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Improving software maintenance size metrics A case study: Automated report generation system for particle monitoring in Hard Disk Drive Industry

机译:改进软件维护规模指标案例研究:硬盘驱动器行业中用于颗粒监控的自动报告生成系统

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摘要

A software maintenance size can be used to predict maintenance effort or maintenance time. However, the traditional maintenance size metric only relies on line of source code (LOC), which hardly is suitable for object-oriented software. This research proposed four new maintenance size metrics based on number of classes, number of methods, average number of methods per class, and weighted methods per class. An automated report generation system in HDD industry (ARGS_PMS) was used as a case study to measure the performance of each proposed metric. We found that, for enhanced software maintenance tasks, maintenance size based on an average number of methods per class (MS-MC) gave the best performance in predicting maintenance time. For a refactoring maintenance task, maintenance size based on line of code (MS-LOC), weighted methods per class (MS-WMC) and average methods per class (MS-MC) were the best, better and good estimators for predicting maintenance time, respectively. On average, the maintenance size based on weighted methods per class gave the best performance.
机译:软件维护大小可以用来预测维护工作量或维护时间。但是,传统的维护规模度量标准仅依赖于源代码行(LOC),几乎不适合面向对象的软件。这项研究基于类数,方法数,每类方法的平均数量和每类加权方法,提出了四个新的维护规模度量标准。 HDD行业中的自动报告生成系统(ARGS_PMS)被用作案例研究来衡量每个建议指标的性能。我们发现,对于增强的软件维护任务,基于每类平均方法数量(MS-MC)的维护规模在预测维护时间方面具有最佳性能。对于重构维护任务,基于代码行(MS-LOC)的维护规模,每类加权方法(MS-WMC)和每类平均方法(MS-MC)是预测维护时间的最佳,最佳和最佳估计器, 分别。平均而言,基于每个类的加权方法的维护规模提供了最佳性能。

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