需求工程中的机器学习:映射研究

Kareshna Zamani, D. Zowghi, Chetan Arora
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引用次数: 8

摘要

机器学习(ML)技术用于使软件开发过程更加高效和有效。许多机器学习方法也被提出用于自动化需求工程(RE)活动,如歧义检测、可追溯性分析和解决复杂的RE挑战。本研究的总体目标是探索机器学习在RE中的应用现状,并确定机器学习在改进RE过程和工件方面的有效性。遵循循证软件工程方法,我们对2010年至2020年4月期间发表的RE中使用的ML技术和方法的实证研究进行了映射研究。数据从选定的论文中提取,涉及机器学习技术、使用机器学习的问题和挑战、使用数据集的识别以及用于评估机器学习技术的评估指标。我们对65篇相关论文进行了分析。我们的分析表明,ML是自动化RE分析任务、克服复杂性、降低成本和时间的有效工具。我们还提出了机器学习在RE文献中的差距,并提出了需要进一步研究的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning in Requirements Engineering: A Mapping Study
Machine learning (ML) techniques are used to make the software development process more efficient and effective. Many ML approaches have also been proposed to automate Requirements Engineering (RE) activities such as ambiguity detection, traceability analysis and to address complex RE challenges. The overall goal of this research is to explore the state of the art of application of ML in RE and to determine the effectiveness of ML in improving the RE process and artefacts. Following the Evidence-Based Software Engineering approach, we performed a mapping study of the empirical studies on ML techniques and approaches used in RE published between 2010 and April 2020. Data were extracted from the selected papers about the ML techniques, problems, and challenges of using ML, identification of the used datasets, and the evaluation metrics employed to assess the ML techniques. We analyzed 65 relevant papers in this mapping study. Our analysis shows that ML is an effective tool for automating RE analysis tasks, overcoming complexity, and reducing cost and time. We also present the gaps in the ML for RE literature and suggest areas that need further research.
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