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Bayesian network model for task effort estimation in agile software development

机译:贝叶斯网络模型用于敏捷软件开发中的工作量估算

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摘要

Even though the use of agile methods in software development is increasing, the problem of effort estimation remains quite a challenge, mostly due to the lack of many standard metrics to be used for effort prediction in plan-driven software development. The Bayesian network model presented in this paper is suitable for effort prediction in any agile method. Simple and small, with inputs that can be easily gathered, the suggested model has no practical impact on agility. This model can be used as early as possible, during the planning stage. The structure of the proposed model is defined by the authors, while the parameter estimation is automatically learned from a dataset The data are elicited from completed agile projects of a single software company. This paper describes various statistics used to assess the precision of the model: mean magnitude of relative error, prediction at level m, accuracy (the percentage of successfully predicted instances over the total number of instances), mean absolute error, root mean squared error, relative absolute error and root relative squared error. The obtained results indicate very good prediction accuracy.
机译:即使在软件开发中使用敏捷方法的人数在增加,工作量估算的问题仍然是一个很大的挑战,这主要是由于缺乏许多用于计划驱动的软件开发中的工作量预测的标准度量。本文提出的贝叶斯网络模型适用于任何敏捷方法中的工作量预测。建议的模型既简单又小巧,可以轻松收集输入,因此对敏捷性没有实际影响。在计划阶段,可以尽早使用此模型。作者定义了所提出模型的结构,同时从数据集中自动学习了参数估计。数据是从单个软件公司已完成的敏捷项目中得出的。本文介绍了用于评估模型精度的各种统计数据:相对误差的平均大小,级别为m的预测,准确性(成功预测的实例在实例总数中所占的百分比),平均绝对误差,均方根误差,相对绝对误差和根相对平方误差。获得的结果表明非常好的预测精度。

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