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A Machine Learning Approach for Tracking and Predicting Student Performance in Degree Programs

机译:一种用于跟踪和预测学位课程中学生表现的机器学习方法

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摘要

Accurately predicting students’ future performance based on their ongoing academic records is crucial for effectively carrying out necessary pedagogical interventions to ensure students’ on-time and satisfactory graduation. Although there is a rich literature on predicting student performance when solving problems or studying for courses using data-driven approaches, predicting student performance in completing degrees (e.g., college programs) is much less studied and faces new challenges: 1) Students differ tremendously in terms of backgrounds and selected courses; 2) courses are not equally informative for making accurate predictions; and 3) students’ evolving progress needs to be incorporated into the prediction. In this paper, we develop a novel machine learning method for predicting student performance in degree programs that is able to address these key challenges. The proposed method has two major features. First, a bilayered structure comprising multiple base predictors and a cascade of ensemble predictors is developed for making predictions based on students’ evolving performance states. Second, a data-driven approach based on latent factor models and probabilistic matrix factorization is proposed to discover course relevance, which is important for constructing efficient base predictors. Through extensive simulations on an undergraduate student dataset collected over three years at University of California, Los Angeles, we show that the proposed method achieves superior performance to benchmark approaches.
机译:根据有效的学业成绩准确地预测学生的未来表现,对于有效地进行必要的教学干预措施以确保学生准时和满意的毕业至关重要。尽管在解决问题或使用数据驱动的方法学习课程时,有很多关于预测学生表现的文献,但是在完成学位(例如大学课程)的过程中预测学生表现的研究却少得多,并且面临着新的挑战:1)在以下方面,学生差异很大背景和所选课程的条款; 2)课程对做出准确的预测没有同等的作用;和3)学生的发展进步需要纳入预测中。在本文中,我们开发了一种新颖的机器学习方法来预测学位课程中的学生表现,能够解决这些关键挑战。所提出的方法具有两个主要特征。首先,开发了一个双层结构,其中包含多个基本预测变量和一整套集成预测变量,用于根据学生不断发展的表现状态进行预测。其次,提出了一种基于潜在因子模型和概率矩阵分解的数据驱动方法,以发现课程的相关性,这对于构建有效的基础预测变量非常重要。通过对加州大学洛杉矶分校三年来收集的本科生数据集的大量模拟,我们证明了所提出的方法比基准方法具有更好的性能。

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