Using embedded formative assessment to predict state summative test scores

Stephen E. Fancsali, Guoguo Zheng, Yanyan Tan, Steven Ritter, Susan R. Berman, April Galyardt
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引用次数: 15

Abstract

If we wish to embed assessment for accountability within instruction, we need to better understand the relative contribution of different types of learner data to statistical models that predict scores on assessments used for accountability purposes. The present work scales up and extends predictive models of math test scores from existing literature and specifies six categories of models that incorporate information about student prior knowledge, socio-demographics, and performance within the MATHia intelligent tutoring system. Linear regression and random forest models are learned within each category and generalized over a sample of 23,000+ learners in Grades 6, 7, and 8 over three academic years in Miami-Dade County Public Schools. After briefly exploring hierarchical models of this data, we discuss a variety of technical and practical applications, limitations, and open questions related to this work, especially concerning to the potential use of instructional platforms like MATHia as a replacement for time-consuming standardized tests.
使用嵌入式形成性评估来预测州总结性考试成绩
如果我们希望在教学中嵌入问责制评估,我们需要更好地理解不同类型的学习者数据对统计模型的相对贡献,这些模型预测用于问责制目的的评估分数。目前的工作扩大并扩展了现有文献中数学考试成绩的预测模型,并指定了六类模型,这些模型结合了MATHia智能辅导系统中有关学生先验知识、社会人口统计学和表现的信息。在每个类别中学习线性回归和随机森林模型,并在迈阿密-戴德县公立学校的6年级,7年级和8年级的23,000多名学习者的样本中进行推广。在简要探讨了这些数据的层次模型之后,我们讨论了与这项工作相关的各种技术和实际应用、限制和开放问题,特别是关于使用像MATHia这样的教学平台来替代耗时的标准化测试的潜在用途。
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