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Enhancing Student Success by Combining Pre-enrollment Risk Prediction with Academic Analytics Data

机译:通过与学术分析数据相结合的预注册风险预测,提高学生成功

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For nearly a decade, our institution has used multiple-linear-regressions models to predict student success campus-wide. Over the past three years, we worked to refine the success prediction models to the college of engineering (COE) students in particular, and to explore the use of classification and regression tree (CART) approaches to doing the prediction (Kaleita et al., 2016). In a parallel effort, our institution has contracted with an academic analytics company to do a university-wide retrospective analysis of course-level student performance in relation to graduation rates. Here, we report on recent work we have done to make synergistic use of the results from the COE CART model and the academic analytics. Specifically, we have been able to examine student performance (i.e., grades) in core "success marker" courses as a function of the risk-grouping into which the CART model places them. We are now using this information to inform our advising. We provide details on these efforts, and on the opportunities and challenges provided by data-driven approaches to enhancing student success.
机译:对于近十年来,我们的机构使用了多元线性回归模型来预测学生的成功校园范围。在过去三年中,我们努力将成功预测模型精炼给工程学院(COE)学生,并探讨使用分类和回归树(推车)方法来进行预测(Kaleita等, 2016)。在并行努力中,我们的机构与学术分析公司合同,对课程级别的学生表现进行了大学的追溯分析,与毕业率有关。在这里,我们报告了我们最近的工作,我们已经完成了协同使用CoS购物车模型和学术分析的结果。具体而言,我们能够将核心“成功标记”课程中的学生表现(即等级)视为推车模型将其置于其中的风险分组的函数。我们现在正在使用这些信息来告知我们的建议。我们提供有关这些努力的详细信息,以及数据驱动的方法提供了加强学生成功的机会和挑战。

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