Automatic Classification of Software Artifacts in Open-Source Applications

Yuzhan Ma, Sarah Fakhoury, Michael Christensen, V. Arnaoudova, W. Zogaan, Mehdi Mirakhorli
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引用次数: 29

Abstract

With the increasing popularity of open-source software development, there is a tremendous growth of software artifacts that provide insight into how people build software. Researchers are always looking for large-scale and representative software artifacts to produce systematic and unbiased validation of novel and existing techniques. For example, in the domain of software requirements traceability, researchers often use software applications with multiple types of artifacts, such as requirements, system elements, verifications, or tasks to develop and evaluate their traceability analysis techniques. However, the manual identification of rich software artifacts is very labor-intensive. In this work, we first conduct a large-scale study to identify which types of software artifacts are produced by a wide variety of open-source projects at different levels of granularity. Then we propose an automated approach based on Machine Learning techniques to identify various types of software artifacts. Through a set of experiments, we report and compare the performance of these algorithms when applied to software artifacts.
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开源应用程序中软件构件的自动分类
随着开放源代码软件开发的日益普及,软件工件也有了巨大的增长,这些工件提供了对人们如何构建软件的洞察。研究人员一直在寻找大规模的、有代表性的软件工件,以对新技术和现有技术进行系统的、公正的验证。例如,在软件需求可追溯性领域,研究人员经常使用具有多种工件类型的软件应用程序,例如需求、系统元素、验证或任务,以开发和评估其可追溯性分析技术。然而,手工识别丰富的软件工件是非常劳动密集型的。在这项工作中,我们首先进行了一项大规模的研究,以确定哪些类型的软件工件是由各种不同粒度级别的开源项目产生的。然后,我们提出了一种基于机器学习技术的自动化方法来识别各种类型的软件工件。通过一组实验,我们报告并比较了这些算法在应用于软件工件时的性能。
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