软件度量模型在整个开发生命周期中的模糊逻辑

A. Gray, Stephen G. MacDonell
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引用次数: 18

摘要

使用项目管理模型的管理人员面临的一个问题是数字输入的引出。在项目早期以任何程度的信心获得这些并不总是可行的。与此困难相关的是模型精确指定输出的风险,这会导致过度使用。这些问题可以看作是软件度量的集体失败,以表示管理人员对开发产品、资源和过程的知识中固有的不确定性。提出模糊逻辑技术可以通过表示输入和输出的不精确来帮助克服其中的一些困难,并提供更基于专家知识的模型构建方法。然而,在整个开发生命周期中,模糊逻辑在项目管理中的使用不应该是相同的。不同级别的可用信息和所需的精度表明,可以根据当前阶段不同地使用它,尽管可以使用单个模型来保持一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy logic for software metric models throughout the development life-cycle
One problem faced by managers who are using project management models is the elicitation of numerical inputs. Obtaining these with any degree of confidence early in a project is not always feasible. Related to this difficulty is the risk of precisely specified outputs from models leading to overcommitment. These problems can be seen as the collective failure of software measurements to represent the inherent uncertainties in managers' knowledge of the development products, resources, and processes. It is proposed that fuzzy logic techniques can help to overcome some of these difficulties by representing the imprecision in inputs and outputs, as well as providing a more expert-knowledge based approach to model building. The use of fuzzy logic for project management however should not be the same throughout the development life cycle. Different levels of available information and desired precision suggest that it can be used differently depending on the current phase, although a single model can be used for consistency.
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