PENTACET data : 23 million contextual code comments and 250,000 SATD comments
Sridharan, Murali; Rantala, Leevi; Mäntylä, Mika (2023-07-12)
M. Sridharan, L. Rantala and M. Mäntylä, "PENTACET data - 23 Million Contextual Code Comments and 250,000 SATD comments," 2023 IEEE/ACM 20th International Conference on Mining Software Repositories (MSR), Melbourne, Australia, 2023, pp. 412-416, doi: 10.1109/MSR59073.2023.00063.
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https://urn.fi/URN:NBN:fi-fe20230911122380
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Abstract
Most Self-Admitted Technical Debt (SATD) research utilizes explicit SATD features such as ‘TODO’ and ‘FIXME’ for SATD detection. A closer look reveals several SATD research uses simple SATD (‘Easy to Find’) code comments without contextual data (preceding and succeeding source code context). This work addresses this gap through PENTACET (or 5C dataset) data. PENTACET is a large Curated Contextual Code Comments per Contributor and the most extensive SATD data. We mine 9,096 Open Source Software Java projects totaling over 400 million LOC. The outcome is a dataset with 23 million code comments, preceding and succeeding source code context for each comment, and more than 250,000 SATD comments, including both ‘Easy to Find’ and ‘Hard to Find’ SATD. We believe PENTACET data will further SATD research using Artificial Intelligence techniques.
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