
Supplementary Material for the paper "Towards Robust Plagiarism Detection in Programming Education: Introducing Tolerant Token Matching Techniques to Counter Novel Obfuscation Methods". We include the following artefacts: code: the implementation of our approach based on JPlag (code and jars) datasets: the student programs and obfuscated plagiarisms used in our evaluation gpt: the prompts and scripts used for the AI-based obfuscation and generation results: the raw result data of our evaluation
Tokenization, Plagiarism Obfuscation, Computer Science Education, Software Plagiarism Detection, Source Code Plagiarism Detection, Obfuscation Attacks, Code Normalization
Tokenization, Plagiarism Obfuscation, Computer Science Education, Software Plagiarism Detection, Source Code Plagiarism Detection, Obfuscation Attacks, Code Normalization
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