在多层感知器(MLP)网络中加入非结构化文本:影响配对规划中伙伴选择的因素

S. Chai, Kok Luong Goh, Hui-Hui Wang, Wee Bui Lin
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引用次数: 0

摘要

目前对结对编程的分析研究表明,结对编程对学生在某些方面的表现产生了积极的影响。在学术领域,结对编程的通常做法是由各自的讲师将符合学生编程技能的学生结对。这意味着,当讲师进行结对时,学生在编程技能方面的兼容性是主要关注的焦点。然而,对于学生在结对编程中自由选择搭档时所关注的元素,缺乏研究。在这项研究中,开发了一个多层感知器(MLP)来预测选择结对规划而不是单独规划的偏好。利用贝叶斯信息准则选择预测中的最佳特征。参与者在问卷中作为评论输入的非结构化文本的潜力被纳入MLP模型,以验证其预测准确性的能力,即验证他们的评论是否与他们对结对编程与单独编程的偏好有关。研究发现,当学生在结对编程中自由选择合作伙伴时,在马来西亚的背景下,学生会注意到种族标准。这也表明,参与者在问卷中提交的评论形式的非结构化文本对他们选择是进行单独编程还是结对编程没有帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating Unstructured Text in Multi-Layer Perceptron (MLP) Network: Factors Affecting Partner Selection in Pair Programming
The revealed analysis studies on pair programming so far indicate that pair programming has produced affirmative effects on some aspects of students” performance. In the academic field, the usual practice of pair programming would be pairing the students in line with the programming skills of the students by the respective lecturers. This means, compatibility of the students in terms of their programming skills is the main focus when the pairing was done by the lecturers. Yet, research on elements that the students are looking into when they are given the liberty to decide on their partner in pair programming is lacking. In this study, a multi-layer perceptron (MLP) is developed to predict the preference of opting pair programming over solo programming. The Bayesian Information Criterion was used to select the best features in the prediction. The potential of unstructured text entered by the participants as comments in the questionnaire is incorporated in the MLP model to verify its capabilities towards prediction accuracy, i.e., to verify whether their comments are connected to their preference for pair programming versus solo programming. It was found that, when the students are given the freedom to choose their partner in pair programming, in the context of Malaysia, the students would pay attention to the ethnic criterion. This also suggests that the unstructured texts in the form of comments submitted by the participants in the questionnaire did not contribute to their choices on whether to undertake solo or pair programming.
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