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The Content of Their Coursework: Understanding Course-Taking Patterns at Community Colleges by Clustering Student Transcripts

机译:他们课程的内容:通过对学生成绩单进行聚类了解社区大学的课程选择模式

摘要

Community college students typically have access to a large selection of courses and programs, and therefore the student transcripts at any one college or college system tend to be very diverse. As a result, it is difficult for faculty, administrators, and researchers to understand the course-taking patterns of students in order to determine what programs of study they appear to be pursuing. Attempting to examine these patterns and then comparing them with listed program requirements would be a very time-consuming activity; clustering can be a useful way to make sense of the relevant data. Clustering allows researchers to group similar items into clusters, relying only on a measure of the similarity of those items. In this paper, we apply a clustering algorithm to the problem of understanding college transcripts, which serve as the items to be clustered. To our knowledge, this is the first effort to organize transcripts based on their course content using clustering. We base the measure of similarity on the proportion of curricular subjects that each transcript has in common with every other one. Our data are community and technical college transcripts for a cohort of students who first entered the Washington State system during the fall of the 2005-06 academic year and who had no prior postsecondary experience. We used our clustering algorithm to separately cluster liberal arts and career-technical students. We found that the algorithm did a good job of separately clustering each of these groups. The clusters roughly corresponded to programs of study, so we were able to estimate how many students were undertaking each program and what subjects students were studying within each cluster. We were also able to examine the demographics and the completion and transfer rates of the students within each cluster, in order to get an idea of what types of students were in each program of study and how successful they seemed to be in college. We found substantial variation on these dimensions as well as on the extent to which students' programs were either concentrated in a single subject or spread across several subjects. We conclude that this method would be useful to researchers throughout education who are trying to understand student course-taking patterns and programs of study, and who need to organize large amounts of transcript data.
机译:社区学院的学生通常可以选择大量的课程和课程,因此任何一所学院或学院系统的学生成绩单都非常多样化。结果,教师,管理人员和研究人员很难了解学生的课程选择模式,从而确定他们所追求的学习课程。尝试检查这些模式,然后将它们与列出的程序要求进行比较将是非常耗时的活动;聚类是理解相关数据的有用方法。聚类允许研究人员将相似项目分组为聚类,而仅依靠对这些项目相似性的度量。在本文中,我们将聚类算法应用于理解大学成绩单的问题,这些成绩是要聚类的项目。就我们所知,这是基于群集的课程内容来组织成绩单的第一步。我们基于每个成绩单彼此具有共同点的课程科目的比例来衡量相似性。我们的数据是针对一群在2005-06学年秋季首次进入华盛顿州系统并且没有以前的大专学历的学生的社区和技术大学成绩单。我们使用聚类算法分别将文科和职业技术学生聚类。我们发现该算法很好地完成了将这些组分别聚类的工作。这些类别大致对应于学习课程,因此我们能够估算出每个课程中有多少学生在学习以及每个类别中学生正在学习哪些学科。我们还能够检查每个群体中学生的人口统计数据以及完成率和升学率,从而了解每个学习课程中的学生类型以及他们在大学中的表现如何。我们发现在这些方面以及学生的课程集中于单个学科或分布于多个学科的程度上存在很大差异。我们得出的结论是,这种方法对整个教育领域的研究人员有用,他们试图了解学生的课程设置模式和学习计划,并且需要组织大量的成绩单数据。

著录项

  • 作者

    Zeidenberg Matthew; Scott Marc;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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