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Evaluating the accuracy of defect estimation models based on inspection data from two inspection cycles

机译:根据来自两个检查周期的检查数据评估缺陷估计模型的准确性

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摘要

Defect content estimation techniques (DCETs), based on defect data from inspection, estimate the total number of defects in a document to evaluate the development process. For inspections that yield few data points DCETs reportedly underestimate the number of defects. If there is a second inspection cycle, the additional defect data is expected to increase estimation accuracy.

In this paper we consider 3 scenarios to combine data sets from the inspection-reinspection process. We evaluate these approaches with data from an experiment in a university environment where 31 teams inspected and reinspected a software requirements document.

Main findings of the experiment were that reinspection data improved estimation accuracy. With the best combination approach all examined estimators yielded on average estimates within 20% around the true value, all estimates stayed within 40% around the true value.

机译:

缺陷内容估计技术(DCET)基于检查中的缺陷数据,估计文档中的缺陷总数以评估开发过程。对于仅产生很少数据点的检查,据报道,DCET低估了缺陷的数量。如果有第二个检查周期,则额外的缺陷数据有望提高估计准确性。

在本文中,我们考虑了3种方案,以结合检查-重新检查过程中的数据集。我们使用大学环境中的实验数据评估了这些方法,该环境中有31个团队检查并重新检查了软件需求文档。

实验的主要发现是重新检查数据提高了估计准确性。采用最佳组合方法,所有检查过的估算器的平均估算值都在真实值的20%以内,所有估算值都在真实值的40%以内。

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