Non-Functional Requirements Classification Using Machine Learning Algorithms

Abdur Rahman, A. Nayem, Saeed Siddik
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Abstract

Non-functional requirements define the quality attribute of a software application, which are necessary to identify in the early stage of software development life cycle. Researchers proposed automatic software Non-functional requirement classification using several Machine Learning (ML) algorithms with a combination of various vectorization techniques. However, using the best combination in Non-functional requirement classification still needs to be clarified. In this paper, we examined whether different combinations of feature extraction techniques and ML algorithms varied in the non-functional requirements classification performance. We also reported the best approach for classifying Non-functional requirements. We conducted the comparative analysis on a publicly available PROMISE_exp dataset containing labelled functional and Non-functional requirements. Initially, we normalized the textual requirements from the dataset; then extracted features through Bag of Words (BoW), Term Frequency and Inverse Document Frequency (TF-IDF), Hashing and Chi-Squared vectorization methods. Finally, we executed the 15 most popular ML algorithms to classify the requirements. The novelty of this work is the empirical analysis to find out the best combination of ML classifier with appropriate vectorization technique, which helps developers to detect Non-functional requirements early and take precise steps. We found that the linear support vector classifier and TF-IDF combination outperform any combinations with an F1-score of 81.5%.
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使用机器学习算法的非功能需求分类
非功能需求定义了软件应用程序的质量属性,在软件开发生命周期的早期阶段识别是非必要的。研究人员提出了一种基于机器学习算法的软件非功能需求自动分类方法。然而,在非功能需求分类中使用最佳组合仍然需要澄清。在本文中,我们研究了特征提取技术和ML算法的不同组合在非功能需求分类性能上的差异。我们还报告了对非功能需求进行分类的最佳方法。我们对一个公开可用的PROMISE_exp数据集进行了比较分析,该数据集包含标记的功能需求和非功能需求。最初,我们对数据集中的文本需求进行规范化;然后通过词袋(BoW)、词频和逆文档频率(TF-IDF)、哈希和卡方矢量化方法提取特征。最后,我们执行了15种最流行的ML算法来对需求进行分类。这项工作的新颖之处在于通过实证分析找出ML分类器与适当的矢量化技术的最佳组合,这有助于开发人员及早发现非功能需求并采取精确的步骤。我们发现线性支持向量分类器和TF-IDF组合优于任何组合,f1得分为81.5%。
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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