编程中时间度量的比较

Juho Leinonen, Leo Leppänen, Petri Ihantola, Arto Hellas
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引用次数: 36

摘要

在编程入门课程中,对学生表现指标的研究传统上集中在个人指标和特定行为上。这些指标包括时间的总量和步骤的数量,例如代码编译,完成的任务的数量,以及不能从编程环境中获得的指标。然而,不同度量和交叉度量相关性的预测能力的差异是不清楚的,因此对于检查任务上的时间或编程中的努力没有一般的首选度量。在这项工作中,我们通过对多源数据集的分析,为学生在任务指标上的时间研究流做出贡献,该数据集包含有关学生使用编程环境的信息,他们对学习材料的使用以及关于学生在课程上投入的时间以及对工作量,教育价值和难度的每个作业的看法的自我报告数据。我们将数据集中的指标与课程表现进行比较和对比。我们的结果表明,来自同一数据源的传统使用指标倾向于形成彼此高度相关的集群,但与来自其他数据源的指标相关性较差。因此,研究人员应该利用多种数据来源来更准确地了解学生的学习情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Time Metrics in Programming
Research on the indicators of student performance in introductory programming courses has traditionally focused on individual metrics and specific behaviors. These metrics include the amount of time and the quantity of steps such as code compilations, the number of completed assignments, and metrics that one cannot acquire from a programming environment. However, the differences in the predictive powers of different metrics and the cross-metric correlations are unclear, and thus there is no generally preferred metric of choice for examining time on task or effort in programming. In this work, we contribute to the stream of research on student time on task indicators through the analysis of a multi-source dataset that contains information about students' use of a programming environment, their use of the learning material as well as self-reported data on the amount of time that the students invested in the course and per-assignment perceptions on workload, educational value and difficulty. We compare and contrast metrics from the dataset with course performance. Our results indicate that traditionally used metrics from the same data source tend to form clusters that are highly correlated with each other, but correlate poorly with metrics from other data sources. Thus, researchers should utilize multiple data sources to gain a more accurate picture of students' learning.
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