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Software Size Estimation in Design Phase Based on MLP Neural Network

机译:基于MLP神经网络的设计阶段软件规模估计

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Size estimation is one of important processes related to success of software project management. This paper presents novel software size estimation model by using Multilayer Perception approach. Software size in terms of Lines of code is used as criterion variable. Structural complexity metrics are used as predictors. The metrics can be captured from a software design model named UML Class diagram. A high predictive ability of the model is shown with correlation coefficient measure. Moreover, four training algorithms; Levenberg-Marquardt, Scaled Conjugate Gradient. Broyden-Fletcher-Golfarb-Shanno and Bayesian Regularization, have been applied on the network for better estimation. The obtained results indicate the highest accuracy on the model with Bayesian Regularization algorithm.
机译:大小估计是与软件项目管理成功相关的重要过程之一。本文通过使用多层感知方法提出了新颖的软件规模估计模型。代码行中的软件大小用作标准变量。结构复杂度指标用作预测因子。可以从名为UML类图的软件设计模型捕获指标。具有相关系数测量的模型的高预测能力。此外,四种训练算法; Levenberg-Marquardt,缩放共轭梯度。 Broyden-Fletcher-Golfarb-Shanno和Bayesian正规化已应用于网络以获得更好的估计。所获得的结果表明了贝叶斯正则化算法模型的最高准确性。

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