Contract Cheat Detection using Biometric Keystroke Dynamics

Nancy Agarwal, Nils Folvik Danielsen, Per Kristian Gravdal, Patrick A. H. Bours
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引用次数: 1

Abstract

Contract cheating has become a profound issue in academics with the onset of the COVID-19 pandemic as digitised evaluation has become common practice. This evaluation method opens up for examining students remotely, either by online home exams or longer written assessments done away from the classroom. Contract cheating refers to a problem where the students hire a third party to complete their assignment and submit it for grading as their own. Manually dealing with contract cheating is a cumbersome task and tools for plagiarism detection are not able to detect contract cheaters as students do not use the work of other authors without consent. In this paper, a machine learning based system is designed to specifically detect the cases of contract cheating in academics. The system uses keystroke biometric behaviour where typing style is analysed to discriminate cheaters from genuine students. The experiments are conducted on two datasets where one is existing and another is designed by performing data collection in a university for recording the keystroke features. Two categories of keystroke dynamics, namely duration and latency-based features are studied for designing the various machine learning-based systems for investigating the efficient one. Furthermore, the performance of the systems are evaluated under the setting of zero false accusations in order to avoid genuine students being charged as imposters.
合同作弊检测使用生物识别击键动力学
随着新型冠状病毒感染症(COVID-19)疫情的爆发,随着数字化评价的普及,合同作弊成为学术界的一个深刻问题。这种评估方法为远程检查学生开放,可以通过在线家庭考试或在课堂外进行更长时间的书面评估。合同作弊指的是学生雇佣第三方来完成他们的作业,并将其作为自己的作业提交给评分机构。手工处理合同作弊是一项繁琐的任务,抄袭检测工具无法检测合同作弊者,因为学生在未经同意的情况下不会使用其他作者的作品。本文设计了一个基于机器学习的系统,专门用于检测学术领域的合同欺诈案件。该系统利用敲击键盘的生物特征行为,通过分析打字风格来区分作弊者和真正的学生。实验在两个数据集上进行,其中一个数据集是现有的,另一个数据集是通过在大学进行数据收集而设计的,用于记录击键特征。研究了两类按键动力学,即基于持续时间和基于延迟的特征,用于设计各种基于机器学习的系统,以研究高效的系统。此外,系统的性能在零虚假指控的设置下进行评估,以避免真正的学生被指控为冒名顶替者。
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