Evaluating Neural Networks as a Method for Identifying Students in Need of Assistance

Karo Castro-Wunsch, A. Ahadi, Andrew Petersen
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引用次数: 55

Abstract

Course instructors need to be able to identify students in need of assistance as early in the course as possible. Recent work has suggested that machine learning approaches applied to snapshots of small programming exercises may be an effective solution to this problem. However, these results have been obtained using data from a single institution, and prior work using features extracted from student code has been highly sensitive to differences in context. This work provides two contributions: first, a partial reproduction of previously published results, but in a different context, and second, an exploration of the efficacy of neural networks in solving this problem. Our findings confirm the importance of two features (the number of steps required to solve a problem and the correctness of key problems), indicate that machine learning techniques are relatively stable across contexts (both across terms in a single course and across courses), and suggest that neural network based approaches are as effective as the best Bayesian and decision tree methods. Furthermore, neural networks can be tuned to be reliably pessimistic, so they may serve a complementary role in solving the problem of identifying students who need assistance.
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评估神经网络作为识别需要帮助的学生的方法
课程教师需要能够尽早识别需要帮助的学生。最近的研究表明,将机器学习方法应用于小型编程练习的快照可能是解决这个问题的有效方法。然而,这些结果是使用来自单一机构的数据获得的,并且先前使用从学生代码中提取的特征的工作对上下文差异高度敏感。这项工作提供了两个贡献:首先,部分重现了以前发表的结果,但在不同的背景下,其次,探索了神经网络在解决这个问题方面的功效。我们的研究结果证实了两个特征的重要性(解决问题所需的步骤数和关键问题的正确性),表明机器学习技术在不同的环境中(包括单个课程和跨课程的术语)相对稳定,并表明基于神经网络的方法与最好的贝叶斯和决策树方法一样有效。此外,神经网络可以被调整为可靠的悲观,因此它们可以在解决识别需要帮助的学生的问题上发挥补充作用。
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