基于k近邻算法的敏捷软件开发软件工作量估算策略

Eduardo Rodríguez Sánchez, Humberto Cervantes Maceda, Eduardo Vázquez-Santacruz
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引用次数: 0

摘要

根据第15次敏捷状态报告,敏捷开发在组织中的采用是一种持续加速的趋势。企业需要快速响应其客户和涉众的需求,并且通过在IT团队中采用敏捷实践,业务价值在性能和质量方面都得到提高,因此采用确保成功实现项目的时间、范围和成本的实践和模型非常重要。本文提出了一个混合工作量估算模型,该模型使用故事点方法和机器学习技术来估算使用Scrum等敏捷方法开发的项目的完成时间和总成本。用于实现该项目的主要机器学习技术是k近邻算法(KNN),其学习能力通过10-Fold交叉验证进行评估,并将估计与原始数据集和从文献中获得的结果进行比较,以表明估计是有竞争力的。该方法使用类别大小标签,改进了基于线性回归的原始估计模型。这项研究使用了由6家软件公司开发的21个项目,训练是在一种名为数据增强的技术创建的一组数据上完成的,这种技术产生了42个带有少量噪音的项目。完工时间以天计算,总成本以巴基斯坦卢比计算。所有结果都通过精度、均方误差、平均相对误差、方差和决定系数进行评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Software Effort Estimation for Agile Software Development Using a Strategy Based on k-Nearest Neighbors Algorithm
Agile development adoption in organizations is a trend that continues to accelerate according to the 15th State of Agile Report. Enterprises need to respond quickly to the needs of their customers and stakeholders and by adopting agile practices in IT teams, business value is raised in both performance and quality, so it is important to adopt practices and models that ensure the time, scope and cost of a project are achieved successfully. This paper presents a hybrid effort estimation model that uses a story point approach with machine learning techniques to estimate completion time and total cost of a project that is developed with agile methods like Scrum. The main machine learning technique used to implement the project is the k-Nearest Neighbors algorithm (KNN), its learning capabilities are assessed through 10-Fold cross validation and the estimates are compared with the original dataset and the results obtained from literature to show that estimates are competitive. The proposed approach uses category size labels that improve the original estimation model based on linear regression. The research uses 21 projects developed by six software houses, and training is done on a set created from a technique called data augmentation that generates 42 projects with a small amount of noise. Completion time is measured in days and total cost is valued in Pakistan rupees. All the results are evaluated through accuracy, Mean Squared Error, Mean Relative Error, variance and coefficient of determination.
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