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Delving into Commit-Issue Correlation to Enhance Commit Message Generation Models

Authors :
Wang, Liran
Tang, Xunzhu
He, Yichen
Ren, Changyu
Shi, Shuhua
Yan, Chaoran
Li, Zhoujun
Publication Year :
2023

Abstract

Commit message generation (CMG) is a challenging task in automated software engineering that aims to generate natural language descriptions of code changes for commits. Previous methods all start from the modified code snippets, outputting commit messages through template-based, retrieval-based, or learning-based models. While these methods can summarize what is modified from the perspective of code, they struggle to provide reasons for the commit. The correlation between commits and issues that could be a critical factor for generating rational commit messages is still unexplored. In this work, we delve into the correlation between commits and issues from the perspective of dataset and methodology. We construct the first dataset anchored on combining correlated commits and issues. The dataset consists of an unlabeled commit-issue parallel part and a labeled part in which each example is provided with human-annotated rational information in the issue. Furthermore, we propose \tool (\underline{Ex}traction, \underline{Gro}unding, \underline{Fi}ne-tuning), a novel paradigm that can introduce the correlation between commits and issues into the training phase of models. To evaluate whether it is effective, we perform comprehensive experiments with various state-of-the-art CMG models. The results show that compared with the original models, the performance of \tool-enhanced models is significantly improved.<br />Comment: ASE2023 accepted paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.00147
Document Type :
Working Paper