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Investigating the use of duration‐based windows and estimation by analogy for COCOMO

机译:调查基于持续时间的窗口并通过类推估算COCOMO

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In model-based software estimation, using the right training data is a key contributor for making accurate predictions, which is crucial for the success of software projects. This study investigates the use of duration-based windows and estimation by analogy to calibrate COCOMO and assess their estimation performance. We compare these approaches as well as the use of all available historical data using the COCOMO data set of 341 projects and NASA data set of 93 projects. The results show that timing information exists in the data sets affecting estimation accuracy. Given sufficient data for calibration, using recently completed projects within short durations generates more accurate estimates than retaining all historical data or using k-nearest neighbors based on estimation by analogy. More training data spanning a long period of time may not lead to improved estimation accuracy. This study offers evidence to support the use of projects completed within recent years for training estimation models.
机译:在基于模型的软件评估中,使用正确的训练数据是做出准确预测的关键因素,这对于软件项目的成功至关重要。这项研究调查了基于持续时间的窗口的使用和类推估计,以校准COCOMO并评估其估计性能。我们比较了这些方法以及使用341个项目的COCOMO数据集和93个项目的NASA数据集对所有可用历史数据的使用。结果表明,时序信息存在于数据集中影响估计精度。给定足够的数据进行校准,相比于保留所有历史数据或使用类推法估算k个近邻,使用短期内近期完成的项目会产生更准确的估算。跨越很长一段时间的更多训练数据可能不会导致估计准确性的提高。这项研究提供了证据来支持将近年来完成的项目用于培训评估模型。

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