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Automatic Pull Request Title Generation
Speaker (s):

ZHANG Ting
PhD Candidate
School of Computing and Information Systems
Singapore Management University
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Date:
Time:
Venue:
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16 September 2022, Friday
2:30pm - 3:30pm
Meeting room 4.4, Level 4,
School of Computing and Information Systems 1,
Singapore Management University,
80 Stamford Road
Singapore 178902
Please register by 14 Sep 2022.

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About the Talk
Pull Requests (PRs) are a mechanism on modern collaborative coding platforms, such as GitHub. PRs allow developers to tell others that their code changes are available for merging into another branch in a repository. A PR needs to be reviewed and approved by the core team of the repository before the changes are merged into the branch. Usually, reviewers need to identify a PR that is in line with their interests before providing a review. By default, PRs are arranged in a list view that shows the titles of PRs. Therefore, it is desirable to have a precise and concise title, which is beneficial for both reviewers and other developers. However, it is often the case that developers do not provide good titles; we find that many existing PR titles are either inappropriate in length (i.e., too short or too long) or fail to convey useful information, which may result in PR being ignored or rejected. Therefore, there is a need for automatic techniques to help developers draft high-quality titles.
In this paper, we introduce the task of automatic generation of PR titles. We formulate the task as a one-sentence summarization task. To facilitate the research on this task, we construct a dataset that consists of 43,816 PRs from 495 GitHub repositories. We evaluated the state-of-the-art summarization approaches for the automatic PR title generation task. We leverage ROUGE metrics to automatically evaluate the summarization approaches and conduct a manual evaluation. The experimental results indicate that BART is the best technique for generating satisfactory PR titles with ROUGE-1, ROUGE-2, and ROUGE-L F1-scores of 47.22, 25.27, and 43.12, respectively. The manual evaluation also shows that the titles generated by BART are preferred.
This is a Pre-Conference talk for 38th IEEE International Conference on Software Maintenance and Evolution (ICSME 2022).
About the Speaker
ZHANG Ting is a Ph.D. candidate at SMU SCIS, supervised by Prof. David Lo and Prof. Lingxiao Jiang. Her research focuses on automatic software bug management, from detecting duplicate bug reports to repairing API misuse bugs.
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