基于深度学习的面向对象软件尺寸估计中增强预测对象点度量的估计模型

Vijay Yadav, Raghuraj Singh, Vibhash Yadav
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引用次数: 1

摘要

软件行业的快速发展促进了对新技术的需求。PRICE软件系统使用预测对象点(POP)作为衡量工作量和成本的尺度。用Java编写的面向对象软件的精细化的POP度量值可以使用自动化POP分析工具计算。这项研究使用了25个开源Java项目。改进的POP度量改善了PRICE系统的缺点,并提供了更准确的软件尺寸度量。本文使用精细的POP指标与曲线拟合神经网络和多层感知器神经网络为基础的深度学习来估计软件开发的工作量。结果表明,该方法给出的工作量估计更接近于通过建设性成本估算模型(COCOMO)估算模型获得的实际工作量,从而验证了改进的POP是比POP更好的面向对象软件的大小度量。因此,我们考虑使用MLP方法来帮助构建面向对象(OO)模型系统规模的度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation model for enhanced predictive object point metric in OO software size estimation using deep learning
The Software industry’s rapid growth contributes to the need for new technologies. PRICE software system uses Predictive Object Point (POP) as a size measure to estimate Effort and cost. A refined POP metric value for object-oriented software written in Java can be calculated using the Automated POP Analysis tool. This research used 25 open-source Java projects. The refined POP metric improves the drawbacks of the PRICE system and gives a more accurate size measure of software. This paper uses refined POP metrics with curve-fitting neural networks and multi-layer perceptron neural network-based deep learning to estimate the software development effort. Results show that this approach gives an effort estimate closer to the actual Effort obtained through Constructive Cost Estimation Model (COCOMO) estimation models and thus validates refined POP as a better size measure of object-oriented software than POP. Therefore we consider the MLP approach to help construct the metric for the scale of the Object-Oriented (OO) model system.
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