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Story Point-Based Effort Estimation Model with Machine Learning Techniques

机译:机器学习技术的基于故事点的工作量估计模型

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Until now, numerous effort estimation models for software projects have been developed, most of them producing accurate results but not providing the flexibility to decision makers during the software development process. The main objective of this study is to objectively and accurately estimate the effort when using the Scrum methodology. A dynamic effort estimation model is developed by using regression-based machine learning algorithms. Story point as a unit of measure is used for estimating the effort involved in an issue. Projects are divided into phases and the phases are respectively divided into iterations and issues. Effort estimation is performed for each issue, then the total effort is calculated with aggregate functions respectively for iteration, phase and project. This architecture of our model provides flexibility to decision makers in any case of deviation from the project plan. An empirical evaluation demonstrates that the error rate of our story point-based estimation model is better than others.
机译:到目前为止,已经开发了许多用于软件项目的工作量估算模型,其中大多数模型可以产生准确的结果,但是在软件开发过程中并未为决策者提供灵活性。这项研究的主要目的是客观准确地评估使用Scrum方法时的工作量。动态工作量估计模型是通过使用基于回归的机器学习算法开发的。故事点是一种度量单位,用于估计问题涉及的工作量。项目分为多个阶段,各个阶段分别分为迭代和发布。对每个问题进行工作量估算,然后使用汇总函数分别计算迭代,阶段和项目的总工作量。在偏离项目计划的任何情况下,我们模型的这种体系结构均可为决策者提供灵活性。实证评估表明,我们基于故事点的估计模型的错误率要优于其他模型。

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