通过机器学习分类自动跟踪维护

Chris Mills, Javier Escobar-Avila, S. Haiduc
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引用次数: 30

摘要

以前的研究已经表明,软件的可追溯性,将项目中来自不同来源的相关工件(例如,源代码、用例、文档等)连接在一起的能力,通过帮助开发人员和其他涉众完成诸如影响分析、概念定位等共同任务来改善项目结果。在软件系统中建立可追溯性链接是一项重要而昂贵的任务,但这只是一半的困难。随着项目的维护和发展,新的工件被添加,现有的工件被更改,从而导致过时的可跟踪性信息。因此,需要采取特定的步骤来确保跟踪链接与项目的其余部分保持一致。在本文中,我们解决了这个问题,并提出了一种称为TRAIL的新方法来维护系统中的可追溯性信息。TRAIL的新颖之处在于,它利用先前捕获的关于项目可追溯性的知识来训练机器学习分类器,然后该分类器可用于派生新的可追溯性链接并更新现有的可追溯性链接。我们对来自6个软件系统的11个常用可追溯性数据集进行了TRAIL评估,并将其与7种流行的信息检索(IR)技术(包括以前工作中使用的最常用方法)进行了比较。结果表明,TRAIL在准确率、召回率和f分数方面优于所有IR方法。
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Automatic Traceability Maintenance via Machine Learning Classification
Previous studies have shown that software traceability, the ability to link together related artifacts from different sources within a project (e.g., source code, use cases, documentation, etc.), improves project outcomes by assisting developers and other stakeholders with common tasks such as impact analysis, concept location, etc. Establishing traceability links in a software system is an important and costly task, but only half the struggle. As the project undergoes maintenance and evolution, new artifacts are added and existing ones are changed, resulting in outdated traceability information. Therefore, specific steps need to be taken to make sure that traceability links are maintained in tandem with the rest of the project. In this paper we address this problem and propose a novel approach called TRAIL for maintaining traceability information in a system. The novelty of TRAIL stands in the fact that it leverages previously captured knowledge about project traceability to train a machine learning classifier which can then be used to derive new traceability links and update existing ones. We evaluated TRAIL on 11 commonly used traceability datasets from six software systems and compared it to seven popular Information Retrieval (IR) techniques including the most common approaches used in previous work. The results indicate that TRAIL outperforms all IR approaches in terms of precision, recall, and F-score.
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