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首页> 外文期刊>Journal of Information Systems Engineering and Management >Applying Absolute Residuals as Evaluation Criterion for Estimating the Development Time of Software Projects by Means of a Neuro-Fuzzy Approach
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Applying Absolute Residuals as Evaluation Criterion for Estimating the Development Time of Software Projects by Means of a Neuro-Fuzzy Approach

机译:应用绝对残差作为评估标准,通过神经模糊方法评估软件项目的开发时间

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In the software development field, software practitioners expend between 30% and 40% more effort than is predicted. Accordingly, researchers have proposed new models for estimating the development effort such that the estimations of these models are close to actual ones. In this study, an application based on a new neuro-fuzzy system (NFS) is analyzed. The NFS accuracy was compared to that of a statistical multiple linear regression (MLR) model. The criterion for evaluating the accuracy of estimation models has mainly been the Magnitude of Relative Error (MRE), however, it was recently found that MRE is asymmetric, and the use of Absolute Residuals (AR) has been proposed, therefore, in this study, the accuracy results of the NFS and MLR were based on AR. After a statistical paired t-test was performed, results showed that accuracy of the New-NFS is statistically better than that of the MLR at the 99% confidence level. It can be concluded that a new-NFS could be used for predicting the effort of software development projects when they have been individually developed on a disciplined process.
机译:在软件开发领域,软件从业人员的投入比预期多30%到40%。因此,研究人员提出了用于估算开发工作量的新模型,以使这些模型的估算值接近实际估算值。在这项研究中,分析了基于新的神经模糊系统(NFS)的应用程序。将NFS准确性与统计多元线性回归(MLR)模型的准确性进行了比较。估计模型准确性的评估标准主要是相对误差的幅度(MRE),但是最近发现MRE是不对称的,因此提出了使用绝对残差(AR)的建议。 ,NFS和MLR的准确性结果均基于AR。在进行统计配对t检验后,结果显示在99%的置信水平下,New-NFS的准确性在统计学上优于MLR的准确性。可以得出结论,当一个新的NFS可以在一个有规律的过程中单独开发时,可以用来预测软件开发项目的工作量。

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