在通常可用的数据源中为开源软件系统寻找领域缺陷的预测器:OpenBSD的一个案例研究

P. Li, J. Herbsleb, M. Shaw
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引用次数: 55

摘要

开源软件系统是许多商业软件应用程序的重要组成部分。开源软件系统的现场缺陷预测可能允许组织对开源软件组件做出明智的决策。在本文中,我们对九个OpenBSD版本从已建立的数据源(代码存储库和请求跟踪系统)以及新数据源(邮件列表存档)中挖掘的预测因子(发布前可用的指标)进行了远程度量和分析。首先,我们尝试通过扩展适合于开发缺陷的软件可靠性模型来预测领域缺陷。我们发现这种方法是不可行的,这激发了对基于度量的领域缺陷预测的研究。然后,我们使用已建立的统计方法:Kendall等级相关、Pearson等级相关和正向AIC模型选择来评估139个预测因子。我们收集的度量包括产品度量、开发度量、部署和使用度量,以及软件和硬件配置度量。我们发现,在开发期间,技术讨论邮件列表的消息数量(从邮件列表存档中捕获的部署和使用度量)是领域缺陷的最佳预测指标。我们的工作确定了开源软件系统中常用数据源中领域缺陷的预测者,并且是朝着基于度量的领域缺陷预测迈出的一步,用于有关开源软件组件的基于定量的决策制定
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding predictors of field defects for open source software systems in commonly available data sources: a case study of OpenBSD
Open source software systems are important components of many business software applications. Field defect predictions for open source software systems may allow organizations to make informed decisions regarding open source software components. In this paper, we remotely measure and analyze predictors (metrics available before release) mined from established data sources (the code repository and the request tracking system) as well as a novel source of data (mailing list archives) for nine releases of OpenBSD. First, we attempt to predict field defects by extending a software reliability model fitted to development defects. We find this approach to be infeasible, which motivates examining metrics-based field defect prediction. Then, we evaluate 139 predictors using established statistical methods: Kendall's rank correlation, Pearson's rank correlation, and forward AIC model selection. The metrics we collect include product metrics, development metrics, deployment and usage metrics, and software and hardware configurations metrics. We find the number of messages to the technical discussion mailing list during the development period (a deployment and usage metric captured from mailing list archives) to be the best predictor of field defects. Our work identifies predictors of field defects in commonly available data sources for open source software systems and is a step towards metrics-based field defect prediction for quantitatively-based decision making regarding open source software components
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