数据挖掘数学学生在线表现的统计方法

M. Naseem, E. Reddy, Ravneil Nand
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引用次数: 0

摘要

新冠肺炎疫情给人类生活的方方面面带来了重大变化,包括高等教育领域。从面对面和混合设置到完全在线交付模式的突然转变,改变了传统的教学方法,并使学习严重依赖技术和互联网。因此,学生对这些工具的在线参与对他们的学业成功变得更加重要。因此,有必要调查学生网络存在的各种指标对其学业成绩的影响。本文探讨了在新冠肺炎疫情下,高等院校在线授课的有效性。所选择的指标是频率,将充分用于量化在线存在对学生在线数学课程表现的有效性。使用统计方法来衡量学生在线存在指标与他们的表现之间的相关性和相关性。因此,它将允许建立模型来预测未来的结果或事件以及学生的表现,主要侧重于数学和统计课程。结果表明:新冠肺炎疫情期间,学生在线课堂互动有所增加;然而,它与在线可测量存在模型(OMPM)模型一致,其中频率是学生表现的主要指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Methods for Data mining Mathematics students' online presence
COVID-19 has caused major changes in every aspect of human endeavor, including efforts in the higher education sector. A sudden shift from face-to-face and blended settings to a completely online delivery mode has introduced changes to conventional teaching methods, and made learning rely heavily on technology and the Internet. Hence, students' online engagement with these tools has become even more important for their academic success. Therefore, there is a need to investigate the effects of various indicators of students' online presence on their academic performance. This paper explores the effectiveness of online presence in Higher Education Institutes, where COVID-19 has shifted the deliveries to online mode. The chosen indicator is frequency that will be adequately used to quantify the effectiveness of online presence on student performance in online mathematics courses. Statistical methods are used to measure the correlation and association between students' online presence indicators and their performance. As such, it would allow to build models to predict future outcomes or occurrences and student performances, with a major focus on mathematics and statistics courses. The results show that there is an increase in student online interaction in courses during COVID-19 era; however, it is consistent with the Online Measureable Presence Model (OMPM) model where frequency was the dominant indicator of student performance.
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