Semi-automatic Generation of Extended Finite State Machines from Natural Language Standard Documents

J. Greghi, E. Martins, Ariadne Carvalho
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引用次数: 10

Abstract

Many requirement documents are written in natural language and, therefore, may contain problems such as inconsistencies and ambiguities. To minimize these problems, there is a trend in Software Engineering to use models to represent systems. These models are obtained from textual requirements. However, manual modelling is a complex task and, in order to do it semi-automatically, one has to deal with problems such as the kind of model to be generated, the automation degree to be achieved, and the quality of the document that must be processed. We propose a methodology to semi-automatically generate Extended Finite State Machines (EFSMs) from natural language standard documents. We used Natural Language Processing (NLP) techniques and tools to extract information from the document, and implemented a prototype which generates EFSMs. The generated EFSMs were validated with a model checking tool, and manually evaluated by comparing them with the manually generated models.
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从自然语言标准文档中半自动生成扩展有限状态机
许多需求文档是用自然语言编写的,因此,可能包含诸如不一致和歧义之类的问题。为了最小化这些问题,在软件工程中有一种趋势是使用模型来表示系统。这些模型是从文本需求中获得的。然而,手动建模是一项复杂的任务,为了半自动地完成它,必须处理诸如要生成的模型类型、要实现的自动化程度以及必须处理的文档质量等问题。提出了一种从自然语言标准文档中半自动生成扩展有限状态机(EFSMs)的方法。我们使用自然语言处理(NLP)技术和工具从文档中提取信息,并实现了生成EFSMs的原型。生成的efsm使用模型检查工具进行验证,并通过将它们与手动生成的模型进行比较来手动评估。
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