Trends in Software Engineering Processes using Deep Learning: A Systematic Literature Review

Álvaro Fernández del Carpio, Leonardo Bermón Angarita
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引用次数: 9

Abstract

In recent years, several researchers have applied machine learning techniques to several knowledge areas achieving acceptable results. Thus, a considerable number of deep learning models are focused on a wide range of software processes. This systematic review investigates the software processes supported by deep learning models, determining relevant results for the software community. This research identified that the most extensively investigated sub-processes are software testing and maintenance. In such sub-processes, deep learning models such as CNN, RNN, and LSTM are widely used to process bug reports, malware classification, libraries and commits recommendations generation. Some solutions are oriented to effort estimation, classify software requirements, identify GUI visual elements, identification of code authors, the similarity of source codes, predict and classify defects, and analyze bug reports in testing and maintenance processes.
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使用深度学习的软件工程过程趋势:系统文献综述
近年来,一些研究人员将机器学习技术应用于几个知识领域,取得了可接受的结果。因此,相当多的深度学习模型集中在广泛的软件过程上。本系统综述调查了由深度学习模型支持的软件过程,为软件社区确定了相关结果。这项研究确定了最广泛调查的子过程是软件测试和维护。在这些子过程中,CNN、RNN和LSTM等深度学习模型被广泛用于处理bug报告、恶意软件分类、库和提交建议生成。一些解决方案是面向工作量估计,分类软件需求,识别GUI可视化元素,识别代码作者,源代码的相似性,预测和分类缺陷,并分析测试和维护过程中的错误报告。
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