分类与类分解在用例点估计方法中的应用

Mohammad Azzeh, A. B. Nassif, Shadi Banitaan
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引用次数: 8

摘要

用例点(UCP)评估方法描述了从用例图元素计算软件项目规模和生产力的过程。然后,这些度量标准用于预测软件开发早期阶段的项目工作。以前模型的主要挑战是,它们是基于非常有限的观测数据构建的,并且使用有限的生产率比率。本文提出了一种利用分类分解技术从UCP环境因子中预测生产力的新方法。类分解通过将类分割成更同质的类,从而增加了它们的多样性,为监督学习算法提供了许多优势。在两个具有相对足够观测值的数据集上构建并验证了该模型。准确性结果是有希望的,并且有可能提高早期工作量估计的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Application of Classification and Class Decomposition to Use Case Point Estimation Method
Use Case Points (UCP) estimation method describes the process of computing the software project size and productivity from use case diagram elements. These metrics are then used to predict the project effort at early stage of software development. The main challenges with previous models are that they were constructed based on a very limited number of observations, and using limited productivity ratios. This paper presents a new approach to predict productivity from UCP environmental factors by applying classification with decomposition technique. A class decomposition provides a number of advantages to supervised learning algorithms through segmenting classes into more homogenous classes, and therefore, increase their diversity. The proposed model is constructed and validated over two datasets that have relatively sufficient number of observations. The accuracy results are promising and have potential to increase accuracy of early effort estimation.
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