Linear Regression Model for Agile Software Development Effort Estimation

Amrita Sharma, N. Chaudhary
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引用次数: 10

Abstract

Software cost estimation is always an essential task for the development management as it requires for estimating the effort and the time required for developing the software. A project manager requires software estimation for making a decision and predict the total budget. Success or failure of software development depends on the accurate estimation of cost and time. There are numerous tools and techniques have been developed for estimating the software cost. But all these techniques are best suitable for the traditional development methodology. From the past two decades, the agile methodology has been com for software development. So the traditional cost estimation techniques may not give the appropriate results for agile development. In this paper, the multiple linear regression models are proposed for comparing the best model for agile development. The correlation between the dependent and independent variables are also found out. The results showed that the proposed model outperforms from the decision tree, stochastic gradient boosting, and random forest.
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敏捷软件开发工作量估算的线性回归模型
软件成本估算一直是开发管理的一项重要任务,因为它需要估算开发软件所需的工作量和时间。项目经理需要软件评估来做出决策并预测总预算。软件开发的成败取决于对成本和时间的准确估计。已经开发了许多用于估算软件成本的工具和技术。但是所有这些技术都最适合传统的开发方法。在过去的二十年里,敏捷方法被广泛应用于软件开发。因此,传统的成本估算技术可能无法为敏捷开发提供合适的结果。为了比较敏捷开发的最佳模型,本文提出了多元线性回归模型。并找出了因变量与自变量之间的相关性。结果表明,该模型优于决策树、随机梯度增强和随机森林。
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