Towards A Dependency-Driven Taxonomy of Software Types

A. Capiluppi, N. Ajienka
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引用次数: 2

Abstract

Context: The evidence on software health and ecosystems could be improved if there was a systematic way to identify the types of software for which empirical evidence applies. Results and guidelines on software health are unlikely to be globally applicable: the context and the domain where the evidence has been tested are more likely to influence the results on software maintenance and health. Objective: The objectives of this paper are (i) to discuss the implications of adopting a specific taxonomy of software types, and (ii) to define, where possible, dependencies or similarities between parts of the taxonomy. Method: We discuss bottom-up and top-down taxonomies, and we show how different taxonomies fare against each other. We also propose two case studies, based on software projects divided in categories and sub-categories. Results: We show that one taxonomy does not consistently represent another taxonomy's categories. We also show that it is possible to establish directional dependencies (e.g., 'larger than') between attributes of different categories, and sub-categories. Conclusion: This paper establishes the need of directional-driven dependencies between categories of software types, that have an immediate effect on their maintenance and their relative software health.
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迈向依赖驱动的软件类型分类法
背景:如果有一种系统的方法来识别经验证据适用的软件类型,那么关于软件健康和生态系统的证据就可以得到改进。关于软件运行状况的结果和指导方针不太可能适用于全球:对证据进行测试的背景和领域更有可能影响软件维护和运行状况的结果。目的:本文的目的是(i)讨论采用特定软件类型分类法的含义,以及(ii)在可能的情况下定义分类法各部分之间的依赖性或相似性。方法:我们讨论自底向上和自顶向下的分类法,并展示不同的分类法如何相互比较。我们还提出了两个案例研究,它们基于按类别和子类别划分的软件项目。结果:我们表明一个分类法不一致地表示另一个分类法的类别。我们还展示了在不同类别和子类别的属性之间建立方向依赖关系(例如,“大于”)是可能的。结论:本文建立了软件类型类别之间的方向驱动依赖关系的需求,这对它们的维护和相关软件的健康有直接的影响。
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