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Una comparaci#x00F3;n de t#x00E9;cnicas de NLP sem#x00E1;nticas para analizar casos de uso

机译:语义NLP技术分析用例的比较

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The inspection of documents written in natural language with computers has become feasible thanks to the advances in Natural Language Processing (NLP) techniques. However, certain applications require a deeper semantic analysis of the text to produce good results. In this article, we present an exploratory study of semantic-aware NLP techniques for discovering latent concerns in use case specifications. For this purpose, we propose two NLP techniques, namely: semantic clustering and semantically-enriched rules. After evaluating these two techniques and comparing them with a technique developed by other researchers, results have showed that semantic NLP techniques hold great potential for detecting candidate concerns. Particularly, if these techniques are properly configured, they can help to reduce the efforts of requirement analysts and promote better quality in software development.
机译:由于自然语言处理(NLP)技术的进步,使用计算机检查以自然语言编写的文档已变得可行。但是,某些应用程序需要对文本进行更深入的语义分析才能产生良好的结果。在本文中,我们将对语义感知的NLP技术进行探索性研究,以发现用例规范中的潜在隐患。为此,我们提出了两种NLP技术,即:语义聚类和语义丰富的规则。在评估了这两种技术并将它们与其他研究人员开发的技术进行比较之后,结果表明,语义NLP技术在检测候选问题方面具有巨大的潜力。特别是,如果正确配置了这些技术,它们将有助于减少需求分析人员的工作量,并提高软件开发的质量。

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