Ensemble Regression Models for Software Development Effort Estimation: A Comparative Study

H. D. P. Carvalho, Marília Lima, W. Santos, Roberta A. de A. Fagunde
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引用次数: 4

Abstract

As demand for computer software continually increases, software scope and complexity become higher than ever. The software industry is in real need of accurate estimates of the project under development. Software development effort estimation is one of the main processes in software project management. However, overestimation and underestimation may cause the software industry loses. This study determines which technique has better effort prediction accuracy and propose combined techniques that could provide better estimates. Eight different ensemble models to estimate effort with Ensemble Models were compared with each other base on the predictive accuracy on the Mean Absolute Residual (MAR) criterion and statistical tests. The results have indicated that the proposed ensemble models, besides delivering high efficiency in contrast to its counterparts, and produces the best responses for software project effort estimation. Therefore, the proposed ensemble models in this study will help the project managers working with development quality software.
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软件开发工作量估算的集成回归模型:比较研究
随着对计算机软件需求的不断增加,软件的范围和复杂性比以往任何时候都要高。软件行业确实需要对正在开发的项目进行准确的评估。软件开发工作量估算是软件项目管理的主要过程之一。然而,高估和低估都可能导致软件行业的损失。本研究确定了哪种技术具有更好的工作量预测精度,并提出了可以提供更好估计的组合技术。基于平均绝对残差(Mean Absolute Residual, MAR)标准和统计检验的预测精度,对8种不同的集成模型进行了比较。结果表明,所提出的集成模型除了比其对应模型提供更高的效率之外,还为软件项目工作量估计产生了最佳响应。因此,本研究中提出的集成模型将有助于项目经理处理开发质量软件。
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