从上下文和击键日志中自动检测新手程序员的挫败感

Fwa Hua Leong
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引用次数: 7

摘要

新手程序员在学习计算机编程时,随着时间的推移会表现出一系列的情感状态。挫折的建模是很重要的,因为它告诉学生需要教学干预,否则学生可能会失去信心和学习兴趣。在本文中,使用Java辅导系统中学生的上下文和击键特性来检测学生在编程练习会话中的挫败感。与其他研究中使用的心理传感器相比,上下文和击键日志的使用不那么突兀,使用的设备(键盘)在大多数学习环境中都是无处不在的。为了防止过拟合,模型采用了套索正则化逻辑回归技术。结果表明,仅使用上下文和击键特征的模型实现了0.67的预测精度水平和0.833的召回度量。因此,我们得出结论,有可能通过提取辅导系统中的上下文和击键日志来检测学生的挫败感,并具有足够的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic detection of frustration of novice programmers from contextual and keystroke logs
Novice programmers exhibit a repertoire of affective states over time when they are learning computer programming. The modeling of frustration is important as it informs on the need for pedagogical intervention of the student who may otherwise lose confidence and interest in the learning. In this paper, contextual and keystroke features of the students within a Java tutoring system are used to detect frustration of student within a programming exercise session. As compared to psychological sensors used in other studies, the use of contextual and keystroke logs are less obtrusive and the equipment used (keyboard) is ubiquitous in most learning environment. The technique of logistic regression with lasso regularization is utilized for the modeling to prevent over-fitting. The results showed that a model that uses only contextual and keystroke features achieved a prediction accuracy level of 0.67 and a recall measure of 0.833. Thus, we conclude that it is possible to detect frustration of a student from distilling both the contextual and keystroke logs within the tutoring system with an adequate level of accuracy.
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