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Analogy-based software effort estimation using Fuzzy numbers

机译:使用模糊数的基于类比的软件工作量估计

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Background: Early stage software effort estimation is a crucial task for project bedding and feasibility studies. Since collected data during the early stages of a software development lifecycle is always imprecise and uncertain, it is very hard to deliver accurate estimates. Analogy-based estimation, which is one of the popular estimation methods, is rarely used during the early stage of a project because of uncertainty associated with attribute measurement and data availability. Aims: We have integrated analogy-based estimation with Fuzzy numbers in order to improve the performance of software project effort estimation during the early stages of a software development lifecycle, using all available early data. Particularly, this paper proposes a new software project similarity measure and a new adaptation technique based on Fuzzy numbers. Method: Empirical evaluations with Jack-knifing procedure have been carried out using five benchmark data sets of software projects, namely, 1SBSG, Desharnais, Kemerer, Albrecht and COCOMO, and results are reported. The results are compared to those obtained by methods employed in the literature using case-based reasoning and stepwise regression. Results: In all data sets the empirical evaluations have shown that the proposed similarity measure and adaptation techniques method were able to significantly improve the performance of analogy-based estimation during the early stages of software development. The results have also shown that the proposed method outperforms some well know estimation techniques such as case-based reasoning and stepwise regression. Conclusions: It is concluded that the proposed estimation model could form a useful approach for early stage estimation especially when data is almost uncertain.
机译:背景:早期软件工作量估算是项目整理和可行性研究的关键任务。由于在软件开发生命周期的早期阶段收集的数据始终不准确且不确定,因此很难提供准确的估计值。基于类比​​的估计是一种流行的估计方法,由于与属性测量和数据可用性相关的不确定性,在项目的早期很少使用。目的:我们将基于类比的估计与模糊数集成在一起,以便在软件开发生命周期的早期阶段使用所有可用的早期数据来提高软件项目工作量估计的性能。特别是,本文提出了一种基于模糊数的软件项目相似度度量和自适应技术。方法:使用五个项目的基准数据集,即1SBSG,Desharnais,Kemerer,Albrecht和COCOMO,使用Jack-knifing程序进行了实证评估,并报告了结果。将结果与文献中采用基于案例的推理和逐步回归的方法所获得的结果进行比较。结果:在所有数据集中,经验评估表明,所提出的相似性度量和自适应技术方法能够在软件开发的早期阶段显着提高基于类比的估计的性能。结果还表明,提出的方法优于一些众所周知的估计技术,例如基于案例的推理和逐步回归。结论:结论是,所提出的估计模型可以为早期估计提供有用的方法,尤其是在数据几乎不确定的情况下。

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