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Machine learning based approach to exam cheating detection

机译:基于机器学习的考试作弊检测方法

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The COVID-19 pandemic has impelled the majority of schools and universities around the world to switch to remote teaching. One of the greatest challenges in online education is preserving the academic integrity of student assessments. The lack of direct supervision by instructors during final examinations poses a significant risk of academic misconduct. In this paper, we propose a new approach to detecting potential cases of cheating on the final exam using machine learning techniques. We treat the issue of identifying the potential cases of cheating as an outlier detection problem. We use students’ continuous assessment results to identify abnormal scores on the final exam. However, unlike a standard outlier detection task in machine learning, the student assessment data requires us to consider its sequential nature. We address this issue by applying recurrent neural networks together with anomaly detection algorithms. Numerical experiments on a range of datasets show that the proposed method achieves a remarkably high level of accuracy in detecting cases of cheating on the exam. We believe that the proposed method would be an effective tool for academics and administrators interested in preserving the academic integrity of course assessments.
机译:Covid-19 Pandemic在世界各地的大多数学校和大学都转向远程教学。在线教育中最大的挑战之一是维持学生评估的学术诚信。在最终考试期间,教师缺乏直接监督构成了学术不端行为的重大风险。在本文中,我们用机器学习技术提出了一种检测最终考试欺骗的潜在案例的方法。我们对识别欺骗潜在案件的问题进行审视作为异常检测问题。我们使用学生的持续评估结果来确定期末考试的异常分数。但是,与机器学习中的标准异常检测任务不同,学生评估数据要求我们考虑其顺序性质。我们通过将经常性神经网络与异常检测算法应用于异常检测算法来解决这个问题。在一系列数据集上的数值实验表明,该方法在检测考试欺骗病例方面实现了显着高的精度。我们认为,该方法将是有兴趣保护课程评估学术完整性的学者和管理员的有效工具。

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