预测bug修复时间:商业软件项目的实证研究

Hongyu Zhang, Liang Gong, Steven Versteeg
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引用次数: 167

摘要

对于一个大型且不断发展的软件系统,项目团队可能会在很长一段时间内收到许多错误报告。实现对bug修复时间的定量理解是很重要的。预测bug修复时间的能力可以帮助项目团队更好地评估软件维护工作并更好地管理软件项目。在本文中,我们对三个CA Technologies项目的bug修复时间进行了实证研究。我们提出了一种基于马尔可夫的方法来预测未来将被修复的bug数量。对于给定数量的缺陷,我们提出了一种方法来估计修复它们所需的总时间,该方法基于源自历史数据的bug修复时间的经验分布。对于给定的错误报告,我们还可以构建一个分类模型来预测缓慢或快速修复(例如,低于或高于时间阈值)。我们使用来自三个CA Technologies项目的真实维护数据来评估我们的方法。结果表明,该方法是有效的。
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Predicting bug-fixing time: An empirical study of commercial software projects
For a large and evolving software system, the project team could receive many bug reports over a long period of time. It is important to achieve a quantitative understanding of bug-fixing time. The ability to predict bug-fixing time can help a project team better estimate software maintenance efforts and better manage software projects. In this paper, we perform an empirical study of bug-fixing time for three CA Technologies projects. We propose a Markov-based method for predicting the number of bugs that will be fixed in future. For a given number of defects, we propose a method for estimating the total amount of time required to fix them based on the empirical distribution of bug-fixing time derived from historical data. For a given bug report, we can also construct a classification model to predict slow or quick fix (e.g., below or above a time threshold). We evaluate our methods using real maintenance data from three CA Technologies projects. The results show that the proposed methods are effective.
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