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Bringing Transparency to Predictive Analytics: A Systematic Comparison of Predictive Modeling Methods in Higher Education

机译:提高预测分析的透明度:高等教育预测建模方法的系统比较

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摘要

Colleges have increasingly turned to predictive analytics to target at-risk students for additional support. Most of the predictive analytic applications in higher education are proprietary, with private companies offering little transparency about their underlying models. We address this lack of transparency by systematically comparing two important dimensions: (1) different approaches to sample and variable construction and how these affect model accuracy and (2) how the selection of predictive modeling approaches, ranging from methods many institutional researchers would be familiar with to more complex machine learning methods, affects model performance and the stability of predicted scores. The relative ranking of students’ predicted probability of completing college varies substantially across modeling approaches. While we observe substantial gains in performance from models trained on a sample structured to represent the typical enrollment spells of students and with a robust set of predictors, we observe similar performance between the simplest and the most complex models.
机译:大学越来越转向预测分析,以瞄准风险的学生以获得额外的支持。高等教育中的大多数预测分析应用都是专有的,私营公司对其底层模型提供了很少的透明度。我们通过系统地比较两个重要的尺寸来解决这种缺乏透明度:(1)不同的采样和可变结构方法以及这些影响模型准确性的方法和(2)如何选择预测性建模方法,从方法范围内的许多机构研究人员都会熟悉通过更复杂的机器学习方法,影响模型性能和预测分数的稳定性。学生预测完成大学的预测概率的相对排名在建模方法中大幅不同。虽然我们在由构造的样本培训的模型中观察到的型号的大量收益,以代表学生的典型注册法术和具有强大的预测因子,我们观察最简单和最复杂的模型之间的类似性能。

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