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Effort Prediction in Iterative Software Development Processes -- Incremental Versus Global Prediction Models

机译:迭代软件开发过程中的精力预测 - 增量与全局预测模型

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Estimation of development effort without imposing overhead on the project and the development team is of paramount importance for any software company. This study proposes a new effort estimation methodology aimed at agile and iterative development environments not suitable for description by traditional prediction methods. We propose a detailed development methodology, discuss a number of architectures of such models (including a wealth of augmented regression models and neural networks) and include a thorough case study of Extreme Programming (XP) in two semi-industrial projects. The results of this research evidence that in the XP environment under study the proposed incremental model outperforms traditional estimation techniques most notably in early phases of development. Moreover, when dealing with new projects, the incremental model can be developed from scratch without resorting itself to historic data.
机译:估计开发努力而不强调项目和开发团队对任何软件公司至关重要。本研究提出了一种新的努力估算方法,其旨在通过传统预测方法不适合描述的敏捷和迭代开发环境。我们提出了详细的开发方法,讨论了许多这些模型的架构(包括大量增强的回归模型和神经网络),并在两个半工业项目中包括对极端编程(XP)的全面研究。本研究证据的结果表明,在XP环境下,提出的增量模型优于传统估算技术,最符合在早期发展的阶段。此外,在处理新项目时,可以从划痕开始增量模型,而无需诉诸历史数据。

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