一个预测开源软件中反回归工作的模型

A. Capiluppi, J. Fernández-Ramil
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引用次数: 11

摘要

软件系统中累积的更改不是均匀分布的:一些元素比其他元素更改得更频繁。为了获得最佳效果,应将有限的时间和精力用于复杂性控制,即抗回归工作,应用于频繁变化且复杂的系统元素。在此基础上,我们提出了一种维护指导模型(MGM),并对其进行了实际数据测试。MGM考虑了复杂性的几个维度:尺寸、结构复杂性和耦合性。结果表明,研究的八个开源系统的维护者通常倾向于按照我们的MGM给出的预测来优先考虑他们的反回归工作,尽管分歧也存在。MGM提供了一种基于历史的替代方法来识别用于反回归工作的元素,其中大多数只使用静态代码特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A model to predict anti-regressive effort in Open Source Software
Accumulated changes on a software system are not uniformly distributed: some elements are changed more often than others. For optimal impact, the limited time and effort for complexity control, called anti-regressive work, should be applied to the elements of the system which are frequently changed and are complex. Based on this, we propose a maintenance guidance model (MGM) which is tested against real-world data. MGM takes into account several dimensions of complexity: size, structural complexity and coupling. Results show that maintainers of the eight open source systems studied tend, in general, to prioritize their anti-regressive work in line with the predictions given by our MGM, even though, divergences also exist. MGM offers a history-based alternative to existing approaches to the identification of elements for anti-regressive work, most of which use static code characteristics only.
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