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Quantifying the Impact of Different Non-functional Requirements and Problem Domains on Software Effort Estimation

机译:量化不同的非功能性需求和问题域对软件工作量估计的影响

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The effort estimation techniques used in the software industry often tend to ignore the impact of Non-functional Requirements (NFR) on effort and reuse standard effort estimation models without local calibration. Moreover, the effort estimation models are calibrated using data of previous projects that may belong to problem domains different from the project which is being estimated. Our approach suggests a novel effort estimation methodology that can be used in the early stages of software development projects. Our proposed methodology initially clusters the historical data from the previous projects into different problem domains and generates domain specific effort estimation models, each incorporating the impact of NFR on effort by sets of objectively measured nominal features. We reduce the complexity of these models using a feature subset selection algorithm. In this paper, we discuss our approach in details, and we present the results of our experiments using different supervised machine learning algorithms. The results show that our approach performs well by increasing the correlation coefficient and decreasing the error rate of the generated effort estimation models and achieving more accurate effort estimates for the new projects.
机译:软件行业中使用的工作量估算技术通常倾向于忽略非功能需求(NFR)对工作量的影响,并在没有本地校准的情况下重用标准的工作量估算模型。此外,使用先前项目的数据来校准工作量估计模型,该项目可能属于与正在估计的项目不同的问题域。我们的方法提出了一种新颖的工作量估算方法,可以在软件开发项目的早期阶段使用。我们提出的方法最初将来自先前项目的历史数据聚类到不同的问题域中,并生成特定领域的工作量估算模型,每个模型都通过客观测量的名义特征集合了NFR对工作量的影响。我们使用特征子集选择算法来降低这些模型的复杂性。在本文中,我们将详细讨论我们的方法,并介绍使用不同的有监督的机器学习算法进行实验的结果。结果表明,通过增加相关系数并减少生成的工作量估算模型的错误率,并为新项目实现更准确的工作量估算,我们的方法表现良好。

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