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A Multivariate Probit Model for Learning Trajectories: A Fine-Grained Evaluation of an Educational Intervention

机译:用于学习轨迹的多元概率模型:对教育干预的细粒度评估

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摘要

Advances in educational technology provide teachers and schools with a wealth of information about student performance. A critical direction for educational research is to harvest the available longitudinal data to provide teachers with real-time diagnoses about students' skill mastery. Cognitive diagnosis models (CDMs) offer educational researchers, policy makers, and practitioners with a psychometric framework for designing instructionally relevant assessments and diagnoses about students' skill profiles. In this article, the authors contribute to the literature on the development of longitudinal CDMs, by proposing a multivariate latent growth curve model to describe student learning trajectories over time. The model offers several advantages. First, the learning trajectory space is high-dimensional and previously developed models may not be applicable to educational studies that have a modest sample size. In contrast, the method offers a lower dimensional approximation and is more applicable for typical educational studies. Second, practitioners and researchers are interested in identifying factors that cause or relate to student skill acquisition. The framework can easily incorporate covariates to assess theoretical questions about factors that promote learning. The authors demonstrate the utility of their approach with an application to a pre- or post-test educational intervention study and show how the longitudinal CDM framework can provide fine-grained assessment of experimental effects.
机译:教育技术的进展为教师和学校提供了丰富的学生表现信息。教育研究的临界方向是收获可用的纵向数据,为教师提供实时诊断学生的技能掌握。认知诊断模型(CDMS)为教育研究人员,决策者和从业者提供了一种心理模切框架,用于设计界面相关评估并诊断学生的技能概况。在本文中,作者通过提出多元潜在的生长曲线模型来描述纵向CDM的发展,以便随着时间的推移描述学生学习轨迹的文献。该模型提供了几个优点。首先,学习轨迹空间是高维,先前开发的模型可能不适用于具有适度样本大小的教育研究。相比之下,该方法提供较低的尺寸近似,更适用于典型的教育研究。其次,从业者和研究人员对识别导致或与学生技能收购有关的因素有兴趣。该框架可以轻松纳入协变量,以评估有关促进学习的因素的理论问题。作者展示了他们的方法与应用前或测试后的教育干预研究的效用,并展示了纵向CDM框架如何提供对实验效果的细粒度评估。

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