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Online Graduate Teacher Education: Establishing an EKG for Student Success Intervention

机译:在线研究生教师教育:建立学生成功干预的心电图

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Predicting which students enrolled in graduate online education are at-risk for failure is an arduous yet important task for teachers and administrators alike. This research reports on a statistical analysis technique using both static and dynamic variables to determine which students are at-risk and when an intervention could be most helpful during a semester. Time-series clustering analysis of online teacher education classes revealed that prediction is possible after the 10th week capturing over 78 % of at-risk students. Visual analysis of dynamic student activities shares a number of striking commonalities consistent with EKG charting. The potential exists for instructors to recognize simple graphic patterns that identify and formatively address these issues with their students. Next phases of research will apply further validation of both the models attempted and additional predictor variables.
机译:对于教师和管理人员而言,预测哪些学生参加研究生在线教育面临失败的风险是一项艰巨而重要的任务。这项研究报告了一种统计分析技术,该技术使用静态和动态变量来确定哪些学生处于危险之中,以及何时在学期进行干预最有帮助。在线教师教育课程的时间序列聚类分析显示,在第10周之后,可以捕获78%以上的高风险学生进行预测。对动态学生活动的视觉分析具有许多与EKG图表一致的惊人共性。指导教师有可能识别出简单的图形模式,从而识别并与学生一起解决这些问题。下一阶段的研究将对尝试的模型和其他预测变量进行进一步验证。

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