Interpretable Models Do Not Compromise Accuracy or Fairness in Predicting College Success

C. Kung, Renzhe Yu
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引用次数: 13

Abstract

The presence of "big data" in higher education has led to the increasing popularity of predictive analytics for guiding various stakeholders on appropriate actions to support student success. In developing such applications, model selection is a central issue. As such, this study presents a comprehensive examination of five commonly used machine learning models in student success prediction. Using administrative and learning management system (LMS) data for nearly 2,000 college students at a public university, we employ the models to predict short-term and long-term academic success. Beyond the tradeoff between model interpretability and accuracy, we also focus on the fairness of these models with regard to different student populations. Our findings suggest that more interpretable models such as logistic regression do not necessarily compromise predictive accuracy. Also, they lead to no more, if not less, prediction bias against disadvantaged student groups than complicated models. Moreover, prediction biases against certain groups persist even in the fairest model. These results thus recommend using simpler algorithms in conjunction with human evaluation in instructional and institutional applications of student success prediction when valid student features are in place.
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可解释的模型不会影响预测大学成功的准确性和公平性
高等教育中“大数据”的存在导致预测分析越来越受欢迎,用于指导各种利益相关者采取适当行动,以支持学生的成功。在开发这样的应用程序时,模型选择是一个中心问题。因此,本研究对学生成功预测中常用的五种机器学习模型进行了全面的研究。使用行政和学习管理系统(LMS)的数据在一所公立大学的近2000名大学生,我们使用模型来预测短期和长期的学业成功。除了模型可解释性和准确性之间的权衡之外,我们还关注这些模型对于不同学生群体的公平性。我们的研究结果表明,更多可解释的模型,如逻辑回归,并不一定会损害预测的准确性。此外,与复杂模型相比,它们对弱势学生群体的预测偏差即使没有减少,也不会增加。此外,即使在最公平的模型中,对某些群体的预测偏见仍然存在。因此,这些结果建议在有效的学生特征到位时,在教学和机构应用中使用更简单的算法,并结合人类评估来预测学生的成功。
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