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Combining data analytics and developers feedback for identifying reasons of inaccurate estimations in agile software development

机译:将数据分析和开发人员反馈相结合,以识别敏捷软件开发中估计不正确的原因

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摘要

Background: Effort estimations are critical tasks greatly influencing the accomplishment of software projects. Despite their recognized relevance, little is yet known what indicators for inaccurate estimations exist, and which are the reasons of inaccurate estimations.Aims: In this manuscript, we aim at contributing to this existing gap. To this end, we implemented a tool that combines data analytics and developers' feedback, and we employed that tool in a study. In that study, we explored the most common reasons of inaccurate user story estimations and the possible indicators of inaccurate estimations.Method: We relied on a mixed method approach used to study reasons and indicators for the identification and prediction of inaccurate estimations in practical agile software development contexts.Results: Our results add to the existing body of knowledge in multiple ways. We elaborate causes for inaccurate estimations going beyond the borders of existing literature; for instance, we show that lack of developers' experience is the most common reason of inaccurate estimations. Further, our results suggest, for example, that the higher the complexity, the higher the uncertainty in the estimation.Conclusions: Overall, our results strengthen our confidence in the usefulness of using data analytics with human-in-the-loop mechanisms to improve effort estimations. (C) 2019 Elsevier Inc. All rights reserved.
机译:背景:工作量估算是至关重要的任务,极大地影响了软件项目的完成。尽管存在公认的相关性,但鲜为人知的是哪些指标估计不正确,这是估计不正确的原因。目的:在本手稿中,我们旨在弥补这一现有差距。为此,我们实施了一种将数据分析与开发人员反馈相结合的工具,并在研究中使用了该工具。在该研究中,我们探讨了用户故事估计不正确的最常见原因以及不准确估计的可能指标。方法:我们依靠一种混合方法来研究原因和指标,以在实际敏捷软件中识别和预测不正确的估计结果:我们的结果以多种方式添加到现有的知识体系中。我们阐述了超出现有文献范围的错误估计的原因。例如,我们表明缺乏开发人员的经验是估算不准确的最常见原因。此外,例如,我们的结果表明,复杂度越高,估计中的不确定性就越高。结论:总体而言,我们的结果增强了我们对将数据分析与人在回路机制结合使用以提高效率的信心。努力估算。 (C)2019 Elsevier Inc.保留所有权利。

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