用UML序列模型和回归分析进行软件产品的工作量估算

P. Sahoo, D. K. Behera, J. Mohanty, C. S. K. Dash
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引用次数: 0

摘要

软件产品开发是我们所生活的社会不可缺少的一部分。为了经济、高效地在目标完成日期内生产高质量的产品,开发评估需要相当精确。这项工作对当前web应用程序的开发工作进行了相当可行的估计。这项工作的操作方法收集了为基于对象的系统生成的统一建模语言序列模型中存在的事实。这些事实,结合为这项工作专门编写的定制回归分析程序,被用于所需的估计。具体而言:使用决策树,支持向量,极端梯度增强和贝叶斯岭回归方法来估计努力。这些方法所得到的结果,证实了其精确性。根据所进行的实验观察,很明显,与其他机器学习模型相比,贝叶斯岭回归提供了最好的准确性。
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Effort Estimation of Software products by using UML Sequence models with Regression Analysis
Software product development is an indispensible part of the society we live in. In order to produce quality products economically, efficiently and within targeted completion date, estimation for development needs to be fairly precise. This work comes up with quite a viable estimation of the development efforts for the current day web applications. The modus operandi in this work collects facts existing in the Unified Modeling Language Sequence models generated for Object based systems. These facts, in combination with customized regression analysis programs specifically written for this work were used for the required estimation. To be specific: Decision Tree, Support Vector, Extreme Gradient Boosting and Bayesian Ridge Regression methods were used to estimate the efforts. The outcomes obtained by these methodologies, established its preciseness. As per the observations from experiments conducted, it was quite evident that the Bayesian Ridge Regression is providing the best accuracy compared to other Machine Learning models.
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