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Assessing effort estimation models for corrective maintenance through empirical studies

机译:通过经验研究评估工作量估计模型以进行纠正性维护

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摘要

We present an empirical assessment and improvement of the effort estimation model for corrective maintenance adopted in a major international software enterprise. Our study was composed of two phases. In the first phase we used multiple linear regression analysis to construct effort estimation models validated against real data collected from five corrective maintenance projects. The model previously adopted by the subject company used as predictors the size of the system being maintained and the number of maintenance tasks. While this model was not linear, we show that a linear model including the same variables achieved better performances. Also we show that greater improvements in the model performances can be achieved if the types of the different maintenance tasks is taken into account. In the second phase we performed a replicated assessment of the effort prediction models built in the previous phase on a new corrective maintenance project conducted by the subject company on a software system of the same type as the systems of the previous maintenance projects. The data available for the new project were finer grained, according to the indications devised in the first study. This allowed to improve the confidence in our previous empirical analysis by confirming most of the hypotheses made. The new data also provided other useful indications to better understand the maintenance process of the company in a quantitative way.
机译:我们提出了对大型国际软件企业采用的纠正性维护工作量估算模型的经验评估和改进。我们的研究分为两个阶段。在第一阶段,我们使用多元线性回归分析来构建工作量估算模型,该模型针对从五个纠正性维护项目收集的真实数据进行了验证。主题公司先前采用的模型用作预测器,以维护的系统的大小和维护任务的数量。尽管此模型不是线性的,但我们证明了包含相同变量的线性模型可以获得更好的性能。我们还表明,如果考虑不同维护任务的类型,则可以在模型性能上实现更大的改进。在第二阶段中,我们对主题公司在与先前维护项目的系统类型相同的软件系统上进行的新的纠正性维护项目上建立的上一阶段的工作量预测模型进行了重复评估。根据第一项研究中设计的指示,可用于新项目的数据更加细化。通过确认所作的大多数假设,这可以提高我们对先前经验分析的信心。新数据还提供了其他有用的指示,以便以定量方式更好地了解公司的维护过程。

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