Using Temporal and Semantic Developer-Level Information to Predict Maintenance Activity Profiles
November 30, 2016 Β· Declared Dead Β· π IEEE International Conference on Software Maintenance and Evolution
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Authors
Stanislav Levin, Amiram Yehudai
arXiv ID
1611.10053
Category
cs.SE: Software Engineering
Citations
18
Venue
IEEE International Conference on Software Maintenance and Evolution
Last Checked
4 months ago
Abstract
Predictive models for software projects' characteristics have been traditionally based on project-level metrics, employing only little developer-level information, or none at all. In this work we suggest novel metrics that capture temporal and semantic developer-level information collected on a per developer basis. To address the scalability challenges involved in computing these metrics for each and every developer for a large number of source code repositories, we have built a designated repository mining platform. This platform was used to create a metrics dataset based on processing nearly 1000 highly popular open source GitHub repositories, consisting of 147 million LOC, and maintained by 30,000 developers. The computed metrics were then employed to predict the corrective, perfective, and adaptive maintenance activity profiles identified in previous works. Our results show both strong correlation and promising predictive power with R-squared values of 0.83, 0.64, and 0.75. We also show how these results may help project managers to detect anomalies in the development process and to build better development teams. In addition, the platform we built has the potential to yield further predictive models leveraging developer-level metrics at scale.
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