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Identifying Factors of Students’ Failure in Blended Courses by Analyzing Students’ Engagement Data

机译:通过分析学生的参与数据,确定集合课程中学生失败的因素

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Our modern era has brought about radical changes in the way courses are delivered and various teaching methods are being introduced to answer the purpose of meeting the modern learning challenges. On that account, the conventional way of teaching is giving place to a teaching method which combines conventional instructional strategies with contemporary learning trends. Thereby, a new course type has emerged, the blended course in the context of which online teaching and conventional instruction are efficiently mixed. This paper demonstrates a way to identify factors affecting students’ critical performance in blended courses through a binary logistics regression analysis on students’ engagement data. The binary logistics regression analysis has led to a risk model which identifies and prioritizes these factors in proportion to their contribution to the risk occurrence. The risk model is demonstrated in the context of two specific blended courses sharing the same learning design. Additionally, the outcome of the study has proved that factors related to the e-learning part have critically affected the students’ performance in the respective blended courses.
机译:我们现代时代带来了课程的激进变化,并正在推出各种教学方法来回答满足现代学习挑战的目的。在该账户中,传统的教学方式正在给一种教学方法,将传统教学策略与当代学习趋势相结合。因此,出现了一种新的课程类型,在在线教学和传统指令的背景下的混合过程有效地混合。本文通过对学生的参与数据的二元物流回归分析识别影响学生对混合课程中的批判性能的因素。二元物流回归分析导致了风险模型,其识别并与其对风险事件的贡献成比例地确定这些因素。在共享相同学习设计的两个特定混合课程的背景下证明了风险模型。此外,该研究的结果证明,与电子学习部门有关的因素批判性地影响了各自混合课程中的学生表现。

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