挪威工业软件评估调查

Kjetil Moløkken-Østvold, M. Jørgensen, S. Tanilkan, H. Gallis, Anette C. Lien, S. Hove
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引用次数: 117

摘要

我们提供了软件公司用于评估其项目的评估方法的概述,为什么选择这些方法,以及它们有多准确。为了提高估计的准确性,这些知识是必不可少的。我们进行了深入的调查,通过对18家不同公司的高级经理和52个不同项目的项目经理进行结构化访谈来收集信息。我们分析了有关估算方法、工作量估算准确性和偏差、进度估算准确性和偏差、交付功能和其他估算相关信息的信息。例如,我们的结果表明,平均工作量超支为41%,评估性能在过去10-20年没有太大变化,专家评估是占主导地位的评估方法,评估准确性没有受到使用正式评估模型的太大影响,并且软件经理倾向于相信他们公司的评估准确性比实际情况更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A survey on software estimation in the Norwegian industry
We provide an overview of the estimation methods that software companies apply to estimate their projects, why those methods are chosen, and how accurate they are. In order to improve estimation accuracy, such knowledge is essential. We conducted an in-depth survey, where information was collected through structured interviews with senior managers from 18 different companies and project managers of 52 different projects. We analyzed information about estimation approach, effort estimation accuracy and bias, schedule estimation accuracy and bias, delivered functionality and other estimation related information. Our results suggest, for example, that average effort overruns are 41%, that the estimation performance has not changed much the last 10-20 years, that expert estimation is the dominating estimation method, that estimation accuracy is not much impacted by use of formal estimation models, and that software managers tend to believe that the estimation accuracy of their company is better than it actually is.
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