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Multi-label Classifier to Deal with Misclassification in Non-functional Requirements

机译:多标签分类器以处理非功能要求的错误分类

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Automatic classification of software requirements is an active research area; it can alleviate the tedious task of manual labeling and improves transparency in the requirements engineering process. Several attempts have been made towards the identification and classification by type of functional requirements (FRs) as well as non-functional requirements (NFRs). Previous work in this area suffers from misclassification. This study investigates issues with NFRs in particular the limitations of existing methods in the classification of NFRs. The goal of this work is to minimize misclassification and help stakeholders consider NFRs in early phases of development through automatically classifying requirements. In this study, we have proposed an improved requirement detection and classification technique. The following summarizes the proposed approach: (a) A newly created labelled corpus, (b) Textual semantics to augment user requirements by word2vec for automatically extracting features, and (c) A convolution neural network-based multi-label requirement classifier that classifies NFRs into five classes: reliability, efficiency, portability, usability, and maintainability.
机译:自动分类软件要求是一个活跃的研究区;它可以缓解手动标签的繁琐任务,并提高要求工程过程中的透明度。通过功能要求(FRS)以及非功能要求(NFR)来朝着识别和分类进行了几次尝试。以前的这一领域的工作遭受了错误分类。本研究特别调查了NFR的问题,特别是NFR分类中现有方法的局限性。这项工作的目标是最大限度地减少错误分类,并通过自动拨入要求,帮助利益相关者在开发的早期阶段考虑NFR。在这项研究中,我们提出了改进的要求检测和分类技术。以下总结了所提出的方法:(a)新创建的标记语料库,(b)文本语义通过Word2Vec来自动提取功能的增强用户要求,以及(c)基于卷积神经网络的多标签需求分类,可以分类NFRS成五类:可靠性,效率,可移植性,可用性和可维护性。

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