Students’ Debugging Behavior Analysis in Game-Based Learning

Fan Yang, Z. Dong, Zhong Wu
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Abstract

As programing became more and more important, people are taking a large amount of work to help students to learn programming skills effectively. This paper applies a programming learning game called May's Journey to fit 5 debugging types including syntax, logical, structure, reasoning, and undefined debugging errors into programming levels. Then we can find out the reason why students make mistakes, and which debugging type would cause the mistakes of other debugging types. And we have 6 findings, (1) This paper proposes a student debugging model to describe how students make debugging errors, which is used for further analysis on student debugging behaviors. (2) This paper proposes to use group mean and with-in group variance based on student debugging model, which finds out the common debugging errors and personal debugging errors. (3) This paper proposes to extract student debugging patterns using Random forest, which identifies student debugging behaviors, so that students who have the same debugging pattern can be trained together. (4) This paper also proposes to use student debugging model-based SVM to extract student performance patterns, which identifies student performance changing over programming levels in terms of a specific debugging type. (5) This paper proposes to apply mean decrease accuracy and mean decrease Gini to identify the effectiveness of debugging types; and (6) this paper proposes to use a classification-based LSTM algorithm to predict debugging errors, which improves the predication accuracy a lot. Experiments and results are also provided to prove that our methods are valid and better.
游戏学习中学生调试行为分析
随着编程变得越来越重要,人们正在做大量的工作来帮助学生有效地学习编程技能。本文运用一款名为“May’s Journey”的编程学习游戏,将5种调试类型(包括语法、逻辑、结构、推理和未定义调试错误)整合到编程关卡中。然后我们可以找出学生出错的原因,以及哪种调试类型会导致其他调试类型的错误。(1)本文提出了一个学生调试模型来描述学生发生调试错误的情况,并将此模型用于进一步分析学生的调试行为。(2)提出了基于学生调试模型的群体均值和群体内方差,找出了常见调试错误和个人调试错误。(3)本文提出利用随机森林提取学生调试模式,随机森林识别学生调试行为,从而对具有相同调试模式的学生进行共同训练。(4)本文还提出了利用基于学生调试模型的支持向量机提取学生成绩模式,根据特定的调试类型识别学生成绩在编程层次上的变化。(5)本文提出采用mean - reduction accuracy和mean - reduction Gini来识别调试类型的有效性;(6)提出了一种基于分类的LSTM算法来预测调试误差,大大提高了预测精度。实验和结果证明了该方法的有效性和优越性。
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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