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Information Retrieval - Based Solution for Software Requirements Classification and Mapping

机译:基于信息检索的软件要求的解决方案分类和映射

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In software engineering, the process of requirements elicitation and specification is considered as a base for all other development process. This means that any fault or mistake in the requirements definition will negatively affect the whole process of software development and consequently affect the cost, time, and effort of the developers and users. Traditionally, the process of requirement elicitation and categorization was done manually and based on the experience of the developers. However, a lot of problem came up because of the absence of automatic approaches. This paper presents a novel approach to improve the process of software requirements classification and mapping. An Information Retrieval (IR) method, namely Latent Drichelt Allocation (LDA) will be used for classification process. A corpus of software requirements also will be built to be used as input space for LDA algorithm. Typically, each requirement will have a corresponding document in the corpus. We conducted two distinct experiments. The first one is to extract the topics of software requirements, and the second one is for mapping and linking any new requirement to the most existing relevant requirements. The results showed that the proposed approach overwhelmed the state-of-art approaches.
机译:在软件工程中,要求阐述和规范的过程被认为是所有其他开发过程的基础。这意味着要求定义中的任何故障或错误将对开发的整个过程产生负面影响,从而影响开发人员和用户的成本,时间和努力。传统上,要求委托和分类的过程是手动完成的,基于开发人员的经验。然而,由于没有自动方法,因此出现了很多问题。本文提出了一种改进软件需求分类和映射的过程的新方法。信息检索(IR)方法,即潜在的Drichelt分配(LDA)将用于分类过程。还将构建软件要求的语料库以用作LDA算法的输入空间。通常,每个要求将在语料库中具有相应的文档。我们进行了两个不同的实验。第一个是提取软件要求的主题,第二个是用于映射并将任何新要求连接到最现有的相关要求。结果表明,该方法不堪重负先前的最先进的方法。

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