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A Machine Learning Approach for Determining the Validity of Traceability Links

机译:确定可追溯性链接有效性的机器学习方法

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摘要

Traceability Link Recovery (TLR) is a fundamental software maintenance task in which links are established between related software artifacts of different types (e.g., source code, documentation, requirements specifications, etc.) within a system. Existing approaches to TLR often require a human to analyze a long list of potential links and distinguish valid links from invalid ones. Here we present an approach which bypasses this intermediate step and automatically classifies links as valid or invalid using a machine learning approach and features such as text retrieval (TR) rankings and query quality (QQ) metrics. We performed an evaluation on recovering traceability links in three software systems and the results show the potential of our approach, which achieved 95% accuracy on average using both types of features.
机译:可追溯性链接恢复(TLR)是一项基本的软件维护任务,其中在系统内不同类型(例如,源代码,文档,需求规格等)的相关软件工件之间建立链接。现有的TLR方法通常需要人分析一长串潜在链接,并将有效链接与无效链接区分开。在这里,我们提出一种绕过此中间步骤并使用机器学习方法和诸如文本检索(TR)排名和查询质量(QQ)度量之类的功能自动将链接分类为有效或无效的方法。我们对三个软件系统中的可追溯性链接的恢复进行了评估,结果显示了我们方法的潜力,使用这两种类型的功能平均可以达到95%的准确性。

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