract

This article explores the use of adaptive learning platform (ALP) data to conduct early identification and provide support to students who have a low-performance outcome (C or lower) in a numerical methods engineering course. The data from assigned ALP lessons for two semesters was used to create decision-tree models to identify students who would benefit from advising and tutoring support. In the following two semesters, low-performing students were identified early in the semester and provided with support, and their performance was compared to their peers. The best-performing prediction model achieved an accuracy of 85% in predicting low-performing students in the third week of the course. The support included weekly one-on-one tutoring and advising sessions. Although only 23% of the identified students accepted support, they scored one-third a letter grade better than those who did not. Additionally, students who received support were invited to participate in a focus group at the end of the semester. Positive outcomes reported included improved understanding of course material, higher academic performance, advice on learning strategies, and guidance on non-course-related topics like internships and employment. Although most students valued receiving personalized invitations, a few felt singled out as low-performing. Students acknowledged the significance of individualized support, gave advice on how to word the invitation emails, and made helpful suggestions for improving help sessions, particularly in terms of personalization and recognizing their heavy academic workload.

运用自适应学习平台数据进行翻转课堂低能学生的早期发现与辅导
本文探讨了使用自适应学习平台(ALP)数据进行早期识别,并为在数值方法工程课程中成绩较低(C或更低)的学生提供支持。两个学期指定的ALP课程的数据被用来创建决策树模型,以确定哪些学生将从建议和辅导支持中受益。在接下来的两个学期里,表现不佳的学生在学期的早期就被识别出来,并得到支持,他们的表现与同龄人进行比较。表现最好的预测模型在预测课程第三周表现不佳的学生时达到了85%的准确率。这种支持包括每周一对一的辅导和咨询会议。虽然只有23%的学生接受了支持,但他们的得分比那些没有接受支持的学生高出三分之一。此外,获得支持的学生被邀请在学期结束时参加一个焦点小组。报告的积极成果包括提高对课程材料的理解,提高学习成绩,对学习策略的建议,以及对实习和就业等与课程无关的话题的指导。尽管大多数学生都很重视收到个性化的邀请,但也有一些人觉得自己被挑出来表现不佳。学生们认识到个性化支持的重要性,就如何撰写邀请邮件提出了建议,并对改进帮助课程提出了有益的建议,特别是在个性化和认识到自己繁重的学业负担方面。
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
Computer Applications in Engineering Education
Computer Applications in Engineering Education 工程技术-工程:综合
CiteScore
7.20
自引率
10.30%
发文量
100
审稿时长
6-12 weeks
期刊介绍: Computer Applications in Engineering Education provides a forum for publishing peer-reviewed timely information on the innovative uses of computers, Internet, and software tools in engineering education. Besides new courses and software tools, the CAE journal covers areas that support the integration of technology-based modules in the engineering curriculum and promotes discussion of the assessment and dissemination issues associated with these new implementation methods.
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