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Prediction of a Sprint Deliverys Capabilities in Iterative-based Software Development

机译:基于迭代的软件开发中冲刺交付能力的预测

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摘要

Iterative-based software development has been frequently implemented in working environment. A modern era software project demands that the product is delivered on every sprint development. Hence, the execution of a sprint requires ample supervision and capabilities to deliver a high quality product at the end of the software project development. This researchs purpose is to give support for a software projects supervisor or owner in predicting the end products capability by knowing the performance level of each sprint. The method proposed for this purpose is to build a prediction model utilizing a number of features in a form of characteristics from a dataset containing software project iterations. The proposed model is built using Random Forest Regressor as a main method, with KNN (K-Nearest Neighbors) and Decision Tree Regressor being the comparison methods. Testing results show that compared to KNN and Decision Tree, Random Forest Regressor yields the best performance through its steady results on every stage progression of all tested software projects.
机译:基于迭代的软件开发经常在工作环境中实现。现代软件项目要求在每个冲刺开发中都交付产品。因此,冲刺的执行需要充分的监督和能力,以便在软件项目开发结束时交付高质量的产品。本研究的目的是通过了解每个冲刺的性能水平,为软件项目主管或所有者预测最终产品能力提供支持。为此目的提出的方法是利用包含软件项目迭代的数据集中的许多特征来构建预测模型。该模型以随机森林回归器为主要方法,以KNN(K-Nearest Neighbors)和决策树回归器为比较方法。测试结果表明,与KNN和决策树相比,随机森林回归器在所有测试软件项目的每个阶段进展中都具有稳定的结果,从而产生了最佳的性能。

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