测试合谋作弊检测:基于机器学习技术和特征表示的研究

IF 2.7 4区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Educational Measurement-Issues and Practice Pub Date : 2023-02-19 DOI:10.1111/emip.12538
Shun-Chuan Chang, Keng Lun Chang
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引用次数: 1

摘要

机器学习作为一种跨学科的教育科学研究方法已经发展和扩展。然而,使用机器学习技术检测多个考生或具有不寻常答案模式的考生之间的作弊行为仍然相对未被探索。本研究通过引入特征表示方法和机器学习算法来研究多项选择题中的合谋,这是一种有前途的方法;它们不仅可以用来检测参与串谋的个别考生,还可以用来评估是否有潜在不诚实考生群体的考试串谋。此外,使用小样本的例子,本研究的视觉检测程序被阐明,以帮助识别可疑的项目反应组,同时关注提供异常答案的特定个体。
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Cheating Detection of Test Collusion: A Study on Machine Learning Techniques and Feature Representation

Machine learning has evolved and expanded as an interdisciplinary research method for educational sciences. However, cheating detection of test collusion among multiple examinees or sets of examinees with unusual answer patterns using machine learning techniques has remained relatively unexplored. This study investigates collusion on multiple-choice tests by introducing feature representation methodologies and machine learning algorithms that can be jointly used as a promising method; they can be used not only to detect individual examinees involved in the collusion but also to evaluate test collusion with or without the groups of potentially dishonest examinees identified a priori. Furthermore, using small-sample examples, the visual detection procedures of the current study were articulated to help identify questionable item response groups and simultaneously focus on the specific individuals providing anomalous answers.

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