基于多项式回归的异构项目软件开发工作量估计组合模型

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2022-05-18 DOI:10.32620/reks.2022.2.06
Amrita Sharma, N. Chaudhary
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引用次数: 3

摘要

主题:评估软件工作是参与软件项目管理的人员的一项重要工作。软件开发总是在变化,这一事实加剧了预测工作量的困难。过去,研究人员在工作中使用一种形式的开发方法来估计工作量和时间。软件项目的估计是用不同大小的矩阵来估计的。使用过程、敏捷和面向对象开发方法的算法模型进行估计需要代码行、故事点和用例点。目前,这些公司使用这三种类型的规模矩阵来估计项目。目前没有任何一个模型估计不同规模度量的不同开发方法的工作量。本文提出了一个结合回归分析的三种开发方法的组合软件估计模型。评估可以使用所提出的模型来完成,该模型用于使用过程、敏捷和面向对象方法开发的软件项目。方法:模型的输入是软件的大小,例如代码行、故事点和用例点。该模型是使用多项式回归开发的。该模型是用四个恒定参数开发的,这些参数基于过程性、敏捷性和面向对象的项目。使用python项目的数据集用于过程,zia数据集用于敏捷,公司数据集用于面向对象方法来提出模型。结论:用多项式回归模型预测了程序性、敏捷性和面向对象项目的工作量,并将结果与现有模型进行了比较,以验证工作。R2用于测量精度,MMRE用于确定误差。该模型的精度高于90%,误差小于0.05。将结果与基于实例的推理和程序方法的集成模型、敏捷方法的线性回归和贝叶斯网络以及面向对象方法的线性和对数线性回归进行了比较。与这些技术相比,实现了最小误差和最大精度。
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The combined model for software development effort estimation using polynomial regression for heterogeneous projects
Subject matter: Estimating the software work is a crucial job of persons participating in software project management. The difficulty in predicting effort is compounded by the fact that software development is always changing. In the past, researchers used one form of development methodology in their work to estimate effort and time. Estimations of the software projects are estimated with different size matrices. The lines of code, story point and use case point are required for the estimation using algorithmic models for procedural, agile, and object-oriented development approaches. Currently, the companies use these three types of size matrices for estimating projects. Not any one model present estimates the effort for different development approaches with different size metrics. This paper proposes a combined software estimation model for three types of development methodologies with regression analysis. The estimation can be done with the proposed model for a software project developed using the procedural, agile, and object-oriented approach. Method: The input for the model is the size of the software, such as lines of code, story point, and use case point. The model is developed using the polynomial regression. The model is developed with the four constant parameters that are based on the procedural, agile, and object-oriented projects. A dataset of python projects for procedural, zia dataset for agile, company dataset for object-oriented methodology is used to propose the model. Conclusion: The effort is predicted for the procedural, agile, and object-oriented projects with the polynomial regression model and compare the results to existing models to validate the work. The R2 is used to measure accuracy and the MMRE is used to determine error. The accuracy of the proposed model was higher than 90% and the error was found to be less than 0.05. The results are compared with case-based reasoning and an ensemble model for the procedural approach, linear regression and Bayesian network for the agile approach, and linear and log-linear regression for object-oriented approach. The minimum error and maximum accuracy is achieved compared to these techniques.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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