Li Mengzhou, Luo Lei, Sikdar Sujoy, Nizam Navid Ibtehaj, Gao Shan, Shan Hongming, Kruger Melanie, Kruger Uwe, Mohamed Hisham, Xia Lirong, Wang Ge
Department of Biomedical Engineering, Rensselaer Polytechnic Institute, Troy, NY, USA.
Department of Computer Science, Rensselaer Polytechnic Institute, Troy, NY, USA.
NPJ Sci Learn. 2021 Mar 1;6(1):5. doi: 10.1038/s41539-020-00083-3.
Online education is important in the COVID-19 pandemic, but online exam at individual homes invites students to cheat in various ways, especially collusion. While physical proctoring is impossible during social distancing, online proctoring is costly, compromises privacy, and can lead to prevailing collusion. Here we develop an optimization-based anti-collusion approach for distanced online testing (DOT) by minimizing the collusion gain, which can be coupled with other techniques for cheating prevention. With prior knowledge of student competences, our DOT technology optimizes sequences of questions and assigns them to students in synchronized time slots, reducing the collusion gain by 2-3 orders of magnitude relative to the conventional exam in which students receive their common questions simultaneously. Our DOT theory allows control of the collusion gain to a sufficiently low level. Our recent final exam in the DOT format has been successful, as evidenced by statistical tests and a post-exam survey.
在线教育在新冠疫情期间很重要,但在学生各自家中进行的在线考试容易引发学生以各种方式作弊,尤其是相互勾结作弊。虽然在保持社交距离期间无法进行现场监考,但在线监考成本高昂,会侵犯隐私,还可能导致勾结作弊行为盛行。在此,我们通过最小化勾结收益,开发了一种基于优化的远程在线测试(DOT)反勾结方法,该方法可与其他防止作弊的技术相结合。借助学生能力的先验知识,我们的DOT技术优化问题序列,并在同步的时间段内将问题分配给学生,与学生同时收到相同问题的传统考试相比,勾结收益降低了2至3个数量级。我们的DOT理论能够将勾结收益控制在足够低的水平。我们最近以DOT形式进行的期末考试很成功,统计测试和考后调查证明了这一点。