开发人员如何讨论基本原理?

Rana Alkadhi, Manuel Nonnenmacher, Emitzá Guzmán, B. Brügge
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引用次数: 44

摘要

开发人员在软件开发过程中做出各种各样的决策。这些决策背后的基本原理在长寿软件系统的软件进化过程中非常重要。然而,当前用于记录基本原理的实践常常不足,并且基本原理仍然隐藏在开发人员的头脑中或嵌入到开发工件中。在OSS项目中获取基本原理面临着进一步的挑战;在这种情况下,开发人员分布在不同的地理位置,主要依靠书面沟通渠道来支持和协调他们的活动。在本文中,我们提出了一项实证研究,以了解OSS开发人员如何在IRC通道中讨论基本原理,并通过分析开发团队的IRC消息来探索自动提取基本原理元素的可能性。为了实现这一点,我们手动分析了三个大型OSS项目的7500条消息,并确定了所有细粒度的基本原理元素。我们评估了用于自动检测和分类IRC消息的各种机器学习算法。我们的结果表明,1)平均25%的IRC消息中讨论了基本原理,2)代码提交者平均贡献了54%的讨论基本原理,3)机器学习算法可以以0.76的精度和0.79的召回率检测基本原理,并将消息分类为更细粒度的基本原理元素,平均精度为0.45,召回率为0.43。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How do developers discuss rationale?
Developers make various decisions during software development. The rationale behind these decisions is of great importance during software evolution of long living software systems. However, current practices for documenting rationale often fall short and rationale remains hidden in the heads of developers or embedded in development artifacts. Further challenges are faced for capturing rationale in OSS projects; in which developers are geographically distributed and rely mostly on written communication channels to support and coordinate their activities. In this paper, we present an empirical study to understand how OSS developers discuss rationale in IRC channels and explore the possibility of automatic extraction of rationale elements by analyzing IRC messages of development teams. To achieve this, we manually analyzed 7,500 messages of three large OSS projects and identified all fine-grained elements of rationale. We evaluated various machine learning algorithms for automatically detecting and classifying rationale in IRC messages. Our results show that 1) rationale is discussed on average in 25% of IRC messages, 2) code committers contributed on average 54% of the discussed rationale, and 3) machine learning algorithms can detect rationale with 0.76 precision and 0.79 recall, and classify messages into finer-grained rationale elements with an average of 0.45 precision and 0.43 recall.
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