Vincent Kums


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2025

pdf bib
A Novel Dataset for Classifying German Hate Speech Comments with Criminal Relevance
Vincent Kums | Florian Meyer | Luisa Pivit | Uliana Vedenina | Jonas Wortmann | Melanie Siegel | Dirk Labudde
Proceedings of the The 9th Workshop on Online Abuse and Harms (WOAH)

The consistently high prevalence of hate speech on the Internet continues to pose significant social and individual challenges. Given the centrality of social networks in public discourse, automating the identification of criminally relevant content is a pressing challenge. This study addresses the challenge of developing an automated system that is capable of classifying online comments in a criminal justice context and categorising them into relevant sections of the criminal code. Not only technical, but also ethical and legal requirements must be considered. To this end, 351 comments were annotated by public prosecutors from the Central Office for Combating Internet and Computer Crime (ZIT) according to previously formed paragraph classes. These groupings consist of several German criminal law statutes that most hate comments violate. In the subsequent phase of the research, a further 839 records were assigned to the classes by student annotators who had been trained previously.