Using Source Code Density to Improve the Accuracy of Automatic Commit Classification into Maintenance Activities
May 28, 2020 Β· Declared Dead Β· π Journal of Systems and Software
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Authors
Sebastian HΓΆnel, Morgan Ericsson, Welf LΓΆwe, Anna Wingkvist
arXiv ID
2005.13904
Category
cs.SE: Software Engineering
Cross-listed
cs.LG
Citations
18
Venue
Journal of Systems and Software
Last Checked
4 months ago
Abstract
Source code is changed for a reason, e.g., to adapt, correct, or adapt it. This reason can provide valuable insight into the development process but is rarely explicitly documented when the change is committed to a source code repository. Automatic commit classification uses features extracted from commits to estimate this reason. We introduce source code density, a measure of the net size of a commit, and show how it improves the accuracy of automatic commit classification compared to previous size-based classifications. We also investigate how preceding generations of commits affect the class of a commit, and whether taking the code density of previous commits into account can improve the accuracy further. We achieve up to 89% accuracy and a Kappa of 0.82 for the cross-project commit classification where the model is trained on one project and applied to other projects. Models trained on single projects yield accuracies of up to 93% with a Kappa approaching 0.90. The accuracy of the automatic commit classification has a direct impact on software (process) quality analyses that exploit the classification, so our improvements to the accuracy will also improve the confidence in such analyses.
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