软件工程情感分析的两个数据集

B. Lin, Fiorella Zampetti, R. Oliveto, M. D. Penta, Michele Lanza, G. Bavota
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引用次数: 8

摘要

软件工程研究人员已经将情感分析用于各种目的,例如分析应用程序评论和检测开发人员的情绪。然而,大多数现有的情感分析工具在与软件相关的环境中使用时都没有达到令人满意的性能,并且在该领域没有很多现成的数据集。为了促进更好的工具的出现和情感分析技术的充分验证,我们提出了两个带有标记情感的数据集,它们分别从移动应用程序评论和Stack Overflow讨论中提取。我们创建的支持Stack Overflow数据集标记的web应用程序也提供了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two Datasets for Sentiment Analysis in Software Engineering
Software engineering researchers have used sentiment analysis for various purposes, such as analyzing app reviews and detecting developers' emotions. However, most existing sentiment analysis tools do not achieve satisfactory performance when used in software-related contexts, and there are not many ready-to-use datasets in this domain. To facilitate the emergence of better tools and sufficient validation of sentiment analysis techniques, we present two datasets with labeled sentiments, which are extracted from mobile app reviews and Stack Overflow discussions, respectively. The web app we created to support the labeling of the Stack Overflow dataset is also provided.
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