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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Impact of passive and negative sentences in automatic generation of static UML diagram using NLP
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Impact of passive and negative sentences in automatic generation of static UML diagram using NLP

机译:使用NLP自动生成静态UML图的被动与负句的影响

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摘要

In this research work, we propose a rule based approach for the automatic extraction of UML diagram from the unstructured format of software functional requirements. The existing work provides decent results for active sentences and positive sentences but the challenge in our work is to automatic extract class diagram elements from passive voice type sentences and negative sentences. Furthermore, there is scope to do more research in extraction process using multi-word terms. Thus, we have endeavored to automatic extract the class diagram elements by overcoming these challenges. The methodology uses the Stanford CoreNLP Tools along with Java for the practical implementation of formulated rules. Our approach has proved that without supplant the human being and their decision making, one could reduce the human effort while designing functional requirements. Several case studies were performed to compare class diagrams generated by our methodology to the ones created by experts. Our methodology outperforms the existingwork and provides impressiveAverage completeness (0.82), Average correctness (0.92) and Average redundancy (0.15). Results show that class diagram elements extracted by our methodology are precise as well as accurate and hence, in practice, such class diagrams would be a good preliminary diagram to converge towards to precise and comprehensive class diagrams.
机译:在本研究工作中,我们提出了一种基于规则的方法,用于自动提取UML图的软件功能要求的非结构化格式。现有的工作为有源句子和积极的句子提供了体面的结果,但我们工作中的挑战是自动提取来自被动语音类型句子和负句子的图表元素。此外,使用多字术语,存在更多研究提取过程的研究。因此,我们努力通过克服这些挑战来自动提取类图元素。该方法使用STANFORD CORENLP工具以及Java进行制定规则的实际实施。我们的方法证明,没有取代人类及其决策,可以在设计功能要求时降低人力努力。进行了几种案例研究以比较我们的方法生成的类图,以专家创建的方法。我们的方法优于现有作业,提供尺寸的完整性(0.82),平均正确性(0.92)和平均冗余(0.15)。结果表明,通过我们的方法提取的类图元素精确以及准确,因此在实践中,这种类图将是一个良好的初步图,可以促进精确和全面的班级图。

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