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Models for Maintenance Effort Prediction with Object-Oriented Cognitive Complexity Metrics

机译:对面向对象认知复杂度指标的维护工作模型

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Software maintenance is the most desired, but most elusive and difficult task in software engineering. The cost of maintenance is as high as 60% to 80% of the total cost of the software. So, plenty of researches are going on in software maintenance. Though, object-oriented paradigm has made it easier, it remains the critical hotspot of research. One way of grappling with the maintenance problem, is to use the complexity metrics. Many studies were made to understand the relationship among complexity metrics, cognition, and maintenance. This paper wrestles with four newly proposed object-oriented cognitive complexity metrics to develop maintenance effort prediction models through various statistical techniques. Empirical study designs are made with hypotheses and experimented. Discussion on results prove the maintenance effort prediction models are more robust, more accurate, and can be employed to estimate the maintenance effort.
机译:软件维护是软件工程中最需要的,但最难以捉摸的难以完成的任务。维护成本高达软件总成本的60%至80%。因此,软件维护正在进行大量研究。虽然,面向对象的范式使其更容易,它仍然是研究的关键热点。使用维护问题的一种方法是使用复杂度指标。做了许多研究来了解复杂度量,认知和维护之间的关系。本文以四个新提出的面向对象认知复杂度指标摔跤,通过各种统计技术开发维护工作预测模型。经验研究设计是用假设和实验制作的。关于结果的讨论证明了维护工作预测模型更强大,更准确,并且可以用来估计维护工作。

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