基于人工神经网络的软件需求自动分类:系统文献综述

Delmer Alejandro López-Hernández, Jorge Octavio Ocharán-Hernández, E. Mezura-Montes, Á. Sánchez-García
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引用次数: 0

摘要

软件需求分类是在软件开发的需求分析阶段执行的一项人力密集型任务。这篇文献综述分析了使用人工神经网络对软件需求进行分类的最新进展。选择了14篇文章进行审查。确定了16种不同的需求分类技术,其中,除了人工神经网络,最流行的是朴素贝叶斯和支持向量机。在已报道的人工神经网络中,我们识别了卷积神经网络和浅神经网络。我们还发现7种方法对功能性和非功能性需求进行分类,6种方法只对非功能性需求进行分类,其中一种方法只对功能性需求进行分类。表达分类结果最常用的指标是准确率、召回率和f分数。最后,收集并报告分类器的结果。
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Automatic Classification of Software Requirements using Artificial Neural Networks: A Systematic Literature Review
Software requirements classification is a human-intensive task performed during the requirements analysis phase in software development. This literature review analyzes the state-of-the-art of the classification of software requirements using Artificial Neural Networks. Fourteen articles were selected to conduct the review. Sixteen different techniques to classify requirements were identified where, besides artificial neural networks, the most popular are Naive Bayes and the Support Vector Machine. Among the reported Artificial Neural Networks, we identify Convolutional Neural Networks and a Shallow Neural Network. We also found seven approaches that classify functional and non-functional requirements, six that classify only non-functional requirements, and one of them that classifies only functional requirements. The most used metrics to express classification results were accuracy, recall, and F-score. Finally, the results of the classifiers are gathered and reported.
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