新型冠状病毒病疫情期间高校在线工科学生数据分析

Z. Kanetaki, C. Stergiou, G. Bekas, C. Troussas, C. Sgouropoulou
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引用次数: 14

摘要

新冠肺炎大流行在2020年和2021年给世界各地的许多教育机构带来了挑战,传统教育被中断,以防止病毒的传播。这迫使各级教育从传统教育过渡到完全远程学习环境。远程学习的广泛采用促使教师形成新的数字学习环境和方法。针对这一意外情况,我们对工科学生及其与学习环境互动的数据进行了积累和处理,生成了一个129 × 165个变量的矩阵。这项研究的动机是确定在COVID-19大流行导致的教育过程迷失方向期间影响学生表现的新变量。统计分析包括相关分析、因子分析和聚类分析。信度分析也进行,方差分析(方差分析)应用于集群。这项工作的新颖之处在于利用学生表现数据和在线调查的统计分析来揭示有助于降低辍学率和改变教育过程的模式,在减轻和强制远程学习的情况下。一个主要的发现是,通过应用创新的教学方法,从而满足远程学习环境的挑战,学生的空间概念得到改善,克服了物理学习空间的缺乏。研究发现了学生个体的深刻见解,以及学生从中学到高等教育的过渡与他们对几何特征的理解之间的显著关系。整合的在线学习框架的有效性证据表明,它对学生的学习风格产生了积极的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Engineering Student Data in Online Higher Education During the COVID-19 Pandemic
The COVID-19 pandemic has challenged many educational institutions around the world in 2020 and 2021 as traditional education has been interrupted to prevent the spread of the virus. This forced the transition from traditional education to fully distance learning envi-ronments for all levels of education. The widespread adoption of distance learning has led instructors to form new digital learning environments and methods. In response to this unexpected situation, data regarding engineering students and their interaction with the learning environment was accumulated and processed, generating a matrix of 129 × 165 variables. The motivation for this research is to identify new variables that impact student performance during the disorientation of the educational process due to the COVID-19 pandemic. Statistical analysis was performed and discussed in this paper including correla-tion analysis, factor analysis, and clustering. Reliability analysis was also performed and ANOVA (analysis of variance) was applied to clusters. The novelty of this work is to use student performance data and statistical analysis of online surveys to reveal patterns that can help reduce dropout rates and transform the educational process, under extenuating and imposed distance learning circumstances. A major finding is that by applying innovative teaching methods, thereby meeting the challenge of an imposed distance learning environ-ment, students' spatial conceptions improve, overcoming the absence of a physical learning space. Deep insights for individual students were discovered, as well as significant relation-ships between students' transition from secondary to higher education and their understand-ing of geometric features. Evidence of the effectiveness of the online learning framework that was integrated showed that it positively influenced students' learning styles.
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