用交叉递归量化分析预测结对编程眼动追踪实验的成功

Maureen M. Villamor, M. M. Rodrigo
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引用次数: 2

摘要

结对编程是协作学习的一种模式。由于它对学生的潜在好处,它已经成为一种众所周知的编程入门课程教学实践。本研究旨在调查结对程序跟踪和调试背景下的结对模式,以确定协作的特征以及这些模式与成功的关系,其中成功是根据性能任务分数来衡量的。本研究采用了眼动追踪方法和交叉循环量化分析等技术。利用配对成功的潜在指标建立了配对成功的预测模型。研究结果表明,在结对编程的背景下,有可能创建一个能够预测结对成功的模型。在配对成功模型中,最能获得最佳绩效的预测因子是配对的熟练程度和熟悉程度。这是使用诸如梯度增强树之类的集成算法实现的。配对的表现在很大程度上取决于配对中个体的熟练程度;因此,我们建议有困难的学生与被认为精通编程的人配对,并且与有困难的学生一起工作很舒服。
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Predicting Pair Success in a Pair Programming Eye Tracking Experiment Using Cross-Recurrence Quantification Analysis
Pair programming is a model of collaborative learning. It has become a well-known pedagogical practice in teaching introductory programming courses because of its potential benefits to students. This study aims to investigate pair patterns in the context of pair program tracing and debugging to determine what characterizes collaboration and how these patterns relate to success, where success is measured in terms of performance task scores. This research used eye-tracking methodologies and techniques such as cross-recurrence quantification analysis. The potential indicators for pair success were used to create a model for predicting pair success. Findings suggest that it is possible to create a model capable of predicting pair success in the context of pair programming. The predictors for the pair success model that can obtain the best performance are the pairs’ proficiency level and degree of acquaintanceship. This was achieved using an ensemble algorithm such as Gradient Boosted Trees. The performance of the pairs is largely determined by the proficiency level of the individuals in the pairs; hence, it is recommended that the struggling students be paired with someone who is considered proficient in programming and with whom the struggling student is comfortable working with.
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来源期刊
APSIPA Transactions on Signal and Information Processing
APSIPA Transactions on Signal and Information Processing ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
8.60
自引率
6.20%
发文量
30
审稿时长
40 weeks
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