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Analyzing the Longitudinal K-12 Grading Histories of Entire Cohorts of Students: Grades, Data Driven Decision Making, Dropping Out and Hierarchical Cluster Analysis

机译:分析整个学生群体的纵向K-12分级历史:成绩,数据驱动的决策,辍学和分层聚类分析

摘要

School personnel currently lack an effective method to pattern and visually interpret disaggregated achievement data collected on students as a means to help inform decision making. This study, through the examination of longitudinal K-12 teacher assigned grading histories for entire cohorts of students from a school district (n=188), demonstrates a novel application of hierarchical cluster analysis and pattern visualization in which all data points collected on every student in a cohort can be patterned, visualized and interpreted to aid in data driven decision making by teachers and administrators. Additionally, as a proof-of-concept study, overall schooling outcomes, such as student dropout or taking a college entrance exam, are identified from the data patterns and compared to past methods of dropout identification as one example of the usefulness of the method. Hierarchical cluster analysis correctly identified over 80% of the students who dropped out using the entire student grade history patterns from either K-12 or K-8.
机译:当前,学校人员缺乏一种有效的方法来对学生收集的分类成就数据进行模式化和可视化解释,以帮助做出决策。这项研究通过检查整个学区(n = 188)所有学生的纵向K-12老师分配的分级历史记录,证明了层次聚类分析和模式可视化的新颖应用,其中每个学生收集的所有数据点可以对队列中的数据进行模式化,可视化和解释,以帮助教师和管理人员进行数据驱动的决策。此外,作为概念验证研究,从数据模式中可以识别出总体上的教育成果,例如学生辍学或参加高考,并将其与过去的辍学识别方法进行比较,以此作为方法有效性的一个例子。层次聚类分析正确地识别了80%的辍学学生,他们使用了K-12或K-8的整个学生成绩历史记录模式。

著录项

  • 作者

    Bowers Alex J.;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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