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Empirical Study in using Version Histories for Change Risk Classification

机译:使用版本历史进行变更风险分类的实证研究

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Many techniques have been proposed for mining software repositories, predicting code quality and evaluating code changes. Prior work has established links between code ownership and churn metrics, and software quality at file and directory level based on changes that fix bugs. Other metrics have been used to evaluate individual code changes based on preceding changes that induce fixes. This paper combines the two approaches in an empirical study of assessing risk of code changes using established code ownership and churn metrics with fix inducing changes on a large proprietary code repository. We establish a machine learning model for change risk classification which achieves average precision of 0.76 using metrics from prior works and 0.90 using a wider array of metrics. Our results suggest that code ownership metrics can be applied in change risk classification models based on fix inducing changes.
机译:已经提出了许多技术用于挖掘软件存储库,预测代码质量和评估代码更改。事先工作在文件和目录级别的代码所有权和流失指标之间建立了链接,并根据修复错误的更改。其他指标已被用于评估基于引起修复的前面的更改的单个代码更改。本文结合了两种方法,在评估代码所有权和流失指标的代码变化风险的实证研究中的两种方法,并在大型专业代码存储库上进行了修复。我们建立了一个机器学习模型,用于改变风险分类,使用先前作品的指标实现平均精度0.76,并使用更广泛的指标进行0.90。我们的结果表明,代码所有权度量可以根据修复诱导变化应用于变更风险分类模型。

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