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Predictive Analytics Machinery for STEM Student Success Studies

机译:STEM学生成功研究的预测分析机制

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摘要

Statistical predictive models play an important role in learning analytics. In this work, we seek to harness the power of predictive modeling methodology for the development of an analytics framework in STEM student success efficacy studies. We develop novel predictive analytics tools to provide stakeholders automated and timely information to assess student performance toward a student success outcome, and to inform pedagogical decisions or intervention strategies. In particular, we take advantage of the random forest machine learning algorithm, proposing a number of innovations to identify key input thresholds, quantify the impact of inputs on student success, evaluate student success at benchmarks in a program of study, and obtain a student success score. The proposed machinery can also tailor information for advisers to identify the risk levels of individual students in efforts to enhance STEM persistence and STEM graduation success. We additionally present our predictive analytics pipeline, motivated by and illustrated in a particular STEM student success study at San Diego State University. We highlight the process of designing, implementing, validating, and deploying analytical tools or dashboards, and emphasize the advantage of leveraging the utilities of both statistical analyses and business intelligence tools in order to maximize functionality and computational capacity.
机译:统计预测模型在学习分析中起着重要作用。在这项工作中,我们寻求利用预测建模方法的力量来开发STEM学生成功效能研究中的分析框架。我们开发了新颖的预测分析工具,以向利益相关者提供及时的自动化信息,以评估学生对学生成功成果的表现,并为教学决策或干预策略提供信息。特别是,我们利用随机森林机器学习算法的优势,提出了许多创新措施来确定关键输入阈值,量化输入对学生成功的影响,在学习计划中以基准为基准评估学生成功并获得学生成功得分了。拟议中的机制还可以为顾问定制信息,以识别单个学生的风险水平,以努力提高STEM的持久性和STEM毕业的成功率。此外,我们还将介绍预测性分析流程,该方法由圣地亚哥州立大学的一项STEM学生成功研究激发并进行了说明。我们重点介绍了设计,实施,验证和部署分析工具或仪表板的过程,并强调了利用统计分析和商业智能工具的效用以最大化功能和计算能力的优势。

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  • 来源
    《Applied Artificial Intelligence》 |2018年第6期|361-387|共27页
  • 作者单位

    San Diego State Univ, Analyt Studies & Inst Res, San Diego, CA 92182 USA;

    San Diego State Univ, Analyt Studies & Inst Res, San Diego, CA 92182 USA;

    San Diego State Univ, Dept Biol, San Diego, CA 92182 USA;

    San Diego State Univ, Dept Math & Stat, San Diego, CA 92182 USA;

    San Diego State Univ, Analyt Studies & Inst Res, San Diego, CA 92182 USA;

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