Qualitative Modeling for Requirements Engineering

T. Menzies, Julian Richardson
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引用次数: 2

Abstract

Acquisition of "quantitative" models of sufficient accuracy to enable effective analysis of requirements tradeoffs is hampered by the slowness and difficulty of obtaining sufficient data. "Qualitative" models, based on expert opinion, can be built quickly and therefore used earlier. Such qualitative models are nondeterminate which makes them hard to use for making categorical policy decisions over the model. The nondeterminacy of qualitative models can be tamed using "stochastic sampling" and "treatment learning". These tools can quickly find and set the "master variables" that restrain qualitative simulations. Once tamed, qualitative modeling can be used in requirements engineering to assess more options, earlier in the life cycle
需求工程的定性建模
获得足够精确的“定量”模型,以便对需求权衡进行有效的分析,受到获得足够数据的缓慢和困难的阻碍。基于专家意见的“定性”模型可以快速构建,因此可以更早地使用。这种定性模型是不确定的,这使得它们很难用于在模型上做出明确的政策决定。定性模型的不确定性可以通过“随机抽样”和“处理学习”来克服。这些工具可以快速找到并设置限制定性模拟的“主变量”。一旦被驯服,定性建模就可以在需求工程中使用,在生命周期的早期评估更多的选项
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