Applying Text Analysis for Detecting Academic Misconduct on a Statistics Exam
DOI:
https://doi.org/10.55016/ojs/cpai.v8i4.81528Keywords:
similarity software, academic integrity, Canada, COVID-19, invigilation, online exams, reflection, string-based similarity, quantitative analysisAbstract
This practitioner paper presents an example of using text similarity analysis (specifically using Levenshtein similarity) as one component of an investigation into incidents of academic dishonesty in an online assessment at a Canadian university. The paper begins with an overview of the Levenshtein similarity method followed by a description of the academic offences it was used to provide evidence for. The paper concludes with reflections on challenges and opportunities the use of text similarity analysis affords.
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Published
2025-11-15
How to Cite
Whitaker, D. (2025). Applying Text Analysis for Detecting Academic Misconduct on a Statistics Exam. Canadian Perspectives on Academic Integrity, 8(4). https://doi.org/10.55016/ojs/cpai.v8i4.81528
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Practitioner Articles
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