2024
DOI: 10.1111/jedm.12416
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Using Keystroke Behavior Patterns to Detect Nonauthentic Texts in Writing Assessments: Evaluating the Fairness of Predictive Models

Yang Jiang,
Mo Zhang,
Jiangang Hao
et al.

Abstract: The emergence of sophisticated AI tools such as ChatGPT, coupled with the transition to remote delivery of educational assessments in the COVID‐19 era, has led to increasing concerns about academic integrity and test security. Using AI tools, test takers can produce high‐quality texts effortlessly and use them to game assessments. It is thus critical to detect these nonauthentic texts to ensure test integrity. In this study, we leveraged keystroke logs—recordings of every keypress—to build machine learning (ML… Show more

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