软件开发中的意见挖掘:系统的文献综述

B. Lin, Nathan Cassee, Alexander Serebrenik, G. Bavota, Nicole Novielli, Michele Lanza
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引用次数: 13

摘要

意见挖掘,有时也称为情感分析,在软件工程(SE)研究中得到了越来越多的关注。SE研究人员已经将意见挖掘技术应用于各种环境中,例如识别开发人员在代码注释中表达的情绪,以及提取用户对移动应用程序的批评。考虑到大量的相关研究,研究人员和开发人员可能需要相当长的时间来确定他们可以在自己的研究中采用哪些方法以及这些方法带来的风险。我们对185篇论文进行了系统的文献综述。更具体地说,我们提出了(1)与意见挖掘相关的软件开发活动的定义明确的类别,(2)可用的意见挖掘方法,它们是否在其他研究中被评估,以及如何比较它们的性能,(3)用于性能评估和工具定制的可用数据集,以及(4)SE研究人员在应用/定制这些意见挖掘技术时可能需要考虑的问题或限制。我们的研究结果为软件开发活动选择合适的意见挖掘工具提供了参考,并为意见挖掘技术在SE领域的进一步发展提供了重要的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opinion Mining for Software Development: A Systematic Literature Review
Opinion mining, sometimes referred to as sentiment analysis, has gained increasing attention in software engineering (SE) studies. SE researchers have applied opinion mining techniques in various contexts, such as identifying developers’ emotions expressed in code comments and extracting users’ critics toward mobile apps. Given the large amount of relevant studies available, it can take considerable time for researchers and developers to figure out which approaches they can adopt in their own studies and what perils these approaches entail. We conducted a systematic literature review involving 185 papers. More specifically, we present (1) well-defined categories of opinion mining-related software development activities, (2) available opinion mining approaches, whether they are evaluated when adopted in other studies, and how their performance is compared, (3) available datasets for performance evaluation and tool customization, and (4) concerns or limitations SE researchers might need to take into account when applying/customizing these opinion mining techniques. The results of our study serve as references to choose suitable opinion mining tools for software development activities and provide critical insights for the further development of opinion mining techniques in the SE domain.
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