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A German Gold-Standard Dataset for Sentiment Analysis in Software Engineering

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arxiv 2507.07325 v1 pith:UELQ4EDE submitted 2025-07-09 cs.SE

A German Gold-Standard Dataset for Sentiment Analysis in Software Engineering

classification cs.SE
keywords analysissentimentdatasetengineeringgermansoftwaredeveloperannotation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sentiment analysis is an essential technique for investigating the emotional climate within developer teams, contributing to both team productivity and project success. Existing sentiment analysis tools in software engineering primarily rely on English or non-German gold-standard datasets. To address this gap, our work introduces a German dataset of 5,949 unique developer statements, extracted from the German developer forum Android-Hilfe.de. Each statement was annotated with one of six basic emotions, based on the emotion model by Shaver et al., by four German-speaking computer science students. Evaluation of the annotation process showed high interrater agreement and reliability. These results indicate that the dataset is sufficiently valid and robust to support sentiment analysis in the German-speaking software engineering community. Evaluation with existing German sentiment analysis tools confirms the lack of domain-specific solutions for software engineering. We also discuss approaches to optimize annotation and present further use cases for the dataset.

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