He Xiuling, Fang Jing, Cheng Hercy N H, Men Qibin, Li Yangyang
National Engineering Laboratory For Education Big Data, Central China Normal University, Wuhan City, Hubei Province China.
National Engineering Research Center for E-learning, Central China Normal University, Wuhan City, Hubei Province China.
Educ Inf Technol (Dordr). 2023 Feb 20:1-22. doi: 10.1007/s10639-023-11633-8.
A deep understanding of the learning level of online learners is a critical factor in promoting the success of online learning. Using knowledge structures as a way to understand learning can help analyze online students' learning levels. The study used concept maps and clustering analysis to investigate online learners' knowledge structures in a flipped classroom's online learning environment. Concept maps ( = 359) constructed by 36 students during one semester (11 weeks) through the online learning platform were collected as analysis objects of learners' knowledge structures. Clustering analysis was used to identify online learners' knowledge structure patterns and learner types, and a non-parametric test was used to analyze the differences in learning achievement among learner types. The results showed that (1) there were three online learners' knowledge structure patterns of increasing complexity, namely, spoke, small-network, and large-network patterns. Moreover, online learners with novice status mostly had spoke patterns in the context of flipped classrooms' online learning. (2) Two types of online learners were found to have different distributions of knowledge structure patterns, and the complex knowledge structure type of learners exhibited better learning achievement. The study explored a new way for educators to analyze knowledge structures by data mining automatically. The findings provide evidence in the online learning context for the relationship between complex knowledge structures and better learning achievement while suggesting the existence of inadequate knowledge preparedness for flipped classroom learners without a special instructional design.
深入了解在线学习者的学习水平是促进在线学习成功的关键因素。将知识结构作为理解学习的一种方式,有助于分析在线学生的学习水平。本研究运用概念图和聚类分析,在翻转课堂的在线学习环境中探究在线学习者的知识结构。收集了36名学生在一个学期(11周)内通过在线学习平台构建的359幅概念图,作为学习者知识结构的分析对象。利用聚类分析确定在线学习者的知识结构模式和学习者类型,并采用非参数检验分析不同学习者类型在学习成绩上的差异。结果表明:(1)在线学习者存在三种复杂度递增的知识结构模式,即辐条式、小网络式和大网络式。此外,在翻转课堂的在线学习环境中,处于新手状态的在线学习者大多具有辐条式模式。(2)发现两类在线学习者的知识结构模式分布不同,知识结构复杂的学习者类型表现出更好的学习成绩。该研究探索了一种教育工作者通过自动数据挖掘来分析知识结构的新方法。研究结果为在线学习环境下复杂知识结构与更好学习成绩之间的关系提供了证据,同时表明在没有特殊教学设计的情况下,翻转课堂学习者存在知识准备不足的情况。