Predicting Defect Content and Quality Assurance Effectiveness by Combining Expert Judgment and Defect Data - A Case Study

Michael Kläs, H. Nakao, Frank Elberzhager, Jürgen Münch
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引用次数: 15

Abstract

Planning quality assurance (QA) activities in a systematic way and controlling their execution are challenging tasks for companies that develop software or software-intensive systems. Both require estimation capabilities regarding the effectiveness of the applied QA techniques and the defect content of the checked artifacts. Existing approaches for these purposes need extensive measurement data from his-torical projects. Due to the fact that many companies do not collect enough data for applying these approaches (es-pecially for the early project lifecycle), they typically base their QA planning and controlling solely on expert opinion. This article presents a hybrid method that combines commonly available measurement data and context-specific expert knowledge. To evaluate the methodpsilas applicability and usefulness, we conducted a case study in the context of independent verification and validation activities for critical software in the space domain. A hybrid defect content and effectiveness model was developed for the software requirements analysis phase and evaluated with available legacy data. One major result is that the hybrid model provides improved estimation accuracy when compared to applicable models based solely on data. The mean magni-tude of relative error (MMRE) determined by cross-validation is 29.6% compared to 76.5% obtained by the most accurate data-based model.
结合专家判断和缺陷数据预测缺陷内容和质量保证有效性——一个案例研究
对于开发软件或软件密集型系统的公司来说,以系统的方式规划质量保证(QA)活动并控制其执行是一项具有挑战性的任务。两者都需要关于应用的QA技术的有效性和检查工件的缺陷内容的评估能力。用于这些目的的现有方法需要来自历史项目的大量测量数据。由于许多公司没有收集足够的数据来应用这些方法(特别是在项目生命周期的早期),他们通常只根据专家的意见来制定QA计划和控制。本文提出了一种混合方法,结合了通常可用的测量数据和特定于上下文的专家知识。为了评估方法的适用性和有用性,我们在空间领域关键软件的独立验证和验证活动的背景下进行了一个案例研究。为软件需求分析阶段开发了一个混合缺陷内容和有效性模型,并用可用的遗留数据进行评估。一个主要的结果是,与仅基于数据的适用模型相比,混合模型提供了更高的估计精度。交叉验证确定的平均相对误差幅度(MMRE)为29.6%,而最精确的基于数据的模型获得的相对误差幅度为76.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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