利用学习分析重新设计一年级生理学课程以提高学生成绩

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

摘要

学习分析(LA)是高等教育中一个快速兴起的概念,用于理解和优化学生的学习过程及其发生的环境。从LA范式中获得的知识通常用于构建统计模型,旨在识别有单元/课程不及格风险的学生,并随后设计针对改善这些学生的课程结果的干预措施。在以前的研究中,模型是使用各种各样的变量构建的,但新出现的证据表明,使用课程特定变量构建的模型更准确,并提供了对学习环境的更好理解。在我们目前的研究中,学生在各种课程评估任务中的表现被用作预测模型和未来干预设计的基础,因为它们通常被用来评估学生的学习成果和各种课程学习目标的实现程度。此外,我们课程的学生主要是大学一年级的学生,他们对高等教育的学习和评估环境仍然不熟悉,这使得他们无法为任务做好充分的准备,从而降低了他们的课程表现和结果。我们首先构建了统计模型,用于识别有挂科风险的学生,并识别课程中学生认为具有挑战性的评估任务,作为设计未来干预活动的指导。每个构建的预测模型都有很好的能力来区分通过课程的学生和不及格的学生。分析显示,不仅有风险的学生,而且整个队列都将从干预中受益,提高他们的概念理解能力和构建高分短答题答案的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Redesigning a First Year Physiology Course using Learning Analytics to Improve Student Performance
Learning analytics (LA), a fast emerging concept in higher education, is used to understand and optimize the student learning process and the envi-ronment in which it occurs. Knowledge obtained from the LA paradigm is often utilized to construct statistical models aimed at identifying students who are at risk of failing the unit/course, and to subsequently design inter-ventions that are targeted towards improving the course outcomes for these students. In previous studies, models were constructed using a wide variety of variables, but emerging evidence suggests that the models constructed us-ing course-specific variables are more accurate, and provide a better under-standing of the learning context. For our current study, student performance in the various course assessment tasks was used as a basis for the predictive models and future intervention design, as they are conventionally used to evaluate student learning outcomes and the degree to which the various course learning objectives are met. Further, students in our course are pri-marily first-year university students, who are still unfamiliar with the learning and assessment context of higher education, and this prevents them from adequately preparing for the tasks, and consequently reduces their course performance and outcome. We first constructed statistical models that would be used to identify students who are at risk of failing the course and to identify assessment tasks that students in our course find challeng-ing, as a guide for the design of future interventional activities. Every con-structed predictive model had an excellent capacity to discriminate between students who passed the course and those who failed. Analysis revealed that not only at-risk students, but the whole cohort, would benefit from in-terventions improving their conceptual understanding and ability to con-struct high-scoring answers to Short Answer Questions.
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