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An Empirical Evaluation of Effort Prediction Models Based on Functional Size Measures

机译:基于功能尺寸措施的努力预测模型的实证评价

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Software development effort estimation is among the most interesting issues for project managers, since reliable estimates are at the base of good planning and project control. Several different techniques have been proposed for effort estimation, and practitioners need evidence, based on which they can choose accurate estimation methods. The work reported here aims at evaluating the accuracy of software development effort estimates that can be obtained via popular techniques, such as those using regression models and those based on analogy. The functional size and the development effort of twenty software development projects were measured, and the resulting dataset was used to derive effort estimation models and evaluate their accuracy. Our data analysis shows that estimation based on the closest analogues provides better results for most models, but very bad estimates in a few cases. To mitigate this behavior, the correction of regression toward the mean proved effective. According to the results of our analysis, it is advisable that regression to the mean correction is used when the estimates are based on closest analogues. Once corrected, the accuracy of analogy-based estimation is not substantially different from the accuracy of regression based models.
机译:软件开发工作估计是项目经理最有趣的问题之一,因为可靠的估计是良好的规划和项目控制的基础。已经提出了几种不同的技术来估算,从业者需要证据,基于它们可以选择准确的估计方法。这里报告的工作旨在评估软件开发工作估计的准确性,这些估计可以通过流行的技术获得,例如使用回归模型和基于类比的那些。测量了二十软件开发项目的功能规模和开发工作,由此产生的数据集用于推导努力估算模型并评估其准确性。我们的数据分析表明,基于最接近的模拟的估计为大多数模型提供了更好的结果,但在少数情况下估计非常糟糕。为了缓解这种行为,对均衡的回归纠正有效。根据我们分析的结果,建议在估计基于最近的类似物时使用对平均校正的回归。一旦纠正,基于类比的估计的准确性与基于回归的模型的准确性没有基本不同。

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