用analog - x进行软件成本估算的实验

J. Keung, B. Kitchenham
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引用次数: 24

摘要

我们开发了一种称为analog - x的新方法,为基于类比的软件工作量估计提供统计推理程序。analog - x是一种统计评估有用的项目特征和目标特征(如要估计的工作量)之间关系的方法,它确保使用的数据集与预测问题相关,并且根据它们对目标变量的统计贡献来选择项目特征。我们假设这种方法可以(1)很容易地应用于更大的数据集,(2)也可以用于将联合努力和持续时间估计纳入类比,这在以前的传统类比估计中是不可能的。为了验证这两个假设,我们使用不同的数据集进行了两个实验。我们的结果表明,analog - x能够有效地处理超大型数据集,并提供有用的统计数据来评估数据集的质量。此外,我们的结果表明,持续时间估计的特征选择不同于共同努力持续时间估计的特征选择。我们得出结论,analog - x允许用户根据其特定需求和数据集评估估算持续时间的最佳程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experiments with Analogy-X for Software Cost Estimation
We developed a novel method called Analogy-X to provide statistical inference procedures for analogy- based software effort estimation. Analogy-X is a method to statistically evaluate the relationship between useful project features and target features such as effort to be estimated, which ensures the dataset used is relevant to the prediction problem, and project features are selected based on their statistical contribution to the target variables. We hypothesize that this method can be (1) easily applied to a much larger dataset, and (2) also it can be used for incorporating joint effort and duration estimation into analogy, which was not previously possible with conventional analogy estimation. To test these two hypotheses, we conducted two experiments using different datasets. Our results show that Analogy-X is able to deal with ultra large datasets effectively and provides useful statistics to assess the quality of the dataset. In addition, our results show that feature selection for duration estimation differs from feature selection for joint-effort duration estimation. We conclude Analogy-X allows users to assess the best procedure for estimating duration given their specific requirements and dataset.
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