预测一所大型城市公立大学共同补救通识教育数学课程学生的成功

IF 1.3 Q3 EDUCATION, SCIENTIFIC DISCIPLINES
Kirsten L. Miller, Kagba N. Suaray
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引用次数: 0

摘要

长期以来,高等教育机构对学生一年级数学课程的安置和支持一直是一个重要的问题。为了解决这个问题,许多高等教育系统和机构选择实施联合补救框架,以取代预先补救,这在很大程度上是因为后者的成本过高,无论是在财政资源方面,还是在学生的学业进步方面。伴随这种演变的是数学入门课程从代数扩展到统计学和定量推理。本研究讨论了美国一所大型城市公共硕士学位授予机构的三门不同的数学入门课程,目的是确定与每门课程成功相关的特征。采用条件概率和未完成率分析来比较学生在每门课程中的表现。然后对预测模型进行训练和验证,建立有关人口统计学和学术协变量与课程完成的差异关系的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Student Success in Co-remediated General Education Mathematics Courses at a Large Urban Public University
Placement and support of students in first-year mathematics courses at institutions of higher education has long been a consequential issue. In a bid to address it, many systems and institutions of higher learning have elected to implement a co-remediation framework in place of pre-remediation, due in large part to the prohibitive cost of the latter, both in terms of financial resource, as well as student academic progress. Accompanying this evolution has been the expansion of the introductory mathematics curriculum beyond algebra to include statistics and quantitative reasoning. The present study discusses three distinct introductory mathematics courses at a large urban public M.S. granting institution in the U.S., with the goal of identifying the characteristics that correlate with success in each. Conditional probability and non-completion rate analyses were implemented to compare student performance in each course. Predictive models were then trained and validated, building insight concerning the differential relationships of demographic and academic covariates with course completion.
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23.10%
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