Source Code Plagiarism Detection in Academia with Information Retrieval: Dataset and the Observation

Source code plagiarism is an emerging issue in computer science education. As a result, a number of techniques have been proposed to handle this issue. However, comparing these techniques may be challenging, since they are evaluated with their own private dataset(s). This paper contributes in provid...

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Veröffentlicht in:Informatics in education 2019, Vol.18 (2), p.321-344
Hauptverfasser: Karnalim, Oscar, Budi, Setia, TOBA, Hapnes, JOY, Mike
Format: Artikel
Sprache:eng
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Zusammenfassung:Source code plagiarism is an emerging issue in computer science education. As a result, a number of techniques have been proposed to handle this issue. However, comparing these techniques may be challenging, since they are evaluated with their own private dataset(s). This paper contributes in providing a public dataset for comparing these techniques. Specifically, the dataset is designed for evaluation with an Information Retrieval (IR) perspective. The dataset consists of 467 source code files, covering seven introductory programming assessment tasks. Unique to this dataset, both intention to plagiarise and advanced plagiarism attacks are considered in its construction. The dataset's characteristics were observed by comparing three IR-based detection techniques, and it is clear that most IR-based techniques are less effective than a baseline technique which relies on Running-Karp-Rabin Greedy-String-Tiling, even though some of them are far more time-efficient.
ISSN:1648-5831
2335-8971
DOI:10.15388/infedu.2019.15