比较两种监控模式下的大规模评估与交互式测井数据分析

IF 2.7 4区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Jinnie Shin, Qi Guo, Maxim Morin
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引用次数: 0

摘要

由于COVID-19大流行对物理距离的限制越来越多,远程监考已经成为传统现场监考的替代方案,以确保基本评估的连续性,例如基于计算机的医疗执照考试。最近的文献强调了不同监考方式对考生考试体验的显著影响,包括响应时间数据等因素。然而,这些差异对测试表现的潜在影响仍不清楚。当前文献中的一个限制是缺乏严格的学习分析框架来评估使用各种监考设置交付的计算机考试的可比性。为了解决这一差距,目前的研究旨在引入一个基于机器学习的框架,该框架分析计算机生成的响应时间数据,以调查高风险评估中监考方式之间的关联。我们使用从加拿大进行的大规模高风险医疗执照考试中收集的经验数据证明了该框架的有效性。通过应用基于机器学习的框架,我们能够为每种监考模式提取考生特定的响应时间数据,并根据考生的监考模式识别出不同的时间使用模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Large-Scale Assessments in Two Proctoring Modalities with Interactive Log Data Analysis

With the increased restrictions on physical distancing due to the COVID-19 pandemic, remote proctoring has emerged as an alternative to traditional onsite proctoring to ensure the continuity of essential assessments, such as computer-based medical licensing exams. Recent literature has highlighted the significant impact of different proctoring modalities on examinees’ test experience, including factors like response-time data. However, the potential influence of these differences on test performance has remained unclear. One limitation in the current literature is the lack of a rigorous learning analytics framework to evaluate the comparability of computer-based exams delivered using various proctoring settings. To address this gap, the current study aims to introduce a machine-learning-based framework that analyzes computer-generated response-time data to investigate the association between proctoring modalities in high-stakes assessments. We demonstrated the effectiveness of this framework using empirical data collected from a large-scale high-stakes medical licensing exam conducted in Canada. By applying the machine-learning-based framework, we were able to extract examinee-specific response-time data for each proctoring modality and identify distinct time-use patterns among examinees based on their proctoring modality.

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来源期刊
CiteScore
3.90
自引率
15.00%
发文量
47
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