Towards Trustworthy Sentiment Analysis in Software Engineering: Dataset Characteristics and Tool Selection
July 02, 2025 Β· Declared Dead Β· π 2025 IEEE 33rd International Requirements Engineering Conference Workshops (REW)
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Authors
Martin Obaidi, Marc Herrmann, Jil KlΓΌnder, Kurt Schneider
arXiv ID
2507.02137
Category
cs.SE: Software Engineering
Citations
3
Venue
2025 IEEE 33rd International Requirements Engineering Conference Workshops (REW)
Last Checked
4 months ago
Abstract
Software development relies heavily on text-based communication, making sentiment analysis a valuable tool for understanding team dynamics and supporting trustworthy AI-driven analytics in requirements engineering. However, existing sentiment analysis tools often perform inconsistently across datasets from different platforms, due to variations in communication style and content. In this study, we analyze linguistic and statistical features of 10 developer communication datasets from five platforms and evaluate the performance of 14 sentiment analysis tools. Based on these results, we propose a mapping approach and questionnaire that recommends suitable sentiment analysis tools for new datasets, using their characteristic features as input. Our results show that dataset characteristics can be leveraged to improve tool selection, as platforms differ substantially in both linguistic and statistical properties. While transformer-based models such as SetFit and RoBERTa consistently achieve strong results, tool effectiveness remains context-dependent. Our approach supports researchers and practitioners in selecting trustworthy tools for sentiment analysis in software engineering, while highlighting the need for ongoing evaluation as communication contexts evolve.
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