SEJun 10, 2016

Watch out for This Commit! A Study of Influential Software Changes

arXiv:1606.03266v125 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses the need for developers to predict impactful code changes to prevent defects and improve performance, though it is incremental as it builds on existing change analysis methods.

The paper tackles the problem of identifying influential software changes early by proposing a machine learning approach that uses features like change complexity and commit log terms, achieving 86.8% precision, 74% recall, and 80.4% F-measure in experiments.

One single code change can significantly influence a wide range of software systems and their users. For example, 1) adding a new feature can spread defects in several modules, while 2) changing an API method can improve the performance of all client programs. Developers often may not clearly know whether their or others' changes are influential at commit time. Rather, it turns out to be influential after affecting many aspects of a system later. This paper investigates influential software changes and proposes an approach to identify them early, i.e., immediately when they are applied. We first conduct a post-mortem analysis to discover existing influential changes by using intuitions such as isolated changes and changes referred by other changes in 10 open source projects. Then we re-categorize all identified changes through an open-card sorting process. Subsequently, we conduct a survey with 89 developers to confirm our influential change categories. Finally, from our ground truth we extract features, including metrics such as the complexity of changes, terms in commit logs and file centrality in co-change graphs, to build machine learning classifiers. The experiment results show that our prediction model achieves overall with random samples 86.8% precision, 74% recall and 80.4% F-measure respectively.

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