运用聚类分析大学生在线课程的存在感

Ravneil Nand, Ashneel Chand, M. Naseem
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引用次数: 4

摘要

由于最近的全球大流行,高等教育学院(HEI)正在经历重大的模式转变。从面对面(F2F)和混合学习模式到完全在线交付模式的突然转变,给教师和学生都带来了隐藏的挑战。学生的在线参与对他们的学业成功变得更加重要,因为在大多数情况下,F2F组件并不存在。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。本文探讨了在线教学在高等教育中的有效性,新冠肺炎疫情已将课程交付转变为完全在线模式。以前,在线可测量存在模型(OMPM)被用于发现学生在混合学习环境中的有效性,其中两个指标是频率和持续时间。本研究选择的指标是频率,这将充分用于量化太平洋地区两门数学课程在线教学的有效性。聚类技术用于创建频率的聚类,并查看它们与OMPM模型的关系。在模型的基础上,利用神经网络进行预测,看其精度。这些集群将允许建立预测模型来预测未来的结果或事件以及学生的表现,主要集中在数学课程上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing students’ online presence in undergraduate courses using Clustering
The Higher Education Institute (HEI) are experiencing a major paradigm shift due to recent global pandemic. A sudden shift from face-to-face (F2F) and blended modes of study to completely online mode of delivery has introduced hidden challenges to facilitators and students alike. Student’s online engagement has become even more important for their academic success as F2F component is not there in most cases. Therefore, there is a need to investigate the effects of the various indicators of students’ online presence towards their academic performance. This paper explores the effectiveness of online presence in HEI where Covid-19 has shifted the course deliveries to fully online mode. Previously, Online Measurable Presence Model (OMPM) was used to find students effectiveness in a blended learning environment where two indicators used were Frequency and Duration. The chosen indicator in this research is frequency, which will be adequately used to quantify the effectiveness of the online presence in two mathematics courses in the Pacific. Clustering technique is used to create clusters of Frequency and see their relation to OMPM model. Prediction is made using neural network to see the accuracy based on model. The clusters would allow to build predictive models to predict future outcomes or occurrences and student performances, with a major focus on mathematics courses.
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