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Clicker Score Trajectories and Concept Inventory Scores as Predictors for Early Warning Systems for Large STEM Classes

机译:Clicker分数轨迹和概念库存分数作为大型STEM类预警系统的预测指标

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Increasing the retention of STEM (science, technology, engineering, and mathematics) majors has recently emerged as a national priority in undergraduate education. Since poor performance in large introductory science and math courses is one significant factor in STEM dropout, early detection of struggling students is needed. Technology-supported "early warning systems" (EWSs) are being developed to meet these needs. Our study explores the utility of two commonly collected data sources-pre-course concept inventory scores and longitudinal clicker scores-for use in EWS, specifically, in determining the time points at which robust predictions of student success can first be established. The pre-course diagnostic assessments, administered to 287 students, included two concept inventories and one attitude assessment. Clicker question scores were also obtained for each of the 37 class sessions. Additionally, student characteristics (sex, ethnicity, and English facility) were gathered in a survey. Our analyses revealed that all variables were predictive of final grades. The correlation of the first 3 weeks of clicker scores with final grades was 0.53, suggesting that this set of variables could be used in an EWS starting at the third week. We also used group-based trajectory models to assess whether trajectory patterns were homogeneous in the class. The trajectory analysis identified three distinct clicker performance patterns that were also significant predictors of final grade. Trajectory analyses of clicker scores, student characteristics, and pre-course diagnostic assessment appear to be valuable data sources for EWS, although further studies in a diversity of instructional contexts are warranted.
机译:最近,越来越多地保留STEM(科学,技术,工程和数学)专业的学历成为了本科教育的国家重点。由于大型入门科学和数学课程的表现不佳是STEM辍学的重要因素,因此需要及早发现挣扎中的学生。为了满足这些需求,正在开发技术支持的“预警系统”(EWS)。我们的研究探索了在EWS中使用的两个通常收集的数据源-课前概念清单分数和纵向答题者分数-尤其是在确定可以首先建立对学生成功的可靠预测的时间点上的效用。对287名学生进行的学前诊断评估包括两个概念清单和一个态度评估。还为37个课程的每一节都获得了答题者问题分数。此外,通过调查收集了学生的特征(性别,种族和英语能力)。我们的分析表明,所有变量都可以预测最终成绩。 Clicker评分的前3周与最终成绩的相关性为0.53,这表明从第三周开始,可以在EWS中使用这组变量。我们还使用基于组的轨迹模型来评估班级中的轨迹模式是否同质。轨迹分析确定了三种不同的点击器性能模式,它们也是最终成绩的重要预测指标。尽管有必要在各种教学环境中进行进一步研究,但单击器得分,学生特征和课前诊断评估的轨迹分析似乎是EWS的宝贵数据来源。

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