On Predicting Exam Performance Using Version Control Systems’ Features

Lorenzo Canale, Luca Cagliero, L. Farinetti, Marco Torchiano
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Abstract

The advent of Version Control Systems (VCS) in computer science education has significantly improved the learning experience. The Learning Analytics community has started to analyze the interactions between students and VCSs to evaluate the behavioral and cognitive aspects of the learning process. Within the aforesaid scope, a promising research direction is the use of Artificial Intelligence (AI) to predict students’ exam outcomes early based on VCS usage data. Previous AI-based solutions have two main drawbacks: (i) They rely on static models, which disregard temporal changes in the student–VCS interactions. (ii) AI reasoning is not transparent to end-users. This paper proposes a time-dependent approach to early predict student performance from VCS data. It applies and compares different classification models trained at various course stages. To gain insights into exam performance predictions it combines classification with explainable AI techniques. It visualizes the explanations of the time-varying performance predictors. The results of a real case study show that the effect of VCS-based features on the exam success rate is relevant much earlier than the end of the course, whereas the timely submission of the first lab assignment is a reliable predictor of the exam grade.
利用版本控制系统的功能预测考试成绩
版本控制系统(VCS)在计算机科学教育中的出现极大地改善了学习体验。学习分析社区已开始分析学生与 VCS 之间的互动,以评估学习过程中的行为和认知方面。在上述范围内,一个很有前途的研究方向是利用人工智能(AI)根据虚拟学习中心的使用数据提前预测学生的考试结果。以往基于人工智能的解决方案有两个主要缺点:(i) 它们依赖于静态模型,忽略了学生与虚拟考试系统交互过程中的时间变化。(ii) 人工智能推理对最终用户不透明。本文提出了一种与时间相关的方法,可从虚拟学习中心数据中提前预测学生成绩。它应用并比较了在不同课程阶段训练的不同分类模型。为了深入了解考试成绩预测,本文将分类与可解释人工智能技术相结合。它对随时间变化的成绩预测因子进行了可视化解释。一个真实案例研究的结果表明,基于 VCS 的特征对考试成功率的影响远早于课程结束时,而及时提交第一份实验作业则是考试成绩的可靠预测因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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