基于眼动追踪的寻错编程测试性能分析

Lianzhen Liu, Wei Liu, Xinyu Li, Weiwei Wang, W. Cheng
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引用次数: 3

摘要

错误发现是一种广泛使用的测试,用来评估学生对程序的理解和调试能力。近年来,人们提出了一些基于眼动追踪的方法来分析学生在编程过程中的认知过程,但很少有人关注编程课程的成绩评估。在我们之前的工作中,我们提出了一个眼动追踪辅助框架来评估一个学生在基于网络的错误发现测试中的整体表现。为了提供个性化诊断,我们在本文中扩展了这一工作,并研究了15名学生在不同阶段的在线测试表现。对于每个学生,他的表现分析分为两个阶段,即代码概述阶段和后续阶段。在第一阶段,研究和比较了第一次浏览代码和第一次发现错误的行为。我们发现,第一次找错动作的表现与最终考试成绩有明显的相关性。在接下来的阶段,以点击事件为分隔的活动序列来考察学生的表现。我们提出了一个新的指标,即程序执行匹配率,来描述注视路径与程序执行匹配的比例。数据分析结果表明,它更有助于解释学生的行为和描述学生在测试中的工作效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Eye-tracking Based Performance Analysis in Error Finding Programming Test
Error finding is a widely-used kind of test to assess the students’ ability in program comprehension and debugging. Recently some eye-tracking based approaches have been proposed to analyze students’ cognitive process in programming, but few of them focused on the performance assessment in programming courses. In our previous work, an eye-tracking assisted framework was proposed to assess the overall performance of one student in a web-based error-find test. Aiming to provide individual diagnostics, we extend that work in this paper, and study 15 students’ performance in different phases of the online test. For each student, his performance is analyzed in two phases, i.e. the code overview phase and the subsequent phase. In the first phase, the behavior of first-time code browsing and first-time error finding is studied and compared. We find that the performance of first error-finding action has obvious correlation with the final test score. In the subsequent phase, the students’ performances are examined in activity sequence separated by the click events. We propose a new metric, namely matched ratio of program execution, to describe the proportion of gaze path matching with the program execution. Data analysis results show that, it is more helpful in interpreting students’ behavior and describing the students’ working efficiency in the test.
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