项目执行过程中工作量估算的实证研究

M. C. Ohlsson, C. Wohlin
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引用次数: 17

摘要

对软件工程项目中的工作量估算进行了实证研究。特别地,随着更多的信息变得可用,本研究关注于工作量评估的改进。例如,在需求阶段之后,需求规范是可用的,问题是关于需求数量的知识是否有助于改进项目的工作量估计。目标是双重的。首先,重要的是要找到合适的措施,可以用于项目的重新规划。其次,目标是研究随着软件项目的执行,工作量评估是如何演变的。该分析基于26个项目的数据。分析包括两个主要步骤:基于部分项目的数据构建模型,以及对其他项目的模型进行评估。没有发现单一的测量是一个特别好的努力预测模型的测量;相反,使用了不同阶段的几种测量方法。然后对预测模型进行了评估,得出的结论是,在项目执行期间很难改进工作量估计,至少在初始估计相当好的情况下是这样。然而,人们相信预测模型对于了解初始估计的正确顺序是很重要的,即需要估计来确保初始估计相当好。结论是,重新评估方法将有助于项目经理保持对项目的控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An empirical study of effort estimation during project execution
Presents an empirical study of effort estimation in software engineering projects. In particular, this study is focused on improvements in effort estimations as more information becomes available. For example, after the requirements phase, the requirements specification is available, and the question is whether the knowledge regarding the number of requirements helps in improving the effort estimation of the project. The objective is twofold. First, it is important to find suitable measures that can be used in the re-planning of the projects. Second, the objective is to study how the effort estimations evolve as a software project is performed. The analysis is based on data from 26 projects. The analysis consists of two main steps: model building based on data from part of the projects, and evaluation of the models for the other projects. No single measure was found to be a particular good measure for an effort prediction model; instead, several measures from different phases were used. The prediction models were then evaluated, and it is concluded that it is difficult to improve effort estimations during project execution, at least if the initial estimate is fairly good. It is, however, believed that the prediction models are important for knowing that the initial estimate is of the right order, i.e. the estimates are needed to ensure that the initial estimate was fairly good. It is concluded that the re-estimation approach will help project managers to stay in control of their projects.
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