Investigation of Student’s Engagement in Blended PBL-based Engineering Course and its Influence on Performance

Radhika Amashi, Unnati Koppikar, M. Vijayalakshmi, Rohit Kandakatla
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引用次数: 1

Abstract

Learner engagement in digital or online learning has been identified as one of the many challenges and personalizing the digital learning content to keep students motivated and engaged throughout the duration of course is gaining much interest among academia. The purpose of this study is to identify the levels of student engagement and understand the relationship between learner engagement and their academic performance. This study has used k-means machine learning algorithm to identify the levels of student's engagement and tried to identify the relationship between the engagement metrics and student performance using correlation analysis. Based on students’ engagement metrics, k-mean algorithm classifies students in to two levels, namely High engaged students, and Low engaged students. The results of correlation analysis showed that there was a positive correlation between the engagement metrics and performance. Identifying the levels of student engagement possibly will help in personalizing the learning by recommending the e-content based on engagement metrics and identifying the relationship between the engagement metrics and performance might help faculty to design activities and content for the courses.
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基于pbl的混合式工程课程学生参与度调查及其对成绩的影响
学习者参与数字或在线学习已被确定为众多挑战之一,个性化数字学习内容以保持学生在整个课程期间的积极性和参与度正在引起学术界的极大兴趣。本研究的目的是确定学生投入的水平,并了解学习者投入与学习成绩之间的关系。本研究使用k-means机器学习算法来确定学生的参与度水平,并试图通过相关分析来确定参与度指标与学生表现之间的关系。k-mean算法根据学生的参与度指标,将学生分为高参与度学生和低参与度学生两个层次。相关分析结果显示,用户粘性指标与绩效之间存在正相关关系。确定学生的参与程度可能有助于个性化学习,根据参与指标推荐电子内容,确定参与指标和表现之间的关系可能有助于教师设计课程的活动和内容。
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