从需求规范中自动提取和可视化质量关注点

Mona Rahimi, Mehdi Mirakhorli, J. Cleland-Huang
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引用次数: 41

摘要

软件需求规范通常关注于功能,而不能充分捕获质量关注点,如安全性、性能和可用性。在许多项目中,与质量相关的需求要么完全缺乏规范,要么与功能问题混杂在一起。这使得涉众很难完全理解系统的质量关注点,并评估其影响范围。在本文中,我们提出了一种数据挖掘方法,用于从需求、特性请求和在线论坛中自动提取和后续建模质量关注点。我们扩展了之前的工作,从文本文档中挖掘质量问题,并应用一系列机器学习步骤来检测与质量相关的需求,生成由项目级信息上下文化的目标图,并最终将结果可视化。我们针对两个工业卫生保健相关系统说明并评估我们的方法。
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Automated extraction and visualization of quality concerns from requirements specifications
Software requirements specifications often focus on functionality and fail to adequately capture quality concerns such as security, performance, and usability. In many projects, quality-related requirements are either entirely lacking from the specification or intermingled with functional concerns. This makes it difficult for stakeholders to fully understand the quality concerns of the system and to evaluate their scope of impact. In this paper we present a data mining approach for automating the extraction and subsequent modeling of quality concerns from requirements, feature requests, and online forums. We extend our prior work in mining quality concerns from textual documents and apply a sequence of machine learning steps to detect quality-related requirements, generate goal graphs contextualized by project-level information, and ultimately to visualize the results. We illustrate and evaluate our approach against two industrial health-care related systems.
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